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train_reader.py
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train_reader.py
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#!/usr/bin/env python3
# Copyright (c) Facebook, Inc. and its affiliates.
# All rights reserved.
#
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.
"""
Pipeline to train the reader model on top of the retriever results
"""
import argparse
import collections
import glob
import json
import logging
import os
from collections import defaultdict
from typing import List
import numpy as np
import torch
from dpr.data.qa_validation import exact_match_score
from dpr.data.reader_data import ReaderSample, get_best_spans, SpanPrediction, convert_retriever_results
from dpr.models import init_reader_components
from dpr.models.reader import create_reader_input, ReaderBatch, compute_loss
from dpr.options import add_encoder_params, setup_args_gpu, set_seed, add_training_params, \
add_reader_preprocessing_params, set_encoder_params_from_state, get_encoder_params_state, add_tokenizer_params, \
print_args
from dpr.utils.data_utils import ShardedDataIterator, read_serialized_data_from_files, Tensorizer
from dpr.utils.model_utils import get_schedule_linear, load_states_from_checkpoint, move_to_device, CheckpointState, \
get_model_file, setup_for_distributed_mode, get_model_obj
logger = logging.getLogger()
logger.setLevel(logging.INFO)
if (logger.hasHandlers()):
logger.handlers.clear()
console = logging.StreamHandler()
logger.addHandler(console)
ReaderQuestionPredictions = collections.namedtuple('ReaderQuestionPredictions', ['id', 'predictions', 'gold_answers'])
class ReaderTrainer(object):
def __init__(self, args):
self.args = args
self.shard_id = args.local_rank if args.local_rank != -1 else 0
self.distributed_factor = args.distributed_world_size or 1
logger.info("***** Initializing components for training *****")
model_file = get_model_file(self.args, self.args.checkpoint_file_name)
saved_state = None
if model_file:
saved_state = load_states_from_checkpoint(model_file)
set_encoder_params_from_state(saved_state.encoder_params, args)
tensorizer, reader, optimizer = init_reader_components(args.encoder_model_type, args)
reader, optimizer = setup_for_distributed_mode(reader, optimizer, args.device, args.n_gpu,
args.local_rank,
args.fp16,
args.fp16_opt_level)
self.reader = reader
self.optimizer = optimizer
self.tensorizer = tensorizer
self.start_epoch = 0
self.start_batch = 0
self.scheduler_state = None
self.best_validation_result = None
self.best_cp_name = None
if saved_state:
self._load_saved_state(saved_state)
def get_data_iterator(self, path: str, batch_size: int, is_train: bool, shuffle=True,
shuffle_seed: int = 0,
offset: int = 0) -> ShardedDataIterator:
data_files = glob.glob(path)
logger.info("Data files: %s", data_files)
if not data_files:
raise RuntimeError('No Data files found')
preprocessed_data_files = self._get_preprocessed_files(data_files, is_train)
data = read_serialized_data_from_files(preprocessed_data_files)
iterator = ShardedDataIterator(data, shard_id=self.shard_id,
num_shards=self.distributed_factor,
batch_size=batch_size, shuffle=shuffle, shuffle_seed=shuffle_seed, offset=offset)
# apply deserialization hook
iterator.apply(lambda sample: sample.on_deserialize())
return iterator
def run_train(self):
args = self.args
train_iterator = self.get_data_iterator(args.train_file, args.batch_size,
True,
shuffle=True,
shuffle_seed=args.seed, offset=self.start_batch)
num_train_epochs = args.num_train_epochs - self.start_epoch
logger.info("Total iterations per epoch=%d", train_iterator.max_iterations)
updates_per_epoch = train_iterator.max_iterations // args.gradient_accumulation_steps
total_updates = updates_per_epoch * num_train_epochs - self.start_batch
logger.info(" Total updates=%d", total_updates)
warmup_steps = args.warmup_steps
scheduler = get_schedule_linear(self.optimizer, warmup_steps=warmup_steps,
training_steps=total_updates)
if self.scheduler_state:
logger.info("Loading scheduler state %s", self.scheduler_state)
scheduler.load_state_dict(self.scheduler_state)
eval_step = args.eval_step
logger.info(" Eval step = %d", eval_step)
logger.info("***** Training *****")
global_step = self.start_epoch * updates_per_epoch + self.start_batch
for epoch in range(self.start_epoch, int(args.num_train_epochs)):
logger.info("***** Epoch %d *****", epoch)
global_step = self._train_epoch(scheduler, epoch, eval_step, train_iterator, global_step)
if args.local_rank in [-1, 0]:
logger.info('Training finished. Best validation checkpoint %s', self.best_cp_name)
return
def validate_and_save(self, epoch: int, iteration: int, scheduler):
args = self.args
# in distributed DDP mode, save checkpoint for only one process
save_cp = args.local_rank in [-1, 0]
reader_validation_score = self.validate()
if save_cp:
cp_name = self._save_checkpoint(scheduler, epoch, iteration)
logger.info('Saved checkpoint to %s', cp_name)
if reader_validation_score < (self.best_validation_result or 0):
self.best_validation_result = reader_validation_score
self.best_cp_name = cp_name
logger.info('New Best validation checkpoint %s', cp_name)
def validate(self):
logger.info('Validation ...')
args = self.args
self.reader.eval()
data_iterator = self.get_data_iterator(args.dev_file, args.dev_batch_size, False, shuffle=False)
log_result_step = args.log_batch_step
all_results = []
eval_top_docs = args.eval_top_docs
for i, samples_batch in enumerate(data_iterator.iterate_data()):
input = create_reader_input(self.tensorizer.get_pad_id(),
samples_batch,
args.passages_per_question_predict,
args.sequence_length,
args.max_n_answers,
is_train=False, shuffle=False)
input = ReaderBatch(**move_to_device(input._asdict(), args.device))
attn_mask = self.tensorizer.get_attn_mask(input.input_ids)
with torch.no_grad():
start_logits, end_logits, relevance_logits = self.reader(input.input_ids, attn_mask)
batch_predictions = self._get_best_prediction(start_logits, end_logits, relevance_logits, samples_batch,
passage_thresholds=eval_top_docs)
all_results.extend(batch_predictions)
if (i + 1) % log_result_step == 0:
logger.info('Eval step: %d ', i)
ems = defaultdict(list)
for q_predictions in all_results:
gold_answers = q_predictions.gold_answers
span_predictions = q_predictions.predictions # {top docs threshold -> SpanPrediction()}
for (n, span_prediction) in span_predictions.items():
em_hit = max([exact_match_score(span_prediction.prediction_text, ga) for ga in gold_answers])
ems[n].append(em_hit)
em = 0
for n in sorted(ems.keys()):
em = np.mean(ems[n])
logger.info("n=%d\tEM %.2f" % (n, em * 100))
if args.prediction_results_file:
self._save_predictions(args.prediction_results_file, all_results)
return em
def _train_epoch(self, scheduler, epoch: int, eval_step: int,
train_data_iterator: ShardedDataIterator, global_step: int):
args = self.args
rolling_train_loss = 0.0
epoch_loss = 0
log_result_step = args.log_batch_step
rolling_loss_step = args.train_rolling_loss_step
self.reader.train()
epoch_batches = train_data_iterator.max_iterations
for i, samples_batch in enumerate(train_data_iterator.iterate_data(epoch=epoch)):
data_iteration = train_data_iterator.get_iteration()
# enables to resume to exactly same train state
if args.fully_resumable:
np.random.seed(args.seed + global_step)
torch.manual_seed(args.seed + global_step)
if args.n_gpu > 0:
torch.cuda.manual_seed_all(args.seed + global_step)
input = create_reader_input(self.tensorizer.get_pad_id(),
samples_batch,
args.passages_per_question,
args.sequence_length,
args.max_n_answers,
is_train=True, shuffle=True)
loss = self._calc_loss(input)
epoch_loss += loss.item()
rolling_train_loss += loss.item()
if args.fp16:
from apex import amp
with amp.scale_loss(loss, self.optimizer) as scaled_loss:
scaled_loss.backward()
if args.max_grad_norm > 0:
torch.nn.utils.clip_grad_norm_(amp.master_params(self.optimizer), args.max_grad_norm)
else:
loss.backward()
if args.max_grad_norm > 0:
torch.nn.utils.clip_grad_norm_(self.reader.parameters(), args.max_grad_norm)
global_step += 1
if (i + 1) % args.gradient_accumulation_steps == 0:
self.optimizer.step()
scheduler.step()
self.reader.zero_grad()
if global_step % log_result_step == 0:
lr = self.optimizer.param_groups[0]['lr']
logger.info(
'Epoch: %d: Step: %d/%d, global_step=%d, lr=%f', epoch, data_iteration, epoch_batches, global_step,
lr)
if (i + 1) % rolling_loss_step == 0:
logger.info('Train batch %d', data_iteration)
latest_rolling_train_av_loss = rolling_train_loss / rolling_loss_step
logger.info('Avg. loss per last %d batches: %f', rolling_loss_step, latest_rolling_train_av_loss)
rolling_train_loss = 0.0
if global_step % eval_step == 0:
logger.info('Validation: Epoch: %d Step: %d/%d', epoch, data_iteration, epoch_batches)
self.validate_and_save(epoch, train_data_iterator.get_iteration(), scheduler)
self.reader.train()
epoch_loss = (epoch_loss / epoch_batches) if epoch_batches > 0 else 0
logger.info('Av Loss per epoch=%f', epoch_loss)
return global_step
def _save_checkpoint(self, scheduler, epoch: int, offset: int) -> str:
args = self.args
model_to_save = get_model_obj(self.reader)
cp = os.path.join(args.output_dir,
args.checkpoint_file_name + '.' + str(epoch) + ('.' + str(offset) if offset > 0 else ''))
meta_params = get_encoder_params_state(args)
state = CheckpointState(model_to_save.state_dict(), self.optimizer.state_dict(), scheduler.state_dict(), offset,
epoch, meta_params
)
torch.save(state._asdict(), cp)
return cp
def _load_saved_state(self, saved_state: CheckpointState):
epoch = saved_state.epoch
offset = saved_state.offset
if offset == 0: # epoch has been completed
epoch += 1
logger.info('Loading checkpoint @ batch=%s and epoch=%s', offset, epoch)
self.start_epoch = epoch
self.start_batch = offset
model_to_load = get_model_obj(self.reader)
if saved_state.model_dict:
logger.info('Loading model weights from saved state ...')
model_to_load.load_state_dict(saved_state.model_dict)
logger.info('Loading saved optimizer state ...')
if saved_state.optimizer_dict:
self.optimizer.load_state_dict(saved_state.optimizer_dict)
self.scheduler_state = saved_state.scheduler_dict
def _get_best_prediction(self, start_logits, end_logits, relevance_logits,
samples_batch: List[ReaderSample], passage_thresholds: List[int] = None) \
-> List[ReaderQuestionPredictions]:
args = self.args
max_answer_length = args.max_answer_length
questions_num, passages_per_question = relevance_logits.size()
_, idxs = torch.sort(relevance_logits, dim=1, descending=True, )
batch_results = []
for q in range(questions_num):
sample = samples_batch[q]
non_empty_passages_num = len(sample.passages)
nbest = []
for p in range(passages_per_question):
passage_idx = idxs[q, p].item()
if passage_idx >= non_empty_passages_num: # empty passage selected, skip
continue
reader_passage = sample.passages[passage_idx]
sequence_ids = reader_passage.sequence_ids
sequence_len = sequence_ids.size(0)
# assuming question & title information is at the beginning of the sequence
passage_offset = reader_passage.passage_offset
p_start_logits = start_logits[q, passage_idx].tolist()[passage_offset:sequence_len]
p_end_logits = end_logits[q, passage_idx].tolist()[passage_offset:sequence_len]
ctx_ids = sequence_ids.tolist()[passage_offset:]
best_spans = get_best_spans(self.tensorizer, p_start_logits, p_end_logits, ctx_ids, max_answer_length,
passage_idx, relevance_logits[q, passage_idx].item(), top_spans=10)
nbest.extend(best_spans)
if len(nbest) > 0 and not passage_thresholds:
break
if passage_thresholds:
passage_rank_matches = {}
for n in passage_thresholds:
curr_nbest = [pred for pred in nbest if pred.passage_index < n]
passage_rank_matches[n] = curr_nbest[0]
predictions = passage_rank_matches
else:
if len(nbest) == 0:
predictions = {passages_per_question: SpanPrediction('', -1, -1, -1, '')}
else:
predictions = {passages_per_question: nbest[0]}
batch_results.append(ReaderQuestionPredictions(sample.question, predictions, sample.answers))
return batch_results
def _calc_loss(self, input: ReaderBatch) -> torch.Tensor:
args = self.args
input = ReaderBatch(**move_to_device(input._asdict(), args.device))
attn_mask = self.tensorizer.get_attn_mask(input.input_ids)
questions_num, passages_per_question, _ = input.input_ids.size()
if self.reader.training:
# start_logits, end_logits, rank_logits = self.reader(input.input_ids, attn_mask)
loss = self.reader(input.input_ids, attn_mask, input.start_positions, input.end_positions,
input.answers_mask)
else:
# TODO: remove?
with torch.no_grad():
start_logits, end_logits, rank_logits = self.reader(input.input_ids, attn_mask)
loss = compute_loss(input.start_positions, input.end_positions, input.answers_mask, start_logits,
end_logits,
rank_logits,
questions_num, passages_per_question)
if args.n_gpu > 1:
loss = loss.mean()
if args.gradient_accumulation_steps > 1:
loss = loss / args.gradient_accumulation_steps
return loss
def _get_preprocessed_files(self, data_files: List, is_train: bool, ):
serialized_files = [file for file in data_files if file.endswith('.pkl')]
if serialized_files:
return serialized_files
assert len(data_files) == 1, 'Only 1 source file pre-processing is supported.'
# data may have been serialized and cached before, try to find ones from same dir
def _find_cached_files(path: str):
dir_path, base_name = os.path.split(path)
base_name = base_name.replace('.json', '')
out_file_prefix = os.path.join(dir_path, base_name)
out_file_pattern = out_file_prefix + '*.pkl'
return glob.glob(out_file_pattern), out_file_prefix
serialized_files, out_file_prefix = _find_cached_files(data_files[0])
if serialized_files:
logger.info('Found preprocessed files. %s', serialized_files)
return serialized_files
gold_passages_src = None
if self.args.gold_passages_src:
gold_passages_src = self.args.gold_passages_src if is_train else self.args.gold_passages_src_dev
assert os.path.exists(gold_passages_src), 'Please specify valid gold_passages_src/gold_passages_src_dev'
logger.info('Data are not preprocessed for reader training. Start pre-processing ...')
# start pre-processing and save results
def _run_preprocessing(tensorizer: Tensorizer):
# temporarily disable auto-padding to save disk space usage of serialized files
tensorizer.set_pad_to_max(False)
serialized_files = convert_retriever_results(is_train, data_files[0], out_file_prefix,
gold_passages_src,
self.tensorizer,
num_workers=self.args.num_workers)
tensorizer.set_pad_to_max(True)
return serialized_files
if self.distributed_factor > 1:
# only one node in DDP model will do pre-processing
if self.args.local_rank in [-1, 0]:
serialized_files = _run_preprocessing(self.tensorizer)
torch.distributed.barrier()
else:
torch.distributed.barrier()
serialized_files = _find_cached_files(data_files[0])
else:
serialized_files = _run_preprocessing(self.tensorizer)
return serialized_files
def _save_predictions(self, out_file: str, prediction_results: List[ReaderQuestionPredictions]):
logger.info('Saving prediction results to %s', out_file)
with open(out_file, 'w', encoding="utf-8") as output:
save_results = []
for r in prediction_results:
save_results.append({
'question': r.id,
'gold_answers': r.gold_answers,
'predictions': [{
'top_k': top_k,
'prediction': {
'text': span_pred.prediction_text,
'score': span_pred.span_score,
'relevance_score': span_pred.relevance_score,
'passage_idx': span_pred.passage_index,
'passage': self.tensorizer.to_string(span_pred.passage_token_ids)
}
} for top_k, span_pred in r.predictions.items()]
})
output.write(json.dumps(save_results, indent=4) + "\n")
def main():
parser = argparse.ArgumentParser()
add_encoder_params(parser)
add_training_params(parser)
add_tokenizer_params(parser)
add_reader_preprocessing_params(parser)
# reader specific params
parser.add_argument("--max_n_answers", default=10, type=int,
help="Max amount of answer spans to marginalize per singe passage")
parser.add_argument('--passages_per_question', type=int, default=2,
help="Total amount of positive and negative passages per question")
parser.add_argument('--passages_per_question_predict', type=int, default=50,
help="Total amount of positive and negative passages per question for evaluation")
parser.add_argument("--max_answer_length", default=10, type=int,
help="The maximum length of an answer that can be generated. This is needed because the start "
"and end predictions are not conditioned on one another.")
parser.add_argument('--eval_top_docs', nargs='+', type=int,
help="top retrival passages thresholds to analyze prediction results for")
parser.add_argument('--checkpoint_file_name', type=str, default='dpr_reader')
parser.add_argument('--prediction_results_file', type=str, help='path to a file to write prediction results to')
# training parameters
parser.add_argument("--eval_step", default=2000, type=int,
help="batch steps to run validation and save checkpoint")
parser.add_argument("--output_dir", default=None, type=str,
help="The output directory where the model checkpoints will be written to")
parser.add_argument('--fully_resumable', action='store_true',
help="Enables resumable mode by specifying global step dependent random seed before shuffling "
"in-batch data")
args = parser.parse_args()
if args.output_dir is not None:
os.makedirs(args.output_dir, exist_ok=True)
setup_args_gpu(args)
set_seed(args)
print_args(args)
trainer = ReaderTrainer(args)
if args.train_file is not None:
trainer.run_train()
elif args.dev_file:
logger.info("No train files are specified. Run validation.")
trainer.validate()
else:
logger.warning("Neither train_file or (model_file & dev_file) parameters are specified. Nothing to do.")
if __name__ == "__main__":
main()