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prep.py
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prep.py
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#!/usr/bin/env python
#
# Copyright 2016 Google Inc. 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.
"""Prepare a corpus for processing by swivel.
Creates a sharded word co-occurrence matrix from a text file input corpus.
Usage:
prep.py --output_dir <output-dir> --input <text-file>
Options:
--input <filename>
The input text.
--output_dir <directory>
Specifies the output directory where the various Swivel data
files should be placed.
--shard_size <int>
Specifies the shard size; default 4096.
--min_count <int>
Specifies the minimum number of times a word should appear
to be included in the vocabulary; default 5.
--max_vocab <int>
Specifies the maximum vocabulary size; default shard size
times 1024.
--vocab <filename>
Use the specified unigram vocabulary instead of generating
it from the corpus.
--window_size <int>
Specifies the window size for computing co-occurrence stats;
default 10.
--bufsz <int>
The number of co-occurrences that are buffered; default 16M.
"""
import itertools
import math
import os
import struct
import sys
import tensorflow as tf
flags = tf.app.flags
flags.DEFINE_string('input', '', 'The input text.')
flags.DEFINE_string('output_dir', '/tmp/swivel_data',
'Output directory for Swivel data')
flags.DEFINE_integer('shard_size', 4096, 'The size for each shard')
flags.DEFINE_integer('min_count', 5,
'The minimum number of times a word should occur to be '
'included in the vocabulary')
flags.DEFINE_integer('max_vocab', 4096 * 64, 'The maximum vocabulary size')
flags.DEFINE_string('vocab', '', 'Vocabulary to use instead of generating one')
flags.DEFINE_integer('window_size', 10, 'The window size')
flags.DEFINE_integer('bufsz', 16 * 1024 * 1024,
'The number of co-occurrences to buffer')
FLAGS = flags.FLAGS
shard_cooc_fmt = struct.Struct('iif')
def words(line):
"""Splits a line of text into tokens."""
return line.strip().split()
def create_vocabulary(lines):
"""Reads text lines and generates a vocabulary."""
lines.seek(0, os.SEEK_END)
nbytes = lines.tell()
lines.seek(0, os.SEEK_SET)
vocab = {}
for lineno, line in enumerate(lines, start=1):
for word in words(line):
vocab.setdefault(word, 0)
vocab[word] += 1
if lineno % 100000 == 0:
pos = lines.tell()
sys.stdout.write('\rComputing vocabulary: %0.1f%% (%d/%d)...' % (
100.0 * pos / nbytes, pos, nbytes))
sys.stdout.flush()
sys.stdout.write('\n')
vocab = [(tok, n) for tok, n in vocab.iteritems() if n >= FLAGS.min_count]
vocab.sort(key=lambda kv: (-kv[1], kv[0]))
num_words = min(len(vocab), FLAGS.max_vocab)
if num_words % FLAGS.shard_size != 0:
num_words -= num_words % FLAGS.shard_size
if not num_words:
raise Exception('empty vocabulary')
print 'vocabulary contains %d tokens' % num_words
vocab = vocab[:num_words]
return [tok for tok, n in vocab]
def write_vocab_and_sums(vocab, sums, vocab_filename, sums_filename):
"""Writes vocabulary and marginal sum files."""
with open(os.path.join(FLAGS.output_dir, vocab_filename), 'w') as vocab_out:
with open(os.path.join(FLAGS.output_dir, sums_filename), 'w') as sums_out:
for tok, cnt in itertools.izip(vocab, sums):
print >> vocab_out, tok
print >> sums_out, cnt
def compute_coocs(lines, vocab):
"""Compute the co-occurrence statistics from the text.
This generates a temporary file for each shard that contains the intermediate
counts from the shard: these counts must be subsequently sorted and collated.
"""
word_to_id = {tok: idx for idx, tok in enumerate(vocab)}
lines.seek(0, os.SEEK_END)
nbytes = lines.tell()
lines.seek(0, os.SEEK_SET)
num_shards = len(vocab) / FLAGS.shard_size
shardfiles = {}
for row in range(num_shards):
for col in range(num_shards):
filename = os.path.join(
FLAGS.output_dir, 'shard-%03d-%03d.tmp' % (row, col))
shardfiles[(row, col)] = open(filename, 'w+')
def flush_coocs():
for (row_id, col_id), cnt in coocs.iteritems():
row_shard = row_id % num_shards
row_off = row_id / num_shards
col_shard = col_id % num_shards
col_off = col_id / num_shards
# Since we only stored (a, b), we emit both (a, b) and (b, a).
shardfiles[(row_shard, col_shard)].write(
shard_cooc_fmt.pack(row_off, col_off, cnt))
shardfiles[(col_shard, row_shard)].write(
shard_cooc_fmt.pack(col_off, row_off, cnt))
coocs = {}
sums = [0.0] * len(vocab)
for lineno, line in enumerate(lines, start=1):
# Computes the word IDs for each word in the sentence. This has the effect
# of "stretching" the window past OOV tokens.
wids = filter(
lambda wid: wid is not None,
(word_to_id.get(w) for w in words(line)))
for pos in xrange(len(wids)):
lid = wids[pos]
window_extent = min(FLAGS.window_size + 1, len(wids) - pos)
for off in xrange(1, window_extent):
rid = wids[pos + off]
pair = (min(lid, rid), max(lid, rid))
count = 1.0 / off
sums[lid] += count
sums[rid] += count
coocs.setdefault(pair, 0.0)
coocs[pair] += count
sums[lid] += 1.0
pair = (lid, lid)
coocs.setdefault(pair, 0.0)
coocs[pair] += 0.5 # Only add 1/2 since we output (a, b) and (b, a)
if lineno % 10000 == 0:
pos = lines.tell()
sys.stdout.write('\rComputing co-occurrences: %0.1f%% (%d/%d)...' % (
100.0 * pos / nbytes, pos, nbytes))
sys.stdout.flush()
if len(coocs) > FLAGS.bufsz:
flush_coocs()
coocs = {}
flush_coocs()
sys.stdout.write('\n')
return shardfiles, sums
def write_shards(vocab, shardfiles):
"""Processes the temporary files to generate the final shard data.
The shard data is stored as a tf.Example protos using a TFRecordWriter. The
temporary files are removed from the filesystem once they've been processed.
"""
num_shards = len(vocab) / FLAGS.shard_size
ix = 0
for (row, col), fh in shardfiles.iteritems():
ix += 1
sys.stdout.write('\rwriting shard %d/%d' % (ix, len(shardfiles)))
sys.stdout.flush()
# Read the entire binary co-occurrence and unpack it into an array.
fh.seek(0)
buf = fh.read()
os.unlink(fh.name)
fh.close()
coocs = [
shard_cooc_fmt.unpack_from(buf, off)
for off in range(0, len(buf), shard_cooc_fmt.size)]
# Sort and merge co-occurrences for the same pairs.
coocs.sort()
if coocs:
current_pos = 0
current_row_col = (coocs[current_pos][0], coocs[current_pos][1])
for next_pos in range(1, len(coocs)):
next_row_col = (coocs[next_pos][0], coocs[next_pos][1])
if current_row_col == next_row_col:
coocs[current_pos] = (
coocs[current_pos][0],
coocs[current_pos][1],
coocs[current_pos][2] + coocs[next_pos][2])
else:
current_pos += 1
if current_pos < next_pos:
coocs[current_pos] = coocs[next_pos]
current_row_col = (coocs[current_pos][0], coocs[current_pos][1])
coocs = coocs[:(1 + current_pos)]
# Convert to a TF Example proto.
def _int64s(xs):
return tf.train.Feature(int64_list=tf.train.Int64List(value=list(xs)))
def _floats(xs):
return tf.train.Feature(float_list=tf.train.FloatList(value=list(xs)))
example = tf.train.Example(features=tf.train.Features(feature={
'global_row': _int64s(
row + num_shards * i for i in range(FLAGS.shard_size)),
'global_col': _int64s(
col + num_shards * i for i in range(FLAGS.shard_size)),
'sparse_local_row': _int64s(cooc[0] for cooc in coocs),
'sparse_local_col': _int64s(cooc[1] for cooc in coocs),
'sparse_value': _floats(cooc[2] for cooc in coocs),
}))
filename = os.path.join(FLAGS.output_dir, 'shard-%03d-%03d.pb' % (row, col))
with open(filename, 'w') as out:
out.write(example.SerializeToString())
sys.stdout.write('\n')
def main(_):
# Create the output directory, if necessary
if FLAGS.output_dir and not os.path.isdir(FLAGS.output_dir):
os.makedirs(FLAGS.output_dir)
# Read the file onces to create the vocabulary.
if FLAGS.vocab:
with open(FLAGS.vocab, 'r') as lines:
vocab = [line.strip() for line in lines]
else:
with open(FLAGS.input, 'r') as lines:
vocab = create_vocabulary(lines)
# Now read the file again to determine the co-occurrence stats.
with open(FLAGS.input, 'r') as lines:
shardfiles, sums = compute_coocs(lines, vocab)
# Collect individual shards into the shards.recs file.
write_shards(vocab, shardfiles)
# Now write the marginals. They're symmetric for this application.
write_vocab_and_sums(vocab, sums, 'row_vocab.txt', 'row_sums.txt')
write_vocab_and_sums(vocab, sums, 'col_vocab.txt', 'col_sums.txt')
print 'done!'
if __name__ == '__main__':
tf.app.run()