run_classifier.py 16.6 KB
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Yibing Liu 已提交
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#   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.
"""Finetuning on classification tasks."""

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

import os
import time
import argparse
import numpy as np
import multiprocessing

import paddle
import paddle.fluid as fluid

import reader.cls as reader
from model.bert import BertConfig
from model.classifier import create_model
from optimization import optimization
from utils.args import ArgumentGroup, print_arguments
from utils.init import init_pretraining_params, init_checkpoint

# yapf: disable
parser = argparse.ArgumentParser(__doc__)
model_g = ArgumentGroup(parser, "model", "model configuration and paths.")
model_g.add_arg("bert_config_path",         str,  None,           "Path to the json file for bert model config.")
model_g.add_arg("init_checkpoint",          str,  None,           "Init checkpoint to resume training from.")
model_g.add_arg("init_pretraining_params",  str,  None,
                "Init pre-training params which preforms fine-tuning from. If the "
                 "arg 'init_checkpoint' has been set, this argument wouldn't be valid.")
model_g.add_arg("checkpoints",              str,  "checkpoints",  "Path to save checkpoints.")

train_g = ArgumentGroup(parser, "training", "training options.")
train_g.add_arg("epoch",             int,    100,     "Number of epoches for training.")
train_g.add_arg("learning_rate",     float,  5e-5,    "Learning rate used to train with warmup.")
train_g.add_arg("lr_scheduler",      str,    "linear_warmup_decay",
                "scheduler of learning rate.", choices=['linear_warmup_decay', 'noam_decay'])
train_g.add_arg("weight_decay",      float,  0.01,    "Weight decay rate for L2 regularizer.")
train_g.add_arg("warmup_proportion", float,  0.1,
                "Proportion of training steps to perform linear learning rate warmup for.")
train_g.add_arg("save_steps",        int,    10000,   "The steps interval to save checkpoints.")
train_g.add_arg("validation_steps",  int,    1000,    "The steps interval to evaluate model performance.")
train_g.add_arg("use_fp16",          bool,   False,   "Whether to use fp16 mixed precision training.")
train_g.add_arg("loss_scaling",      float,  1.0,
                "Loss scaling factor for mixed precision training, only valid when use_fp16 is enabled.")

log_g = ArgumentGroup(parser,     "logging", "logging related.")
log_g.add_arg("skip_steps",          int,    10,    "The steps interval to print loss.")
log_g.add_arg("verbose",             bool,   False, "Whether to output verbose log.")

data_g = ArgumentGroup(parser, "data", "Data paths, vocab paths and data processing options")
data_g.add_arg("data_dir",      str,  None,  "Path to training data.")
data_g.add_arg("vocab_path",    str,  None,  "Vocabulary path.")
data_g.add_arg("max_seq_len",   int,  512,   "Number of words of the longest seqence.")
data_g.add_arg("batch_size",    int,  8192,  "Total examples' number in batch for training. see also --in_tokens.")
data_g.add_arg("in_tokens",     bool, False,
              "If set, the batch size will be the maximum number of tokens in one batch. "
              "Otherwise, it will be the maximum number of examples in one batch.")
data_g.add_arg("do_lower_case", bool, True,
               "Whether to lower case the input text. Should be True for uncased models and False for cased models.")
data_g.add_arg("random_seed",   int,  0,  "Random seed.")

run_type_g = ArgumentGroup(parser, "run_type", "running type options.")
run_type_g.add_arg("use_cuda",                     bool,   True,  "If set, use GPU for training.")
run_type_g.add_arg("use_fast_executor",            bool,   False, "If set, use fast parallel executor (in experiment).")
run_type_g.add_arg("num_iteration_per_drop_scope", int,    10,    "Iteration intervals to drop scope.")
run_type_g.add_arg("task_name",                    str,    None,
                   "The name of task to perform fine-tuning, should be in {'xnli', 'mnli', 'cola', 'mrpc'}.")
run_type_g.add_arg("do_train",                     bool,   True,  "Whether to perform training.")
run_type_g.add_arg("do_val",                       bool,   True,  "Whether to perform evaluation on dev data set.")
run_type_g.add_arg("do_test",                      bool,   True,  "Whether to perform evaluation on test data set.")

args = parser.parse_args()
# yapf: enable.


def evaluate(exe, test_program, test_pyreader, fetch_list, eval_phase):
    test_pyreader.start()
    total_cost, total_acc, total_num_seqs = [], [], []
    time_begin = time.time()
    while True:
        try:
            np_loss, np_acc, np_num_seqs = exe.run(program=test_program,
                                                   fetch_list=fetch_list)
            total_cost.extend(np_loss * np_num_seqs)
            total_acc.extend(np_acc * np_num_seqs)
            total_num_seqs.extend(np_num_seqs)
        except fluid.core.EOFException:
            test_pyreader.reset()
            break
    time_end = time.time()
    print("[%s evaluation] ave loss: %f, ave acc: %f, elapsed time: %f s" %
          (eval_phase, np.sum(total_cost) / np.sum(total_num_seqs),
           np.sum(total_acc) / np.sum(total_num_seqs), time_end - time_begin))


def main(args):
    bert_config = BertConfig(args.bert_config_path)
    bert_config.print_config()

    if args.use_cuda:
        place = fluid.CUDAPlace(int(os.getenv('FLAGS_selected_gpus', '0')))
        dev_count = fluid.core.get_cuda_device_count()
    else:
        place = fluid.CPUPlace()
        dev_count = int(os.environ.get('CPU_NUM', multiprocessing.cpu_count()))
    exe = fluid.Executor(place)

    task_name = args.task_name.lower()
    processors = {
        'xnli': reader.XnliProcessor,
        'cola': reader.ColaProcessor,
        'mrpc': reader.MrpcProcessor,
        'mnli': reader.MnliProcessor,
    }

    processor = processors[task_name](data_dir=args.data_dir,
                                      vocab_path=args.vocab_path,
                                      max_seq_len=args.max_seq_len,
                                      do_lower_case=args.do_lower_case,
                                      in_tokens=args.in_tokens,
                                      random_seed=args.random_seed)
    num_labels = len(processor.get_labels())

    if not (args.do_train or args.do_val or args.do_test):
        raise ValueError("For args `do_train`, `do_val` and `do_test`, at "
                         "least one of them must be True.")

    startup_prog = fluid.Program()
    if args.random_seed is not None:
        startup_prog.random_seed = args.random_seed

    if args.do_train:
        train_data_generator = processor.data_generator(
            batch_size=args.batch_size,
            phase='train',
            epoch=args.epoch,
            shuffle=True)

        num_train_examples = processor.get_num_examples(phase='train')

        if args.in_tokens:
            max_train_steps = args.epoch * num_train_examples // (
                args.batch_size // args.max_seq_len) // dev_count
        else:
            max_train_steps = args.epoch * num_train_examples // args.batch_size // dev_count

        warmup_steps = int(max_train_steps * args.warmup_proportion)
        print("Device count: %d" % dev_count)
        print("Num train examples: %d" % num_train_examples)
        print("Max train steps: %d" % max_train_steps)
        print("Num warmup steps: %d" % warmup_steps)

        train_program = fluid.Program()

        with fluid.program_guard(train_program, startup_prog):
            with fluid.unique_name.guard():
                train_pyreader, loss, probs, accuracy, num_seqs = create_model(
                    args,
                    pyreader_name='train_reader',
                    bert_config=bert_config,
                    num_labels=num_labels)
                scheduled_lr = optimization(
                    loss=loss,
                    warmup_steps=warmup_steps,
                    num_train_steps=max_train_steps,
                    learning_rate=args.learning_rate,
                    train_program=train_program,
                    startup_prog=startup_prog,
                    weight_decay=args.weight_decay,
                    scheduler=args.lr_scheduler,
                    use_fp16=args.use_fp16,
                    loss_scaling=args.loss_scaling)

                fluid.memory_optimize(
                    input_program=train_program,
                    skip_opt_set=[
                        loss.name, probs.name, accuracy.name, num_seqs.name
                    ])

        if args.verbose:
            if args.in_tokens:
                lower_mem, upper_mem, unit = fluid.contrib.memory_usage(
                    program=train_program,
                    batch_size=args.batch_size // args.max_seq_len)
            else:
                lower_mem, upper_mem, unit = fluid.contrib.memory_usage(
                    program=train_program, batch_size=args.batch_size)
            print("Theoretical memory usage in training: %.3f - %.3f %s" %
                  (lower_mem, upper_mem, unit))

    if args.do_val or args.do_test:
        test_prog = fluid.Program()
        with fluid.program_guard(test_prog, startup_prog):
            with fluid.unique_name.guard():
                test_pyreader, loss, probs, accuracy, num_seqs = create_model(
                    args,
                    pyreader_name='test_reader',
                    bert_config=bert_config,
                    num_labels=num_labels)

        test_prog = test_prog.clone(for_test=True)

    exe.run(startup_prog)

    if args.do_train:
        if args.init_checkpoint and args.init_pretraining_params:
            print(
                "WARNING: args 'init_checkpoint' and 'init_pretraining_params' "
                "both are set! Only arg 'init_checkpoint' is made valid.")
        if args.init_checkpoint:
            init_checkpoint(
                exe,
                args.init_checkpoint,
                main_program=startup_prog,
                use_fp16=args.use_fp16)
        elif args.init_pretraining_params:
            init_pretraining_params(
                exe,
                args.init_pretraining_params,
                main_program=startup_prog,
                use_fp16=args.use_fp16)
    elif args.do_val or args.do_test:
        if not args.init_checkpoint:
            raise ValueError("args 'init_checkpoint' should be set if"
                             "only doing validation or testing!")
        init_checkpoint(
            exe,
            args.init_checkpoint,
            main_program=startup_prog,
            use_fp16=args.use_fp16)

    if args.do_train:
        exec_strategy = fluid.ExecutionStrategy()
        if args.use_fast_executor:
            exec_strategy.use_experimental_executor = True
        exec_strategy.num_threads = dev_count
        exec_strategy.num_iteration_per_drop_scope = args.num_iteration_per_drop_scope

        train_exe = fluid.ParallelExecutor(
            use_cuda=args.use_cuda,
            loss_name=loss.name,
            exec_strategy=exec_strategy,
            main_program=train_program)

        train_pyreader.decorate_tensor_provider(train_data_generator)
    else:
        train_exe = None

    if args.do_val or args.do_test:
        test_exe = fluid.ParallelExecutor(
            use_cuda=args.use_cuda,
            main_program=test_prog,
            share_vars_from=train_exe)

    if args.do_train:
        train_pyreader.start()
        steps = 0
        total_cost, total_acc, total_num_seqs = [], [], []
        time_begin = time.time()
        while True:
            try:
                steps += 1
                if steps % args.skip_steps == 0:
                    if warmup_steps <= 0:
                        fetch_list = [loss.name, accuracy.name, num_seqs.name]
                    else:
                        fetch_list = [
                            loss.name, accuracy.name, scheduled_lr.name,
                            num_seqs.name
                        ]
                else:
                    fetch_list = []

                outputs = train_exe.run(fetch_list=fetch_list)

                if steps % args.skip_steps == 0:
                    if warmup_steps <= 0:
                        np_loss, np_acc, np_num_seqs = outputs
                    else:
                        np_loss, np_acc, np_lr, np_num_seqs = outputs

                    total_cost.extend(np_loss * np_num_seqs)
                    total_acc.extend(np_acc * np_num_seqs)
                    total_num_seqs.extend(np_num_seqs)

                    if args.verbose:
                        verbose = "train pyreader queue size: %d, " % train_pyreader.queue.size(
                        )
                        verbose += "learning rate: %f" % (
                            np_lr[0]
                            if warmup_steps > 0 else args.learning_rate)
                        print(verbose)

                    current_example, current_epoch = processor.get_train_progress(
                    )
                    time_end = time.time()
                    used_time = time_end - time_begin
                    print("epoch: %d, progress: %d/%d, step: %d, ave loss: %f, "
                          "ave acc: %f, speed: %f steps/s" %
                          (current_epoch, current_example, num_train_examples,
                           steps, np.sum(total_cost) / np.sum(total_num_seqs),
                           np.sum(total_acc) / np.sum(total_num_seqs),
                           args.skip_steps / used_time))
                    total_cost, total_acc, total_num_seqs = [], [], []
                    time_begin = time.time()

                if steps % args.save_steps == 0:
                    save_path = os.path.join(args.checkpoints,
                                             "step_" + str(steps))
                    fluid.io.save_persistables(exe, save_path, train_program)

                if steps % args.validation_steps == 0:
                    # evaluate dev set
                    if args.do_val:
                        test_pyreader.decorate_tensor_provider(
                            processor.data_generator(
                                batch_size=args.batch_size,
                                phase='dev',
                                epoch=1,
                                shuffle=False))
                        evaluate(exe, test_prog, test_pyreader,
                                 [loss.name, accuracy.name, num_seqs.name],
                                 "dev")
                    # evaluate test set
                    if args.do_test:
                        test_pyreader.decorate_tensor_provider(
                            processor.data_generator(
                                batch_size=args.batch_size,
                                phase='test',
                                epoch=1,
                                shuffle=False))
                        evaluate(exe, test_prog, test_pyreader,
                                 [loss.name, accuracy.name, num_seqs.name],
                                 "test")
            except fluid.core.EOFException:
                save_path = os.path.join(args.checkpoints, "step_" + str(steps))
                fluid.io.save_persistables(exe, save_path, train_program)
                train_pyreader.reset()
                break

    # final eval on dev set
    if args.do_val:
        test_pyreader.decorate_tensor_provider(
            processor.data_generator(
                batch_size=args.batch_size, phase='dev', epoch=1,
                shuffle=False))
        print("Final validation result:")
        evaluate(exe, test_prog, test_pyreader,
                 [loss.name, accuracy.name, num_seqs.name], "dev")

    # final eval on test set
    if args.do_test:
        test_pyreader.decorate_tensor_provider(
            processor.data_generator(
                batch_size=args.batch_size,
                phase='test',
                epoch=1,
                shuffle=False))
        print("Final test result:")
        evaluate(exe, test_prog, test_pyreader,
                 [loss.name, accuracy.name, num_seqs.name], "test")


if __name__ == '__main__':
    print_arguments(args)
    main(args)