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- # Copyright 2020 Huawei Technologies Co., Ltd
- #
- # 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.
- # ============================================================================
-
- """
- NEZHA (NEural contextualiZed representation for CHinese lAnguage understanding) is the Chinese pretrained language model currently based on BERT developed by Huawei.
- 1. Prepare data
- Following the data preparation as in BERT, run command as below to get dataset for training:
- python ./create_pretraining_data.py \
- --input_file=./sample_text.txt \
- --output_file=./examples.tfrecord \
- --vocab_file=./your/path/vocab.txt \
- --do_lower_case=True \
- --max_seq_length=128 \
- --max_predictions_per_seq=20 \
- --masked_lm_prob=0.15 \
- --random_seed=12345 \
- --dupe_factor=5
- 2. Pretrain
- First, prepare the distributed training environment, then adjust configurations in config.py, finally run main.py.
- """
-
- import os
- import pytest
- import numpy as np
- from numpy import allclose
- from config import bert_cfg as cfg
- import mindspore.common.dtype as mstype
- import mindspore.dataset.engine.datasets as de
- import mindspore._c_dataengine as deMap
- from mindspore import context
- from mindspore.common.tensor import Tensor
- from mindspore.train.model import Model
- from mindspore.train.callback import Callback
- from mindspore.model_zoo.Bert_NEZHA import BertConfig, BertNetworkWithLoss, BertTrainOneStepCell
- from mindspore.nn.optim import Lamb
- from mindspore import log as logger
- _current_dir = os.path.dirname(os.path.realpath(__file__))
- DATA_DIR = [cfg.DATA_DIR]
- SCHEMA_DIR = cfg.SCHEMA_DIR
-
- def me_de_train_dataset(batch_size):
- """test me de train dataset"""
- # apply repeat operations
- repeat_count = cfg.epoch_size
- ds = de.StorageDataset(DATA_DIR, SCHEMA_DIR, columns_list=["input_ids", "input_mask", "segment_ids",
- "next_sentence_labels", "masked_lm_positions",
- "masked_lm_ids", "masked_lm_weights"])
- type_cast_op = deMap.TypeCastOp("int32")
- ds = ds.map(input_columns="masked_lm_ids", operations=type_cast_op)
- ds = ds.map(input_columns="masked_lm_positions", operations=type_cast_op)
- ds = ds.map(input_columns="next_sentence_labels", operations=type_cast_op)
- ds = ds.map(input_columns="segment_ids", operations=type_cast_op)
- ds = ds.map(input_columns="input_mask", operations=type_cast_op)
- ds = ds.map(input_columns="input_ids", operations=type_cast_op)
- # apply batch operations
- ds = ds.batch(batch_size, drop_remainder=True)
- ds = ds.repeat(repeat_count)
- return ds
-
-
- def weight_variable(shape):
- """weight variable"""
- np.random.seed(1)
- ones = np.random.uniform(-0.1, 0.1, size=shape).astype(np.float32)
- return Tensor(ones)
-
-
- class ModelCallback(Callback):
- def __init__(self):
- super(ModelCallback, self).__init__()
- self.loss_list = []
-
- def step_end(self, run_context):
- cb_params = run_context.original_args()
- self.loss_list.append(cb_params.net_outputs.asnumpy()[0])
- logger.info("epoch: {}, outputs are {}".format(cb_params.cur_epoch_num, str(cb_params.net_outputs)))
-
- def test_bert_tdt():
- """test bert tdt"""
- context.set_context(mode=context.GRAPH_MODE)
- context.set_context(device_target="Ascend")
- context.set_context(enable_task_sink=True)
- context.set_context(enable_loop_sink=True)
- context.set_context(enable_mem_reuse=True)
- parallel_callback = ModelCallback()
- ds = me_de_train_dataset(cfg.bert_config.batch_size)
- config = cfg.bert_config
- netwithloss = BertNetworkWithLoss(config, True)
- optimizer = Lamb(netwithloss.trainable_params(), decay_steps=cfg.decay_steps, start_learning_rate=cfg.start_learning_rate,
- end_learning_rate=cfg.end_learning_rate, power=cfg.power, warmup_steps=cfg.num_warmup_steps, decay_filter=lambda x: False)
- netwithgrads = BertTrainOneStepCell(netwithloss, optimizer=optimizer)
- netwithgrads.set_train(True)
- model = Model(netwithgrads)
- config_ck = CheckpointConfig(save_checkpoint_steps=cfg.save_checkpoint_steps, keep_checkpoint_max=cfg.keep_checkpoint_max)
- ckpoint_cb = ModelCheckpoint(prefix=cfg.checkpoint_prefix, config=config_ck)
- model.train(ds.get_repeat_count(), ds, callbacks=[parallel_callback, ckpoint_cb], dataset_sink_mode=False)
-
- if __name__ == '__main__':
- test_bert_tdt()
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