quantization_pass.py 131.6 KB
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#   Copyright (c) 2018 PaddlePaddle Authors. All Rights Reserved.
#
# 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.

import collections
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import numpy as np
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try:
    from tqdm import tqdm
except:
    from .utils import tqdm
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from .... import core
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from ....framework import IrGraph
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from ....framework import IrNode
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from ....framework import Operator
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from .... import unique_name

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from ....framework import Program, program_guard, default_startup_program
from ....data import data
from ....layers import mean
from ....executor import scope_guard
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from ....framework import _get_paddle_place
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from . import utils
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__all__ = [
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    'QuantizationTransformPass',
    'QuantizationFreezePass',
    'ConvertToInt8Pass',
    'TransformForMobilePass',
    'OutScaleForTrainingPass',
    'OutScaleForInferencePass',
    'AddQuantDequantPass',
    'QuantizationTransformPassV2',
    'AddQuantDequantPassV2',
    'ReplaceFakeQuantDequantPass',
    'QuantWeightPass',
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    'AddQuantDequantForInferencePass',
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]
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_fake_quant_op_list = [
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    'fake_quantize_abs_max',
    'fake_quantize_range_abs_max',
    'fake_quantize_moving_average_abs_max',
    'fake_channel_wise_quantize_abs_max',
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]

_fake_dequant_op_list = [
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    'fake_dequantize_max_abs',
    'fake_channel_wise_dequantize_max_abs',
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]

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_fake_quant_dequant_op_list = [
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    'fake_quantize_dequantize_moving_average_abs_max',
    "fake_channel_wise_quantize_dequantize_abs_max",
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    "fake_quantize_dequantize_abs_max",
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]

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_conv_ops = ['conv2d', 'depthwise_conv2d', 'conv2d_transpose']

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_SCALE_DEFAULT_VALUE = 0.001
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def _init_var_node(var_node, value, scope, place):
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    assert isinstance(
        value, np.ndarray
    ), 'The type of value should be numpy array.'
    assert scope is not None, 'The scope cannot be set None.'
    assert place is not None, 'The place cannot be set None.'
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    tensor = scope.var(var_node.name()).get_tensor()
    tensor.set(value, place)


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def _is_input_all_not_persistable(graph, op_node):
    '''
    Analyse the real inputs of the op node are all not persistable.
    '''
    is_input_all_not_persistable = True
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    for var_name in utils._get_op_input_var_names(op_node):
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        in_node = graph._find_node_by_name(op_node.inputs, var_name)
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        is_input_all_not_persistable = is_input_all_not_persistable and (
            not in_node.persistable()
        )
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    return is_input_all_not_persistable


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def _check_grandchild_op_node(op_node, grandchild_op_name):
    '''
    Check whether the fake_quant node has a grandchild op node named
    grandchild_op_name.
    '''
    for out1_var_node in op_node.outputs:
        for out1_op_node in out1_var_node.outputs:
            for out2_var_node in out1_op_node.outputs:
                for out2_op_node in out2_var_node.outputs:
                    if out2_op_node.name() == grandchild_op_name:
                        return True
    return False


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class QuantizationTransformPass:
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    """
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    Quantize the ops that have weights. Add quant and dequant ops for
    the quantized ops's inputs.
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    """
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    def __init__(
        self,
        scope=None,
        place=None,
        weight_bits=8,
        activation_bits=8,
        activation_quantize_type='abs_max',
        weight_quantize_type='abs_max',
        window_size=10000,
        moving_rate=0.9,
        skip_pattern=['skip_quant'],
        quantizable_op_type=['conv2d', 'depthwise_conv2d', 'mul'],
        weight_quantize_func=None,
        act_quantize_func=None,
        weight_preprocess_func=None,
        act_preprocess_func=None,
        optimizer_func=None,
        executor=None,
        is_test=None,
    ):
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        r"""
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        Constructor.
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        Args:
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            scope(fluid.Scope): When activation use 'range_abs_max' as the quantize
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                type, this pass will create some new parameters. The scope is used to
                initialize these new parameters.
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            place(fluid.CPUPlace|fluid.CUDAPlace|str): place is used to initialize new
                parameters described above. If it's string, It can be ``cpu``, and ``gpu:x``,
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                where ``x`` is the index of the GPUs.
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            weight_bits(int): quantization bit number for weights,
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                the bias is not quantized.
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            activation_bits(int): quantization bit number for activation.
            activation_quantize_type(str): quantization type for activation,
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                now support 'abs_max', 'range_abs_max' and 'moving_average_abs_max'.
                If use 'abs_max' mode, the quantization scale will be calculated
                dynamically each step in both training and testing period. If use
                'range_abs_max', a static quantization scale will be calculated
                during training and used in inference.
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            weight_quantize_type(str): quantization type for weights,
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                support 'abs_max' and 'channel_wise_abs_max'. The 'range_abs_max'
                usually is not used for weight, since weights are fixed once the
                model is well trained.
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            window_size(int): the window size for 'range_abs_max' quantization.
            moving_rate(float): the param for 'moving_average_abs_max' quantization.
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            skip_pattern(str or str list): The user-defined quantization skip pattern, which
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                will be presented in the name scope of an op. When the skip pattern is
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                detected in an op's name scope, the corresponding op will not be quantized.
            quantizable_op_type(list[str]): List the type of ops that will be quantized.
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                Default is ["conv2d", "depthwise_conv2d", "mul"]. The quantizable_op_type in
                QuantizationFreezePass and ConvertToInt8Pass must be the same as this.
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            weight_quantize_func(function): Function that defines how to quantize weight.
                Using this can quickly test if user's quantization method works or not.
                In this function, user should both define quantization function and
                dequantization function, that is, the function's input is non-quantized
                weight and function returns dequantized weight. If None, will use
                quantization op defined by 'weight_quantize_type'. Default is None.
            act_quantize_func(function): Function that defines how to quantize activation.
                Using this can quickly test if user's quantization method works or not.
                In this function, user should both define quantization and dequantization
                process, that is, the function's input is non-quantized activation and
                function returns dequantized activation. If None, will use quantization
                op defined by 'activation_quantize_type'. Default is None.
            weight_preprocess_func(function): Function that defines how to preprocess
                weight before quantization. Using this can quickly test if user's preprocess
                method works or not. The function's input is non-quantized weight and
                function returns processed weight to be quantized. If None, the weight will
                be quantized directly. Default is None.
            act_preprocess_func(function): Function that defines how to preprocess
                activation before quantization. Using this can quickly test if user's
                preprocess method works or not. The function's input is non-quantized
                activation and function returns processed activation to be quantized.
                If None, the activation will be quantized directly. Default is None.
            optimizer_func(function): Fuction return a optimizer. When 'is_test' is
                False and user want to use self-defined quantization function and
                preprocess function, this function must be set. Default is None.
            executor(Fluid.Executor): If user want to use self-defined quantization
                function and preprocess function, executor must be set for initialization.
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                Default is None.

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        Examples:
        .. code-block:: python
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            # The original graph will be rewrite.
            import paddle.fluid as fluid
            from paddle.fluid.contrib.slim.quantization \
                import QuantizationTransformPass
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            from paddle.fluid.contrib.slim.graph import IrGraph
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            from paddle.fluid import core

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            graph = IrGraph(core.Graph(program.desc), for_test=False)
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            place = fluid.CPUPlace()
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            transform_pass = QuantizationTransformPass(fluid.global_scope(),
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            place)
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            transform_pass.apply(graph)
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        """
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        self._scope = scope
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        self._place = _get_paddle_place(place)
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        self._weight_bits = weight_bits
        self._activation_bits = activation_bits
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        self._skip_pattern = skip_pattern
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        self._weight_quantize_func = weight_quantize_func
        self._act_quantize_func = act_quantize_func
        self._weight_preprocess_func = weight_preprocess_func
        self._act_preprocess_func = act_preprocess_func
        self._optimizer = optimizer_func
        self._exe = executor
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        quant_type = [
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            'abs_max',
            'channel_wise_abs_max',
            'range_abs_max',
            'moving_average_abs_max',
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        ]
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        assert (
            activation_quantize_type != 'channel_wise_abs_max'
        ), "The activation quantization type does not support 'channel_wise_abs_max'."
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        if activation_quantize_type not in quant_type:
            raise ValueError(
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                "Unknown activation_quantize_type : '%s'. It can only be "
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                "'abs_max' or 'range_abs_max' or 'moving_average_abs_max'."
                % (str(activation_quantize_type))
            )
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        if weight_quantize_type not in quant_type:
            raise ValueError(
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                "Unknown weight_quantize_type: '%s'. It can only be "
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                "'abs_max' or 'channel_wise_abs_max' or 'range_abs_max' "
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                "or 'moving_average_abs_max'." % (str(weight_quantize_type))
            )
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        self._activation_quantize_type = activation_quantize_type
        self._weight_quantize_type = weight_quantize_type
        self._window_size = window_size
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        self._moving_rate = moving_rate
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        self._quantizable_ops = quantizable_op_type
        for op in self._quantizable_ops:
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            assert op in utils._weight_supported_quantizable_op_type, (
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                op + " is not supported for quantization."
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            )
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        self._quantizable_grad_ops = [
            '%s_grad' % (op) for op in self._quantizable_ops
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        ]
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        self._is_test = is_test
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        self._global_step = None
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        self.create_var_map = {}
        self.create_op_map = {}

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    def apply(self, graph):
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        """
        Quantize the graph for training process. According to weight and
        activation quantization type, the graph will be added some fake
        quantize operators and fake dequantize operators.

        Args:
            graph(IrGraph): the applied graph.
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        Returns:
            None
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        """
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        assert isinstance(
            graph, IrGraph
        ), 'graph must be the instance of IrGraph.'
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        if self._is_test is None:
            self._is_test = graph.is_test()
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        # marked the variable which has been dequantized.
        dequantized_vars = collections.OrderedDict()
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        persistable_vars = [p.name() for p in graph.all_persistable_nodes()]
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        processed_vars = []
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        def _quant_preprocess(op_node):
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            user_skipped = False
            if isinstance(self._skip_pattern, list):
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                user_skipped = op_node.op().has_attr("op_namescope") and any(
                    pattern in op_node.op().attr("op_namescope")
                    for pattern in self._skip_pattern
                )
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            elif isinstance(self._skip_pattern, str):
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                user_skipped = (
                    op_node.op().has_attr("op_namescope")
                    and op_node.op()
                    .attr("op_namescope")
                    .find(self._skip_pattern)
                    != -1
                )
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            if user_skipped:
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                op_node.op()._set_attr("skip_quant", True)
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                op_node.op()._set_attr("with_quant_attr", True)
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        def _transform_forward(graph, op):
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            op.op()._set_attr("quantization_type", "qat_with_weight")
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            op.op()._set_attr("with_quant_attr", True)
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            inputs = op.inputs
            for var_node in inputs:
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                if var_node.name() not in op.input_arg_names():
                    continue
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                if var_node.name() in dequantized_vars:
                    dequant_var_node = dequantized_vars[var_node.name()]
                else:
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                    name = var_node.name()
                    if name in processed_vars:
                        continue
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                    is_weight = (
                        True if var_node.name() in persistable_vars else False
                    )
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                    # if var node is weight and weight_preprocess_func is not None,
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                    # will insert weight preprocess func
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                    # to preorocess weight before quantization
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                    # if var node is activation and act_preprocess_func is not None,
                    # will insert activation preprocess func
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                    # to preorocess activation before quantization
                    if is_weight and self._weight_preprocess_func is not None:
                        var_node = self._insert_func(
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                            graph, self._weight_preprocess_func, var_node, op
                        )
                    elif (
                        not is_weight and self._act_preprocess_func is not None
                    ):
                        var_node = self._insert_func(
                            graph, self._act_preprocess_func, var_node, op
                        )
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                    # if var node is weight and weight_quantize_func is not None,
                    # will insert weight quantize func to quantize and dequantize weight
                    # if var node is activation and act_quantize_func is not None,
                    # will insert act quantize func to quantize and dequantize activation
                    if is_weight and self._weight_quantize_func is not None:
                        target_out_node = self._insert_func(
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                            graph, self._weight_quantize_func, var_node, op
                        )
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                        processed_vars.append(name)
                        continue
                    elif not is_weight and self._act_quantize_func is not None:
                        target_out_node = self._insert_func(
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                            graph, self._act_quantize_func, var_node, op
                        )
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                        processed_vars.append(name)
                        continue

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                    quant_bits = (
                        self._weight_bits
                        if var_node.name() in persistable_vars
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                        else self._activation_bits
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                    )
                    quant_type = (
                        self._weight_quantize_type
                        if is_weight
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                        else self._activation_quantize_type
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                    )
                    if (
                        quant_type == 'channel_wise_abs_max'
                    ):  # Weight quantization
                        quant_axis = (
                            1
                            if op.name() in utils._channelwise_quant_axis1_ops
                            else 0
                        )
                        (
                            quant_var_node,
                            scale_var_node,
                        ) = self._insert_channel_quant_op(
                            graph, var_node, name, quant_bits, quant_axis
                        )
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                        dequant_var_node = self._insert_channel_dequant_op(
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                            graph,
                            quant_var_node,
                            [scale_var_node],
                            [quant_bits],
                            quant_axis,
                        )
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                    else:
                        quant_var_node, scale_var_node = self._insert_quant_op(
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                            graph, var_node, name, quant_bits, quant_type
                        )
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                        dequant_var_node = self._insert_dequant_op(
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                            graph, quant_var_node, scale_var_node, quant_bits
                        )
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                    dequantized_vars[name] = dequant_var_node
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                graph.update_input_link(var_node, dequant_var_node, op)
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        def _transform_backward(graph, op):
            for var_node in op.inputs:
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                if var_node.name() not in op.input_arg_names():
                    continue
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                if var_node.name() in dequantized_vars:
                    dequant_var_node = dequantized_vars[var_node.name()]
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                    graph.update_input_link(var_node, dequant_var_node, op)
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        def _has_weight(op):
            has_weight = False
            for var_node in op.inputs:
                if var_node.name() not in op.input_arg_names():
                    continue
                name = var_node.name()
                if var_node.name() in persistable_vars:
                    has_weight = True
            return has_weight

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        if not self._is_test:
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            self._create_global_step(graph)
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        ops = graph.all_op_nodes()
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        # Do the preproccess of quantization, such as skipping some ops
        # for not being quantized.
        for op in ops:
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            if (
                op.name() in self._quantizable_ops
                or op.name() in self._quantizable_grad_ops
            ):
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                _quant_preprocess(op)
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        # Insert mapping table to solve the problem in saving inference model.
        graph.out_node_mapping_table = dict()
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        # The process of _transform_forward and _transform_backward is needed in two for loops.
        # The loop for transforming the forward graph:
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        with tqdm(
            total=len(ops),
            bar_format='Adding quant op with weight:|{bar}| {n_fmt}/{total_fmt}',
            ncols=80,
        ) as t:
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            for op in ops:
                if op.name() in self._quantizable_ops:
                    if not self._is_skip_quant(graph, op) and _has_weight(op):
                        _transform_forward(graph, op)
                t.update()
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        # The loop for renaming the inputs of backward op.
        for op in ops:
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            if op.name() in self._quantizable_grad_ops and _has_weight(op):
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                _transform_backward(graph, op)
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        graph.resolve_hazard()
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        return graph
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    def _create_global_step(self, graph):
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        if (
            self._weight_quantize_type == 'range_abs_max'
            or self._activation_quantize_type == 'range_abs_max'
        ):
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            counter_name = '@STEP_COUNTER@'
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            for node in graph.all_var_nodes():
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                if node.name() == counter_name:
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                    self._global_step = node
            if self._global_step is None:
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                global_step_in = graph.create_persistable_node(
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                    name=counter_name,
                    var_type=core.VarDesc.VarType.LOD_TENSOR,
                    shape=[1],
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                    var_dtype=core.VarDesc.VarType.INT64,
                )
                _init_var_node(
                    global_step_in,
                    np.zeros([1], dtype='int64'),
                    self._scope,
                    self._place,
                )
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                global_step_out = graph.create_var_node_from_desc(
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                    global_step_in.var()
                )
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                # The attribute of `op_role` is needed by ParallelExecutor.
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                increment_op = graph.create_op_node(
                    op_type='increment',
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                    attrs={
                        'step': 1.0,
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                        'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
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                    },
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                    inputs={'X': global_step_in},
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                    outputs={'Out': global_step_out},
                )
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                graph.link_to(global_step_in, increment_op)
                graph.link_to(increment_op, global_step_out)
                self._global_step = global_step_out
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    def _insert_quant_op(self, graph, var_node, name, quant_bits, quant_type):
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        """
        Insert fake_quantize_op in the graph.
        """
        if quant_type == 'abs_max':
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            return self._insert_quant_abs_max_op(
                graph, var_node, name, quant_bits
            )
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        elif quant_type == 'range_abs_max':
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            return self._insert_quant_range_abs_max_op(
                graph, var_node, name, quant_bits
            )
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        elif quant_type == 'moving_average_abs_max':
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            return self._insert_quant_moving_average_abs_max_op(
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                graph, var_node, name, quant_bits
            )
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    def _insert_quant_abs_max_op(self, graph, var_node, name, quant_bits):
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        """
        Insert fake_quantize_abs_max op in the graph.
        """
        assert var_node.is_var(), '{} is not a var'.format(var_node.name())

        quant_var_node = graph.create_var_node(
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            name=self._quantized_var_name(name),
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            var_type=var_node.type(),
            shape=var_node.shape(),
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            var_dtype=var_node.dtype(),
        )
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        scale_name = self._quantized_scale_name(name)
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        data_type = (
            'float64'
            if var_node.dtype() == core.VarDesc.VarType.FP64
            else 'float32'
        )
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        try:
            scale_value = np.array(
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                self._scope.find_var(scale_name).get_tensor()
            )
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        except:
            scale_value = np.zeros([1], dtype=data_type)
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        scale_var_node = graph.create_persistable_node(
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            name=scale_name,
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            var_type=var_node.type(),
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            shape=[1],
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            var_dtype=var_node.dtype(),
        )
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        _init_var_node(scale_var_node, scale_value, self._scope, self._place)

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        quant_op_node = graph.create_op_node(
            op_type='fake_quantize_abs_max',
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            attrs={
                'bit_length': quant_bits,
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                'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
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            },
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            inputs={'X': var_node},
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            outputs={'Out': quant_var_node, 'OutScale': scale_var_node},
        )
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        graph.link_to(var_node, quant_op_node)
        graph.link_to(quant_op_node, quant_var_node)
        graph.link_to(quant_op_node, scale_var_node)
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        return quant_var_node, scale_var_node

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    def _insert_quant_range_abs_max_op(self, graph, var_node, name, quant_bits):
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        """
        Insert fake_quantize_range_abs_max on the graph.
        """
        assert var_node.is_var(), '{} is not a var'.format(var_node.name())

        quant_var_node = graph.create_var_node(
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            name=self._quantized_var_name(name),
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            var_type=var_node.type(),
            shape=var_node.shape(),
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            var_dtype=var_node.dtype(),
        )
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        scale_name = self._quantized_scale_name(name)
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        data_type = (
            'float64'
            if var_node.dtype() == core.VarDesc.VarType.FP64
            else 'float32'
        )
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        try:
            scale_value = np.array(
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                self._scope.find_var(scale_name).get_tensor()
            )
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        except:
            scale_value = np.array([_SCALE_DEFAULT_VALUE], dtype=data_type)
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        scale_in_node = graph.create_persistable_node(
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            name=scale_name,
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            var_type=core.VarDesc.VarType.LOD_TENSOR,
            shape=[1],
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            var_dtype=var_node.dtype(),
        )
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        _init_var_node(scale_in_node, scale_value, self._scope, self._place)
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        scale_out_node = graph.create_var_node_from_desc(scale_in_node.var())
        inputs = {'X': var_node, 'InScale': scale_in_node}
        outputs = {'Out': quant_var_node, 'OutScale': scale_out_node}

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        if not self._is_test:
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            # The name of scales_var_node maybe 'scales_0', 'scales_1', etc.
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            scales_node = graph.create_persistable_node(
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                name=unique_name.generate('scales'),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
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                shape=[self._window_size],
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                var_dtype=var_node.dtype(),
            )
            data_type = (
                'float64'
                if var_node.dtype() == core.VarDesc.VarType.FP64
                else 'float32'
            )
            _init_var_node(
                scales_node,
                np.zeros([self._window_size], dtype=data_type),
                self._scope,
                self._place,
            )
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            inputs['Iter'] = self._global_step
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            outputs['OutScales'] = scales_node
        attrs = {
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            'window_size': self._window_size,
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            'bit_length': quant_bits,
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            'is_test': self._is_test,
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            'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
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        }
        quant_op_node = graph.create_op_node(
            op_type='fake_quantize_range_abs_max',
            attrs=attrs,
            inputs=inputs,
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            outputs=outputs,
        )
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        graph.link_to(var_node, quant_op_node)
        graph.link_to(scale_in_node, quant_op_node)
        graph.link_to(quant_op_node, quant_var_node)
        graph.link_to(quant_op_node, scale_out_node)
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        if not self._is_test:
            graph.link_to(self._global_step, quant_op_node)
            graph.link_to(quant_op_node, scales_node)
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        return quant_var_node, scale_out_node

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    def _insert_quant_moving_average_abs_max_op(
        self, graph, var_node, name, quant_bits
    ):
        """Insert fake_quantize_moving_average_abs_max"""
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        quant_var_node = graph.create_var_node(
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            name=self._quantized_var_name(name),
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            var_type=var_node.type(),
            shape=var_node.shape(),
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            var_dtype=var_node.dtype(),
        )
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        scale_name = self._quantized_scale_name(name)
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        data_type = (
            'float64'
            if var_node.dtype() == core.VarDesc.VarType.FP64
            else 'float32'
        )
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        try:
            scale_value = np.array(
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                self._scope.find_var(scale_name).get_tensor()
            )
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        except:
            scale_value = np.array([_SCALE_DEFAULT_VALUE], dtype=data_type)
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        scale_in_node = graph.create_persistable_node(
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            name=scale_name,
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            var_type=core.VarDesc.VarType.LOD_TENSOR,
            shape=[1],
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            var_dtype=var_node.dtype(),
        )
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        _init_var_node(scale_in_node, scale_value, self._scope, self._place)
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        scale_out_node = graph.create_var_node_from_desc(scale_in_node.var())
        ins = {'X': var_node, 'InScale': scale_in_node}
        outs = {'Out': quant_var_node, 'OutScale': scale_out_node}
        if not self._is_test:
            state_in_node = graph.create_persistable_node(
                name=unique_name.generate('state'),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
                var_dtype=var_node.dtype(),
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                shape=[1],
            )
            data_type = (
                'float64'
                if var_node.dtype() == core.VarDesc.VarType.FP64
                else 'float32'
            )
            _init_var_node(
                state_in_node,
                np.ones([1], dtype=data_type),
                self._scope,
                self._place,
            )
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            accum_in_node = graph.create_persistable_node(
                name=unique_name.generate('accum'),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
                var_dtype=var_node.dtype(),
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                shape=[1],
            )
            _init_var_node(
                accum_in_node,
                np.ones([1], dtype=data_type),
                self._scope,
                self._place,
            )
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            state_out_node = graph.create_var_node_from_desc(
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                state_in_node.var()
            )
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            accum_out_node = graph.create_var_node_from_desc(
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                accum_in_node.var()
            )
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            ins['InState'] = state_in_node
            ins['InAccum'] = accum_in_node
            outs['OutState'] = state_out_node
            outs['OutAccum'] = accum_out_node

        attrs = {
            'bit_length': quant_bits,
            'moving_rate': self._moving_rate,
            'is_test': self._is_test,
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            'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
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        }

        quant_op_node = graph.create_op_node(
            op_type='fake_quantize_moving_average_abs_max',
            attrs=attrs,
            inputs=ins,
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            outputs=outs,
        )
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        graph.link_to(var_node, quant_op_node)
        graph.link_to(scale_in_node, quant_op_node)
        graph.link_to(quant_op_node, quant_var_node)
        graph.link_to(quant_op_node, scale_out_node)

        if not self._is_test:
            graph.link_to(state_in_node, quant_op_node)
            graph.link_to(accum_in_node, quant_op_node)
            graph.link_to(quant_op_node, state_out_node)
            graph.link_to(quant_op_node, accum_out_node)

        return quant_var_node, scale_out_node

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    def _insert_channel_quant_op(
        self, graph, var_node, name, quant_bits, quant_axis
    ):
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        """
        Insert fake_channel_wise_quantize_abs_max op in the graph.
        """
        assert var_node.is_var(), '{} is not a var'.format(var_node.name())

        quant_var_node = graph.create_var_node(
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            name=self._quantized_var_name(name),
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            var_type=var_node.type(),
            shape=var_node.shape(),
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            var_dtype=var_node.dtype(),
        )
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        scale_name = self._quantized_scale_name(name)
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        data_type = (
            'float64'
            if var_node.dtype() == core.VarDesc.VarType.FP64
            else 'float32'
        )
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        try:
            scale_value = np.array(
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                self._scope.find_var(scale_name).get_tensor()
            )
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        except:
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            scale_value = np.zeros(
                [var_node.shape()[quant_axis]], dtype=data_type
            )
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        scale_var_node = graph.create_persistable_node(
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            name=self._quantized_scale_name(name),
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            var_type=var_node.type(),
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            shape=[var_node.shape()[quant_axis]],
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            var_dtype=var_node.dtype(),
        )
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        _init_var_node(scale_var_node, scale_value, self._scope, self._place)
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        quant_op_node = graph.create_op_node(
            op_type='fake_channel_wise_quantize_abs_max',
            attrs={
                'bit_length': quant_bits,
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                'quant_axis': quant_axis,
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                'is_test': self._is_test,
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                'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
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            },
            inputs={'X': var_node},
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            outputs={'Out': quant_var_node, 'OutScale': scale_var_node},
        )
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        graph.link_to(var_node, quant_op_node)
        graph.link_to(quant_op_node, quant_var_node)
        graph.link_to(quant_op_node, scale_var_node)
        return quant_var_node, scale_var_node

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    def _insert_dequant_op(self, graph, var_node, scale_var_node, quant_bits):
        """
        Insert fake_dequantize_op in the graph.
        """
        assert var_node.is_var(), '{} is not a var'.format(var_node.name())

        dequant_var_node = graph.create_var_node(
            name=self._dequantized_var_name(var_node.name()),
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            var_type=var_node.type(),
            shape=var_node.shape(),
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            var_dtype=var_node.dtype(),
        )
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        max_range = (1 << (quant_bits - 1)) - 1
        dequant_op_node = graph.create_op_node(
            op_type='fake_dequantize_max_abs',
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            attrs={
                'max_range': float(max_range),
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                'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
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            },
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            inputs={'X': var_node, 'Scale': scale_var_node},
            outputs={'Out': dequant_var_node},
        )
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        graph.link_to(var_node, dequant_op_node)
        graph.link_to(scale_var_node, dequant_op_node)
        graph.link_to(dequant_op_node, dequant_var_node)
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        return dequant_var_node

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    def _insert_channel_dequant_op(
        self, graph, var_node, scale_var_nodes, quant_bits, quant_axis
    ):
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        """
        Insert fake_channel_wise_dequantize_max_abs in the graph.
        """
        assert var_node.is_var(), '{} is not a var'.format(var_node.name())

        dequant_var_node = graph.create_var_node(
            name=self._dequantized_var_name(var_node.name()),
            var_type=var_node.type(),
            shape=var_node.shape(),
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            var_dtype=var_node.dtype(),
        )
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        dequant_op_node = graph.create_op_node(
            op_type='fake_channel_wise_dequantize_max_abs',
            attrs={
                'quant_bits': quant_bits,
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                'quant_axis': quant_axis,
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                'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
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            },
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            inputs={'X': var_node, 'Scales': scale_var_nodes},
            outputs={'Out': dequant_var_node},
        )
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        graph.link_to(var_node, dequant_op_node)
        for scale_n in scale_var_nodes:
            graph.link_to(scale_n, dequant_op_node)
        graph.link_to(dequant_op_node, dequant_var_node)
        return dequant_var_node

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    def _create_new_node(self, graph, in_node):
        """
        create a node that same with in_node in graph
        Args:
            graph(IrGraph): create node in graph.
            in_node(IrVarNode): create node that same with in_node.
        Returns:
            created new node
        """
        key = ''
        for inp in in_node.inputs:
            key = key + inp.name()
        key = key + in_node.name()
        for inp in in_node.outputs:
            key = key + inp.name()

        if key in self.create_var_map.keys():
            new_node = self.create_var_map[key]
        elif in_node.is_ctrl_var():
            new_node = graph.create_control_dep_var()
            self.create_var_map[key] = new_node
        else:
            new_node = graph.create_var_node_from_desc(in_node.node.var())
            self.create_var_map[key] = new_node
        return new_node

    def _copy_graph(self, graph, source_graph, op_node):
        """
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        copy op_node in source_graph to graph. And will run recursively
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        for next ops that link to op_node's outputs.
        Args:
            graph(IrGraph): target graph to copy.
            source_graph(IrGraph): source graph to copy.
            op_node(IrOpNode): op node in source_graph.
        Returns:
            None

        """
        key = ''
        for inp in op_node.inputs:
            key = key + inp.name()
        key = key + op_node.name()
        for inp in op_node.outputs:
            key = key + inp.name()
        has_created = False
        if key in self.create_op_map.keys():
            new_op_node = self.create_op_map[key]
            has_created = True
        else:
            new_op_node = graph.create_op_node_from_desc(op_node.node.op())
            self.create_op_map[key] = new_op_node
        if has_created:
            return
        for in_node in op_node.inputs:
            new_node = self._create_new_node(graph, in_node)
            graph.link_to(new_node, new_op_node)
        for in_node in op_node.outputs:
            new_node = self._create_new_node(graph, in_node)
            graph.link_to(new_op_node, new_node)
        for var_node in op_node.outputs:
            for next_op_node in var_node.outputs:
                self._copy_graph(graph, source_graph, next_op_node)
        return

    def _insert_func(self, graph, func, var_node, op):
        """
        Insert a tmp program that returned by func between var_node and op.

        Args:
            graph(IrGraph): target graph to insert tmp program.
            func(Function): function to define a tmp program
            var_node(IrVarNode): node in target graph.
            op(IrOpNode): op in target graph.
        Returns:
            op's new input that replaces var_node
        """
        tmp_program = Program()
        startup_program = Program()
        with program_guard(tmp_program, startup_program):
            with unique_name.guard(var_node.name() + "_"):
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                in_node = data(
                    var_node.name() + '_tmp_input',
                    shape=var_node.shape(),
                    dtype='float32',
                )
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                out_node = func(in_node)
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                graph.out_node_mapping_table[out_node.name] = var_node.name()
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                # loss shape must be 1 when minimize
                loss = mean(out_node)
                if not graph._for_test:
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                    assert (
                        self._optimizer
                    ), "optimizer_func must be set when graph is test graph"
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                    in_node.stop_gradient = False
                    optimizer = self._optimizer()
                    optimizer.minimize(loss)
        with scope_guard(self._scope):
            self._exe.run(startup_program)

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        tmp_graph = IrGraph(
            core.Graph(tmp_program.desc), for_test=graph._for_test
        )
        in_node = tmp_graph._find_node_by_name(
            tmp_graph.all_var_nodes(), in_node.name
        )
        out_node = tmp_graph._find_node_by_name(
            tmp_graph.all_var_nodes(), out_node.name
        )
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        in_node_params = []
        in_op_node = []
        # copy tmp graph to graph, after that, we can insert tmp graph's copy to graph.
        for node in tmp_graph.all_var_nodes():
            if node.inputs == [] and node.persistable():
                in_node_params.append(node)
        for node in tmp_graph.all_op_nodes():
            if node.inputs == []:
                in_op_node.append(node)
        for node in in_node.outputs:
            self._copy_graph(graph, tmp_graph, node)
        for node in in_node_params:
            for op_node in node.outputs:
                self._copy_graph(graph, tmp_graph, op_node)
        for node in in_op_node:
            self._copy_graph(graph, tmp_graph, node)

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        target_in_node = graph._find_node_by_name(
            graph.all_var_nodes(), in_node.name()
        )
        target_out_node = graph._find_node_by_name(
            graph.all_var_nodes(), out_node.name()
        )
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        loss_node = graph._find_node_by_name(graph.all_var_nodes(), loss.name)
        outputs = target_in_node.outputs
        for node in outputs:
            graph.update_input_link(target_in_node, var_node, node)
        graph.update_input_link(var_node, target_out_node, op)

        # update grad
        if not graph._for_test:
            op_out = op.outputs[0]
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            op_out_grad = graph._find_node_by_name(
                graph.all_var_nodes(), op_out.name() + "@GRAD"
            )
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            # find op's gradient op, such as conv2d_grad
            op_grad = op_out_grad.outputs[0]
            target_out_grad_node = graph._find_node_by_name(
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                graph.all_var_nodes(), target_out_node.name() + "@GRAD"
            )
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            in_node_grad = graph._find_node_by_name(
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                graph.all_var_nodes(), target_in_node.name() + "@GRAD"
            )
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            in_node_grad_op = in_node_grad.inputs
            # update op_grad's input
            graph.update_input_link(var_node, target_out_node, op_grad)

            op_grad_out = None
            # find var_node's corresponding grad node
            for node in op_grad.outputs:
                if var_node.name() + "@GRAD" in node.name():
                    op_grad_out = node
            # update op_grad's output
            if op_grad_out is not None:
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                graph.update_output_link(
                    op_grad_out, target_out_grad_node, op_grad
                )
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            else:
                graph.link_to(op_grad, target_out_grad_node)

            for node in in_node_grad_op:
                graph.update_input_link(target_in_node, var_node, node)
                if op_grad_out:
                    graph.update_output_link(in_node_grad, op_grad_out, node)
            # remove useless nodes
            mean_grad = target_out_grad_node.inputs[0]
            mean_out_grad = mean_grad.inputs[0]
            fill_constant_node = mean_out_grad.inputs[0]
            graph.safe_remove_nodes(mean_grad)
            graph.safe_remove_nodes(mean_out_grad)
            graph.safe_remove_nodes(fill_constant_node)
            graph.safe_remove_nodes(in_node_grad)

        graph.safe_remove_nodes(loss_node.inputs[0])
        graph.safe_remove_nodes(loss_node)
        graph.safe_remove_nodes(target_in_node)
        return target_out_node

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    def _quantized_var_name(self, var_name):
        """
        Return quantized variable name for the input `var_name`.
        """
        return "%s.quantized" % (var_name)

    def _dequantized_var_name(self, var_name):
        """
        Return dequantized variable name for the input `var_name`.
        """
        return "%s.dequantized" % (var_name)

    def _quantized_scale_name(self, var_name):
        """
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        Return the scale name of quantized variable for the input `var_name`.
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        """
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        return "%s@scale" % (var_name)
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    def _is_skip_quant(self, graph, op_node):
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        """
        Analyse whether the op node skips quantization.
        """
        is_skip = False
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        if op_node.op().has_attr("skip_quant") and op_node.op().attr(
            "skip_quant"
        ):
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            is_skip = True
        # if the inputs of mul and matmul are not all persistable, use
        # AddQuantDequantPass to quantize them.
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        if op_node.name() in [
            "mul",
            "matmul",
        ] and _is_input_all_not_persistable(graph, op_node):
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            is_skip = True
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        if (
            op_node.op().has_attr("quantization_type")
            and op_node.op().attr("quantization_type") == "qat_without_weight"
        ):
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            is_skip = True
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        return is_skip

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class QuantizationFreezePass:
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    def __init__(
        self,
        scope,
        place,
        bias_correction=False,
        weight_bits=8,
        activation_bits=8,
        round_type='round',
        weight_quantize_type='abs_max',
        quantizable_op_type=None,
    ):
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        """
        The freeze pass is used to adjust the quantize operator order, for example:
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            1) `activation -> quant -> dequant -> conv2d` will be frozen into
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            `activation -> quant -> conv2d -> dequant`
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            2) `weight -> quant -> dequant -> conv2d` will be frozen into `weight -> conv2d`,
            and weight will be scaled offline.
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        Args:
            scope(fluid.Scope): scope is used to get the weight tensor values.
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            place(fluid.CPUPlace|fluid.CUDAPlace|str): place is used to restore the weight tensors.
                If it's string, It can be ``cpu``, and ``gpu:x``, where ``x`` is the index of the GPUs.
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            bias_correction(bool): whether use bias correction for post-training quantization.
                 https://arxiv.org/abs/1810.05723.
1096 1097
            weight_bits(int): quantization bit number for weights.
            activation_bits(int): quantization bit number for activation.
1098
            round_type(str, optional): The method of converting the quantized weights
1099 1100 1101
                value float->int. Currently supports ['round', 'adaround'] methods.
                Default is `round`, which is rounding nearest to the integer.
                'adaround' is refer to https://arxiv.org/abs/2004.10568.
1102 1103
            weight_quantize_type(str): quantization type for weights, support 'abs_max' and
                'channel_wise_abs_max'. The 'range_abs_max' usually is not used for weight,
1104
                since weights are fixed once the model is well trained.
1105 1106
            quantizable_op_type(list[str]): This input param will be removed latter. The pass
                will process all quantized op, so it is not necessary to set the input param.
1107
        """
1108 1109
        assert scope is not None, 'The scope cannot be set None.'
        assert place is not None, 'The place cannot be set None.'
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        self._scope = scope
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        self._bias_correction = bias_correction
1112
        self._place = _get_paddle_place(place)
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        self._weight_bits = weight_bits
        self._activation_bits = activation_bits
1115
        self._round_type = round_type
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        self._weight_quantize_type = weight_quantize_type
1117 1118
        self._fake_quant_op_names = _fake_quant_op_list
        self._fake_dequant_op_names = _fake_dequant_op_list
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        self._op_input_rename_map = collections.OrderedDict()
        self._op_output_rename_map = collections.OrderedDict()
1121
        self._quant_var_scale_map = collections.OrderedDict()
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        self._quantized_ops = set()
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    def apply(self, graph):
1125 1126 1127 1128 1129
        """
        Adjust quantize/dequantize operators order for the inference process.

        Args:
            graph(IrGraph): the applied graph.
1130 1131
        Returns:
            None
1132
        """
1133
        # Get input scales in fake quant op and process weights
1134 1135
        persistable_vars = [p.name() for p in graph.all_persistable_nodes()]
        ops = graph.all_op_nodes()
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        for op_node in ops:
            op_name = op_node.name()
            if op_name in self._fake_quant_op_names:
1139
                input_arg_name = op_node.input('X')[0]
1140 1141 1142
                if hasattr(graph, 'out_node_mapping_table'):
                    if input_arg_name in graph.out_node_mapping_table.keys():
                        input_arg_name = graph.out_node_mapping_table[
1143 1144
                            input_arg_name
                        ]
1145 1146
                if input_arg_name not in persistable_vars:
                    scale_v = graph._find_node_by_name(
1147 1148
                        op_node.outputs, op_node.output('OutScale')[0]
                    )
1149 1150 1151 1152 1153
                    self._quant_var_scale_map[input_arg_name] = scale_v
                else:
                    # Obtain scale from OutScale var node
                    scale_v = self._load_var(op_node.output('OutScale')[0])
                    assert scale_v.ndim in [
1154 1155
                        1,
                        2,
1156 1157 1158
                    ], "the dim of scale_v should be 1 or 2"
                    if scale_v.ndim == 2:
                        scale_v = scale_v[0]
1159 1160 1161 1162
                    if (
                        scale_v.size == 1
                        and self._weight_quantize_type == 'abs_max'
                    ):
1163
                        scale_v = scale_v[0]
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                    else:
1165
                        scale_v = scale_v.tolist()
1166
                    self._quant_var_scale_map[input_arg_name] = scale_v
1167
                    # Quantize weight and restore
1168
                    if self._round_type == 'round':
1169
                        param_v = self._load_var(input_arg_name)
1170
                        if any(
1171 1172 1173
                            _check_grandchild_op_node(op_node, op)
                            for op in utils._channelwise_quant_axis1_ops
                        ):
1174 1175 1176
                            quant_axis = 1
                        else:
                            quant_axis = 0
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                        if input_arg_name not in self._quantized_ops:
                            self._quantized_ops.add(input_arg_name)
                            quantized_param_v = utils.quant_tensor(
                                param_v.copy(),
1181 1182
                                scale_v,
                                quant_axis,
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                                self._weight_bits,
1184
                            )
1185
                            quantized_param_v = np.round(quantized_param_v)
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                            # Weight bias correction
                            if self._bias_correction == True:
                                quantized_param_v = utils.bias_correction_w(
                                    param_v,
                                    quantized_param_v,
                                    scale_v,
                                    quant_axis,
                                    weight_bits=self._weight_bits,
                                )
                                quantized_param_v = np.round(quantized_param_v)
                            self._restore_var(input_arg_name, quantized_param_v)

1198
                    self._remove_fake_quant_and_dequant_op(graph, op_node)
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1200
        # Remove all fake dequant op
1201
        ops = graph.all_op_nodes()
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        for op_node in ops:
            op_name = op_node.name()
            if op_name in self._fake_dequant_op_names:
                self._remove_fake_quant_and_dequant_op(graph, op_node)

1207
        # Insert post dequant op
1208
        ops = graph.all_op_nodes()
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        for op_node in ops:
1210
            op_node_desc = op_node.op()
1211 1212 1213 1214
            if (
                op_node_desc.has_attr("quantization_type")
                and op_node_desc.attr("quantization_type") == "qat_with_weight"
            ):
1215
                if self._weight_quantize_type == 'channel_wise_abs_max':
1216 1217 1218 1219 1220
                    quant_axis = (
                        1
                        if op_node.name() in utils._channelwise_quant_axis1_ops
                        else 0
                    )
1221
                    self._insert_post_channel_dequant_op(
1222 1223
                        graph, op_node, quant_axis
                    )
1224 1225
                else:
                    self._insert_post_dequant_op(graph, op_node)
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1227
        # Rename inputs of the followed ops after inserting dequant_op after fc/conv
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        for op_node in ops:
            for var_node in op_node.inputs:
1230 1231 1232
                if var_node.node in self._op_output_rename_map:
                    old_in = var_node
                    new_in = self._op_output_rename_map[var_node.node]
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                    graph.update_input_link(old_in, new_in, op_node)

        # remove the unused var node in the graph
        self._remove_unused_var_nodes(graph)
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        graph.resolve_hazard()
1238
        return graph
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    def _remove_fake_quant_and_dequant_op(self, graph, op_node):
1241 1242
        k = graph._find_node_by_name(op_node.outputs, op_node.output('Out')[0])
        v = graph._find_node_by_name(op_node.inputs, op_node.input('X')[0])
1243 1244
        if v.node not in self._op_input_rename_map:
            self._op_input_rename_map[k.node] = v
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        else:
1246
            self._op_input_rename_map[k.node] = self._op_input_rename_map[
1247 1248
                v.node
            ]
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        graph.safe_remove_nodes(op_node)
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1251
    def _insert_post_channel_dequant_op(self, graph, op_node, quant_axis):
1252 1253 1254
        persistable_vars = [p.name() for p in graph.all_persistable_nodes()]
        for var_node in op_node.inputs:
            name = var_node.name()
1255 1256 1257 1258 1259
            if name not in op_node.input_arg_names():
                continue
            if var_node.node in self._op_input_rename_map:
                old_in = var_node
                new_in = self._op_input_rename_map[var_node.node]
1260 1261 1262
                new_in.clear_outputs()
                graph.update_input_link(old_in, new_in, op_node)
            original_var_name = self._original_var_name(name)
1263
            scale_v = self._quant_var_scale_map[original_var_name]
1264 1265
            if original_var_name in persistable_vars:
                assert isinstance(
1266 1267 1268 1269
                    scale_v, list
                ), 'The scale of parameter %s is not a list.' % (
                    original_var_name
                )
1270 1271 1272
                channel_scale = np.array(scale_v)
            else:
                assert isinstance(scale_v, IrNode)
1273
                scale_var_node = self._quant_var_scale_map[original_var_name]
1274

1275
        if len(op_node.output_arg_names()) != 1:
1276 1277 1278 1279
            raise ValueError(
                "Only support one output, but op %s has"
                " more than one output." % (op_node.name())
            )
1280

1281
        output_var_node = graph._find_node_by_name(
1282 1283
            op_node.outputs, op_node.output_arg_names()[0]
        )
1284 1285 1286 1287
        weight_scale_node = graph.create_persistable_node(
            name=unique_name.generate('channel_scale'),
            var_type=core.VarDesc.VarType.LOD_TENSOR,
            shape=[channel_scale.shape[0]],
1288 1289 1290 1291 1292 1293 1294 1295 1296 1297 1298 1299 1300
            var_dtype=output_var_node.dtype(),
        )
        data_type = (
            'float64'
            if output_var_node.dtype() == core.VarDesc.VarType.FP64
            else 'float32'
        )
        _init_var_node(
            weight_scale_node,
            channel_scale.astype(data_type),
            self._scope,
            self._place,
        )
1301 1302 1303 1304
        dequant_var_node = graph.create_var_node(
            name=self._dequantized_var_name(output_var_node.name()),
            var_type=output_var_node.type(),
            shape=output_var_node.shape(),
1305 1306
            var_dtype=output_var_node.dtype(),
        )
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        x_num_col_dims = 1
        if op_node.name() in ['matmul', 'matmul_v2', 'mul']:
            x_num_col_dims = len(op_node.outputs[0].shape()) - 1
1310 1311
        if op_node.op().has_attr("x_num_col_dims"):
            x_num_col_dims = op_node.op().attr("x_num_col_dims")
1312 1313 1314 1315
        dequant_op_node = graph.create_op_node(
            op_type='fake_channel_wise_dequantize_max_abs',
            attrs={
                'quant_bits': [self._weight_bits, self._activation_bits],
1316
                'quant_axis': quant_axis,
1317
                'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
1318
                'x_num_col_dims': x_num_col_dims,
1319 1320 1321
            },
            inputs={
                'X': output_var_node,
1322
                'Scales': [weight_scale_node, scale_var_node],
1323
            },
1324 1325
            outputs={'Out': dequant_var_node},
        )
1326 1327 1328 1329
        graph.link_to(output_var_node, dequant_op_node)
        graph.link_to(scale_var_node, dequant_op_node)
        graph.link_to(weight_scale_node, dequant_op_node)
        graph.link_to(dequant_op_node, dequant_var_node)
1330
        self._op_output_rename_map[output_var_node.node] = dequant_var_node
1331 1332
        return dequant_var_node

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    def _insert_post_dequant_op(self, graph, op_node):
1334
        persistable_vars = [p.name() for p in graph.all_persistable_nodes()]
1335 1336 1337
        max_range = 1
        param_range = (1 << (self._weight_bits - 1)) - 1
        act_range = (1 << (self._activation_bits - 1)) - 1
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        for var_node in op_node.inputs:
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            name = var_node.name()
1340 1341 1342 1343 1344
            if name not in op_node.input_arg_names():
                continue
            if var_node.node in self._op_input_rename_map:
                old_in = var_node
                new_in = self._op_input_rename_map[var_node.node]
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                new_in.clear_outputs()
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                graph.update_input_link(old_in, new_in, op_node)
            original_var_name = self._original_var_name(name)
1348
            scale_v = self._quant_var_scale_map[original_var_name]
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            if original_var_name in persistable_vars:
                assert self._is_float(
1351 1352 1353 1354
                    scale_v
                ), 'The scale of parameter %s is not a float.' % (
                    original_var_name
                )
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                scale_v = 1e-8 if scale_v == 0.0 else scale_v
1356
                max_range *= param_range / scale_v
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            else:
1358
                max_range *= act_range
1359
                assert isinstance(scale_v, IrNode)
1360
                scale_var_node = self._quant_var_scale_map[original_var_name]
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1362
        if len(op_node.output_arg_names()) != 1:
1363 1364 1365 1366
            raise ValueError(
                "Only support one output, but op %s has"
                " more than one output." % (op_node.name())
            )
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1368
        output_var_node = graph._find_node_by_name(
1369 1370
            op_node.outputs, op_node.output_arg_names()[0]
        )
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        dequant_var_node = graph.create_var_node(
            name=self._dequantized_var_name(output_var_node.name()),
1373 1374
            var_type=output_var_node.type(),
            shape=output_var_node.shape(),
1375 1376
            var_dtype=output_var_node.dtype(),
        )
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1377 1378
        dequant_op_node = graph.create_op_node(
            op_type='fake_dequantize_max_abs',
1379 1380
            attrs={
                'max_range': float(max_range),
1381
                'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
1382
            },
1383 1384 1385
            inputs={'X': output_var_node, 'Scale': scale_var_node},
            outputs={'Out': dequant_var_node},
        )
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        graph.link_to(output_var_node, dequant_op_node)
        graph.link_to(scale_var_node, dequant_op_node)
        graph.link_to(dequant_op_node, dequant_var_node)
1389
        self._op_output_rename_map[output_var_node.node] = dequant_var_node
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        return dequant_var_node

    def _load_var(self, name):
        return np.array(self._scope.find_var(name).get_tensor())

1395 1396 1397
    def _restore_var(self, name, array):
        tensor = self._scope.find_var(name).get_tensor()
        tensor.set(array, self._place)
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    def _remove_unused_var_nodes(self, graph):
        all_used_vars = set()
1401
        ops = graph.all_op_nodes()
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        for op_node in ops:
            for input_node in op_node.inputs:
                all_used_vars.add(input_node)
            for output_node in op_node.outputs:
                all_used_vars.add(output_node)

1408 1409 1410
        all_used_vars = {n.node for n in all_used_vars}
        all_unused_vars = {
            n
1411 1412 1413 1414
            for n in filter(
                lambda node: node.node not in all_used_vars,
                graph.all_var_nodes(),
            )
1415
        }
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        graph.safe_remove_nodes(all_unused_vars)

    def _original_var_name(self, var_name):
        """
        Return the original variable name.
        """
        if var_name.endswith('.quantized.dequantized'):
1423
            return var_name[: -len('.quantized.dequantized')]
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        if var_name.endswith('.quantized'):
1425
            return var_name[: -len('.quantized')]
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1426
        if var_name.endswith('.dequantized'):
1427
            return var_name[: -len('.dequantized')]
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        if var_name.endswith('@scale'):
1429
            return var_name[: -len('@scale')]
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        else:
            return var_name

    def _dequantized_var_name(self, var_name):
        """
        Return dequantized variable name for the input `var_name`.
        """
        return "%s.dequantized" % (var_name)

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    def _is_float(self, v):
1440 1441 1442
        return (
            isinstance(v, float)
            or isinstance(v, np.float32)
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            or isinstance(v, np.float64)
1444
        )
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1446

1447
class ConvertToInt8Pass:
1448
    def __init__(self, scope, place, quantizable_op_type=None):
1449 1450 1451 1452 1453
        """
        Convert the weights into int8_t type.

        Args:
            scope(fluid.Scope): scope is used to get the weight tensor values.
1454 1455 1456
            place(fluid.CPUPlace|fluid.CUDAPlace|str): place is used to restore the
                8bits weight tensors. If it's string, It can be ``cpu``, and ``gpu:x``,
                where ``x`` is the index of the GPUs.
1457 1458
            quantizable_op_type(list[str]): This input param will be removed latter. The pass
                will process all quantized op, so it is not necessary to set the input param.
1459
        """
1460 1461
        assert scope is not None, 'The scope cannot be set None.'
        assert place is not None, 'The place cannot be set None.'
1462
        self._scope = scope
1463
        self._place = _get_paddle_place(place)
1464 1465

    def apply(self, graph):
1466
        """
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1467 1468
        Convert weights' type of the graph. After that, the data type of the
        graph weights is int8_t.
1469 1470 1471

        Args:
            graph(IrGraph): the applied graph.
1472 1473
        Returns:
            None
1474
        """
1475 1476
        persistable_vars = [p.name() for p in graph.all_persistable_nodes()]
        ops = graph.all_op_nodes()
1477 1478
        input_map = {}
        for op_node in ops:
1479 1480 1481 1482
            if (
                op_node.op().has_attr("quantization_type")
                and op_node.op().attr("quantization_type") == "qat_with_weight"
            ):
1483 1484 1485 1486
                for var_node in op_node.inputs:
                    name = var_node.name()
                    if name in persistable_vars:
                        if name not in input_map:
1487
                            int8_var_node = self._convert_to_int8(
1488 1489
                                graph, var_node
                            )
1490
                            input_map[name] = int8_var_node
1491 1492 1493
                        graph.update_input_link(
                            var_node, input_map[name], op_node
                        )
1494 1495 1496

        # remove the unused var node in the graph
        self._remove_unused_var_nodes(graph)
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        graph.resolve_hazard()
1498 1499 1500 1501
        return graph

    def _convert_to_int8(self, graph, var_node):
        int8_var_node_name = var_node.name() + ".int8"
1502
        int8_var_node = graph.create_persistable_node(
1503
            name=int8_var_node_name,
1504 1505
            var_type=var_node.type(),
            shape=var_node.shape(),
1506 1507
            var_dtype=core.VarDesc.VarType.INT8,
        )
1508 1509 1510 1511 1512 1513 1514 1515 1516 1517 1518 1519 1520 1521
        array = self._load_var(var_node.name())
        self._scope.var(int8_var_node_name)
        self._store_var(int8_var_node_name, array, np.int8)
        return int8_var_node

    def _load_var(self, name):
        return np.array(self._scope.find_var(name).get_tensor())

    def _store_var(self, name, array, dtype):
        tensor = self._scope.find_var(name).get_tensor()
        tensor.set(array.astype(dtype), self._place)

    def _remove_unused_var_nodes(self, graph):
        all_used_vars = set()
1522
        ops = graph.all_op_nodes()
1523 1524 1525 1526 1527 1528
        for op_node in ops:
            for input_node in op_node.inputs:
                all_used_vars.add(input_node)
            for output_node in op_node.outputs:
                all_used_vars.add(output_node)

1529 1530 1531
        all_used_vars = {n.node for n in all_used_vars}
        all_unused_vars = {
            n
1532 1533 1534 1535
            for n in filter(
                lambda node: node.node not in all_used_vars,
                graph.all_var_nodes(),
            )
1536
        }
1537 1538 1539
        graph.safe_remove_nodes(all_unused_vars)


1540
class TransformForMobilePass:
1541
    def __init__(self):
1542
        """
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1543
        This pass is used to convert the frozen graph for paddle-mobile execution.
1544
        """
1545 1546
        self._fake_quant_op_names = _fake_quant_op_list
        self._fake_dequant_op_names = _fake_dequant_op_list
1547 1548

    def apply(self, graph):
1549 1550 1551 1552 1553 1554 1555
        """
        Because paddle-mobile use `quantize` an `dequantize` as the names of
        quantize operator and dequantize operator, the `apply` function just
        realize this logic.

        Args:
            graph(IrGraph): the graph will be transformed.
1556 1557
        Returns:
            None
1558
        """
1559
        ops = graph.all_op_nodes()
1560 1561 1562
        for op_node in ops:
            name = op_node.name()
            if name in self._fake_quant_op_names:
1563
                op_node.set_type('quantize')
1564 1565 1566 1567 1568 1569 1570
                quant_node = graph.create_op_node_from_desc(op_node.op())
                for input_node in op_node.inputs:
                    graph.link_to(input_node, quant_node)
                for output_node in op_node.outputs:
                    graph.link_to(quant_node, output_node)
                graph.safe_remove_nodes(op_node)
            if name in self._fake_dequant_op_names:
1571
                op_node.set_type('dequantize')
1572 1573 1574 1575 1576 1577
                dequant_node = graph.create_op_node_from_desc(op_node.op())
                for input_node in op_node.inputs:
                    graph.link_to(input_node, dequant_node)
                for output_node in op_node.outputs:
                    graph.link_to(dequant_node, output_node)
                graph.safe_remove_nodes(op_node)
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1578
        graph.resolve_hazard()
1579
        return graph
1580 1581


1582
class OutScaleForTrainingPass:
1583 1584 1585 1586 1587 1588 1589 1590
    def __init__(
        self,
        scope=None,
        place=None,
        moving_rate=0.9,
        is_test=None,
        scale_dict=None,
    ):
1591 1592 1593 1594 1595 1596
        """
        This pass is used for calculating output scales of some operators.
        These output scales may be used by tensorRT or some other inference engines.

        Args:
            scope(fluid.Scope): The scope is used to initialize these new parameters.
1597 1598 1599
            place(fluid.CPUPlace|fluid.CUDAPlace|str): The place is used to initialize new parameters.
                If it's string, It can be ``cpu``, and ``gpu:x``, where ``x`` is the
                index of the GPUs.
1600 1601 1602
            moving_rate(float): The decay coefficient of moving average. The default value is 0.9.
        """
        self._scope = scope
1603
        self._place = _get_paddle_place(place)
1604
        self._moving_rate = moving_rate
1605
        self._is_test = is_test
1606
        self._teller_set = utils.QUANT_SUPPORTED_OP_TYPE_LIST
1607
        self._scale_dict = scale_dict
1608 1609 1610 1611 1612 1613 1614 1615 1616

    def apply(self, graph):
        """
        Insert the `moving_average_abs_max_scale` op in order to calculate output scales
        of operators in the teller_set.

        Args:
            graph(IrGraph): the target graph.
        """
1617 1618 1619
        assert isinstance(
            graph, IrGraph
        ), 'graph must be the instance of IrGraph.'
1620 1621
        if self._is_test is None:
            self._is_test = graph.is_test()
1622 1623 1624 1625
        target_ops = []
        for op in graph.all_op_nodes():
            if op.name() in self._teller_set:
                target_ops.append(op)
1626 1627 1628 1629 1630
        with tqdm(
            total=len(target_ops),
            bar_format='Adding OutScale op:|{bar}| {n_fmt}/{total_fmt}',
            ncols=80,
        ) as t:
1631 1632
            for op in target_ops:
                for output_var_name in utils._get_op_output_var_names(op):
1633 1634 1635 1636 1637 1638 1639
                    in_node = graph._find_node_by_name(
                        op.outputs, output_var_name
                    )
                    if in_node.dtype() not in [
                        core.VarDesc.VarType.FP64,
                        core.VarDesc.VarType.FP32,
                    ]:
1640
                        continue
1641

1642 1643 1644 1645 1646
                    data_type = (
                        'float64'
                        if in_node.dtype() == core.VarDesc.VarType.FP64
                        else 'float32'
                    )
1647
                    try:
1648
                        graph._find_node_by_name(
1649
                            graph.all_var_nodes(),
1650 1651
                            self._scale_name(in_node.name()),
                        )
1652
                        continue
1653 1654 1655 1656 1657
                    except:
                        scale_node = graph.create_persistable_node(
                            name=self._scale_name(in_node.name()),
                            var_type=core.VarDesc.VarType.LOD_TENSOR,
                            shape=[1],
1658 1659
                            var_dtype=in_node.dtype(),
                        )
1660 1661 1662
                        if self._scale_dict is not None:
                            try:
                                scale_value = np.array(
1663 1664
                                    [self._scale_dict[in_node.name()]]
                                )
1665 1666 1667 1668
                            except:
                                scale_value = np.ones([1], dtype=data_type)
                        else:
                            scale_value = np.ones([1], dtype=data_type)
1669 1670 1671
                    _init_var_node(
                        scale_node, scale_value, self._scope, self._place
                    )
1672

1673 1674 1675 1676 1677 1678 1679
                    ins = {'X': in_node}
                    outs = {'OutScale': scale_node}
                    if not self._is_test:
                        state_in_node = graph.create_persistable_node(
                            name=unique_name.generate('scale_state@'),
                            var_type=core.VarDesc.VarType.LOD_TENSOR,
                            var_dtype=in_node.dtype(),
1680 1681 1682 1683 1684 1685 1686 1687
                            shape=[1],
                        )
                        _init_var_node(
                            state_in_node,
                            np.ones([1], dtype=data_type),
                            self._scope,
                            self._place,
                        )
1688 1689 1690 1691
                        accum_in_node = graph.create_persistable_node(
                            name=unique_name.generate('scale_accum@'),
                            var_type=core.VarDesc.VarType.LOD_TENSOR,
                            var_dtype=in_node.dtype(),
1692 1693 1694 1695 1696 1697 1698 1699
                            shape=[1],
                        )
                        _init_var_node(
                            accum_in_node,
                            np.ones([1], dtype=data_type),
                            self._scope,
                            self._place,
                        )
1700
                        state_out_node = graph.create_var_node_from_desc(
1701 1702
                            state_in_node.var()
                        )
1703
                        accum_out_node = graph.create_var_node_from_desc(
1704 1705
                            accum_in_node.var()
                        )
1706 1707 1708 1709 1710 1711 1712 1713 1714

                        ins['InState'] = state_in_node
                        ins['InAccum'] = accum_in_node
                        outs['OutState'] = state_out_node
                        outs['OutAccum'] = accum_out_node

                    attrs = {
                        'moving_rate': self._moving_rate,
                        'is_test': self._is_test,
1715
                        'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
1716 1717 1718 1719 1720
                    }
                    scale_op_node = graph.create_op_node(
                        op_type='moving_average_abs_max_scale',
                        attrs=attrs,
                        inputs=ins,
1721 1722
                        outputs=outs,
                    )
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1723 1724 1725 1726 1727

                    next_op_node = None
                    if len(in_node.outputs) > 0:
                        next_op_node = in_node.outputs[0]

1728 1729
                    graph.link_to(in_node, scale_op_node)
                    graph.link_to(scale_op_node, scale_node)
C
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1730 1731 1732
                    if next_op_node:
                        graph.link_to(scale_node, next_op_node)

1733 1734 1735 1736 1737 1738
                    if not self._is_test:
                        graph.link_to(state_in_node, scale_op_node)
                        graph.link_to(accum_in_node, scale_op_node)
                        graph.link_to(scale_op_node, state_out_node)
                        graph.link_to(scale_op_node, accum_out_node)
                t.update()
1739 1740 1741 1742 1743 1744
        return graph

    def _scale_name(self, var_name):
        """
        Return the scale name for the var named `var_name`.
        """
1745
        return "%s@scale" % (var_name)
1746 1747


1748
class OutScaleForInferencePass:
1749 1750 1751 1752 1753 1754 1755 1756 1757
    def __init__(self, scope=None):
        """
        This pass is used for setting output scales of some operators.
        These output scales may be used by tensorRT or some other inference engines.

        Args:
            scope(fluid.Scope): The scope is used to initialize these new parameters.
        """
        self._scope = scope
1758
        self._teller_set = utils.QUANT_SUPPORTED_OP_TYPE_LIST
1759 1760 1761 1762 1763 1764 1765 1766 1767

    def apply(self, graph):
        """
        Get output scales from the scope and set these scales in op_descs
        of operators in the teller_set.

        Args:
            graph(IrGraph): the target graph.
        """
1768 1769 1770
        assert isinstance(
            graph, IrGraph
        ), 'graph must be the instance of IrGraph.'
1771 1772 1773
        op_nodes = graph.all_op_nodes()
        for op_node in op_nodes:
            if op_node.name() in self._teller_set:
1774
                var_names = utils._get_op_output_var_names(op_node)
1775
                for var_name in var_names:
1776 1777 1778 1779 1780 1781 1782
                    in_node = graph._find_node_by_name(
                        op_node.outputs, var_name
                    )
                    if in_node.dtype() not in [
                        core.VarDesc.VarType.FP64,
                        core.VarDesc.VarType.FP32,
                    ]:
1783 1784
                        continue

1785
                    scale_name = self._scale_name(var_name)
1786
                    scale_var = self._scope.find_var(scale_name)
1787 1788 1789 1790 1791
                    assert (
                        scale_var is not None
                    ), "Can not find {} variable in the scope".format(
                        scale_name
                    )
1792 1793 1794 1795
                    scale_value = np.array(scale_var.get_tensor())[0]

                    # For compatibility, we save output threshold by two methods.
                    op_node.op()._set_attr("out_threshold", float(scale_value))
1796

1797
                    argname_index = utils._get_output_name_index(
1798 1799 1800
                        op_node, var_name
                    )
                    assert argname_index is not None, (
1801
                        var_name + " is not the output of the op"
1802 1803 1804 1805 1806
                    )
                    op_node.op()._set_attr(
                        argname_index[0] + str(argname_index[1]) + "_threshold",
                        float(scale_value),
                    )
1807
                    op_node.op()._set_attr("with_quant_attr", True)
1808 1809 1810 1811 1812 1813 1814
        graph.resolve_hazard()
        return graph

    def _scale_name(self, var_name):
        """
        Return the scale name for the var named `var_name`.
        """
1815
        return "%s@scale" % (var_name)
1816 1817


1818
class AddQuantDequantPass:
1819
    """
1820
    Quantize the ops that do not have weights, and add quant_dequant op for the
1821 1822
    quantized ops's inputs.
    """
1823

1824 1825 1826
    # To be compatible with PaddleSlim, not remove _activation_type for now
    _activation_type = ["relu", "relu6", "leaky_relu", "tanh", "swish"]

1827 1828 1829 1830 1831 1832 1833 1834 1835 1836 1837 1838
    def __init__(
        self,
        scope=None,
        place=None,
        moving_rate=0.9,
        quant_bits=8,
        skip_pattern=["skip_quant"],
        quantizable_op_type=["elementwise_add", "pool2d"],
        is_full_quantized=False,
        is_test=None,
        scale_dict=None,
    ):
1839
        """
1840
        Constructor.
1841 1842 1843

        Args:
            scope(fluid.Scope): The scope is used to initialize these new parameters.
1844 1845 1846
            place(fluid.CPUPlace|fluid.CUDAPlace|str): place is used to initialize new
                parameters described above. If ``place`` is string, it can be It can be ``cpu``
                or ``gpu:x``, where ``x`` is the index of the GPUs.
1847
            moving_rate(float, optional): the param for 'quant_dequant_moving_average_abs_max'
1848 1849 1850 1851 1852 1853
                quantization. Default is 0.9.
            quant_bits(int, optional): quantization bit number for activation. Default is 8.
            skip_pattern(str, optional): The user-defined quantization skip pattern, which
                will be presented in the name scope of an op. When the skip pattern is
                detected in an op's name scope, the corresponding op will not be quantized.
                Default is 'skip_quant'.
1854 1855 1856
            quantizable_op_type(list[str], optional): List the type of ops that will be
                quantized. Default is ["elementwise_add", "pool2d"].
            is_full_quantized(bool, optional): If set is_full_quantized as True, apply
1857
                quantization to all supported quantizable op type. If set is_full_quantized
1858
                as False, only apply quantization to the op type according to the input
1859
                quantizable_op_type.
1860 1861
        """
        self._scope = scope
1862
        self._place = _get_paddle_place(place)
1863 1864
        self._moving_rate = moving_rate
        self._quant_bits = quant_bits
1865
        self._is_test = is_test
1866
        self._skip_pattern = skip_pattern
1867
        self._scale_dict = scale_dict
1868 1869

        if is_full_quantized:
1870
            self._quantizable_op_type = utils._act_supported_quantizable_op_type
1871 1872 1873
        else:
            self._quantizable_op_type = quantizable_op_type
            for op_type in quantizable_op_type:
1874
                assert op_type in utils._act_supported_quantizable_op_type, (
1875
                    op_type + " is not supported for quantization."
1876
                )
1877 1878 1879 1880
        self._quantizable_grad_op_type = [
            '%s_grad' % (op) for op in self._quantizable_op_type
        ]

1881 1882
        assert self._scope is not None, "scope must not be None."
        assert self._place is not None, "place must not be None."
1883 1884 1885

    def apply(self, graph):
        """
1886 1887
        Add quant_dequant before some ops, such as the 'elementwise_add' and
        'pool2d' op.
1888

1889 1890
        Args:
            graph(IrGraph): the target graph.
1891 1892
        Returns:
            None
1893
        """
1894 1895 1896
        assert isinstance(
            graph, IrGraph
        ), 'graph must be the instance of IrGraph.'
1897 1898
        if self._is_test is None:
            self._is_test = graph.is_test()
1899 1900
        dequantized_vars_map = collections.OrderedDict()

1901 1902
        # Forward stage, insert quant_dequant op
        all_op_nodes = graph.all_op_nodes()
1903 1904 1905 1906 1907
        with tqdm(
            total=len(all_op_nodes),
            bar_format='Adding quant activation op:|{bar}| {n_fmt}/{total_fmt}',
            ncols=80,
        ) as t:
1908 1909 1910 1911
            for op_node in all_op_nodes:
                if op_node.name() in self._quantizable_op_type:
                    is_skip = False
                    if isinstance(self._skip_pattern, list):
1912 1913 1914 1915
                        is_skip = op_node.op().has_attr("op_namescope") and any(
                            pattern in op_node.op().attr("op_namescope")
                            for pattern in self._skip_pattern
                        )
1916
                    elif isinstance(self._skip_pattern, str):
1917 1918 1919 1920 1921 1922 1923 1924 1925 1926 1927 1928 1929 1930 1931 1932 1933
                        is_skip = (
                            op_node.op().has_attr("op_namescope")
                            and op_node.op()
                            .attr("op_namescope")
                            .find(self._skip_pattern)
                            != -1
                        )
                    is_quantized = (
                        op_node.op().has_attr("quantization_type")
                        and op_node.op().attr("quantization_type")
                        == "qat_with_weight"
                    )
                    if (
                        is_skip
                        or is_quantized
                        or (not _is_input_all_not_persistable(graph, op_node))
                    ):
1934
                        continue
1935

1936 1937 1938
                    op_node.op()._set_attr(
                        "quantization_type", "qat_without_weight"
                    )
1939 1940 1941 1942 1943
                    op_node.op()._set_attr("activation_bits", self._quant_bits)
                    op_node.op()._set_attr("with_quant_attr", True)
                    arg_names = utils._get_op_input_var_names(op_node)
                    for arg_name in arg_names:
                        in_node = graph._find_node_by_name(
1944 1945
                            op_node.inputs, arg_name
                        )
1946 1947 1948
                        if arg_name in dequantized_vars_map:
                            quant_var_node = dequantized_vars_map[arg_name]
                        else:
1949 1950 1951 1952 1953 1954
                            (
                                quant_var_node,
                                _,
                            ) = self._inser_quant_dequant_moving_average_abs_max_op(
                                graph, in_node, self._quant_bits
                            )
1955
                            dequantized_vars_map[arg_name] = quant_var_node
1956 1957 1958
                        graph.update_input_link(
                            in_node, quant_var_node, op_node
                        )
1959
                t.update()
1960

1961 1962
        # Backward stage, update input link
        for op_node in all_op_nodes:
1963
            if op_node.name() in self._quantizable_grad_op_type:
1964 1965
                for input_name in op_node.input_arg_names():
                    if input_name in dequantized_vars_map:
1966
                        in_node = graph._find_node_by_name(
1967 1968
                            op_node.inputs, input_name
                        )
1969
                        dequant_var_node = dequantized_vars_map[input_name]
1970 1971 1972
                        graph.update_input_link(
                            in_node, dequant_var_node, op_node
                        )
1973

1974 1975 1976
        graph.resolve_hazard()
        return graph

1977 1978 1979 1980 1981 1982 1983 1984 1985 1986
    def _inser_quant_dequant_moving_average_abs_max_op(
        self, graph, var_node, quant_bits
    ):
        """Insert fake_quantize_dequantize_moving_average_abs_max op."""
        quant_var_node = graph.create_var_node(
            name="{}.quant_dequant".format(var_node.name()),
            var_type=var_node.type(),
            shape=var_node.shape(),
            var_dtype=var_node.dtype(),
        )
1987
        scale_name = "{}.quant_dequant@scale".format(var_node.name())
1988 1989 1990 1991 1992
        data_type = (
            'float64'
            if var_node.dtype() == core.VarDesc.VarType.FP64
            else 'float32'
        )
1993
        try:
1994 1995 1996 1997 1998 1999 2000
            if (
                self._scale_dict is not None
                and var_node.name() in self._scale_dict.keys()
            ):
                scale_value = np.array(
                    [self._scale_dict[var_node.name()]], dtype=data_type
                )
2001 2002 2003
            else:
                scale_value = np.array(
                    self._scope.find_var(scale_name).get_tensor(),
2004 2005
                    dtype=data_type,
                )
2006 2007 2008
        except:
            scale_value = np.array([_SCALE_DEFAULT_VALUE], dtype=data_type)

2009
        scale_in_node = graph.create_persistable_node(
H
handiz 已提交
2010
            name="{}.quant_dequant@scale".format(var_node.name()),
2011 2012
            var_type=core.VarDesc.VarType.LOD_TENSOR,
            shape=[1],
2013 2014
            var_dtype=var_node.dtype(),
        )
2015

2016
        _init_var_node(scale_in_node, scale_value, self._scope, self._place)
2017 2018 2019 2020 2021 2022 2023 2024
        scale_out_node = graph.create_var_node_from_desc(scale_in_node.var())
        ins = {'X': var_node, 'InScale': scale_in_node}
        outs = {'Out': quant_var_node, 'OutScale': scale_out_node}
        if not self._is_test:
            state_in_node = graph.create_persistable_node(
                name=unique_name.generate('quant_dequant.state'),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
                var_dtype=var_node.dtype(),
2025 2026 2027 2028 2029 2030 2031 2032 2033 2034 2035 2036 2037
                shape=[1],
            )
            data_type = (
                'float64'
                if var_node.dtype() == core.VarDesc.VarType.FP64
                else 'float32'
            )
            _init_var_node(
                state_in_node,
                np.ones([1], dtype=data_type),
                self._scope,
                self._place,
            )
2038 2039 2040 2041
            accum_in_node = graph.create_persistable_node(
                name=unique_name.generate('quant_dequant.accum'),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
                var_dtype=var_node.dtype(),
2042 2043 2044 2045 2046 2047 2048 2049
                shape=[1],
            )
            _init_var_node(
                accum_in_node,
                np.ones([1], dtype=data_type),
                self._scope,
                self._place,
            )
2050
            state_out_node = graph.create_var_node_from_desc(
2051 2052
                state_in_node.var()
            )
2053
            accum_out_node = graph.create_var_node_from_desc(
2054 2055
                accum_in_node.var()
            )
2056 2057 2058 2059 2060 2061 2062 2063 2064 2065

            ins['InState'] = state_in_node
            ins['InAccum'] = accum_in_node
            outs['OutState'] = state_out_node
            outs['OutAccum'] = accum_out_node

        attrs = {
            'bit_length': quant_bits,
            'moving_rate': self._moving_rate,
            'is_test': self._is_test,
2066
            'op_role': core.op_proto_and_checker_maker.OpRole.Forward,
2067 2068 2069 2070 2071 2072
        }

        quant_op_node = graph.create_op_node(
            op_type='fake_quantize_dequantize_moving_average_abs_max',
            attrs=attrs,
            inputs=ins,
2073 2074
            outputs=outs,
        )
2075 2076 2077 2078 2079 2080 2081 2082 2083 2084 2085 2086 2087

        graph.link_to(var_node, quant_op_node)
        graph.link_to(scale_in_node, quant_op_node)
        graph.link_to(quant_op_node, quant_var_node)
        graph.link_to(quant_op_node, scale_out_node)

        if not self._is_test:
            graph.link_to(state_in_node, quant_op_node)
            graph.link_to(accum_in_node, quant_op_node)
            graph.link_to(quant_op_node, state_out_node)
            graph.link_to(quant_op_node, accum_out_node)

        return quant_var_node, scale_out_node
2088 2089


2090
class InsertQuantizeLinear:
2091 2092 2093 2094 2095 2096 2097 2098 2099 2100 2101 2102
    """
    Insert quantize_linear and dequantize_linear op before ops.

    Args:
        place(paddle.CPUPlace|paddle.CUDAPlace|str): place is used to restore the weight tensors.
            If it's string, It can be ``cpu``, and ``gpu:x``, where ``x`` is the index of the GPUs.
        scope(paddle.Scope): scope is used to get the weight tensor values.
        quant_bits(int, optional): quantization bit number for weight. Default is 8.
        quant_axis(int, optional): quantization dimension of channels. When it is greater than or
            equal to 0, it will quantization with per channel, else quantization with per layer.
            Default is -1.
        channel_wise(bool, optional): Whether quantization with per channel or not. Default is False.
2103
        moving_rate(float): the rate for 'moving average' method.
2104
        is_test(bool, optional): Whether quantization with training or not. Default is True.
2105
        scale_dict(dict, optional): calibration ranges of tensors output.
2106 2107
    """

2108 2109 2110 2111 2112 2113 2114 2115 2116 2117 2118
    def __init__(
        self,
        place,
        scope,
        quant_bits=8,
        quant_axis=-1,
        channel_wise=False,
        moving_rate=0.9,
        is_test=True,
        scale_dict=None,
    ):
2119 2120 2121 2122 2123 2124
        self._place = place
        self._scope = scope
        self.quant_bits = quant_bits
        self.quant_axis = quant_axis
        self.channel_wise = channel_wise
        self._is_test = is_test
2125
        self._moving_rate = moving_rate
2126
        self._scale_dict = scale_dict
2127

2128
    def insert_quant_op(self, graph, var_node, var_name=None):
2129
        assert var_node.is_var(), '{} is not a var'.format(var_node.name())
2130 2131 2132 2133 2134
        var_name = var_node.name() if not var_name else var_name
        quant_var_node = graph.create_var_node(
            name=self._quantized_var_name(var_name),
            var_type=var_node.type(),
            shape=var_node.shape(),
2135 2136 2137 2138 2139 2140 2141
            var_dtype=var_node.dtype(),
        )
        data_type = (
            'float64'
            if var_node.dtype() == core.VarDesc.VarType.FP64
            else 'float32'
        )
2142
        scale_name = self._quantized_scale_name(var_name)
2143 2144 2145
        if self.channel_wise:
            scale_var_shape = var_node.shape()[self.quant_axis]
            scale_var_type = core.VarDesc.VarType.LOD_TENSOR
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            init_scale_value = (
                np.ones(scale_var_shape, dtype=data_type) * _SCALE_DEFAULT_VALUE
            )
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        else:
            scale_var_shape = 1
            scale_var_type = var_node.type()
            init_scale_value = np.array([_SCALE_DEFAULT_VALUE], dtype=data_type)
2153

2154 2155 2156 2157 2158 2159 2160
        if (
            self._scale_dict is not None
            and var_node.name() in self._scale_dict.keys()
        ):
            init_scale_value = np.array(
                [self._scale_dict[var_node.name()]], dtype=data_type
            )
2161

2162
        scale_var_node = graph.create_persistable_node(
2163
            name=scale_name,
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            var_type=scale_var_type,
            shape=[scale_var_shape],
2166 2167 2168 2169 2170
            var_dtype=var_node.dtype(),
        )
        _init_var_node(
            scale_var_node, init_scale_value, self._scope, self._place
        )
2171 2172 2173 2174 2175 2176 2177

        zero_point_node = None
        if zero_point_node is None:
            zero_point_node = graph.create_persistable_node(
                name=self._zero_point_name(quant_var_node.name()),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
                shape=scale_var_node.shape(),
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                var_dtype=core.VarDesc.VarType.INT32,
            )
            _init_var_node(
                zero_point_node,
                np.zeros(scale_var_node.shape(), dtype="int32"),
                self._scope,
                self._place,
            )
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        inputs = {"X": var_node, "Scale": scale_var_node}
        if zero_point_node is not None:
            inputs["ZeroPoint"] = zero_point_node

2191
        attrs = {"quant_axis": self.quant_axis, "bit_length": self.quant_bits}
2192
        attrs["op_role"] = core.op_proto_and_checker_maker.OpRole.Forward
2193 2194
        outputs = {"Y": quant_var_node}
        if not self._is_test:
2195
            scale_out_node = graph.create_var_node_from_desc(
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                scale_var_node.var()
            )
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            state_in_node = graph.create_persistable_node(
                name=unique_name.generate('state'),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
                var_dtype=var_node.dtype(),
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                shape=[1],
            )
            data_type = (
                'float64'
                if var_node.dtype() == core.VarDesc.VarType.FP64
                else 'float32'
            )
            _init_var_node(
                state_in_node,
                np.ones([1], dtype=data_type),
                self._scope,
                self._place,
            )
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            accum_in_node = graph.create_persistable_node(
                name=unique_name.generate('accum'),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
                var_dtype=var_node.dtype(),
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                shape=[1],
            )
            _init_var_node(
                accum_in_node,
                np.ones([1], dtype=data_type),
                self._scope,
                self._place,
            )
2227
            state_out_node = graph.create_var_node_from_desc(
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                state_in_node.var()
            )
2230
            accum_out_node = graph.create_var_node_from_desc(
2231 2232
                accum_in_node.var()
            )
2233

2234
            outputs["OutScale"] = scale_out_node
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            inputs['InState'] = state_in_node
            inputs['InAccum'] = accum_in_node
            outputs['OutState'] = state_out_node
            outputs['OutAccum'] = accum_out_node
            attrs["is_test"] = self._is_test
            attrs['moving_rate'] = self._moving_rate
2241

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        quant_op_node = graph.create_op_node(
            op_type="quantize_linear",
            attrs=attrs,
            inputs=inputs,
            outputs=outputs,
        )
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        graph.link_to(var_node, quant_op_node)
        graph.link_to(scale_var_node, quant_op_node)
        if zero_point_node is not None:
            graph.link_to(zero_point_node, quant_op_node)
        graph.link_to(quant_op_node, quant_var_node)
        if not self._is_test:
2255 2256 2257 2258
            graph.link_to(state_in_node, quant_op_node)
            graph.link_to(accum_in_node, quant_op_node)
            graph.link_to(quant_op_node, state_out_node)
            graph.link_to(quant_op_node, accum_out_node)
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            graph.link_to(quant_op_node, scale_out_node)
        return quant_var_node, scale_var_node

    def insert_dequant_op(self, graph, var_node, scale_var_node):
        assert var_node.is_var(), '{} is not a var'.format(var_node.name())

        dequant_var_node = graph.create_var_node(
            name=self._dequantized_var_name(var_node.name()),
            var_type=var_node.type(),
            shape=var_node.shape(),
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            var_dtype=var_node.dtype(),
        )
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        zero_point_node = None
        if zero_point_node is None:
            zero_point_node = graph.create_persistable_node(
                name=self._zero_point_name(dequant_var_node.name()),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
                shape=scale_var_node.shape(),
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                var_dtype=core.VarDesc.VarType.INT32,
            )
            _init_var_node(
                zero_point_node,
                np.zeros(scale_var_node.shape(), dtype="int32"),
                self._scope,
                self._place,
            )
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        inputs = {"X": var_node, "Scale": scale_var_node}
        if zero_point_node is not None:
            inputs["ZeroPoint"] = zero_point_node

        attrs = {"quant_axis": self.quant_axis, "bit_length": self.quant_bits}
2292
        attrs["op_role"] = core.op_proto_and_checker_maker.OpRole.Forward
2293

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        quant_op_node = graph.create_op_node(
            op_type="dequantize_linear",
            attrs=attrs,
            inputs=inputs,
            outputs={"Y": dequant_var_node},
        )
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        graph.link_to(var_node, quant_op_node)
        graph.link_to(scale_var_node, quant_op_node)
        if zero_point_node is not None:
            graph.link_to(zero_point_node, quant_op_node)
        graph.link_to(quant_op_node, dequant_var_node)
        return dequant_var_node

    def _quantized_var_name(self, var_name):
        """
        Return quantized variable name for the input `var_name`.
        """
        return "%s.quantized" % (var_name)

    def _dequantized_var_name(self, var_name):
        """
        Return dequantized variable name for the input `var_name`.
        """
        return "%s.dequantized" % (var_name)

    def _quantized_scale_name(self, var_name):
        """
        Return the scale name of quantized variable for the input `var_name`.
        """
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2324
        return "%s@scale" % (var_name)
2325 2326 2327 2328 2329 2330 2331 2332

    def _zero_point_name(self, var_name):
        """
        Return the scale name for the var named `var_name`.
        """
        return "%s@zero_point" % (var_name)


2333
class QuantizationTransformPassV2(QuantizationTransformPass):
2334 2335
    """
    Quantize the ops that have weights. Add quant and dequant ops for
2336
    the quantized ops's inputs. It is used in the new format of quantization.
2337 2338
    """

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    def __init__(
        self,
        scope=None,
        place=None,
        weight_bits=8,
        activation_bits=8,
        activation_quantize_type='abs_max',
        weight_quantize_type='abs_max',
        window_size=10000,
        moving_rate=0.9,
        skip_pattern=['skip_quant'],
        quantizable_op_type=['conv2d', 'depthwise_conv2d', 'mul'],
        weight_quantize_func=None,
        act_quantize_func=None,
        weight_preprocess_func=None,
        act_preprocess_func=None,
        optimizer_func=None,
        executor=None,
        is_test=None,
    ):
2359 2360 2361 2362 2363 2364 2365
        r"""
        Args:
            scope(paddle.Scope): When activation use 'range_abs_max' as the quantize
                type, this pass will create some new parameters. The scope is used to
                initialize these new parameters.
            place(paddle.CPUPlace|paddle.CUDAPlace|str): place is used to initialize new
                parameters described above. If it's string, It can be ``cpu``, and ``gpu:x``,
2366
                where ``x`` is the index of the GPUs.
2367 2368 2369 2370 2371 2372 2373 2374 2375 2376 2377 2378 2379 2380 2381 2382 2383
            weight_bits(int): quantization bit number for weights,
                the bias is not quantized.
            activation_bits(int): quantization bit number for activation.
            activation_quantize_type(str): quantization type for activation,
                now support 'abs_max', 'range_abs_max' and 'moving_average_abs_max'.
                If use 'abs_max' mode, the quantization scale will be calculated
                dynamically each step in both training and testing period. If use
                'range_abs_max', a static quantization scale will be calculated
                during training and used in inference.
            weight_quantize_type(str): quantization type for weights,
                support 'abs_max' and 'channel_wise_abs_max'. The 'range_abs_max'
                usually is not used for weight, since weights are fixed once the
                model is well trained.
            window_size(int): the window size for 'range_abs_max' quantization.
            moving_rate(float): the param for 'moving_average_abs_max' quantization.
            skip_pattern(str or str list): The user-defined quantization skip pattern, which
                will be presented in the name scope of an op. When the skip pattern is
2384 2385
                detected in an op's name scope, the corresponding op will not be quantized.
            quantizable_op_type(list[str]): List the type of ops that will be quantized.
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                Default is ["conv2d", "depthwise_conv2d", "mul"]. The quantizable_op_type in
                QuantizationFreezePass and ConvertToInt8Pass must be the same as this.
            weight_quantize_func(function): Function that defines how to quantize weight.
                Using this can quickly test if user's quantization method works or not.
                In this function, user should both define quantization function and
                dequantization function, that is, the function's input is non-quantized
                weight and function returns dequantized weight. If None, will use
                quantization op defined by 'weight_quantize_type'. Default is None.
            act_quantize_func(function): Function that defines how to quantize activation.
                Using this can quickly test if user's quantization method works or not.
                In this function, user should both define quantization and dequantization
                process, that is, the function's input is non-quantized activation and
                function returns dequantized activation. If None, will use quantization
                op defined by 'activation_quantize_type'. Default is None.
            weight_preprocess_func(function): Function that defines how to preprocess
                weight before quantization. Using this can quickly test if user's preprocess
                method works or not. The function's input is non-quantized weight and
                function returns processed weight to be quantized. If None, the weight will
                be quantized directly. Default is None.
            act_preprocess_func(function): Function that defines how to preprocess
                activation before quantization. Using this can quickly test if user's
                preprocess method works or not. The function's input is non-quantized
                activation and function returns processed activation to be quantized.
                If None, the activation will be quantized directly. Default is None.
            optimizer_func(function): Fuction return a optimizer. When 'is_test' is
                False and user want to use self-defined quantization function and
                preprocess function, this function must be set. Default is None.
            executor(paddle.Executor): If user want to use self-defined quantization
                function and preprocess function, executor must be set for initialization.
                Default is None.

        Examples:
        .. code-block:: python
            # The original graph will be rewrite.
            import paddle
            from paddle.fluid.contrib.slim.quantization \
                import QuantizationTransformPassV2
            from paddle.fluid.contrib.slim.graph import IrGraph
            from paddle.fluid import core

            graph = IrGraph(core.Graph(program.desc), for_test=False)
            place = paddle.CPUPlace()
            scope = paddle.static.global_scope()
            transform_pass = QuantizationTransformPassV2(scope, place)
            transform_pass.apply(graph)
        """
        self._scope = scope
        self._place = _get_paddle_place(place)
        self._weight_bits = weight_bits
        self._activation_bits = activation_bits
        self._skip_pattern = skip_pattern
        self._weight_quantize_func = weight_quantize_func
        self._act_quantize_func = act_quantize_func
        self._weight_preprocess_func = weight_preprocess_func
        self._act_preprocess_func = act_preprocess_func
        self._optimizer = optimizer_func
        self._exe = executor
        quant_type = [
2444 2445 2446 2447
            'abs_max',
            'channel_wise_abs_max',
            'range_abs_max',
            'moving_average_abs_max',
2448
        ]
2449 2450 2451
        assert (
            activation_quantize_type != 'channel_wise_abs_max'
        ), "The activation quantization type does not support 'channel_wise_abs_max'."
2452 2453 2454
        if activation_quantize_type not in quant_type:
            raise ValueError(
                "Unknown activation_quantize_type : '%s'. It can only be "
2455 2456 2457
                "'abs_max' or 'range_abs_max' or 'moving_average_abs_max'."
                % (str(activation_quantize_type))
            )
2458 2459 2460 2461
        if weight_quantize_type not in quant_type:
            raise ValueError(
                "Unknown weight_quantize_type: '%s'. It can only be "
                "'abs_max' or 'channel_wise_abs_max' or 'range_abs_max' "
2462 2463
                "or 'moving_average_abs_max'." % (str(weight_quantize_type))
            )
2464 2465 2466 2467 2468 2469 2470 2471

        self._activation_quantize_type = activation_quantize_type
        self._weight_quantize_type = weight_quantize_type
        self._window_size = window_size
        self._moving_rate = moving_rate

        self._quantizable_ops = quantizable_op_type
        for op in self._quantizable_ops:
2472
            assert op in utils._weight_supported_quantizable_op_type, (
2473
                op + " is not supported for quantization."
2474
            )
2475 2476 2477
        self._quantizable_grad_ops = [
            '%s_grad' % (op) for op in self._quantizable_ops
        ]
2478
        self._is_test = is_test
2479 2480 2481 2482 2483 2484 2485 2486
        self._global_step = None

        self.create_var_map = {}
        self.create_op_map = {}

    def _quant_preprocess(self, op_node):
        user_skipped = False
        if isinstance(self._skip_pattern, list):
2487 2488 2489 2490
            user_skipped = op_node.op().has_attr("op_namescope") and any(
                pattern in op_node.op().attr("op_namescope")
                for pattern in self._skip_pattern
            )
2491
        elif isinstance(self._skip_pattern, str):
2492 2493 2494 2495 2496
            user_skipped = (
                op_node.op().has_attr("op_namescope")
                and op_node.op().attr("op_namescope").find(self._skip_pattern)
                != -1
            )
2497 2498 2499 2500 2501 2502 2503 2504 2505 2506 2507 2508 2509 2510 2511 2512 2513

        if user_skipped:
            op_node.op()._set_attr("skip_quant", True)
            op_node.op()._set_attr("with_quant_attr", True)

    def _transform_forward(self, graph, op):
        op.op()._set_attr("quantization_type", "qat_with_weight")
        inputs = op.inputs
        for var_node in inputs:
            if var_node.name() not in op.input_arg_names():
                continue
            if var_node.name() in self.dequantized_vars:
                dequant_var_node = self.dequantized_vars[var_node.name()]
            else:
                name = var_node.name()
                if name in self.processed_vars:
                    continue
2514 2515 2516
                is_weight = (
                    True if var_node.name() in self.persistable_vars else False
                )
2517 2518

                # if var node is weight and weight_preprocess_func is not None,
2519
                # will insert weight preprocess func
2520
                # to preorocess weight before quantization
2521 2522
                # if var node is activation and act_preprocess_func is not None,
                # will insert activation preprocess func
2523 2524
                # to preorocess activation before quantization
                if is_weight and self._weight_preprocess_func is not None:
2525 2526 2527
                    var_node = self._insert_func(
                        graph, self._weight_preprocess_func, var_node, op
                    )
2528
                elif not is_weight and self._act_preprocess_func is not None:
2529 2530 2531
                    var_node = self._insert_func(
                        graph, self._act_preprocess_func, var_node, op
                    )
2532 2533 2534 2535 2536 2537 2538

                # if var node is weight and weight_quantize_func is not None,
                # will insert weight quantize func to quantize and dequantize weight
                # if var node is activation and act_quantize_func is not None,
                # will insert act quantize func to quantize and dequantize activation
                if is_weight and self._weight_quantize_func is not None:
                    target_out_node = self._insert_func(
2539 2540
                        graph, self._weight_quantize_func, var_node, op
                    )
2541
                    self.processed_vars.append(name)
2542 2543
                    continue
                elif not is_weight and self._act_quantize_func is not None:
2544 2545 2546
                    target_out_node = self._insert_func(
                        graph, self._act_quantize_func, var_node, op
                    )
2547
                    self.processed_vars.append(name)
2548 2549
                    continue

2550 2551 2552
                quant_bits = (
                    self._weight_bits
                    if var_node.name() in self.persistable_vars
2553
                    else self._activation_bits
2554 2555 2556 2557
                )
                quant_type = (
                    self._weight_quantize_type
                    if is_weight
2558
                    else self._activation_quantize_type
2559
                )
2560 2561 2562 2563
                quant_axis = -1
                channel_wise = False
                if quant_type == 'channel_wise_abs_max':  # Weight quantization
                    channel_wise = True
2564 2565 2566 2567 2568
                    quant_axis = (
                        1
                        if op.name() in utils._channelwise_quant_axis1_ops
                        else 0
                    )
2569 2570 2571 2572 2573 2574
                insert_quant_pass = InsertQuantizeLinear(
                    self._place,
                    self._scope,
                    quant_bits=quant_bits,
                    quant_axis=quant_axis,
                    channel_wise=channel_wise,
2575
                    moving_rate=self._moving_rate,
2576 2577 2578 2579 2580 2581 2582 2583
                    is_test=self._is_test,
                )
                (
                    quant_var_node,
                    scale_var_node,
                ) = insert_quant_pass.insert_quant_op(
                    graph, var_node, var_name=name
                )
2584
                dequant_var_node = insert_quant_pass.insert_dequant_op(
2585 2586
                    graph, quant_var_node, scale_var_node
                )
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                self.dequantized_vars[name] = dequant_var_node
            graph.update_input_link(var_node, dequant_var_node, op)

    def _transform_backward(self, graph, op):
        for var_node in op.inputs:
            if var_node.name() not in op.input_arg_names():
                continue
            if var_node.name() in self.dequantized_vars:
                dequant_var_node = self.dequantized_vars[var_node.name()]
                graph.update_input_link(var_node, dequant_var_node, op)

    def _has_weight(self, op):
        has_weight = False
        for var_node in op.inputs:
            if var_node.name() not in op.input_arg_names():
                continue
            name = var_node.name()
            if var_node.name() in self.persistable_vars:
                has_weight = True
        return has_weight

    def apply(self, graph):
        """
        Quantize the graph for training process. According to weight and
        activation quantization type, the graph will be added some fake
        quantize operators and fake dequantize operators.

        Args:
            graph(IrGraph): the applied graph.
        Returns:
            None
        """
2620 2621 2622
        assert isinstance(
            graph, IrGraph
        ), 'graph must be the instance of IrGraph.'
2623 2624
        if self._is_test is None:
            self._is_test = graph.is_test()
2625 2626 2627 2628
        # marked the variable which has been dequantized.
        self.dequantized_vars = collections.OrderedDict()
        self.persistable_vars = []
        self.processed_vars = []
2629 2630 2631 2632 2633 2634 2635 2636 2637

        self.persistable_vars = [
            p.name() for p in graph.all_persistable_nodes()
        ]

        ops = graph.all_op_nodes()
        # Do the preproccess of quantization, such as skipping some ops
        # for not being quantized.
        for op in ops:
2638 2639 2640 2641
            if (
                op.name() in self._quantizable_ops
                or op.name() in self._quantizable_grad_ops
            ):
2642 2643 2644 2645 2646
                self._quant_preprocess(op)
        # Insert mapping table to solve the problem in saving inference model.
        graph.out_node_mapping_table = dict()
        # The process of _transform_forward and _transform_backward is needed in two for loops.
        # The loop for transforming the forward graph:
2647 2648 2649 2650 2651
        with tqdm(
            total=len(ops),
            bar_format='Adding quant op with weight:|{bar}| {n_fmt}/{total_fmt}',
            ncols=80,
        ) as t:
2652 2653
            for op in ops:
                if op.name() in self._quantizable_ops:
2654 2655 2656
                    if not self._is_skip_quant(graph, op) and self._has_weight(
                        op
                    ):
2657 2658
                        self._transform_forward(graph, op)
                t.update()
2659 2660 2661 2662 2663 2664 2665
        # The loop for renaming the inputs of backward op.
        for op in ops:
            if op.name() in self._quantizable_grad_ops and self._has_weight(op):
                self._transform_backward(graph, op)
        return graph


2666
class AddQuantDequantPassV2:
2667 2668
    """
    Quantize the ops that do not have weights, and add quant_linear and dequant_linear
2669
    op for the quantized ops's inputs. It is used in the new format of quantization.
2670 2671 2672 2673 2674
    """

    # To be compatible with PaddleSlim, not remove _activation_type for now
    _activation_type = ["relu", "relu6", "leaky_relu", "tanh", "swish"]

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    def __init__(
        self,
        scope=None,
        place=None,
        moving_rate=0.9,
        quant_bits=8,
        skip_pattern=["skip_quant"],
        quantizable_op_type=["elementwise_add", "pool2d"],
        is_full_quantized=False,
        is_test=None,
        scale_dict=None,
    ):
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        """
        Args:
            scope(paddle.Scope): The scope is used to initialize these new parameters.
            place(paddle.CPUPlace|paddle.CUDAPlace|str): place is used to initialize new
                parameters described above. If ``place`` is string, it can be It can be ``cpu``
                or ``gpu:x``, where ``x`` is the index of the GPUs.
2693
            moving_rate(float, optional): the param for 'quant_dequant_moving_average_abs_max'
2694 2695 2696 2697 2698 2699
                quantization. Default is 0.9.
            quant_bits(int, optional): quantization bit number for activation. Default is 8.
            skip_pattern(str, optional): The user-defined quantization skip pattern, which
                will be presented in the name scope of an op. When the skip pattern is
                detected in an op's name scope, the corresponding op will not be quantized.
                Default is 'skip_quant'.
2700 2701 2702
            quantizable_op_type(list[str], optional): List the type of ops that will be
                quantized. Default is ["elementwise_add", "pool2d"].
            is_full_quantized(bool, optional): If set is_full_quantized as True, apply
2703
                quantization to all supported quantizable op type. If set is_full_quantized
2704
                as False, only apply quantization to the op type according to the input
2705
                quantizable_op_type.
2706
            scale_dict(dict, optional): calibration ranges of tensors output.
2707

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        Examples:
        .. code-block:: python
            # The original graph will be rewrite.
            import paddle
            from paddle.fluid.contrib.slim.quantization \
                import AddQuantDequantPassV2
            from paddle.fluid.contrib.slim.graph import IrGraph
            from paddle.fluid import core

            graph = IrGraph(core.Graph(program.desc), for_test=False)
            place = paddle.CPUPlace()
            scope = paddle.static.global_scope()
            add_quant_dequant_pass = AddQuantDequantPassV2(scope, place)
            add_quant_dequant_pass.apply(graph)
        """
        self._scope = scope
        self._place = _get_paddle_place(place)
        self._moving_rate = moving_rate
        self._quant_bits = quant_bits
2727
        self._is_test = is_test
2728
        self._skip_pattern = skip_pattern
2729
        self._scale_dict = scale_dict
2730 2731 2732 2733 2734 2735

        if is_full_quantized:
            self._quantizable_op_type = utils._act_supported_quantizable_op_type
        else:
            self._quantizable_op_type = quantizable_op_type
            for op_type in quantizable_op_type:
2736
                assert op_type in utils._act_supported_quantizable_op_type, (
2737
                    op_type + " is not supported for quantization."
2738
                )
2739 2740 2741 2742
        self._quantizable_grad_op_type = [
            '%s_grad' % (op) for op in self._quantizable_op_type
        ]

2743 2744
        assert self._scope is not None, "scope must not be None."
        assert self._place is not None, "place must not be None."
2745 2746 2747 2748 2749 2750 2751 2752 2753 2754 2755 2756
        self.persistable_vars = []

    def apply(self, graph):
        """
        Add quant_dequant before some ops, such as the 'elementwise_add' and
        'pool2d' op.

        Args:
            graph(IrGraph): the target graph.
        Returns:
            None
        """
2757 2758 2759
        assert isinstance(
            graph, IrGraph
        ), 'graph must be the instance of IrGraph.'
2760 2761
        if self._is_test is None:
            self._is_test = graph.is_test()
2762 2763 2764 2765 2766 2767 2768 2769
        dequantized_vars_map = collections.OrderedDict()

        self.persistable_vars = [
            p.name() for p in graph.all_persistable_nodes()
        ]

        # Forward stage, insert quant_dequant op
        all_op_nodes = graph.all_op_nodes()
2770 2771 2772 2773 2774
        with tqdm(
            total=len(all_op_nodes),
            bar_format='Adding quant activation op:|{bar}| {n_fmt}/{total_fmt}',
            ncols=80,
        ) as t:
2775 2776 2777 2778
            for op_node in all_op_nodes:
                if op_node.name() in self._quantizable_op_type:
                    is_skip = False
                    if isinstance(self._skip_pattern, list):
2779 2780 2781 2782
                        is_skip = op_node.op().has_attr("op_namescope") and any(
                            pattern in op_node.op().attr("op_namescope")
                            for pattern in self._skip_pattern
                        )
2783
                    elif isinstance(self._skip_pattern, str):
2784 2785 2786 2787 2788 2789 2790 2791 2792 2793 2794 2795
                        is_skip = (
                            op_node.op().has_attr("op_namescope")
                            and op_node.op()
                            .attr("op_namescope")
                            .find(self._skip_pattern)
                            != -1
                        )
                    is_quantized = (
                        op_node.op().has_attr("quantization_type")
                        and op_node.op().attr("quantization_type")
                        == "qat_with_weight"
                    )
2796
                    if is_skip or is_quantized:
2797
                        continue
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                    arg_names = utils._get_op_input_var_names(op_node)
                    for arg_name in arg_names:
                        in_node = graph._find_node_by_name(
2802 2803
                            op_node.inputs, arg_name
                        )
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                        if in_node.persistable():
                            continue
                        if arg_name in dequantized_vars_map:
                            dequant_var_node = dequantized_vars_map[arg_name]
                        else:
                            insert_quant_pass = InsertQuantizeLinear(
                                self._place,
                                self._scope,
                                quant_bits=self._quant_bits,
                                quant_axis=-1,
                                channel_wise=False,
2815
                                moving_rate=self._moving_rate,
2816
                                is_test=self._is_test,
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                                scale_dict=self._scale_dict,
                            )
                            (
                                quant_var_node,
                                scale_var_node,
                            ) = insert_quant_pass.insert_quant_op(
                                graph, in_node
                            )
                            dequant_var_node = (
                                insert_quant_pass.insert_dequant_op(
                                    graph, quant_var_node, scale_var_node
                                )
                            )
2830
                            dequantized_vars_map[arg_name] = dequant_var_node
2831 2832 2833
                        graph.update_input_link(
                            in_node, dequant_var_node, op_node
                        )
2834
                t.update()
2835 2836 2837 2838 2839 2840

        # Backward stage, update input link
        for op_node in all_op_nodes:
            if op_node.name() in self._quantizable_grad_op_type:
                for input_name in op_node.input_arg_names():
                    if input_name in dequantized_vars_map:
2841
                        in_node = graph._find_node_by_name(
2842 2843
                            op_node.inputs, input_name
                        )
2844
                        dequant_var_node = dequantized_vars_map[input_name]
2845 2846 2847
                        graph.update_input_link(
                            in_node, dequant_var_node, op_node
                        )
2848 2849 2850 2851

        return graph


2852
class ReplaceFakeQuantDequantPass:
2853 2854 2855 2856
    """
    replace quant-dequant ops with quantize_linear and dequantize_linear ops.
    """

2857
    def __init__(self, scope, place, quant_bits=8):
2858 2859 2860 2861 2862 2863
        r"""
        Args:
            scope(paddle.Scope): The scope is used to initialize these new parameters.
            place(paddle.CPUPlace|paddle.CUDAPlace|str): place is used to initialize new
                parameters described above. If ``place`` is string, it can be It can be ``cpu``
                or ``gpu:x``, where ``x`` is the index of the GPUs.
2864
            quant_bits(int, optional): quantization bit number for activation. Default is 8.
2865

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        Examples:
        .. code-block:: python
            # The original graph will be rewrite.
            import paddle
            from paddle.fluid.contrib.slim.quantization \
                import ReplaceFakeQuantDequantPass
            from paddle.fluid.contrib.slim.graph import IrGraph
            from paddle.fluid import core

            graph = IrGraph(core.Graph(program.desc), for_test=False)
            place = paddle.CPUPlace()
            scope = paddle.static.global_scope()
            replace_pass = ReplaceFakeQuantDequantPass(scope, place)
            replace_pass.apply(graph)
        """
        self._place = _get_paddle_place(place)
        self._scope = scope
2883
        self._quant_bits = quant_bits
2884 2885
        assert self._scope is not None, "scope must not be None."
        assert self._place is not None, "place must not be None."
2886 2887

    def apply(self, graph):
2888 2889 2890
        assert isinstance(
            graph, IrGraph
        ), 'graph must be the instance of IrGraph.'
2891 2892 2893
        fake_quant_dequant_ops = []

        for op in graph.all_op_nodes():
2894 2895 2896 2897
            if (
                op.name() in _fake_quant_dequant_op_list
                or op.name() == "moving_average_abs_max_scale"
            ):
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                fake_quant_dequant_ops.append(op)

        for _op in fake_quant_dequant_ops:
            self._replace_op(graph, _op)
            graph.safe_remove_nodes(_op)

        graph.resolve_hazard()
        return graph

    def _replace_op(self, graph, op):
        x_node = graph._find_node_by_name(op.inputs, op.input("X")[0])
        out_node = graph._find_node_by_name(op.outputs, op.output("Out")[0])
2910 2911 2912 2913 2914 2915 2916 2917 2918 2919 2920 2921
        scale_node = graph._find_node_by_name(
            op.outputs, op.output("OutScale")[0]
        )

        quant_axis = (
            op.op().attr("quant_axis") if op.op().has_attr("quant_axis") else -1
        )
        bit_length = (
            op.op().attr("bit_length")
            if op.op().has_attr("bit_length")
            else self._quant_bits
        )
2922 2923 2924 2925 2926 2927 2928 2929

        zero_point_node = None
        quanted_node = x_node
        if zero_point_node is None:
            zero_point_node = graph.create_persistable_node(
                name=self._zero_point_name(quanted_node.name()),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
                shape=scale_node.shape(),
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                var_dtype=core.VarDesc.VarType.INT32,
            )
            _init_var_node(
                zero_point_node,
                np.zeros(scale_node.shape(), dtype="int32"),
                self._scope,
                self._place,
            )

        quant_var_node = graph.create_var_node(
            name=self._quantized_var_name(x_node.name()),
            var_type=x_node.type(),
            shape=x_node.shape(),
            var_dtype=x_node.dtype(),
        )
        quant_op_node = graph.create_op_node(
            op_type="quantize_linear",
            attrs={"quant_axis": quant_axis, "bit_length": bit_length},
            inputs={
                "X": x_node,
                "Scale": scale_node,
                "ZeroPoint": zero_point_node,
            },
            outputs={"Y": quant_var_node},
        )
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        graph.link_to(x_node, quant_op_node)
        graph.link_to(scale_node, quant_op_node)
        if zero_point_node is not None:
            graph.link_to(zero_point_node, quant_op_node)
        graph.link_to(quant_op_node, quant_var_node)
2960 2961 2962 2963 2964 2965 2966 2967 2968 2969
        dequant_op_node = graph.create_op_node(
            op_type="dequantize_linear",
            attrs={"quant_axis": quant_axis, "bit_length": bit_length},
            inputs={
                "X": quant_var_node,
                "Scale": scale_node,
                "ZeroPoint": zero_point_node,
            },
            outputs={"Y": out_node},
        )
2970 2971 2972 2973 2974 2975 2976 2977 2978 2979 2980 2981 2982 2983 2984 2985 2986 2987 2988
        graph.link_to(quant_var_node, dequant_op_node)
        graph.link_to(scale_node, dequant_op_node)
        if zero_point_node is not None:
            graph.link_to(zero_point_node, dequant_op_node)
        graph.link_to(dequant_op_node, out_node)

    def _quantized_var_name(self, var_name):
        """
        Return quantized variable name for the input `var_name`.
        """
        return "%s.quantized" % (var_name)

    def _zero_point_name(self, var_name):
        """
        Return the scale name for the var named `var_name`.
        """
        return "%s@zero_point" % (var_name)


2989
class QuantWeightPass:
2990 2991 2992 2993 2994 2995 2996 2997 2998 2999 3000 3001 3002
    """
    quant weights and remove weights input quantize_linear node. for example:
    `weight -> quant -> dequant -> conv2d` will be frozen into `weight -> dequant -> conv2d`,
    and weight will be scaled offline.

    Args:
        scope(paddle.Scope): scope is used to get the weight tensor values.
        place(paddle.CPUPlace|paddle.CUDAPlace|str): place is used to restore the weight tensors.
            If it's string, It can be ``cpu``, and ``gpu:x``, where ``x`` is the index of the GPUs.
        bias_correction(bool): whether use bias correction for post-training quantization.
             https://arxiv.org/abs/1810.05723.
        quant_bits(int, optional): quantization bit number for weight. Default is 8.
        save_int_weight(bool, optional): Whether the type saving the weight is int. Default is True.
3003

3004 3005 3006 3007 3008 3009 3010 3011 3012 3013 3014 3015 3016 3017 3018 3019
    Examples:
        .. code-block:: python
            # The original graph will be rewrite.
            import paddle
            from paddle.fluid.contrib.slim.quantization \
                import QuantWeightPass
            from paddle.fluid.contrib.slim.graph import IrGraph
            from paddle.fluid import core

            graph = IrGraph(core.Graph(program.desc), for_test=False)
            place = paddle.CPUPlace()
            scope = paddle.static.global_scope()
            quant_weight_pass = QuantWeightPass(scope, place)
            quant_weight_pass.apply(graph)
    """

3020 3021 3022 3023 3024 3025 3026 3027
    def __init__(
        self,
        scope,
        place,
        bias_correction=False,
        quant_bits=8,
        save_int_weight=True,
    ):
3028 3029 3030 3031 3032
        self._place = _get_paddle_place(place)
        self._scope = scope
        self._bias_correction = bias_correction
        self._quant_bits = quant_bits
        self._save_int_weight = save_int_weight
3033 3034
        assert self._scope is not None, "scope must not be None."
        assert self._place is not None, "place must not be None."
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        self._quantized_ops = set()
3036 3037

    def apply(self, graph):
3038 3039 3040
        assert isinstance(
            graph, IrGraph
        ), 'graph must be the instance of IrGraph.'
3041 3042 3043 3044 3045 3046 3047 3048
        fake_quant_ops_for_weight = []

        fake_quant_ops = [
            op for op in graph.all_op_nodes() if op.name() == "quantize_linear"
        ]
        for _op in fake_quant_ops:
            x_node = graph._find_node_by_name(_op.inputs, _op.input("X")[0])
            if x_node.persistable():
3049 3050 3051
                scale_node = graph._find_node_by_name(
                    _op.inputs, _op.input("Scale")[0]
                )
3052
                zero_point_node = graph._find_node_by_name(
3053 3054 3055 3056 3057
                    _op.inputs, _op.input("ZeroPoint")[0]
                )
                out_node = graph._find_node_by_name(
                    _op.outputs, _op.output("Y")[0]
                )
3058 3059

                scale_v = self._load_var(scale_node.name())
3060 3061 3062 3063
                assert scale_v.ndim in [
                    1,
                    2,
                ], "the dim of scale_v should be 1 or 2"
3064 3065 3066 3067 3068 3069 3070 3071 3072
                if scale_v.ndim == 2:
                    scale_v = scale_v[0]
                if scale_v.size == 1 and _op.name() == 'abs_max':
                    scale_v = scale_v[0]
                else:
                    scale_v = scale_v.tolist()
                param_v = self._load_var(x_node.name())
                quant_axis = _op.op().attr("quant_axis")
                bits_length = _op.op().attr("bit_length")
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                if x_node.name() not in self._quantized_ops:
                    self._quantized_ops.add(x_node.name())
                    quantized_param_v = utils.quant_tensor(
                        param_v.copy(),
3077 3078
                        scale_v,
                        quant_axis,
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                        bits_length,
                        onnx_format=True,
3081
                    )
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                    if self._bias_correction == True:
                        quantized_param_v = utils.bias_correction_w(
                            param_v,
                            quantized_param_v,
                            scale_v,
                            quant_axis,
                            weight_bits=bits_length,
                        )
                    if self._save_int_weight:
                        # cast weight type to int
                        if self._quant_bits == 8:
                            save_weight_dtype = np.int8
                        quantized_param_v = quantized_param_v.astype(
                            save_weight_dtype
                        )
                    self._restore_var(x_node.name(), quantized_param_v)
3098 3099 3100 3101 3102 3103 3104 3105 3106 3107 3108 3109 3110 3111 3112 3113 3114 3115

                for next_op_node in out_node.outputs:
                    graph.update_input_link(out_node, x_node, next_op_node)
                graph.safe_remove_nodes(out_node)
        self._remove_unused_var_nodes(graph)

    def _remove_unused_var_nodes(self, graph):
        all_used_vars = set()
        ops = graph.all_op_nodes()
        for op_node in ops:
            for input_node in op_node.inputs:
                all_used_vars.add(input_node)
            for output_node in op_node.outputs:
                all_used_vars.add(output_node)

        all_used_vars = {n.node for n in all_used_vars}
        all_unused_vars = {
            n
3116 3117 3118 3119
            for n in filter(
                lambda node: node.node not in all_used_vars,
                graph.all_var_nodes(),
            )
3120 3121 3122 3123 3124 3125 3126 3127 3128
        }
        graph.safe_remove_nodes(all_unused_vars)

    def _load_var(self, name):
        return np.array(self._scope.find_var(name).get_tensor())

    def _restore_var(self, name, array):
        tensor = self._scope.find_var(name).get_tensor()
        tensor.set(array, self._place)
3129 3130


3131
class AddQuantDequantForInferencePass:
3132 3133 3134 3135 3136 3137 3138 3139 3140 3141 3142 3143 3144 3145 3146 3147 3148 3149 3150 3151 3152 3153
    """
    When export quant model, it will traverse to find the output of each op, and then insert the quant/dequant op after it.
    """

    def __init__(self, scope, place, quant_bits=8):
        """
        Args:
            scope(fluid.Scope): The scope is used to initialize these new parameters.
            place(paddle.CPUPlace|paddle.CUDAPlace|str): place is used to restore the weight tensors.
                If it's string, it can be ``cpu``, and ``gpu:x``, where ``x`` is the index of the GPUs.
            quant_bits(int, optional): quantization bit number for weight. Default is 8.
        """
        self._scope = scope
        self._place = place
        self._quant_bits = quant_bits
        self._teller_set = utils.QUANT_SUPPORTED_OP_TYPE_LIST

    def apply(self, graph):
        """
        Args:
            graph(IrGraph): the target graph.
        """
3154 3155 3156
        assert isinstance(
            graph, IrGraph
        ), 'graph must be the instance of IrGraph.'
3157 3158 3159 3160 3161 3162
        dequant_node_map = {}
        dequantized_vars_map = collections.OrderedDict()
        for op_node in graph.all_op_nodes():
            if op_node.name() in self._teller_set:
                var_names = utils._get_op_output_var_names(op_node)
                for var_name in var_names:
3163 3164 3165 3166 3167 3168 3169
                    out_node = graph._find_node_by_name(
                        op_node.outputs, var_name
                    )
                    if out_node.dtype() not in [
                        core.VarDesc.VarType.FP64,
                        core.VarDesc.VarType.FP32,
                    ]:
3170 3171 3172 3173 3174
                        continue
                    if var_name in dequantized_vars_map:
                        dequant_var_node = dequantized_vars_map[var_name]
                    else:
                        dequant_var_node = self._insert_quant_dequant_op(
3175 3176
                            graph, out_node
                        )
3177 3178 3179 3180 3181 3182 3183 3184 3185 3186 3187 3188
                        dequantized_vars_map[var_name] = dequant_var_node
                    dequant_node_map[var_name] = dequant_var_node

        # remove unuse node and link act quant/dequant linear to op node
        for op_node in graph.all_op_nodes():
            if op_node.name() == 'moving_average_abs_max_scale':
                graph.safe_remove_nodes(op_node)
            else:
                var_names = utils._get_op_input_var_names(op_node)
                for var_name in var_names:
                    if var_name in dequant_node_map:
                        in_node = graph._find_node_by_name(
3189 3190 3191 3192 3193
                            op_node.inputs, var_name
                        )
                        graph.update_input_link(
                            in_node, dequant_node_map[var_name], op_node
                        )
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        return graph

    def _scale_name(self, var_name):
        """
        Return the scale name for the var named `var_name`.
        """
        return "%s@scale" % (var_name)

    def _insert_quant_dequant_op(self, graph, var_node):
        assert var_node.is_var(), '{} is not a var'.format(var_node.name())
        var_name = var_node.name()
        quant_axis = -1
        quant_var_node = graph.create_var_node(
            name="{}.quantized".format(var_name),
            var_type=var_node.type(),
            shape=var_node.shape(),
3211 3212 3213 3214 3215
            var_dtype=var_node.dtype(),
        )
        scale_var_node = graph._find_node_by_name(
            graph.all_persistable_nodes(), self._scale_name(var_name)
        )
3216 3217 3218
        try:
            zero_point_node = graph._find_node_by_name(
                graph.all_persistable_nodes(),
3219 3220
                "{}@zero_point".format(quant_var_node.name()),
            )
3221 3222 3223 3224 3225
        except:
            zero_point_node = graph.create_persistable_node(
                name="{}@zero_point".format(quant_var_node.name()),
                var_type=core.VarDesc.VarType.LOD_TENSOR,
                shape=scale_var_node.shape(),
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                var_dtype=core.VarDesc.VarType.INT32,
            )
            _init_var_node(
                zero_point_node,
                np.zeros(scale_var_node.shape(), dtype="int32"),
                self._scope,
                self._place,
            )
3234 3235 3236 3237 3238 3239 3240 3241 3242

        inputs = {"X": var_node, "Scale": scale_var_node}
        if zero_point_node is not None:
            inputs["ZeroPoint"] = zero_point_node

        attrs = {"quant_axis": quant_axis, "bit_length": self._quant_bits}
        attrs["op_role"] = core.op_proto_and_checker_maker.OpRole.Forward
        outputs = {"Y": quant_var_node}

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        quant_op_node = graph.create_op_node(
            op_type="quantize_linear",
            attrs=attrs,
            inputs=inputs,
            outputs=outputs,
        )
3249 3250 3251 3252 3253 3254 3255 3256 3257 3258 3259 3260

        graph.link_to(var_node, quant_op_node)
        graph.link_to(scale_var_node, quant_op_node)
        if zero_point_node is not None:
            graph.link_to(zero_point_node, quant_op_node)
        graph.link_to(quant_op_node, quant_var_node)

        # add dequant_linear node
        dequant_var_node = graph.create_var_node(
            name="{}.dequantized".format(quant_var_node.name()),
            var_type=quant_var_node.type(),
            shape=quant_var_node.shape(),
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            var_dtype=quant_var_node.dtype(),
        )
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        inputs = {"X": quant_var_node, "Scale": scale_var_node}
        if zero_point_node is not None:
            inputs["ZeroPoint"] = zero_point_node

        attrs = {"quant_axis": -1, "bit_length": self._quant_bits}
        attrs["op_role"] = core.op_proto_and_checker_maker.OpRole.Forward

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        dequant_op_node = graph.create_op_node(
            op_type="dequantize_linear",
            attrs=attrs,
            inputs=inputs,
            outputs={"Y": dequant_var_node},
        )
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        graph.link_to(quant_var_node, dequant_op_node)
        graph.link_to(scale_var_node, dequant_op_node)
        if zero_point_node is not None:
            graph.link_to(zero_point_node, dequant_op_node)
        graph.link_to(dequant_op_node, dequant_var_node)
        return dequant_var_node