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data_async_generation.py
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# Copyright 2018 The TensorFlow Authors. 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.
# ==============================================================================
"""Asynchronously generate TFRecords files for NCF."""
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import atexit
import contextlib
import datetime
import gc
import multiprocessing
import json
import os
import pickle
import signal
import sys
import tempfile
import time
import timeit
import traceback
import typing
import numpy as np
import tensorflow as tf
from absl import app as absl_app
from absl import flags
from official.datasets import movielens
from official.recommendation import constants as rconst
from official.recommendation import stat_utils
_log_file = None
def log_msg(msg):
"""Include timestamp info when logging messages to a file."""
if flags.FLAGS.redirect_logs:
timestamp = datetime.datetime.now().strftime("%Y-%m-%dT%H:%M:%S")
print("[{}] {}".format(timestamp, msg), file=_log_file)
else:
print(msg, file=_log_file)
if _log_file:
_log_file.flush()
def get_cycle_folder_name(i):
return "cycle_{}".format(str(i).zfill(5))
def _process_shard(args):
# type: ((str, int, int, int)) -> (np.ndarray, np.ndarray, np.ndarray)
"""Read a shard of training data and return training vectors.
Args:
shard_path: The filepath of the positive instance training shard.
num_items: The cardinality of the item set.
num_neg: The number of negatives to generate per positive example.
seed: Random seed to be used when generating negatives.
"""
shard_path, num_items, num_neg, seed = args
np.random.seed(seed)
# The choice to store the training shards in files rather than in memory
# is motivated by the fact that multiprocessing serializes arguments,
# transmits them to map workers, and then deserializes them. By storing the
# training shards in files, the serialization work only needs to be done once.
#
# A similar effect could be achieved by simply holding pickled bytes in
# memory, however the processing is not I/O bound and is therefore
# unnecessary.
with tf.gfile.Open(shard_path, "rb") as f:
shard = pickle.load(f)
users = shard[movielens.USER_COLUMN]
items = shard[movielens.ITEM_COLUMN]
delta = users[1:] - users[:-1]
boundaries = ([0] + (np.argwhere(delta)[:, 0] + 1).tolist() +
[users.shape[0]])
user_blocks = []
item_blocks = []
label_blocks = []
for i in range(len(boundaries) - 1):
assert len(set(users[boundaries[i]:boundaries[i+1]])) == 1
positive_items = items[boundaries[i]:boundaries[i+1]]
positive_set = set(positive_items)
if positive_items.shape[0] != len(positive_set):
raise ValueError("Duplicate entries detected.")
n_pos = len(positive_set)
negatives = stat_utils.sample_with_exclusion(
num_items, positive_set, n_pos * num_neg)
user_blocks.append(users[boundaries[i]] * np.ones(
(n_pos * (1 + num_neg),), dtype=np.int32))
item_blocks.append(
np.array(list(positive_set) + negatives, dtype=np.uint16))
labels_for_user = np.zeros((n_pos * (1 + num_neg),), dtype=np.int8)
labels_for_user[:n_pos] = 1
label_blocks.append(labels_for_user)
users_out = np.concatenate(user_blocks)
items_out = np.concatenate(item_blocks)
labels_out = np.concatenate(label_blocks)
assert users_out.shape == items_out.shape == labels_out.shape
return users_out, items_out, labels_out
def _construct_record(users, items, labels=None):
"""Convert NumPy arrays into a TFRecords entry."""
feature_dict = {
movielens.USER_COLUMN: tf.train.Feature(
bytes_list=tf.train.BytesList(value=[memoryview(users).tobytes()])),
movielens.ITEM_COLUMN: tf.train.Feature(
bytes_list=tf.train.BytesList(value=[memoryview(items).tobytes()])),
}
if labels is not None:
feature_dict["labels"] = tf.train.Feature(
bytes_list=tf.train.BytesList(value=[memoryview(labels).tobytes()]))
return tf.train.Example(
features=tf.train.Features(feature=feature_dict)).SerializeToString()
def sigint_handler(signal, frame):
log_msg("Shutting down worker.")
def init_worker():
signal.signal(signal.SIGINT, sigint_handler)
def _construct_training_records(
train_cycle, # type: int
num_workers, # type: int
cache_paths, # type: rconst.Paths
num_readers, # type: int
num_neg, # type: int
num_train_positives, # type: int
num_items, # type: int
epochs_per_cycle, # type: int
train_batch_size, # type: int
training_shards, # type: typing.List[str]
spillover, # type: bool
carryover=None # type: typing.Union[typing.List[np.ndarray], None]
):
"""Generate false negatives and write TFRecords files.
Args:
train_cycle: Integer of which cycle the generated data is for.
num_workers: Number of multiprocessing workers to use for negative
generation.
cache_paths: Paths object with information of where to write files.
num_readers: The number of reader datasets in the train input_fn.
num_neg: The number of false negatives per positive example.
num_train_positives: The number of positive examples. This value is used
to pre-allocate arrays while the imap is still running. (NumPy does not
allow dynamic arrays.)
num_items: The cardinality of the item set.
epochs_per_cycle: The number of epochs worth of data to construct.
train_batch_size: The expected batch size used during training. This is used
to properly batch data when writing TFRecords.
training_shards: The picked positive examples from which to generate
negatives.
spillover: If the final batch is incomplete, push it to the next
cycle (True) or include a partial batch (False).
carryover: The data points to be spilled over to the next cycle.
"""
st = timeit.default_timer()
num_workers = min([num_workers, len(training_shards) * epochs_per_cycle])
carryover = carryover or [
np.zeros((0,), dtype=np.int32),
np.zeros((0,), dtype=np.uint16),
np.zeros((0,), dtype=np.int8),
]
num_carryover = carryover[0].shape[0]
num_pts = num_carryover + num_train_positives * (1 + num_neg)
# We choose a different random seed for each process, so that the processes
# will not all choose the same random numbers.
process_seeds = [np.random.randint(2**32)
for _ in training_shards * epochs_per_cycle]
map_args = [(shard, num_items, num_neg, process_seeds[i])
for i, shard in enumerate(training_shards * epochs_per_cycle)]
with contextlib.closing(multiprocessing.Pool(
processes=num_workers, initializer=init_worker)) as pool:
data_generator = pool.imap_unordered(_process_shard, map_args) # pylint: disable=no-member
data = [
np.zeros(shape=(num_pts,), dtype=np.int32) - 1,
np.zeros(shape=(num_pts,), dtype=np.uint16),
np.zeros(shape=(num_pts,), dtype=np.int8),
]
# The carryover data is always first.
for i in range(3):
data[i][:num_carryover] = carryover[i]
index_destinations = np.random.permutation(
num_train_positives * (1 + num_neg)) + num_carryover
start_ind = 0
for data_segment in data_generator:
n_in_segment = data_segment[0].shape[0]
dest = index_destinations[start_ind:start_ind + n_in_segment]
start_ind += n_in_segment
for i in range(3):
data[i][dest] = data_segment[i]
# Check that no points were dropped.
assert (num_pts - num_carryover) == start_ind
assert not np.sum(data[0] == -1)
record_dir = os.path.join(cache_paths.train_epoch_dir,
get_cycle_folder_name(train_cycle))
tf.gfile.MakeDirs(record_dir)
batches_per_file = np.ceil(num_pts / train_batch_size / num_readers)
current_file_id = -1
current_batch_id = -1
batches_by_file = [[] for _ in range(num_readers)]
output_carryover = [
np.zeros(shape=(0,), dtype=np.int32),
np.zeros(shape=(0,), dtype=np.uint16),
np.zeros(shape=(0,), dtype=np.int8),
]
while True:
current_batch_id += 1
if (current_batch_id % batches_per_file) == 0:
current_file_id += 1
end_ind = (current_batch_id + 1) * train_batch_size
if end_ind > num_pts:
if spillover:
output_carryover = [data[i][current_batch_id*train_batch_size:num_pts]
for i in range(3)]
break
else:
batches_by_file[current_file_id].append(current_batch_id)
break
batches_by_file[current_file_id].append(current_batch_id)
batch_count = 0
for i in range(num_readers):
fpath = os.path.join(record_dir, rconst.TRAIN_RECORD_TEMPLATE.format(i))
log_msg("Writing {}".format(fpath))
with tf.python_io.TFRecordWriter(fpath) as writer:
for j in batches_by_file[i]:
start_ind = j * train_batch_size
end_ind = start_ind + train_batch_size
batch_bytes = _construct_record(
users=data[0][start_ind:end_ind],
items=data[1][start_ind:end_ind],
labels=data[2][start_ind:end_ind],
)
writer.write(batch_bytes)
batch_count += 1
if spillover:
written_pts = output_carryover[0].shape[0] + batch_count * train_batch_size
if num_pts != written_pts:
raise ValueError("Error detected: point counts do not match: {} vs. {}"
.format(num_pts, written_pts))
with tf.gfile.Open(os.path.join(record_dir, rconst.READY_FILE), "w") as f:
json.dump({
"batch_size": train_batch_size,
"batch_count": batch_count,
}, f)
log_msg("Cycle {} complete. Total time: {:.1f} seconds"
.format(train_cycle, timeit.default_timer() - st))
return output_carryover
def _construct_eval_record(cache_paths, eval_batch_size):
"""Convert Eval data to a single TFRecords file."""
log_msg("Beginning construction of eval TFRecords file.")
raw_fpath = cache_paths.eval_raw_file
intermediate_fpath = cache_paths.eval_record_template_temp
dest_fpath = cache_paths.eval_record_template.format(eval_batch_size)
with tf.gfile.Open(raw_fpath, "rb") as f:
eval_data = pickle.load(f)
users = eval_data[0][movielens.USER_COLUMN]
items = eval_data[0][movielens.ITEM_COLUMN]
assert users.shape == items.shape
# eval_data[1] is the labels, but during evaluation they are infered as they
# have a set structure. They are included the the data artifact for debug
# purposes.
# This packaging assumes that the caller knows to drop the padded values.
n_pts = users.shape[0]
n_pad = eval_batch_size - (n_pts % eval_batch_size)
assert not (n_pts + n_pad) % eval_batch_size
users = np.concatenate([users, np.zeros(shape=(n_pad,), dtype=np.int32)])\
.reshape((-1, eval_batch_size))
items = np.concatenate([items, np.zeros(shape=(n_pad,), dtype=np.uint16)])\
.reshape((-1, eval_batch_size))
num_batches = users.shape[0]
with tf.python_io.TFRecordWriter(intermediate_fpath) as writer:
for i in range(num_batches):
batch_bytes = _construct_record(
users=users[i, :],
items=items[i, :]
)
writer.write(batch_bytes)
tf.gfile.Copy(intermediate_fpath, dest_fpath)
tf.gfile.Remove(intermediate_fpath)
log_msg("Eval TFRecords file successfully constructed.")
def _generation_loop(
num_workers, cache_paths, num_readers, num_neg, num_train_positives,
num_items, spillover, epochs_per_cycle, train_batch_size, eval_batch_size):
# type: (int, rconst.Paths, int, int, int, int, bool, int, int, int) -> None
"""Primary run loop for data file generation."""
log_msg("Signaling that I am alive.")
with tf.gfile.Open(cache_paths.subproc_alive, "w") as f:
f.write("Generation subproc has started.")
atexit.register(tf.gfile.Remove, filename=cache_paths.subproc_alive)
log_msg("Entering generation loop.")
tf.gfile.MakeDirs(cache_paths.train_epoch_dir)
training_shards = [os.path.join(cache_paths.train_shard_subdir, i) for i in
tf.gfile.ListDirectory(cache_paths.train_shard_subdir)]
# Training blocks on the creation of the first epoch, so the num_workers
# limit is not respected for this invocation
train_cycle = 0
carryover = _construct_training_records(
train_cycle=train_cycle, num_workers=multiprocessing.cpu_count(),
cache_paths=cache_paths, num_readers=num_readers, num_neg=num_neg,
num_train_positives=num_train_positives, num_items=num_items,
epochs_per_cycle=epochs_per_cycle, train_batch_size=train_batch_size,
training_shards=training_shards, spillover=spillover, carryover=None)
_construct_eval_record(cache_paths=cache_paths,
eval_batch_size=eval_batch_size)
wait_count = 0
start_time = time.time()
while True:
ready_epochs = tf.gfile.ListDirectory(cache_paths.train_epoch_dir)
if len(ready_epochs) >= rconst.CYCLES_TO_BUFFER:
wait_count += 1
sleep_time = max([0, wait_count * 5 - (time.time() - start_time)])
time.sleep(sleep_time)
if (wait_count % 10) == 0:
log_msg("Waited {} times for data to be consumed."
.format(wait_count))
if time.time() - start_time > rconst.TIMEOUT_SECONDS:
log_msg("Waited more than {} seconds. Concluding that this "
"process is orphaned and exiting gracefully."
.format(rconst.TIMEOUT_SECONDS))
sys.exit()
continue
train_cycle += 1
carryover = _construct_training_records(
train_cycle=train_cycle, num_workers=num_workers,
cache_paths=cache_paths, num_readers=num_readers, num_neg=num_neg,
num_train_positives=num_train_positives, num_items=num_items,
epochs_per_cycle=epochs_per_cycle, train_batch_size=train_batch_size,
training_shards=training_shards, spillover=spillover,
carryover=carryover)
wait_count = 0
start_time = time.time()
gc.collect()
def main(_):
global _log_file
redirect_logs = flags.FLAGS.redirect_logs
cache_paths = rconst.Paths(
data_dir=flags.FLAGS.data_dir, cache_id=flags.FLAGS.cache_id)
log_file_name = "data_gen_proc_{}.log".format(cache_paths.cache_id)
log_path = os.path.join(cache_paths.data_dir, log_file_name)
if log_path.startswith("gs://") and redirect_logs:
fallback_log_file = os.path.join(tempfile.gettempdir(), log_file_name)
print("Unable to log to {}. Falling back to {}"
.format(log_path, fallback_log_file))
log_path = fallback_log_file
# This server is generally run in a subprocess.
if redirect_logs:
print("Redirecting output of data_async_generation.py process to {}"
.format(log_path))
_log_file = open(log_path, "wt") # Note: not tf.gfile.Open().
try:
log_msg("sys.argv: {}".format(" ".join(sys.argv)))
if flags.FLAGS.seed is not None:
np.random.seed(flags.FLAGS.seed)
_generation_loop(
num_workers=flags.FLAGS.num_workers,
cache_paths=cache_paths,
num_readers=flags.FLAGS.num_readers,
num_neg=flags.FLAGS.num_neg,
num_train_positives=flags.FLAGS.num_train_positives,
num_items=flags.FLAGS.num_items,
spillover=flags.FLAGS.spillover,
epochs_per_cycle=flags.FLAGS.epochs_per_cycle,
train_batch_size=flags.FLAGS.train_batch_size,
eval_batch_size=flags.FLAGS.eval_batch_size,
)
except KeyboardInterrupt:
log_msg("KeyboardInterrupt registered.")
except:
traceback.print_exc(file=_log_file)
raise
finally:
log_msg("Shutting down generation subprocess.")
sys.stdout.flush()
sys.stderr.flush()
if redirect_logs:
_log_file.close()
def define_flags():
"""Construct flags for the server.
This function does not use offical.utils.flags, as these flags are not meant
to be used by humans. Rather, they should be passed as part of a subprocess
call.
"""
flags.DEFINE_integer(name="num_workers", default=multiprocessing.cpu_count(),
help="Size of the negative generation worker pool.")
flags.DEFINE_string(name="data_dir", default=None,
help="The data root. (used to construct cache paths.)")
flags.DEFINE_string(name="cache_id", default=None,
help="The cache_id generated in the main process.")
flags.DEFINE_integer(name="num_readers", default=4,
help="Number of reader datasets in training. This sets"
"how the epoch files are sharded.")
flags.DEFINE_integer(name="num_neg", default=None,
help="The Number of negative instances to pair with a "
"positive instance.")
flags.DEFINE_integer(name="num_train_positives", default=None,
help="The number of positive training examples.")
flags.DEFINE_integer(name="num_items", default=None,
help="Number of items from which to select negatives.")
flags.DEFINE_integer(name="epochs_per_cycle", default=1,
help="The number of epochs of training data to produce"
"at a time.")
flags.DEFINE_integer(name="train_batch_size", default=None,
help="The batch size with which training TFRecords will "
"be chunked.")
flags.DEFINE_integer(name="eval_batch_size", default=None,
help="The batch size with which evaluation TFRecords "
"will be chunked.")
flags.DEFINE_boolean(
name="spillover", default=True,
help="If a complete batch cannot be provided, return an empty batch and "
"start the next epoch from a non-empty buffer. This guarantees "
"fixed batch sizes.")
flags.DEFINE_boolean(name="redirect_logs", default=False,
help="Catch logs and write them to a file. "
"(Useful if this is run as a subprocess)")
flags.DEFINE_integer(name="seed", default=None,
help="NumPy random seed to set at startup. If not "
"specified, a seed will not be set.")
flags.mark_flags_as_required(
["data_dir", "cache_id", "num_neg", "num_train_positives", "num_items",
"train_batch_size", "eval_batch_size"])
if __name__ == "__main__":
define_flags()
absl_app.run(main)