optimizer.py 297.0 KB
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# Copyright (c) 2019 PaddlePaddle Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
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#
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#     http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
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from __future__ import print_function
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import numpy as np
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import six
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import os
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import logging
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from collections import defaultdict
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import paddle
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from paddle.fluid.distribute_lookup_table import find_distributed_lookup_table
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from paddle.fluid.framework import Program, Variable, name_scope, default_main_program, default_startup_program, device_guard
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from . import framework
from . import layers
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from . import unique_name
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from .backward import append_backward, _some_in_set_, _append_grad_suffix_, _get_no_grad_set_name
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from .clip import GradientClipBase, GradientClipByNorm, error_clip_callback, append_gradient_clip_ops, ClipGradByGlobalNorm
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from .framework import program_guard
from .initializer import Constant
from .layer_helper import LayerHelper
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from .layers import ops
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from .dygraph import base as imperative_base
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from .dygraph import no_grad
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from .dygraph.learning_rate_scheduler import LearningRateDecay, _LearningRateEpochDecay
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from paddle.fluid import core
from paddle.fluid.layers import tensor
from functools import reduce
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from functools import cmp_to_key
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from .wrapped_decorator import signature_safe_contextmanager
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from .. import compat as cpt
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import warnings
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from paddle import _C_ops
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__all__ = [
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    'SGD', 'Momentum', 'Adagrad', 'Adam', 'Adamax', 'Dpsgd', 'DecayedAdagrad',
    'Ftrl', 'SGDOptimizer', 'MomentumOptimizer', 'AdagradOptimizer',
    'AdamOptimizer', 'AdamaxOptimizer', 'DpsgdOptimizer',
    'DecayedAdagradOptimizer', 'RMSPropOptimizer', 'FtrlOptimizer', 'Adadelta',
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    'AdadeltaOptimizer', 'ModelAverage', 'LarsMomentum',
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    'LarsMomentumOptimizer', 'LambOptimizer', 'ExponentialMovingAverage',
    'PipelineOptimizer', 'LookaheadOptimizer', 'RecomputeOptimizer'
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]
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class Optimizer(object):
    """Optimizer Base class.

    Define the common interface of an optimizer.
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    User should not use this class directly,
    but need to use one of it's implementation.
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    """

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    @imperative_base.no_grad
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    def __init__(self,
                 learning_rate,
                 parameter_list=None,
                 regularization=None,
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                 grad_clip=None,
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                 flatten_param_grads=False,
                 align_size=-1,
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                 name=None):
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        """
        Args:
            flatten_param_grads (bool, optional): Whether to flatten all the parameters and grads. 
                If true, the parameters and gradients will be coalesce to contiguous mempry, 
                and the grad_clip ops / optimizer ops will be fuse to one operator.
        """
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        # Because of the loop import, so place it in the function body
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        from paddle.optimizer.lr import LRScheduler
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        self._parameter_list = list(
            parameter_list) if parameter_list is not None else None
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        self._name = name
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        if framework.in_dygraph_mode():
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            if not isinstance(learning_rate,
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                              (float, LearningRateDecay, LRScheduler)):
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                raise TypeError(
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                    "learning rate should be float or LRScheduler, got %s here"
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                    % type(learning_rate))
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            if self._parameter_list is None:
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                raise AttributeError(
                    "parameter_list argument given to the Optimizer should not be None in dygraph mode."
                )
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            if regularization is not None:
                for param in self._parameter_list:
                    if param.regularizer is not None:
                        logging.info(
                            "If regularizer of a Parameter has been set by 'fluid.ParamAttr' or 'fluid.WeightNormParamAttr' already. "
                            "The Regularization[%s] in Optimizer will not take effect, and it will only be applied to other Parameters!"
                            % regularization.__str__())
                        break
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        else:
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            if not isinstance(learning_rate,
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                              (float, framework.Variable, LRScheduler)):
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                raise TypeError(
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                    "learning rate should be float or LRScheduler, got %s here"
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                    % type(learning_rate))
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        if grad_clip is not None:
            if not isinstance(grad_clip, GradientClipBase):
                raise TypeError(
                    "'grad_clip' should be an instance of GradientClipBase's derived class"
                )
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        self.regularization = regularization
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        self._grad_clip = grad_clip
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        self._learning_rate = learning_rate
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        self._flatten_param_grads = flatten_param_grads
        self._align_size = align_size
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        self._dtype = None
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        # Infer the dtype form parameter
        if self._parameter_list:
            self._dtype = self._parameter_list[0].dtype

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        # each program should have a independent learning rate
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        # program -> Variable(learning_rate)
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        self._learning_rate_map = dict()
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        if isinstance(self._learning_rate, framework.Variable):
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            self._learning_rate_map[framework.default_main_program(
            )] = self._learning_rate
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        # Dictionary of accumulators. Some optimizer subclasses need to
        # allocate and manage extra variables associated with the parameters
        # to train. These variables are called accumulators.
        # {accum_name : { paramter_name : accumulator_for_parameter, ...}, ...}
        self._accumulators = defaultdict(lambda: dict())
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        # global_accumulator dict, {accum_name : acc_variable, ...}
        self._global_accumulators = {}
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        self.helper = LayerHelper(self.__class__.__name__)
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        self._opti_name_list = []
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        self._accumulators_holder = {}
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        self._param_device_map = dict()
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        # NOTE(zhiqiu): sometimes we want to add some variables(Tenosr) to the optimizer for a specific optimization,
        # for example, we want to pass 'found_inf' to adam optimizer so it can skip update when found_inf is True.
        # And these variables should not be the parameters of Optimizer's construnctor (because not commonly used). 
        # Use _auxiliary_vars together with _set_auxiliary_var/_get_auxiliary_var to achieve that.
        self._auxiliary_vars = dict()
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    @framework.dygraph_only
    def state_dict(self):
        '''
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        Get state dict information from optimizer. It contain all the variable used by optimizer. For Adam optimizer, contains beta1, beta2, momentum etc. If LearningRateDecay have been used, global_step will be include in state dict.
        If the optimizer never be called(minimize function), the state_dict is empty.
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        Args: None
        Return:
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            state_dict(dict) : dict contains all the variable used by optimizer
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        Examples:
            .. code-block:: python

                import paddle.fluid as fluid
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                with fluid.dygraph.guard():
                    emb = fluid.dygraph.Embedding([10, 10])

                    adam = fluid.optimizer.Adam(0.001, parameter_list=emb.parameters())
                    state_dict = adam.state_dict()
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        '''
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        from paddle.optimizer.lr import LRScheduler
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        state_dict = {}
        for k, v in self._accumulators.items():
            for para_name, var_tmp in v.items():
                state_dict[var_tmp.name] = var_tmp
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        for k, v in self._global_accumulators.items():
            state_dict[v.name] = v
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        # global step if use lr decay
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        if isinstance(self._learning_rate, LRScheduler):
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            state_dict["LR_Scheduler"] = self._learning_rate.state_dict()
            return state_dict
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        if isinstance(self._learning_rate, LearningRateDecay):
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            state_dict["LR_Scheduler"] = self._learning_rate.state_dict()

            if not isinstance(self._learning_rate, _LearningRateEpochDecay):
                var_tmp = None
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                var_temp = framework._varbase_creator(
                    None, name='global_step', dtype='int32')

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                tensor.fill_constant(
                    [1], "int32", self._learning_rate.step_num, out=var_temp)
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                state_dict['global_step'] = var_temp
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        return state_dict

    @framework.dygraph_only
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    def set_state_dict(self, state_dict):
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        '''
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        Load optimizer state dict. For Adam optimizer, contains beta1, beta2, momentum etc. If LearningRateDecay have been used, global_step will be changed.
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        Args: 
            state_dict(dict) : Dict contains all the Variable needed by optimizer
        Return:
            None
        
        Examples:
            .. code-block:: python
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                import paddle
                import paddle.fluid as fluid
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                paddle.disable_static()

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                emb = paddle.nn.Embedding(10, 10)
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                state_dict = emb.state_dict()
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                fluid.save_dygraph(state_dict, "paddle_dy")
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                scheduler = paddle.optimizer.lr.NoamDecay(	
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                    d_model=0.01, warmup_steps=100, verbose=True)
                adam = paddle.optimizer.Adam(
                    learning_rate=scheduler,
                    parameters=emb.parameters())
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                state_dict = adam.state_dict()
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                fluid.save_dygraph(state_dict, "paddle_dy")
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                para_state_dict, opti_state_dict = fluid.load_dygraph("paddle_dy")
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        '''
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        from paddle.optimizer.lr import LRScheduler
        if isinstance(self._learning_rate, LRScheduler):
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            self._learning_rate.set_dict(state_dict["LR_Scheduler"])
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        if isinstance(self._learning_rate, LearningRateDecay):
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            self._learning_rate.set_dict(state_dict["LR_Scheduler"])

            if not isinstance(self._learning_rate, _LearningRateEpochDecay):
                assert 'global_step' in state_dict, \
                        'Global step not in state dict, Dygraph use LearningRateDecay, global_step must in state_dict'
                global_step = state_dict['global_step']

                if isinstance(global_step, Variable):
                    step_np = global_step
                    step_np = np.array(step_np.value().get_tensor())
                    assert step_np.shape == (1,),  \
                            "global step shape is (1,), the shape is {}".format( step_np.shape )

                    self._learning_rate.step_num = int(step_np[0])
                elif isinstance(global_step, np.ndarray):
                    assert global_step.shape == (1,),  \
                            "global step shape is (1,), the shape is {}".format( global_step.shape )
                    self._learning_rate.step_num = global_step[0]
                else:
                    raise RuntimeError(
                        "Type not supprt, value in state dict must be [VarBase, Variable, numpy], the type is ",
                        type(global_step))
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        def _load_state_para(state_dict, param):
            var = param.value()
            tensor = var.get_tensor()
            model_np = np.array(tensor)
            load_para = state_dict[param.name]
            if isinstance(load_para, Variable):
                load_para_np = load_para.numpy()
            elif isinstance(load_para, core.VarBase):
                load_para_np = load_para.numpy()
            elif isinstance(load_para, np.ndarray):
                load_para_np = load_para
            else:
                raise RuntimeError("State dict type {} not supprt".format(
                    str(type(load_para))))

            assert model_np.shape == load_para_np.shape,  \
                                        "Parameter shape not match, Dygraph Parameter [ {} ] need tensor with shape {} but load tensor with shape {}".format(
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                                                param.name, model_np.shape, load_para_np.shape)
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            assert model_np.dtype == load_para_np.dtype, \
                                        "Parameter dtype not match, Dygraph Parameter [ {} ] need tensor with dtype {}  but load tensor with dtype {}".format(
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                                            param.name, model_np.dtype, load_para_np.dtype)
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            tensor.set(load_para_np, framework._current_expected_place())

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        self._accumulators_holder = state_dict
        for k, v in self._accumulators.items():
            for para_name, var_tmp in v.items():
                assert var_tmp.name in state_dict, \
                        "optimizer variable {} not found".format( var_tmp.name )
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                _load_state_para(state_dict, var_tmp)
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        for k, v in self._global_accumulators.items():
            assert v.name in state_dict, \
                        "optimizer variable {} not found".format( v.name )
            _load_state_para(state_dict, v)
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    # [aliases] Compatible with old method names
    set_dict = set_state_dict

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    def get_opti_var_name_list(self):
        return self._opti_name_list
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    def _set_auxiliary_var(self, key, val):
        self._auxiliary_vars[key] = val

    def _get_auxiliary_var(self, key):
        if key in self._auxiliary_vars:
            return self._auxiliary_vars[key]
        else:
            return None

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    def _create_global_learning_rate(self):
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        from paddle.optimizer.lr import LRScheduler
        if isinstance(self._learning_rate, LRScheduler):
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            lr_var = self._global_learning_rate()
            # only create global lr_var once
            if not isinstance(lr_var, framework.Variable):
                lr_name = unique_name.generate('learning_rate')
                self._learning_rate._var_name = lr_name
                lr_var = self.helper.create_global_variable(
                    name=lr_name,
                    shape=[1],
                    persistable=True,
                    stop_gradient=True,
                    dtype='float32' if self._dtype is None else self._dtype)
                main_prog = framework.default_main_program()
                main_prog.lr_sheduler = self._learning_rate
                main_prog.lr_var = lr_var
                self._learning_rate_map[framework.default_main_program(
                )] = lr_var

            lr_value = float(self._learning_rate())
            self.helper.set_variable_initializer(
                lr_var, initializer=Constant(value=lr_value))
            return

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        if imperative_base.enabled():
            # create learning rate Variable
            if isinstance(self._learning_rate, float):
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                lr = self._global_learning_rate()

                if isinstance(lr, framework.Variable):
                    return
                else:
                    self._learning_rate_map[framework.default_main_program(
                    )] = layers.create_global_var(
                        name=unique_name.generate("learning_rate"),
                        shape=[1],
                        value=float(self._learning_rate),
                        dtype='float32' if self._dtype is None else self._dtype,
                        persistable=True)
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            # get learning rate Variable from LearningRateDecay
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            elif isinstance(self._learning_rate, LearningRateDecay):
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                self._learning_rate_map[framework.default_main_program(
                )] = self._learning_rate()
            else:
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                raise TypeError(
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                    "optimizer's learning rate must be float or LearningRateDecay"
                )
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        else:
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            lr = self._global_learning_rate()

            if isinstance(lr, framework.Variable):
                return
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            else:
                if not isinstance(self._learning_rate, float):
                    raise TypeError(
                        "learning rate variable is create outside optimizer,"
                        "can not create new learning rate variable for new program"
                    )
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            # create learning rate in the current main program
            self._learning_rate_map[framework.default_main_program(
            )] = layers.create_global_var(
                name=unique_name.generate("learning_rate"),
                shape=[1],
                value=float(self._learning_rate),
                dtype='float32' if self._dtype is None else self._dtype,
                persistable=True)
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    @framework.dygraph_only
    def set_lr(self, value):
        """
        :api_attr: imperative
        
        Set the value of the learning rate manually in the optimizer. If the optimizer use LearningRateDecay,
        this API cannot be invoked, because it will lead to conflict.

        Args:
            value (float|Variable): the value of learning rate

        Returns:
            None
          
        Examples:
            .. code-block:: python

                import paddle.fluid as fluid
                        
                with fluid.dygraph.guard():
                    linear = fluid.dygraph.nn.Linear(10, 10)

                    adam = fluid.optimizer.Adam(0.1, parameter_list=linear.parameters())

                    # set learning rate manually by python float value
                    lr_list = [0.2, 0.3, 0.4, 0.5, 0.6]
                    for i in range(5):
                        adam.set_lr(lr_list[i])
                        lr = adam.current_step_lr()
                        print("current lr is {}".format(lr))
                    # Print:
                    #    current lr is 0.2
                    #    current lr is 0.3
                    #    current lr is 0.4
                    #    current lr is 0.5
                    #    current lr is 0.6


                    # set learning rate manually by framework Variable
                    lr_var = fluid.layers.create_global_var(
                        shape=[1], value=0.7, dtype='float32')
                    adam.set_lr(lr_var)
                    lr = adam.current_step_lr()
                    print("current lr is {}".format(lr))
                    # Print:
                    #    current lr is 0.7



        """
        if not isinstance(value, (framework.Variable, float)):
            raise TypeError(
                "The type of 'value' in optimizer.set_lr must be (float, Variable), but received %s."
                % (type(value)))
        if isinstance(self._learning_rate, LearningRateDecay):
            raise RuntimeError(
                "optimizer's learning rate can't be LearningRateDecay when invoke this API, because this will lead to conflict."
            )
        if isinstance(value, float):
            self._learning_rate = value
            current_lr = self._global_learning_rate()
            if current_lr is not None:
                global_block = framework.default_main_program().global_block()
                global_block.append_op(
                    type='fill_constant',
                    outputs={'Out': [current_lr]},
                    attrs={
                        'dtype': current_lr.dtype,
                        'shape': list(current_lr.shape),
                        'value': float(value)
                    },
                    stop_gradient=True)
        else:
            assert len(value.shape) == 1 and value.shape[
                0] == 1, "optimizer's learning rate must be 1-D Tensor with shape[1]"
            self._learning_rate_map[framework.default_main_program()] = value

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    @framework.dygraph_only
    def current_step_lr(self):
        """
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        :api_attr: imperative
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        Get current step learning rate. The return value is all the same When LearningRateDecay is not used,
        otherwise return the step learning rate.

        Returns:
            float: The learning rate of the current step.

        Examples:
            .. code-block:: python

                import paddle.fluid as fluid
                import numpy as np

                # example1: LearningRateDecay is not used, return value is all the same
                with fluid.dygraph.guard():
                    emb = fluid.dygraph.Embedding([10, 10])
                    adam = fluid.optimizer.Adam(0.001, parameter_list = emb.parameters())
                    lr = adam.current_step_lr()
                    print(lr) # 0.001

                # example2: PiecewiseDecay is used, return the step learning rate
                with fluid.dygraph.guard():
                    inp = np.random.uniform(-0.1, 0.1, [10, 10]).astype("float32")
                    linear = fluid.dygraph.nn.Linear(10, 10)
                    inp = fluid.dygraph.to_variable(inp)
                    out = linear(inp)
                    loss = fluid.layers.reduce_mean(out)
                    
                    bd = [2, 4, 6, 8]
                    value = [0.2, 0.4, 0.6, 0.8, 1.0]
                    adam = fluid.optimizer.Adam(fluid.dygraph.PiecewiseDecay(bd, value, 0),
                                           parameter_list=linear.parameters())

                    # first step: learning rate is 0.2
                    np.allclose(adam.current_step_lr(), 0.2, rtol=1e-06, atol=0.0) # True

                    # learning rate for different steps
                    ret = [0.2, 0.2, 0.4, 0.4, 0.6, 0.6, 0.8, 0.8, 1.0, 1.0, 1.0, 1.0]
                    for i in range(12):
                        adam.minimize(loss)
                        lr = adam.current_step_lr()
                        np.allclose(lr, ret[i], rtol=1e-06, atol=0.0) # True

        """
        current_lr = self._global_learning_rate()
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        if isinstance(current_lr, framework.Variable):
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            return self._global_learning_rate().numpy()[0]

        if isinstance(self._learning_rate, float):
            return self._learning_rate
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        elif isinstance(self._learning_rate, _LearningRateEpochDecay):
            step_lr = self._learning_rate()
            return step_lr.numpy()[0]
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        else:
            step_lr = self._learning_rate.step()
            if isinstance(step_lr, (float, int)):
                return step_lr
            else:
                return step_lr.numpy()[0]

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    def _global_learning_rate(self, program=None):
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        """
        get global decayed learning rate
        :return:
        """
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        if program is None:
            program = framework.default_main_program()
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        return self._learning_rate_map.get(program, None)
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    def _append_optimize_op(self, block, param_and_grad):
        """ append optimize operator to block and return all the added optimize_op
        """
        raise NotImplementedError()

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    def _create_param_lr(self, param_and_grad):
        # create learning rate variable for every parameter
        param = param_and_grad[0]
        param_lr = param.optimize_attr['learning_rate']
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        if type(param_lr) == Variable:
            return param_lr
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        else:
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            if param_lr == 1.0:
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                return self._global_learning_rate()
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            else:
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                with default_main_program()._lr_schedule_guard(
                        is_with_opt=True), framework.name_scope(
                            'scale_with_param_lr'):
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                    return self._global_learning_rate() * param_lr
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    def _create_accumulators(self, block, parameters):
        """Create all accumulators needed by the parameters

        Args:
            block: the block in which the loss variable is present
            parameters: list of parameter variables for the optimizer
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        """
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        pass

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    def _finish_update(self, block, parameters_and_grads):
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        """Finish any custom updates needed
           before completing an optimization step

        Args:
            block: the block in which the loss variable is present
            parameters: list of parameter variables for the optimizer

        Returns:
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            None
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        """
        pass

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    def _add_accumulator(self,
                         name,
                         param,
                         dtype=None,
                         fill_value=0.0,
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                         shape=None,
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                         type=None,
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                         device=None):
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        """Utility function to add an accumulator for a parameter

        Args:
            block: the block in which the loss variable is present
            name: name of the accumulator
            param: parameter variable for which accumulator is to be added
            dtype: data type of the accumulator variable
            fill_value: value to initialize the accumulator variable
        """
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        if self._name is not None:
            name = self._name + "_" + name
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        if (name in self._accumulators and
                param.name in self._accumulators[name]):
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            if framework.in_dygraph_mode():
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                return self._accumulators[name][param.name]
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            raise Exception("Accumulator {} already exists for parameter {}".
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                            format(name, param.name))
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        if shape == None:
            shape = param.shape
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        assert isinstance(self.helper, LayerHelper)
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        var_name = param.name + "_" + name
        var_name = unique_name.generate(var_name)
        self._opti_name_list.append(var_name)

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        var = self.helper.create_global_variable(
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            name=var_name,
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            persistable=True,
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            dtype=dtype or param.dtype,
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            type=param.type if type is None else type,
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            shape=shape,
            belong_to_optimizer=True)
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        if device is None:
            device = self._get_device_for_param(param.name)
        with device_guard(device):
            self.helper.set_variable_initializer(
                var, initializer=Constant(value=float(fill_value)))
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        if framework.in_dygraph_mode():
            if len(self._accumulators_holder) > 0:
                assert var_name in self._accumulators_holder, \
                        "Optimizer set error, {} should in state dict".format( var_name )
                var.set_value(self._accumulators_holder[var_name])

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        self._accumulators[name][param.name] = var
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        return var
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    def _add_global_accumulator(self,
                                name,
                                dtype=None,
                                fill_value=0.0,
                                shape=None,
                                type=None,
                                device=None):
        """Utility function to add a global accumulator for all parameters in the model

        Args:
            block: the block in which the loss variable is present
            name: name of the accumulator
            dtype: data type of the accumulator variable
            fill_value: value to initialize the accumulator variable
            shape: the shape of the accumulator
            type: the variable type of the accumulator
            device: the target place of the accumulator
        """
        if self._name is not None:
            name = self._name + "_" + name
        if (name in self._global_accumulators):
            if framework.in_dygraph_mode():
                return self._global_accumulators[name]
            raise Exception("Global accumulator {} already exists".format(name))
        if shape == None:
            shape = [1]  # most case, global accumulator is of shape [1]
        assert isinstance(self.helper, LayerHelper)

        var_name = name
        var_name = unique_name.generate(var_name)
        self._opti_name_list.append(var_name)

        var = self.helper.create_global_variable(
            name=var_name,
            persistable=True,
            dtype=dtype if dtype else self._dtype,
            type=type,
            shape=shape,
            belong_to_optimizer=True)
        if device is None:
            device = 'cpu'
        with device_guard(device):
            self.helper.set_variable_initializer(
                var, initializer=Constant(value=float(fill_value)))

        if framework.in_dygraph_mode():
            if len(self._accumulators_holder) > 0:
                assert var_name in self._accumulators_holder, \
                        "Optimizer set error, {} should in state dict".format( var_name )
                var.set_value(self._accumulators_holder[var_name])

        self._global_accumulators[name] = var
        return var

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    def _get_accumulator(self, name, param):
        """Utility function to fetch an accumulator for a parameter

        Args:
            name: name of the accumulator
            param: parameter variable for which accumulator is to be fetched

        Returns:
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            accumulator variable
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        """
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        if self._name is not None:
            name = self._name + "_" + name
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        if (name not in self._accumulators or
                param.name not in self._accumulators[name]):
            raise Exception("Accumulator {} does not exist for parameter {}".
                            format(name, param.name))
        return self._accumulators[name][param.name]

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    def _get_global_accumulator(self, name):
        """Utility function to fetch a global accumulator

        Args:
            name: name of the accumulator

        Returns:
            accumulator variable
        """
        if self._name is not None:
            name = self._name + "_" + name
        if (name not in self._global_accumulators):
            raise Exception("Global accumulator {} does not exist".format(name))
        return self._global_accumulators[name]

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    def _update_param_device_map(self, parameters_and_grads, target_block):
        for param_and_grad in parameters_and_grads:
            if param_and_grad[0].trainable is True:
                param_name = param_and_grad[0].name
                ops = target_block.ops
                device_attr_name = core.op_proto_and_checker_maker.kOpDeviceAttrName(
                )
                for op in ops:
                    input_arg_names = op.input_arg_names
                    if param_name in input_arg_names:
                        self._param_device_map[param_name] = op.attr(
                            device_attr_name)
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                        break
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    def _get_device_for_param(self, param_name):
        device = None
        if param_name in self._param_device_map:
            device = self._param_device_map[param_name]
        return device

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    def _create_optimization_pass(self, parameters_and_grads):
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        """Add optimization operators to update gradients to variables.

        Args:
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          parameters_and_grads(list(tuple(Variable, Variable))):
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            a list of (variable, gradient) pair to update.
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        Returns:
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          return_op_list: a list of operators that will complete one step of
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            optimization. This will include parameter update ops, global step
            update ops and any other custom ops required by subclasses to manage
            their internal state.
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        """
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        # This is a default implementation of create_optimization_pass that
        # can be shared by most optimizers. This implementation assumes that
        # the subclass will implement the _append_optimize_op method and the
        #  _initialize_tensors method. The subclass can extend the
        # _create_accumulators method if it needs to create accumulators
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        # for parameters and extend _finish_update method to add custom ops.
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        # Allways called under program_guard use global block as loss block
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        # But if current block is in control flow, append optimize op in the
        # grad block of current block

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        global_block = framework.default_main_program().global_block()
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        target_block = global_block
        current_block = framework.default_main_program().current_block()
        if current_block.idx != global_block.idx:
            assert current_block.backward_block_idx != -1, \
                "current block is not global_block, but it doesn't have backward block."
            target_block = framework.default_main_program().blocks[
                current_block.backward_block_idx]

        start = len(target_block.ops)
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        self._update_param_device_map(parameters_and_grads, target_block)
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        self._create_accumulators(
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            target_block,
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            [p[0] for p in parameters_and_grads if p[0].trainable])
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        self._create_global_learning_rate()

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        if framework.in_dygraph_mode():
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            for param_and_grad in parameters_and_grads:
                if param_and_grad[1] is None:
                    continue
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                if param_and_grad[0].trainable is True:
                    self._append_optimize_op(target_block, param_and_grad)
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        else:
            for param_and_grad in parameters_and_grads:
                if param_and_grad[1] is None:
                    continue
                with param_and_grad[0].block.program._optimized_guard(
                        param_and_grad), name_scope("optimizer"):
                    if param_and_grad[0].trainable is True:
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                        device = self._get_device_for_param(param_and_grad[0]
                                                            .name)
                        with device_guard(device):
                            optimize_op = self._append_optimize_op(
                                target_block, param_and_grad)
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        # Get custom finish ops for subclasses
        # FIXME: Need to fix this once we figure out how to handle dependencies
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        self._finish_update(target_block, parameters_and_grads)
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        end = len(target_block.ops)
        return target_block._slice_ops(start, end)
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    def _process_distribute_lookuptable(self, param_grads):
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        """
        Because distribute lookup table only support SGD optimizer for now, not support
        other optimizer and regularization, so we should find the table parameter out,
        and avoid to add regularization and other op for it, and add sgd optimize op
        for it independently.
        :param param_grads(list((Var, Var))): list of (param, grad) pair.
        :param loss: the loss variable.
        :param startup_program: the startup program
        """
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        program = framework.default_main_program()
        global_block = framework.default_main_program().global_block()
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        table_name = find_distributed_lookup_table(program)
        table_param = None
        table_grad = None
        new_param_grads = []
        for p, g in param_grads:
            if p.name == table_name:
                if table_param is not None:
                    raise RuntimeError(
                        "multi dist table var found, only support one now!")
                table_param = p
                table_grad = g
            else:
                new_param_grads.append((p, g))
        sgd_op = None
        if table_param is not None:
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            param_and_grad = [table_param, table_grad]
            with table_param.block.program._optimized_guard(param_and_grad), \
                    framework.name_scope("optimizer"):
                self._create_global_learning_rate()
                # create the optimize op
                sgd_op = global_block.append_op(
                    type='sgd',
                    inputs={
                        "Param": table_param,
                        "Grad": table_grad,
                        "LearningRate": self._create_param_lr(param_and_grad)
                    },
                    outputs={"ParamOut": param_and_grad[0]})
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        return new_param_grads, (table_param, table_grad), sgd_op

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    def backward(self,
                 loss,
                 startup_program=None,
                 parameter_list=None,
                 no_grad_set=None,
                 callbacks=None):
        """
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        The first part of ``minimize``, do auto-diff to append backward operations for
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        the current program.

        Args:
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            loss (Variable): ``loss`` variable to run optimizations.
            startup_program (Program, optional): :ref:`api_fluid_Program` for
                initializing parameters in ``parameter_list``. The default value
                is None, at this time :ref:`api_fluid_default_startup_program` will be used.
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            parameter_list (Iterable, optional): Iterable of ``Variable`` or ``Variable.name`` to update
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                to minimize ``loss``. The default value is None, at this time all parameters
                will be updated.
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            no_grad_set (set, optional): Set of ``Variable``  or ``Variable.name`` that don't need
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                to be updated. The default value is None.
            callbacks (list, optional): list of callable objects to run when appending backward
                operator for one parameter. The default value is None.
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        Return:
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            list: list of (param, grad) variable pairs, param is ``Parameter``,
                grad is the gradient value corresponding to the parameter.
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        Examples:
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            See examples in ``apply_gradients``.
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        """
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        act_no_grad_set = None
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        if framework.in_dygraph_mode():
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            pass
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        else:
            act_no_grad_set = self._get_no_grad_set(loss, no_grad_set)
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        # Infer dtype by loss if None
        if self._dtype is None:
            self._dtype = loss.dtype

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        if framework.in_dygraph_mode():
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            parameter_list = parameter_list if parameter_list \
                else self._parameter_list

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            params_grads = []
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            for param in parameter_list:
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                if not param.trainable:
                    continue
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                if param._grad_ivar() is not None:
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                    # create gradient variable
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                    grad_var = param._grad_ivar()
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                    params_grads.append((param, grad_var))
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        else:
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            if callbacks is None:
                callbacks = [error_clip_callback]
            else:
                assert (isinstance(callbacks, list))
            program = loss.block.program
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            assert len(loss.shape) == 1 and loss.shape[0] == 1, \
                "The loss.shape should be (1L,), but the current loss.shape is {}. " \
                "Maybe that you should call fluid.layers.mean to process the current loss.".format(
                    loss.shape)
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            parameter_list = parameter_list if parameter_list \
                else self._parameter_list
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            with program_guard(program, startup_program):
                params_grads = append_backward(loss, parameter_list,
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                                               act_no_grad_set, callbacks)
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        return params_grads
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    def _create_regularization_of_grad(self, param, grad, regularization=None):
        """ Create and add backward regularization Operators
    
        Function helper of append_regularization_ops.
        """
        # If no gradient or no regularization is specified,  then we don't need to do anything
        if grad is None or ((not hasattr(param, 'regularizer') or
                             (hasattr(param, 'regularizer') and
                              param.regularizer is None)) and
                            regularization is None):
            return grad
        regularization_term = None
        if hasattr(param, 'regularizer') and param.regularizer is not None:
            # Add variable for regularization term in grad block
            regularization_term = param.regularizer(param, grad, grad.block)
        elif regularization is not None:
            regularization_term = regularization(param, grad, grad.block)

        assert regularization_term is not None

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        if framework.in_dygraph_mode():
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            return _C_ops.sum([grad, regularization_term])
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        new_grad = grad
        if grad.type == core.VarDesc.VarType.SELECTED_ROWS:
            # FIXME(zcd): If the grad is SELECTED_ROWS, after regularization,
            # the grad's type and name will be changed. But the gradient's name
            # is used in ParallelExecutor Reduce mode, so I add a flag for
            # the new_grad here.
            new_grad = grad.block.create_var(
                name=grad.name + core.kNewGradSuffix(),
                dtype=param.dtype,
                shape=param.shape,
                lod_level=param.lod_level,
                type=core.VarDesc.VarType.LOD_TENSOR)

        inputs = {"X": [grad, regularization_term]}
        outputs = {"Out": [new_grad]}
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        grad.block.append_op(type='sum', inputs=inputs, outputs=outputs)
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        return new_grad

    def append_regularization_ops(self,
                                  parameters_and_grads,
                                  regularization=None):
        r"""Create and add backward regularization Operators
    
        Creates and adds backward regularization operators in the BlockDesc.
        This will add gradients of the regularizer function to the gradients
        of the parameters and return these modified gradients. This is the
        same as implementing weight decay in optimizers for regularization.
    
        Args:
            parameters_and_grads: A list of (parameters, gradients) pairs
                                  that need to be regularized.
            regularization: A global regularizer. If the parameter is not
                            set. It will be applied with regularizer.
    
        Returns:
            list[(Variable, Variable)]: list of (parameters, gradients) \
            pair with the regularized gradient
    
        Raises:
            Exception: Unknown regularization type
        """
        params_and_grads = []
        if framework.in_dygraph_mode():
            for param, grad in parameters_and_grads:
                new_grad = self._create_regularization_of_grad(param, grad,
                                                               regularization)
                params_and_grads.append((param, new_grad))
        else:
            repeate_regularizer = False
            with framework.name_scope('regularization'):
                for param, grad in parameters_and_grads:
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                    if not repeate_regularizer and getattr(
                            param, 'regularizer',
                            None) is not None and regularization is not None:
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                        repeate_regularizer = True
                        logging.info(
                            "If regularizer of a Parameter has been set by 'fluid.ParamAttr' or 'fluid.WeightNormParamAttr' already. "
                            "The Regularization[%s] in Optimizer will not take effect, and it will only be applied to other Parameters!"
                            % regularization.__str__())
                    with param.block.program._optimized_guard([param, grad]):
                        new_grad = self._create_regularization_of_grad(
                            param, grad, regularization)
                        params_and_grads.append((param, new_grad))
        return params_and_grads

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    def flatten_param_grads(self, params_grads):
        need_flatten_params = []
        need_flatten_grads = []
        for p, g in params_grads:
            if g is None:
                continue
            g.persistable = True
            if getattr(p, 'need_clip', True) is False or getattr(
                    p, 'regularizer', None) is not None:
                warnings.warn(
                    "flatten_param_grads=True will be discarded since paramter '{}''s need_clip is False or "
                    "the regularizer is set".format(p.name))
                self._flatten_param_grads = False
                return params_grads

            need_flatten_params.append(p)
            need_flatten_grads.append(g)

        shape = [np.prod(p.shape) for p in need_flatten_params]
        block = need_flatten_params[0].block

        flatten_param = self.helper.create_global_variable(
            name='flatten_param',
            persistable=True,
            dtype=need_flatten_params[0].dtype,
            shape=[np.sum(shape)],
            belong_to_optimizer=True)

        flatten_param.trainable = True
        flatten_param.optimize_attr = need_flatten_params[0].optimize_attr
        flatten_param.regularizer = need_flatten_params[0].regularizer

        flatten_grad = self.helper.create_global_variable(
            name='flatten_grad',
            persistable=True,
            dtype=need_flatten_grads[0].dtype,
            shape=[np.sum(shape)],
            belong_to_optimizer=True)

        with program_guard(default_main_program()):
            block.append_op(
                type="coalesce_tensor",
                inputs={"Input": need_flatten_params},
                outputs={
                    "Output": need_flatten_params,
                    "FusedOutput": flatten_param
                },
                attrs={
                    "copy_data": True,
                    "use_align": True,
                    "align_size": self._align_size,
                    "dtype": need_flatten_params[0].dtype
                })

            block.append_op(
                type="coalesce_tensor",
                inputs={"Input": need_flatten_grads},
                outputs={
                    "Output": need_flatten_grads,
                    "FusedOutput": flatten_grad
                },
                attrs={
                    "copy_data": True,
                    "use_align": True,
                    "align_size": self._align_size,
                    "dtype": need_flatten_grads[0].dtype
                })

        #NOTE(zhiqiu): the initializer should be set after coalesce_tensor op,
        # so the shape of flatten_param and flatten_grad will be inferred.
        self.helper.set_variable_initializer(
            flatten_param, initializer=Constant(0.0))
        self.helper.set_variable_initializer(
            flatten_grad, initializer=Constant(0.0))

        return [(flatten_param, flatten_grad)]

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    def apply_gradients(self, params_grads):
        """
        Second part of `minimize`, appending optimization operators for
        given `params_grads` pairs.

        Args:
            params_grads (list): list of (param, grad) pair to do optimization.
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        Returns:
            list: A list of operators appended to the current program.
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        Examples:
            .. code-block:: python

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                import paddle.fluid as fluid
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                loss = network()
                optimizer = fluid.optimizer.SGD(learning_rate=0.1)
                params_grads = optimizer.backward(loss)
                # you may append operations for params_grads here
                # ...
                optimizer.apply_gradients(params_grads)
        """
        params_grads = sorted(params_grads, key=lambda x: x[0].name)

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        # NOTE(zhiqiu): currently, only support ClipGradByGlobalNorm and without regularization.
        if self._flatten_param_grads and self.regularization is None:
            if self._grad_clip == None or isinstance(self._grad_clip,
                                                     ClipGradByGlobalNorm):
                params_grads = self.flatten_param_grads(params_grads)

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        # 'optimizer(grad_clip)' or 'set_gradient_clip'
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        if self._grad_clip is not None:
            params_grads = self._grad_clip(params_grads)
        else:
            params_grads = append_gradient_clip_ops(params_grads)
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        # Add regularization if any
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        params_grads = self.append_regularization_ops(params_grads,
                                                      self.regularization)
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        optimize_ops = self._create_optimization_pass(params_grads)
        return optimize_ops

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    def apply_optimize(self, loss, startup_program, params_grads):
        """
        Second part of `minimize`, appending optimization operators for
        given `params_grads` pairs.
        Args:
            loss (Variable): loss variable to run optimizations.
            startup_program (Program): startup_program for initializing parameters
                in `parameter_list`.
            params_grads (list): list of (param, grad) pair to do optimization.
        Returns:
            list: A list of operators appended to the current program.
        """
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        if framework.in_dygraph_mode():
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            with program_guard(framework.default_main_program(),
                               framework.default_startup_program()):
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                if self._grad_clip is not None:
                    params_grads = self._grad_clip(params_grads)
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                params_grads = self.append_regularization_ops(
                    params_grads, self.regularization)
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                optimize_ops = self._create_optimization_pass(params_grads)
        else:
            program = loss.block.program
            with program_guard(program, startup_program):
                optimize_ops = self.apply_gradients(params_grads)
        return optimize_ops

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    def _get_no_grad_set(self, loss, no_grad_set=None):
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        no_grad_set = _get_no_grad_set_name(no_grad_set)
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        parameters = loss.block.program.global_block().all_parameters()
        param_no_trainable = set(
            [param.name for param in parameters if param.trainable is False])
        # If the parameter is no trainable, it should not have a gradient.
        no_grad_set.update(param_no_trainable)

        return no_grad_set

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    @framework.dygraph_only
    def clear_gradients(self):
        """
        Clear the gradients of all optimized parameters for model.
1161 1162

        If not, new gradient will accumulat on previous gradient.
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        Returns:
            None
        
        Examples:
            .. code-block:: python

                import paddle.fluid as fluid
                import numpy as np

                with fluid.dygraph.guard():
                    value = np.arange(26).reshape(2, 13).astype("float32")
                    a = fluid.dygraph.to_variable(value)
                    linear = fluid.Linear(13, 5, dtype="float32")
                    # This can be any optimizer supported by dygraph.
                    adam = fluid.optimizer.Adam(learning_rate = 0.01, 
                                                parameter_list = linear.parameters())
                    out = linear(a)
                    out.backward()
                    adam.minimize(out)
                    adam.clear_gradients()

        """
        for p in self._parameter_list:
            if p.trainable:
                p.clear_gradient()

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    @imperative_base.no_grad
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    def minimize(self,
                 loss,
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                 startup_program=None,
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                 parameter_list=None,
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                 no_grad_set=None):
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        """
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        Add operations to minimize ``loss`` by updating ``parameter_list``.
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        Args:
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            loss (Variable): A ``Variable`` containing the value to minimize.
            startup_program (Program, optional): :ref:`api_fluid_Program` for
                initializing parameters in ``parameter_list``. The default value
                is None, at this time :ref:`api_fluid_default_startup_program` will be used.
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            parameter_list (Iterable, optional): Iterable of ``Variable`` or ``Variable.name`` to update
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                to minimize ``loss``. The default value is None, at this time all parameters
                will be updated.
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            no_grad_set (set, optional): Set of ``Variable``  or ``Variable.name`` that don't need
1208
                to be updated. The default value is None.
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        Returns:
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            tuple: tuple (optimize_ops, params_grads), A list of operators appended
            by minimize and a list of (param, grad) variable pairs, param is
            ``Parameter``, grad is the gradient value corresponding to the parameter.
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            The returned tuple can be passed to ``fetch_list`` in ``Executor.run()`` to 
            indicate program pruning. If so, the program will be pruned by ``feed`` and 
            ``fetch_list`` before run, see details in ``Executor``.
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        Examples:
            Please refer to the example of current Optimizer.
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        """
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        assert isinstance(loss, Variable), "The loss should be an Variable."
1222

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        parameter_list = parameter_list if parameter_list \
            else self._parameter_list
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        params_grads = self.backward(
            loss,
            startup_program=startup_program,
            parameter_list=parameter_list,
            no_grad_set=no_grad_set)
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        optimize_ops = self.apply_optimize(
            loss, startup_program=startup_program, params_grads=params_grads)
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        return optimize_ops, params_grads
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class SGDOptimizer(Optimizer):
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    r"""
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    Optimizer of the stochastic gradient descent algorithm.

    .. math::

        param\_out = param - learning\_rate * grad

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    Parameters:
        learning_rate (float|Variable): The learning rate used to update parameters. \
            Can be a float value or a Variable with one float value as data element.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
            ( :ref:`api_fluid_clip_GradientClipByGlobalNorm` , :ref:`api_fluid_clip_GradientClipByNorm` , 
            :ref:`api_fluid_clip_GradientClipByValue` ). Default None, meaning there is no gradient clipping.
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        name (str, optional): This parameter is used by developers to print debugging information. \
            For details, please refer to :ref:`api_guide_Name`. Default is None.
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    Examples:
        .. code-block:: python

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            import paddle
            import paddle.fluid as fluid
            import numpy as np

            place = fluid.CPUPlace()
            main = fluid.Program()
            with fluid.program_guard(main):
                x = fluid.layers.data(name='x', shape=[13], dtype='float32')
                y = fluid.layers.data(name='y', shape=[1], dtype='float32')
                y_predict = fluid.layers.fc(input=x, size=1, act=None)
                cost = fluid.layers.square_error_cost(input=y_predict, label=y)
                avg_cost = fluid.layers.mean(cost)

                sgd_optimizer = fluid.optimizer.SGD(learning_rate=0.001)
                sgd_optimizer.minimize(avg_cost)

                fetch_list = [avg_cost]
                train_reader = paddle.batch(
                    paddle.dataset.uci_housing.train(), batch_size=1)
                feeder = fluid.DataFeeder(place=place, feed_list=[x, y])
                exe = fluid.Executor(place)
                exe.run(fluid.default_startup_program())
                for data in train_reader():
                    exe.run(main, feed=feeder.feed(data), fetch_list=fetch_list)

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    """

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    def __init__(self,
                 learning_rate,
                 parameter_list=None,
                 regularization=None,
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                 grad_clip=None,
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                 name=None):
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        assert learning_rate is not None
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        super(SGDOptimizer, self).__init__(
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            learning_rate=learning_rate,
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            parameter_list=parameter_list,
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            regularization=regularization,
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            grad_clip=grad_clip,
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            name=name)
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        self.type = "sgd"

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    @no_grad
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    def _append_optimize_op(self, block, param_and_grad):
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        lr = self._create_param_lr(param_and_grad)
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        if framework.in_dygraph_mode():
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            _C_ops.sgd(param_and_grad[0], lr, param_and_grad[1],
                       param_and_grad[0])
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            return None
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        assert isinstance(block, framework.Block)
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        # create the optimize op
        sgd_op = block.append_op(
            type=self.type,
            inputs={
                "Param": param_and_grad[0],
                "Grad": param_and_grad[1],
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                "LearningRate": lr
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            },
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            outputs={"ParamOut": param_and_grad[0]},
            stop_gradient=True)
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        return sgd_op
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class MomentumOptimizer(Optimizer):
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    r"""
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    Simple Momentum optimizer with velocity state

    This optimizer has a flag for Nestrov Momentum.

    The update equations are as follows:

    .. math::

        & velocity = mu * velocity + gradient

        & if (use\_nesterov):

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        &\quad   param = param - (gradient + mu * velocity) * learning\_rate
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        & else:

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        &\quad   param = param - learning\_rate * velocity
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    Parameters:
        learning_rate (float|Variable): The learning rate used to update parameters. \
            Can be a float value or a Variable with one float value as data element.
        momentum (float): Momentum factor
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        use_nesterov (bool, optional): Enables Nesterov momentum, default is false.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
            ( :ref:`api_fluid_clip_GradientClipByGlobalNorm` , :ref:`api_fluid_clip_GradientClipByNorm` , 
            :ref:`api_fluid_clip_GradientClipByValue` ). Default None, meaning there is no gradient clipping.
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        name (str, optional): This parameter is used by developers to print debugging information. \
            For details, please refer to :ref:`api_guide_Name`. Default is None.
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    Examples:
        .. code-block:: python

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            import paddle
            import paddle.fluid as fluid
            import numpy as np

            place = fluid.CPUPlace()
            main = fluid.Program()
            with fluid.program_guard(main):
                x = fluid.layers.data(name='x', shape=[13], dtype='float32')
                y = fluid.layers.data(name='y', shape=[1], dtype='float32')
                y_predict = fluid.layers.fc(input=x, size=1, act=None)
                cost = fluid.layers.square_error_cost(input=y_predict, label=y)
                avg_cost = fluid.layers.mean(cost)

                moment_optimizer = fluid.optimizer.MomentumOptimizer(learning_rate=0.001, momentum=0.9)
                moment_optimizer.minimize(avg_cost)

                fetch_list = [avg_cost]
                train_reader = paddle.batch(
                    paddle.dataset.uci_housing.train(), batch_size=1)
                feeder = fluid.DataFeeder(place=place, feed_list=[x, y])
                exe = fluid.Executor(place)
                exe.run(fluid.default_startup_program())
                for data in train_reader():
                    exe.run(main, feed=feeder.feed(data), fetch_list=fetch_list)

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    """
    _velocity_acc_str = "velocity"

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    def __init__(self,
                 learning_rate,
                 momentum,
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                 parameter_list=None,
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                 use_nesterov=False,
                 regularization=None,
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                 grad_clip=None,
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                 name=None):
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        assert learning_rate is not None
        assert momentum is not None
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        super(MomentumOptimizer, self).__init__(
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            learning_rate=learning_rate,
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            parameter_list=parameter_list,
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            regularization=regularization,
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            grad_clip=grad_clip,
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            name=name)
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        self.type = "momentum"
        self._momentum = momentum
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        self._use_nesterov = bool(use_nesterov)
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    def _create_accumulators(self, block, parameters):
        assert isinstance(block, framework.Block)

        for p in parameters:
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            self._add_accumulator(self._velocity_acc_str, p)
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    def _append_optimize_op(self, block, param_and_grad):
        assert isinstance(block, framework.Block)

        velocity_acc = self._get_accumulator(self._velocity_acc_str,
                                             param_and_grad[0])
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        lr = self._create_param_lr(param_and_grad)

        if framework.in_dygraph_mode():
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            _, _ = _C_ops.momentum(param_and_grad[0], param_and_grad[1],
                                   velocity_acc, lr, param_and_grad[0],
                                   velocity_acc, 'mu', self._momentum,
                                   'use_nesterov', self._use_nesterov)
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            return None
1443

1444
        attrs = {"mu": self._momentum, "use_nesterov": self._use_nesterov}
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        inputs = {
            "Param": [param_and_grad[0]],
            "Grad": [param_and_grad[1]],
            "Velocity": [velocity_acc],
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            "LearningRate": [lr]
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        }

        outputs = {
            "ParamOut": [param_and_grad[0]],
            "VelocityOut": [velocity_acc]
        }
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        # create the momentum optimize op
        momentum_op = block.append_op(
            type=self.type,
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            inputs=inputs,
            outputs=outputs,
            attrs=attrs,
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            stop_gradient=True)
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        return momentum_op
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class DGCMomentumOptimizer(Optimizer):
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    r"""
1469
	:api_attr: Static Graph
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    DGC (Deep Gradient Compression) Momentum Optimizer. Original paper is https://arxiv.org/abs/1712.01887
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    DGC reduces the communication bandwidth by sending only the important gradients (sparse update):\
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        only gradients larger than a threshold are transmitted.

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    To avoid losing information, DGC accumulates the rest of the gradients locally.
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    Eventually, these gradients become large enough to be transmitted.

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    Thus, DGC sends the large gradients immediately but eventually sends all of the gradients over time.
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    To ensure no loss of accuracy, DGC employs momentum correction and local gradient clipping on top of the gradient sparsification to maintain model performance.
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    DGC also uses momentum factor masking and warmup training to overcome the staleness problem caused by reduced communication.

    This optimizer will do two things:
1487

1488 1489
        1. Compress the gradient by get TopK import value from tensor \
            and use it for allreduce to reduce network bandwidth.
1490

1491
        2. Call momentum to optimize the cost.
1492 1493

    Args:
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        learning_rate (float|Variable): The learning rate used to update parameters. \
            It can be a float value or a Variable with one float value as a data element.
1496
        momentum (float): Momentum factor.
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        rampup_begin_step (int): The beginning step from which gradient compression is implemented.
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        rampup_step (int): Time steps used in sparsity warm-up periods. Default is 1.
            For example, if the sparsity is [0.75, 0.9375, 0.984375, 0.996, 0.999], and the rampup_step is 100, \
                it will use 0.75 at 0~19 steps, and 0.9375 at 20~39 steps, and so on. \
                And when reach sparsity array ends, it will use 0.999 then and after.
        sparsity (list[float]): Get top important element from gradient tensor, the ratio is (1 - current sparsity). \
            Default is [0.999]. For example, if the sparsity is [0.99, 0.999], \
                the top [1%, 0.1%] important element will be transmitted.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
1508
        use_nesterov (bool): Enables Nesterov momentum. True means use Nesterov. Default is False.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipByNorm, optional): Gradient cliping strategy. ``DGCMomentumOptimizer`` only support 
            :ref:`api_fluid_clip_GradientClipByNorm` , and if not, it will raise TypeError. Default None, 
            meaning there is no gradient clipping.
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        name (str, optional): This parameter is used by developers to print debugging information. \
            For details, please refer to :ref:`api_guide_Name`. Default is None.
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    Examples:
        .. code-block:: python

1523
            import paddle.fluid as fluid
1524
            optimizer = fluid.optimizer.DGCMomentumOptimizer(
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                        learning_rate=0.0001,
                        momentum=0.9,
                        rampup_step=1000,
                        rampup_begin_step=1252,
                        sparsity=[0.999, 0.999])
1530 1531

    """
1532 1533
    _u_velocity_acc_str = "_dgc_u_"
    _v_velocity_acc_str = "_dgc_v_"
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    def __init__(self,
                 learning_rate,
                 momentum,
                 rampup_begin_step,
                 rampup_step=1,
                 sparsity=[0.999],
1541
                 parameter_list=None,
1542 1543 1544
                 use_nesterov=False,
                 num_trainers=None,
                 regularization=None,
1545
                 grad_clip=None,
1546
                 name=None):
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        if framework.in_dygraph_mode():
            raise Exception("In dygraph, don't support DGCMomentumOptimizer.")
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        assert core.is_compiled_with_cuda(), \
            "Paddle is not compiled with CUDA. DGC is only support GPU for now."

1553 1554 1555 1556
        assert learning_rate is not None
        assert momentum is not None
        super(DGCMomentumOptimizer, self).__init__(
            learning_rate=learning_rate,
1557
            parameter_list=parameter_list,
1558
            regularization=regularization,
1559
            grad_clip=grad_clip,
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            name=name)
        self.type = "dgc_momentum"
        self._momentum = momentum
        self._use_nesterov = bool(use_nesterov)
1564

1565
        assert rampup_begin_step >= 0, "rampup_begin_step must >= 0"
1566
        self._rampup_begin_step = rampup_begin_step
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        self._rampup_step = rampup_step
        self._sparsity = sparsity
1569

1570
        self._rampup_begin_step_var = None
1571
        self._global_step_var = None
1572

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        self._dgc_clip_norm = None
        if grad_clip is not None:
            if not isinstance(grad_clip, GradientClipByNorm):
                raise TypeError(
                    "The type of grad_clip should be 'GradientClipByNorm', because DGCMomentumOptimizer only support GradientClipByNorm"
                )
            assert isinstance(
                num_trainers, int
            ), "The type of num_trainers should be 'int', but received %s" % type(
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                num_trainers)
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            assert num_trainers > 0, "The value of num_trainers should be greater than 0!"
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            self._num_trainers = num_trainers
1586
            self._dgc_clip_norm = grad_clip.clip_norm * (num_trainers**-0.5)
1587

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        self.regular_type, self.regular_coeff = self._get_regularization_param(
            self.regularization)
1590

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    def _get_regularization_param(self, regularization):
        regular_type = 0
        regular_coeff = 0.0
1594

1595 1596
        if regularization is not None:
            regular_coeff = regularization._regularization_coeff
1597
            from .regularizer import L1Decay, L2Decay
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            if isinstance(regularization, L1Decay):
                regular_type = 1
            elif isinstance(regularization, L2Decay):
                regular_type = 2
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            else:
                assert False, 'regularization must be None|L1Decay|L2Deacy'
1604
        return regular_type, regular_coeff
1605

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    def _is_use_dgc(self, param_var, grad_var):
        var_numel = abs(reduce(lambda x, y: x * y, param_var.shape))
        if var_numel < 16384 or \
           param_var.type == core.VarDesc.VarType.SELECTED_ROWS  or \
           grad_var.type == core.VarDesc.VarType.SELECTED_ROWS  or  \
               param_var.dtype != core.VarDesc.VarType.FP32 :
            return False
        return True

    def _append_optimize_op(self, block, param_and_grad):
        assert isinstance(block, framework.Block)
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        velocity_acc = self._get_accumulator(self._u_velocity_acc_str,
                                             param_and_grad[0])
        assert velocity_acc is not None

        inputs = {
            "Param": param_and_grad[0],
            "Grad": param_and_grad[1],
            "Velocity": velocity_acc,
            "LearningRate": self._create_param_lr(param_and_grad),
        }
        outputs = {
            "ParamOut": param_and_grad[0],
            "VelocityOut": velocity_acc,
        }
        attrs = {"mu": self._momentum, "use_nesterov": self._use_nesterov}
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        if not self._is_use_dgc(param_and_grad[0], param_and_grad[1]):
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            type = "momentum"
        else:
            type = "dgc_momentum"
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            inputs.update({
                "current_step": self._global_step_var,
                "nranks": self._nranks_var
            })
            outputs.update({'Grad_out': param_and_grad[1]})
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            attrs.update({"rampup_begin_step": float(self._rampup_begin_step)})
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        # create the dgc momentum optimize op
        dgc_momentum_op = block.append_op(
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            type=type,
            inputs=inputs,
            outputs=outputs,
            attrs=attrs,
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            stop_gradient=True)
        return dgc_momentum_op

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    def _add_auto_increment_var(self, counter_name, begin, step=1):
        helper = LayerHelper('global_step_counter')
        counter, is_new_var = helper.create_or_get_global_variable(
            name=counter_name, dtype='float32', shape=[1], persistable=True)
        if is_new_var:
            helper.set_variable_initializer(
                counter,
                initializer=Constant(
                    value=float(begin - 1), force_cpu=True))
            helper.main_program.global_block()._prepend_op(
                type='increment',
                inputs={'X': [counter]},
                outputs={'Out': [counter]},
                attrs={'step': float(step)},
                stop_gradient=True)
            counter.stop_gradient = True

        return counter

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    def _add_nranks_var(self, name, value=-1):
        helper = LayerHelper('global_step_counter')
        counter, is_new_var = helper.create_or_get_global_variable(
            name=name, dtype='float32', shape=[1], persistable=True)
        if is_new_var:
            helper.set_variable_initializer(
                counter,
                initializer=Constant(
                    value=float(value), force_cpu=True))
            counter.stop_gradient = True

        return counter

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    def _append_dgc_ops(self, param_and_grads):
        main_program = default_main_program()
        main_program._enable_dgc = True

        # step counter
        self._global_step_var = self._add_auto_increment_var(
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            counter_name=core.dgc.kDGCCounterName(), begin=0)
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        self._nranks_var = self._add_nranks_var(
            name=core.dgc.kDGCNRanksName(), value=-1)

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        # rampup begin step var for all_reduce_op_handle
        self._rampup_begin_step_var = tensor.create_global_var(
            shape=[1],
            dtype=core.VarDesc.VarType.FP32,
            persistable=True,
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            name=core.dgc.kDGCRampUpBeginStepName(),
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            value=self._rampup_begin_step * 1.0,
            force_cpu=True)

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        self.helper = LayerHelper(self.__class__.__name__)

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        for param_var, grad_var in param_and_grads:
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            # reuse velocity in dgc_op and dgc_momentum_op
            u_var = self._add_accumulator(self._u_velocity_acc_str, param_var)

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            if not self._is_use_dgc(param_var, grad_var):
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                continue

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            v_var = self._add_accumulator(self._v_velocity_acc_str, param_var)
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            k_var = tensor.create_global_var(
                shape=[1],
                dtype=param_var.dtype,
                persistable=True,
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                name=param_var.name + core.dgc.kDGCKName(),
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                value=0.0,
                force_cpu=True)

            encoded_var = tensor.create_global_var(
                shape=[1],
                dtype=param_var.dtype,
                persistable=True,
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                name=param_var.name + core.dgc.kDGCEncodedName(),
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                value=0.0,
                force_cpu=False)

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            gather_var = tensor.create_global_var(
                shape=[1],
                dtype=param_var.dtype,
                persistable=True,
                name=param_var.name + core.dgc.kDGCGatherName(),
                value=0.0,
                force_cpu=False)

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            # del back oprolevarname
            op_maker = core.op_proto_and_checker_maker
            backward = core.op_proto_and_checker_maker.OpRole.Backward
            for op in main_program.global_block().ops:
                if not self._is_the_backward_op(op):
                    continue

                var_attr = op.all_attrs()[op_maker.kOpRoleVarAttrName()]
                if param_var.name not in var_attr:
                    continue

                var_attr.remove(param_var.name)
                var_attr.remove(grad_var.name)
                if len(var_attr) > 1:
                    op._set_attr(op_maker.kOpRoleVarAttrName(), var_attr)
                else:
                    op._remove_attr(op_maker.kOpRoleVarAttrName())

            clip_var = grad_var
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            if self._dgc_clip_norm is not None:
                clip_var = self._append_clip_norm(grad_var, self._dgc_clip_norm)
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            self._dgc_op(param_var, clip_var, grad_var, u_var, v_var, k_var,
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                         encoded_var, gather_var)
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    def _is_the_backward_op(self, op):
        op_maker = core.op_proto_and_checker_maker
        backward = core.op_proto_and_checker_maker.OpRole.Backward
        if op_maker.kOpRoleVarAttrName() in op.attr_names and \
                int(op.all_attrs()[op_maker.kOpRoleAttrName()]) == int(backward):
            return True
        return False

    def _clip_by_norm(self, x, max_norm, name=None):
        args = {'x': x, 'max_norm': max_norm, 'name': name}

        helper = LayerHelper("dgc_clip_by_norm_op", **args)

        if name is None:
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            name = unique_name.generate_with_ignorable_key(".".join(
                [helper.name, 'tmp']))
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        out = helper.create_variable(
            type=x.type, name=name, dtype=x.dtype, persistable=False)

        helper.append_op(
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            type="dgc_clip_by_norm",
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            inputs={"X": x,
                    "current_step": self._global_step_var},
            attrs={
                "max_norm": max_norm,
                "rampup_begin_step": float(self._rampup_begin_step)
            },
            outputs={"Out": out})
        return out

    def _append_clip_norm(self, grad_var, clip_norm):
        with grad_var.block.program._backward_role_guard():
            return self._clip_by_norm(
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                x=grad_var, max_norm=clip_norm, name=grad_var.name)
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    def _dgc_op(self, param_var, clip_var, grad_var, u_var, v_var, k_var,
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                encoded_var, gather_var):
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        block = framework.default_main_program().global_block()
        op_maker = core.op_proto_and_checker_maker
1804

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        regular_type = self.regular_type
        regular_coeff = self.regular_coeff
        # The regularizer of the Parameters have higher priority
        if param_var.regularizer is not None:
            regular_type, regular_coeff = self._get_regularization_param(
                param_var.regularizer)

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        dgc_op = block.append_op(
            type="dgc",
            inputs={
                "U": u_var,
                "V": v_var,
                "Grad": clip_var,
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                "Param": param_var,
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                "current_step": self._global_step_var,
                "nranks": self._nranks_var,
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            },
            outputs={
                "U_out": u_var,
                "V_out": v_var,
                "EncodeGrad": encoded_var,
                "k": k_var,
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                "Grad_out": grad_var,
                "GatherBuff": gather_var,
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            },
            attrs={
                "m": self._momentum,
                "sparsity": self._sparsity,
                "use_nesterov": self._use_nesterov,
                "rampup_begin_step": float(self._rampup_begin_step),
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                "rampup_step": float(self._rampup_step),
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                "regular_coeff": float(regular_coeff),
                "regular_type": int(regular_type),
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            },
            stop_gradient=True)

        backward = op_maker.OpRole.Backward
        dgc_op._set_attr(op_maker.kOpRoleAttrName(), backward)
        dgc_op._set_attr(op_maker.kOpRoleVarAttrName(),
                         [param_var.name, grad_var.name])

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    @imperative_base.no_grad
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    def apply_gradients(self, params_grads):
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        # Note: since we can't use all_reduce_op now,
        # dgc_op should be the last op of one grad.
        # Maybe need a grad allreduce pass.
        self._append_dgc_ops(params_grads)

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        params_grads = sorted(params_grads, key=lambda x: x[0].name)
        params_grads, table_param_and_grad, table_optimize_op = \
            self._process_distribute_lookuptable(params_grads)

        not_dgc_params_grads = []
        dgc_params_grads = []
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        # DGC clip and regularization in optimizer.backward
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        for param, grad in params_grads:
            if not self._is_use_dgc(param, grad):
                not_dgc_params_grads.append((param, grad))
            else:
                dgc_params_grads.append((param, grad))

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        # 'optimizer(grad_clip)' or 'set_gradient_clip'
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        if self._grad_clip is not None:
            not_dgc_params_grads = self._grad_clip(not_dgc_params_grads)
        else:
            not_dgc_params_grads = append_gradient_clip_ops(
                not_dgc_params_grads)
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        not_dgc_params_grads = self.append_regularization_ops(
            not_dgc_params_grads, self.regularization)
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        params_grads = not_dgc_params_grads + dgc_params_grads
        params_grads = sorted(params_grads, key=lambda x: x[0].name)

        optimize_ops = self._create_optimization_pass(params_grads)
        if table_optimize_op is not None:
            optimize_ops.append(table_optimize_op)
            params_grads.append(table_param_and_grad)

        return optimize_ops

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1887
class LarsMomentumOptimizer(Optimizer):
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    r"""
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    Momentum optimizer with LARS support

    The update equations are as follows:

    .. math::

        & local\_learning\_rate = learning\_rate * lars\_coeff * \\
          \\frac{||param||}{||gradient|| + lars\_weight\_decay * ||param||}

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        & velocity = mu * velocity + local\_learning\_rate * (gradient + lars\_weight\_decay * param + epsilon)
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        & param = param - velocity

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    Parameters:
        learning_rate (float|Variable): The learning rate used to update parameters. \
            Can be a float value or a Variable with one float value as data element. \
            momentum (float): momentum factor
        lars_coeff (float): Defines how much we trust the layer to change its weights.
        lars_weight_decay (float): Weight decay coefficient for decaying using LARS.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
            ( :ref:`api_fluid_clip_GradientClipByGlobalNorm` , :ref:`api_fluid_clip_GradientClipByNorm` , 
            :ref:`api_fluid_clip_GradientClipByValue` ). Default None, meaning there is no gradient clipping.
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        name (str, optional): This parameter is used by developers to print debugging information. \
            For details, please refer to :ref:`api_guide_Name`. Default is None.
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        exclude_from_weight_decay (list[str], optional): Name string of layers which will be exclude from lars weight decay. Default is None.
        epsilon (float, optional): Epsilon to avoid Division by Zero when calculate local lr. Default is 0.
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        multi_precision (bool, optional): Whether to use multi-precision during weight updating.
        rescale_grad (float, optional): Multiply the gradient with `rescale_grad` \
            before updating. Often choose to be `1.0/batch_size`.
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    Examples:
        .. code-block:: python

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            import paddle.fluid as fluid
            import numpy as np

            np_inp = np.array([[1.0, 2.0], [3.0, 4.0]], dtype=np.float32)
            inp = fluid.layers.data(
                name="inp", shape=[2, 2], append_batch_size=False)
            out = fluid.layers.fc(inp, size=3)
            out = fluid.layers.reduce_sum(out)
            optimizer = fluid.optimizer.LarsMomentumOptimizer(learning_rate=0.001, momentum=0.9)
            optimizer.minimize(out)

            exe = fluid.Executor(fluid.CPUPlace())
            exe.run(fluid.default_startup_program())
            exe.run(
                feed={"inp": np_inp},
                fetch_list=[out.name])
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    """
    _velocity_acc_str = "velocity"

    def __init__(self,
                 learning_rate,
                 momentum,
                 lars_coeff=0.001,
                 lars_weight_decay=0.0005,
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                 parameter_list=None,
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                 regularization=None,
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                 grad_clip=None,
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                 name=None,
                 exclude_from_weight_decay=None,
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                 epsilon=0,
                 multi_precision=False,
                 rescale_grad=1.0):
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        assert learning_rate is not None
        assert momentum is not None
        super(LarsMomentumOptimizer, self).__init__(
            learning_rate=learning_rate,
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            parameter_list=parameter_list,
1968
            regularization=regularization,
1969
            grad_clip=grad_clip,
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            name=name)
        self.type = "lars_momentum"
        self._momentum = momentum
        self._lars_coeff = float(lars_coeff)
        self._lars_weight_decay = float(lars_weight_decay)
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        self._epsilon = float(epsilon)
        if exclude_from_weight_decay is None:
            self._exclude_from_weight_decay = []
        else:
            self._exclude_from_weight_decay = exclude_from_weight_decay
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        self._multi_precision = multi_precision
        self._rescale_grad = float(rescale_grad)
        self._master_weights = {}

    def _create_master_weight(self, param):
        assert isinstance(self.helper, LayerHelper)

        var_name = param.name + '_fp32_master'
        var_name = unique_name.generate(var_name)
        var = layers.create_global_var(
            name=var_name,
            shape=param.shape,
            value=0,
            dtype='float32',
            persistable=True)
        block = self.helper.startup_program.global_block()
        block.append_op(
            type="cast",
            inputs={"X": [param]},
            outputs={"Out": [var]},
            attrs={
                "in_dtype": param.dtype,
                "out_dtype": core.VarDesc.VarType.FP32
            })
        self._master_weights[param.name] = var
        return var

    def _get_accumulator(self, name, param):
        """Utility function to fetch an accumulator for a parameter
        Args:
            name: name of the accumulator
            param: parameter variable for which accumulator is to be fetched
        Returns:
            accumulator variable for the parameter
        """
        if self._name is not None:
            name = self._name + "_" + name
        find_master = self._multi_precision and param.dtype == core.VarDesc.VarType.FP16
        target_param = self._master_weights[
            param.name] if find_master else param
        target_name = target_param.name
        if (name not in self._accumulators or
                target_name not in self._accumulators[name]):
            raise Exception("Accumulator {} does not exist for parameter {}".
                            format(name, target_name))
        return self._accumulators[name][target_name]
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    def _create_accumulators(self, block, parameters):
        assert isinstance(block, framework.Block)

        for p in parameters:
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            if self._multi_precision and p.dtype == core.VarDesc.VarType.FP16:
                master_p = self._create_master_weight(p)
                self._add_accumulator(self._velocity_acc_str, master_p)
                continue
            if p.dtype == core.VarDesc.VarType.FP16 and not self._multi_precision:
                warnings.warn(
                    "Accumulating with FP16 in optimizer can lead to poor accuracy or slow convergence."
                    "Consider using multi_precision=True option of the Lars optimizer."
                )
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            self._add_accumulator(self._velocity_acc_str, p)

    def _append_optimize_op(self, block, param_and_grad):
        assert isinstance(block, framework.Block)
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        _lars_weight_decay = self._lars_weight_decay
        param_name = param_and_grad[0].name
        if len(self._exclude_from_weight_decay) > 0:
            for name in self._exclude_from_weight_decay:
                if name in param_name:
                    _lars_weight_decay = 0.0
                    break

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        velocity_acc = self._get_accumulator(self._velocity_acc_str,
                                             param_and_grad[0])
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        lr = self._create_param_lr(param_and_grad)

        find_master = self._multi_precision and param_and_grad[
            0].dtype == core.VarDesc.VarType.FP16
        master_weight = (self._master_weights[param_and_grad[0].name]
                         if find_master else None)

        attrs = {
            "mu": self._momentum,
            "lars_coeff": self._lars_coeff,
            "lars_weight_decay": _lars_weight_decay,
            "multi_precision": find_master,
            "rescale_grad": self._rescale_grad
        }

        inputs = {
            "Param": param_and_grad[0],
            "Grad": param_and_grad[1],
            "Velocity": velocity_acc,
            "LearningRate": lr
        }

        outputs = {"ParamOut": param_and_grad[0], "VelocityOut": velocity_acc}

        if find_master:
            inputs["MasterParam"] = master_weight
            outputs["MasterParamOut"] = master_weight

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        # create the momentum optimize op
        momentum_op = block.append_op(
            type=self.type,
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            inputs=inputs,
            outputs=outputs,
            attrs=attrs,
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            stop_gradient=True)
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        return momentum_op


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class AdagradOptimizer(Optimizer):
2094
    r"""
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    The Adaptive Gradient optimizer (Adagrad for short) can adaptively assign
    different learning rates to individual parameters.
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    The parameter ``param_out`` update rule with gradient ``grad``:
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    .. math::

        moment\_out &= moment + grad * grad

        param\_out &= param - \\frac{learning\_rate * grad}{\sqrt{moment\_out} + \epsilon}

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    Related paper: `Adaptive Subgradient Methods for Online Learning and
    Stochastic Optimization <http://www.jmlr.org/papers/volume12/duchi11a/duchi11a.pdf>`_.

    The original paper does not have the ``epsilon`` attribute. It is added here
    in our implementation as also proposed `Per-parameter adaptive learning rate
    methods <http://cs231n.github.io/neural-networks-3/#ada>`_
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    for numerical stability to avoid the division by zero error.

    Args:
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        learning_rate (float|Variable): The learning rate used to update ``Parameter``.
            It can be a float value or a ``Variable`` with a float type.
        epsilon (float, optional): A small float value for numerical stability.
            The default value is 1e-06.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
            ( :ref:`api_fluid_clip_GradientClipByGlobalNorm` , :ref:`api_fluid_clip_GradientClipByNorm` , 
            :ref:`api_fluid_clip_GradientClipByValue` ). Default None, meaning there is no gradient clipping.
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        name (str, optional): Normally there is no need for user to set this property.
            For more information, please refer to :ref:`api_guide_Name`.
            The default value is None.
        initial_accumulator_value (float, optional): Initial value for moment accumulator.
            The default value is 0.0.
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    Examples:
        .. code-block:: python

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            import numpy as np
2141
            import paddle.fluid as fluid
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            np_inp = np.array([[1.0, 2.0], [3.0, 4.0]], dtype=np.float32)
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            inp = fluid.data(name="inp", shape=[2, 2])
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            out = fluid.layers.fc(inp, size=3)
            out = fluid.layers.reduce_sum(out)
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            optimizer = fluid.optimizer.AdagradOptimizer(learning_rate=0.2)
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            optimizer.minimize(out)

            exe = fluid.Executor(fluid.CPUPlace())
            exe.run(fluid.default_startup_program())
            exe.run(
                feed={"inp": np_inp},
                fetch_list=[out.name])
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    """
    _moment_acc_str = "moment"

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    def __init__(self,
                 learning_rate,
                 epsilon=1.0e-6,
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                 parameter_list=None,
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                 regularization=None,
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                 grad_clip=None,
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                 name=None,
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                 initial_accumulator_value=0.0):
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        assert learning_rate is not None
        assert epsilon is not None
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        super(AdagradOptimizer, self).__init__(
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            learning_rate=learning_rate,
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            parameter_list=parameter_list,
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            regularization=regularization,
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            grad_clip=grad_clip,
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            name=name)
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        self.type = "adagrad"
        self._epsilon = epsilon
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        self.initial_accumulator_value = initial_accumulator_value
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    def _create_accumulators(self, block, parameters):
        assert isinstance(block, framework.Block)

        for p in parameters:
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            self._add_accumulator(
                self._moment_acc_str,
                p,
                fill_value=self.initial_accumulator_value)
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    def _append_optimize_op(self, block, param_and_grad):
        assert isinstance(block, framework.Block)

        moment_acc = self._get_accumulator(self._moment_acc_str,
                                           param_and_grad[0])
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        # Create the adagrad optimizer op
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        adagrad_op = block.append_op(
            type=self.type,
            inputs={
                "Param": param_and_grad[0],
                "Grad": param_and_grad[1],
                "Moment": moment_acc,
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                "LearningRate": self._create_param_lr(param_and_grad)
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            },
            outputs={"ParamOut": param_and_grad[0],
                     "MomentOut": moment_acc},
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            attrs={"epsilon": self._epsilon},
            stop_gradient=True)
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        return adagrad_op
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class AdamOptimizer(Optimizer):
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    r"""
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    The Adam optimizer uses an optimization described at the end
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    of section 2 of `Adam paper <https://arxiv.org/abs/1412.6980>`_ ,
    it can dynamically adjusts the learning rate of each parameter using
    the 1st moment estimates and the 2nd moment estimates of the gradient.
    
    The parameter ``param_out`` update rule with gradient ``grad``:
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    .. math::

        t & = t + 1

        moment\_1\_out & = {\\beta}_1 * moment\_1 + (1 - {\\beta}_1) * grad

        moment\_2\_out & = {\\beta}_2 * moment\_2 + (1 - {\\beta}_2) * grad * grad

        learning\_rate & = learning\_rate * \\
                          \\frac{\sqrt{1 - {\\beta}_2^t}}{1 - {\\beta}_1^t}

        param\_out & = param - learning\_rate * \\frac{moment\_1}{\sqrt{moment\_2} + \epsilon}

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    Related paper: `Adam: A Method for Stochastic Optimization <https://arxiv.org/abs/1412.6980>`_

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    Args:
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        learning_rate (float|Variable, optional): The learning rate used to update ``Parameter``.
            It can be a float value or a ``Variable`` with a float type. The default value is 0.001.
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        beta1 (float|Variable, optional): The exponential decay rate for the 1st moment estimates.
            It should be a float number or a Variable with shape [1] and data type as float32.
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            The default value is 0.9.
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        beta2 (float|Variable, optional): The exponential decay rate for the 2nd moment estimates.
            It should be a float number or a Variable with shape [1] and data type as float32.
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            The default value is 0.999.
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        epsilon (float|Tensor, optional): A small float value for numerical stability.
            It should be a float number or a Variable with shape [1] and data type as float32.
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            The default value is 1e-08.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
            ( :ref:`api_fluid_clip_GradientClipByGlobalNorm` , :ref:`api_fluid_clip_GradientClipByNorm` , 
            :ref:`api_fluid_clip_GradientClipByValue` ). Default None, meaning there is no gradient clipping.
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        name (str, optional): Normally there is no need for user to set this property.
            For more information, please refer to :ref:`api_guide_Name`.
            The default value is None.
        lazy_mode (bool, optional): The official Adam algorithm has two moving-average accumulators.
            The accumulators are updated at every step. Every element of the two moving-average
            is updated in both dense mode and sparse mode. If the size of parameter is very large,
            then the update may be very slow. The lazy mode only update the element that has
            gradient in current mini-batch, so it will be much more faster. But this mode has
            different semantics with the original Adam algorithm and may lead to different result.
            The default value is False.
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        use_global_beta_pow (bool, optional): Whether to use global beta_pow. If true, Adam will use global beta_pow 
            for whole model instead of creating beta_pow for each parameter. Default is false.
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        flatten_param_grads (bool, optional): Whether to flatten all parameters and gradients. Default is false.
        align_size (int, optional): The alignment size when flatten parameters and gradients. Default is -1, which means
            use same align_size as allocator. 
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    Examples:
        .. code-block:: python

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            import paddle
            import paddle.fluid as fluid

            place = fluid.CPUPlace()
            main = fluid.Program()
            with fluid.program_guard(main):
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                x = fluid.data(name='x', shape=[None, 13], dtype='float32')
                y = fluid.data(name='y', shape=[None, 1], dtype='float32')
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                y_predict = fluid.layers.fc(input=x, size=1, act=None)
                cost = fluid.layers.square_error_cost(input=y_predict, label=y)
                avg_cost = fluid.layers.mean(cost)

                adam_optimizer = fluid.optimizer.AdamOptimizer(0.01)
                adam_optimizer.minimize(avg_cost)

                fetch_list = [avg_cost]
                train_reader = paddle.batch(
                    paddle.dataset.uci_housing.train(), batch_size=1)
                feeder = fluid.DataFeeder(place=place, feed_list=[x, y])
                exe = fluid.Executor(place)
                exe.run(fluid.default_startup_program())
                for data in train_reader():
                    exe.run(main, feed=feeder.feed(data), fetch_list=fetch_list)
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        .. code-block:: python

            # Adam with beta1/beta2 as Variable
            import paddle
            import paddle.fluid as fluid
            import paddle.fluid.layers.learning_rate_scheduler as lr_scheduler

            place = fluid.CPUPlace()
            main = fluid.Program()
            with fluid.program_guard(main):
                x = fluid.data(name='x', shape=[None, 13], dtype='float32')
                y = fluid.data(name='y', shape=[None, 1], dtype='float32')
                y_predict = fluid.layers.fc(input=x, size=1, act=None)
                cost = fluid.layers.square_error_cost(input=y_predict, label=y)
                avg_cost = fluid.layers.mean(cost)

                # define beta decay variable
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                def get_decayed_betas(beta1_init, beta2_init, decay_steps, decay_rate, epsilon_init):
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                    global_step = lr_scheduler._decay_step_counter()

                    beta1 = fluid.layers.create_global_var(
                        shape=[1],
                        value=float(beta1_init),
                        dtype='float32',
                        # set persistable for save checkpoints and resume
                        persistable=True,
                        name="beta1")
                    beta2 = fluid.layers.create_global_var(
                        shape=[1],
                        value=float(beta2_init),
                        dtype='float32',
                        # set persistable for save checkpoints and resume
                        persistable=True,
                        name="beta2")
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                    epsilon = fluid.layers.create_global_var(
                        shape=[1],
                        value=float(epsilon_init),
                        dtype='float32',
                        # set persistable for save checkpoints and resume
                        persistable=True,
                        name="epsilon")
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                    div_res = global_step / decay_steps
                    decayed_beta1 = beta1_init * (decay_rate**div_res)
                    decayed_beta2 = beta2_init * (decay_rate**div_res)
                    fluid.layers.assign(decayed_beta1, beta1)
                    fluid.layers.assign(decayed_beta2, beta2)

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                    return beta1, beta2, epsilon
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                beta1, beta2, epsilon = get_decayed_betas(0.9, 0.99, 1e5, 0.9, 1e-8)
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                adam_optimizer = fluid.optimizer.AdamOptimizer(
                                                    learning_rate=0.01,
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                                                    beta1=beta1,
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                                                    beta2=beta2,
                                                    epsilon=epsilon)
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                adam_optimizer.minimize(avg_cost)

                fetch_list = [avg_cost]
                train_reader = paddle.batch(
                    paddle.dataset.uci_housing.train(), batch_size=1)
                feeder = fluid.DataFeeder(place=place, feed_list=[x, y])
                exe = fluid.Executor(place)
                exe.run(fluid.default_startup_program())
                for data in train_reader():
                    exe.run(main, feed=feeder.feed(data), fetch_list=fetch_list)
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    """
    _moment1_acc_str = "moment1"
    _moment2_acc_str = "moment2"
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    _beta1_pow_acc_str = "beta1_pow_acc"
    _beta2_pow_acc_str = "beta2_pow_acc"
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    def __init__(self,
                 learning_rate=0.001,
                 beta1=0.9,
                 beta2=0.999,
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                 epsilon=1e-8,
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                 parameter_list=None,
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                 regularization=None,
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                 grad_clip=None,
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                 name=None,
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                 lazy_mode=False,
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                 use_global_beta_pow=False,
                 flatten_param_grads=False,
                 align_size=-1):
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        assert learning_rate is not None
        assert beta1 is not None
        assert beta2 is not None
        assert epsilon is not None
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        super(AdamOptimizer, self).__init__(
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            learning_rate=learning_rate,
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            parameter_list=parameter_list,
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            regularization=regularization,
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            grad_clip=grad_clip,
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            flatten_param_grads=flatten_param_grads,
            align_size=align_size,
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            name=name)
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        self.type = "adam"
        self._beta1 = beta1
        self._beta2 = beta2
        self._epsilon = epsilon
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        self._lazy_mode = lazy_mode
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        self._use_global_beta_pow = use_global_beta_pow
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    def _create_accumulators(self, block, parameters):
        assert isinstance(block, framework.Block)

        # Create accumulator tensors for first and second moments
        for p in parameters:
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            self._add_accumulator(self._moment1_acc_str, p)
            self._add_accumulator(self._moment2_acc_str, p)
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            if not self._use_global_beta_pow:
                self._add_accumulator(
                    name=self._beta1_pow_acc_str,
                    param=p,
                    fill_value=0.9 if isinstance(self._beta1, Variable) \
                            else self._beta1,
                    shape=[1],
                    type=core.VarDesc.VarType.LOD_TENSOR, device='cpu')
                self._add_accumulator(
                    name=self._beta2_pow_acc_str,
                    param=p,
                    fill_value=0.999 if isinstance(self._beta2, Variable) \
                            else self._beta2,
                    shape=[1],
                    type=core.VarDesc.VarType.LOD_TENSOR, device='cpu')
        if self._use_global_beta_pow:
            self._add_global_accumulator(
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                name=self._beta1_pow_acc_str,
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                fill_value=0.9 if isinstance(self._beta1, Variable) \
                        else self._beta1,
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                shape=[1],
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                type=core.VarDesc.VarType.LOD_TENSOR, device='cpu')
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            self._add_global_accumulator(
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                name=self._beta2_pow_acc_str,
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                fill_value=0.999 if isinstance(self._beta2, Variable) \
                        else self._beta2,
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                shape=[1],
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                type=core.VarDesc.VarType.LOD_TENSOR, device='cpu')
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    def _append_optimize_op(self, block, param_and_grad):
        assert isinstance(block, framework.Block)

        moment1 = self._get_accumulator(self._moment1_acc_str,
                                        param_and_grad[0])
        moment2 = self._get_accumulator(self._moment2_acc_str,
                                        param_and_grad[0])
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        if self._use_global_beta_pow:
            beta1_pow_acc = self._get_global_accumulator(
                self._beta1_pow_acc_str)
            beta2_pow_acc = self._get_global_accumulator(
                self._beta2_pow_acc_str)
        else:
            beta1_pow_acc = self._get_accumulator(self._beta1_pow_acc_str,
                                                  param_and_grad[0])
            beta2_pow_acc = self._get_accumulator(self._beta2_pow_acc_str,
                                                  param_and_grad[0])
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        lr = self._create_param_lr(param_and_grad)
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        # create the adam optimize op
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        if framework.in_dygraph_mode():
            _beta1 = self._beta1 if not isinstance(
                self._beta1, Variable) else self._beta1.numpy().item(0)
            _beta2 = self._beta2 if not isinstance(
                self._beta2, Variable) else self._beta2.numpy().item(0)
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            _, _, _, _, _ = _C_ops.adam(
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                param_and_grad[0], param_and_grad[1], lr, moment1, moment2,
                beta1_pow_acc, beta2_pow_acc, param_and_grad[0], moment1,
                moment2, beta1_pow_acc, beta2_pow_acc, 'epsilon', self._epsilon,
                'lazy_mode', self._lazy_mode, 'min_row_size_to_use_multithread',
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                1000, 'beta1', _beta1, 'beta2', _beta2, 'use_global_beta_pow',
                self._use_global_beta_pow)
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            return None

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        inputs = {
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            "Param": [param_and_grad[0]],
            "Grad": [param_and_grad[1]],
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            "LearningRate": [lr],
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            "Moment1": [moment1],
            "Moment2": [moment2],
            "Beta1Pow": [beta1_pow_acc],
            "Beta2Pow": [beta2_pow_acc]
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        }
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        # Pass found_inf to adam, to skip update for not only param, but also momentum and beta_pow
        found_inf = self._get_auxiliary_var('found_inf')

        if found_inf:
            inputs['SkipUpdate'] = found_inf

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        outputs = {
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            "ParamOut": [param_and_grad[0]],
            "Moment1Out": [moment1],
            "Moment2Out": [moment2],
            "Beta1PowOut": [beta1_pow_acc],
            "Beta2PowOut": [beta2_pow_acc],
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        }
        attrs = {
            "lazy_mode": self._lazy_mode,
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            "min_row_size_to_use_multithread": 1000,
            'use_global_beta_pow': self._use_global_beta_pow
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        }

        if isinstance(self._beta1, Variable):
            inputs['Beta1Tensor'] = self._beta1
        else:
            attrs['beta1'] = self._beta1
        if isinstance(self._beta2, Variable):
            inputs['Beta2Tensor'] = self._beta2
        else:
            attrs['beta2'] = self._beta2
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        if isinstance(self._epsilon, Variable):
            inputs['EpsilonTensor'] = self._epsilon
        else:
            attrs['epsilon'] = self._epsilon
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        adam_op = block.append_op(
            type=self.type,
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            inputs=inputs,
            outputs=outputs,
            attrs=attrs,
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            stop_gradient=True)
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        return adam_op

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    def _finish_update(self, block, parameters_and_grads):
        r"""Update beta1_pow and beta2_pow accumulator
        """
        assert isinstance(block, framework.Block)
        if self._use_global_beta_pow:
            beta1_pow_acc = self._get_global_accumulator(
                self._beta1_pow_acc_str)
            beta2_pow_acc = self._get_global_accumulator(
                self._beta2_pow_acc_str)

            with block.program._optimized_guard([]):
                inputs = {"X": beta1_pow_acc}
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                outputs = {"Out": beta1_pow_acc}
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                attrs = {}
                if isinstance(self._beta1, Variable):
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                    inputs["Y"] = self._beta1
                    # use elementwise_mul for better performance
                    block.append_op(
                        type="elementwise_mul",
                        inputs=inputs,
                        outputs=outputs,
                        attrs=attrs,
                        stop_gradient=True)
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                else:
                    attrs['scale'] = self._beta1
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                    block.append_op(
                        type="scale",
                        inputs=inputs,
                        outputs=outputs,
                        attrs=attrs,
                        stop_gradient=True)
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                inputs = {"X": beta2_pow_acc}
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                outputs = {"Out": beta2_pow_acc}
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                attrs = {}
                if isinstance(self._beta2, Variable):
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                    inputs["Y"] = self._beta2
                    # use elementwise_mul for better performance
                    block.append_op(
                        type="elementwise_mul",
                        inputs=inputs,
                        outputs=outputs,
                        attrs=attrs,
                        stop_gradient=True)
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                else:
                    attrs['scale'] = self._beta2
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                    block.append_op(
                        type="scale",
                        inputs=inputs,
                        outputs=outputs,
                        attrs=attrs,
                        stop_gradient=True)
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class AdamaxOptimizer(Optimizer):
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    r"""
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    The Adamax optimizer is implemented based on the Adamax Optimization 
    in Section 7 of `Adam paper <https://arxiv.org/abs/1412.6980>`_.
    The Adamax algorithm is a variant of the Adam algorithm based on the infinite norm,
    which makes the learning rate update algorithm more stable and simple.
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    The parameter ``param_out`` update rule with gradient ``grad``:
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    .. math::

        t & = t + 1

        moment\_out & = {\\beta}_1 * moment + (1 - {\\beta}_1) * grad

        inf\_norm\_out & = max({\\beta}_2 * inf\_norm + \epsilon, |grad|)

        learning\_rate & = \\frac{learning\_rate}{1 - {\\beta}_1^t}

        param\_out & = param - learning\_rate * \\frac{moment\_out}{inf\_norm\_out}

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    Related paper: `Adam: A Method for Stochastic Optimization <https://arxiv.org/abs/1412.6980>`_
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    The original paper does not have an ``epsilon`` attribute,
    it is added here for numerical stability to prevent the division by 0 error.

    Args:
        learning_rate (float|Variable, optional): The learning rate used to update ``Parameter``.
            It can be a float value or a ``Variable`` with a float type. The default value is 0.001.
        beta1 (float, optional): The exponential decay rate for the 1st moment estimates.
            The default value is 0.9.
        beta2 (float, optional): The exponential decay rate for the 2nd moment estimates.
            The default value is 0.999.
        epsilon (float, optional): A small float value for numerical stability.
            The default value is 1e-08.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
            ( :ref:`api_fluid_clip_GradientClipByGlobalNorm` , :ref:`api_fluid_clip_GradientClipByNorm` , 
            :ref:`api_fluid_clip_GradientClipByValue` ). Default None, meaning there is no gradient clipping.
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        name (str, optional): Normally there is no need for user to set this property.
            For more information, please refer to :ref:`api_guide_Name`.
            The default value is None.

    **Notes**:
        **Currently, AdamaxOptimizer doesn't support sparse parameter optimization.**
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    Examples:
        .. code-block:: python

          import paddle.fluid as fluid
          import numpy

          # First create the Executor.
          place = fluid.CPUPlace() # fluid.CUDAPlace(0)
          exe = fluid.Executor(place)

          train_program = fluid.Program()
          startup_program = fluid.Program()
          with fluid.program_guard(train_program, startup_program):
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              data = fluid.data(name='X', shape=[None, 1], dtype='float32')
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              hidden = fluid.layers.fc(input=data, size=10)
              loss = fluid.layers.mean(hidden)
2650
              adam = fluid.optimizer.AdamaxOptimizer(learning_rate=0.2)
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              adam.minimize(loss)

          # Run the startup program once and only once.
          exe.run(startup_program)

          x = numpy.random.random(size=(10, 1)).astype('float32')
          outs = exe.run(program=train_program,
                        feed={'X': x},
                         fetch_list=[loss.name])
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    """
    _moment_acc_str = "moment"
    _inf_norm_acc_str = "inf_norm"
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    _beta1_pow_acc_str = "beta1_pow_acc"
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    def __init__(self,
                 learning_rate=0.001,
                 beta1=0.9,
                 beta2=0.999,
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                 epsilon=1e-8,
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                 parameter_list=None,
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                 regularization=None,
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                 grad_clip=None,
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                 name=None):
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        assert learning_rate is not None
        assert beta1 is not None
        assert beta2 is not None
        assert epsilon is not None
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        super(AdamaxOptimizer, self).__init__(
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            learning_rate=learning_rate,
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            parameter_list=parameter_list,
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            regularization=regularization,
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            grad_clip=grad_clip,
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            name=name)
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        self.type = "adamax"
        self._beta1 = beta1
        self._beta2 = beta2
        self._epsilon = epsilon

    def _create_accumulators(self, block, parameters):
        # Create accumulator tensors for first moment and infinity norm
        for p in parameters:
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            self._add_accumulator(self._moment_acc_str, p)
            self._add_accumulator(self._inf_norm_acc_str, p)
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            self._add_accumulator(
                name=self._beta1_pow_acc_str,
                param=p,
                fill_value=self._beta1,
                shape=[1])
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    def _append_optimize_op(self, block, param_and_grad):
        assert isinstance(block, framework.Block)

        moment = self._get_accumulator(self._moment_acc_str, param_and_grad[0])
        inf_norm = self._get_accumulator(self._inf_norm_acc_str,
                                         param_and_grad[0])
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        beta1_pow_acc = self._get_accumulator(self._beta1_pow_acc_str,
                                              param_and_grad[0])
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        # create the adamax optimize op
        adamax_op = block.append_op(
            type=self.type,
            inputs={
                "Param": param_and_grad[0],
                "Grad": param_and_grad[1],
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                "LearningRate": self._create_param_lr(param_and_grad),
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                "Moment": moment,
                "InfNorm": inf_norm,
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                "Beta1Pow": beta1_pow_acc
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            },
            outputs={
                "ParamOut": param_and_grad[0],
                "MomentOut": moment,
                "InfNormOut": inf_norm
            },
            attrs={
                "beta1": self._beta1,
                "beta2": self._beta2,
                "epsilon": self._epsilon
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            },
            stop_gradient=True)
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        return adamax_op

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    def _finish_update(self, block, parameters_and_grads):
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        """Update Beta1 Power accumulator
        """
        assert isinstance(block, framework.Block)
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        for param, grad in parameters_and_grads:
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            if grad is None or param.trainable is False:
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                continue
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            with param.block.program._optimized_guard(
                [param, grad]), name_scope('adamx'):
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                beta1_pow_acc = self._get_accumulator(self._beta1_pow_acc_str,
                                                      param)
2744
                block.append_op(
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                    type="scale",
                    inputs={"X": beta1_pow_acc},
                    outputs={"Out": beta1_pow_acc},
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                    attrs={"scale": self._beta1},
                    stop_gradient=True)
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2752
class DpsgdOptimizer(Optimizer):
2753
    r"""
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    We implement the Dpsgd optimizer according to CCS16 paper -
    Deep Learning with Differential Privacy.

    Examples:
        .. code-block:: python

          import paddle.fluid as fluid
          import numpy

          # First create the Executor.
          place = fluid.CPUPlace() # fluid.CUDAPlace(0)
          exe = fluid.Executor(place)

          train_program = fluid.Program()
          startup_program = fluid.Program()
          with fluid.program_guard(train_program, startup_program):
              data = fluid.layers.data(name='X', shape=[1], dtype='float32')
              hidden = fluid.layers.fc(input=data, size=10)
              loss = fluid.layers.mean(hidden)
              optimizer = fluid.optimizer.Dpsgd(learning_rate=0.01, clip=10.0, batch_size=16.0, sigma=1.0)
              optimizer.minimize(loss)

          # Run the startup program once and only once.
          exe.run(startup_program)

          x = numpy.random.random(size=(10, 1)).astype('float32')
          outs = exe.run(program=train_program,
                        feed={'X': x},
                         fetch_list=[loss.name])

    Args:
        learning_rate (float|Variable): the learning rate used to update parameters. \
        Can be a float value or a Variable with one float value as data element.
        clip (float): clipping threshold
        batch_size (float): batch size.
        sigma (float): for gaussian noise.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
2791 2792
            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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    Notes:
       Currently, DpsgdOptimizer doesn't support sparse parameter optimization.
    """

    def __init__(self,
                 learning_rate=0.001,
                 clip=0.9,
                 batch_size=0.999,
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                 sigma=1e-8,
                 parameter_list=None):
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        assert learning_rate is not None
        assert clip is not None
        assert batch_size is not None
        assert sigma is not None
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        super(DpsgdOptimizer, self).__init__(
            learning_rate=learning_rate, parameter_list=parameter_list)
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        self.type = "dpsgd"
        self._clip = clip
        self._batch_size = batch_size
        self._sigma = sigma
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        '''
        Note(wangzhongpu):
        This property is only used for debugging, do not need to set it!
        Dpsgd operator use time(NULL) as random seed to generate random number.
        However, during debugging, we need determinated result, so we will set self._seed to a fixed number.
        '''
        self._seed = None
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    def _append_optimize_op(self, block, param_and_grad):
        assert isinstance(block, framework.Block)

        # create the dpsgd optimize op
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        if self._seed == None:
            self._seed = 0

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        dpsgd_op = block.append_op(
            type=self.type,
            inputs={
                "Param": param_and_grad[0],
                "Grad": param_and_grad[1],
                "LearningRate": self._create_param_lr(param_and_grad)
            },
            outputs={"ParamOut": param_and_grad[0]},
            attrs={
                "clip": self._clip,
                "batch_size": self._batch_size,
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                "sigma": self._sigma,
                "seed": self._seed
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            },
            stop_gradient=True)

        return dpsgd_op


2847
class DecayedAdagradOptimizer(Optimizer):
2848
    r"""
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    The Decayed Adagrad optimizer can be seen as an Adagrad algorithm that introduces
    the decay rate to solve the problem of a sharp drop in the learning rate
    during model training when using the AdagradOptimizer.
2852

2853
    The parameter ``param_out`` update rule with gradient ``grad``:
2854 2855 2856 2857 2858 2859 2860

    .. math::

        moment\_out & = decay * moment + (1 - decay) * grad * grad

        param\_out & = param - \\frac{learning\_rate * grad}{\sqrt{moment\_out} + \epsilon}

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    Related paper: `Adaptive Subgradient Methods for Online Learning and Stochastic
    Optimization <http://www.jmlr.org/papers/volume12/duchi11a/duchi11a.pdf>`_.

    The original paper does not have an ``epsilon`` attribute. It is added here for numerical
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    stability to avoid the division by zero error.

    Args:
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        learning_rate (float|Variable): The learning rate used to update ``Parameter``.
            It can be a float value or a ``Variable`` with a float type.
        decay (float, optional): The decay rate. The default value is 0.95.
        epsilon (float, optional): A small float value for numerical stability.
            The default value is 1e-06.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
            ( :ref:`api_fluid_clip_GradientClipByGlobalNorm` , :ref:`api_fluid_clip_GradientClipByNorm` , 
            :ref:`api_fluid_clip_GradientClipByValue` ). Default None, meaning there is no gradient clipping.
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        name (str, optional): Normally there is no need for user to set this property.
            For more information, please refer to :ref:`api_guide_Name`.
            The default value is None.

    **Notes**:
        **Currently, DecayedAdagradOptimizer doesn't support sparse parameter optimization.**
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    Examples:
        .. code-block:: python

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            import paddle.fluid as fluid

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            x = fluid.data( name='x', shape=[None, 10], dtype='float32' )
            trans = fluid.layers.fc( x, 100 )
            cost = fluid.layers.reduce_mean( trans )
            optimizer = fluid.optimizer.DecayedAdagradOptimizer(learning_rate=0.2)
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            optimizer.minimize(cost)
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    """
    _moment_acc_str = "moment"

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    def __init__(self,
                 learning_rate,
                 decay=0.95,
                 epsilon=1.0e-6,
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                 parameter_list=None,
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                 regularization=None,
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                 grad_clip=None,
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                 name=None):
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        assert learning_rate is not None
        assert decay is not None
        assert epsilon is not None

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        super(DecayedAdagradOptimizer, self).__init__(
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            learning_rate=learning_rate,
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            parameter_list=parameter_list,
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            regularization=regularization,
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            grad_clip=grad_clip,
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            name=name)
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        self.type = "decayed_adagrad"
        self._decay = decay
        self._epsilon = epsilon

    def _create_accumulators(self, block, parameters):
        assert isinstance(block, framework.Block)

        for p in parameters:
            self._add_accumulator(self._moment_acc_str, p)

    def _append_optimize_op(self, block, param_and_grad):
        assert isinstance(block, framework.Block)

        moment_acc = self._get_accumulator(self._moment_acc_str,
                                           param_and_grad[0])

        # Create the decayed adagrad optimizer op
        decayed_adagrad_op = block.append_op(
            type=self.type,
            inputs={
                "Param": param_and_grad[0],
                "Grad": param_and_grad[1],
                "Moment": moment_acc,
                "LearningRate": self._create_param_lr(param_and_grad)
            },
            outputs={"ParamOut": param_and_grad[0],
                     "MomentOut": moment_acc},
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            attrs={"epsilon": self._epsilon,
                   "decay": self._decay},
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            stop_gradient=True)
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        return decayed_adagrad_op
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2957
class AdadeltaOptimizer(Optimizer):
2958
    r"""
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    **Notes: This API does not support sparse parameter optimization.**
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    Adadelta Optimizer. Please refer to this for details:
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    `ADADELTA: AN ADAPTIVE LEARNING RATE METHOD <https://arxiv.org/abs/1212.5701>`_.

    The update is done as follows:
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    .. math::

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        E(g_t^2) &= \\rho * E(g_{t-1}^2) + (1-\\rho) * g^2
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        learning\_rate &= \sqrt{ ( E(dx_{t-1}^2) + \\epsilon ) / ( E(g_t^2) + \\epsilon ) }
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        E(dx_t^2) &= \\rho * E(dx_{t-1}^2) + (1-\\rho) * (-g*learning\_rate)^2
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    Args:
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        learning_rate (float|Variable): global learning rate.
        epsilon (float): a small float number for numeric stability. Default 1.0e-6.
        rho (float): a floating point value indicating the decay rate. Default 0.95.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
            ( :ref:`api_fluid_clip_GradientClipByGlobalNorm` , :ref:`api_fluid_clip_GradientClipByNorm` , 
            :ref:`api_fluid_clip_GradientClipByValue` ). Default None, meaning there is no gradient clipping.
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        name (str, optional): The default value is None. Normally there is no need for user
                to set this property. For more information, please refer to
                :ref:`api_guide_Name` .
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    Examples:
        .. code-block:: python

2997
            import paddle.fluid as fluid
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            image = fluid.data(name='image', shape=[None, 28], dtype='float32')
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            fc = fluid.layers.fc(image, size=10)
            cost = fluid.layers.reduce_mean(fc)
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            optimizer = fluid.optimizer.Adadelta(
                learning_rate=0.0003, epsilon=1.0e-6, rho=0.95)
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            # optimizer_ops is a list of optimizer operators to update parameters
            # params_grads is a list of (param, param_grad), where param is each
            # parameter and param_grad is the gradient variable of param.
            optimizer_ops, params_grads = optimizer.minimize(cost)
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    """
3010

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    _avg_squared_grad_acc_str = "_avg_squared_grad"
    _avg_squared_update_acc_str = "_avg_squared_update"

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    def __init__(self,
                 learning_rate,
                 epsilon=1.0e-6,
                 rho=0.95,
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                 parameter_list=None,
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                 regularization=None,
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                 grad_clip=None,
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                 name=None):
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        if learning_rate is None:
            raise ValueError("learning_rate is not set.")
        if epsilon is None:
            raise ValueError("epsilon is not set.")
        if rho is None:
            raise ValueError("rho is not set.")
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        super(AdadeltaOptimizer, self).__init__(
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            learning_rate=learning_rate,
3030
            parameter_list=parameter_list,
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            regularization=regularization,
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            grad_clip=grad_clip,
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            name=name)
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        self.type = "adadelta"
        self._epsilon = epsilon
        self._rho = rho

    def _create_accumulators(self, block, parameters):
3039 3040
        if not isinstance(block, framework.Block):
            raise TypeError("block is not instance of framework.Block.")
3041 3042 3043 3044 3045 3046

        for p in parameters:
            self._add_accumulator(self._avg_squared_grad_acc_str, p)
            self._add_accumulator(self._avg_squared_update_acc_str, p)

    def _append_optimize_op(self, block, param_and_grad):
3047 3048
        if not isinstance(block, framework.Block):
            raise TypeError("block is not instance of framework.Block.")
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        avg_squared_grad_acc = self._get_accumulator(
            self._avg_squared_grad_acc_str, param_and_grad[0])
        avg_squared_update_acc = self._get_accumulator(
            self._avg_squared_update_acc_str, param_and_grad[0])

        # Create the adadelta optimizer op
        adadelta_op = block.append_op(
            type=self.type,
            inputs={
                "Param": param_and_grad[0],
                "Grad": param_and_grad[1],
                "AvgSquaredGrad": avg_squared_grad_acc,
                "AvgSquaredUpdate": avg_squared_update_acc
            },
            outputs={
                "ParamOut": param_and_grad[0],
                "AvgSquaredGradOut": avg_squared_grad_acc,
                "AvgSquaredUpdateOut": avg_squared_update_acc
            },
            attrs={"epsilon": self._epsilon,
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                   "rho": self._rho},
            stop_gradient=True)
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        return adadelta_op


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class RMSPropOptimizer(Optimizer):
3077
    r"""
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    Root Mean Squared Propagation (RMSProp) is an unpublished, adaptive learning
    rate method. The original slides proposed RMSProp: Slide 29 of
    http://www.cs.toronto.edu/~tijmen/csc321/slides/lecture_slides_lec6.pdf .

    The original equation is as follows:

    ..  math::

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        r(w, t) & = \\rho r(w, t-1) + (1 - \\rho)(\\nabla Q_{i}(w))^2
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        w & = w - \\frac{\\eta} {\\sqrt{r(w,t) + \\epsilon}} \\nabla Q_{i}(w)

    The first equation calculates moving average of the squared gradient for
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    each weight. Then dividing the gradient by :math:`sqrt{v(w,t)}`.
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    In some cases, adding a momentum term :math: `\\beta` is beneficial.
    In our implementation, Nesterov momentum is used:

    ..  math::

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        r(w, t) & = \\rho r(w, t-1) + (1 - \\rho)(\\nabla Q_{i}(w))^2
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3100 3101 3102 3103 3104 3105 3106 3107 3108 3109 3110 3111 3112 3113
        v(w, t) & = \\beta v(w, t-1) + \\frac{\\eta} {\\sqrt{r(w,t) +
            \\epsilon}} \\nabla Q_{i}(w)

        w & = w - v(w, t)

    if centered is True:

    ..  math::

        r(w, t) & = \\rho r(w, t-1) + (1 - \\rho)(\\nabla Q_{i}(w))^2

        g(w, t) & = \\rho g(w, t-1) + (1 - \\rho)\\nabla Q_{i}(w)

        v(w, t) & = \\beta v(w, t-1) + \\frac{\\eta} {\\sqrt{r(w,t) - (g(w, t))^2 +
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            \\epsilon}} \\nabla Q_{i}(w)

        w & = w - v(w, t)

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    where, :math:`\\rho` is a hyperparameter and typical values are 0.9, 0.95
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    and so on. :math: `beta` is the momentum term. :math: `\\epsilon` is a
    smoothing term to avoid division by zero, usually set somewhere in range
    from 1e-4 to 1e-8.


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    Parameters:
        learning_rate(float): Global learning rate.
        rho(float): rho is :math: `\\rho` in equation, default is 0.95.
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        epsilon(float): :math: `\\epsilon` in equation is smoothing term to
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            avoid division by zero, default is 1e-6.
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        momentum(float): :math:`\\beta` in equation is the momentum term,
3130
            default is 0.0.
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        centered(bool): If True, gradients are normalized by the estimated variance of
            the gradient; if False, by the uncentered second moment. Setting this to
            True may help with training, but is slightly more expensive in terms of
            computation and memory. Defaults to False.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
            ( :ref:`api_fluid_clip_GradientClipByGlobalNorm` , :ref:`api_fluid_clip_GradientClipByNorm` , 
            :ref:`api_fluid_clip_GradientClipByValue` ). Default None, meaning there is no gradient clipping.
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        name (str, optional): This parameter is used by developers to print debugging information. \
            For details, please refer to :ref:`api_guide_Name`. Default is None.
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    Raises:
        ValueError: If learning_rate, rho, epsilon, momentum are None.

    Examples:
          .. code-block:: python

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            import paddle
            import paddle.fluid as fluid
            import numpy as np

            place = fluid.CPUPlace()
            main = fluid.Program()
            with fluid.program_guard(main):
                x = fluid.layers.data(name='x', shape=[13], dtype='float32')
                y = fluid.layers.data(name='y', shape=[1], dtype='float32')
                y_predict = fluid.layers.fc(input=x, size=1, act=None)
                cost = fluid.layers.square_error_cost(input=y_predict, label=y)
                avg_cost = fluid.layers.mean(cost)

                rms_optimizer = fluid.optimizer.RMSProp(learning_rate=0.1)
                rms_optimizer.minimize(avg_cost)

                fetch_list = [avg_cost]
                train_reader = paddle.batch(
                    paddle.dataset.uci_housing.train(), batch_size=1)
                feeder = fluid.DataFeeder(place=place, feed_list=[x, y])
                exe = fluid.Executor(place)
                exe.run(fluid.default_startup_program())
                for data in train_reader():
                    exe.run(main, feed=feeder.feed(data), fetch_list=fetch_list)

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    """

    _momentum_acc_str = "momentum"
    _mean_square_acc_str = "mean_square"
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    _mean_grad_acc_str = "mean_grad"
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    def __init__(self,
                 learning_rate,
                 rho=0.95,
                 epsilon=1.0e-6,
                 momentum=0.0,
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                 centered=False,
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                 parameter_list=None,
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                 regularization=None,
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                 grad_clip=None,
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                 name=None):
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        super(RMSPropOptimizer, self).__init__(
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            learning_rate=learning_rate,
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            parameter_list=parameter_list,
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            regularization=regularization,
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            grad_clip=grad_clip,
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            name=name)
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        if learning_rate is None:
            raise ValueError("learning_rate is not set.")
        if rho is None:
            raise ValueError("rho is not set.")
        if epsilon is None:
            raise ValueError("epsilon is not set.")
        if momentum is None:
            raise ValueError("momentum is not set.")

        self.type = "rmsprop"
        self._rho = rho
        self._epsilon = epsilon
        self._momentum = momentum
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        self._centered = centered
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    def _create_accumulators(self, block, parameters):
        if not isinstance(block, framework.Block):
            raise TypeError("block is not instance of framework.Block.")

        for p in parameters:
            self._add_accumulator(self._momentum_acc_str, p)
            self._add_accumulator(self._mean_square_acc_str, p)
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            self._add_accumulator(self._mean_grad_acc_str, p)
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    def _append_optimize_op(self, block, param_and_grad):
        if not isinstance(block, framework.Block):
            raise TypeError("block is not instance of framework.Block.")

        momentum_acc = self._get_accumulator(self._momentum_acc_str,
                                             param_and_grad[0])
        mean_square_acc = self._get_accumulator(self._mean_square_acc_str,
                                                param_and_grad[0])
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        mean_grad_acc = self._get_accumulator(self._mean_grad_acc_str,
                                              param_and_grad[0])
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        rmsprop_op = block.append_op(
            type=self.type,
            inputs={
                "Param": param_and_grad[0],
                "Grad": param_and_grad[1],
                "Moment": momentum_acc,
                "MeanSquare": mean_square_acc,
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                "MeanGrad": mean_grad_acc,
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                "LearningRate": self._create_param_lr(param_and_grad),
            },
            outputs={
                "ParamOut": param_and_grad[0],
                "MomentOut": momentum_acc,
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                "MeanSquareOut": mean_square_acc,
                "MeanGradOut": mean_grad_acc
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            },
            attrs={
                "epsilon": self._epsilon,
                "decay": self._rho,
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                "momentum": self._momentum,
                "centered": self._centered
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            },
            stop_gradient=True)
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        return rmsprop_op


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class FtrlOptimizer(Optimizer):
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    r"""
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    FTRL (Follow The Regularized Leader) Optimizer.

    The paper that proposed Follow The Regularized Leader (FTRL):
    (https://www.eecs.tufts.edu/~dsculley/papers/ad-click-prediction.pdf)

    ..  math::

        &new\_accum = squared\_accum + grad^2

        &if (lr\_power == -0.5):

        &\quad  linear\_accum += grad - \\frac{\\sqrt{new\_accum} - \\sqrt{squared\_accum}}{learning\_rate * param}

        &else:

        &\quad   linear\_accum += grad - \\frac{new\_accum^{-lr\_power} - accum^{-lr\_power}}{learning\_rate * param}


        &x = l1 * sign(linear\_accum) - linear\_accum

        &if (lr\_power == -0.5):

        &\quad   y = \\frac{\\sqrt{new\_accum}}{learning\_rate} + (2 * l2)

        &\quad   pre\_shrink = \\frac{x}{y}

        &\quad   param = (abs(linear\_accum) > l1).select(pre\_shrink, 0.0)

        &else:

        &\quad   y = \\frac{new\_accum^{-lr\_power}}{learning\_rate} + (2 * l2)

        &\quad   pre\_shrink = \\frac{x}{y}

        &\quad   param = (abs(linear\_accum) > l1).select(pre\_shrink, 0.0)

        &squared\_accum += grad^2

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    Parameters:
        learning_rate (float|Variable): Global learning rate.
        l1 (float): L1 regularization strength, default is 0.0.
        l2 (float): L2 regularization strength, default is 0.0.
        lr_power (float): Learning Rate Power, default is -0.5.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
            ( :ref:`api_fluid_clip_GradientClipByGlobalNorm` , :ref:`api_fluid_clip_GradientClipByNorm` , 
            :ref:`api_fluid_clip_GradientClipByValue` ). Default None, meaning there is no gradient clipping.
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        name (str, optional): This parameter is used by developers to print debugging information. \
            For details, please refer to :ref:`api_guide_Name`. Default is None.
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    Raises:
        ValueError: If learning_rate, rho, epsilon, momentum are None.

    Examples:
          .. code-block:: python

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            import paddle
            import paddle.fluid as fluid
            import numpy as np

            place = fluid.CPUPlace()
            main = fluid.Program()
            with fluid.program_guard(main):
                x = fluid.layers.data(name='x', shape=[13], dtype='float32')
                y = fluid.layers.data(name='y', shape=[1], dtype='float32')
                y_predict = fluid.layers.fc(input=x, size=1, act=None)
                cost = fluid.layers.square_error_cost(input=y_predict, label=y)
                avg_cost = fluid.layers.mean(cost)

                ftrl_optimizer = fluid.optimizer.Ftrl(learning_rate=0.1)
                ftrl_optimizer.minimize(avg_cost)

                fetch_list = [avg_cost]
                train_reader = paddle.batch(
                    paddle.dataset.uci_housing.train(), batch_size=1)
                feeder = fluid.DataFeeder(place=place, feed_list=[x, y])
                exe = fluid.Executor(place)
                exe.run(fluid.default_startup_program())
                for data in train_reader():
                    exe.run(main, feed=feeder.feed(data), fetch_list=fetch_list)
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    NOTE:
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       Currently, FtrlOptimizer doesn't support sparse parameter optimization.
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    """

    _squared_acc_str = "squared"
    _linear_acc_str = "linear"

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    def __init__(self,
                 learning_rate,
                 l1=0.0,
                 l2=0.0,
                 lr_power=-0.5,
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                 parameter_list=None,
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                 regularization=None,
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                 grad_clip=None,
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                 name=None):
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        super(FtrlOptimizer, self).__init__(
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            learning_rate=learning_rate,
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            parameter_list=parameter_list,
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            regularization=regularization,
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            grad_clip=grad_clip,
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            name=name)
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        if learning_rate is None:
            raise ValueError("learning_rate is not set.")

        self.type = "ftrl"
        self._l1 = l1
        self._l2 = l2
        self._lr_power = lr_power

    def _create_accumulators(self, block, parameters):
        if not isinstance(block, framework.Block):
            raise TypeError("block is not instance of framework.Block.")

        for p in parameters:
            self._add_accumulator(self._squared_acc_str, p)
            self._add_accumulator(self._linear_acc_str, p)

    def _append_optimize_op(self, block, param_and_grad):
        if not isinstance(block, framework.Block):
            raise TypeError("block is not instance of framework.Block.")

        squared_acc = self._get_accumulator(self._squared_acc_str,
                                            param_and_grad[0])
        linear_acc = self._get_accumulator(self._linear_acc_str,
                                           param_and_grad[0])
        ftrl_op = block.append_op(
            type=self.type,
            inputs={
                "Param": param_and_grad[0],
                "Grad": param_and_grad[1],
                "SquaredAccumulator": squared_acc,
                "LinearAccumulator": linear_acc,
                "LearningRate": self._create_param_lr(param_and_grad),
            },
            outputs={
                "ParamOut": param_and_grad[0],
                "SquaredAccumOut": squared_acc,
                "LinearAccumOut": linear_acc
            },
            attrs={"l1": self._l1,
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                   "l2": self._l2,
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                   "lr_power": self._lr_power},
            stop_gradient=True)
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        return ftrl_op


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class LambOptimizer(AdamOptimizer):
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    r"""
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    LAMB (Layer-wise Adaptive Moments optimizer for Batching training) Optimizer.

    LAMB Optimizer is designed to scale up the batch size of training without losing 
    accuracy, which supports adaptive element-wise updating and accurate layer-wise 
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    correction. For more information, please refer to `Large Batch Optimization for 
    Deep Learning: Training BERT in 76 minutes <https://arxiv.org/abs/1904.00962>`_ .
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    The updating of parameters follows:

    ..  math::

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        m_t &= \\beta_1 m_{t - 1}+ (1 - \\beta_1)g_t 
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        v_t &= \\beta_2 v_{t - 1}  + (1 - \\beta_2)g_t^2
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        m_t &= \\frac{m_t}{\\beta_1^t}

        v_t &= \\frac{v_t}{\\beta_2^t}

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        r_t &= \\frac{m_t}{\\sqrt{v_t}+\\epsilon}
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        w_t &= w_{t-1} -\\eta_t \\frac{\\left \| w_{t-1}\\right \|}{\\left \| r_t + \\lambda w_{t-1}\\right \|} (r_t + \\lambda w_{t-1})
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    where :math:`m` is the 1st moment, and :math:`v` the 2nd moment, :math:`\\eta` the 
    learning rate, :math:`\\lambda` the LAMB weight decay rate.

    Args:
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        learning_rate (float|Variable, optional): the learning rate used to update parameters. \
            Can be a float value or a Variable with data type float32. Default 0.001.
        lamb_weight_decay (float, optional): The LAMB weight decay rate. Default 0.01.
        beta1 (float, optional): The exponential decay rate for the 1st moment estimates.
            Default 0.9.
        beta2 (float, optional): The exponential decay rate for the 2nd moment estimates.
            Default 0.999.
        epsilon (float, optional): A small float value for numerical stability. Default 1e-6.
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        parameter_list (Iterable, optional):  Iterable of ``Variable`` names to update to minimize ``loss``. \
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            This parameter is required in dygraph mode. \
            The default value is None in static mode, at this time all parameters will be updated.
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        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
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        grad_clip (GradientClipBase, optional): Gradient cliping strategy, it's an instance of 
            some derived class of ``GradientClipBase`` . There are three cliping strategies 
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            ( :ref:`api_paddle_fluid_clip_ClipGradByGlobalNorm` , :ref:`api_paddle_fluid_clip_ClipGradByNorm` ,
            :ref:`api_paddle_fluid_clip_ClipGradByValue` ). If you want better convergence, it is recommended
            to use :ref:`api_paddle_fluid_clip_ClipGradByGlobalNorm` . Default None, meaning there is no gradient clipping.
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        exclude_from_weight_decay_fn (function|None): Exclude a parameter from weight 
            decay when **exclude_from_weight_decay_fn(parameter)** returns true. 
            Default None.
        name(str|None): For detailed information, please refer to 
            :ref:`api_guide_Name` . Usually name is no need to set and None by default.
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    Examples:
        .. code-block:: python
            
            import paddle.fluid as fluid 

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            data = fluid.data(name='x', shape=[-1, 5], dtype='float32')
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            hidden = fluid.layers.fc(input=data, size=10)
            cost = fluid.layers.mean(hidden)

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            def exclude_fn(param):
                return param.name.endswith('.b_0')

            optimizer = fluid.optimizer.Lamb(learning_rate=0.002,
                                             exclude_from_weight_decay_fn=exclude_fn)
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            optimizer.minimize(cost)
    """
    _moment1_acc_str = "moment1"
    _moment2_acc_str = "moment2"
    _beta1_pow_acc_str = "beta1_pow_acc"
    _beta2_pow_acc_str = "beta2_pow_acc"

    def __init__(self,
                 learning_rate=0.001,
                 lamb_weight_decay=0.01,
                 beta1=0.9,
                 beta2=0.999,
                 epsilon=1e-6,
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                 parameter_list=None,
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                 regularization=None,
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                 grad_clip=None,
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                 exclude_from_weight_decay_fn=None,
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                 name=None):
        assert learning_rate is not None
        assert lamb_weight_decay is not None
        assert beta1 is not None
        assert beta2 is not None
        assert epsilon is not None
        super(LambOptimizer, self).__init__(
            learning_rate=learning_rate,
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            parameter_list=parameter_list,
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            regularization=regularization,
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            grad_clip=grad_clip,
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            beta1=beta1,
            beta2=beta2,
            epsilon=epsilon,
            name=name)
        self.type = "lamb"
        self._weight_decay = lamb_weight_decay
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        self._exclude_from_weight_decay_fn = exclude_from_weight_decay_fn
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    def _append_optimize_op(self, block, param_and_grad):
        assert isinstance(block, framework.Block)
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        block.program._use_lamb = True
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        moment1 = self._get_accumulator(self._moment1_acc_str,
                                        param_and_grad[0])
        moment2 = self._get_accumulator(self._moment2_acc_str,
                                        param_and_grad[0])
        beta1_pow_acc = self._get_accumulator(self._beta1_pow_acc_str,
                                              param_and_grad[0])
        beta2_pow_acc = self._get_accumulator(self._beta2_pow_acc_str,
                                              param_and_grad[0])

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        if self._exclude_from_weight_decay_fn is not None \
            and self._exclude_from_weight_decay_fn(param_and_grad[0]):
            weight_decay = 0.0
        else:
            weight_decay = self._weight_decay
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        lr = self._create_param_lr(param_and_grad)

        if framework.in_dygraph_mode():
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            _, _, _, _, _ = _C_ops.lamb(
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                param_and_grad[0], param_and_grad[1], lr, moment1, moment2,
                beta1_pow_acc, beta2_pow_acc, param_and_grad[0], moment1,
                moment2, beta1_pow_acc, beta2_pow_acc, 'beta1', self._beta1,
                'beta2', self._beta2, 'epsilon', self._epsilon, 'weight_decay',
                weight_decay)
            return None
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        # create the lamb optimize op
        lamb_op = block.append_op(
            type=self.type,
            inputs={
                "Param": param_and_grad[0],
                "Grad": param_and_grad[1],
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                "LearningRate": lr,
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                "Moment1": moment1,
                "Moment2": moment2,
                "Beta1Pow": beta1_pow_acc,
                "Beta2Pow": beta2_pow_acc
            },
            outputs={
                "ParamOut": param_and_grad[0],
                "Moment1Out": moment1,
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                "Moment2Out": moment2,
                "Beta1PowOut": beta1_pow_acc,
                "Beta2PowOut": beta2_pow_acc
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            },
            attrs={
                "beta1": self._beta1,
                "beta2": self._beta2,
                "epsilon": self._epsilon,
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                "weight_decay": weight_decay
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            },
            stop_gradient=True)

        return lamb_op


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# We short the class name, since users will use the optimizer with the package
# name. The sample code:
#
# import paddle.fluid as fluid
#
# sgd = fluid.optimizer.SGD(...)
#
# It is no need to add an `Optimizer` as the class suffix
SGD = SGDOptimizer
Momentum = MomentumOptimizer
Adagrad = AdagradOptimizer
Adam = AdamOptimizer
Adamax = AdamaxOptimizer
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Dpsgd = DpsgdOptimizer
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DecayedAdagrad = DecayedAdagradOptimizer
3604
Adadelta = AdadeltaOptimizer
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RMSProp = RMSPropOptimizer
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Ftrl = FtrlOptimizer
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LarsMomentum = LarsMomentumOptimizer
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Lamb = LambOptimizer
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class ModelAverage(Optimizer):
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    r"""
3613
	:api_attr: Static Graph
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    The ModelAverage optimizer accumulates specific continuous historical parameters
    during training. The accumulated historical range can be controlled by the passed
    ``average_window_rate`` argument. The averaged ``Parameter`` are used in the prediction,
    which usually can improve the accuracy of the prediction.

    Accumulate the average of the ``Parameter`` in the sliding window, the result will be saved
    in a temporary variable, can be applied to the current model's ``Parameter`` by calling
    the ``apply()`` method, and the current model ``Parameter`` can be restored by calling
    the ``restore()`` method.

    The window size for calculating the average is determined by ``average_window_rate``,
    ``min_average_window``, ``max_average_window`` and the current ``Parameter`` update times (num_updates).

    When the cumulative times (num_accumulates) is greater than the specific window
    threshold (average_window), the accumulated ``Parameter`` temporary variable is set to 0.0.
    The following example will help to understand the role of these arguments:

    ::
3633

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        if num_accumulates >= min_average_window and num_accumulates >= min(max_average_window, num_updates * average_window_rate):
            num_accumulates = 0

    In the above conditional judgment statement, ``num_accumulates`` indicates the current
    accumulated number, which can be abstractly understood as the length of the cumulative window.
    The length of the window must be at least the length set by the ``min_average_window`` argument,
    and cannot exceed the length specified by the ``max_average_window`` argument or
    ``num_updates * average_window_rate``, where ``num_updates`` indicates the current ``Parameter``
    update times, ``average_window_rate`` is a coefficient that calculates the length of the window.
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    Args:
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        average_window_rate (float): The calculate ratio of the window length relative to ``Parameter`` update times.
        min_average_window (int, optional): the minimum size of average window length. The default value is 10000.
        max_average_window (int, optional): The maximum size of average window length. The default value is 10000.
3648 3649 3650 3651 3652
        regularization (WeightDecayRegularizer, optional): The strategy of regularization. There are two method: \
             :ref:`api_fluid_regularizer_L1Decay` , :ref:`api_fluid_regularizer_L2Decay` . If a parameter has set \
            regularizer using :ref:`api_fluid_ParamAttr` already, the regularization setting here in optimizer will be \
            ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect.  \
            Default None, meaning there is no regularization.
3653 3654 3655
        name (str, optional): Normally there is no need for user to set this property.
            For more information, please refer to :ref:`api_guide_Name`.
            The default value is None.
3656

3657
    Examples:
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      .. code-block:: python

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        import paddle.fluid as fluid
        import numpy

        # First create the Executor.
        place = fluid.CPUPlace()  # fluid.CUDAPlace(0)
        exe = fluid.Executor(place)
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3668 3669 3670 3671
        train_program = fluid.Program()
        startup_program = fluid.Program()
        with fluid.program_guard(train_program, startup_program):
            # build net
3672
            data = fluid.data(name='X', shape=[None, 1], dtype='float32')
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            hidden = fluid.layers.fc(input=data, size=10)
            loss = fluid.layers.mean(hidden)
            optimizer = fluid.optimizer.Momentum(learning_rate=0.2, momentum=0.1)
            optimizer.minimize(loss)

            # build ModelAverage optimizer
            model_average = fluid.optimizer.ModelAverage(0.15,
                                                         min_average_window=10000,
3681
                                                         max_average_window=12500)
3682 3683

            exe.run(startup_program)
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            for i in range(12500):
                x = numpy.random.random(size=(10, 1)).astype('float32')
                outs = exe.run(program=train_program,
                               feed={'X': x},
                               fetch_list=[loss.name])
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            # apply ModelAverage
3691
            with model_average.apply(exe):
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                x = numpy.random.random(size=(10, 1)).astype('float32')
                exe.run(program=train_program,
                        feed={'X': x},
                        fetch_list=[loss.name])
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    """

    def __init__(self,
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                 average_window_rate,
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                 min_average_window=10000,
                 max_average_window=10000,
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                 regularization=None,
                 name=None):
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        if framework.in_dygraph_mode():
            raise Exception("In dygraph, don't support ModelAverage.")
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        super(ModelAverage, self).__init__(
            0.0, regularization=regularization, name=name)
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        self.average_window = average_window_rate
        self.min_average_window = min_average_window
        self.max_average_window = max_average_window
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3712
        self.params_grads = []
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        for param in framework.default_main_program().global_block(
        ).all_parameters():
3715
            if param.do_model_average != False:
3716
                grad = param.block.create_var(
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                    name=unique_name.generate_with_ignorable_key(".".join(
                        [param.name, 'tmp'])),
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                    dtype=param.dtype,
                    persistable=False,
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                    stop_gradient=True)
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                self.params_grads.append((param, grad))
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3724
        for param, grad in self.params_grads:
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            if grad is None:
                continue
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            with param.block.program._optimized_guard(
                [param, grad]), name_scope('move_average'):
3729
                self._append_average_accumulate_op(param)
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        self.apply_program = Program()
        block = self.apply_program.global_block()
        with program_guard(main_program=self.apply_program):
            for param_grad in self.params_grads:
3735
                self._add_average_apply_op(block, param_grad)
3736 3737 3738 3739 3740

        self.restore_program = Program()
        block = self.restore_program.global_block()
        with program_guard(main_program=self.restore_program):
            for param_grad in self.params_grads:
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                self._add_average_restore_op(block, param_grad)
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3743
    def _add_average_apply_op(self, block, param_grad):
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        param = block._clone_variable(param_grad[0])
        grad = block._clone_variable(param_grad[1])
        sum_1 = block._clone_variable(self._get_accumulator('sum_1', param))
        sum_2 = block._clone_variable(self._get_accumulator('sum_2', param))
        sum_3 = block._clone_variable(self._get_accumulator('sum_3', param))
        num_accumulates = block._clone_variable(
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            self._get_accumulator('num_accumulates', param))
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        old_num_accumulates = block._clone_variable(
3752
            self._get_accumulator('old_num_accumulates', param))
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        num_updates = block._clone_variable(
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            self._get_accumulator('num_updates', param))
        # backup param value to grad
        layers.assign(input=param, output=grad)
        # param = (sum_1 + sum_2 + sum_3) / (num_accumulates + old_num_accumulates)
        tmp = layers.sum(x=[num_accumulates, old_num_accumulates])
        sum = layers.sum(x=[sum_1, sum_2, sum_3])
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        tmp = layers.cast(
            x=tmp, dtype='float32' if self._dtype == None else self._dtype)
        sum = layers.cast(
            x=sum, dtype='float32' if self._dtype == None else self._dtype)
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        ops._elementwise_div(x=sum, y=tmp, out=param)
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    def _add_average_restore_op(self, block, param_grad):
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        param = block._clone_variable(param_grad[0])
        grad = block._clone_variable(param_grad[1])
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        layers.assign(input=grad, output=param)

    def _append_average_accumulate_op(self, param):
        self.helper = LayerHelper("average_accumulate")
        sum_1 = self._add_accumulator('sum_1', param)
        sum_2 = self._add_accumulator('sum_2', param)
        sum_3 = self._add_accumulator('sum_3', param)
        num_accumulates = self._add_accumulator(
            'num_accumulates', param, dtype='int64', shape=[1])
        old_num_accumulates = self._add_accumulator(
            'old_num_accumulates', param, dtype='int64', shape=[1])
        num_updates = self._add_accumulator(
            'num_updates', param, dtype='int64', shape=[1])

        self.helper.append_op(
            type='average_accumulates',
            inputs={
                "param": param,
                "in_sum_1": sum_1,
                "in_sum_2": sum_2,
                "in_sum_3": sum_3,
                "in_num_accumulates": num_accumulates,
                "in_old_num_accumulates": old_num_accumulates,
                "in_num_updates": num_updates
            },
            outputs={
                "out_sum_1": sum_1,
                "out_sum_2": sum_2,
                "out_sum_3": sum_3,
                "out_num_accumulates": num_accumulates,
                "out_old_num_accumulates": old_num_accumulates,
                "out_num_updates": num_updates,
            },
            attrs={
                "average_window": self.average_window,
                "min_average_window": self.min_average_window,
                "max_average_window": self.max_average_window,
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            },
            stop_gradient=True)
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    @signature_safe_contextmanager
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    def apply(self, executor, need_restore=True):
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        """
        Apply the average of the cumulative ``Parameter`` to the parameters of the current model.
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        Args:
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            executor(fluid.Executor): The current network executor.
            need_restore(bool): Restore flag variable, if set to True, the network will restore
                the parameters of the network to the default value, if set to False,
                it will not be restored. The default value is True.

        Examples:

          .. code-block:: python

            import paddle.fluid as fluid
            import numpy

            # First create the Executor.
            place = fluid.CPUPlace()  # fluid.CUDAPlace(0)
            exe = fluid.Executor(place)

            train_program = fluid.Program()
            startup_program = fluid.Program()
            with fluid.program_guard(train_program, startup_program):
                # build net
                data = fluid.data(name='X', shape=[None, 1], dtype='float32')
                hidden = fluid.layers.fc(input=data, size=10)
                loss = fluid.layers.mean(hidden)
                optimizer = fluid.optimizer.Momentum(learning_rate=0.2, momentum=0.1)
                optimizer.minimize(loss)

                # build ModelAverage optimizer
                model_average = fluid.optimizer.ModelAverage(0.15,
                                                            min_average_window=10000,
                                                            max_average_window=12500)

                exe.run(startup_program)
                for i in range(12500):
                    x = numpy.random.random(size=(10, 1)).astype('float32')
                    outs = exe.run(program=train_program,
                                feed={'X': x},
                                fetch_list=[loss.name])

                # apply ModelAverage
                with model_average.apply(exe):
                    x = numpy.random.random(size=(10, 1)).astype('float32')
                    exe.run(program=train_program,
                            feed={'X': x},
                            fetch_list=[loss.name])
3859
        """
3860 3861 3862 3863 3864 3865
        executor.run(self.apply_program)
        try:
            yield
        finally:
            if need_restore:
                self.restore(executor)
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    def restore(self, executor):
3868 3869
        """
        Restore ``Parameter`` values of current model.
3870 3871
        
        Args:
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            executor(fluid.Executor): The current network executor.

        Examples:

          .. code-block:: python

            import paddle.fluid as fluid
            import numpy

            # First create the Executor.
            place = fluid.CPUPlace()  # fluid.CUDAPlace(0)
            exe = fluid.Executor(place)

            train_program = fluid.Program()
            startup_program = fluid.Program()
            with fluid.program_guard(train_program, startup_program):
                # build net
                data = fluid.data(name='X', shape=[None, 1], dtype='float32')
                hidden = fluid.layers.fc(input=data, size=10)
                loss = fluid.layers.mean(hidden)
                optimizer = fluid.optimizer.Momentum(learning_rate=0.2, momentum=0.1)
                optimizer.minimize(loss)

                # build ModelAverage optimizer
                model_average = fluid.optimizer.ModelAverage(0.15,
                                                            min_average_window=10000,
                                                            max_average_window=12500)

                exe.run(startup_program)
                for i in range(12500):
                    x = numpy.random.random(size=(10, 1)).astype('float32')
                    outs = exe.run(program=train_program,
                                feed={'X': x},
                                fetch_list=[loss.name])

                # apply ModelAverage
                with model_average.apply(exe, False):
                    x = numpy.random.random(size=(10, 1)).astype('float32')
                    exe.run(program=train_program,
                            feed={'X': x},
                            fetch_list=[loss.name])

                # restore Parameters
                model_average.restore(exe)
3916
        """
3917
        executor.run(self.restore_program)
3918 3919 3920


class ExponentialMovingAverage(object):
3921
    r"""
3922
	:api_attr: Static Graph
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    Compute the moving average of parameters with exponential decay.
    Given a parameter :math:`\\theta`, its exponential moving average (EMA)
    will be

    ..  math::

3930
        \\text{EMA}_0 & = 0
3931

3932 3933
	\\text{EMA}_t & = \\text{decay} * \\text{EMA}_{t-1} + (1 - \\text{decay}) * \\theta_t

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    The average results calculated by **update()** method will be saved in 
    temporary variables which are created and maintained by the object, and can 
    be applied to parameters of current model by calling **apply()** method. And 
    the **restore()** method is used to restore the parameters.
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    **Bias correction**. All EMAs are initialized to :math:`0` and hence they will be 
    zero biased, which can be corrected by divided by a factor 
    :math:`(1 - \\text{decay}^t)` , i.e., the actual EMAs applied to parameters 
    when calling **apply()** method would be 

    ..  math::
    
        \\widehat{\\text{EMA}}_t = \\frac{\\text{EMA}_t}{1 - \\text{decay}^t}

    **Decay rate scheduling**. A large decay rate very close to 1 would result 
    in that the averages move very slowly. And a better strategy is to set a 
    relative smaller decay rate in the very beginning. The argument **thres_steps**
    allows users to pass a Variable to schedule the decay rate, in this case, 
    the actual decay rate becomes
     
    ..  math::
    
        \\min(\\text{decay}, \\frac{1 + \\text{thres_steps}}{10 + \\text{thres_steps}})

    Usually **thres_steps** can be the global training steps.
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    Args:
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	decay (float, optional): The exponential decay rate, usually close to 1, such as 
            0.999, 0.9999, ... . Default 0.999.
        thres_steps (Variable|None): If not `None`, schedule the decay rate. 
            Default None.
        name (str|None): For detailed information, please refer to 
            :ref:`api_guide_Name`. Usually name is no need to set and None by 
            default.
3969 3970 3971 3972 3973


    Examples:

	.. code-block:: python
3974 3975 3976 3977 3978

	    import numpy
	    import paddle
	    import paddle.fluid as fluid

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	    data = fluid.data(name='x', shape=[-1, 5], dtype='float32')
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	    hidden = fluid.layers.fc(input=data, size=10)
	    cost = fluid.layers.mean(hidden)

	    test_program = fluid.default_main_program().clone(for_test=True)

	    optimizer = fluid.optimizer.Adam(learning_rate=0.001)
	    optimizer.minimize(cost)

3988
	    global_steps = fluid.layers.autoincreased_step_counter()
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	    ema = fluid.optimizer.ExponentialMovingAverage(0.999, thres_steps=global_steps)
	    ema.update()

	    place = fluid.CPUPlace()
	    exe = fluid.Executor(place)
	    exe.run(fluid.default_startup_program())

	    for pass_id in range(3):
		for batch_id in range(6):
		    data = numpy.random.random(size=(10, 5)).astype('float32')
		    exe.run(program=fluid.default_main_program(),
			feed={'x': data}, 
			fetch_list=[cost.name])

		# usage 1
		with ema.apply(exe):
		    data = numpy.random.random(size=(10, 5)).astype('float32')
		    exe.run(program=test_program,
			    feed={'x': data}, 
			    fetch_list=[hidden.name])
			    

		 # usage 2
		with ema.apply(exe, need_restore=False):
		    data = numpy.random.random(size=(10, 5)).astype('float32')
		    exe.run(program=test_program,
			    feed={'x': data}, 
			    fetch_list=[hidden.name])
		ema.restore(exe)
4018 4019
    """

4020
    def __init__(self, decay=0.999, thres_steps=None, name=None):
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        if framework.in_dygraph_mode():
            raise Exception(
                "In dygraph, don't support ExponentialMovingAverage.")
4024
        self._decay = decay
4025
        self._thres_steps = thres_steps
4026
        self._name = name if name is not None else ''
4027 4028
        self._decay_var = self._get_ema_decay()

4029
        self._step_counter_name = "@EMA_STEP_COUNTER@"
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        self._params_tmps = []
4031
        for param in default_main_program().global_block().all_parameters():
4032 4033 4034 4035 4036 4037 4038
            if param.do_model_average != False:
                tmp = param.block.create_var(
                    name=unique_name.generate(".".join(
                        [self._name + param.name, 'ema_tmp'])),
                    dtype=param.dtype,
                    persistable=False,
                    stop_gradient=True)
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                self._params_tmps.append((param, tmp))
4040

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        self._ema_vars = {}
        for param, tmp in self._params_tmps:
4043 4044
            with param.block.program._optimized_guard(
                [param, tmp]), name_scope('moving_average'):
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                self._ema_vars[param.name] = self._create_ema_vars(param)
4046 4047 4048 4049

        self.apply_program = Program()
        block = self.apply_program.global_block()
        with program_guard(main_program=self.apply_program):
4050
            decay_pow, global_step = self._get_decay_pow(block)
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            for param, tmp in self._params_tmps:
4052 4053
                param = block._clone_variable(param)
                tmp = block._clone_variable(tmp)
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                ema = block._clone_variable(self._ema_vars[param.name])
4055
                layers.assign(input=param, output=tmp)
4056
                # bias correction
4057 4058
                with layers.control_flow.Switch() as switch:
                    with switch.case(global_step > 0):
4059 4060 4061 4062
                        layers.assign(
                            output=param, input=ema / (1.0 - decay_pow))
                    with switch.default():
                        layers.assign(output=param, input=ema)
4063 4064 4065 4066

        self.restore_program = Program()
        block = self.restore_program.global_block()
        with program_guard(main_program=self.restore_program):
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            for param, tmp in self._params_tmps:
4068 4069 4070 4071
                tmp = block._clone_variable(tmp)
                param = block._clone_variable(param)
                layers.assign(input=tmp, output=param)

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    def _get_ema_decay(self):
        with default_main_program()._lr_schedule_guard():
            decay_var = layers.tensor.create_global_var(
                shape=[1],
                value=self._decay,
                dtype='float32',
                persistable=True,
                name="scheduled_ema_decay_rate")

            if self._thres_steps is not None:
                decay_t = (self._thres_steps + 1.0) / (self._thres_steps + 10.0)
                with layers.control_flow.Switch() as switch:
                    with switch.case(decay_t < self._decay):
                        layers.tensor.assign(decay_t, decay_var)
                    with switch.default():
                        layers.tensor.assign(
                            np.array(
                                [self._decay], dtype=np.float32),
                            decay_var)
        return decay_var

    def _get_decay_pow(self, block):
4094 4095 4096 4097 4098 4099 4100
        global_step = layers.create_global_var(
            name=self._step_counter_name,
            shape=[1],
            value=0,
            dtype='int64',
            persistable=True)
        global_step = layers.cast(global_step, "float32")
4101
        decay_var = block._clone_variable(self._decay_var)
4102 4103
        decay_pow_acc = layers.elementwise_pow(decay_var, global_step)
        return decay_pow_acc, global_step
4104

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    def _create_ema_vars(self, param):
4106 4107 4108 4109 4110 4111 4112 4113 4114
        param_ema = layers.create_global_var(
            name=unique_name.generate(self._name + param.name + '_ema'),
            shape=param.shape,
            value=0.0,
            dtype=param.dtype,
            persistable=True)

        return param_ema

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    def update(self):
        """ 
        Update Exponential Moving Average. Should only call this method in 
        train program.
        """
4120 4121
        global_step = layers.autoincreased_step_counter(
            counter_name=self._step_counter_name)
4122
        param_master_emas = []
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        for param, tmp in self._params_tmps:
            with param.block.program._optimized_guard(
                [param, tmp]), name_scope('moving_average'):
                param_ema = self._ema_vars[param.name]
4127
                if param.name + '.master' in self._ema_vars:
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                    master_ema = self._ema_vars[param.name + '.master']
                    param_master_emas.append([param_ema, master_ema])
                else:
                    ema_t = param_ema * self._decay_var + param * (
                        1 - self._decay_var)
                    layers.assign(input=ema_t, output=param_ema)

        # for fp16 params
        for param_ema, master_ema in param_master_emas:
            default_main_program().global_block().append_op(
                type="cast",
                inputs={"X": master_ema},
                outputs={"Out": param_ema},
                attrs={
                    "in_dtype": master_ema.dtype,
                    "out_dtype": param_ema.dtype
                })
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    @signature_safe_contextmanager
    def apply(self, executor, need_restore=True):
        """
        Apply moving average to parameters for evaluation.
        
        Args:
            executor (Executor): The Executor to execute applying.
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            need_restore (bool, optional): Whether to restore parameters after 
                applying. Default True.
4155 4156 4157 4158 4159 4160 4161 4162 4163 4164 4165 4166 4167 4168 4169
        """
        executor.run(self.apply_program)
        try:
            yield
        finally:
            if need_restore:
                self.restore(executor)

    def restore(self, executor):
        """Restore parameters.
        
        Args:
            executor (Executor): The Executor to execute restoring.
        """
        executor.run(self.restore_program)
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class PipelineOptimizer(object):
4173
    """
4174
	:api_attr: Static Graph
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4176 4177 4178 4179
    Pipeline Optimizer: Make a program to run as pipeline, that is splitting a
    program into multiple sections (sub-programs) and each section run on a
    device to enable the training of large scale models and the use of
    heterogeneous devices. Meanwhile, all sections run in the stype of pipeline.
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4181
    Args:
4182 4183 4184 4185
        optimizer (Optimizer): The optimizer to use, such as SGD.
        num_microbatches (int): Number of microbatches. [Optional. Default:1].
        start_cpu_core_id (int): The first cpu core id to use. [Optional. Default:0].
    
4186 4187
    Examples:
        .. code-block:: python
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4189
            import paddle.fluid as fluid
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            import paddle.fluid.layers as layers

4192 4193 4194 4195 4196 4197 4198 4199 4200 4201 4202 4203 4204 4205 4206 4207
            with fluid.device_guard("gpu:0"):
                x = fluid.layers.data(name='x', shape=[1], dtype='int64', lod_level=0)
                y = fluid.layers.data(name='y', shape=[1], dtype='int64', lod_level=0)
                data_loader = fluid.io.DataLoader.from_generator(
                    feed_list=[x, y],
                    capacity=64,
                    use_double_buffer=True,
                    iterable=False)

                emb_x = layers.embedding(input=x, param_attr=fluid.ParamAttr(name="embx"), size=[10,2], is_sparse=False)
                emb_y = layers.embedding(input=y, param_attr=fluid.ParamAttr(name="emby",learning_rate=0.9), size=[10,2], is_sparse=False)

            with fluid.device_guard("gpu:1"):
                concat = layers.concat([emb_x, emb_y], axis=1)
                fc = layers.fc(input=concat, name="fc", size=1, num_flatten_dims=1, bias_attr=False)
                loss = layers.reduce_mean(fc)
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            optimizer = fluid.optimizer.SGD(learning_rate=0.5)
4209
            optimizer = fluid.optimizer.PipelineOptimizer(optimizer)
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            optimizer.minimize(loss)
4211 4212 4213 4214 4215 4216 4217 4218 4219

            def train_reader():
                for _ in range(4):
                    x = np.random.random(size=[1]).astype('int64')
                    y = np.random.random(size=[1]).astype('int64')
                    yield x, y
            data_loader.set_sample_generator(train_reader, batch_size=1)

            place = fluid.CUDAPlace(0)
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            exe = fluid.Executor(place)
            exe.run(fluid.default_startup_program())
4222 4223
            batch_size = 1
            data_loader.start()
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            exe.train_from_dataset(
4225
                    fluid.default_main_program())
4226
            data_loader.reset()
4227 4228
    """

4229
    def __init__(self, optimizer, num_microbatches=1, start_cpu_core_id=0):
4230 4231 4232 4233 4234
        self._device = 'cpu'
        if core.is_compiled_with_npu():
            self._device = "npu"
        elif core.is_compiled_with_cuda():
            self._device = "gpu"
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        if framework.in_dygraph_mode():
            raise Exception("In dygraph, don't support PipelineOptimizer.")
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        if not isinstance(optimizer, Optimizer) and not isinstance(
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                optimizer, paddle.optimizer.Optimizer) and not isinstance(
                    optimizer, paddle.fluid.contrib.mixed_precision.decorator.
                    OptimizerWithMixedPrecision):
4241 4242 4243 4244
            raise ValueError("The 'optimizer' parameter for "
                             "PipelineOptimizer must be an instance of "
                             "Optimizer, but the given type is {}.".format(
                                 type(optimizer)))
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        self._optimizer = optimizer
4246 4247 4248 4249 4250 4251

        # Get the original optimizer defined by users, such as SGD
        self._origin_optimizer = self._optimizer
        while hasattr(self._origin_optimizer, "inner_opt"):
            self._origin_optimizer = self._origin_optimizer.inner_opt

4252 4253 4254 4255
        assert num_microbatches >= 1, (
            "num_microbatches must be a positive value.")
        self._num_microbatches = num_microbatches
        assert start_cpu_core_id >= 0, (
4256
            "start_cpu_core_id must be a non-negative integer.")
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        self._start_cpu_core_id = start_cpu_core_id
4258 4259 4260 4261 4262 4263
        self._place_list = None
        op_maker = core.op_proto_and_checker_maker
        self._op_role = op_maker.OpRole
        self._op_role_key = op_maker.kOpRoleAttrName()
        self._op_role_var_key = op_maker.kOpRoleVarAttrName()
        self._op_device_key = op_maker.kOpDeviceAttrName()
4264
        self._param_device_map = None
4265 4266
        self._pipeline_pair = []
        self._pp_ring_map = dict()
4267 4268
        self.output_var_to_op = None
        self.input_var_to_op = None
4269 4270 4271 4272 4273 4274 4275 4276 4277 4278 4279 4280 4281 4282 4283 4284 4285 4286 4287 4288 4289 4290 4291 4292 4293 4294 4295 4296 4297 4298 4299 4300 4301 4302 4303

    # insert allreduce op to sync global information for global
    # gradient clip and amp
    def _insert_allreduce_op(self, op_idx, block):
        """
        Insert allreduce op to sync global information for global
        gradient clip and amp.
        """
        op = block.ops[op_idx]
        out_name = op.desc.output_arg_names()[0]
        out_var = block.var(out_name)
        offset = 0
        if op.type == "reduce_any":
            # cast the bool var to int32 to use allreduce_max op
            temp_var_name = unique_name.generate(out_name + "_cast_int32")
            temp_var = block.create_var(
                name=temp_var_name, shape=[1], dtype="int32")
            block._insert_op(
                op_idx + 1 + offset,
                type='cast',
                inputs={'X': out_var},
                outputs={'Out': temp_var},
                attrs={
                    'in_dtype': out_var.dtype,
                    'out_dtype': temp_var.dtype,
                    self._op_role_key: self._op_role.Optimize
                })
            offset += 1
        block._insert_op(
            op_idx + 1 + offset,
            type='c_allreduce_max'
            if op.type == "reduce_any" else 'c_allreduce_sum',
            inputs={'X': temp_var if op.type == "reduce_any" else out_var},
            outputs={'Out': temp_var if op.type == "reduce_any" else out_var},
            attrs={
4304
                'ring_id': self.global_ring_id,
4305 4306 4307 4308 4309 4310 4311 4312 4313 4314 4315 4316 4317 4318 4319
                self._op_role_key: self._op_role.Optimize,
                'use_calc_stream': True
            })
        offset += 1
        if op.type == "reduce_any":
            block._insert_op(
                op_idx + 1 + offset,
                type='cast',
                inputs={'X': temp_var},
                outputs={'Out': out_var},
                attrs={
                    'in_dtype': temp_var.dtype,
                    'out_dtype': out_var.dtype,
                    self._op_role_key: self._op_role.Optimize
                })
4320
            offset += 1
4321
        return offset
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4323
    def _create_vars(self, block, ori_block):
4324
        # Create vars for block, copied from ori_block
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        used_var_set = set()
4326 4327 4328 4329 4330 4331 4332 4333 4334 4335 4336 4337 4338 4339 4340 4341 4342 4343 4344 4345 4346 4347 4348 4349 4350
        added_op_num = 0
        op_idx = 0
        op_size = block.desc.op_size()
        while op_idx < op_size + added_op_num:
            # Whether to insert allreduce_sum or allreduce_max op.
            # For amp and global gradient clip strategies, we should
            # get the global information, so allreduce op is needed.
            should_insert = False
            op = block.ops[op_idx]
            # For op process vars on all devices, remove its input 
            # vars not in this block
            reserved_x = []
            if op.type == 'reduce_any' and self._is_optimize_op(op):
                should_insert = True
            elif op.type == 'concat' and self._is_optimize_op(op):
                for input_name in op.desc.input("X"):
                    if block._find_var_recursive(input_name):
                        reserved_x.append(input_name)
                op.desc.set_input('X', reserved_x)
            elif op.type == 'update_loss_scaling':
                for input_name in op.desc.input("X"):
                    if block._find_var_recursive(input_name):
                        reserved_x.append(input_name)
                op.desc.set_input('X', reserved_x)
                op.desc.set_output('Out', reserved_x)
4351 4352 4353 4354 4355 4356 4357 4358 4359 4360
            elif op.type == 'check_finite_and_unscale':
                for input_name in op.desc.input("X"):
                    if block._find_var_recursive(input_name):
                        reserved_x.append(input_name)
                op.desc.set_input('X', reserved_x)
                op.desc.set_output('Out', reserved_x)
                if len(reserved_x) == 0:
                    block._remove_op(op_idx)
                    op_size -= 1
                    continue
4361 4362 4363 4364 4365 4366 4367 4368
            elif op.type == 'sum' and self._is_gradient_clip_op(op):
                for input_name in op.desc.input("X"):
                    if block._find_var_recursive(input_name):
                        reserved_x.append(input_name)
                op.desc.set_input('X', reserved_x)
                should_insert = True

            vars = op.desc.input_arg_names() + op.desc.output_arg_names()
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            for var in vars:
4370 4371 4372
                # a var whose name contains "blocking_queue" 
                # only exists in startup program 
                if var in used_var_set or "_blocking_queue" in var:
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                    continue
                used_var_set.add(var)
4375 4376
                if block._find_var_recursive(str(var)): continue
                source_var = ori_block._var_recursive(str(var))
4377
                if source_var.type == core.VarDesc.VarType.READER:
4378
                    dest_var = block.create_var(
4379 4380 4381
                        name=var,
                        type=core.VarDesc.VarType.READER,
                        persistable=source_var.persistable)
4382
                else:
4383 4384 4385 4386 4387 4388 4389 4390 4391 4392
                    dest_var = block._clone_variable(source_var, False)
                dest_var.stop_gradient = source_var.stop_gradient
            # When use with sharding, allreduce_sum and allreduce_max
            # used for global gradient clip and amp will be added by sharding.
            op_idx += 1
            if self.use_sharding or not should_insert: continue
            inserted_ops = self._insert_allreduce_op(op_idx - 1, block)
            added_op_num += inserted_ops
            op_idx += inserted_ops
        block._sync_with_cpp()
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4394
    def _is_loss_grad_op(self, op):
4395 4396
        assert self._op_role_key in op.attr_names
        op_role = int(op.attr(self._op_role_key))
4397 4398 4399
        return op_role & int(self._op_role.Backward) and op_role & int(
            self._op_role.Loss)

4400 4401 4402 4403
    def _is_forward_op(self, op):
        return self._op_role_key in op.attr_names and (
            int(op.attr(self._op_role_key)) == int(self._op_role.Forward))

4404
    def _is_backward_op(self, op):
4405 4406 4407 4408 4409 4410
        return self._op_role_key in op.attr_names and (
            int(op.attr(self._op_role_key)) & int(self._op_role.Backward))

    def _is_loss_op(self, op):
        assert self._op_role_key in op.attr_names
        return int(op.attr(self._op_role_key)) == int(self._op_role.Loss)
4411 4412

    def _is_optimize_op(self, op):
4413 4414
        return self._op_role_key in op.attr_names and (
            int(op.attr(self._op_role_key)) & int(self._op_role.Optimize))
4415 4416 4417 4418 4419

    def _is_update_op(self, op):
        return 'Param' in op.input_names and 'Grad' in op.input_names and (
            "LearningRate" in op.input_names)

4420
    def _split_program(self, main_program, devices):
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        """
4422
        Split a program into sections according to devices that ops run on.
4423
        The op whose op_device attr is "gpu:all" is copied to all sections.
4424 4425 4426

        Args:
            main_program (Program): the main program
4427
            devices: all used devices
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4428
        """
4429
        # Map from device to its corresponding section program info
4430
        device_program_map = defaultdict(Program)
4431

4432
        block = main_program.block(0)
4433 4434
        for op in block.ops:
            device = op.attr(self._op_device_key)
4435
            # Copy ops whose op_device set to "gpu:all" to all sections.
4436
            if device == f"{self._device}:all":
4437
                for device in devices:
4438 4439
                    program = device_program_map[device]
                    op_desc = op.desc
4440
                    ap_op = program.global_block().desc.append_op()
4441
                    ap_op.copy_from(op_desc)
4442
                    ap_op._set_attr(self._op_device_key, "")
4443 4444 4445
            else:
                program = device_program_map[device]
                op_desc = op.desc
4446
                ap_op = program.global_block().desc.append_op()
4447
                ap_op.copy_from(op_desc)
4448
                ap_op._set_attr(self._op_device_key, "")
4449

4450
        program_list = []
4451
        for key in devices:
4452
            program = device_program_map[key]
4453 4454
            program._sync_with_cpp()
            program_list.append(program)
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4455

4456
        return program_list
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4458 4459 4460 4461 4462 4463 4464
    def _get_op_device_for_startup_program(self, var_name):
        """
        For adam optimizer, it will add accumulators and initialize them
        with fill_constant, and force the op device to cpu. Hence, we should
        get the real op_device attribute of the fill_constant as the device
        where the corresponding parameters on.
        """
4465 4466 4467
        assert "beta1_pow_acc" in var_name or "beta2_pow_acc" in var_name, \
            'For accumulators for Adam, the name must contain beta1_pow_acc ' \
            'or beta2_pow_acc.'
4468 4469 4470 4471
        param_name = var_name[0:var_name.index('_beta')]
        device = self._param_device_map[param_name]
        return device

4472 4473
    def _split_startup_program(self, startup_program, device_id):
        block = startup_program.global_block()
4474 4475 4476
        new_startup_program = Program()
        for op in block.ops:
            device = op.attr(self._op_device_key)
4477 4478
            if device == "cpu":
                assert op.type == "fill_constant", (
4479 4480
                    "For ops in startup program with the op_device attribute "
                    "of cpu, they must be of type fill_constant.")
4481 4482 4483
                output_var = op.output_arg_names[0]
                device = self._get_op_device_for_startup_program(output_var)

4484
            if device:
4485
                device_index = int(device.split(':')[1])
4486
            else:
4487 4488
                # LR related ops
                device = None
4489
            if device and device_index != device_id: continue
4490
            op_desc = op.desc
4491
            ap_op = new_startup_program.global_block().desc.append_op()
4492 4493 4494
            ap_op.copy_from(op_desc)
            ap_op._set_attr(self._op_device_key, "")
        new_startup_program._sync_with_cpp()
4495
        self._create_vars(new_startup_program.global_block(), block)
4496 4497
        return new_startup_program

4498
    def _find_post_op(self, index, var_name):
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4499
        """
4500
        Find the post op that has variable named var_name as input.
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4501
        """
4502 4503 4504 4505 4506 4507
        # bugfix for uniform hybrid parallelism
        if '.cast_fp32' in var_name:
            var_name = var_name.replace('.cast_fp32', '')
        if '.cast_fp16' in var_name:
            var_name = var_name.replace('.cast_fp16', '')

4508 4509 4510 4511 4512 4513 4514 4515
        post_ops = self.input_var_to_op[var_name]
        if post_ops == None: return None
        result_op = None
        for post_op, post_idx in reversed(post_ops):
            if post_idx > index:
                result_op = post_op
                break
        return result_op
4516

4517
    def _find_prev_op(self, index, var_name):
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4518
        """
4519 4520
        Find the previous op of op with index that outputs
        variable named var_name.
H
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4521
        """
4522 4523 4524 4525 4526 4527
        prev_ops = self.output_var_to_op[var_name]
        if prev_ops == None: return None
        result_op = None
        for prev_op, prev_idx in reversed(prev_ops):
            if prev_idx < index:
                result_op = prev_op
4528
                break
4529
        return result_op
4530 4531

    def _rename_arg(self, op, old_name, new_name):
4532 4533
        op._rename_input(old_name, new_name)
        op._rename_output(old_name, new_name)
4534

4535
    def _create_var(self, block, ref_var, name, dtype=None):
4536 4537 4538 4539 4540 4541 4542 4543
        """
        Create a new var for block, which has the same type,
        shape and dtype as ref_var, then rename it with the
        name `name`.
        """
        new_var = block.create_var(
            name=name,
            shape=ref_var.shape,
4544
            dtype=ref_var.dtype if dtype is None else dtype,
4545 4546
            type=ref_var.type,
            lod_level=ref_var.lod_level,
4547 4548
            persistable=ref_var.persistable,
            is_data=ref_var.is_data,
4549
            need_check_feed=ref_var.desc.need_check_feed())
4550
        new_var.stop_gradient = ref_var.stop_gradient
4551 4552 4553 4554 4555 4556 4557 4558
        return new_var

    def _strip_grad_suffix(self, name):
        """
        Strip the grad suffix from the given variable name
        """
        pos = name.find(core.grad_var_suffix())
        return name[:pos] if pos != -1 else name
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4559

4560 4561 4562 4563 4564 4565
    def _append_grad_suffix(self, name):
        """
        Append grad suffix to the given variable name
        """
        return name + core.grad_var_suffix()

4566
    def _get_op_device_attr(self, op):
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4567
        """
4568
        Get the op_device attribute of a op.
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4569
        """
4570 4571 4572
        device = op.attr(self._op_device_key) \
            if op.has_attr(self._op_device_key) else None
        if device:
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            assert device[0:3] == 'gpu' or device[0:3] == 'npu', "Now, only gpu and npu devices are " \
4574 4575 4576 4577 4578 4579 4580 4581 4582 4583 4584 4585 4586 4587
                "supported in pipeline parallemism."
        return device

    def _add_op_device_attr_for_op(self, op, idx, block):
        """
        Add op_device attrribute for ops that have not that attribute set.
        We use "gpu:all" to represent the op should be put on all
        sub-programs, such as lr-related ops. Note that: "gpu:all"
        is only used by pipeline as an indicator.
        """
        lrsched_role = int(self._op_role.LRSched)
        if op.attr(self._op_role_key) == lrsched_role:
            # For LRSched ops, we should put them on all sub-programs to
            # make sure each sub-program update the lr correctly
4588
            op._set_attr(self._op_device_key, f"{self._device}:all")
4589 4590 4591 4592 4593 4594 4595 4596 4597 4598 4599 4600 4601 4602 4603 4604 4605
        # bugfix in hybrid parallelism
        elif op.type == "sum" and self._is_backward_op(op):
            # For sum ops that compute the sum of @RENAMED@ vars
            for name in op.desc.input_arg_names():
                assert '@RENAME@' in name, \
                    "The op must be sum used to accumulate renamed vars."
            assert len(op.desc.output_arg_names()) == 1
            out_name = op.desc.output_arg_names()[0]
            post_op = self._find_post_op(idx, out_name)
            assert post_op.has_attr(
                'op_device'), "{} has no op_device attr for var {}".format(
                    post_op.type, out_name)
            device = post_op.attr(self._op_device_key)
            assert device, "The post op must have op_device set."
            op._set_attr(self._op_device_key, device)
        elif (op.type == "cast" or
              op.type == "scale") and self._is_backward_op(op):
4606
            prev_op = self._find_prev_op(idx, op.desc.input("X")[0])
4607 4608
            op._set_attr(self._op_device_key, prev_op.attr(self._op_device_key))
        elif op.type == "memcpy" and not self._is_optimize_op(op):
4609
            # for checkpoint offloading
4610 4611 4612 4613 4614
            assert len(op.input_arg_names) == 1 and len(
                op.output_arg_names) == 1
            input_name = op.input_arg_names[0]
            output_name = op.output_arg_names[0]
            if '@Fetch' in output_name:
4615
                post_op = self._find_post_op(idx, output_name)
4616 4617 4618
                op._set_attr(self._op_device_key,
                             post_op.attr(self._op_device_key))
            else:
4619
                prev_op = self._find_prev_op(idx, op.desc.input("X")[0])
4620 4621 4622 4623 4624 4625 4626 4627 4628 4629 4630 4631 4632 4633 4634 4635
                op._set_attr(self._op_device_key,
                             prev_op.attr(self._op_device_key))
        elif self._is_loss_op(op):
            # For loss * loss_scaling op added by AMP
            offset = 1
            while (not block.ops[idx + offset].has_attr(self._op_device_key) or
                   not block.ops[idx + offset].attr(self._op_device_key)):
                offset += 1
            device = block.ops[idx + offset].attr(self._op_device_key)
            assert device, "Please put you program within device_guard scope."
            for i in range(offset):
                block.ops[idx + i]._set_attr(self._op_device_key, device)
        elif self._is_optimize_op(op) and op.type == "cast":
            # For fp16-->fp32 cast added by AMP
            grad_name = op.output('Out')
            assert len(grad_name) == 1
4636
            param_name = self._strip_grad_suffix(grad_name[0])
4637 4638 4639 4640 4641 4642 4643 4644 4645 4646 4647 4648 4649 4650 4651 4652 4653 4654
            device = self._param_device_map[param_name]
            op._set_attr(self._op_device_key, device)
        elif self._is_gradient_clip_op(op) or self._is_regularization_op(op):
            # For gradient clip and regularization ops, we set their op_device
            # attribute to the device where their corresponding parameters on.
            assert self._op_role_var_key in op.attr_names, "gradient_clip " \
                "and regularization ops must have op_role_var attribute."
            op_role_var = op.attr(self._op_role_var_key)
            assert len(op_role_var) == 2, "op_role_var for gradient_clip " \
                "regularization ops must have two elements."
            param_name = op_role_var[0]
            device = self._param_device_map[param_name]
            # For sum op added by global gradient clip, it must be 
            # put on all devices
            if (op.type == 'sum' or op.type == 'sqrt' or
                    op.type == 'fill_constant' or
                    op.type == 'elementwise_max' or
                    op.type == 'elementwise_div'):
4655
                device = f"{self._device}:all"
4656
            op._set_attr(self._op_device_key, device)
4657 4658 4659
        elif self._is_weight_decay_op(op) and op.type == 'scale':
            # set AdamW decay_coeff to device:all
            op._set_attr(self._op_device_key, f"{self._device}:all")
R
Roc 已提交
4660
        elif op.type == "alloc_float_status" or op.type == "clear_float_status":
4661
            op._set_attr(self._op_device_key, f"{self._device}:all")
4662 4663
        else:
            other_known_ops = [
R
Roc 已提交
4664 4665
                'update_loss_scaling', 'reduce_any', 'concat', 'sum',
                'check_finite_and_unscale', 'alloc_float_status', 'memcpy'
4666 4667 4668 4669 4670
            ]
            assert op.type in other_known_ops, "For other ops without " \
                "op_device set, they must be one of {}, but it " \
                "is {}".format(other_known_ops, op.type)
            assert self._is_optimize_op(op)
4671
            op._set_attr(self._op_device_key, f"{self._device}:all")
4672 4673

    def _add_op_device_attr(self, block):
4674
        """
4675 4676
        Add op_device attrribute for ops in block that have 
        not that attribute set.
4677
        """
4678 4679 4680 4681 4682 4683 4684 4685
        for idx, op in enumerate(list(block.ops)):
            if (op.type == "create_py_reader" or op.type == "read" or
                    op.type == "create_double_buffer_reader"):
                # Copy read related ops to all section to make them exit 
                # after each epoch.
                # We use "gpu:all" to represent the op should be put on all
                # sub-programs, such as lr-related ops. Note that: "gpu:all"
                # is only used by pipeline as an indicator.
4686
                op._set_attr(self._op_device_key, f"{self._device}:all")
4687 4688 4689 4690
                continue
            # op_device attribute has been set
            if self._get_op_device_attr(op): continue
            self._add_op_device_attr_for_op(op, idx, block)
H
hutuxian 已提交
4691

4692 4693
    def _check_validation(self, block):
        """
4694 4695 4696
        Check whether ops in a block have both the op_device and the 
        op_role attributes set.
        Then, return all devices in order.
4697
        """
4698 4699 4700 4701 4702 4703 4704 4705 4706 4707
        device_list = []
        # Section worker only supports the following op_role
        valid_op_role_value = [
            int(self._op_role.LRSched),
            int(self._op_role.Forward),
            int(self._op_role.Backward),
            int(self._op_role.Loss),
            int(self._op_role.Optimize),
            int(self._op_role.Backward) | int(self._op_role.Loss),
        ]
4708
        for op in block.ops:
4709
            if not op._has_kernel(op.type):
4710 4711 4712 4713
                assert op.type == "conditional_block" and (
                    op.attr(self._op_role_key) == int(self._op_role.LRSched)), (
                        "Now, the only supported op without kernel is "
                        "conditional_block, and its op role must be LRSched.")
4714 4715 4716
            assert op.has_attr(self._op_role_key), (
                "op ({}) has no {} attribute.".format(op.type,
                                                      self._op_role_key))
4717 4718
            op_role = op.attr(self._op_role_key)
            assert int(op_role) in valid_op_role_value, \
4719
                "op_role {} for op {} must be one of {}".format(
4720
                    op_role,
4721 4722
                    op.type,
                    valid_op_role_value)
4723

4724 4725 4726
            assert op.has_attr(self._op_device_key), (
                "op ({}) has no {} attribute.".format(op.type,
                                                      self._op_device_key))
4727 4728 4729 4730

            device = op.attr(self._op_device_key)
            assert device, ("op_device attribute for op "
                            "{} has not been set.".format(op.type))
4731
            if device == f"{self._device}:all": continue
4732

4733
            dev_type = device.split(':')[0]
B
Baibaifan 已提交
4734 4735 4736
            assert dev_type == "gpu" or dev_type == 'npu', (
                "Now only gpu and npu devices are supported "
                "for pipeline parallelism.")
4737 4738

            if device not in device_list:
4739
                device_list.append(device)
4740

4741
        return device_list
4742

4743
    def _insert_sendrecv_ops_for_boundaries(self, block):
4744
        """
4745
        Insert a pair of send and recv ops for every two
4746 4747
        consecutive ops on different devices.
        """
4748
        # A map from var to device where op takes it as input,
4749
        # avoiding multiple send and recv ops.
4750
        input_var_to_device = dict()
4751 4752 4753 4754 4755 4756 4757 4758 4759 4760
        # bugfix hybrid parallelism
        first_optimize_index = None
        for index, op in enumerate(list(block.ops)):
            if self._is_optimize_op(op):
                first_optimize_index = index
                break
        extra_index_info = {
            'index': 0,
            'first_optimize_index': first_optimize_index
        }
4761

4762
        for index, op in enumerate(list(block.ops)):
4763
            cur_device = op.attr(self._op_device_key)
4764
            if cur_device == f"{self._device}:all": continue
4765 4766
            for var_name in op.input_arg_names:
                var = block.var(var_name)
4767
                # skip data var
4768
                if var.is_data: continue
4769
                prev_device = None
4770 4771 4772 4773
                generate_ops = self.output_var_to_op.get(var_name)
                if generate_ops is None:
                    if var_name not in self._param_device_map:
                        continue
4774
                    prev_device = self._param_device_map[var_name]
4775 4776 4777

                prev_op = self._find_prev_op(index, var_name)

4778 4779 4780
                if not prev_device:
                    prev_device = prev_op.attr(self._op_device_key) \
                        if prev_op else None
4781

4782 4783
                if prev_device is None or prev_device == f"{self._device}:all":
                    continue
4784 4785

                if prev_device == cur_device: continue
4786

4787 4788 4789 4790 4791 4792 4793
                if var_name not in input_var_to_device:
                    input_var_to_device[var_name] = []
                if (cur_device, prev_device) in input_var_to_device[var_name]:
                    continue

                device_type = cur_device.split(':')[0] + ':'

4794 4795 4796 4797 4798 4799 4800 4801 4802 4803 4804 4805 4806 4807 4808 4809 4810 4811 4812
                def _check_stage(cur_id, prev_id):
                    # check send/recv stage valid
                    is_forward = self._is_forward_op(op)
                    is_backward = self._is_backward_op(op)
                    assert is_forward or is_backward, \
                        'send/recv in pipeline should only be inserted in forward or backward,' \
                        'please check the op_role of op={}'.format(op)

                    if is_forward:
                        assert prev_id < cur_id, \
                            "In forward, send/recv can only be passed forward, but now " \
                            "prev_stage={} great than cur_stage={}, please check op_device of op={}".format(
                                prev_id, cur_id, op)
                    elif is_backward:
                        assert prev_id > cur_id, \
                            "In backward, send/recv can only be passed backward, but now " \
                            "prev_stage={} less than cur_stage={}, please check op_device of op={}".format(
                                prev_id, cur_id, op)

4813 4814 4815 4816 4817 4818 4819 4820 4821 4822 4823 4824 4825 4826 4827 4828 4829 4830 4831 4832 4833 4834 4835
                def _insert_send_recv(cur_id, prev_id):
                    cur_dev = device_type + str(cur_id)
                    prev_dev = device_type + str(prev_id)
                    if (cur_dev, prev_dev) in input_var_to_device[var_name]:
                        return

                    if cur_id - prev_id > 1:
                        _insert_send_recv(cur_id - 1, prev_id)
                        _insert_send_recv(cur_id, cur_id - 1)
                        input_var_to_device[var_name].append(
                            (cur_dev, prev_dev))
                        return
                    elif cur_id - prev_id < -1:
                        _insert_send_recv(cur_id + 1, prev_id)
                        _insert_send_recv(cur_id, cur_id + 1)
                        input_var_to_device[var_name].append(
                            (cur_dev, prev_dev))
                        return

                    assert abs(cur_id - prev_id) == 1
                    input_var_to_device[var_name].append((cur_dev, prev_dev))

                    op_role = op.attr(self._op_role_key)
4836
                    var = block.vars[var_name]
4837 4838 4839
                    pair = (prev_id, cur_id)
                    # 1000 is just a magic number
                    pair_key = prev_id * 1000 + cur_id
4840 4841 4842 4843 4844 4845 4846
                    if pair not in self._pipeline_pair:
                        self._pipeline_pair.append(pair)
                        self._pp_ring_map[pair_key] = self.ring_id
                        ring_id = self.ring_id
                        self.ring_id += 1
                    else:
                        ring_id = self._pp_ring_map[pair_key]
4847

4848
                    if self.schedule_mode == 'F-then-B':  # F-then-B
F
fangshuixun007 已提交
4849
                        block._insert_op_without_sync(
4850
                            index=index + extra_index_info['index'],
4851 4852 4853
                            type='send_v2',
                            inputs={'X': var},
                            attrs={
4854
                                self._op_device_key: prev_dev,
4855 4856 4857 4858 4859
                                self._op_role_key: op_role,
                                'use_calc_stream': True,
                                'peer': 1,
                                'ring_id': ring_id
                            })
4860
                        extra_index_info['index'] += 1
4861 4862 4863
                        var_shape = list(var.shape)
                        var_shape[0] = self.micro_batch_size if var_shape[
                            0] < 0 else var_shape[0]
F
fangshuixun007 已提交
4864
                        block._insert_op_without_sync(
4865
                            index=index + extra_index_info['index'],
4866 4867 4868
                            type='recv_v2',
                            outputs={'Out': [var]},
                            attrs={
4869
                                'out_shape': var_shape,
4870
                                'dtype': var.dtype,
4871
                                self._op_device_key: cur_dev,
4872 4873 4874 4875 4876
                                self._op_role_key: op_role,
                                'use_calc_stream': True,
                                'peer': 0,
                                'ring_id': ring_id
                            })
4877
                        extra_index_info['index'] += 1
4878
                    elif self.schedule_mode == '1F1B':  # 1F1B
4879 4880 4881 4882
                        var_shape = list(var.shape)
                        var_shape[0] = self.micro_batch_size if var_shape[
                            0] < 0 else var_shape[0]

4883 4884 4885
                        numel = np.prod(var_shape)
                        use_mp = (self.mp_degree > 1) and (
                            numel % self.mp_degree == 0)
4886 4887 4888 4889 4890 4891 4892 4893 4894 4895 4896 4897 4898 4899 4900 4901 4902 4903 4904 4905 4906 4907 4908 4909 4910 4911

                        if 'subprog' in var.name:
                            # For recompute, if the checkpoints var is layer_norm_6.tmp_2
                            # this var will be sent twice, layer_norm_6.tmp_2 for forward pass,
                            # layer_norm_6.tmp_2.subprog_* for recompute pass.
                            # We can store the first sent var and copy the value to the
                            # second one to reduce one send/recv op.
                            # The origin_ckpt_name is layer_norm_6.tmp_2, which will be used
                            # to find the stored var for the forward pass.
                            origin_name = var.name.split('subprog')[0][0:-1]
                            associate_var = block.var(origin_name)
                            block._insert_op_without_sync(
                                index=index + extra_index_info['index'],
                                type='assign',
                                inputs={'X': [associate_var]},
                                outputs={'Out': [var]},
                                attrs={
                                    'out_shape': var_shape,
                                    'dtype': var.dtype,
                                    self._op_device_key: cur_dev,
                                    self._op_role_key: op_role,
                                    'use_calc_stream': True,
                                })
                            extra_index_info['index'] += 1
                            return

4912 4913
                        _check_stage(cur_id, prev_id)

F
fangshuixun007 已提交
4914
                        block._insert_op_without_sync(
4915
                            index=index + extra_index_info['index'],
4916 4917 4918 4919
                            type='c_sync_calc_stream',
                            inputs={'X': [var]},
                            outputs={'Out': [var]},
                            attrs={
4920
                                self._op_device_key: prev_dev,
4921 4922
                                self._op_role_key: op_role,
                            })
4923
                        extra_index_info['index'] += 1
F
fangshuixun007 已提交
4924
                        block._insert_op_without_sync(
4925
                            index=index + extra_index_info['index'],
4926
                            type='send_v2' if not use_mp else 'partial_send',
4927 4928
                            inputs={'X': var},
                            attrs={
4929
                                self._op_device_key: prev_dev,
4930 4931 4932 4933
                                self._op_role_key: op_role,
                                'use_calc_stream': False,
                                'ring_id': ring_id,
                                'peer': 1,
4934 4935 4936
                                # if send_v2, num&id attr is not in op_attrs, will not insert
                                'num': self.mp_degree,
                                'id': self.mp_rank,
4937
                            })
4938
                        extra_index_info['index'] += 1
4939 4940 4941 4942 4943 4944 4945 4946
                        insert_index = None
                        if int(op_role) == int(self._op_role.Backward):
                            insert_index = extra_index_info[
                                'first_optimize_index']
                            new_op_role = self._op_role.Optimize
                        else:
                            insert_index = index
                            new_op_role = self._op_role.Backward
4947
                        sync_comm_op = block._insert_op_without_sync(
4948
                            index=insert_index + extra_index_info['index'],
4949 4950 4951 4952
                            type='c_sync_comm_stream',
                            inputs={'X': [var]},
                            outputs={'Out': [var]},
                            attrs={
4953
                                self._op_device_key: prev_dev,
4954
                                self._op_role_key: new_op_role,
4955 4956
                                'ring_id': ring_id,
                            })
4957
                        if int(op_role) == int(self._op_role.Forward):
4958
                            sync_comm_op._set_attr('pipeline_flag', '')
4959
                            extra_index_info['index'] += 1
F
fangshuixun007 已提交
4960
                        block._insert_op_without_sync(
4961
                            index=index + extra_index_info['index'],
4962
                            type='recv_v2' if not use_mp else 'partial_recv',
4963 4964 4965 4966
                            outputs={'Out': [var]},
                            attrs={
                                'out_shape': var_shape,
                                'dtype': var.dtype,
4967
                                self._op_device_key: cur_dev,
4968 4969 4970
                                self._op_role_key: op_role,
                                'use_calc_stream': True,
                                'peer': 0,
4971 4972 4973 4974
                                'ring_id': ring_id,
                                # if recv_v2, num&id attr is not in op_attrs, will not insert
                                'num': self.mp_degree,
                                'id': self.mp_rank,
4975
                            })
4976
                        extra_index_info['index'] += 1
4977
                        if use_mp:
4978 4979 4980 4981 4982 4983 4984 4985 4986 4987 4988 4989 4990 4991 4992
                            block._insert_op_without_sync(
                                index=index + extra_index_info['index'],
                                type='partial_allgather',
                                inputs={'X': [var]},
                                outputs={'Out': [var]},
                                attrs={
                                    self._op_device_key: cur_dev,
                                    self._op_role_key: op_role,
                                    'use_calc_stream': True,
                                    'ring_id': 0,
                                    # if recv_v2, num&id attr is not in op_attrs, will not insert
                                    'nranks': self.mp_degree,
                                    'rank': self.mp_rank,
                                })
                            extra_index_info['index'] += 1
4993 4994 4995 4996 4997
                    else:
                        raise ValueError(
                            "Now only 'F-then-B' and '1F1B' are supported."
                            "The given value is {}.".format(self.schedule_mode))

4998 4999 5000 5001 5002
                _insert_send_recv(
                    int(cur_device.split(':')[1]),
                    int(prev_device.split(':')[1]))
        block._sync_with_cpp()

5003
    def _insert_loss_scale(self, block):
5004
        """
5005
        Scale the loss corresponding to number of micro-batches.
5006
        """
5007
        if self._num_microbatches == 1: return
5008
        for index, op in reversed(tuple(enumerate(list(block.ops)))):
5009 5010 5011 5012 5013 5014 5015 5016
            if self._is_loss_grad_op(op):
                loss_grad_var = block.vars[op.output_arg_names[0]]
                block._insert_op(
                    index=index + 1,
                    type='scale',
                    inputs={'X': loss_grad_var},
                    outputs={'Out': loss_grad_var},
                    attrs={
5017
                        'scale': 1.0 / self._num_microbatches,
5018 5019 5020 5021
                        self._op_role_key: self._op_role.Backward
                    })
                break

5022 5023 5024 5025 5026 5027
    def _rename_gradient_var_name(self, block):
        for index, op in enumerate(block.ops):
            if not self._is_optimize_op(op): continue
            input_names = op.input_arg_names
            output_names = op.output_arg_names
            in_out_names = input_names + output_names
L
lilong12 已提交
5028
            if op.type == 'cast' or op.type == "c_sync_comm_stream": continue
5029 5030 5031 5032 5033 5034 5035 5036
            # append "MERGED" to the names of parameter gradients,
            # and mofify the op_role_var attribute (by rename_arg func).
            for name in in_out_names:
                if not core.grad_var_suffix() in name: continue
                param_name = name.strip(core.grad_var_suffix())
                new_grad_name = name + "@MERGED"
                self._rename_arg(op, name, new_grad_name)

5037 5038 5039
    def _accumulate_gradients(self,
                              block,
                              pp_allreduce_in_optimize=False,
5040 5041
                              fp16_allreduce=False,
                              user_defined_strategy=None):
5042 5043 5044 5045
        """
        Create a new merged gradient for each parameter and accumulate the
        corresponding gradient to it.
        """
5046 5047 5048 5049 5050 5051
        if user_defined_strategy and user_defined_strategy.fuse_grad_merge:
            fused_gradient_names = self._accumulate_gradients_with_fuse(
                block, fp16_allreduce,
                user_defined_strategy.fuse_grad_size_in_MB)
            return fused_gradient_names

5052 5053 5054
        merged_gradient_names = []
        first_opt_op_idx = None

5055 5056 5057
        merged_suffix = '@MERGED@FP16' if fp16_allreduce else '@MERGED'
        dtype = paddle.float16 if fp16_allreduce else None

5058 5059 5060 5061 5062 5063 5064 5065
        for index, op in reversed(tuple(enumerate(list(block.ops)))):
            # remove the cast op of fp16 grad to fp32 grad
            if self._is_optimize_op(op) and op.type == 'cast':
                in_name = op.input_arg_names[0]
                out_name = op.output_arg_names[0]
                if out_name.strip('@GRAD') in self._param_device_map:
                    assert in_name.replace('.cast_fp16', '') == out_name
                    block._remove_op(index)
5066
                    continue
5067

5068
            if self._is_backward_op(op) and first_opt_op_idx is None:
5069 5070 5071 5072 5073 5074 5075 5076
                first_opt_op_idx = index + 1
                # no optimize phase
                if first_opt_op_idx == len(block.ops): return

            if self._is_backward_op(op) and (
                    self._op_role_var_key in op.attr_names):
                op_role_var = op.attr(self._op_role_var_key)
                if len(op_role_var) == 0: continue
5077 5078
                assert len(op_role_var) % 2 == 0
                for i in range(0, len(op_role_var), 2):
5079 5080 5081 5082
                    offset = 0
                    param_name = op_role_var[i]
                    if not block.has_var(param_name): continue
                    if '@BroadCast' in param_name: continue
5083

5084
                    param_grad_name = param_name + core.grad_var_suffix()
5085
                    merged_param_grad_name = param_grad_name + merged_suffix
5086 5087
                    if not block.has_var(merged_param_grad_name):
                        self._create_var(block, block.vars[param_name],
5088
                                         merged_param_grad_name, dtype)
5089
                    assert block.has_var(merged_param_grad_name)
5090

5091 5092 5093
                    param_grad_var = block.var(param_grad_name)
                    merged_param_grad_var = block.var(merged_param_grad_name)
                    merged_param_grad_var.persistable = True
5094
                    block._insert_op(
5095 5096 5097 5098
                        index=first_opt_op_idx + offset,
                        type='fill_constant',
                        inputs={},
                        outputs={'Out': [merged_param_grad_var]},
5099
                        attrs={
5100 5101 5102 5103 5104
                            'shape': merged_param_grad_var.shape,
                            'dtype': merged_param_grad_var.dtype,
                            'value': float(0),
                            # a trick to run this op once per mini-batch
                            self._op_role_key: self._op_role.Optimize.LRSched,
5105 5106
                        })
                    offset += 1
5107 5108
                    grad_name = op_role_var[i + 1]
                    grad_var = block.vars[grad_name]
5109 5110 5111 5112 5113 5114 5115 5116 5117

                    is_fp16_grad = 'cast_fp16' in grad_name
                    need_cast = (is_fp16_grad is not fp16_allreduce)

                    if need_cast:
                        # if fp16_allreduce:
                        #     cast grad to fp16 to accumulate to merged gradient
                        # else:
                        #     cast grad to fp32 to accumulate to merged gradient
5118
                        cast_grad_var_name = param_grad_name + '@TMP'
5119 5120
                        cast_grad_var = self._create_var(
                            block, param_grad_var, cast_grad_var_name, dtype)
5121 5122 5123 5124 5125 5126 5127 5128 5129 5130 5131 5132
                        cast_grad_var.persistable = False
                        block._insert_op(
                            index=first_opt_op_idx + offset,
                            type='cast',
                            inputs={'X': grad_var},
                            outputs={'Out': cast_grad_var},
                            attrs={
                                'in_dtype': grad_var.dtype,
                                'out_dtype': cast_grad_var.dtype,
                                self._op_role_key: self._op_role.Backward,
                            })
                        offset += 1
5133 5134 5135 5136 5137 5138 5139 5140 5141 5142 5143 5144 5145 5146 5147 5148 5149 5150 5151 5152 5153 5154 5155 5156 5157 5158 5159 5160 5161 5162 5163 5164 5165 5166 5167 5168 5169 5170 5171 5172 5173 5174 5175 5176 5177 5178
                        grad_var = cast_grad_var

                    block._insert_op(
                        index=first_opt_op_idx + offset,
                        type='sum',
                        inputs={'X': [merged_param_grad_var, grad_var]},
                        outputs={'Out': merged_param_grad_var},
                        attrs={self._op_role_key: self._op_role.Backward, })
                    offset += 1
                    merged_gradient_names.append(merged_param_grad_name)

        if not fp16_allreduce: return merged_gradient_names

        first_opt_op_idx = None
        for index, op in reversed(tuple(enumerate(list(block.ops)))):
            if self._is_backward_op(op) and first_opt_op_idx is None:
                first_opt_op_idx = index + 1
                break
        assert first_opt_op_idx is not None

        # insert cast op from fp16->fp32
        # FIXME(wangxi): maybe put in sharding is better, for some grad
        #                is not in sharding device.
        for fp16_grad_name in merged_gradient_names:
            grad_name = fp16_grad_name.replace('@FP16', '')
            param_name = fp16_grad_name.replace('@GRAD@MERGED@FP16', '')

            if not block.has_var(grad_name):
                self._create_var(block, block.vars[param_name], grad_name)
            assert block.has_var(grad_name)

            fp16_grad_var = block.var(fp16_grad_name)
            grad_var = block.var(grad_name)
            grad_var.persistable = False

            block._insert_op(
                index=first_opt_op_idx,
                type='cast',
                inputs={'X': fp16_grad_var},
                outputs={'Out': grad_var},
                attrs={
                    'in_dtype': fp16_grad_var.dtype,
                    'out_dtype': grad_var.dtype,
                    self._op_role_key: self._op_role.Optimize,
                })

5179
        return merged_gradient_names
5180

5181 5182 5183 5184 5185 5186 5187 5188 5189 5190 5191 5192 5193 5194 5195 5196 5197 5198 5199 5200 5201 5202 5203 5204 5205 5206 5207 5208 5209 5210 5211 5212 5213 5214 5215 5216 5217 5218
    def _accumulate_gradients_with_fuse(self, main_block, fp16, fused_size):
        first_opt_op_idx = None
        grad_param_pairs = []
        # obtain all param/grad pairs that needed to be fused
        for index, op in reversed(tuple(enumerate(list(main_block.ops)))):
            # remove the cast op of fp16 grad to fp32 grad
            if self._is_optimize_op(op) and op.type == 'cast':
                in_name = op.input_arg_names[0]
                out_name = op.output_arg_names[0]
                if out_name.strip('@GRAD') in self._param_device_map:
                    assert in_name.replace('.cast_fp16', '') == out_name
                    main_block._remove_op(index)
                    continue

            if self._is_backward_op(op) and first_opt_op_idx is None:
                first_opt_op_idx = index + 1
                # no optimize phase
                if first_opt_op_idx == len(main_block.ops):
                    return

            if self._is_backward_op(op) and (
                    self._op_role_var_key in op.attr_names):
                op_role_var = op.attr(self._op_role_var_key)
                if len(op_role_var) == 0:
                    continue
                assert len(op_role_var) % 2 == 0
                for i in range(0, len(op_role_var), 2):
                    param_name = op_role_var[i]
                    if not main_block.has_var(param_name):
                        continue
                    if '@BroadCast' in param_name:
                        continue
                    grad_param_pairs.append(
                        (op_role_var[i + 1], op_role_var[i]))

        if len(grad_param_pairs) == 0:
            return

5219 5220 5221
        grad_param_pairs = self._sort_grad_param_by_dtype(main_block,
                                                          grad_param_pairs)

5222 5223 5224 5225 5226 5227 5228 5229 5230 5231 5232 5233 5234 5235 5236 5237 5238 5239 5240 5241 5242 5243 5244 5245 5246 5247 5248 5249 5250 5251 5252 5253 5254 5255 5256 5257 5258 5259 5260 5261 5262 5263 5264 5265 5266 5267 5268 5269 5270 5271 5272 5273 5274 5275 5276 5277 5278 5279 5280 5281 5282 5283 5284 5285 5286 5287 5288 5289 5290 5291 5292 5293 5294 5295 5296 5297 5298 5299 5300 5301 5302 5303 5304 5305 5306 5307 5308 5309 5310 5311 5312 5313 5314 5315 5316 5317 5318 5319 5320 5321 5322 5323 5324 5325 5326 5327 5328 5329 5330 5331 5332 5333 5334 5335 5336 5337 5338 5339 5340 5341 5342 5343 5344 5345 5346 5347 5348 5349 5350 5351 5352 5353 5354 5355 5356 5357 5358 5359 5360 5361 5362 5363 5364 5365 5366 5367 5368 5369 5370 5371 5372 5373 5374 5375 5376 5377 5378 5379 5380 5381 5382 5383 5384 5385 5386 5387 5388 5389 5390 5391 5392 5393 5394 5395 5396 5397 5398 5399 5400 5401 5402 5403 5404 5405 5406 5407 5408 5409 5410 5411 5412 5413 5414
        grad_param_segments = []
        merged_suffix = '@MERGED@FP16' if fp16 else '@MERGED'
        dtype = paddle.float16 if fp16 else paddle.float32
        cur_size = 0.
        last_dtype = None
        # split the grad based on dtype and fused size
        for grad, param in grad_param_pairs:
            real_grad = main_block.var(grad)
            # create the gradient merged var for each grad
            merged_grad_var = main_block.create_var(
                name=param + core.grad_var_suffix() + merged_suffix,
                dtype=dtype,
                shape=real_grad.shape,
                persistable=True,
                stop_gradient=False)
            real_param = main_block.var(param)
            tmp_size = self._get_var_size(real_grad)
            # two strategies for splitting the grad
            # 1. the current segment's size reach the user defined grad_size_in_MB
            # 2. the upcoming grad holds different dtype compared with grads in current segment
            if len(grad_param_segments) == 0 \
                    or cur_size + tmp_size > fused_size \
                    or real_grad.dtype != last_dtype:
                grad_param_segments.append(
                    ([real_grad], [real_param], [merged_grad_var]))
                last_dtype = real_grad.dtype
                cur_size = 0.
            else:
                grad_param_segments[-1][0].append(real_grad)
                grad_param_segments[-1][1].append(real_param)
                grad_param_segments[-1][2].append(merged_grad_var)
                cur_size += tmp_size

        fused_gradients = []
        fused_merged_gradients = []
        # create fused vars for grad and param
        for grad_param_segment in grad_param_segments:
            grad_segment = grad_param_segment[0]
            merged_grad_segment = grad_param_segment[2]
            fused_grad = main_block.create_var(
                name='FusedGrad_{}'.format(grad_segment[0].name),
                dtype=grad_segment[0].dtype,
                persistable=False,
                stop_gradient=False)
            # keep the '.cast_fp16' info in the fuse var name
            fused_merged_grad_name_prefix = 'FusedMergedGrad.cast_fp16.' if \
                merged_grad_segment[0].dtype == paddle.float16 else 'FusedMergedGrad'
            fused_merged_grad_name = fused_merged_grad_name_prefix + '_{}'.format(
                merged_grad_segment[0].name)
            fused_merged_grad = main_block.create_var(
                name=fused_merged_grad_name,
                dtype=merged_grad_segment[0].dtype,
                persistable=True,
                stop_gradient=False)
            fused_gradients.append(fused_grad)
            fused_merged_gradients.append(fused_merged_grad)

        assert len(fused_gradients) == len(grad_param_segments)
        assert len(fused_merged_gradients) == len(grad_param_segments)

        # insert coalesce op at the start of the backward pass
        # use param as the coalesce input to make sure the two Fused vars are in same shape
        first_back_op_idx = None
        for index, op in enumerate(main_block.ops):
            if self._is_backward_op(op) and first_back_op_idx is None:
                first_back_op_idx = index
                break
        assert first_back_op_idx is not None
        offset = 0
        for i in range(len(grad_param_segments)):
            fused_grad = fused_gradients[i]
            fused_merged_grad = fused_merged_gradients[i]
            grads = grad_param_segments[i][0]
            params = grad_param_segments[i][1]
            merged_grads = grad_param_segments[i][2]
            main_block._insert_op_without_sync(
                first_back_op_idx + offset,
                type="coalesce_tensor",
                inputs={"Input": params},
                outputs={"Output": grads,
                         "FusedOutput": fused_grad},
                attrs={
                    # Explanation of user_defined_size_of_dtype:
                    # In coalesce op, the align size is 256 bytes
                    # the float takes 4 bytes while fp16 takes 2 bytes.
                    # To meet the requirement, 128 fp16 or 64 float will be aligned
                    # Think the total shape of the input tensors if [64],
                    # if the dtype is float, then the shape of the fuse var is [64]
                    # however if the dytpe if fp16, the shape of the fuse var is [128],
                    # which will cause the fused vars' shape vary between each other.
                    # To make sure the shape of the fused vars are identical,
                    # we set the dtype of float and fp16 both to 2.
                    # Under this way, the fused vars' shape for float and fp16 are all [128]
                    "user_defined_size_of_dtype": 2,
                    "copy_data": False,
                    "use_align": True,
                    "dtype": grads[0].dtype,
                    self._op_role_key: self._op_role.Backward
                })
            offset += 1
            # For the gradient_merged_fused_var, given a init value during the coalesce op
            # this will remove a problematic fill_constant op. This op role of this coalesce
            # is set to be LRSched to make this coalesce (with init) only run once
            main_block._insert_op_without_sync(
                first_back_op_idx + offset,
                type="coalesce_tensor",
                inputs={"Input": params},
                outputs={
                    "Output": merged_grads,
                    "FusedOutput": fused_merged_grad
                },
                attrs={
                    "user_defined_size_of_dtype": 2,
                    "set_constant": True,
                    "constant": float(0.0),
                    "copy_data": False,
                    "use_align": True,
                    "dtype": merged_grads[0].dtype,
                    self._op_role_key: self._op_role.Optimize.LRSched
                })
            offset += 1

        # insert gradient merge relating ops
        first_opt_op_idx += offset
        offset = 0
        for i in range(len(fused_gradients)):
            fused_grad = fused_gradients[i]
            fused_merged_grad = fused_merged_gradients[i]
            is_fp16_grad = 'cast_fp16' in fused_grad.name
            need_cast = (is_fp16_grad is not fp16)
            if need_cast:
                # for fp16 allreduce, cast fp32 grad to fp16
                # for fp32 allreduce, cast fp16 grad to fp32
                cast_grad_var_name = fused_grad.name + '@TMP'
                cast_grad_var = main_block.create_var(
                    name=cast_grad_var_name,
                    dtype=dtype,
                    persistable=False,
                    stop_gradient=False)
                main_block._insert_op(
                    index=first_opt_op_idx + offset,
                    type='cast',
                    inputs={'X': fused_grad},
                    outputs={'Out': cast_grad_var},
                    attrs={
                        'in_dtype': fused_grad.dtype,
                        'out_dtype': cast_grad_var.dtype,
                        self._op_role_key: self._op_role.Backward,
                    })
                offset += 1
                fused_grad = cast_grad_var
            main_block._insert_op(
                index=first_opt_op_idx + offset,
                type='sum',
                inputs={'X': [fused_merged_grad, fused_grad]},
                outputs={'Out': fused_merged_grad},
                attrs={self._op_role_key: self._op_role.Backward})
            offset += 1

        if fp16:
            # if using fp16 allreduce, the optimizer needs fp32 grads, cast them back to fp32
            for grad, param in grad_param_pairs:
                real_grad = main_block.var(grad)
                fp16_grad_name = param + core.grad_var_suffix() + '@MERGED@FP16'
                assert main_block.has_var(fp16_grad_name)
                fp16_grad = main_block.var(fp16_grad_name)
                fp32_grad_name = param + core.grad_var_suffix() + '@MERGED'
                fp32_grad = main_block.create_var(
                    name=fp32_grad_name,
                    dtype=paddle.float32,
                    shape=real_grad.shape,
                    persistable=False,
                    stop_gradient=False)
                main_block._insert_op(
                    index=first_opt_op_idx + offset,
                    type='cast',
                    inputs={'X': fp16_grad},
                    outputs={'Out': fp32_grad},
                    attrs={
                        'in_dtype': paddle.float16,
                        'out_dtype': paddle.float32,
                        self._op_role_key: self._op_role.Optimize,
                    })
                offset += 1

        # replace the var with it's name, which will be used for inserting allreduce
        for i in range(len(fused_merged_gradients)):
            fused_merged_gradients[i] = fused_merged_gradients[i].name

        main_block._sync_with_cpp()

        return fused_merged_gradients

5415 5416 5417 5418 5419 5420 5421 5422 5423 5424 5425 5426 5427 5428 5429 5430 5431 5432
    def _sort_grad_param_by_dtype(self, main_block, grad_param_pairs):
        # sort the grad param paris by the dtype
        fp16_pairs = []
        fp32_pairs = []
        other_pairs = []
        for pairs in grad_param_pairs:
            dtype = main_block.var(pairs[0]).dtype
            if dtype == paddle.float32:
                fp32_pairs.append(pairs)
            elif dtype == paddle.float16:
                fp16_pairs.append(pairs)
            else:
                other_pairs.append(pairs)
        sorted_pairs = fp16_pairs
        sorted_pairs.extend(fp32_pairs)
        sorted_pairs.extend(other_pairs)
        return sorted_pairs

5433 5434 5435 5436 5437 5438 5439 5440 5441 5442 5443 5444 5445 5446 5447
    def _get_var_size(self, var):
        dtype_to_size = {
            core.VarDesc.VarType.FP16: 2,
            core.VarDesc.VarType.FP32: 4,
            core.VarDesc.VarType.FP64: 8,
            core.VarDesc.VarType.INT16: 2,
            core.VarDesc.VarType.INT32: 4,
            core.VarDesc.VarType.INT64: 8,
            core.VarDesc.VarType.BOOL: 1,
            core.VarDesc.VarType.UINT8: 1,
        }
        assert -1 not in var.shape
        return reduce(lambda x, y: x * y,
                      var.shape) * dtype_to_size[var.dtype] / 1024.0 / 1024.0

5448 5449
    def _add_sub_blocks(self, main_block, program_list):
        main_program = main_block.program
5450
        for prog in program_list:
5451 5452 5453 5454 5455 5456
            for op in prog.block(0).ops:
                if not op.has_attr('sub_block'):
                    continue
                origin_sub_block_id = op.attr('sub_block').id
                origin_sub_block = main_program.block(origin_sub_block_id)
                new_sub_block = prog._create_block(parent_idx=0)
5457 5458
                for sub_op in origin_sub_block.ops:
                    op_desc = sub_op.desc
5459 5460 5461
                    ap_op = new_sub_block.desc.append_op()
                    ap_op.copy_from(op_desc)
                new_sub_block._sync_with_cpp()
5462
                self._create_vars(new_sub_block, origin_sub_block)
5463
                op._set_attr('sub_block', new_sub_block)
5464 5465 5466 5467 5468 5469 5470 5471 5472 5473 5474 5475 5476 5477 5478 5479

    def _get_device_info(self, block):
        for op in block.ops:
            if not op._has_kernel(op.type): continue
            op_device = op.attr(self._op_device_key)
            return op_device

    def _process_persistable_vars_in_multi_sections(self, main_program,
                                                    startup_prog, program_list):
        """
        Special Case: process persistable vars that exist in
        multiple sections, e.g., shared weight
        """
        # var_info = {var_name: [program1, program2...]},
        # persistable var only
        var_info = dict()
5480
        for prog in program_list:
5481 5482
            block = prog.block(0)
            for var_name in block.vars:
5483
                if var_name == "double_buffer_0": continue
5484 5485 5486 5487 5488 5489 5490 5491 5492 5493 5494 5495 5496 5497 5498 5499 5500
                var = block.var(var_name)
                if not var.persistable: continue
                if not var_name in var_info:
                    var_info[var_name] = []
                if not prog in var_info[var_name]:
                    var_info[var_name].append(prog)
        for var_name in list(var_info.keys()):
            if len(var_info[var_name]) == 1:
                var_info.pop(var_name)

        # write_info = {var_name: program}, where program is the only program
        # in which the var named var_name is written.
        write_info = dict()
        for var_name in var_info.keys():
            for prog in var_info[var_name]:
                block = prog.block(0)
                for op in block.ops:
5501
                    if op.type == "recv_v2" or op.type == "create_py_reader" or \
5502
                        op.type == "read" or op.type == "update_loss_scaling":
5503
                        continue
5504 5505 5506 5507 5508 5509 5510 5511 5512 5513 5514 5515 5516 5517 5518 5519 5520 5521 5522
                    # We have processed lr related vars
                    if op.attr(self._op_role_key) == int(
                            self._op_role.Optimize.LRSched):
                        continue
                    if var_name in op.desc.output_arg_names():
                        assert var_name not in write_info, (
                            "two sections write the same var({}): second "
                            "op {}.".format(var_name, op))
                        write_info[var_name] = prog
                        break

        for var_name in var_info.keys():
            # Case 1: read only variables, no special process
            if not var_name in write_info: continue

            # Case 2: one write multiple reads
            write_prog = write_info[var_name]
            write_block = write_prog.block(0)
            write_device = self._get_device_info(write_block)
5523
            write_dev_index = int(write_device.split(':')[1])
5524 5525 5526
            all_progs = var_info[var_name]
            for prog in all_progs:
                if prog == write_prog: continue
5527 5528 5529
                read_block = prog.block(0)
                read_device = self._get_device_info(read_block)
                read_dev_index = int(read_device.split(':')[1])
5530 5531 5532 5533 5534 5535 5536 5537 5538
                pair = (write_dev_index, read_dev_index)
                pair_key = write_dev_index * 1000 + read_dev_index
                if pair not in self._pipeline_pair:
                    self._pipeline_pair.append(pair)
                    self._pp_ring_map[pair_key] = self.ring_id
                    ring_id = self.ring_id
                    self.ring_id += 1
                else:
                    ring_id = self._pp_ring_map[pair_key]
5539 5540 5541

                write_block._insert_op(
                    index=0,
5542
                    type='send_v2',
5543 5544 5545
                    inputs={'X': write_block.var(var_name), },
                    attrs={
                        self._op_device_key: write_device,
5546
                        'use_calc_stream': False,
5547 5548
                        # A trick to make the role LRSched to avoid copy every
                        # microbatch
5549 5550
                        self._op_role_key: self._op_role.LRSched,
                        'peer': read_dev_index,
5551
                        'ring_id': ring_id
5552 5553 5554
                    })
                read_block._insert_op(
                    index=0,
5555
                    type='recv_v2',
5556 5557
                    outputs={'Out': [read_block.var(var_name)]},
                    attrs={
5558 5559
                        'out_shape': read_block.var(var_name).shape,
                        'dtype': read_block.var(var_name).dtype,
5560
                        self._op_device_key: read_device,
5561
                        'use_calc_stream': False,
5562 5563 5564
                        # A trick to make the role LRSched to avoid copy every
                        # microbatch
                        self._op_role_key: self._op_role.LRSched,
5565 5566
                        'peer': write_dev_index,
                        'ring_id': ring_id
5567
                    })
5568 5569 5570 5571 5572 5573 5574 5575 5576 5577 5578 5579 5580 5581 5582 5583 5584 5585 5586 5587
                read_block._insert_op(
                    index=1,
                    type='c_sync_comm_stream',
                    inputs={'X': [read_block.var(var_name)]},
                    outputs={'Out': [read_block.var(var_name)]},
                    attrs={
                        self._op_device_key: read_device,
                        # A trick to make the role LRSched to avoid copy every
                        # microbatch
                        self._op_role_key: self._op_role.LRSched,
                        'ring_id': ring_id
                    })

    def _is_gradient_clip_op(self, op):
        return op.desc.has_attr("op_namescope") \
            and op.desc.attr("op_namescope").startswith("/gradient_clip")

    def _is_regularization_op(self, op):
        return op.desc.has_attr("op_namescope") \
            and op.desc.attr("op_namescope").startswith("/regularization")
H
hutuxian 已提交
5588

5589 5590 5591 5592 5593
    def _is_weight_decay_op(self, op):
        # in AdamW namescope is /optimizer_*/weight decay/
        return op.desc.has_attr("op_namescope") \
            and 'weight decay' in op.desc.attr("op_namescope")

5594 5595 5596 5597 5598
    def _get_input_output_info(self, block):
        '''
        Get info of op input and output.
        '''
        # A map from output var to op which generate it.
5599
        output_var_to_op = defaultdict(list)
5600
        # A map from var to op which takes it as input.
5601
        input_var_to_op = defaultdict(list)
5602

5603
        for index, op in enumerate(block.ops):
5604
            for var_name in op.input_arg_names:
5605
                input_var_to_op[var_name].append([op, index])
5606
            for var_name in op.output_arg_names:
5607 5608 5609 5610 5611 5612 5613 5614 5615 5616 5617 5618
                output_var_to_op[var_name].append([op, index])

        return output_var_to_op, input_var_to_op

    def _optimize_forward_send_sync(self, program):
        """
        optimize forward send's sync_comm_stream schedule
        """
        if self.schedule_mode != '1F1B': return

        block = program.block(0)

5619
        recv_type = 'recv_v2' if self.mp_degree == 1 else 'partial_recv'
5620 5621
        backward_recv_index = None
        for index, op in enumerate(block.ops):
5622
            if op.type == recv_type and self._is_backward_op(op):
5623 5624 5625
                backward_recv_index = index
                break

5626
        # last pipeline stage
5627 5628 5629 5630 5631 5632 5633 5634 5635 5636 5637 5638 5639 5640 5641 5642 5643 5644 5645 5646 5647 5648 5649
        if backward_recv_index is None: return

        offset = 0
        for index, op in enumerate(list(block.ops)):
            if index >= backward_recv_index: break
            if op.type == 'c_sync_comm_stream' and op.has_attr('pipeline_flag'):
                var_name = op.input_arg_names[0]
                var = block.var(var_name)
                block._remove_op(index + offset, sync=False)
                offset -= 1
                # NOTE:
                # 1. When the backward recv is completed, it indicates
                # that the forward send is completed too. So we only need
                # to use the NOP op to prevent memory release.
                # 2. Because we removed sync_comm_op,
                # we will insert NOP after recv_op.
                block._insert_op_without_sync(
                    index=backward_recv_index,
                    type='nop',
                    inputs={'X': [var]},
                    outputs={'Out': [var]},
                    attrs={self._op_role_key: self._op_role.Backward})
        block._sync_with_cpp()
5650

5651 5652 5653 5654 5655 5656 5657 5658 5659 5660 5661 5662 5663 5664 5665 5666 5667 5668 5669 5670 5671 5672 5673 5674 5675 5676 5677 5678 5679 5680 5681 5682 5683 5684 5685 5686 5687 5688 5689 5690 5691 5692 5693 5694 5695 5696 5697 5698 5699
    def _mv_head_recv(self, program):
        """
        A pass to move the recv op to the beginning of
        the forward/backward phase
        """
        forward_insert_index = 0
        backward_insert_index = None
        block = program.global_block()
        num_ops = len(program.global_block().ops)
        for i in range(num_ops):
            insert_index = None
            op = program.global_block().ops[i]
            op_role = int(op.attr(self._op_role_key))
            if op_role == int(
                    self._op_role.Backward) and backward_insert_index is None:
                backward_insert_index = i
            if op.type != "partial_recv" and op.type != "partial_allgather" and op.type != "nop" and op.type != "recv_v2":
                continue
            if op_role == int(self._op_role.Forward):
                if i == forward_insert_index:
                    forward_insert_index += 1
                    continue
                insert_index = forward_insert_index
            elif op_role == int(self._op_role.Backward):
                if i == backward_insert_index:
                    backward_insert_index += 1
                    continue
                insert_index = backward_insert_index
            else:
                raise ValueError("Unknown op_role: {}".format(op_role))
            op_inputs = dict()
            for name in op.input_names:
                op_inputs[name] = op.input(name)
            op_outputs = dict()
            for name in op.output_names:
                op_outputs[name] = op.output(name)
            block._insert_op_without_sync(
                index=insert_index,
                type=op.type,
                inputs=op_inputs,
                outputs=op_outputs,
                attrs=op.all_attrs())
            block._remove_op(i + 1)
            if op_role == int(self._op_role.Forward):
                forward_insert_index += 1
            elif op_role == int(self._op_role.Backward):
                backward_insert_index += 1
        block._sync_with_cpp()

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    def minimize(self,
                 loss,
                 startup_program=None,
                 parameter_list=None,
                 no_grad_set=None):
5705
        main_block = loss.block
5706
        self.origin_main_block = main_block
5707
        main_program = main_block.program
5708 5709
        if startup_program is None:
            startup_program = default_startup_program()
5710

5711 5712
        pipeline_opt = main_program._pipeline_opt
        assert pipeline_opt, 'Please use pipeline with fleet.'
5713 5714 5715 5716 5717 5718 5719
        required_keys = [
            'local_rank',
            'schedule_mode',
            'micro_batch_size',
            'ring_id',
            'global_ring_id',
            'use_sharding',
5720 5721
            'mp_degree',
            'mp_rank',
5722 5723
        ]
        for key in required_keys:
5724
            assert key in pipeline_opt, \
5725
                'Please use pipeline with fleet to use {}.'.format(key)
5726 5727 5728 5729 5730 5731 5732 5733 5734 5735
        self.local_rank = pipeline_opt['local_rank']
        self.schedule_mode = pipeline_opt['schedule_mode']
        self.micro_batch_size = pipeline_opt['micro_batch_size']
        self.use_sharding = pipeline_opt['use_sharding']
        self.ring_id = pipeline_opt['ring_id']
        self.global_ring_id = pipeline_opt['global_ring_id']
        self.mp_degree = pipeline_opt['mp_degree']
        self.mp_rank = pipeline_opt['mp_rank']
        assert self.mp_degree >= 1
        assert 0 <= self.mp_rank < self.mp_degree
5736 5737 5738 5739

        optimize_ops, params_grads = self._optimizer.minimize(
            loss, startup_program, parameter_list, no_grad_set)
        self._param_device_map = self._origin_optimizer._param_device_map
5740

5741 5742
        self.output_var_to_op, self.input_var_to_op = \
            self._get_input_output_info(main_block)
5743 5744 5745
        # Step1: add default op_device attribute for ops.
        self._add_op_device_attr(main_block)
        device_list = self._check_validation(main_block)
5746 5747 5748 5749 5750 5751 5752 5753 5754 5755 5756

        def device_cmp(device1, device2):
            dev1_id = int(device1.split(':')[1])
            dev2_id = int(device2.split(':')[1])
            if dev1_id < dev2_id:
                return -1
            elif dev1_id > dev2_id:
                return 1
            else:
                return 0

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        sorted_device_list = sorted(device_list, key=cmp_to_key(device_cmp))
        assert sorted_device_list == device_list, (
            "With pipeline parallelism, you must use gpu devices one after "
            "another in the order of their ids.")
        # Step2: add send and recv ops between section boundaries
5762
        self._insert_sendrecv_ops_for_boundaries(main_block)
5763

5764
        # Step3: split program into sections and add pairs of
5765 5766
        # send and recv ops for data var.
        main_program = main_block.program
5767
        program_list = self._split_program(main_program, device_list)
5768
        for p in program_list:
5769
            self._create_vars(p.global_block(), main_block)
5770

5771 5772 5773 5774
        self.local_rank %= len(device_list)
        # Step3.5: optimize forward send sync_comm to overlap send and recv
        self._optimize_forward_send_sync(program_list[self.local_rank])

5775
        # Step4: Special Case: process persistable vars that exist in
5776
        # multiple sections
5777 5778 5779
        # FIXME 
        # self._process_persistable_vars_in_multi_sections(
        #     main_program, startup_program, program_list)
5780

5781
        # Step5: Add sub blocks for section programs
5782 5783
        self._add_sub_blocks(main_block, program_list)

5784
        place_list = []
5785 5786
        for dev in device_list:
            dev_index = int(dev.split(":")[1])
5787 5788 5789 5790
            if core.is_compiled_with_cuda():
                place_list.append(core.CUDAPlace(dev_index % 1))
            elif core.is_compiled_with_npu():
                place_list.append(core.NPUPlace(dev_index % 1))
5791

5792
        # Step6: Split startup program
5793
        new_startup_program = self._split_startup_program(startup_program,
5794
                                                          self.local_rank)
5795 5796 5797 5798

        startup_program._pipeline_opt = {
            "startup_program": new_startup_program,
        }
5799
        real_block = program_list[self.local_rank].global_block()
5800 5801 5802 5803 5804 5805 5806 5807
        self._insert_loss_scale(real_block)
        if not self.use_sharding:
            # Step7: clear gradients before each mini-batch and 
            # accumulate gradients during backward
            self._rename_gradient_var_name(real_block)
            real_block._sync_with_cpp()
            self._accumulate_gradients(real_block)
            real_block._sync_with_cpp()
5808

5809 5810 5811 5812
        if core.is_compiled_with_cuda():
            place_id = int(os.getenv("FLAGS_selected_gpus", "0"))
        elif core.is_compiled_with_npu():
            place_id = int(os.getenv("FLAGS_selected_npus", "0"))
5813 5814 5815
        # A pass to move the recv op to the beginning of
        # the forward/backward phase
        self._mv_head_recv(program_list[self.local_rank])
5816
        main_program._pipeline_opt = {
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            "trainer": "PipelineTrainer",
            "device_worker": "Section",
5819
            "pipeline_stage": self.local_rank,
5820
            "num_pipeline_stages": len(device_list),
5821
            "schedule_mode": self.schedule_mode,
5822
            "inner_parallelism": len(device_list),
5823 5824
            "section_program": program_list[self.local_rank],
            "place": place_list[self.local_rank],
5825
            "place_id": place_id,
5826
            "sync_steps": -1,
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            "num_microbatches": self._num_microbatches,
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            "start_cpu_core_id": self._start_cpu_core_id,
        }
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        return optimize_ops, params_grads, program_list, self._pipeline_pair, self._pp_ring_map
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class RecomputeOptimizer(Optimizer):
    """
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	:api_attr: Static Graph
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    Recompute Optimizer Wrapper

    Normally, a training step contains three sub-steps: first, run forward
    Operators to calculate the loss; second, run backward Operators to 
    calculate gradient of the parameters; third, apply optimization method
    to update the value of the parameters.

    In the forward computation process, all variables that are needed by 
    backward computation process will be kept in memory, which occupy a great
    amount of memory when the network becomes very deep.

    Recompute split the network to k segments. In each segment, It will 
    recompute the forward Operators, before running backward operators. It is
    very helpful for saving memory.
 
    The Variables that separate a network to segments are called as checkpoints,
    and users should set it manually. The usage is very simple:

    Args:
        optimizer (Optimizer): The optimizer that is applied to parameters.

    Examples:
        .. code-block:: python

            import paddle.fluid as fluid
            import numpy as np
            def gen_data():
                return {"x": np.random.random(size=(32, 32)).astype('float32'),
                "y": np.random.randint(2, size=(32, 1)).astype('int64')}
            def mlp(input_x, input_y, hid_dim=128, label_dim=2):
                print(input_x)
                fc_1 = fluid.layers.fc(input=input_x, size=hid_dim)
                prediction = fluid.layers.fc(input=[fc_1], size=label_dim, act='softmax')
                cost = fluid.layers.cross_entropy(input=prediction, label=input_y)
                sum_cost = fluid.layers.reduce_mean(cost)
                return sum_cost, fc_1, prediction
            input_x = fluid.layers.data(name="x", shape=[32], dtype='float32')
            input_y = fluid.layers.data(name="y", shape=[1], dtype='int64')
            cost, fc_1, pred = mlp(input_x, input_y)

            sgd = fluid.optimizer.Adam(learning_rate=0.01)
            sgd = fluid.optimizer.RecomputeOptimizer(sgd)
            sgd._set_checkpoints([fc_1, pred])
            sgd.minimize(cost)

            print("Finished optimize")
            place = fluid.CPUPlace()
            exe = fluid.Executor(place)
            exe.run(fluid.default_startup_program())
            step = 10

            for i in range(step):
                cost_val = exe.run(feed=gen_data(),
                       program=fluid.default_main_program(),
                       fetch_list=[cost.name])
                print("step=%d cost=%f" % (i, cost_val[0]))

    """

    def __init__(self, optimizer):
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        if framework.in_dygraph_mode():
            raise Exception("In dygraph, don't support RecomputeOptimizer.")
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        self._optimizer = optimizer
        self._checkpoints = None
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        self._learning_rate = self._optimizer._learning_rate
        self._learning_rate_map = self._optimizer._learning_rate_map
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        self.enable_offload = False
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    def _set_checkpoints(self, checkpoints):
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        """
        Args:
            checkpoints (list): List of Variable or string    
        """
        assert isinstance(
            checkpoints, list
        ), "_checkpoints should be a list of Variable or a list of String"
        for ckpt in checkpoints:
            assert (
                isinstance(ckpt, six.string_types) or isinstance(ckpt, Variable)
            ), "_checkpoints should be a list of Variable or a list of String"
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        self._checkpoints = checkpoints

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    # should enable offload before calling backward 
    def _enable_offload(self):
        self.enable_offload = True

5923 5924
    @framework.deprecate_stat_dict
    def load(self, state_dict):
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        """
5926
	    :api_attr: Static Graph
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        load function is not supported by Recompute Optimizer for now.
        :return: None

        Args:
5932
            state_dict: the dict load by load_persistable method
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        Examples:
            .. code-block:: python

                import paddle.fluid as fluid
                import paddle.compat as cpt
                
                def mlp(input_x, input_y, hid_dim=128, label_dim=2):
                    fc_1 = fluid.layers.fc(input=input_x, size=hid_dim)
                    prediction = fluid.layers.fc(input=[fc_1], size=label_dim, act='softmax')
                    cost = fluid.layers.cross_entropy(input=prediction, label=input_y)
                    sum_cost = fluid.layers.reduce_mean(cost)
                    return sum_cost, fc_1, prediction
                
                input_x = fluid.layers.data(name="x", shape=[32], dtype='float32')
                input_y = fluid.layers.data(name="y", shape=[1], dtype='int64')
                cost, fc_1, pred = mlp(input_x, input_y)
                print("Finished FF")
                
                sgd = fluid.optimizer.Adam(learning_rate=0.01)
                sgd = fluid.optimizer.RecomputeOptimizer(sgd)
                sgd._set_checkpoints([fc_1, pred])
                try:
5956 5957
                    state_dict = {}
                    sgd.load(state_dict)
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                except NotImplementedError as e:
                    print(cpt.get_exception_message(e))
        """
        raise NotImplementedError(
            "load function is not supported by Recompute Optimizer for now")

    def apply_gradients(self, params_grads):
        """
        call apply_gradients function of self._optimizer.

        Args:
            params_grads (list): list of (param, grad) pair to do optimization.

        Returns:
            list: A list of operators appended to the current program.

        Examples:
            .. code-block:: python

                import paddle.fluid as fluid
                import paddle.fluid.framework as framework

                def mlp(input_x, input_y, hid_dim=128, label_dim=2):
                    fc_1 = fluid.layers.fc(input=input_x, size=hid_dim)
                    prediction = fluid.layers.fc(input=[fc_1], size=label_dim, act='softmax')
                    cost = fluid.layers.cross_entropy(input=prediction, label=input_y)
                    sum_cost = fluid.layers.reduce_mean(cost)
                    return sum_cost, fc_1, prediction


                input_x = fluid.layers.data(name="x", shape=[32], dtype='float32')
                input_y = fluid.layers.data(name="y", shape=[1], dtype='int64')
                cost, fc_1, pred = mlp(input_x, input_y)
                print("Finished FF")

                sgd = fluid.optimizer.Adam(learning_rate=0.01)
                sgd = fluid.optimizer.RecomputeOptimizer(sgd)
5995
                sgd._set_checkpoints([fc_1, pred])
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                params_grads = sgd.backward(
                    cost,
                    startup_program=None,
                    parameter_list=None,
6000
                    no_grad_set=None)
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                program = cost.block.program
                with framework.program_guard(program, None):
                    optimize_ops = sgd.apply_gradients(params_grads)

                print("Finished apply gradients")
        """

        return self._optimizer.apply_gradients(params_grads=params_grads)

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    def _creat_vars(self, varname):
        pinned_var_name = unique_name.generate(varname + "@Pinned")
        fetched_var_name = unique_name.generate(varname + "@Fetch")

        pinned_var = self._main_program.global_block().create_var(
            name=pinned_var_name,
            shape=self.checkpoint_shape,
            dtype=self._main_program.global_block().var(varname).dtype,
            persistable=False,
            stop_gradient=True)

        fetch_var = self._main_program.global_block().create_var(
            name=fetched_var_name,
            shape=self.checkpoint_shape,
            dtype=self._main_program.global_block().var(varname).dtype,
            persistable=False,
            stop_gradient=False)

        return pinned_var_name, fetched_var_name

    def _append_fill_constant_ops(self, startup_program):
        """
        add fill_constant_ops to the end of the prog

        we should fill the pinned vars before runing the main_prog
        to instantiate their tensor hold_, which could tell us whether 
        the host memory could hold all the checkpoints from all the 
        GPU devices in this node. 
        """
        op_role = 0
        block = startup_program.global_block()
        fill_constant_vars = self.checkpoint_name2pinned_name.values()
        OP_ROLE_KEY = core.op_proto_and_checker_maker.kOpRoleAttrName()
        for varname in fill_constant_vars:
            var = self._main_program.global_block().var(varname)
            # NOTE (JZ-LIANG) to pre-allocate the CUDAPinned MEM
            pinned_var = block.create_var(
                name=varname,
                shape=self.checkpoint_shape,
                dtype=self._main_program.global_block().var(var.name).dtype,
                persistable=False,
                stop_gradient=True)
            block.append_op(
                type='fill_constant',
                outputs={'Out': varname},
                attrs={
                    "shape": var.shape,
                    "dtype": var.dtype,
                    "value": 0.0,
                    "place_type": 2,
                    OP_ROLE_KEY: op_role,
                })

        return

    def _insert_async_memcpy_op(self, insert_idx, src_varname, dst_varname,
6067
                                op_role, dst_place_type):
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        OP_ROLE_KEY = core.op_proto_and_checker_maker.kOpRoleAttrName()
        self.block._insert_op_without_sync(
            insert_idx,
            type='memcpy',
            inputs={'X': [self._main_program.global_block().var(src_varname)]},
            outputs={
                'Out': [self._main_program.global_block().var(dst_varname)]
            },
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            attrs={
                "dst_place_type": int(dst_place_type),
                OP_ROLE_KEY: op_role
            })
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    def _insert_fetch_op(self, idx, varname):
        assert varname in self.checkpoint_name2pinned_name, "Try to fetch {} from Pinned Memory, but it is NOT a checkpoint".format(
            varname)

        pinned_varname = self.checkpoint_name2pinned_name[varname]
        fetch_varname = self.checkpoint_name2fetch_name[varname]
6087
        self._insert_async_memcpy_op(idx, pinned_varname, fetch_varname, 1, 1)
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    def _insert_offload_op(self, idx, varname):
        assert varname in self.checkpoint_name2pinned_name, "Try to offload {} to Pinned Memory, but it is NOT a checkpoint".format(
            varname)
        pinned_varname = self.checkpoint_name2pinned_name[varname]
6093
        self._insert_async_memcpy_op(idx, varname, pinned_varname, 0, 2)
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    def _insert_sync_op(self, op_idx, checkpoint_name):
        # single stream offload no need sync 
        pass

    def _record_fetch_op(self, idx):
        assert len(self.un_fetch_checkpoint_names
                   ) > 0, "Could NOT found checkpoint to fetch"
        checkpoint_name = self.un_fetch_checkpoint_names.pop(-1)
        logging.debug("Record fetch [{}]".format(checkpoint_name))
        self.idx2insertions[idx] = ("fetch", checkpoint_name)

        return checkpoint_name

    def _record_offload_op(self, idx, checkpoint_name):
        expected_checkpoint_name = self.un_offload_checkpoint_names.pop(0)
        assert checkpoint_name == expected_checkpoint_name, "expected to offload [{}] but got [{}]".format(
            expected_checkpoint_name, checkpoint_name)
        logging.debug("Record offload [{}]".format(checkpoint_name))
        self.idx2insertions[idx] = ("offload", checkpoint_name)

    def _record_sync_op(self, idx, checkpoint_name):
        assert checkpoint_name not in self.synced_checkpoints, "Try to sync the checkpoint [{}] twice".format(
            checkpoint_name)
        self.synced_checkpoints.add(checkpoint_name)
        logging.debug("Record offload sync [{}]".format(checkpoint_name))
        self.idx2insertions[idx] = ("sync", checkpoint_name)

    def _parse_backward(self):

        self.idx2insertions = {}
        # don't offload the last checkpoints, to favor throughput        
        self.un_fetch_checkpoint_names = self.sorted_checkpoint_names[:]
        self.un_fetch_checkpoint_names.pop(-1)
        need_fetch_checkpoint_names = self.un_fetch_checkpoint_names[:]
        self.checkpoint_usage_count = {}
        for checkpoint_name in self.un_fetch_checkpoint_names:
            self.checkpoint_usage_count[checkpoint_name] = 0

        self.bw_strart_op_idx = len(self.block.ops)
        for idx, op in enumerate(self.block.ops):
            if int(op.desc.attr("op_role")) == 1:
                self.bw_strart_op_idx = idx
                break

        assert self.bw_strart_op_idx < len(
            self.block.ops), "Could NOT found backword op in prog"

        # fetch second to last checkpoint at the beginning of BW
        fetched_checkpoint_varname = self._record_fetch_op(
            self.bw_strart_op_idx)
        last_last_fetch_checkpoint = None

        for i, op in enumerate(self.block.ops[self.bw_strart_op_idx:]):
            idx = self.bw_strart_op_idx + i
            input_vars = op.desc.input_arg_names()

            for input_var in input_vars:
                if input_var in need_fetch_checkpoint_names:
                    if input_var not in self.un_fetch_checkpoint_names:
                        # fetch the  offloade checkpoint when the first usage of its previous one
                        if self.checkpoint_usage_count[input_var] == 0:
                            # TODO (JZ-LIANG) sync memcpy_stream if extra stream for memcpy
                            second_to_last_fetch_checkpoint = fetched_checkpoint_varname
                            # there is NO fetch ahead the first checkpoint 
                            if input_var != self.sorted_checkpoint_names[0]:
                                fetched_checkpoint_varname = self._record_fetch_op(
                                    idx)

                        # should check the current used checkpoint is ths last fetch one 
                        assert second_to_last_fetch_checkpoint == input_var, "Current recompute segment should use [{}] BUT got [{}]".format(
                            second_to_last_fetch_checkpoint, input_var)
                        # rename
                        self.block.ops[idx]._rename_input(
                            input_var,
                            self.checkpoint_name2fetch_name[input_var])
                        self.checkpoint_usage_count[input_var] += 1
                    else:
                        raise ValueError(
                            "use checkpoint [{}] before fetch in BW".format(
                                input_var))

        assert len(self.un_fetch_checkpoint_names
                   ) == 0, "{} checkpoints have NOT been Recorded".format(
                       self.un_fetch_checkpoint_names)

    def _update_backward(self):
        if len(self.idx2insertions) == 0:
            return
        total_op = len(self.block.ops)
        for op_idx in reversed(range(self.bw_strart_op_idx, total_op)):
            if op_idx in self.idx2insertions:
                operation, checkpoint_name = self.idx2insertions[op_idx]
                if operation == "fetch":
                    self._insert_fetch_op(op_idx, checkpoint_name)
                    logging.debug("Insert [{}] fetch op.".format(
                        checkpoint_name))
                    del self.idx2insertions[op_idx]
                elif operation == "sync":
                    self._insert_sync_op(op_idx, checkpoint_name)
                    logging.debug("Sync [{}] fetch op.".format(checkpoint_name))
        self.block._sync_with_cpp()
        assert len(
            self.idx2insertions) == 0, "{} checkpoints left un-Fecthed".format(
                [ele[1] for ele in self.idx2insertions.values()])

    def _parse_forward(self):

        self.idx2insertions = {}
        # don't offload the last checkpoints, faster, less memory saving       
        self.un_offload_checkpoint_names = self.sorted_checkpoint_names[:]
        last_checkpoint = self.un_offload_checkpoint_names.pop(-1)
        need_offload_checkpoint_names = self.un_offload_checkpoint_names[:]
        self.checkpoint_usage_count_and_idx = {}
        for checkpoint_name in self.un_offload_checkpoint_names:
            self.checkpoint_usage_count_and_idx[checkpoint_name] = {
                'count': 0,
                'idx': -1
            }
        self.synced_checkpoints = set()
        self.fw_strart_op_idx = len(self.block.ops)
        for idx, op in enumerate(self.block.ops):
            if int(op.desc.attr("op_role")) == 0:
                self.fw_strart_op_idx = idx
                break

        assert self.fw_strart_op_idx < len(
            self.block.ops), "Could NOT found Forward op in prog"
        last_offload_checkpoint = None

        for i, op in enumerate(self.block.ops[self.fw_strart_op_idx:
                                              self.bw_strart_op_idx]):

            idx = self.fw_strart_op_idx + i
            output_vars = op.desc.output_arg_names()
            input_vars = op.desc.input_arg_names()

            for output_var in output_vars:
                if output_var in need_offload_checkpoint_names:
                    assert len(
                        output_vars
                    ) == 1, "chekpoint should be the only Output of a certain op, but [{}] is from [{}]".format(
                        output_var, op)

                    if output_var in self.un_offload_checkpoint_names:
                        # insert sync op if last checkpoint has not been sync
                        if last_offload_checkpoint != None:
                            if self.checkpoint_usage_count_and_idx[
                                    last_offload_checkpoint]['count'] == 0:
                                self._record_sync_op(idx,
                                                     last_offload_checkpoint)
                            else:
                                last_usage_idx = self.checkpoint_usage_count_and_idx[
                                    last_offload_checkpoint]['idx']
                                assert last_usage_idx > 0, "last_usage_idx of checkpoint [{}] should large than 0".format(
                                    last_offload_checkpoint)
                                self._record_sync_op(last_usage_idx + 1,
                                                     last_offload_checkpoint)
                        # insert offload op after the checkpoint's generation op
                        self._record_offload_op(idx + 1, output_var)
                        last_offload_checkpoint = output_var
                    else:
                        raise ValueError(
                            "There should be just ONE op that output checkpoint [{}]".
                            format(output_var))
                # need to sync the last need to offload checkpoint before the last checkpoint as output op
                if output_var == last_checkpoint:
                    assert len(
                        output_vars
                    ) == 1, "chekpoint should be the only Output of a certain op, but [{}] is from [{}]".format(
                        output_var, op)
                    assert last_offload_checkpoint == self.sorted_checkpoint_names[
                        -2], "the last offload chekpoint before [{}] is suppose to be [{}], but got [{}]".format(
                            last_checkpoint, self.sorted_checkpoint_names[-2],
                            last_offload_checkpoint)
                    # sync if last checkpoint has not been sync
                    if self.checkpoint_usage_count_and_idx[
                            last_offload_checkpoint]['idx'] == 0:
                        self._record_sync_op(idx, last_offload_checkpoint)
                    else:
                        last_usage_idx = self.checkpoint_usage_count_and_idx[
                            last_offload_checkpoint]['idx']
                        assert last_usage_idx > 0, "last_usage_idx of checkpoint [{}] should large than 0".format(
                            last_offload_checkpoint)
                        self._record_sync_op(last_usage_idx + 1,
                                             last_offload_checkpoint)
            # record checkpoint usage  
            for input_var in input_vars:
                if input_var in need_offload_checkpoint_names:
                    assert input_var not in self.synced_checkpoints, "checkpoint [{}] used after sync".format(
                        input_var)
                    self.checkpoint_usage_count_and_idx[input_var]['count'] += 1
                    self.checkpoint_usage_count_and_idx[input_var]['idx'] = idx

        assert len(self.un_offload_checkpoint_names
                   ) == 0, "{} checkpoints have NOT been Recorded".format(
                       self.un_fetch_checkpoint_names)
        assert len(self.synced_checkpoints) == len(
            need_offload_checkpoint_names
        ), "{} checkpoints have NOT been Recorded".format(
            set(need_offload_checkpoint_names) - set(self.synced_checkpoints))

    def _update_forward(self):
        if len(self.idx2insertions) == 0:
            return
        for op_idx in reversed(
                range(self.fw_strart_op_idx, self.bw_strart_op_idx)):
            if op_idx in self.idx2insertions:
                operation, checkpoint_name = self.idx2insertions[op_idx]
                if operation == "offload":
                    self._insert_offload_op(op_idx, checkpoint_name)
                    logging.debug("Insert [{}] offload op.".format(
                        checkpoint_name))
                    del self.idx2insertions[op_idx]
                elif operation == "sync":
                    self._insert_sync_op(op_idx, checkpoint_name)
                    logging.debug("Insert [{}] offload_sync op.".format(
                        checkpoint_name))
                    del self.idx2insertions[op_idx]

        self.block._sync_with_cpp()
        assert len(self.idx2insertions
                   ) == 0, "{} checkpoints left un-Offloaded".format(
                       [ele[1] for ele in self.idx2insertions.values()])

    def _check_offload_fetch(self):
        # TODO(JZ-LIANG) the single stream offload need no sync
        pass

    def _offload(self, loss, startup_program=None):
        """
        core steps for recompute offload
        1. create pinned vars and temp vars 
        2. parse & update Forward pass: offload, sync
        3. parse & update Backward pass: rename, fetch, sync
        4. verify the correctness
        """
        self._main_program = loss.block.program
        self.block = loss.block
        if startup_program == None:
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            startup_program = paddle.static.default_startup_program()
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        with program_guard(self._main_program, startup_program):
            assert len(self.checkpoint_shape) > 0, (
                "checkpoints shape {} should be an non empty list like: [12, 512, 1024]".
                format(self.checkpoint_shape))
            assert all([ele > 0 for ele in self.checkpoint_shape]), (
                "all ele in checkpoints shape {} should be a determined integer larger than 0".
                format(self.checkpoint_shape))
            self.checkpoint_name2pinned_name = dict()
            self.checkpoint_name2fetch_name = dict()
            for checkpoint_varname in self.sorted_checkpoint_names:
                pinned_var_name, fetch_var_name = self._creat_vars(
                    checkpoint_varname)
                self.checkpoint_name2pinned_name[
                    checkpoint_varname] = pinned_var_name
                self.checkpoint_name2fetch_name[
                    checkpoint_varname] = fetch_var_name
            self._append_fill_constant_ops(startup_program)
            # TODO (JZ-LIANG) to provide two offload stragtegy in future
            # step 2. parse & update FW: rename, offload, sync
            self._parse_backward()
            self._update_backward()
            # step 3. parse & update BW: rename, offload, sync
            self._parse_forward()
            self._update_forward()
            # step 4. verify the correctness
            self._check_offload_fetch()

        return

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    def backward(self,
                 loss,
                 startup_program=None,
                 parameter_list=None,
                 no_grad_set=None,
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                 callbacks=None):
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        """
        call append_backward with checkpoints.

        Args:
            loss (Variable): loss variable to run optimizations.
            startup_program (Program): startup_program for initializing parameters
                in `parameter_list`.
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            parameter_list (list): list of Variables or Variable.names to update.
            no_grad_set (set|None): set of Variables or Variables.names should be ignored.
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            callbacks (list|None): list of callables to run when appending backward
                operator for one parameter.
            checkpoints (list): list of Variables as checkpoints

        Examples:
            .. code-block:: python

                import paddle.fluid as fluid
    
                def mlp(input_x, input_y, hid_dim=128, label_dim=2):
                    fc_1 = fluid.layers.fc(input=input_x, size=hid_dim)
                    prediction = fluid.layers.fc(input=[fc_1], size=label_dim, act='softmax')
                    cost = fluid.layers.cross_entropy(input=prediction, label=input_y)
                    sum_cost = fluid.layers.reduce_mean(cost)
                    return sum_cost, fc_1, prediction
    
    
                input_x = fluid.layers.data(name="x", shape=[32], dtype='float32')
                input_y = fluid.layers.data(name="y", shape=[1], dtype='int64')
                cost, fc_1, pred = mlp(input_x, input_y)
                print("Finished FF")
    
                sgd = fluid.optimizer.Adam(learning_rate=0.01)
                sgd = fluid.optimizer.RecomputeOptimizer(sgd)
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                sgd._set_checkpoints([fc_1, pred])
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                params_grads = sgd.backward(
                    cost,
                    startup_program=None,
                    parameter_list=None,
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                    no_grad_set=None)
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                print("Finished backward")
        """
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        assert (self._checkpoints is not None
                ), "You should call _set_checkpoints first"
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        if framework.in_dygraph_mode():
            raise NotImplementedError(
                "DyGraph current does not support recompute")

        self._dtype = loss.dtype
        program = loss.block.program
        with program_guard(program, startup_program):
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            checkpoint_vars = []
            for ckpt in self._checkpoints:
                if isinstance(ckpt, Variable):
                    checkpoint_vars.append(ckpt)
                else:
                    checkpoint_vars.append(loss.block.var(ckpt))

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            # allow return to non-recompute when checkpoints is empty
            if len(checkpoint_vars) > 0:
                params_grads, sorted_checkpoint_names = append_backward(
                    loss,
                    parameter_list,
                    no_grad_set,
                    checkpoints=checkpoint_vars)
            else:
                params_grads = append_backward(
                    loss,
                    parameter_list,
                    no_grad_set,
                    checkpoints=checkpoint_vars)

        if self.enable_offload:
            self.sorted_checkpoint_names = sorted_checkpoint_names
            self._offload(loss, startup_program=startup_program)

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        return params_grads

    def apply_optimize(self, loss, startup_program, params_grads):
        """
        call the apply_optimize function of self._optimizer
        Args:
            loss (Variable): loss variable to run optimizations.
            startup_program (Program): startup_program for initializing parameters
                in `parameter_list`.
            params_grads (list): list of (param, grad) pair to do optimization.
        Examples:
            .. code-block:: python
                import paddle.fluid as fluid
                
                def mlp(input_x, input_y, hid_dim=128, label_dim=2):
                    fc_1 = fluid.layers.fc(input=input_x, size=hid_dim)
                    prediction = fluid.layers.fc(input=[fc_1], size=label_dim, act='softmax')
                    cost = fluid.layers.cross_entropy(input=prediction, label=input_y)
                    sum_cost = fluid.layers.reduce_mean(cost)
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                    return sum_cost, fc_1, prediction                
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                input_x = fluid.layers.data(name="x", shape=[32], dtype='float32')
                input_y = fluid.layers.data(name="y", shape=[1], dtype='int64')
                cost, fc_1, pred = mlp(input_x, input_y)
                print("Finished FF")
                
                sgd = fluid.optimizer.Adam(learning_rate=0.01)
                sgd = fluid.optimizer.RecomputeOptimizer(sgd)
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                sgd._set_checkpoints([fc_1, pred])
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                params_grads = sgd.backward(
                    cost,
                    startup_program=None,
                    parameter_list=None,
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                    no_grad_set=None)
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                optimize_ops = sgd.apply_optimize(
                    cost, startup_program=None, params_grads=params_grads)
                
                print("Finished apply_optimize")
        """

        return self._optimizer.apply_optimize(
            loss, startup_program=startup_program, params_grads=params_grads)

    def minimize(self,
                 loss,
                 startup_program=None,
                 parameter_list=None,
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                 no_grad_set=None):
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        assert isinstance(loss, Variable), "The loss should be an Variable."
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        assert (self._checkpoints is not None
                ), "You should call _set_checkpoints first"
        if framework.in_dygraph_mode():
            raise NotImplementedError(
                "DyGraph current does not support recompute")
        params_grads = self.backward(
            loss,
            startup_program=startup_program,
            parameter_list=parameter_list,
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            no_grad_set=no_grad_set)
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        optimize_ops = self.apply_optimize(
            loss, startup_program=startup_program, params_grads=params_grads)

        return optimize_ops, params_grads


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class LookaheadOptimizer(object):
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    r"""
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	:api_attr: Static Graph
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    This implements the Lookahead optimizer of the
    paper : https://arxiv.org/abs/1907.08610.

    Lookahead keeps two sets of params: the fast_params and
    the slow_params. inner_optimizer update fast_params every 
    training step. Lookahead updates the slow_params and fast_params 
    every k training steps as follows:

    .. math::
        
        slow\_param_t &= slow\_param_{t-1} + \\alpha * (fast\_param_{t-1} - slow\_param_{t-1})
	
	fast\_param_t &=  slow\_param_t

    Args:
        inner_optimizer (Optimizer): The optimizer that update fast params step by step. 
        alpha (float): The learning rate of Lookahead.
        k (int): The slow params is updated every k steps.

    Examples:
        .. code-block:: python

            import paddle
            import paddle.fluid as fluid
            import numpy as np
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            import numpy.random as random
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            paddle.enable_static()
        
            x = fluid.layers.data(name='x', shape=[2], dtype='float32')
            label = fluid.layers.data(name="label", shape=[1], dtype="int64")
            y = fluid.layers.fc(input=[x], size=2, act="softmax")
            loss = fluid.layers.cross_entropy(input=y, label=label)
            loss = fluid.layers.mean(x=loss)
            sgd = fluid.optimizer.SGD(learning_rate=0.01)
            optimizer = fluid.optimizer.LookaheadOptimizer(sgd,
                                                alpha=0.5,
                                                k=5)
            optimizer.minimize(loss)
            main_program = fluid.default_main_program()
            place = fluid.CPUPlace()
            exe = fluid.Executor(place)
            exe.run(fluid.default_startup_program())
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            def train_reader(limit=5):
                for i in range(limit):
                    yield random.random([2]).astype('float32'), random.random([1]).astype('int64')
            
            feeder = fluid.DataFeeder(feed_list=[x, label], place=place)
            reader = paddle.batch(paddle.reader.shuffle(train_reader, buf_size=50000),batch_size=1)
            
            for batch_data in reader():
                exe.run(fluid.default_main_program(),
                feed=feeder.feed(batch_data))
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    """

    def __init__(self, inner_optimizer, alpha=0.5, k=5):

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        if framework.in_dygraph_mode():
            raise Exception("In dygraph, don't support LookaheadOptimizer.")
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        assert (inner_optimizer is not None), "inner optimizer can not be None"
        assert (
            0.0 <= alpha <= 1.0
        ), "alpha should be larger or equal to 0.0, and less or equal than 1.0"
        assert (isinstance(k, int) and k > 0), "k should be a positive integer"

        self.inner_optimizer = inner_optimizer
        self.alpha = alpha
        self.k = k
        self.type = "lookahead"

    def minimize(self, loss, startup_program=None):

        # Apply inner optimizer to the main_program
        mini_out = self.inner_optimizer.minimize(
            loss, startup_program=startup_program)

        # Get startup_program and main_program
        if startup_program is None:
            startup_program = default_startup_program()
        main_block = loss.block

        # add some vars to the main_program
        params = [param.name for param in main_block.all_parameters()]
        param_to_slow = {}
        for param in params:
            fast_var = main_block.var(param)
            assert (fast_var is not None)
            slow_var = main_block.create_var(
                name=param + "@SLOW",
                shape=fast_var.shape,
                dtype=fast_var.dtype,
                persistable=True)
            param_to_slow[param] = slow_var

        # add some vars to the startup_program
        startup_block = startup_program.global_block()
        for param in params:
            fast_var = startup_block.var(param)
            assert (fast_var is not None)
            slow_var = startup_block.create_var(
                name=param + "@SLOW",
                shape=fast_var.shape,
                dtype=fast_var.dtype,
                persistable=True)

            startup_block.append_op(
                type="assign",
                inputs={"X": fast_var},
                outputs={"Out": slow_var})

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        with framework.program_guard(main_block.program, startup_program):
            # Add Var k to main prog and startup prog
            k = layers.create_global_var(
                name="lookahead_k",
                shape=[1],
                value=int(self.k),
                dtype='int32',
                persistable=True)
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            # Add Var alpha to main prog and startup prog
            alpha = layers.create_global_var(
                name="lookahead_alpha",
                shape=[1],
                value=float(self.alpha),
                dtype='float32',
                persistable=True)
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            # Add Var step
            step = layers.create_global_var(
                name="lookahead_step",
                shape=[1],
                value=int(0),
                dtype='int32',
                persistable=True)
            layers.increment(x=step, value=1.0, in_place=True)

            # lookahead
            zero_var = layers.fill_constant(
                shape=[1], dtype='float32', value=0.0)

            one_var = layers.fill_constant(
                shape=[1], dtype='float32', value=1.0)

            mod = layers.elementwise_mod(step, k)
            with layers.control_flow.Switch() as switch:
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                with switch.case(step == one_var):
                    for param_name in params:
                        fast_var = main_block.var(param_name)
                        slow_var = param_to_slow[param_name]
                        layers.assign(input=fast_var, output=slow_var)
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                with switch.case(mod == zero_var):
                    for param_name in params:
                        fast_var = main_block.var(param_name)
                        slow_var = param_to_slow[param_name]
                        tmp_var = layers.elementwise_add(
                            layers.elementwise_mul(fast_var, alpha),
                            layers.elementwise_mul(
                                slow_var,
                                layers.elementwise_sub(one_var, alpha)))
                        layers.assign(input=tmp_var, output=slow_var)
                        layers.assign(input=tmp_var, output=fast_var)
                with switch.default():
                    pass
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        return mini_out
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class GradientMergeOptimizer(object):
    """
    Gradient Merge, also called as Gradient Accumulation,
    is a training strategy for larger batches. With this strategy,
    the parameter will not be updated until specific steps.

    For each step, the forward network and the backward network
    will run to calculate the gradient of the parameters.

    For every k step, the optimization network will run,
    applying a specific optimization method (such as SGD, Adam)
    to the parameters.

    Args:
        inner_optimizer (Optimizer): The specific optimization (such as SGD, Adam)
            which update the parameters
        k_steps (int): the update period of the parameters
        avg (bool): whether to average the gradients of each mini-batch,
            the default value is `True`

    Examples:
        .. code-block:: python

        import paddle.fluid as fluid
        import numpy as np

        def gen_data(batch_size):
            return {"x": np.random.random(size=(batch_size, 32)).astype('float32'),
                    "y": np.random.random(size=(batch_size, 1)).astype('int64')}

        def mlp(input_x, input_y, hid_dim=128, label_dim=2):
            fc_1 = fluid.layers.fc(input=input_x, size=hid_dim)
            prediction = fluid.layers.fc(input=[fc_1], size=label_dim, act='softmax')
            cost = fluid.layers.cross_entropy(input=prediction, label=input_y)
            sum_cost = fluid.layers.reduce_mean(cost)
            return sum_cost, fc_1, prediction

        input_x = fluid.layers.data(name="x", shape=[32], dtype='float32')
        input_y = fluid.layers.data(name="y", shape=[1], dtype='int64')
        cost, fc_1, pred = mlp(input_x, input_y)
        sgd = fluid.optimizer.Adam(learning_rate=0.01)
        sgd = fluid.optimizer.GradientMergeOptimizer(sgd, k_steps=4, avg=True)
        sgd.minimize(cost)

        place = fluid.CPUPlace()
        exe = fluid.Executor(place)
        exe.run(fluid.default_startup_program())

        for i in range(10):
            cost_val = exe.run(feed=gen_data(32),
                       program=fluid.default_main_program(),
                       fetch_list=[cost.name])
            print("step=%d, cost=%f" % (i, cost_val[0]))
    """

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    GRAD_MERGE_COND_NAME = "grad_merge_cond_name"

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    def __init__(self, inner_optimizer, k_steps=1, avg=True):
        if framework.in_dygraph_mode():
            raise Exception(
                "In dygraph, we don't support GradientMergeOptimizer."
                "You can do Gradient merge by yourself with k-times forward + backward, "
                "and one-time optimizer.minimize()")

        assert (inner_optimizer is not None), "inner optimizer can not be None"
        assert (isinstance(k_steps, int) and
                k_steps > 0), "k_steps should be a positive integer"

        self.inner_optimizer = inner_optimizer
        self.k_steps = k_steps
        self.type = "gradient_merge"
        self.avg = avg
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        self._optimize_ops = None
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    def _set_k_steps(self, k_steps):
        self.k_steps = k_steps

    def _set_avg(self, avg):
        self.avg = avg

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    def backward(self,
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                 loss,
                 startup_program=None,
                 parameter_list=None,
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                 no_grad_set=None,
                 callbacks=None):
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        assert isinstance(loss, Variable), "The loss should be an Variable."
        assert (
            parameter_list is None
        ), "The parameter_list should be None when using GradientMergeOptimizer"
        assert (
            no_grad_set is None
        ), "The no_grad_set should be None when using GradientMergeOptimizer"

        params_grads = self.inner_optimizer.backward(
            loss, startup_program=startup_program)
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        return params_grads

    def apply_optimize(self, loss, startup_program, params_grads):
        program = loss.block.program
        with program_guard(program, startup_program):
            optimize_ops = self.apply_gradients(params_grads)
        return optimize_ops

    def _is_the_backward_op(self, op):
        op_maker = core.op_proto_and_checker_maker
        backward = core.op_proto_and_checker_maker.OpRole.Backward
        if op_maker.kOpRoleVarAttrName() in op.attr_names and \
                int(op.all_attrs()[op_maker.kOpRoleAttrName()]) == int(backward):
            return True
        return False

    def _remove_op_role_var(self, param, grad):
        op_maker = core.op_proto_and_checker_maker
        op = grad.op
        assert self._is_the_backward_op(op), \
            'grad.op={} is not the backward op which produces the grad={}' \
            .format(op, grad.name)

        block = grad.block
        var_attr = op.all_attrs()[op_maker.kOpRoleVarAttrName()]
        assert param.name in var_attr, \
            'when using GradientMergeOptimizer, param={} must be in var_attr={}' \
            .format(param.name, var_attr)
        assert grad.name in var_attr, \
            'when using GradientMergeOptimizer, grad={} must be in var_attr={}' \
            .format(param.name, var_attr)

        # remove (param, grad) from op_role_var
        var_attr.remove(param.name)
        var_attr.remove(grad.name)
        if len(var_attr) > 1:
            op._set_attr(op_maker.kOpRoleVarAttrName(), var_attr)
        else:
            op._remove_attr(op_maker.kOpRoleVarAttrName())

    def _add_gm_op_role_var(self, op, param, grad, cond):
        grad.op = op
        op_maker = core.op_proto_and_checker_maker
        backward = op_maker.OpRole.Backward

        # NOTE(wangxi). When distributed, we will insert grad_merge_all_reduce_op_handle
        # in multi_devices_graph_pass, which will allreduce(grad) if cond is True, else
        # do nothing.
        # In this way, the gradient can be merged first, and then communicate when the
        # condition is met, reducing the number of communications to increase the
        # speed.
        op._set_attr(self.GRAD_MERGE_COND_NAME, cond.name)
        op._set_attr(op_maker.kOpRoleAttrName(), backward)
        op._set_attr(op_maker.kOpRoleVarAttrName(), [param.name, grad.name])

    def _get_gm_cond_var(self, main_block):
        # Add const var
        k_step_var = layers.create_global_var(
            name="gradient_merge_k",
            shape=[1],
            value=int(self.k_steps),
            dtype='int32',
            persistable=True,
            force_cpu=True)

        zero_var = layers.create_global_var(
            name="gradient_merge_zero",
            shape=[1],
            value=int(0),
            dtype='int32',
            persistable=True,
            force_cpu=True)

        # Add step var & cond var
        step_var = layers.create_global_var(
            name="gradient_merge_step",
            shape=[1],
            value=int(0),
            dtype='int32',
            persistable=True,
            force_cpu=True)

        cond_var = layers.create_global_var(
            name="gradient_merge_cond",
            shape=[1],
            value=bool(0),
            dtype='bool',
            persistable=True,
            force_cpu=True)

        with device_guard("cpu"):
            # step_var = (step_var + 1) % k_step
            layers.increment(x=step_var, value=1.0, in_place=True)
            main_block.append_op(
                type='elementwise_mod',
                inputs={'X': step_var,
                        'Y': k_step_var},
                outputs={'Out': step_var},
                attrs={'axis': -1,
                       'use_mkldnn': False})

            # cond_var = (step_var == 0)
            main_block.append_op(
                type='equal',
                inputs={'X': step_var,
                        'Y': zero_var},
                outputs={'Out': cond_var})

        return cond_var

    def apply_gradients(self, params_grads):
        main_program = default_main_program()
        startup_program = default_startup_program()
        main_block = main_program.global_block()
        startup_block = startup_program.global_block()

        cond = self._get_gm_cond_var(main_block)
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        #TODO(mapingshuo) support sparse embedding
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        # step1: remove grad.op's op_role_var
        for param, grad in params_grads:
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            assert (
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                param.type != core.VarDesc.VarType.SELECTED_ROWS
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            ), "SELECTED_ROWS is not supported in GradientMergeOptimizer for now"

6907
            self._remove_op_role_var(param, grad)
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        param_to_grad = {k.name: v for (k, v) in params_grads}
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        param_names = param_to_grad.keys()
        param_to_gradient_merge = {}

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        new_params_grads = []
        # step2: create gradient_merge var and init with 0
        # and update op_role_var
        for param, grad in params_grads:
            param_name = param.name
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            param_var = main_block.var(param_name)
            assert (param_var is not None)
            gradient_merge_var = main_block.create_var(
                name=param_name + "@GRAD@GradientMerge",
                shape=param_var.shape,
                dtype=param_var.dtype,
                persistable=True)
            param_to_gradient_merge[param_name] = gradient_merge_var
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            startup_gradient_merge_var = startup_block.create_var(
                name=param_name + "@GRAD@GradientMerge",
                shape=param_var.shape,
                dtype=param_var.dtype,
                persistable=True)
            startup_block.append_op(
                type="fill_constant",
                outputs={"Out": startup_gradient_merge_var},
                attrs={
                    "shape": param_var.shape,
                    "dtype": param_var.dtype,
                    "value": float(0),
                })

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            # grad_merge += grad
            new_grad_op = main_block.append_op(
                type="elementwise_add",
                inputs={'X': grad,
                        'Y': gradient_merge_var},
                outputs={'Out': gradient_merge_var},
                attrs={'axis': -1,
                       'use_mkldnn': False})
            self._add_gm_op_role_var(new_grad_op, param, gradient_merge_var,
                                     cond)
            new_params_grads.append([param, gradient_merge_var])

        def true_apply_gradient():
            cur_block_idx = main_program.current_block_idx
            cur_block = main_program.current_block()

            # cur_block's forward_block & backward_block is itself
            cur_block._set_forward_block_idx(cur_block_idx)

            if self.avg:
                for param, new_grad in new_params_grads:
                    # grad /= k_steps
                    cur_block.append_op(
                        type='scale',
                        inputs={'X': new_grad},
                        outputs={'Out': new_grad},
                        attrs={
                            'scale': 1.0 / self.k_steps,
                            'bias': 0.0,
                            'bias_after_scale': False
                        })
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            for param, new_grad in new_params_grads:
                # NOTE. regularization will append ops to grad.block,
                # while new_grad's real block is global_block,
                # but we want append regularization ops to cur_block,
                # so we set new_grad.block = cur_block
                new_grad.block = cur_block
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            self._optimize_ops = self.inner_optimizer.apply_gradients(
                new_params_grads)
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            # clear gradient_merge_vars
            for param, new_grad in new_params_grads:
                layers.fill_constant(
                    shape=new_grad.shape,
                    dtype=new_grad.dtype,
                    value=0.0,
                    out=new_grad)

        # step3. apply gradient
        layers.cond(cond, true_fn=true_apply_gradient, false_fn=None)

        return self._optimize_ops

    def minimize(self,
                 loss,
                 startup_program=None,
                 parameter_list=None,
                 no_grad_set=None):
        assert isinstance(loss, Variable), "The loss should be an Variable."

        params_grads = self.backward(
            loss,
            startup_program=startup_program,
            parameter_list=parameter_list,
            no_grad_set=no_grad_set)

        optimize_ops = self.apply_optimize(
            loss, startup_program=startup_program, params_grads=params_grads)
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        return optimize_ops, params_grads