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pretrain_t5.py
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pretrain_t5.py
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# Copyright (c) 2022, NVIDIA CORPORATION. All rights reserved.
"""Pretrain T5"""
from functools import partial
import torch
from megatron import (
get_args,
get_timers,
print_rank_0
)
from megatron.core import tensor_parallel
from megatron.data.dataset_utils import build_train_valid_test_datasets
from megatron.model import T5Model, ModelType
from megatron.training import pretrain
from megatron.utils import average_losses_across_data_parallel_group
"""
Pipeline parallelism for T5
===========================
T5 is a model architecture with both encoder and decoder blocks.
Consequently, pipeline parallelism is implemented slightly differently
compared to architectures like GPT and BERT.
In particular, when pipeline_model_parallel_world_size > 1, each stage
either executes an encoder block or a decoder block. The
--pipeline-model-parallel-split-rank argument controls the rank at which
the split happens: all ranks lower than this argument execute the
encoder block, and all ranks equal to or higher than this argument value
execute the decoder block.
In the encoder section of the model, only one tensor is sent downstream:
the intermediate encoder_hidden_state. In the decoder section of the
model, two tensors are sent downstream in the forward pass: the fully
computed encoder_hidden_state, and the intermediate decoder_hidden_state.
In particular, these are the shapes of the tensors sent between
different workers:
If rank is in decoder section:
intermediate decoder_hidden_state (pre-transpose),
complete encoder_hidden_state (post-transpose).
If rank is at boundary between encoder and decoder sections:
complete encoder_hidden_state (post-transpose).
If rank is in encoder section:
intermediate encoder_hidden_state (pre-transpose).
Additionally, we have code in the backward_step function in schedules.py
to accumulate the encoder_hidden_state gradient across skip connections
(encoder_hidden_state fed in as input to each layer in the decoder).
"""
def model_provider(pre_process=True, post_process=True,
add_encoder=True, add_decoder=True):
"""Build the model."""
print_rank_0('building T5 model ...')
model = T5Model(num_tokentypes=0,
parallel_output=True,
pre_process=pre_process,
post_process=post_process,
add_encoder=add_encoder,
add_decoder=add_decoder)
return model
def get_batch(data_iterator):
"""Build the batch."""
keys = ['text_enc', 'text_dec', 'labels', 'loss_mask',
'enc_mask', 'dec_mask', 'enc_dec_mask']
datatype = torch.int64
# Broadcast data.
if data_iterator is not None:
data = next(data_iterator)
else:
data = None
data_b = tensor_parallel.broadcast_data(keys, data, datatype)
# Unpack.
tokens_enc = data_b['text_enc'].long()
tokens_dec = data_b['text_dec'].long()
labels = data_b['labels'].long()
loss_mask = data_b['loss_mask'].float()
enc_mask = (data_b['enc_mask'] < 0.5)
dec_mask = (data_b['dec_mask'] < 0.5)
enc_dec_mask = (data_b['enc_dec_mask'] < 0.5)
return tokens_enc, tokens_dec, loss_mask, labels, \
enc_mask, dec_mask, enc_dec_mask
def loss_func(loss_mask, output_tensor):
lm_loss_ = output_tensor.float()
lm_loss = torch.sum(
lm_loss_.view(-1) * loss_mask.reshape(-1)) / loss_mask.sum()
loss = lm_loss
averaged_losses = average_losses_across_data_parallel_group([lm_loss])
return loss, {'lm loss': averaged_losses[0]}
def forward_step(data_iterator, model):
"""Forward step."""
args = get_args()
timers = get_timers()
# Get the batch.
timers('batch generator', log_level=2).start()
tokens_enc, tokens_dec, loss_mask, lm_labels, enc_mask, dec_mask, enc_dec_mask \
= get_batch(data_iterator)
timers('batch generator').stop()
# Forward model lm_labels
output_tensor = model(tokens_enc,
tokens_dec,
enc_mask,
dec_mask,
enc_dec_mask,
tokentype_ids=None,
lm_labels=lm_labels)
return output_tensor, partial(loss_func, loss_mask)
def train_valid_test_datasets_provider(train_val_test_num_samples):
"""Build train, valid, and test datasets."""
args = get_args()
print_rank_0('> building train, validation, and test datasets '
'for T5 ...')
train_ds, valid_ds, test_ds = build_train_valid_test_datasets(
data_prefix=args.data_path,
data_impl=args.data_impl,
splits_string=args.split,
train_valid_test_num_samples=train_val_test_num_samples,
max_seq_length=args.encoder_seq_length,
max_seq_length_dec=args.decoder_seq_length,
masked_lm_prob=args.mask_prob,
short_seq_prob=args.short_seq_prob,
seed=args.seed,
skip_warmup=(not args.mmap_warmup),
dataset_type='t5')
print_rank_0("> finished creating T5 datasets ...")
return train_ds, valid_ds, test_ds
if __name__ == "__main__":
pretrain(train_valid_test_datasets_provider, model_provider, ModelType.encoder_and_decoder,
forward_step, args_defaults={'tokenizer_type': 'BertWordPieceLowerCase'})