quanter.py 25.3 KB
Newer Older
F
ftian 已提交
1 2 3 4 5 6 7 8 9 10 11 12 13 14
# Copyright (c) 2019  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.

15
import os
F
ftian 已提交
16
import copy
17
import json
18 19
import logging

F
ftian 已提交
20 21 22 23 24 25 26
import paddle
import paddle.fluid as fluid
from paddle.fluid.framework import IrGraph
from paddle.fluid.contrib.slim.quantization import QuantizationTransformPass
from paddle.fluid.contrib.slim.quantization import QuantizationFreezePass
from paddle.fluid.contrib.slim.quantization import ConvertToInt8Pass
from paddle.fluid.contrib.slim.quantization import TransformForMobilePass
S
slf12 已提交
27
from paddle.fluid.contrib.slim.quantization import PostTrainingQuantization
S
slf12 已提交
28
from paddle.fluid.contrib.slim.quantization import AddQuantDequantPass
29 30
from paddle.fluid.contrib.slim.quantization import OutScaleForTrainingPass
from paddle.fluid.contrib.slim.quantization import OutScaleForInferencePass
F
ftian 已提交
31
from paddle.fluid import core
L
Liufang Sang 已提交
32
from paddle.fluid.contrib.slim.quantization import WeightQuantization
F
ftian 已提交
33

34 35 36
from ..common import get_logger
_logger = get_logger(__name__, level=logging.INFO)

S
slf12 已提交
37
WEIGHT_QUANTIZATION_TYPES = [
38
    'abs_max', 'channel_wise_abs_max', 'range_abs_max', 'moving_average_abs_max'
S
slf12 已提交
39
]
40 41
WEIGHT_QUANTIZATION_TYPES_TENSORRT = ['channel_wise_abs_max']

S
slf12 已提交
42 43 44
ACTIVATION_QUANTIZATION_TYPES = [
    'abs_max', 'range_abs_max', 'moving_average_abs_max'
]
45 46 47 48 49

ACTIVATION_QUANTIZATION_TYPES_TENSORRT = [
    'range_abs_max', 'moving_average_abs_max'
]

F
ftian 已提交
50
VALID_DTYPES = ['int8']
51
TRANSFORM_PASS_OP_TYPES = QuantizationTransformPass._supported_quantizable_op_type
52 53
QUANT_DEQUANT_PASS_OP_TYPES = AddQuantDequantPass._supported_quantizable_op_type

54 55 56 57
TENSORRT_OP_TYPES = [
    'mul', 'conv2d', 'pool2d', 'depthwise_conv2d', 'elementwise_add',
    'leaky_relu'
]
F
ftian 已提交
58

59 60
VARS_MAPPING_TABLE = './mapping_table_for_saving_inference_model'

F
ftian 已提交
61
_quant_config_default = {
62 63 64 65
    # weight quantize type, default is 'channel_wise_abs_max'
    'weight_quantize_type': 'channel_wise_abs_max',
    # activation quantize type, default is 'moving_average_abs_max'
    'activation_quantize_type': 'moving_average_abs_max',
F
ftian 已提交
66 67 68 69 70 71 72
    # weight quantize bit num, default is 8
    'weight_bits': 8,
    # activation quantize bit num, default is 8
    'activation_bits': 8,
    # ops of name_scope in not_quant_pattern list, will not be quantized
    'not_quant_pattern': ['skip_quant'],
    # ops of type in quantize_op_types, will be quantized
73
    'quantize_op_types': ['conv2d', 'depthwise_conv2d', 'mul'],
F
ftian 已提交
74 75 76 77 78 79
    # data type after quantization, such as 'uint8', 'int8', etc. default is 'int8'
    'dtype': 'int8',
    # window size for 'range_abs_max' quantization. defaulf is 10000
    'window_size': 10000,
    # The decay coefficient of moving average, default is 0.9
    'moving_rate': 0.9,
80 81 82 83
    # if True, 'quantize_op_types' will be TENSORRT_OP_TYPES
    'for_tensorrt': False,
    # if True, 'quantoze_op_types' will be TRANSFORM_PASS_OP_TYPES + QUANT_DEQUANT_PASS_OP_TYPES 
    'is_full_quantize': False
F
ftian 已提交
84 85 86
}


87 88 89 90 91 92 93 94 95 96 97 98
def load_dict():
    with open(VARS_MAPPING_TABLE, 'r') as file:
        data = file.read()
        data = json.loads(data)
        return data


def save_dict(table):
    with open(VARS_MAPPING_TABLE, 'w') as file:
        file.write(json.dumps(table))


F
ftian 已提交
99 100
def _parse_configs(user_config):
    """
101
    check if user's configs are valid.
F
ftian 已提交
102
    Args:
103
        user_config(dict): user's config.
F
ftian 已提交
104 105 106 107 108 109 110
    Return:
        configs(dict): final configs will be used.
    """

    configs = copy.deepcopy(_quant_config_default)
    configs.update(user_config)

111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126
    assert isinstance(configs['for_tensorrt'], bool) and isinstance(
        configs['is_full_quantize'],
        bool), "'for_tensorrt' and 'is_full_quantize' must both be bool'"

    # check if configs is valid
    if configs['for_tensorrt']:
        weight_types = WEIGHT_QUANTIZATION_TYPES_TENSORRT
        activation_types = ACTIVATION_QUANTIZATION_TYPES_TENSORRT
        platform = 'TensorRT'
    else:
        weight_types = WEIGHT_QUANTIZATION_TYPES
        activation_types = WEIGHT_QUANTIZATION_TYPES
        platform = 'PaddleLite'
    assert configs['weight_quantize_type'] in weight_types, \
        "Unknown weight_quantize_type: {}. {} only supports {} ".format(configs['weight_quantize_type'],
                platform, weight_types)
F
ftian 已提交
127

128 129 130
    assert configs['activation_quantize_type'] in activation_types, \
        "Unknown activation_quantize_type: {}. {} only supports {}".format(configs['activation_quantize_type'],
                platform, activation_types)
F
ftian 已提交
131 132 133 134 135 136 137 138 139 140 141 142 143

    assert isinstance(configs['weight_bits'], int), \
        "weight_bits must be int value."

    assert (configs['weight_bits'] >= 1 and configs['weight_bits'] <= 16), \
        "weight_bits should be between 1 and 16."

    assert isinstance(configs['activation_bits'], int), \
        "activation_bits must be int value."

    assert (configs['activation_bits'] >= 1 and configs['activation_bits'] <= 16), \
        "activation_bits should be between 1 and 16."

144 145
    assert isinstance(configs['not_quant_pattern'], (list, str)), \
        "not_quant_pattern must be list or str"
F
ftian 已提交
146 147 148 149

    assert isinstance(configs['quantize_op_types'], list), \
        "quantize_op_types must be a list"

150 151 152 153 154 155 156 157 158 159 160 161
    if configs['for_tensorrt']:
        configs['quantize_op_types'] = TENSORRT_OP_TYPES
    elif configs['is_full_quantize']:
        configs[
            'quantize_op_types'] = TRANSFORM_PASS_OP_TYPES + QUANT_DEQUANT_PASS_OP_TYPES
    else:
        for op_type in configs['quantize_op_types']:
            assert (op_type in QUANT_DEQUANT_PASS_OP_TYPES) or (
                op_type in TRANSFORM_PASS_OP_TYPES), "{} is not support, \
                        now support op types are {}".format(
                    op_type,
                    TRANSFORM_PASS_OP_TYPES + QUANT_DEQUANT_PASS_OP_TYPES)
S
slf12 已提交
162

F
ftian 已提交
163 164 165 166 167 168 169 170 171 172 173 174 175 176 177
    assert isinstance(configs['dtype'], str), \
        "dtype must be a str."

    assert (configs['dtype'] in VALID_DTYPES), \
        "dtype can only be " + " ".join(VALID_DTYPES)

    assert isinstance(configs['window_size'], int), \
        "window_size must be int value, window size for 'range_abs_max' quantization, default is 10000."

    assert isinstance(configs['moving_rate'], float), \
        "moving_rate must be float value, The decay coefficient of moving average, default is 0.9."

    return configs


178 179 180 181 182 183 184 185 186 187 188
def quant_aware(program,
                place,
                config=None,
                scope=None,
                for_test=False,
                weight_quantize_func=None,
                act_quantize_func=None,
                weight_preprocess_func=None,
                act_preprocess_func=None,
                optimizer_func=None,
                executor=None):
189 190 191
    """Add quantization  and dequantization operators to "program" 
    for quantization training or testing.

F
ftian 已提交
192
    Args:
193 194 195 196 197 198 199 200 201 202
        program(fluid.Program): training or testing ``program``.
        place(fluid.CPUPlace or fluid.CUDAPlace): This parameter represents 
            the executor run on which device.
        config(dict, optional): configs for quantization. if None, will use default config. 
            Default: None.
        scope(fluid.Scope): Scope records the mapping between variable names and variables, 
            similar to brackets in programming languages. Usually users can use 
            `fluid.global_scope <https://www.paddlepaddle.org.cn/documentation/docs/zh/develop/api_cn/executor_cn/global_scope_cn.html>`_.              When ``None`` will use `fluid.global_scope() <https://www.paddlepaddle.org.cn/documentation/docs/zh/develop/api_cn/executor_cn/global_scope_cn.html>`_ . Default: ``None``.
        for_test(bool): If the 'program' parameter is a test program, this parameter should be set to ``True``. 
            Otherwise, set to ``False``.Default: False
203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228
       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.
        exe(Fluid.Executor): If user want to use self-defined quantization function and preprocess function, exe must be set for
                initialization. Default is None.
229 230
    Returns:
        fluid.CompiledProgram | fluid.Program: Program with quantization and dequantization ``operators``
F
ftian 已提交
231 232 233
    """

    scope = fluid.global_scope() if not scope else scope
234 235 236 237 238 239
    if config is None:
        config = _quant_config_default
    else:
        assert isinstance(config, dict), "config must be dict"
        config = _parse_configs(config)
    _logger.info("quant_aware config {}".format(config))
F
ftian 已提交
240 241 242

    main_graph = IrGraph(core.Graph(program.desc), for_test=for_test)

S
slf12 已提交
243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260
    transform_pass_ops = []
    quant_dequant_ops = []
    for op_type in config['quantize_op_types']:
        if op_type in TRANSFORM_PASS_OP_TYPES:
            transform_pass_ops.append(op_type)
        elif op_type in QUANT_DEQUANT_PASS_OP_TYPES:
            quant_dequant_ops.append(op_type)
    if len(transform_pass_ops) > 0:
        transform_pass = QuantizationTransformPass(
            scope=scope,
            place=place,
            weight_bits=config['weight_bits'],
            activation_bits=config['activation_bits'],
            activation_quantize_type=config['activation_quantize_type'],
            weight_quantize_type=config['weight_quantize_type'],
            window_size=config['window_size'],
            moving_rate=config['moving_rate'],
            quantizable_op_type=transform_pass_ops,
261 262 263 264 265 266 267
            skip_pattern=config['not_quant_pattern'],
            weight_quantize_func=weight_quantize_func,
            act_quantize_func=act_quantize_func,
            weight_preprocess_func=weight_preprocess_func,
            act_preprocess_func=act_preprocess_func,
            optimizer_func=optimizer_func,
            executor=executor)
S
slf12 已提交
268 269 270 271 272 273 274 275 276 277 278 279

        transform_pass.apply(main_graph)

    if len(quant_dequant_ops) > 0:
        quant_dequant_pass = AddQuantDequantPass(
            scope=scope,
            place=place,
            moving_rate=config['moving_rate'],
            quant_bits=config['activation_bits'],
            skip_pattern=config['not_quant_pattern'],
            quantizable_op_type=quant_dequant_ops)
        quant_dequant_pass.apply(main_graph)
F
ftian 已提交
280

281 282 283 284
    out_scale_training_pass = OutScaleForTrainingPass(
        scope=scope, place=place, moving_rate=config['moving_rate'])
    out_scale_training_pass.apply(main_graph)

285 286 287 288 289 290 291 292 293
    if (weight_preprocess_func is not None or
            act_preprocess_func is not None) and not for_test:
        _logger.info(
            "When a preprocess_func is used in quant_aware, Need to save a mapping table to match variable names in the convert phase."
        )
        _logger.info("The mapping table is saved as '{}'.".format(
            VARS_MAPPING_TABLE))
        save_dict(main_graph.out_node_mapping_table)

F
ftian 已提交
294 295 296 297 298 299 300
    if for_test:
        quant_program = main_graph.to_program()
    else:
        quant_program = fluid.CompiledProgram(main_graph.graph)
    return quant_program


301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322
def quant_post_static(
        executor,
        model_dir,
        quantize_model_path,
        batch_generator=None,
        sample_generator=None,
        model_filename=None,
        params_filename=None,
        save_model_filename='__model__',
        save_params_filename='__params__',
        batch_size=16,
        batch_nums=None,
        scope=None,
        algo='KL',
        quantizable_op_type=["conv2d", "depthwise_conv2d", "mul"],
        is_full_quantize=False,
        weight_bits=8,
        activation_bits=8,
        activation_quantize_type='range_abs_max',
        weight_quantize_type='channel_wise_abs_max',
        is_use_cache_file=False,
        cache_dir="./temp_post_training"):
F
ftian 已提交
323
    """
324 325 326 327
    The function utilizes static post training quantization method to
    quantize the fp32 model. It uses calibrate data to calculate the
    scale factor of quantized variables, and inserts fake quantization
    and dequantization operators to obtain the quantized model.
S
slf12 已提交
328

F
ftian 已提交
329
    Args:
S
slf12 已提交
330 331
        executor(fluid.Executor): The executor to load, run and save the 
            quantized model.
S
slf12 已提交
332
        model_dir(str): The path of fp32 model that will be quantized, and 
333
            the model and params that saved by ``fluid.io.save_inference_model`` 
S
slf12 已提交
334 335
            are under the path.
        quantize_model_path(str): The path to save quantized model using api
336
            ``fluid.io.save_inference_model``.
337 338 339 340
        batch_generator(Python Generator): The batch generator provides 
                calibrate data for DataLoader, and it returns a batch every
                time. For sample_generator and batch_generator, only one
                can be set. Beisdes, batch_generator supports lod tensor.
S
slf12 已提交
341 342
        sample_generator(Python Generator): The sample generator provides 
            calibrate data for DataLoader, and it only returns a sample every time.
S
slf12 已提交
343
        model_filename(str, optional): The name of model file. If parameters 
344
            are saved in separate files, set it as 'None'. Default: 'None'.
S
slf12 已提交
345
        params_filename(str, optional): The name of params file.
S
slf12 已提交
346 347
                When all parameters are saved in a single file, set it 
                as filename. If parameters are saved in separate files, 
348
                set it as 'None'. Default : 'None'.
349 350 351
        save_model_filename(str): The name of model file to save the quantized inference program.  Default: '__model__'.
        save_params_filename(str): The name of file to save all related parameters. 
                If it is set None, parameters will be saved in separate files. Default: '__params__'.
S
slf12 已提交
352
        batch_size(int, optional): The batch size of DataLoader, default is 16.
S
slf12 已提交
353
        batch_nums(int, optional): If batch_nums is not None, the number of calibrate 
S
slf12 已提交
354 355 356 357
                        data is 'batch_size*batch_nums'. If batch_nums is None, use all data
                        generated by sample_generator  as calibrate data.
        scope(fluid.Scope, optional): The scope to run program, use it to load 
                        and save variables. If scope is None, will use fluid.global_scope().
S
slf12 已提交
358 359
        algo(str, optional): If algo=KL, use KL-divergenc method to 
                        get the more precise scale factor. If algo='direct', use 
360
                        abs_max method to get the scale factor. Default: 'KL'.
S
slf12 已提交
361
        quantizable_op_type(list[str], optional): The list of op types
362
                        that will be quantized. Default: ["conv2d", "depthwise_conv2d", 
S
slf12 已提交
363
                        "mul"].
L
Liufang Sang 已提交
364 365
        weight_bits(int, optional): quantization bit number for weights.
        activation_bits(int): quantization bit number for activation.
366 367 368 369 370 371 372 373 374
	activation_quantize_type(str): quantization type for activation,
                now support 'range_abs_max', 'moving_average_abs_max' and 'abs_max'.
                This parameter only specifies the fake ops in quantized model.
                If it is 'range_abs_max' or 'moving_average_abs_max', we save the scale
                obtained by post training quantization in fake ops. If it
                is 'abs_max', the scale will not be saved in fake ops.
        weight_quantize_type(str): quantization type for weights,
                support 'abs_max' and 'channel_wise_abs_max'. Compared to 'abs_max',
                the model accuracy is usually higher when using 'channel_wise_abs_max'.
375 376 377
        is_full_quantize(bool): if True, apply quantization to all supported quantizable op type.
                        If False, only apply quantization to the input quantizable_op_type. Default is False.
        is_use_cache_file(bool): If False, all temp data will be saved in memory. If True,
378
                                all temp data will be saved to disk. Defalut: False.
379
        cache_dir(str): When 'is_use_cache_file' is True, temp data will be save in 'cache_dir'. Default is './temp_post_training'.
380
    
S
slf12 已提交
381 382
    Returns:
        None
F
ftian 已提交
383
    """
S
slf12 已提交
384
    post_training_quantization = PostTrainingQuantization(
S
slf12 已提交
385 386
        executor=executor,
        sample_generator=sample_generator,
387
        batch_generator=batch_generator,
S
slf12 已提交
388 389 390 391 392 393 394 395
        model_dir=model_dir,
        model_filename=model_filename,
        params_filename=params_filename,
        batch_size=batch_size,
        batch_nums=batch_nums,
        scope=scope,
        algo=algo,
        quantizable_op_type=quantizable_op_type,
396
        is_full_quantize=is_full_quantize,
L
Liufang Sang 已提交
397 398
        weight_bits=weight_bits,
        activation_bits=activation_bits,
399 400
        activation_quantize_type=activation_quantize_type,
        weight_quantize_type=weight_quantize_type,
401 402
        is_use_cache_file=is_use_cache_file,
        cache_dir=cache_dir)
S
slf12 已提交
403
    post_training_quantization.quantize()
404 405 406 407
    post_training_quantization.save_quantized_model(
        quantize_model_path,
        model_filename=save_model_filename,
        params_filename=save_params_filename)
F
ftian 已提交
408

409

410 411 412 413 414
# We have changed the quant_post to quant_post_static.
# For compatibility, we keep quant_post api for now, and it will be
# deprecated in the future.
quant_post = quant_post_static

F
ftian 已提交
415

416
def convert(program, place, config=None, scope=None, save_int8=False):
F
ftian 已提交
417
    """
418 419
    convert quantized and well-trained ``program`` to final  quantized
    ``program``that can be used to  save ``inference model``.
420
    
F
ftian 已提交
421
    Args:
422
        program(fluid.Program): quantized and well-trained ``test program``.
423 424 425 426 427 428 429 430 431 432 433 434 435 436 437
        place(fluid.CPUPlace or fluid.CUDAPlace): This parameter represents
                the executor run on which device.
        config(dict, optional): configs for convert. if set None, will use
                default config. It must be same with config that used in
                'quant_aware'. Default is None.
        scope(fluid.Scope, optional):  Scope records the mapping between
                variable names and variables, similar to brackets in
                programming languages. Usually users can use
                `fluid.global_scope <https://www.paddlepaddle.org.cn/documentation/docs/zh/develop/api_cn/executor_cn/global_scope_cn.html>`_.
                When ``None`` will use 
                `fluid.global_scope() <https://www.paddlepaddle.org.cn/documentation/docs/zh/develop/api_cn/executor_cn/global_scope_cn.html>`_
                . Default: ``None``.
        save_int8: Whether to return ``program`` which model parameters'
                dtype is ``int8``. This parameter can only be used to
                get model size. Default: ``False``.
438 439 440

    Returns:
        Tuple : freezed program which can be used for inference.
441 442 443
                when ``save_int8`` is False, return ``freezed_program(fluid.Program)``.
                when ``save_int8`` is True, return ``freezed_program(fluid.Program)``
                and ``freezed_program_int8(fluid.Program)``
F
ftian 已提交
444
    """
S
slf12 已提交
445
    scope = fluid.global_scope() if not scope else scope
446 447 448 449 450 451 452

    if config is None:
        config = _quant_config_default
    else:
        assert isinstance(config, dict), "config must be dict"
        config = _parse_configs(config)
    _logger.info("convert config {}".format(config))
F
ftian 已提交
453 454
    test_graph = IrGraph(core.Graph(program.desc), for_test=True)

455 456 457
    out_scale_infer_pass = OutScaleForInferencePass(scope=scope)
    out_scale_infer_pass.apply(test_graph)

F
ftian 已提交
458 459 460 461 462
    # Freeze the graph after training by adjusting the quantize
    # operators' order for the inference.
    freeze_pass = QuantizationFreezePass(
        scope=scope,
        place=place,
463 464
        weight_bits=config['weight_bits'],
        activation_bits=config['activation_bits'],
465 466
        weight_quantize_type=config['weight_quantize_type'])

467 468 469
    if os.path.exists(VARS_MAPPING_TABLE):
        test_graph.out_node_mapping_table = load_dict()

F
ftian 已提交
470 471 472 473
    freeze_pass.apply(test_graph)
    freezed_program = test_graph.to_program()

    if save_int8:
474
        convert_int8_pass = ConvertToInt8Pass(scope=scope, place=place)
F
ftian 已提交
475 476 477 478 479
        convert_int8_pass.apply(test_graph)
        freezed_program_int8 = test_graph.to_program()
        return freezed_program, freezed_program_int8
    else:
        return freezed_program
L
Liufang Sang 已提交
480 481


482
def quant_post_dynamic(model_dir,
483 484 485 486 487 488 489 490
                       save_model_dir,
                       model_filename=None,
                       params_filename=None,
                       save_model_filename=None,
                       save_params_filename=None,
                       quantizable_op_type=["conv2d", "mul"],
                       weight_bits=8,
                       generate_test_model=False):
L
Liufang Sang 已提交
491
    '''
492 493 494 495 496 497 498
    The function utilizes static post training quantization method to
    quantize the fp32 model. In details, it quantizes the weight of some
    ops from float32 to int8/16. For the quantized model, there are two
    kinds of calculation method in the reference stage. Firstly, the
    quantized weight will be dequantized to float32, and then apply the
    float32 calculation. Secondly, collect the quantized scales of the
    inputs, and then apply the int8 calculation.
L
Liufang Sang 已提交
499 500 501
        
    Args:
        model_dir(str): The path of the fp32 model that will be quantized,
502
                and the model and params files are under the path.
L
Liufang Sang 已提交
503
        save_model_dir(str): The path to save the quantized model.
504 505 506 507 508 509 510 511
        model_filename(str, optional): The name of file used to load the
                inference program. If it is None, the default filename
                '__model__' will be used. Default is 'None'.
        params_filename(str, optional): The name of file used to load all
                parameters. When all parameters were saved in a single
                binary file, set it as the real filename. If parameters
                were saved in separate files, set it as 'None'. Default is
                'None'.
L
Liufang Sang 已提交
512 513 514 515 516 517 518 519 520 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535
        save_model_dir(str): The path used to save the quantized model.
        save_model_filename(str, optional): The name of file to 
                save the inference program. If it is None, the default 
                filename '__model__' will be used. Default is 'None'.
        save_params_filename(str, optional): The name of file to 
                save all parameters. If it is None, parameters were 
                saved in separate files. If it is not None, all 
                parameters were saved in a single binary file.
        quantizable_op_type(list[str], optional): The list of ops 
                that will be quantized, and the quantized ops should be
                contained in ["conv2d", "depthwise_conv2d", "mul"]. 
                Default is ["conv2d", "depthwise_conv2d", "mul"].
        weight_bits(int, optional): The bits for the quantized weight, 
                and it should be 8 or 16. Default is 8.
        generate_test_model(bool, optional): If set generate_test_model 
                as True, it saves a fake quantized model, in which the weights 
                are quantized and dequantized. We can use PaddlePaddle to load 
                the fake quantized model and test the accuracy on GPU or CPU.
    '''

    weight_quant = WeightQuantization(
        model_dir=model_dir,
        model_filename=model_filename,
        params_filename=params_filename)
536

L
Liufang Sang 已提交
537 538 539 540 541 542 543
    weight_quant.quantize_weight_to_int(
        save_model_dir=save_model_dir,
        save_model_filename=save_model_filename,
        save_params_filename=save_params_filename,
        quantizable_op_type=quantizable_op_type,
        weight_bits=weight_bits,
        generate_test_model=generate_test_model)
544 545 546 547 548


# We have changed the quant_post_only_weight to quant_post_dynamic.
# For compatibility, we keep quant_post_only_weight api for now,
# and it will be deprecated in the future.
549
quant_post_only_weight = quant_post_dynamic