model.py 73.1 KB
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# Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved.
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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
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# 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.

from __future__ import absolute_import
from __future__ import division
from __future__ import print_function

import inspect
import os
import pickle
import numpy as np
import six
import warnings
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import time
import socket
import contextlib
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from collections import Iterable

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import paddle
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from paddle import fluid
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from paddle.fluid import core
from paddle.fluid.framework import in_dygraph_mode, Variable, ParamBase, _current_expected_place
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from paddle.fluid.framework import in_dygraph_mode, Variable
from paddle.fluid.framework import _current_expected_place as _get_device
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from paddle.fluid.executor import global_scope
from paddle.fluid.io import is_belong_to_optimizer
from paddle.fluid.dygraph.base import to_variable
from paddle.fluid.dygraph.parallel import ParallelEnv
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from paddle.fluid.dygraph.dygraph_to_static.program_translator import ProgramTranslator, FunctionSpec
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from paddle.fluid.layers.utils import flatten
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from paddle.fluid.layers import collective
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from paddle.fluid.incubate.fleet.collective import fleet, DistributedStrategy
from paddle.fluid.incubate.fleet.base import role_maker
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from paddle.io import DataLoader, Dataset, DistributedBatchSampler
from paddle.fluid.executor import scope_guard, Executor
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from paddle.fluid.dygraph.layers import Layer
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from paddle.metric import Metric
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from paddle.static import InputSpec as Input

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from .callbacks import config_callbacks

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__all__ = ['Model', ]

_parallel_context_initialized = False


def to_list(value):
    if value is None:
        return value
    if isinstance(value, (list, tuple)):
        return list(value)
    return [value]


def to_numpy(var):
    assert isinstance(var, (Variable, fluid.core.VarBase)), "not a variable"
    if isinstance(var, fluid.core.VarBase):
        return var.numpy()
    t = global_scope().find_var(var.name).get_tensor()
    return np.array(t)


def flatten_list(l):
    assert isinstance(l, list), "not a list"
    outl = []
    splits = []
    for sl in l:
        assert isinstance(sl, list), "sub content not a list"
        splits.append(len(sl))
        outl += sl
    return outl, splits


def restore_flatten_list(l, splits):
    outl = []
    for split in splits:
        assert len(l) >= split, "list length invalid"
        sl, l = l[:split], l[split:]
        outl.append(sl)
    return outl


def extract_args(func):
    if hasattr(inspect, 'getfullargspec'):
        return inspect.getfullargspec(func)[0]
    else:
        return inspect.getargspec(func)[0]


def _all_gather(x, nranks, ring_id=0, use_calc_stream=True):
    return collective._c_allgather(
        x, nranks, ring_id=ring_id, use_calc_stream=use_calc_stream)


def wait_server_ready(endpoints):
    assert not isinstance(endpoints, six.string_types)
    while True:
        all_ok = True
        not_ready_endpoints = []
        for ep in endpoints:
            ip_port = ep.split(":")
            with contextlib.closing(
                    socket.socket(socket.AF_INET, socket.SOCK_STREAM)) as sock:
                sock.settimeout(2)
                result = sock.connect_ex((ip_port[0], int(ip_port[1])))
                if result != 0:
                    all_ok = False
                    not_ready_endpoints.append(ep)
        if not all_ok:
            time.sleep(3)
        else:
            break


def init_communicator(program, rank, nranks, wait_port, current_endpoint,
                      endpoints):
    if nranks < 2:
        return
    other_endpoints = endpoints[:]
    other_endpoints.remove(current_endpoint)
    if rank == 0 and wait_port:
        wait_server_ready(other_endpoints)
    block = program.global_block()
    nccl_id_var = block.create_var(
        name=fluid.unique_name.generate('nccl_id'),
        persistable=True,
        type=fluid.core.VarDesc.VarType.RAW)

    block.append_op(
        type='c_gen_nccl_id',
        inputs={},
        outputs={'Out': nccl_id_var},
        attrs={
            'rank': rank,
            'endpoint': current_endpoint,
            'other_endpoints': other_endpoints
        })

    block.append_op(
        type='c_comm_init',
        inputs={'X': nccl_id_var},
        outputs={},
        attrs={
            'nranks': nranks,
            'rank': rank,
            'ring_id': 0,
        })


def prepare_distributed_context(place=None):
    if place is None:
        place = fluid.CUDAPlace(ParallelEnv().dev_id) if ParallelEnv().nranks > 1 \
            else fluid.CUDAPlace(0)

    strategy = fluid.dygraph.parallel.ParallelStrategy()
    strategy.nranks = ParallelEnv().nranks
    strategy.local_rank = ParallelEnv().local_rank
    strategy.trainer_endpoints = ParallelEnv().trainer_endpoints
    strategy.current_endpoint = ParallelEnv().current_endpoint

    if strategy.nranks < 2:
        return

    global _parallel_context_initialized

    if not _parallel_context_initialized and isinstance(place, fluid.CUDAPlace):

        def _init_context():
            communicator_prog = fluid.Program()
            init_communicator(communicator_prog, strategy.local_rank,
                              strategy.nranks, True, strategy.current_endpoint,
                              strategy.trainer_endpoints)
            exe = fluid.Executor(place)
            exe.run(communicator_prog)

        if fluid.in_dygraph_mode():
            fluid.disable_dygraph()
            _init_context()
            fluid.enable_dygraph(place)
        else:
            _init_context()

    else:
        assert ("Only support CUDAPlace for now.")

    _parallel_context_initialized = True
    return strategy
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class StaticGraphAdapter(object):
    """
    Model traning/inference with a static graph.
    """

    def __init__(self, model):
        super(StaticGraphAdapter, self).__init__()
        self.model = model
        # with `_build_once` gone, parameters are now created in `__init__`
        # so we need to keep track of the parameters already created
        self._startup_prog = fluid.default_startup_program()
        self._orig_prog = fluid.default_main_program()

        self._label_vars = {}  # label variables
        self._input_vars = {}  # label variables
        self._endpoints = {}
        self._loss_endpoint = None
        self._executor = None
        self._progs = {}
        self._compiled_progs = {}

        self._merge_count = {
            'eval_total': 0,
            'test_total': 0,
            'eval_batch': 0,
            'test_batch': 0
        }

        self._nranks = ParallelEnv().nranks
        self._local_rank = ParallelEnv().local_rank

    @property
    def mode(self):
        return self.model.mode

    @mode.setter
    def mode(self, value):
        self.model.mode = value

    def train_batch(self, inputs, labels=None):
        assert self.model._optimizer, \
            "model not ready, please call `model.prepare()` first"
        self.mode = 'train'
        return self._run(inputs, labels)

    def eval_batch(self, inputs, labels=None):
        self.mode = 'eval'
        return self._run(inputs, labels)

    def test_batch(self, inputs):
        self.mode = 'test'
        return self._run(inputs, None)

    def parameters(self, *args, **kwargs):
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        return self.model.network.parameters(*args, **kwargs)
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    def save(self, path):
        def _save(state, path):
            if not state:
                return
            state = {
                k: to_numpy(v) if isinstance(v, Variable) else v
                for k, v in state.items()
            }
            with open(path, 'wb') as f:
                pickle.dump(state, f)

        base = os.path.basename(path)
        assert base != "", "path should be of 'dirname/filename' format"
        dir_name = os.path.dirname(path)
        if dir_name and not os.path.exists(dir_name):
            os.makedirs(dir_name)
        param_path = path + ".pdparams"
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        _save(self.model.network.state_dict(), param_path)
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        prog = self._progs.get('train', None)
        if prog is None or self.model._optimizer is None:
            return
        # XXX `optimizer.state_dict()` only work in dygraph mode
        optim_path = path + ".pdopt"
        optim = {
            p.name: p
            for p in filter(is_belong_to_optimizer, prog.list_vars())
        }
        if not optim:
            return

        _save(optim, optim_path)

    def load(self, param_state_pairs, optim_state):
        if self._executor is None:
            executor = fluid.Executor(fluid.CPUPlace())._default_executor
        else:
            executor = self._executor._default_executor

        # restore parameter states
        fluid.core._create_loaded_parameter(
            [param for param, state in param_state_pairs],
            global_scope(), executor)
        for param, state in param_state_pairs:
            self._set_var(param, state)

        # restore optimizer states
        # FIXME what if a different optimizer is used?
        if not self.model._optimizer or not optim_state:
            return
        self._load_optimizer(optim_state, executor)

    def _load_optimizer(self, state, executor):
        prog = self._progs.get('train', None)
        optim = list(filter(is_belong_to_optimizer, prog.list_vars()))
        if not optim:
            return

        fluid.core._create_loaded_parameter(optim, global_scope(), executor)

        converted_state = dict(state)
        for var in optim:
            if var.name in ["@LR_DECAY_COUNTER@", "global_step"]:
                # When using learning rate scheduler, dygraph would name the
                # global step var as "global_step" to save, while static-graph
                # would has a state var named as "@LR_DECAY_COUNTER@".
                # NOTE: dygraph saved global_step is 1 larger than that in
                # static-graph, since the time of global_step to increase is
                # different.
                state_val = (
                    np.array(converted_state.pop("global_step")) - 1
                ) if "global_step" in converted_state else converted_state.pop(
                    "@LR_DECAY_COUNTER@", None)
                if state_val is not None:
                    converted_state[var.name] = state_val
            elif var.name.startswith("learning_rate_"):
                # When using static learning rate, static-graph would make it
                # a persistable var named 'unique_name.generate("learning_rate")',
                # However, dygraph wouldn't save it.
                if var.name not in state:
                    continue
            else:
                # moment and other accumulators
                if var.name not in converted_state:
                    # try to convert from dygraph name
                    opt_name = self.model._optimizer._name
                    opt_cls_name = self.model._optimizer.__class__.__name__
                    opt_unq_name = None
                    for name in self.model._optimizer._accumulators.keys():
                        accum_name = name if opt_name is None else name[len(
                            opt_name) + 1:]
                        for param_name, state_var in self.model._optimizer._accumulators[
                                name].items():
                            if opt_unq_name is None:
                                # can not infer out the exact unique(opt_name),
                                # thus try to extract rather than generate
                                for state_key in sorted(
                                        state.keys(),
                                        key=lambda x: len(x),
                                        reverse=True):
                                    prefix = param_name + "_" + (
                                        opt_cls_name
                                        if opt_name is None else opt_name) + "_"
                                    if state_key.startswith(prefix):
                                        prefix_offset = state_key[len(
                                            prefix):].find("_") + len(prefix)
                                        opt_unq_name = state_key[len(
                                            param_name + "_"):prefix_offset]
                                        # TODO: assert
                                        # assert opt_unq_name is None
                                    # gen(param.name + "_" + gen(opt_name) + "_" + accum_name)
                                    # always end with "_0" since the unique optimizer._name
                            dy_state_name = (param_name + "_" + opt_unq_name +
                                             "_" + accum_name + "_0")
                            converted_state[
                                state_var.name] = converted_state.pop(
                                    dy_state_name)

            assert var.name in converted_state, \
                "variable [{}] is not in optimizer state file".format(var.name)
            self._set_var(var, converted_state[var.name])

    def _set_var(self, var, ndarray):
        t = global_scope().find_var(var.name).get_tensor()
        p = t._place()
        if p.is_cpu_place():
            place = fluid.CPUPlace()
        elif p.is_cuda_pinned_place():
            place = fluid.CUDAPinnedPlace()
        else:
            p = fluid.core.Place()
            p.set_place(t._place())
            place = fluid.CUDAPlace(p.gpu_device_id())

        t.set(ndarray, place)

    def _run(self, inputs, labels=None):
        compiled_prog = self._compiled_progs.get(self.mode, None)
        assert compiled_prog, \
            "Model is not ready, please call `model.prepare()` first"

        inputs = to_list(inputs)
        if labels is not None:
            labels = to_list(labels)
        assert len(inputs) == len(self._input_vars[self.mode]), \
            "number of inputs" \
            + " does not match number of arguments of `forward` method"

        feed = {}
        input_names = [v.name for v in self._input_vars[self.mode]]
        for idx, n in enumerate(input_names):
            # train and test may take different arguments
            if inputs[idx] is not None:
                feed[n] = inputs[idx]
        if labels is not None:
            for idx, v in enumerate(self._label_vars[self.mode]):
                feed[v.name] = labels[idx]

        endpoints = self._endpoints[self.mode]
        if self.mode == 'test':
            fetch_list = endpoints['output']
        else:
            metric_list, metric_splits = flatten_list(endpoints['metric'])
            fetch_list = endpoints['loss'] + metric_list
            num_loss = len(endpoints['loss'])

        # if fetch Variable is same as input Variable, do not fetch
        # from program, get it from input directly
        pruned_fetch_list = []
        pruned_fetch_idx_name_map = [""] * len(fetch_list)
        for i, fetch_var in enumerate(fetch_list):
            if fetch_var.name in feed.keys():
                pruned_fetch_idx_name_map[i] = fetch_var.name
            else:
                pruned_fetch_list.append(fetch_var)

        rets = self._executor.run(compiled_prog,
                                  feed=feed,
                                  fetch_list=pruned_fetch_list,
                                  return_numpy=False)

        # restore pruned fetch_list Variable from feeds
        for i, name in enumerate(pruned_fetch_idx_name_map):
            if len(name) > 0:
                rets.insert(i, feed[name])

        # LoDTensor cannot be fetch as numpy directly
        rets = [np.array(v) for v in rets]
        if self.mode == 'test':
            return rets[:]
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        metric_states = restore_flatten_list(rets[num_loss:], metric_splits)
        metrics = []
        for metric, state in zip(self.model._metrics, metric_states):
            # cut off padding size
            if self.mode != 'train' and self.model._test_dataloader is not None \
                    and isinstance(self.model._test_dataloader, DataLoader) \
                    and self._nranks > 1:
                total_size = len(self.model._test_dataloader.dataset)
                # TODO: fixme if have better way to get batch size
                samples = state[0].shape[0]
                current_count = self._merge_count.get(self.mode + '_total', 0)
                if current_count + samples >= total_size:
                    state = [
                        s[:int(total_size - current_count), ...] for s in state
                    ]
                    self._merge_count[self.mode + '_total'] = 0
                    self._merge_count[self.mode + '_batch'] = int(total_size -
                                                                  current_count)
                else:
                    self._merge_count[self.mode + '_total'] += samples
                    self._merge_count[self.mode + '_batch'] = samples

            metrics.append(metric.update(*state))
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        if num_loss and len(metrics):
            return rets[:num_loss], metrics
        else:
            return rets[:num_loss] if num_loss else metrics
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    def prepare(self):
        modes = ['train', 'eval', 'test']
        for mode in modes:
            self._make_program(mode)
            self._compile_and_initialize(self._progs[mode], mode)

    def _make_program(self, mode):
        prog = self._progs.get(mode, None)
        if prog is not None:
            return

        prog = self._orig_prog.clone()
        # NOTE: When defining learning rate scheduling in static-graph, ops to
        # increase the global step var and calculate learning rate would be
        # prepended into _orig_prog. test program maked by `_orig_prog.clone`
        # also would include these ops. Thus must prune these ops in test
        # program, otherwise the global step would be changed in test.
        if mode != 'train':
            for op in list(prog.global_block().ops):
                prog.global_block()._remove_op(0)
        if mode == 'train' and self.model._optimizer \
                and self.model._optimizer._learning_rate_map:
            # HACK workaround learning rate map issue
            lr_var = self.model._optimizer._learning_rate_map[self._orig_prog]
            new_lr_var = prog.global_block().vars[lr_var.name]
            self.model._optimizer._learning_rate_map[prog] = new_lr_var

        losses = []
        metrics = []
        with fluid.program_guard(prog, self._startup_prog):
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            inputs = self.model._inputs
            labels = self.model._labels if self.model._labels else []
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            inputs = [k._create_feed_layer() for k in to_list(inputs)]
            labels = [k._create_feed_layer() for k in to_list(labels)]
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            self._label_vars[mode] = labels
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            outputs = to_list(self.model.network.forward(*inputs))
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            if mode != 'test' and self.model._loss:
                losses = self.model._loss(*(outputs + labels))
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            if self._nranks > 1 and mode != 'train':
                outputs = [_all_gather(o, self._nranks) for o in outputs]
                if mode != 'test':
                    labels = [_all_gather(l, self._nranks) for l in labels]

            if mode != 'test':
                for metric in self.model._metrics:
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                    metrics.append(to_list(metric.compute(*(outputs + labels))))
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            if mode == 'train' and self.model._optimizer:
                self._loss_endpoint = fluid.layers.sum(losses)
                if self._nranks > 1:
                    role = role_maker.PaddleCloudRoleMaker(is_collective=True)
                    fleet.init(role)
                    dist_strategy = DistributedStrategy()
                    dist_strategy.mode = "collective"
                    dist_strategy.collective_mode = "grad_allreduce"
                    self.model._optimizer = fleet.distributed_optimizer(
                        self.model._optimizer, strategy=dist_strategy)

                self.model._optimizer.minimize(self._loss_endpoint)

        if mode != 'train':  # clone again to put it in test mode
            prog = prog.clone(for_test=True)

        self._input_vars[mode] = inputs

        self._progs[mode] = prog
        self._endpoints[mode] = {
            "output": outputs,
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            "loss": to_list(losses),
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            "metric": metrics
        }

    def _compile_and_initialize(self, prog, mode):
        compiled_prog = self._compiled_progs.get(mode, None)
        if compiled_prog is not None:
            return compiled_prog

        assert self.model._place is not None, \
            "device is not set, please call `model.prepare()` first"

        place = self.model._place

        # XXX *ALL WEIGHTS* should be initialized upon model construction
        # even if `forward()` may run different code path for different mode
        # therefore startup program only needs to run once
        if self._executor is None:
            self._executor = fluid.Executor(place)
            # XXX incremental initialization
            uninitialized = []
            for var_py in self._startup_prog.list_vars():
                var = fluid.global_scope().find_var(var_py.name)
                if not var_py.name.startswith('nccl_id') and var and \
                        var.get_tensor()._is_initialized():
                    continue

                uninitialized.append(var_py)
            if uninitialized:
                startup_prog = self._startup_prog._prune(uninitialized)
                self._executor.run(startup_prog)

        if self._nranks < 2:
            compiled_prog = fluid.CompiledProgram(prog)
        else:
            compiled_prog = prog

        self._compiled_progs[mode] = compiled_prog


class DynamicGraphAdapter(object):
    def __init__(self, model):
        super(DynamicGraphAdapter, self).__init__()
        self.model = model
        self._nranks = ParallelEnv().nranks
        self._local_rank = ParallelEnv().local_rank
        self._merge_count = {
            'eval_total': 0,
            'test_total': 0,
            'eval_batch': 0,
            'test_batch': 0
        }

        if self._nranks > 1:
            stradegy = fluid.dygraph.parallel.ParallelStrategy()
            stradegy.nranks = ParallelEnv().nranks
            stradegy.local_rank = ParallelEnv().local_rank
            stradegy.trainer_endpoints = ParallelEnv().trainer_endpoints
            stradegy.current_endpoint = ParallelEnv().current_endpoint
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            self.ddp_model = fluid.dygraph.parallel.DataParallel(
                self.model.network, stradegy)
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    @property
    def mode(self):
        return self.model.mode

    @mode.setter
    def mode(self, value):
        self.model.mode = value

    # TODO multi device in dygraph mode not implemented at present time
    def train_batch(self, inputs, labels=None):
        assert self.model._optimizer, \
            "model not ready, please call `model.prepare()` first"
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        self.model.network.train()
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        self.mode = 'train'
        inputs = to_list(inputs)
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        labels = labels or []
        labels = [to_variable(l) for l in to_list(labels)]

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        if self._nranks > 1:
            outputs = self.ddp_model.forward(* [to_variable(x) for x in inputs])
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            losses = self.model._loss(*(to_list(outputs) + labels))
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            losses = to_list(losses)
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            final_loss = fluid.layers.sum(losses)
            final_loss = self.ddp_model.scale_loss(final_loss)
            final_loss.backward()
            self.ddp_model.apply_collective_grads()
        else:
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            outputs = self.model.network.forward(
                * [to_variable(x) for x in inputs])
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            losses = self.model._loss(*(to_list(outputs) + labels))
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            losses = to_list(losses)
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            final_loss = fluid.layers.sum(losses)
            final_loss.backward()

        self.model._optimizer.minimize(final_loss)
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        self.model.network.clear_gradients()
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        metrics = []
        for metric in self.model._metrics:
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            metric_outs = metric.compute(*(to_list(outputs) + labels))
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            m = metric.update(* [to_numpy(m) for m in to_list(metric_outs)])
            metrics.append(m)

        return ([to_numpy(l) for l in losses], metrics) \
            if len(metrics) > 0 else [to_numpy(l) for l in losses]

    def eval_batch(self, inputs, labels=None):
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        self.model.network.eval()
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        self.mode = 'eval'
        inputs = to_list(inputs)
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        labels = labels or []
        labels = [to_variable(l) for l in to_list(labels)]

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        outputs = self.model.network.forward(* [to_variable(x) for x in inputs])
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        if self.model._loss:
            losses = self.model._loss(*(to_list(outputs) + labels))
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            losses = to_list(losses)

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        if self._nranks > 1:
            outputs = [_all_gather(o, self._nranks) for o in to_list(outputs)]
            labels = [_all_gather(l, self._nranks) for l in labels]
        metrics = []
        for metric in self.model._metrics:
            # cut off padding value.
            if self.model._test_dataloader is not None and self._nranks > 1 \
                    and isinstance(self.model._test_dataloader, DataLoader):
                total_size = len(self.model._test_dataloader.dataset)
                samples = outputs[0].shape[0]
                current_count = self._merge_count.get(self.mode + '_total', 0)
                if current_count + samples >= total_size:
                    outputs = [
                        o[:int(total_size - current_count)] for o in outputs
                    ]
                    labels = [
                        l[:int(total_size - current_count)] for l in labels
                    ]
                    self._merge_count[self.mode + '_total'] = 0
                    self._merge_count[self.mode + '_batch'] = int(total_size -
                                                                  current_count)
                else:
                    self._merge_count[self.mode + '_total'] += samples
                    self._merge_count[self.mode + '_batch'] = samples

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            metric_outs = metric.compute(*(to_list(outputs) + labels))
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            m = metric.update(* [to_numpy(m) for m in to_list(metric_outs)])
            metrics.append(m)

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        if self.model._loss and len(metrics):
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            return [to_numpy(l) for l in losses], metrics
698
        elif self.model._loss:
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            return [to_numpy(l) for l in losses]
        else:
            return metrics
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    def test_batch(self, inputs):
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        self.model.network.eval()
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        self.mode = 'test'
        inputs = [to_variable(x) for x in to_list(inputs)]
707
        outputs = self.model.network.forward(*inputs)
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        if self._nranks > 1 and isinstance(self.model._place, fluid.CUDAPlace):
            outputs = [_all_gather(o, self._nranks) for o in to_list(outputs)]

        return [to_numpy(o) for o in to_list(outputs)]

    def parameters(self, *args, **kwargs):
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        return self.model.network.parameters(*args, **kwargs)
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    def save(self, path):
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        params = self.model.network.state_dict()
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        fluid.save_dygraph(params, path)
        if self.model._optimizer is None:
            return
        if self.model._optimizer.state_dict():
            optim = self.model._optimizer.state_dict()
            fluid.save_dygraph(optim, path)

    def load(self, param_state_pairs, optim_state):
        # restore parameter states
        for param, state in param_state_pairs:
            param.set_value(state)

        # resotre optimizer states
        if not self.model._optimizer or not optim_state:
            return

        # If optimizer performs set_dict when state vars haven't been created,
        # which would happen when set_dict before minimize, the state would be
        # stored in optimizer._accumulators_holder and loaded lazily.
        # To contrive this when loading from static-graph saved states, extend
        # state dict to include keys named accoring to dygraph naming rules.
        # TODO: if len(self.model._optimizer._accumulators) > 0
        converted_state = dict(optim_state)
        opt_unq_name = self.model._optimizer._name
        if opt_unq_name is None:
            opt_unq_name = ''

        opt_cls_name = self.model._optimizer.__class__.__name__
        opt_name = opt_unq_name[:opt_unq_name.rfind("_")]  # remove suffix idx
747
        param_names = [param.name for param in self.model.network.parameters()]
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        for var_name, state_var in sorted(
                optim_state.items(), key=lambda x: len(x[0]), reverse=True):
            if var_name in ["@LR_DECAY_COUNTER@", "global_step"]:
                # NOTE: dygraph saved global_step is 1 larger than that in
                # static-graph, since the time of global_step to increase is
                # different.
                if var_name == "@LR_DECAY_COUNTER@":
                    converted_state["global_step"] = np.array(
                        converted_state.pop("@LR_DECAY_COUNTER@")) + 1
            else:
                # moment and other accumulators
                # extend state dict to include promising dygraph names
                for param_name in param_names:
                    if var_name.startswith(param_name + "_" + opt_name):
                        # when init optimizer with name
                        accum_name = var_name[len(param_name + "_" + opt_name +
                                                  "_"):]
                    elif var_name.startswith(param_name +
                                             "_") and opt_name == opt_cls_name:
                        # when init optimizer without name
                        accum_name = var_name[len(param_name + "_"):]
                    else:
                        continue
                    # remove suffix idx
                    accum_name = accum_name[:accum_name.rfind("_")]
                    # state names always end with "_0" in dygraph because of the
                    # unique optimizer._name
                    dy_state_name = (param_name + "_" + opt_unq_name + "_" +
                                     accum_name + "_0")
                    converted_state[dy_state_name] = state_var

        self.model._optimizer.set_dict(converted_state)


782
class Model(object):
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    """
    An Model object is network with training and inference features.
    Dynamic graph and static graph are supported at the same time,
786
    switched by `paddle.disable_static()`. The usage is as follows.
787
    But note, the switching between dynamic and static should be before
788
    instantiating a Model. The input description, i.e, paddle.static.InputSpec,
789 790
    must be required for static graph.

791
    Args:
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        network (paddle.nn.Layer): The network is an instance of
            paddle.nn.Layer.
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        inputs (InputSpec|list|dict|None): `inputs`, entry points of network,
            could be a InputSpec instance, or lits of InputSpec instances,
            or dict ({name: InputSpec}), or None. For static graph,
797
            inputs must be set. For dynamic graph, it could be None.
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        labels (InputSpec|list|None): `labels`, entry points of network,
            could be a InputSpec instnace or lits of InputSpec instances,
            or None. For static graph, if labels is required in loss,
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            labels must be set. Otherwise, it could be None.


804
    Examples:
805 806
        .. code-block:: python

807
        import paddle
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        import paddle.nn as nn
        from paddle.static import InputSpec

        device = paddle.set_device('cpu') # or 'gpu'
812
        # if use static graph, do not set
813
        paddle.disable_static(device)
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        net = nn.Sequential(
            nn.Linear(784, 200),
            nn.Tanh(),
            nn.Linear(200, 10))

820
        # inputs and labels are not required for dynamic graph.
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        input = InputSpec([None, 784], 'float32', 'x')
        label = InputSpec([None, 1], 'int64', 'label')
823
        
824
        model = paddle.Model(net, input, label)
825
        optim = paddle.optimizer.SGD(learning_rate=1e-3,
826
            parameters=model.parameters())
827
        model.prepare(optim,
828
                      paddle.nn.CrossEntropyLoss(),
829
                      paddle.metric.Accuracy())
830
        
831 832
        data = paddle.vision.datasets.MNIST(mode='train', chw_format=False)
        model.fit(data, epochs=2, batch_size=32, verbose=1)
833 834
    """

835
    def __init__(self, network, inputs=None, labels=None):
836
        self.mode = 'train'
837
        self.network = network
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        self._inputs = None
        self._labels = None
840
        self._loss = None
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        self._loss_weights = None
        self._optimizer = None
        self._optimizer = None
        self._test_dataloader = None

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        if not in_dygraph_mode():
            if not isinstance(inputs, (list, dict, Input)):
                raise TypeError(
                    "'inputs' must be list or dict in static graph mode")
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        self._inputs = self._verify_spec(inputs, True)
        self._labels = self._verify_spec(labels)
852

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        # init backend
        if fluid.in_dygraph_mode():
            self._adapter = DynamicGraphAdapter(self)
        else:
            self._adapter = StaticGraphAdapter(self)

    def train_batch(self, inputs, labels=None):
        """
        Run one training step on a batch of data.

        Args:
            inputs (list): A list of numpy.ndarray, each is a batch of
                input data.
            labels (list): A list of numpy.ndarray, each is a batch of
                input label. If has no labels, set None. Default is None.

        Returns:
            A list of scalar training loss if the model has no metrics,
            or a tuple (list of scalar loss, list of metrics) if the model
            set metrics.

        Examples:

            .. code-block:: python
            
              import numpy as np
879
              import paddle
880 881
              import paddle.nn as nn
              from paddle.static import InputSpec
882

883
              device = paddle.set_device('cpu') # or 'gpu'
884
              paddle.disable_static(device)
885

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              net = nn.Sequential(
                  nn.Linear(784, 200),
                  nn.Tanh(),
                  nn.Linear(200, 10))

              input = InputSpec([None, 784], 'float32', 'x')
              label = InputSpec([None, 1], 'int64', 'label')
              model = paddle.Model(net, input, label)
894
              optim = paddle.optimizer.SGD(learning_rate=1e-3,
895
                  parameters=model.parameters())
896
              model.prepare(optim, paddle.nn.CrossEntropyLoss())
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              data = np.random.random(size=(4,784)).astype(np.float32)
              label = np.random.randint(0, 10, size=(4, 1)).astype(np.int64)
              loss = model.train_batch([data], [label])
              print(loss)
        """
        return self._adapter.train_batch(inputs, labels)

    def eval_batch(self, inputs, labels=None):
        """
        Run one evaluating step on a batch of data.

        Args:
            inputs (list): A list of numpy.ndarray, each is a batch of
                input data.
            labels (list): A list of numpy.ndarray, each is a batch of
                input label. If has no labels, set None. Default is None.

        Returns:
            A list of scalar testing loss if the model has no metrics,
            or a tuple (list of scalar loss, list of metrics) if the model
            set metrics.

        Examples:

            .. code-block:: python
            
              import numpy as np
924
              import paddle
925 926
              import paddle.nn as nn
              from paddle.static import InputSpec
927

928
              device = paddle.set_device('cpu') # or 'gpu'
929
              paddle.disable_static(device)
930

931 932 933 934 935 936 937 938
              net = nn.Sequential(
                  nn.Linear(784, 200),
                  nn.Tanh(),
                  nn.Linear(200, 10))

              input = InputSpec([None, 784], 'float32', 'x')
              label = InputSpec([None, 1], 'int64', 'label')
              model = paddle.Model(net, input, label)
939
              optim = paddle.optimizer.SGD(learning_rate=1e-3,
940
                  parameters=model.parameters())
941
              model.prepare(optim,
942
                            paddle.nn.CrossEntropyLoss())
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              data = np.random.random(size=(4,784)).astype(np.float32)
              label = np.random.randint(0, 10, size=(4, 1)).astype(np.int64)
              loss = model.eval_batch([data], [label])
              print(loss)
        """
        return self._adapter.eval_batch(inputs, labels)

    def test_batch(self, inputs):
        """
        Run one testing step on a batch of data.

        Args:
            inputs (list): A list of numpy.ndarray, each is a batch of
                input data.

        Returns:
            A list of numpy.ndarray of predictions, that is the outputs
            of Model forward.

        Examples:

            .. code-block:: python
            
              import numpy as np
967
              import paddle
968
              import paddle.nn as nn
969

970
              device = paddle.set_device('cpu') # or 'gpu'
971
              paddle.disable_static(device)
972

973 974 975 976 977 978 979
              net = nn.Sequential(
                  nn.Linear(784, 200),
                  nn.Tanh(),
                  nn.Linear(200, 10),
                  nn.Softmax())

              model = paddle.Model(net)
980
              model.prepare()
981
              data = np.random.random(size=(4,784)).astype(np.float32)
982
              out = model.test_batch([data])
983 984 985 986
              print(out)
        """
        return self._adapter.test_batch(inputs)

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    def save(self, path, training=True):
        """  
        This function saves parameters, optimizer information or model and 
        paramters only for inference to path. It depends on the parameter
        `training`.
992

993 994
        If `training` is set to True, the parameters saved contain all 
        the trainable Variable, will save to a file with suffix ".pdparams".
995 996 997 998
        The optimizer information contains all the variable used by optimizer.
        For Adam optimizer, contains beta1, beta2, momentum etc. All the
        information will save to a file with suffix ".pdopt". (If the optimizer
        have no variable need to save (like SGD), the fill will not generated).
999
        This function will silently overwrite existing file at the target location.
1000

1001 1002 1003 1004 1005
        If `training` is set to False, only inference model will be saved. It 
        should be noted that before using `save`, you should run the model, and 
        the shape of input you saved is as same as the input of its running.
        `@paddle.jit.to_static` must be added on `forward` function of your layer 
        in dynamic mode now and these will be optimized later.
1006 1007 1008 1009 1010

        Args:
            path (str): The file prefix to save model. The format is
                'dirname/file_prefix' or 'file_prefix'. if empty str. A exception
                 will be raised.
1011 1012
            training (bool, optional): Whether to save for training. If not, save
                for inference only. Default: True.
1013 1014 1015 1016 1017 1018 1019

        Returns:
            None

        Examples:

            .. code-block:: python
1020

1021
                import paddle
1022 1023
                import paddle.nn as nn
                from paddle.static import InputSpec
1024

1025
                class Mnist(nn.Layer):
1026
                    def __init__(self):
1027
                        super(Mnist, self).__init__()
1028 1029 1030 1031 1032
                        self.net = nn.Sequential(
                            nn.Linear(784, 200),
                            nn.Tanh(),
                            nn.Linear(200, 10),
                            nn.Softmax())
1033

1034 1035 1036
                    # If save for inference in dygraph, need this
                    @paddle.jit.to_static
                    def forward(self, x):
1037
                        return self.net(x)
1038

1039
                dynamic = True  # False
1040
                device = paddle.set_device('cpu')
1041 1042 1043
                # if use static graph, do not set
                paddle.disable_static(device) if dynamic else None
                # inputs and labels are not required for dynamic graph.
1044 1045 1046
                input = InputSpec([None, 784], 'float32', 'x')
                label = InputSpec([None, 1], 'int64', 'label')
                model = paddle.Model(Mnist(), input, label)
1047
                optim = paddle.optimizer.SGD(learning_rate=1e-3,
1048
                    parameters=model.parameters())
1049
                model.prepare(optim, paddle.nn.CrossEntropyLoss())
1050 1051
                data = paddle.vision.datasets.MNIST(mode='train', chw_format=False)
                model.fit(data, epochs=1, batch_size=32, verbose=0)
1052 1053
                model.save('checkpoint/test')  # save for training
                model.save('inference_model', False)  # save for inference
1054
        """
1055

1056
        if ParallelEnv().local_rank == 0:
1057 1058 1059 1060
            if not training:
                self._save_inference_model(path)
            else:
                self._adapter.save(path)
1061 1062 1063 1064 1065 1066 1067 1068 1069 1070 1071 1072 1073 1074 1075 1076 1077 1078 1079 1080 1081 1082 1083 1084 1085 1086 1087 1088 1089 1090 1091 1092 1093 1094

    def load(self, path, skip_mismatch=False, reset_optimizer=False):
        """
        Load from files storing the model states and optimizer states. The file
        for optimizer states is not necessary if no need to restore the optimizer.

        NOTE: parameters are retrieved out from the file storing model states
        accoring to their structured names.

        For fine-tuning or transfer-learning models where some of the layers have
        changed, keep parameters needed to restore have same structured names in
        the pre-trained model and fine-tuning model.

        Args:
            path (str): The prefix of files storing the model states and
                optimizer states. The files would be `path.pdparams` and
                `path.pdopt` separately, and the latter is not necessary
                when no need to restore.
            skip_mismatch (bool): Whether to skip the loading of mismatch
                parameter or raise an error when mismatch happens (not found
                the parameter in file storing model states of or receives a
                mismatch shape).
            reset_optimizer (bool): If True, ignore the providing file storing
                optimizer states and initialize optimizer states from scratch.
                Otherwise, restore optimizer states from `path.pdopt` if
                a optimizer has been set to the model. Default False.

        Returns:
            None

        Examples:

            .. code-block:: python
            
1095
              import paddle
1096
              import paddle.nn as nn
1097
              
1098
              device = paddle.set_device('cpu')
1099
              paddle.disable_static(device)
1100 1101 1102 1103 1104 1105 1106

              model = paddle.Model(nn.Sequential(
                  nn.Linear(784, 200),
                  nn.Tanh(),
                  nn.Linear(200, 10),
                  nn.Softmax()))
              model.save('checkpoint/test')
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              model.load('checkpoint/test')
        """

        def _load_state_from_path(path):
            if not os.path.exists(path):
                return
            with open(path, 'rb') as f:
                return pickle.load(f) if six.PY2 else pickle.load(
                    f, encoding='latin1')

        def _check_match(key, param):
            state = param_state.get(key, None)
            if state is None:
                raise ValueError(
                    "{} is not found in the providing file.".format(key))
            if list(state.shape) != list(param.shape):
                raise ValueError(
                    "{} receives a shape {}, but the expected shape is {}.".
                    format(key, list(state.shape), list(param.shape)))
            return param, state

        def _strip_postfix(path):
            path, ext = os.path.splitext(path)
            assert ext in ['', '.pdparams', '.pdopt', '.pdmodel'], \
                    "Unknown postfix {} from weights".format(ext)
            return path

        path = _strip_postfix(path)
        param_state = _load_state_from_path(path + ".pdparams")
        assert param_state, "Failed to load parameters, please check path."

        matched_param_state = []
1139
        for key, param in self.network.state_dict().items():
1140 1141 1142 1143 1144 1145 1146 1147 1148 1149 1150 1151 1152 1153 1154 1155 1156 1157 1158 1159 1160 1161 1162 1163 1164 1165 1166 1167
            try:
                match_res = _check_match(key, param)
            except ValueError as err:
                if skip_mismatch:
                    warnings.warn(
                        ("Skip loading for {}. ".format(key) + str(err)))
                    # reset optimizer when mismatch happens
                    reset_optimizer = True
                else:
                    raise err
            matched_param_state.append(match_res)

        optim_state = None if reset_optimizer else _load_state_from_path(
            path + ".pdopt")
        return self._adapter.load(matched_param_state, optim_state)

    def parameters(self, *args, **kwargs):
        """
        Returns a list of parameters of the model.

        Returns:
            A list of Parameter in static graph.
            A list of ParamBase in dynamic graph.

        Examples:

            .. code-block:: python

1168
              import paddle
1169
              import paddle.nn as nn
1170

1171
              paddle.disable_static()
1172 1173 1174 1175 1176

              model = paddle.Model(nn.Sequential(
                  nn.Linear(784, 200),
                  nn.Tanh(),
                  nn.Linear(200, 10)))
1177 1178 1179 1180
              params = model.parameters()
        """
        return self._adapter.parameters()

1181
    def prepare(self, optimizer=None, loss=None, metrics=None):
1182 1183 1184 1185 1186 1187 1188
        """
        Configures the model before runing.

        Args:
            optimizer (Optimizer|None): Optimizer must be set in training
                and should be a Optimizer instance. It can be None in eval
                and test mode.
1189 1190
            loss (Loss|callable function|None): Loss function can
                be a `paddle.nn.Layer` instance or any callable function
1191 1192
                taken the predicted values and ground truth values as input.
                It can be None when there is no loss.
1193 1194 1195 1196 1197 1198 1199
            metrics (Metric|list of Metric|None): If metrics is set, all
                metrics will be calculated and output in train/eval mode.

        Returns:
            None
        """

1200 1201
        self._place = _get_device()
        if isinstance(self._place, fluid.CUDAPlace):
1202 1203 1204 1205 1206 1207 1208
            global _parallel_context_initialized
            if ParallelEnv().nranks > 1 and not _parallel_context_initialized:
                if fluid.in_dygraph_mode():
                    main_prog_seed = fluid.default_main_program().random_seed
                    startup_prog_seed = fluid.default_startup_program(
                    ).random_seed
                    fluid.disable_dygraph()
1209
                    paddle.disable_static(self._place)
1210 1211 1212 1213 1214 1215 1216 1217 1218 1219 1220
                    # enable_dygraph would create and switch to a new program,
                    # thus also copy seed to the new program
                    fluid.default_main_program().random_seed = main_prog_seed
                    fluid.default_startup_program(
                    ).random_seed = startup_prog_seed
                    fluid.dygraph.parallel.prepare_context()
                else:
                    prepare_distributed_context(self._place)
                _parallel_context_initialized = True

        self._optimizer = optimizer
1221 1222 1223 1224 1225
        if loss is not None:
            if not isinstance(loss, paddle.nn.Layer) and not callable(loss):
                raise TypeError("'loss' must be sub classes of " \
                    "`paddle.nn.Layer` or any callable function.")
        self._loss = loss
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        metrics = metrics or []
        for metric in to_list(metrics):
            assert isinstance(metric, Metric), \
                "{} is not sub class of Metric".format(
                    metric.__class__.__name__)
        self._metrics = to_list(metrics)

        if not in_dygraph_mode():
            self._adapter.prepare()

    def fit(
            self,
            train_data=None,
            eval_data=None,
            batch_size=1,
            epochs=1,
            eval_freq=1,
            log_freq=10,
            save_dir=None,
            save_freq=1,
            verbose=2,
            drop_last=False,
            shuffle=True,
            num_workers=0,
            callbacks=None, ):
        """
        Trains the model for a fixed number of epochs. If `eval_data` is set,
        evaluation will be done at the end of each epoch.

        Args:
            train_data (Dataset|DataLoader): An iterable data loader is used for 
                train. An instance of paddle paddle.io.Dataset or 
                paddle.io.Dataloader is recomended. Default: None.
            eval_data (Dataset|DataLoader): An iterable data loader is used for
                evaluation at the end of epoch. If None, will not do evaluation. 
                An instance of paddle.io.Dataset or paddle.io.Dataloader 
                is recomended. Default: None.
            batch_size (int): Integer number. The batch size of train_data
                and eval_data. When train_data and eval_data are both the
                instance of Dataloader, this parameter will be ignored.
                Default: 1.
            epochs (int): Integer number. The number of epochs to train
                the model. Default: 1.
            eval_freq (int): The frequency, in number of epochs, an evalutation
                is performed. Default: 1.
            log_freq (int): The frequency, in number of steps, the training logs
                are printed. Default: 10.
            save_dir(str|None): The directory to save checkpoint during training.
                If None, will not save checkpoint. Default: None.
            save_freq (int): The frequency, in number of epochs, to save
                checkpoint. Default: 1.
            verbose (int): The verbosity mode, should be 0, 1, or 2. 0 = silent,
                1 = progress bar, 2 = one line per epoch. Default: 2.
            drop_last (bool): Whether drop the last incomplete batch of
                train_data when dataset size is not divisible by the batch size.
                When train_data is an instance of Dataloader, this parameter
                will be ignored. Default: False.
            shuffle (bool): Whther to shuffle train_data. When train_data is
                an instance of Dataloader, this parameter will be ignored.
                Default: True.
            num_workers (int): The number of subprocess to load data, 0 for no
                subprocess used and loading data in main process.
                When train_data and eval_data are both the instance of
                Dataloader, this parameter will be ignored. Default: 0.
            callbacks (Callback|None): A list of `Callback` instances to apply
                during training. If None, `ProgBarLogger` and `ModelCheckpoint`
                are automatically inserted. Default: None.

        Returns:
            None

        Examples:
            1. An example use Dataset and set btch size, shuffle in fit.
               How to make a batch is done internally.

            .. code-block:: python

1304
              import paddle
1305
              from paddle.static import InputSpec
1306 1307

              dynamic = True
1308
              device = paddle.set_device('cpu') # or 'gpu'
1309
              paddle.disable_static(device) if dynamic else None
1310
           
1311 1312
              train_dataset = paddle.vision.datasets.MNIST(mode='train')
              val_dataset = paddle.vision.datasets.MNIST(mode='test')
1313
           
1314 1315
              input = InputSpec([None, 1, 28, 28], 'float32', 'image')
              label = InputSpec([None, 1], 'int64', 'label')
1316
           
1317 1318
              model = paddle.Model(
                  paddle.vision.models.LeNet(classifier_activation=None),
1319
                  input, label)
1320 1321
              optim = paddle.optimizer.Adam(
                  learning_rate=0.001, parameters=model.parameters())
1322 1323
              model.prepare(
                  optim,
1324
                  paddle.nn.CrossEntropyLoss(),
1325
                  paddle.metric.Accuracy(topk=(1, 2)))
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              model.fit(train_dataset,
                        val_dataset,
                        epochs=2,
                        batch_size=64,
                        save_dir='mnist_checkpoint')

            2. An example use DataLoader, batch size and shuffle is set in
               DataLoader.

            .. code-block:: python

1337
              import paddle
1338
              from paddle.static import InputSpec
1339 1340

              dynamic = True
1341
              device = paddle.set_device('cpu') # or 'gpu'
1342
              paddle.disable_static(device) if dynamic else None
1343
           
1344
              train_dataset = paddle.vision.datasets.MNIST(mode='train')
1345
              train_loader = paddle.io.DataLoader(train_dataset,
1346
                  places=device, batch_size=64)
1347
              val_dataset = paddle.vision.datasets.MNIST(mode='test')
1348
              val_loader = paddle.io.DataLoader(val_dataset,
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                  places=device, batch_size=64)
           
1351 1352
              input = InputSpec([None, 1, 28, 28], 'float32', 'image')
              label = InputSpec([None, 1], 'int64', 'label')
1353
           
1354 1355
              model = paddle.Model(
                  paddle.vision.models.LeNet(classifier_activation=None), input, label)
1356 1357
              optim = paddle.optimizer.Adam(
                  learning_rate=0.001, parameters=model.parameters())
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              model.prepare(
                  optim,
1360
                  paddle.nn.CrossEntropyLoss(),
1361
                  paddle.metric.Accuracy(topk=(1, 2)))
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              model.fit(train_loader,
                        val_loader,
                        epochs=2,
                        save_dir='mnist_checkpoint')
        """

        assert train_data is not None, \
                "train_data must be given!"

        if isinstance(train_data, Dataset):
            train_sampler = DistributedBatchSampler(
                train_data,
                batch_size=batch_size,
                shuffle=shuffle,
                drop_last=drop_last)
            train_loader = DataLoader(
                train_data,
                batch_sampler=train_sampler,
                places=self._place,
                num_workers=num_workers,
                return_list=True)
        else:
            train_loader = train_data

        if eval_data is not None and isinstance(eval_data, Dataset):
            eval_sampler = DistributedBatchSampler(
                eval_data, batch_size=batch_size)
            eval_loader = DataLoader(
                eval_data,
                batch_sampler=eval_sampler,
                places=self._place,
                num_workers=num_workers,
                return_list=True)
        elif eval_data is not None:
            eval_loader = eval_data
        else:
            eval_loader = None

        do_eval = eval_loader is not None
        self._test_dataloader = eval_loader

        steps = self._len_data_loader(train_loader)
        cbks = config_callbacks(
            callbacks,
            model=self,
            epochs=epochs,
            steps=steps,
            log_freq=log_freq,
            save_freq=save_freq,
            save_dir=save_dir,
            verbose=verbose,
            metrics=self._metrics_name(), )

        cbks.on_begin('train')
        for epoch in range(epochs):

            cbks.on_epoch_begin(epoch)
            logs = self._run_one_epoch(train_loader, cbks, 'train')
            cbks.on_epoch_end(epoch, logs)

            if do_eval and epoch % eval_freq == 0:

                eval_steps = self._len_data_loader(eval_loader)
                cbks.on_begin('eval', {
                    'steps': eval_steps,
                    'metrics': self._metrics_name()
                })

                eval_logs = self._run_one_epoch(eval_loader, cbks, 'eval')

                cbks.on_end('eval', eval_logs)

        cbks.on_end('train', logs)
        self._test_dataloader = None

    def evaluate(
            self,
            eval_data,
            batch_size=1,
            log_freq=10,
            verbose=2,
            num_workers=0,
            callbacks=None, ):
        """
        Evaluate the loss and metrics of the model on input dataset.

        Args:
            eval_data (Dataset|DataLoader): An iterable data loader is used for
                evaluation. An instance of paddle.io.Dataset or 
                paddle.io.Dataloader is recomended.
            batch_size (int): Integer number. The batch size of train_data
                and eval_data.  When eval_data is the instance of Dataloader,
                this argument will be ignored. Default: 1.
            log_freq (int): The frequency, in number of steps, the eval logs
                are printed. Default: 10.
            verbose (int): The verbosity mode, should be 0, 1, or 2. 0 = silent,
                1 = progress bar, 2 = one line per epoch. Default: 2.
            num_workers (int): The number of subprocess to load data,
                0 for no subprocess used and loading data in main process. When
                train_data and eval_data are both the instance of Dataloader,
                this parameter will be ignored. Default: 0.
            callbacks (Callback|None): A list of `Callback` instances to apply
                during training. If None, `ProgBarLogger` and `ModelCheckpoint`
                are automatically inserted. Default: None.
        Returns:
            dict: Result of metric. The key is the names of Metric,
                value is a scalar or numpy.array.

        Examples:
        .. code-block:: python

1473
            import paddle
1474
            from paddle.static import InputSpec
1475

1476
            # declarative mode
1477
            val_dataset = paddle.vision.datasets.MNIST(mode='test')
1478

1479 1480 1481
            input = InputSpec([-1, 1, 28, 28], 'float32', 'image')
            label = InputSpec([None, 1], 'int64', 'label')
            model = paddle.Model(paddle.vision.models.LeNet(), input, label)
1482
            model.prepare(metrics=paddle.metric.Accuracy())
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            result = model.evaluate(val_dataset, batch_size=64)
            print(result)

            # imperative mode
1487
            paddle.disable_static()
1488
            model = paddle.Model(paddle.vision.models.LeNet())
1489
            model.prepare(metrics=paddle.metric.Accuracy())
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            result = model.evaluate(val_dataset, batch_size=64)
            print(result)
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        """

        if eval_data is not None and isinstance(eval_data, Dataset):
            eval_sampler = DistributedBatchSampler(
                eval_data, batch_size=batch_size)
            eval_loader = DataLoader(
                eval_data,
                batch_sampler=eval_sampler,
                places=self._place,
                num_workers=num_workers,
                return_list=True)
        else:
            eval_loader = eval_data

        self._test_dataloader = eval_loader

        cbks = config_callbacks(
            callbacks,
            model=self,
            log_freq=log_freq,
            verbose=verbose,
            metrics=self._metrics_name(), )

        eval_steps = self._len_data_loader(eval_loader)
        cbks.on_begin('eval',
                      {'steps': eval_steps,
                       'metrics': self._metrics_name()})

        logs = self._run_one_epoch(eval_loader, cbks, 'eval')

        cbks.on_end('eval', logs)

        self._test_dataloader = None

        eval_result = {}
        for k in self._metrics_name():
            eval_result[k] = logs[k]

        return eval_result

    def predict(self,
                test_data,
                batch_size=1,
                num_workers=0,
                stack_outputs=False,
                callbacks=None):
        """
        Compute the output predictions on testing data.

        Args:
            test_data (Dataset|DataLoader): An iterable data loader is used for
                predict. An instance of paddle.io.Dataset or paddle.io.Dataloader
                is recomended.
            batch_size (int): Integer number. The batch size of train_data and eval_data.
                When train_data and eval_data are both the instance of Dataloader, this
                argument will be ignored. Default: 1.
            num_workers (int): The number of subprocess to load data, 0 for no subprocess 
                used and loading data in main process. When train_data and eval_data are
                both the instance of Dataloader, this argument will be ignored. Default: 0.
1552
            stack_outputs (bool): Whether stack output field like a batch, as for an output
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                filed of a sample is in shape [X, Y], test_data contains N samples, predict
                output field will be in shape [N, X, Y] if stack_output is True, and will
                be a length N list in shape [[X, Y], [X, Y], ....[X, Y]] if stack_outputs
                is False. stack_outputs as False is used for LoDTensor output situation,
                it is recommended set as True if outputs contains no LoDTensor. Default: False.
1558
            callbacks(Callback): A Callback instance, default None.
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        Returns:
            list: output of models.

        Examples:
        .. code-block:: python

            import numpy as np
1566
            import paddle
1567
            from paddle.static import InputSpec
1568

1569
            class MnistDataset(paddle.vision.datasets.MNIST):
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                def __init__(self, mode, return_label=True):
                    super(MnistDataset, self).__init__(mode=mode)
                    self.return_label = return_label

                def __getitem__(self, idx):
                    img = np.reshape(self.images[idx], [1, 28, 28])
                    if self.return_label:
                        return img, np.array(self.labels[idx]).astype('int64')
                    return img,

                def __len__(self):
                    return len(self.images)

            test_dataset = MnistDataset(mode='test', return_label=False)

1585
            # declarative mode
1586 1587
            input = InputSpec([-1, 1, 28, 28], 'float32', 'image')
            model = paddle.Model(paddle.vision.models.LeNet(), input)
1588
            model.prepare()
1589 1590

            result = model.predict(test_dataset, batch_size=64)
1591
            print(len(result[0]), result[0][0].shape)
1592 1593

            # imperative mode
1594
            device = paddle.set_device('cpu')
1595
            paddle.disable_static(device)
1596
            model = paddle.Model(paddle.vision.models.LeNet())
1597 1598 1599
            model.prepare()
            result = model.predict(test_dataset, batch_size=64)
            print(len(result[0]), result[0][0].shape)
1600 1601 1602 1603 1604 1605 1606 1607 1608 1609 1610 1611 1612 1613 1614 1615 1616 1617 1618 1619 1620 1621 1622 1623 1624 1625 1626 1627 1628 1629 1630 1631 1632 1633 1634 1635 1636 1637 1638
        """

        if test_data is not None and isinstance(test_data, Dataset):
            test_sampler = DistributedBatchSampler(
                test_data, batch_size=batch_size)
            test_loader = DataLoader(
                test_data,
                batch_sampler=test_sampler,
                places=self._place,
                num_workers=num_workers,
                return_list=True)
        else:
            test_loader = test_data

        self._test_dataloader = test_loader

        cbks = config_callbacks(callbacks, model=self, verbose=1)

        test_steps = self._len_data_loader(test_loader)
        logs = {'steps': test_steps}

        cbks.on_begin('test', logs)

        outputs = []

        logs, outputs = self._run_one_epoch(test_loader, cbks, 'test')

        outputs = list(zip(*outputs))

        # NOTE: for lod tensor output, we should not stack outputs
        # for stacking may lose its detail info
        if stack_outputs:
            outputs = [np.vstack(outs) for outs in outputs]

        self._test_dataloader = None

        cbks.on_end('test', logs)
        return outputs

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    def _save_inference_model(self,
                              save_dir,
                              model_filename=None,
                              params_filename=None,
                              model_only=False):
1644
        """
1645 1646 1647 1648 1649
        Save inference model can be in static or dynamic mode.
        It should be noted that before using `save_inference_model`, you should
        run the model, and the shape you saved is as same as the input of its
        running. `@paddle.jit.to_static` must be added on `forward` function of
        your layer in dynamic mode now and these will be optimized later.
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        Args:
            save_dir (str): The directory path to save the inference model.
            model_filename (str|None): The name of file to save the inference
                model itself. If is set None, a default filename
                :code:`__model__` will be used.
            params_filename (str|None): The name of file to save all related
                parameters. If it is set None, parameters will be saved
                in separate files .
            model_only (bool): If True, It will save inference model only,
                and do not save parameters. Default: False.

        Returns:
            list: The fetch variables' name list
        """

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        def get_inout_spec(all_vars, return_name=False):
            result_list = []
            valid_vars = [var for var in all_vars if isinstance(var, Variable)]
            result_list = valid_vars
            if return_name:
                result_list = [var.name for var in result_list]
1672

1673
            return result_list
1674

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        # TODO:
        # 1. Make it Unnecessary to run model before calling `save_inference_model` for users in dygraph.
        # 2. Save correct shape of input, now the interface stores the shape that the user sent to 
        #    the inputs of the model in running.
        # 3. Make it Unnecessary to add `@paddle.jit.to_static` for users in dynamic mode.
        if fluid.in_dygraph_mode():
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            with fluid.framework._dygraph_guard(None):
                layer = self.network

                # 1. input check
                prog_translator = ProgramTranslator()
                if not prog_translator.enable_declarative:
                    raise RuntimeError(
                        "save_inference_model doesn't work when setting ProgramTranslator.enable=False."
                    )
                if not isinstance(layer, Layer):
                    raise TypeError(
                        "The input layer should be 'Layer', but received layer type is %s."
                        % type(layer))

                # 2. get program of declarative Layer.forward
                concrete_program = layer.forward.concrete_program

                # NOTE: we maintain the mapping of variable name to
                # structured name, the buffer variable (non-persistable)
                # saved to inference program may not need by dygraph Layer,
                # we only record the state_dict variable's structured name
                state_names_dict = dict()
                for structured_name, var in layer.state_dict().items():
                    state_names_dict[var.name] = structured_name

                # 3. share parameters from Layer to scope & record var info
                scope = core.Scope()
                extra_var_info = dict()
                for param_or_buffer in concrete_program.parameters:
                    # share to scope
                    param_or_buffer_tensor = scope.var(
                        param_or_buffer.name).get_tensor()
                    src_tensor = param_or_buffer.value().get_tensor()
                    param_or_buffer_tensor._share_data_with(src_tensor)
                    # record var info
                    extra_info_dict = dict()
                    if param_or_buffer.name in state_names_dict:
                        extra_info_dict['structured_name'] = state_names_dict[
                            param_or_buffer.name]
                    extra_info_dict[
                        'stop_gradient'] = param_or_buffer.stop_gradient
                    if isinstance(param_or_buffer, ParamBase):
                        extra_info_dict['trainable'] = param_or_buffer.trainable
                    extra_var_info[param_or_buffer.name] = extra_info_dict

                # 4. build input & output spec
                input_var_names = get_inout_spec(concrete_program.inputs, True)
                output_vars = get_inout_spec(concrete_program.outputs)

                # 5. save inference model
                with scope_guard(scope):
                    return fluid.io.save_inference_model(
                        dirname=save_dir,
                        feeded_var_names=input_var_names,
                        target_vars=output_vars,
                        executor=Executor(_current_expected_place()),
                        main_program=concrete_program.main_program.clone(),
                        model_filename=model_filename,
                        params_filename=params_filename,
                        program_only=model_only)
1741

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        else:
            prog = self._adapter._progs.get('test', None)
            assert prog, \
                "Model is not ready, please call `model.prepare()` first"

            infer_prog = prog.clone(for_test=True)

            input_names = [v.name for v in self._adapter._input_vars['test']]
            endpoints = self._adapter._endpoints['test']['output']

            return fluid.io.save_inference_model(
                save_dir,
                input_names,
                endpoints,
                self._adapter._executor,
                main_program=infer_prog,
                model_filename=model_filename,
                params_filename=params_filename,
                program_only=model_only)
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    def _run_one_epoch(self, data_loader, callbacks, mode, logs={}):
        outputs = []
        for step, data in enumerate(data_loader):
            # data might come from different types of data_loader and have
            # different format, as following:
            # 1. DataLoader in static graph:
            #    [[input1, input2, ..., label1, lable2, ...]]
            # 2. DataLoader in dygraph
            #    [input1, input2, ..., label1, lable2, ...]
            # 3. custumed iterator yield concated inputs and labels:
            #   [input1, input2, ..., label1, lable2, ...]
            # 4. custumed iterator yield seperated inputs and labels:
            #   ([input1, input2, ...], [label1, lable2, ...])
            # To handle all of these, flatten (nested) list to list.
            data = flatten(data)
            # LoDTensor.shape is callable, where LoDTensor comes from
            # DataLoader in static graph
            batch_size = data[0].shape()[0] if callable(data[
                0].shape) else data[0].shape[0]

            callbacks.on_batch_begin(mode, step, logs)

            if mode != 'test':
                outs = getattr(self, mode + '_batch')(data[:len(self._inputs)],
                                                      data[len(self._inputs):])
1787
                if self._metrics and self._loss:
1788
                    metrics = [[l[0] for l in outs[0]]]
1789
                elif self._loss:
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                    metrics = [[l[0] for l in outs]]
                else:
                    metrics = []
1793 1794 1795 1796 1797 1798 1799 1800 1801 1802

                # metrics
                for metric in self._metrics:
                    res = metric.accumulate()
                    metrics.extend(to_list(res))

                assert len(self._metrics_name()) == len(metrics)
                for k, v in zip(self._metrics_name(), metrics):
                    logs[k] = v
            else:
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LielinJiang 已提交
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                if self._inputs is not None:
                    outs = getattr(self,
                                   mode + '_batch')(data[:len(self._inputs)])
                else:
                    outs = getattr(self, mode + '_batch')(data)

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                outputs.append(outs)

            logs['step'] = step
            if mode == 'train' or self._adapter._merge_count.get(
                    mode + '_batch', 0) <= 0:
                logs['batch_size'] = batch_size * ParallelEnv().nranks
            else:
                logs['batch_size'] = self._adapter._merge_count[mode + '_batch']

            callbacks.on_batch_end(mode, step, logs)
        self._reset_metrics()

        if mode == 'test':
            return logs, outputs
        return logs

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    def _verify_spec(self, specs, is_input=False):
        out_specs = []

        if specs is None:
1829 1830
            # Note(Aurelius84): If not specific specs of `Input`, using argument names of `forward` function
            # to generate `Input`. But how can we know the actual shape of each input tensor?
1831 1832
            if is_input:
                out_specs = [
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                    Input(
                        name=n, shape=[None])
                    for n in extract_args(self.network.forward) if n != 'self'
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                ]
            else:
                out_specs = to_list(specs)
        elif isinstance(specs, dict):
            assert is_input == False
            out_specs = [specs[n] \
                for n in extract_args(self.network.forward) if n != 'self']
        else:
            out_specs = to_list(specs)
        # Note: checks each element has specificed `name`.
        if out_specs is not None:
            for i, spec in enumerate(out_specs):
                assert isinstance(spec, Input)
                if spec.name is None:
                    raise ValueError(
                        "Requires Input[{}].name != None, but receive `None` with {}.".
                        format(i, spec))

        return out_specs

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    def _reset_metrics(self):
        for metric in self._metrics:
            metric.reset()

    def _metrics_name(self):
1861
        metrics_name = ['loss'] if self._loss else []
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        for m in self._metrics:
            metrics_name.extend(to_list(m.name()))
        return metrics_name

    def _len_data_loader(self, data_loader):
        try:
            steps = len(data_loader)
        except Exception:
            steps = None
        return steps