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swivel.py
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swivel.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.
"""Submatrix-wise Vector Embedding Learner.
Implementation of SwiVel algorithm described at:
http://arxiv.org/abs/1602.02215
This program expects an input directory that contains the following files.
row_vocab.txt, col_vocab.txt
The row an column vocabulary files. Each file should contain one token per
line; these will be used to generate a tab-separate file containing the
trained embeddings.
row_sums.txt, col_sum.txt
The matrix row and column marginal sums. Each file should contain one
decimal floating point number per line which corresponds to the marginal
count of the matrix for that row or column.
shards.recs
A file containing the sub-matrix shards, stored as TFRecords. Each shard is
expected to be a serialzed tf.Example protocol buffer with the following
properties:
global_row: the global row indicies contained in the shard
global_col: the global column indicies contained in the shard
sparse_local_row, sparse_local_col, sparse_value: three parallel arrays
that are a sparse representation of the submatrix counts.
It will generate embeddings, training from the input directory for the specified
number of epochs. When complete, it will output the trained vectors to a
tab-separated file that contains one line per embedding. Row and column
embeddings are stored in separate files.
"""
from __future__ import print_function
import glob
import math
import os
import sys
import time
import threading
import numpy as np
import tensorflow as tf
from tensorflow.python.client import device_lib
flags = tf.app.flags
flags.DEFINE_string('input_base_path', '/tmp/swivel_data',
'Directory containing input shards, vocabularies, '
'and marginals.')
flags.DEFINE_string('output_base_path', '/tmp/swivel_data',
'Path where to write the trained embeddings.')
flags.DEFINE_integer('embedding_size', 300, 'Size of the embeddings')
flags.DEFINE_boolean('trainable_bias', False, 'Biases are trainable')
flags.DEFINE_integer('submatrix_rows', 4096, 'Rows in each training submatrix. '
'This must match the training data.')
flags.DEFINE_integer('submatrix_cols', 4096, 'Rows in each training submatrix. '
'This must match the training data.')
flags.DEFINE_float('loss_multiplier', 1.0 / 4096,
'constant multiplier on loss.')
flags.DEFINE_float('confidence_exponent', 0.5,
'Exponent for l2 confidence function')
flags.DEFINE_float('confidence_scale', 0.25, 'Scale for l2 confidence function')
flags.DEFINE_float('confidence_base', 0.1, 'Base for l2 confidence function')
flags.DEFINE_float('learning_rate', 1.0, 'Initial learning rate')
flags.DEFINE_integer('num_concurrent_steps', 2,
'Number of threads to train with')
flags.DEFINE_integer('num_readers', 4,
'Number of threads to read the input data and feed it')
flags.DEFINE_float('num_epochs', 40, 'Number epochs to train for')
flags.DEFINE_float('per_process_gpu_memory_fraction', 0,
'Fraction of GPU memory to use, 0 means allow_growth')
flags.DEFINE_integer('num_gpus', 0,
'Number of GPUs to use, 0 means all available')
FLAGS = flags.FLAGS
def log(message, *args, **kwargs):
tf.logging.info(message, *args, **kwargs)
def get_available_gpus():
return [d.name for d in device_lib.list_local_devices()
if d.device_type == 'GPU']
def embeddings_with_init(vocab_size, embedding_dim, name):
"""Creates and initializes the embedding tensors."""
return tf.get_variable(name=name,
shape=[vocab_size, embedding_dim],
initializer=tf.random_normal_initializer(
stddev=math.sqrt(1.0 / embedding_dim)))
def count_matrix_input(filenames, submatrix_rows, submatrix_cols):
"""Reads submatrix shards from disk."""
filename_queue = tf.train.string_input_producer(filenames)
reader = tf.WholeFileReader()
_, serialized_example = reader.read(filename_queue)
features = tf.parse_single_example(
serialized_example,
features={
'global_row': tf.FixedLenFeature([submatrix_rows], dtype=tf.int64),
'global_col': tf.FixedLenFeature([submatrix_cols], dtype=tf.int64),
'sparse_local_row': tf.VarLenFeature(dtype=tf.int64),
'sparse_local_col': tf.VarLenFeature(dtype=tf.int64),
'sparse_value': tf.VarLenFeature(dtype=tf.float32)
})
global_row = features['global_row']
global_col = features['global_col']
sparse_local_row = features['sparse_local_row'].values
sparse_local_col = features['sparse_local_col'].values
sparse_count = features['sparse_value'].values
sparse_indices = tf.concat(axis=1, values=[tf.expand_dims(sparse_local_row, 1),
tf.expand_dims(sparse_local_col, 1)])
count = tf.sparse_to_dense(sparse_indices, [submatrix_rows, submatrix_cols],
sparse_count)
queued_global_row, queued_global_col, queued_count = tf.train.batch(
[global_row, global_col, count],
batch_size=1,
num_threads=FLAGS.num_readers,
capacity=32)
queued_global_row = tf.reshape(queued_global_row, [submatrix_rows])
queued_global_col = tf.reshape(queued_global_col, [submatrix_cols])
queued_count = tf.reshape(queued_count, [submatrix_rows, submatrix_cols])
return queued_global_row, queued_global_col, queued_count
def read_marginals_file(filename):
"""Reads text file with one number per line to an array."""
with open(filename) as lines:
return [float(line) for line in lines]
def write_embedding_tensor_to_disk(vocab_path, output_path, sess, embedding):
"""Writes tensor to output_path as tsv"""
# Fetch the embedding values from the model
embeddings = sess.run(embedding)
with open(output_path, 'w') as out_f:
with open(vocab_path) as vocab_f:
for index, word in enumerate(vocab_f):
word = word.strip()
embedding = embeddings[index]
out_f.write(word + '\t' + '\t'.join([str(x) for x in embedding]) + '\n')
def write_embeddings_to_disk(config, model, sess):
"""Writes row and column embeddings disk"""
# Row Embedding
row_vocab_path = config.input_base_path + '/row_vocab.txt'
row_embedding_output_path = config.output_base_path + '/row_embedding.tsv'
log('Writing row embeddings to: %s', row_embedding_output_path)
write_embedding_tensor_to_disk(row_vocab_path, row_embedding_output_path,
sess, model.row_embedding)
# Column Embedding
col_vocab_path = config.input_base_path + '/col_vocab.txt'
col_embedding_output_path = config.output_base_path + '/col_embedding.tsv'
log('Writing column embeddings to: %s', col_embedding_output_path)
write_embedding_tensor_to_disk(col_vocab_path, col_embedding_output_path,
sess, model.col_embedding)
class SwivelModel(object):
"""Small class to gather needed pieces from a Graph being built."""
def __init__(self, config):
"""Construct graph for dmc."""
self._config = config
# Create paths to input data files
log('Reading model from: %s', config.input_base_path)
count_matrix_files = glob.glob(config.input_base_path + '/shard-*.pb')
row_sums_path = config.input_base_path + '/row_sums.txt'
col_sums_path = config.input_base_path + '/col_sums.txt'
# Read marginals
row_sums = read_marginals_file(row_sums_path)
col_sums = read_marginals_file(col_sums_path)
self.n_rows = len(row_sums)
self.n_cols = len(col_sums)
log('Matrix dim: (%d,%d) SubMatrix dim: (%d,%d)',
self.n_rows, self.n_cols, config.submatrix_rows, config.submatrix_cols)
self.n_submatrices = (self.n_rows * self.n_cols /
(config.submatrix_rows * config.submatrix_cols))
log('n_submatrices: %d', self.n_submatrices)
with tf.device('/cpu:0'):
# ===== CREATE VARIABLES ======
# Get input
global_row, global_col, count = count_matrix_input(
count_matrix_files, config.submatrix_rows, config.submatrix_cols)
# Embeddings
self.row_embedding = embeddings_with_init(
embedding_dim=config.embedding_size,
vocab_size=self.n_rows,
name='row_embedding')
self.col_embedding = embeddings_with_init(
embedding_dim=config.embedding_size,
vocab_size=self.n_cols,
name='col_embedding')
tf.summary.histogram('row_emb', self.row_embedding)
tf.summary.histogram('col_emb', self.col_embedding)
matrix_log_sum = math.log(np.sum(row_sums) + 1)
row_bias_init = [math.log(x + 1) for x in row_sums]
col_bias_init = [math.log(x + 1) for x in col_sums]
self.row_bias = tf.Variable(
row_bias_init, trainable=config.trainable_bias)
self.col_bias = tf.Variable(
col_bias_init, trainable=config.trainable_bias)
tf.summary.histogram('row_bias', self.row_bias)
tf.summary.histogram('col_bias', self.col_bias)
# Add optimizer
l2_losses = []
sigmoid_losses = []
self.global_step = tf.Variable(0, name='global_step')
opt = tf.train.AdagradOptimizer(config.learning_rate)
all_grads = []
devices = ['/gpu:%d' % i for i in range(FLAGS.num_gpus)] \
if FLAGS.num_gpus > 0 else get_available_gpus()
self.devices_number = len(devices)
with tf.variable_scope(tf.get_variable_scope()):
for dev in devices:
with tf.device(dev):
with tf.name_scope(dev[1:].replace(':', '_')):
# ===== CREATE GRAPH =====
# Fetch embeddings.
selected_row_embedding = tf.nn.embedding_lookup(
self.row_embedding, global_row)
selected_col_embedding = tf.nn.embedding_lookup(
self.col_embedding, global_col)
# Fetch biases.
selected_row_bias = tf.nn.embedding_lookup(
[self.row_bias], global_row)
selected_col_bias = tf.nn.embedding_lookup(
[self.col_bias], global_col)
# Multiply the row and column embeddings to generate predictions.
predictions = tf.matmul(
selected_row_embedding, selected_col_embedding,
transpose_b=True)
# These binary masks separate zero from non-zero values.
count_is_nonzero = tf.to_float(tf.cast(count, tf.bool))
count_is_zero = 1 - count_is_nonzero
objectives = count_is_nonzero * tf.log(count + 1e-30)
objectives -= tf.reshape(
selected_row_bias, [config.submatrix_rows, 1])
objectives -= selected_col_bias
objectives += matrix_log_sum
err = predictions - objectives
# The confidence function scales the L2 loss based on the raw
# co-occurrence count.
l2_confidence = (config.confidence_base +
config.confidence_scale * tf.pow(
count, config.confidence_exponent))
l2_loss = config.loss_multiplier * tf.reduce_sum(
0.5 * l2_confidence * err * err * count_is_nonzero)
l2_losses.append(tf.expand_dims(l2_loss, 0))
sigmoid_loss = config.loss_multiplier * tf.reduce_sum(
tf.nn.softplus(err) * count_is_zero)
sigmoid_losses.append(tf.expand_dims(sigmoid_loss, 0))
loss = l2_loss + sigmoid_loss
grads = opt.compute_gradients(loss)
all_grads.append(grads)
with tf.device('/cpu:0'):
# ===== MERGE LOSSES =====
l2_loss = tf.reduce_mean(tf.concat(axis=0, values=l2_losses), 0,
name="l2_loss")
sigmoid_loss = tf.reduce_mean(tf.concat(axis=0, values=sigmoid_losses), 0,
name="sigmoid_loss")
self.loss = l2_loss + sigmoid_loss
average = tf.train.ExponentialMovingAverage(0.8, self.global_step)
loss_average_op = average.apply((self.loss,))
tf.summary.scalar("l2_loss", l2_loss)
tf.summary.scalar("sigmoid_loss", sigmoid_loss)
tf.summary.scalar("loss", self.loss)
# Apply the gradients to adjust the shared variables.
apply_gradient_ops = []
for grads in all_grads:
apply_gradient_ops.append(opt.apply_gradients(
grads, global_step=self.global_step))
self.train_op = tf.group(loss_average_op, *apply_gradient_ops)
self.saver = tf.train.Saver(sharded=True)
def main(_):
tf.logging.set_verbosity(tf.logging.INFO)
start_time = time.time()
# Create the output path. If this fails, it really ought to fail
# now. :)
if not os.path.isdir(FLAGS.output_base_path):
os.makedirs(FLAGS.output_base_path)
# Create and run model
with tf.Graph().as_default():
model = SwivelModel(FLAGS)
# Create a session for running Ops on the Graph.
gpu_opts = {}
if FLAGS.per_process_gpu_memory_fraction > 0:
gpu_opts["per_process_gpu_memory_fraction"] = \
FLAGS.per_process_gpu_memory_fraction
else:
gpu_opts["allow_growth"] = True
gpu_options = tf.GPUOptions(**gpu_opts)
sess = tf.Session(config=tf.ConfigProto(gpu_options=gpu_options))
# Run the Op to initialize the variables.
sess.run(tf.global_variables_initializer())
# Start feeding input
coord = tf.train.Coordinator()
threads = tf.train.start_queue_runners(sess=sess, coord=coord)
# Calculate how many steps each thread should run
n_total_steps = int(FLAGS.num_epochs * model.n_rows * model.n_cols) / (
FLAGS.submatrix_rows * FLAGS.submatrix_cols)
n_steps_per_thread = n_total_steps / (
FLAGS.num_concurrent_steps * model.devices_number)
n_submatrices_to_train = model.n_submatrices * FLAGS.num_epochs
t0 = [time.time()]
n_steps_between_status_updates = 100
status_i = [0]
status_lock = threading.Lock()
msg = ('%%%dd/%%d submatrices trained (%%.1f%%%%), %%5.1f submatrices/sec |'
' loss %%f') % len(str(n_submatrices_to_train))
def TrainingFn():
for _ in range(int(n_steps_per_thread)):
_, global_step, loss = sess.run((
model.train_op, model.global_step, model.loss))
show_status = False
with status_lock:
new_i = global_step // n_steps_between_status_updates
if new_i > status_i[0]:
status_i[0] = new_i
show_status = True
if show_status:
elapsed = float(time.time() - t0[0])
log(msg, global_step, n_submatrices_to_train,
100.0 * global_step / n_submatrices_to_train,
n_steps_between_status_updates / elapsed, loss)
t0[0] = time.time()
# Start training threads
train_threads = []
for _ in range(FLAGS.num_concurrent_steps):
t = threading.Thread(target=TrainingFn)
train_threads.append(t)
t.start()
# Wait for threads to finish.
for t in train_threads:
t.join()
coord.request_stop()
coord.join(threads)
# Write out vectors
write_embeddings_to_disk(FLAGS, model, sess)
# Shutdown
sess.close()
log("Elapsed: %s", time.time() - start_time)
if __name__ == '__main__':
tf.app.run()