program_config.py 19.6 KB
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# Copyright (c) 2021 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.

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from typing import Any, Callable, Dict, List, Optional
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import numpy as np
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import enum
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import paddle
import paddle.fluid as fluid
import paddle.fluid.core as core
from paddle.fluid.initializer import NumpyArrayInitializer
from paddle.fluid.framework import convert_np_dtype_to_dtype_

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from paddle.fluid.contrib.slim.quantization import QuantizationTransformPass
from paddle.fluid.contrib.slim.quantization import QuantizationFreezePass
from paddle.fluid.framework import IrGraph, IrNode, Operator
from paddle.fluid.executor import global_scope

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class TensorConfig:
    '''
    A config builder for a input or a weight.
    '''

    def __init__(self,
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                 lod: Optional[List[List[int]]] = None,
                 data_gen: Optional[Callable[..., np.array]] = None,
                 shape: Optional[List[List[int]]] = None):
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        '''
        shape: The shape of the tensor.
        dtype: The data type of the tensor.
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        data: The value of WeightVar. for input, it should be None
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        '''
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        self.lod = lod
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        if data_gen is not None:
            self.data_gen = data_gen
            self.data = data_gen()
            self.dtype = data_gen().dtype
            self.shape = data_gen().shape
        else:
            assert shape is not None, "While data_gen is not defined, shape must not be None"
            self.data = np.random.normal(0.0, 1.0, shape).astype(np.float32)
            self.shape = shape
            self.dtype = self.data.dtype
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    def __repr__(self):
        return str({'shape': self.shape, 'lod': self.lod, 'dtype': self.dtype})
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class VarType(enum.Enum):
    LOD_TENSOR = 1
    LOD_TENSOR_ARRAY = 2
    STEP_SCOPES = 3


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class OpConfig:
    '''  A config builder for generating a Op.  '''

    def __init__(self,
                 type: str,
                 inputs: Dict[str, List[str]],
                 outputs: Dict[str, List[str]],
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                 attrs: Dict[str, Any] = None,
                 outputs_var_type: Dict[str, VarType] = None,
                 outputs_dtype: Dict[str, np.dtype] = None,
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                 **kwargs):
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        self.type = type
        self.inputs = inputs
        self.outputs = outputs
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        self.outputs_dtype = outputs_dtype
        self.outputs_var_type = outputs_var_type
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        self.attrs = attrs
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        if self.attrs is None:
            self.attrs = dict()
        self.attrs.update(kwargs)
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    def __repr__(self):
        log_str = self.type
        log_str += str(self.attrs)
        return log_str

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_OP_WITHOUT_KERNEL_SET = {
    'feed', 'fetch', 'recurrent', 'go', 'rnn_memory_helper_grad',
    'conditional_block', 'while', 'send', 'recv', 'listen_and_serv',
    'fl_listen_and_serv', 'ncclInit', 'select', 'checkpoint_notify',
    'gen_bkcl_id', 'c_gen_bkcl_id', 'gen_nccl_id', 'c_gen_nccl_id',
    'c_comm_init', 'c_sync_calc_stream', 'c_sync_comm_stream',
    'queue_generator', 'dequeue', 'enqueue', 'heter_listen_and_serv',
    'c_wait_comm', 'c_wait_compute', 'c_gen_hccl_id', 'c_comm_init_hccl',
    'copy_cross_scope'
}


class BlockConfig:
    ''' A config builder for generating a Block. '''

    def __init__(self,
                 ops: List[OpConfig],
                 vars: List[str],
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                 vars_dtype: Dict[str, np.dtype] = None,
                 vars_var_type: Dict[str, VarType] = None,
                 vars_lod_level: Dict[str, int] = None):
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        self.ops = ops
        self.vars = vars
        self.vars_dtype = vars_dtype
        self.vars_var_type = vars_var_type
        self.vars_lod_level = vars_lod_level

    def fill_block_desc(self, block_desc):
        for name in self.vars:
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            var_desc = block_desc.var(name.encode())
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            var_desc.set_type(core.VarDesc.VarType.LOD_TENSOR)
            if self.vars_lod_level is not None and name in self.vars_lod_level.keys(
            ):
                var_desc.set_lod_level(self.vars_lod_level[name])
            if self.vars_var_type is not None and name in self.vars_var_type.keys(
            ):
                if self.vars_var_type[name] == VarType.LOD_TENSOR_ARRAY:
                    var_desc.set_type(core.VarDesc.VarType.LOD_TENSOR_ARRAY)
                elif self.vars_var_type[name] == VarType.STEP_SCOPES:
                    var_desc.set_type(core.VarDesc.VarType.STEP_SCOPES)
                    continue
            var_desc.set_dtype(convert_np_dtype_to_dtype_(np.float32))
            if self.vars_dtype is not None and name in self.vars_dtype.keys():
                var_desc.set_dtype(
                    convert_np_dtype_to_dtype_(self.vars_dtype[name]))

        for op_config in self.ops:
            op_desc = block_desc.append_op()
            op_desc.set_type(op_config.type)
            for name, values in op_config.inputs.items():
                op_desc.set_input(name, values)
            for name, values in op_config.attrs.items():
                op_desc._set_attr(name, values)
            for name, values in op_config.outputs.items():
                op_desc.set_output(name, values)
                for v in values:
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                    if block_desc.has_var_recursive(v.encode()):
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                        continue
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                    var_desc = block_desc.var(v.encode())
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                    var_desc.set_type(core.VarDesc.VarType.LOD_TENSOR)
                    if op_config.outputs_var_type is not None and v in op_config.outputs_var_type.keys(
                    ):
                        if op_config.outputs_var_type[
                                v] == VarType.LOD_TENSOR_ARRAY:
                            var_desc.set_type(
                                core.VarDesc.VarType.LOD_TENSOR_ARRAY)
                        elif op_config.outputs_var_type[
                                v] == VarType.STEP_SCOPES:
                            var_desc.set_type(core.VarDesc.VarType.STEP_SCOPES)
                            continue
                    var_desc.set_dtype(convert_np_dtype_to_dtype_(np.float32))
                    if op_config.outputs_dtype is not None and v in op_config.outputs_dtype.keys(
                    ):
                        var_desc.set_dtype(
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                            convert_np_dtype_to_dtype_(
                                op_config.outputs_dtype[v]))
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            if op_config.type not in _OP_WITHOUT_KERNEL_SET:
                op_desc.infer_var_type(block_desc)
                op_desc.infer_shape(block_desc)
            op_desc.check_attrs()


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class ProgramConfig:
    '''  A config builder for generating a Program.  '''

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    def __init__(self, ops: List[OpConfig], weights: Dict[str, TensorConfig],
                 inputs: Dict[str, TensorConfig], outputs: List[str]):
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        self.ops = ops
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        # if no weight need to save, we create a place_holder to help seriazlie params.
        if not weights:

            def generate_weight():
                return np.array([1]).astype(np.float32)

            self.weights = {
                "place_holder_weight": TensorConfig(data_gen=generate_weight)
            }
        else:
            self.weights = weights
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        self.inputs = inputs
        self.outputs = outputs

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    def __repr__(self):
        log_str = ''
        for i in range(len(self.ops)):
            if i != len(self.ops) - 1:
                log_str += repr(self.ops[i]) + ' + '
            else:
                log_str += repr(self.ops[i])
        log_str += ' -- '
        for t, v in self.inputs.items():
            log_str += '[' + t + ': ' + str(v) + ']'
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        for t, v in self.weights.items():
            log_str += '[' + t + ': ' + str(v) + ']'
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        return log_str

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def create_fake_model(program_config):
    '''  Create a Paddle model(in memory) according to the given config.  '''
    paddle.enable_static()
    main_program_desc = core.ProgramDesc()
    util_program = fluid.Program()
    main_block_desc = main_program_desc.block(0)

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    var_desc = main_block_desc.var(b"feed")
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    var_desc.set_type(core.VarDesc.VarType.FEED_MINIBATCH)
    var_desc.set_persistable(True)

    index = 0
    for name, tensor_config in program_config.inputs.items():
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        var_desc = main_block_desc.var(name.encode())
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        var_desc.set_type(core.VarDesc.VarType.LOD_TENSOR)
        var_desc.set_dtype(convert_np_dtype_to_dtype_(tensor_config.dtype))
        var_desc.set_shape(tensor_config.shape)
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        print(f"name: {name}; shape: {tensor_config.shape}")
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        var_desc.set_need_check_feed(True)
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        if tensor_config.lod is not None:
            var_desc.set_lod_level(len(tensor_config.lod))
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        op_desc = main_block_desc._prepend_op()
        op_desc.set_type("feed")
        op_desc.set_input('X', ["feed"])
        op_desc.set_output('Out', [name])
        op_desc._set_attr("col", index)
        index = index + 1

    save_var_map = {}
    for name, tensor_config in program_config.weights.items():
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        var_desc = main_block_desc.var(name.encode())
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        var_desc.set_type(core.VarDesc.VarType.LOD_TENSOR)
        var_desc.set_dtype(convert_np_dtype_to_dtype_(tensor_config.dtype))
        var_desc.set_shape(tensor_config.shape)
        var_desc.set_persistable(True)

        save_var_map[name] = util_program.global_block().create_parameter(
            dtype=tensor_config.dtype,
            shape=tensor_config.shape,
            type=core.VarDesc.VarType.LOD_TENSOR,
            name=name,
            initializer=NumpyArrayInitializer(tensor_config.data))
    in_vars = []
    for name in sorted(save_var_map.keys()):
        in_vars.append(save_var_map[name])

    out_var = util_program.global_block().create_var(
        type=core.VarDesc.VarType.RAW, name="out_var_0")
    out_var.desc.set_persistable(True)
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    util_program.global_block().append_op(type='save_combine',
                                          inputs={'X': in_vars},
                                          outputs={'Y': out_var},
                                          attrs={
                                              'file_path': '',
                                              'save_to_memory': True
                                          })
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    for op_config in program_config.ops:
        op_desc = main_block_desc.append_op()
        op_desc.set_type(op_config.type)
        for name, values in op_config.inputs.items():
            op_desc.set_input(name, values)
        for name, values in op_config.attrs.items():
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            if name == 'sub_block':
                sub_block_desc = main_program_desc.append_block(main_block_desc)
                values.fill_block_desc(sub_block_desc)
                op_desc._set_attr(name, sub_block_desc)
            else:
                op_desc._set_attr(name, values)
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        for name, values in op_config.outputs.items():
            op_desc.set_output(name, values)
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            for v in values:
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                if main_block_desc.has_var_recursive(v.encode()):
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                    continue
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                var_desc = main_block_desc.var(v.encode())
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                var_desc.set_type(core.VarDesc.VarType.LOD_TENSOR)
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                if op_config.outputs_var_type is not None and v in op_config.outputs_var_type.keys(
                ):
                    if op_config.outputs_var_type[
                            v] == VarType.LOD_TENSOR_ARRAY:
                        var_desc.set_type(core.VarDesc.VarType.LOD_TENSOR_ARRAY)
                    elif op_config.outputs_var_type[v] == VarType.STEP_SCOPES:
                        var_desc.set_type(core.VarDesc.VarType.STEP_SCOPES)
                        continue
                var_desc.set_dtype(convert_np_dtype_to_dtype_(np.float32))
                if op_config.outputs_dtype is not None and v in op_config.outputs_dtype.keys(
                ):
                    var_desc.set_dtype(
                        convert_np_dtype_to_dtype_(op_config.outputs_dtype[v]))
        if op_config.type not in _OP_WITHOUT_KERNEL_SET:
            op_desc.infer_var_type(main_block_desc)
            op_desc.infer_shape(main_block_desc)
        op_desc.check_attrs()
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    for index, name in enumerate(program_config.outputs):
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        var_desc = main_block_desc.var(b"fetch")
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        var_desc.set_type(core.VarDesc.VarType.FETCH_LIST)
        var_desc.set_need_check_feed(True)
        op_desc = main_block_desc.append_op()
        op_desc.set_type("fetch")
        op_desc.set_input('X', [name])
        op_desc.set_output('Out', ["fetch"])
        op_desc._set_attr("col", index)

    main_program_desc._set_version()
    paddle.fluid.core.save_op_version_info(main_program_desc)

    model = main_program_desc.serialize_to_string()

    util_program._sync_with_cpp()
    place = fluid.CPUPlace()
    executor = fluid.Executor(place)
    scope = fluid.Scope()
    with fluid.scope_guard(scope):
        executor.run(util_program)
        params = scope.find_var("out_var_0").get_bytes()
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    return model, params
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def create_quant_model(model,
                       params,
                       activation_quantize_type='moving_average_abs_max',
                       weight_quantize_type='channel_wise_abs_max',
                       save=False):
    place = paddle.CUDAPlace(0)
    scope = global_scope()
    exe = paddle.static.Executor(place)
    [inference_program, feed_target_names,
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     fetch_targets] = paddle.static.load_inference_model(path_prefix=None,
                                                         executor=exe,
                                                         model_filename=model,
                                                         params_filename=params)
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    graph = IrGraph(core.Graph(inference_program.desc), for_test=True)

    out_scale_op_list = [
        "conv2d",
        "depthwise_conv2d",
        "mul",
        "matmul",
        "relu",
        "leaky_relu",
        "relu6",
        "sigmoid",
        "tanh",
        "prelu",
        "swish",
        "softmax",
        "batch_norm",
        "layer_norm",
        "elementwise_add",
        "pool2d",
        "reshape2",
        "transpose2",
        "concat",
        "elementwise_mul",
        "scale",
        "slice",
        "hard_swish",
        "hard_sigmoid",
        "conv2d_transpose",
        "gru",
        "bilinear_interp",
        "nearest_interp",
        "trilinear_interp",
        "flatten",
        "flatten2",
        "transpose",
        "pad2d",
        "reshape",
        "layer_norm",
    ]
    op_real_in_out_name = {
        "conv2d": [["Input", "Filter"], ["Output"]],
        "depthwise_conv2d": [["Input", "Filter"], ["Output"]],
        "conv2d_transpose": [["Input", "Filter"], ["Output"]],
        "mul": [["X", "Y"], ["Out"]],
        "matmul": [["X", "Y"], ["Out"]],
        "pool2d": [["X"], ["Out"]],
        "elementwise_add": [["X", "Y"], ["Out"]],
        "concat": [["X"], ["Out"]],
        "softmax": [["X"], ["Out"]],
        "argmax": [["X"], ["Out"]],
        "transpose": [["X"], ["Out"]],
        "equal": [["X", "Y"], ["Out"]],
        "gather": [["X"], ["Out"]],
        "greater_equal": [["X", "Y"], ["Out"]],
        "greater_than": [["X", "Y"], ["Out"]],
        "less_equal": [["X", "Y"], ["Out"]],
        "less_than": [["X", "Y"], ["Out"]],
        "mean": [["X"], ["Out"]],
        "not_equal": [["X", "Y"], ["Out"]],
        "reshape": [["X"], ["Out"]],
        "reshape2": [["X"], ["Out"]],
        "transpose2": [["X"], ["Out"]],
        "bilinear_interp": [["X"], ["Out"]],
        "nearest_interp": [["X"], ["Out"]],
        "trilinear_interp": [["X"], ["Out"]],
        "slice": [["Input"], ["Out"]],
        "squeeze": [["X"], ["Out"]],
        "elementwise_sub": [["X", "Y"], ["Out"]],
        "relu": [["X"], ["Out"]],
        "relu6": [["X"], ["Out"]],
        "leaky_relu": [["X"], ["Out"]],
        "prelu": [["X"], ["Out"]],
        "tanh": [["X"], ["Out"]],
        "swish": [["X"], ["Out"]],
        "dropout": [["X"], ["Out"]],
        "batch_norm": [["X"], ["Y"]],
        "layer_norm": [["X"], ["Y"]],
        "sigmoid": [["X"], ["Out"]],
        "elementwise_mul": [["X", "Y"], ["Out"]],
        "scale": [["X"], ["Out"]],
        "hard_swish": [["X"], ["Out"]],
        "hard_sigmoid": [["X"], ["Out"]],
        "gru": [["Input", "Weight"], ["Hidden"]],
        "lstm": [["Input", "Weight"], ["Hidden"]],
        "pad2d": [["X"], ["Out"]],
        "flatten": [["X"], ["Out"]],
        "flatten2": [["X"], ["Out"]],
    }

    def _get_op_output_var_names(op):
        """ """
        assert isinstance(op, (IrNode, Operator)), \
            "The input op should be IrNode or Operator."
        var_names = []
        op_name = op.name() if isinstance(op, IrNode) \
            else op.type
        if op_name not in op_real_in_out_name:
            return []

        name_list = op_real_in_out_name[op_name][1]
        for name in name_list:
            var_name = op.output(name)
            if isinstance(var_name, list):
                var_names.extend(var_name)
            else:
                var_names.append(var_name)
        return var_names

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    transform_pass = QuantizationTransformPass(
        scope=scope,
        place=place,
        activation_quantize_type=activation_quantize_type,
        weight_quantize_type=weight_quantize_type)
    transform_pass.apply(graph)

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    op_nodes = graph.all_op_nodes()
    for op_node in op_nodes:
        if op_node.name() in out_scale_op_list:
            var_names = _get_op_output_var_names(op_node)
            for var_name in var_names:
                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]:
                    continue

                op_node.op()._set_attr("out_threshold", 3.0)

    # Freeze graph for inference, but the weight of fc/conv is still float type.
    freeze_pass = QuantizationFreezePass(
        scope=scope, place=place, weight_quantize_type=weight_quantize_type)
    freeze_pass.apply(graph)

    main_program = graph.to_program()

    # modify fake_quantize_moving_average_abs_max(InScale) and fake_channel_wise_dequantize_max_abs(Scales)
    op_nodes = graph.all_op_nodes()
    for op_node in op_nodes:
        if op_node.name() == 'fake_quantize_moving_average_abs_max':
            var_name = op_node.input("InScale")[0]
            tensor = scope.var(var_name).get_tensor()
            tensor.set(np.array([1], dtype=np.float32), place)
        elif op_node.name() == 'fake_channel_wise_dequantize_max_abs':
            var_name = op_node.input("Scales")[0]
            tensor = scope.var(var_name).get_tensor()
            tensor.set(np.ones(tensor.shape(), dtype=np.float32), place)

    if save:
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        fluid.io.save_inference_model('test_inference_model',
                                      feed_target_names,
                                      fetch_targets,
                                      exe,
                                      main_program=main_program)
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    feed_vars = [
        main_program.global_block().var(name) for name in feed_target_names
    ]
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    serialized_program = paddle.static.serialize_program(feed_vars,
                                                         fetch_targets,
                                                         program=main_program)
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    serialized_params = paddle.static.serialize_persistables(
        feed_vars, fetch_targets, executor=exe, program=main_program)
    return serialized_program, serialized_params