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configure_data.py
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configure_data.py
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# coding=utf-8
# Copyright (c) 2019, NVIDIA CORPORATION. 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.
"""parses arguments and preps data loader"""
import os
import copy
import random
import numpy as np
import torch
import torch.utils.data
import data_utils
from blocklm_utils import ConstructBlockStrategy
from data_utils.tokenization import make_tokenizer
from utils import print_rank_0
from itertools import accumulate
from bisect import bisect_right
from tasks.superglue.dataset import SuperGlueDataset
import mpu
class MultiTaskDataset(torch.utils.data.Dataset):
def __init__(self, tasks, datasets, reweight=True, temperature=0.8, max_limit=200000):
super(MultiTaskDataset, self).__init__()
self.tasks = tasks
self.datasets = datasets
self.reweight = reweight
self.temperature = temperature
self.lens = [len(dataset) for dataset in datasets]
self.weights = np.array([min(l, max_limit) ** temperature for l in self.lens])
self.total_len = sum(self.lens)
self.cumulative_lens = list(accumulate(self.lens))
if self.reweight:
print_rank_0(list(zip(self.tasks, self.lens, self.weights)))
else:
print_rank_0(list(zip(self.tasks, self.lens)))
self.weights /= self.weights.sum()
def __len__(self):
return self.total_len * 1000
@staticmethod
def pet_wrapper(data):
text = data['text']
loss_mask = data['logit_mask']
target = data['target']
attention_mask = data['mask']
position_id = data['position']
label = data['label']
if len(text.shape) == 2:
text = text[label]
loss_mask = loss_mask[label]
target = target[label]
attention_mask = attention_mask[label]
position_id = position_id[label]
else:
target = target[label]
if not target.shape:
target = target.repeat(len(text))
return {'text': text, 'target': target, 'loss_mask': loss_mask, 'position_id': position_id,
'attention_mask': attention_mask}
def __getitem__(self, idx):
if self.reweight:
rng = random.Random(idx)
rng = np.random.RandomState(seed=[rng.randint(0, 2 ** 32 - 1) for _ in range(16)])
dataset_idx = rng.choice(np.arange(len(self.datasets)), p=self.weights)
dataset = self.datasets[dataset_idx]
sample_idx = rng.choice(np.arange(len(dataset)))
item = self.datasets[dataset_idx][sample_idx]
else:
dataset_idx = bisect_right(self.cumulative_lens, idx)
if dataset_idx == 0:
sample_idx = idx
else:
sample_idx = idx - self.cumulative_lens[dataset_idx - 1]
item = self.datasets[dataset_idx][sample_idx]
item = self.pet_wrapper(item)
return item
class DataConfig:
def __init__(self, defaults=None):
super(DataConfig, self).__init__()
if defaults is None:
defaults = {}
self.defaults = defaults
def apply(self, args, tokenizer):
if torch.distributed.get_rank() == 0:
print('configuring data')
self.apply_defaults(args)
return make_loaders(args, tokenizer)
def set_defaults(self, **kwargs):
for k, v in kwargs.items():
self.defaults[k] = v
def apply_defaults(self, args):
for k, v in self.defaults.items():
k = k.replace('-', '_')
if not hasattr(args, k):
setattr(args, k, v)
def prepare_tokenizer(args):
add_sentinel_token = 0
if args.sentinel_token:
add_sentinel_token = args.max_position_embeddings
tokenizer = make_tokenizer(args.tokenizer_type, None, args.tokenizer_path, args.vocab_size,
args.tokenizer_model_type, add_block_symbols=args.block_lm, cache_dir=args.cache_dir,
add_sentinel_token=add_sentinel_token, add_task_mask=args.task_mask,
add_decoder_mask=args.block_mask_prob > 0.0 or args.context_mask_ratio > 0.0,
fix_command_token=args.fix_command_token)
if mpu.get_model_parallel_rank() == 0:
num_tokens = tokenizer.num_tokens
eod_token = tokenizer.get_command('eos').Id
assert eod_token == tokenizer.get_command('pad').Id
before = num_tokens
after = before
multiple = args.make_vocab_size_divisible_by
while (after % multiple) != 0:
after += 1
print_rank_0('> padded vocab (size: {}) with {} dummy '
'tokens (new size: {})'.format(before, after - before, after))
print_rank_0('> found end-of-document token: {}'.format(eod_token))
token_counts = torch.cuda.LongTensor([after, eod_token])
else:
token_counts = torch.cuda.LongTensor([0, 0])
# Broadcast num tokens.
torch.distributed.broadcast(token_counts,
mpu.get_model_parallel_src_rank(),
group=mpu.get_model_parallel_group())
num_tokens = token_counts[0].item()
eod_token = token_counts[1].item()
args.vocab_size, args.eod_token = num_tokens, eod_token
return tokenizer
def make_data_loader(dataset, tokenizer, batch_size, num_iters, args, shuffle=False, block_collate=False):
world_size = torch.distributed.get_world_size(group=mpu.get_data_parallel_group())
rank = torch.distributed.get_rank(group=mpu.get_data_parallel_group())
if args.loader_scatter is not None:
rank = rank // args.loader_scatter
world_size = world_size // args.loader_scatter
batch_size = batch_size // args.loader_scatter
distributed = world_size > 1
if args.transformer_xl:
batch_sampler = data_utils.samplers.DistributedSequentialSampler(len(dataset),
num_iters,
batch_size,
rank,
world_size)
else:
if shuffle:
sampler = data_utils.samplers.RandomSampler(dataset, replacement=True,
num_samples=batch_size * args.train_iters * args.gradient_accumulation_steps)
else:
sampler = torch.utils.data.SequentialSampler(dataset)
drop_last = distributed
# the GPUs in the same model parallel group receive the same data
if distributed:
batch_sampler = data_utils.samplers.DistributedBatchSampler(sampler, batch_size, drop_last, rank,
world_size,
gradient_accumulation_steps=args.gradient_accumulation_steps)
else:
batch_sampler = torch.utils.data.BatchSampler(sampler,
batch_size,
drop_last)
collate_fn = None
if block_collate:
collate_fn = ConstructBlockStrategy(args, tokenizer, args.seq_length, bert_prob=args.bert_prob,
gap_sentence_prob=args.gap_sentence_prob,
gap_sentence_ratio=args.gap_sentence_ratio,
gpt_infill_prob=args.gpt_infill_prob,
average_block_length=args.avg_block_length,
gpt_min_ratio=args.gpt_min_ratio,
block_mask_prob=args.block_mask_prob,
context_mask_ratio=args.context_mask_ratio,
short_seq_prob=args.short_seq_prob,
single_span_prob=args.single_span_prob,
shuffle_blocks=not args.no_shuffle_block,
block_position_encoding=not args.no_block_position,
sentinel_token=args.sentinel_token,
encoder_decoder=args.encoder_decoder,
task_mask=args.task_mask, random_position=args.random_position,
masked_lm=args.masked_lm).construct_blocks
data_loader = torch.utils.data.DataLoader(dataset,
batch_sampler=batch_sampler,
num_workers=args.num_workers,
pin_memory=True,
collate_fn=collate_fn)
return data_loader
def make_tfrecord_loaders(args):
"""Load train/val/test dataset from shuffled TFRecords"""
import data_utils.tf_dl
data_set_args = {'batch_size': args.batch_size,
'max_seq_len': args.seq_length,
'max_preds_per_seq': args.max_preds_per_seq,
'train': True,
'num_workers': max(args.num_workers, 1),
'seed': args.seed + args.rank + 1,
'threaded_dl': args.num_workers > 0
}
train = data_utils.tf_dl.TFRecordDataLoader(args.train_data,
**data_set_args)
data_set_args['train'] = False
if args.eval_seq_length is not None:
data_set_args['max_seq_len'] = args.eval_seq_length
if args.eval_max_preds_per_seq is not None:
data_set_args['max_preds_per_seq'] = args.eval_max_preds_per_seq
valid = None
if args.valid_data is not None:
valid = data_utils.tf_dl.TFRecordDataLoader(args.valid_data,
**data_set_args)
test = None
if args.test_data is not None:
test = data_utils.tf_dl.TFRecordDataLoader(args.test_data,
**data_set_args)
tokenizer = data_utils.make_tokenizer(args.tokenizer_type,
train,
args.tokenizer_path,
args.vocab_size,
args.tokenizer_model_type,
cache_dir=args.cache_dir)
return (train, valid, test), tokenizer
def make_loaders(args, tokenizer):
"""makes training/val/test"""
if args.use_tfrecords:
return make_tfrecord_loaders(args)
world_size = torch.distributed.get_world_size(group=mpu.get_data_parallel_group())
if args.loader_scatter is not None:
assert world_size % args.loader_scatter == 0
batch_size = args.batch_size * world_size
eval_batch_size = batch_size
if args.eval_batch_size is not None:
eval_batch_size = args.eval_batch_size * world_size
seq_length = args.seq_length
if seq_length < 0:
seq_length = seq_length * world_size
eval_seq_length = args.eval_seq_length
if eval_seq_length is not None and eval_seq_length < 0:
eval_seq_length = eval_seq_length * world_size
split = get_split(args)
data_set_args = {
'path': args.train_data,
'seq_length': seq_length,
'mem_length': args.mem_length,
'delim': args.delim,
'text_key': args.text_key,
'label_key': 'label',
'ds_type': args.data_set_type,
'split': split,
'loose': args.loose_json,
'max_preds_per_seq': args.max_preds_per_seq,
'presplit_sentences': args.presplit_sentences,
'sample_one_document': args.sample_one_document,
'filter_english': args.filter_english,
'pre_tokenize': not args.no_pre_tokenize,
'tokenizer': tokenizer,
'save_splits': args.save_splits,
'load_splits': args.load_splits,
'save_test_data': args.save_test_data,
'no_lazy_loader': args.no_lazy_loader,
'loader_scatter': args.loader_scatter,
'data_parallel_rank': mpu.get_data_parallel_rank(),
"non_sentence_start": args.non_sentence_start,
"half_lazy_loader": args.half_lazy_loader
}
eval_set_args = copy.copy(data_set_args)
eval_set_args['split'] = [1.]
# if optional eval args were set then replace their
# equivalent values in the arg dict
if eval_seq_length:
eval_set_args['seq_length'] = eval_seq_length
if args.eval_max_preds_per_seq:
eval_set_args['max_preds_per_seq'] = args.eval_max_preds_per_seq
if args.eval_text_key is not None:
eval_set_args['text_key'] = args.eval_text_key
# make datasets splits and tokenizer
train, valid, test = None, None, None
if args.train_data is not None:
train = data_utils.make_dataset(**data_set_args)
if data_utils.should_split(split):
train, valid, test = train
eval_set_args['tokenizer'] = tokenizer
# make training and val dataset if necessary
if valid is None and args.valid_data is not None:
eval_set_args['path'] = args.valid_data
valid = data_utils.make_dataset(**eval_set_args)
eval_set_args['tokenizer'] = tokenizer
if test is None and args.test_data is not None:
eval_set_args['path'] = args.test_data
test = data_utils.make_dataset(**eval_set_args)
# wrap datasets with data loader
use_block = args.block_lm or args.encoder_decoder
if train is not None and args.batch_size > 0:
train = make_data_loader(train, tokenizer, batch_size, args.train_iters, args, shuffle=args.shuffle,
block_collate=use_block)
args.do_train = True
else:
args.do_train = False
eval_batch_size = eval_batch_size if eval_batch_size != 0 else batch_size
if valid is not None:
valid = make_data_loader(valid, tokenizer, eval_batch_size, args.train_iters, args, shuffle=args.shuffle,
block_collate=use_block)
args.do_valid = True
else:
args.do_valid = False
if test is not None:
test = make_data_loader(test, tokenizer, eval_batch_size, len(test) // eval_batch_size + 1, args,
shuffle=args.shuffle, block_collate=use_block)
args.do_test = True
else:
args.do_test = False
return train, valid, test
def build_multi_task_dataset(args, tokenizer):
task_dirs = {"mnli": "MNLI", "cola": "CoLA", "mrpc": "MRPC", "qnli": "QNLI", "qqp": "QQP", "sst2": "SST-2",
"agnews": "Agnews", "yelp-polarity": "yelp_review_polarity_csv", "yelp-full": "yelp_review_full_csv",
"yahoo": "Yahoo", "squad": "SQuAD", "race": "RACE"}
train, valid = None, None
if mpu.get_model_parallel_rank() == 0:
multi_seq_length = args.seq_length
if args.multi_seq_length is not None:
multi_seq_length = args.multi_seq_length
train_datasets, valid_datasets = [], []
for task in args.multi_task_data:
task = task.lower()
data_dir = os.path.join(args.data_dir, task_dirs[task])
train_datasets.append(
SuperGlueDataset(args, task, data_dir, multi_seq_length, "train", tokenizer, pattern_ensemble=True))
valid_datasets.append(
SuperGlueDataset(args, task, data_dir, multi_seq_length, "dev", tokenizer, pattern_ensemble=True))
train = MultiTaskDataset(args.multi_task_data, train_datasets)
valid = MultiTaskDataset(args.multi_task_data, valid_datasets)
world_size = torch.distributed.get_world_size(group=mpu.get_data_parallel_group())
multi_batch_size = args.batch_size * world_size
if args.multi_batch_size is not None:
multi_batch_size = args.multi_batch_size * world_size
train = make_data_loader(train, tokenizer, multi_batch_size, args.train_iters, args, shuffle=True)
valid = make_data_loader(valid, tokenizer, multi_batch_size, args.train_iters, args, shuffle=True)
return train, valid
def get_split(args):
"""
Get dataset splits from comma separated string list
"""
splits = []
if args.split.find(',') != -1:
splits = [float(s) for s in args.split.split(',')]
elif args.split.find('/') != -1:
splits = [float(s) for s in args.split.split('/')]
else:
splits = [float(args.split)]
split_total = sum(splits)
if split_total < 1.:
splits.append(1 - split_total)
while len(splits) < 3:
splits.append(0.)
splits = splits[:3]
if args.valid_data is not None:
splits[1] = 0.
if args.test_data is not None:
splits[2] = 0.
final_sum = sum(splits)
return [s / final_sum for s in splits]
def configure_data():
"""add cmdline flags for configuring datasets"""
# These are options that are used by data_utils, but are either
# deprecated or not meant to be exposed to the command line user.
# These options are intneded to be set in code by specific scripts.
defaults = {
'world_size': 1,
'rank': -1,
'persist_state': 0,
'lazy': False,
'transpose': False,
'data_set_type': 'supervised',
'seq_length': 256,
'eval_seq_length': 256,
'samples_per_shard': 100
}
return DataConfig(defaults=defaults)