# 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. from __future__ import absolute_import from __future__ import division from __future__ import print_function import os import sys __dir__ = os.path.dirname(__file__) sys.path.append(__dir__) sys.path.append(os.path.join(__dir__, '..', '..', '..')) sys.path.append(os.path.join(__dir__, '..', '..', '..', 'tools')) import paddle import paddle.distributed as dist from ppocr.data import build_dataloader from ppocr.modeling.architectures import build_model from ppocr.losses import build_loss from ppocr.optimizer import build_optimizer from ppocr.postprocess import build_post_process from ppocr.metrics import build_metric from ppocr.utils.save_load import init_model import tools.program as program dist.get_world_size() def get_pruned_params(parameters): params = [] for param in parameters: if len( param.shape ) == 4 and 'depthwise' not in param.name and 'transpose' not in param.name and "conv2d_57" not in param.name and "conv2d_56" not in param.name: params.append(param.name) return params def main(config, device, logger, vdl_writer): # init dist environment if config['Global']['distributed']: dist.init_parallel_env() global_config = config['Global'] # build dataloader train_dataloader = build_dataloader(config, 'Train', device, logger) if config['Eval']: valid_dataloader = build_dataloader(config, 'Eval', device, logger) else: valid_dataloader = None # build post process post_process_class = build_post_process(config['PostProcess'], global_config) # build model # for rec algorithm if hasattr(post_process_class, 'character'): char_num = len(getattr(post_process_class, 'character')) config['Architecture']["Head"]['out_channels'] = char_num model = build_model(config['Architecture']) flops = paddle.flops(model, [1, 3, 640, 640]) logger.info(f"FLOPs before pruning: {flops}") from paddleslim.dygraph import FPGMFilterPruner model.train() pruner = FPGMFilterPruner(model, [1, 3, 640, 640]) # build loss loss_class = build_loss(config['Loss']) # build optim optimizer, lr_scheduler = build_optimizer( config['Optimizer'], epochs=config['Global']['epoch_num'], step_each_epoch=len(train_dataloader), parameters=model.parameters()) # build metric eval_class = build_metric(config['Metric']) # load pretrain model pre_best_model_dict = init_model(config, model, logger, optimizer) logger.info('train dataloader has {} iters, valid dataloader has {} iters'. format(len(train_dataloader), len(valid_dataloader))) # build metric eval_class = build_metric(config['Metric']) logger.info('train dataloader has {} iters, valid dataloader has {} iters'. format(len(train_dataloader), len(valid_dataloader))) def eval_fn(): metric = program.eval(model, valid_dataloader, post_process_class, eval_class) logger.info(f"metric['hmean']: {metric['hmean']}") return metric['hmean'] params_sensitive = pruner.sensitive( eval_func=eval_fn, sen_file="./sen.pickle", skip_vars=[ "conv2d_57.w_0", "conv2d_transpose_2.w_0", "conv2d_transpose_3.w_0" ]) logger.info( "The sensitivity analysis results of model parameters saved in sen.pickle" ) # calculate pruned params's ratio params_sensitive = pruner._get_ratios_by_loss(params_sensitive, loss=0.02) for key in params_sensitive.keys(): logger.info(f"{key}, {params_sensitive[key]}") plan = pruner.prune_vars(params_sensitive, [0]) for param in model.parameters(): if ("weights" in param.name and "conv" in param.name) or ( "w_0" in param.name and "conv2d" in param.name): logger.info(f"{param.name}: {param.shape}") flops = paddle.flops(model, [1, 3, 640, 640]) logger.info(f"FLOPs after pruning: {flops}") # start train program.train(config, train_dataloader, valid_dataloader, device, model, loss_class, optimizer, lr_scheduler, post_process_class, eval_class, pre_best_model_dict, logger, vdl_writer) if __name__ == '__main__': config, device, logger, vdl_writer = program.preprocess(is_train=True) main(config, device, logger, vdl_writer)