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preprocess.py
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preprocess.py
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#!/usr/bin/env python
# -*- coding: utf-8 -*-
"""
Pre-process Data / features files and build vocabulary
"""
import configargparse
import glob
import sys
import gc
import os
import codecs
from itertools import islice
import torch
from onmt.utils.logging import init_logger, logger
import onmt.inputters as inputters
import onmt.opts as opts
def check_existing_pt_files(opt):
""" Check if there are existing .pt files to avoid overwriting them """
pattern = opt.save_data + '.{}*.pt'
for t in ['train', 'valid', 'vocab']:
path = pattern.format(t)
if glob.glob(path):
sys.stderr.write("Please backup existing pt files: %s, "
"to avoid overwriting them!\n" % path)
sys.exit(1)
def parse_args():
parser = configargparse.ArgumentParser(
description='preprocess.py',
config_file_parser_class=configargparse.YAMLConfigFileParser,
formatter_class=configargparse.ArgumentDefaultsHelpFormatter)
opts.config_opts(parser)
opts.add_md_help_argument(parser)
opts.preprocess_opts(parser)
opt = parser.parse_args()
torch.manual_seed(opt.seed)
check_existing_pt_files(opt)
return opt
def split_corpus(path, shard_size):
with codecs.open(path, "r", encoding="utf-8") as f:
while True:
shard = list(islice(f, shard_size))
if not shard:
break
yield shard
def build_save_dataset(corpus_type, fields, opt):
assert corpus_type in ['train', 'valid']
if corpus_type == 'train':
src = opt.train_src
tgt = opt.train_tgt
else:
src = opt.valid_src
tgt = opt.valid_tgt
logger.info("Reading source and target files: %s %s." % (src, tgt))
src_shards = split_corpus(src, opt.shard_size)
tgt_shards = split_corpus(tgt, opt.shard_size)
shard_pairs = zip(src_shards, tgt_shards)
dataset_paths = []
for i, (src_shard, tgt_shard) in enumerate(shard_pairs):
assert len(src_shard) == len(tgt_shard)
logger.info("Building shard %d." % i)
dataset = inputters.build_dataset(
fields, opt.data_type,
src=src_shard,
tgt=tgt_shard,
src_dir=opt.src_dir,
src_seq_len=opt.src_seq_length,
tgt_seq_len=opt.tgt_seq_length,
src_seq_length_trunc=opt.src_seq_length_trunc,
tgt_seq_length_trunc=opt.tgt_seq_length_trunc,
dynamic_dict=opt.dynamic_dict,
sample_rate=opt.sample_rate,
window_size=opt.window_size,
window_stride=opt.window_stride,
window=opt.window,
image_channel_size=opt.image_channel_size,
use_filter_pred=corpus_type == 'train' or opt.filter_valid
)
data_path = "{:s}.{:s}.{:d}.pt".format(opt.save_data, corpus_type, i)
dataset_paths.append(data_path)
logger.info(" * saving %sth %s data shard to %s."
% (i, corpus_type, data_path))
dataset.save(data_path)
del dataset.examples
gc.collect()
del dataset
gc.collect()
return dataset_paths
def build_save_vocab(train_dataset, fields, opt):
fields = inputters.build_vocab(
train_dataset, fields, opt.data_type, opt.share_vocab,
opt.src_vocab, opt.src_vocab_size, opt.src_words_min_frequency,
opt.tgt_vocab, opt.tgt_vocab_size, opt.tgt_words_min_frequency
)
vocab_path = opt.save_data + '.vocab.pt'
torch.save(inputters.save_fields_to_vocab(fields), vocab_path)
def count_features(path):
"""
path: location of a corpus file with whitespace-delimited tokens and
│-delimited features within the token
returns: the number of features in the dataset
"""
with codecs.open(path, "r", "utf-8") as f:
first_tok = f.readline().split(None, 1)[0]
return len(first_tok.split(u"│")) - 1
def main():
opt = parse_args()
assert opt.max_shard_size == 0, \
"-max_shard_size is deprecated. Please use \
-shard_size (number of examples) instead."
assert opt.shuffle == 0, \
"-shuffle is not implemented. Please shuffle \
your data before pre-processing."
assert os.path.isfile(opt.train_src) and os.path.isfile(opt.train_tgt), \
"Please check path of your train src and tgt files!"
assert os.path.isfile(opt.valid_src) and os.path.isfile(opt.valid_tgt), \
"Please check path of your valid src and tgt files!"
init_logger(opt.log_file)
logger.info("Extracting features...")
src_nfeats = count_features(opt.train_src) if opt.data_type == 'text' \
else 0
tgt_nfeats = count_features(opt.train_tgt) # tgt always text so far
logger.info(" * number of source features: %d." % src_nfeats)
logger.info(" * number of target features: %d." % tgt_nfeats)
logger.info("Building `Fields` object...")
fields = inputters.get_fields(opt.data_type, src_nfeats, tgt_nfeats)
logger.info("Building & saving training data...")
train_dataset_files = build_save_dataset('train', fields, opt)
logger.info("Building & saving validation data...")
build_save_dataset('valid', fields, opt)
logger.info("Building & saving vocabulary...")
build_save_vocab(train_dataset_files, fields, opt)
if __name__ == "__main__":
main()