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train.py
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train.py
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# 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.
"""Binary for training Tensorflow models on the YouTube-8M dataset."""
import json
import os
import time
import eval_util
import export_model
import losses
import frame_level_models
import video_level_models
import readers
import tensorflow as tf
import tensorflow.contrib.slim as slim
from tensorflow.python.lib.io import file_io
from tensorflow import app
from tensorflow import flags
from tensorflow import gfile
from tensorflow import logging
from tensorflow.python.client import device_lib
import utils
FLAGS = flags.FLAGS
if __name__ == "__main__":
# Dataset flags.
flags.DEFINE_string("train_dir", "/tmp/yt8m_model/",
"The directory to save the model files in.")
flags.DEFINE_string(
"train_data_pattern", "",
"File glob for the training dataset. If the files refer to Frame Level "
"features (i.e. tensorflow.SequenceExample), then set --reader_type "
"format. The (Sequence)Examples are expected to have 'rgb' byte array "
"sequence feature as well as a 'labels' int64 context feature.")
flags.DEFINE_string("feature_names", "mean_rgb", "Name of the feature "
"to use for training.")
flags.DEFINE_string("feature_sizes", "1024", "Length of the feature vectors.")
# Model flags.
flags.DEFINE_bool(
"frame_features", False,
"If set, then --train_data_pattern must be frame-level features. "
"Otherwise, --train_data_pattern must be aggregated video-level "
"features. The model must also be set appropriately (i.e. to read 3D "
"batches VS 4D batches.")
flags.DEFINE_bool(
"segment_labels", False,
"If set, then --train_data_pattern must be frame-level features (but with"
" segment_labels). Otherwise, --train_data_pattern must be aggregated "
"video-level features. The model must also be set appropriately (i.e. to "
"read 3D batches VS 4D batches.")
flags.DEFINE_string(
"model", "LogisticModel",
"Which architecture to use for the model. Models are defined "
"in models.py.")
flags.DEFINE_bool(
"start_new_model", False,
"If set, this will not resume from a checkpoint and will instead create a"
" new model instance.")
# Training flags.
flags.DEFINE_integer(
"num_gpu", 1, "The maximum number of GPU devices to use for training. "
"Flag only applies if GPUs are installed")
flags.DEFINE_integer("batch_size", 1024,
"How many examples to process per batch for training.")
flags.DEFINE_string("label_loss", "CrossEntropyLoss",
"Which loss function to use for training the model.")
flags.DEFINE_float(
"regularization_penalty", 1.0,
"How much weight to give to the regularization loss (the label loss has "
"a weight of 1).")
flags.DEFINE_float("base_learning_rate", 0.01,
"Which learning rate to start with.")
flags.DEFINE_float(
"learning_rate_decay", 0.95,
"Learning rate decay factor to be applied every "
"learning_rate_decay_examples.")
flags.DEFINE_float(
"learning_rate_decay_examples", 4000000,
"Multiply current learning rate by learning_rate_decay "
"every learning_rate_decay_examples.")
flags.DEFINE_integer(
"num_epochs", 5, "How many passes to make over the dataset before "
"halting training.")
flags.DEFINE_integer(
"max_steps", None,
"The maximum number of iterations of the training loop.")
flags.DEFINE_integer(
"export_model_steps", 1000,
"The period, in number of steps, with which the model "
"is exported for batch prediction.")
# Other flags.
flags.DEFINE_integer("num_readers", 8,
"How many threads to use for reading input files.")
flags.DEFINE_string("optimizer", "AdamOptimizer",
"What optimizer class to use.")
flags.DEFINE_float("clip_gradient_norm", 1.0, "Norm to clip gradients to.")
flags.DEFINE_bool(
"log_device_placement", False,
"Whether to write the device on which every op will run into the "
"logs on startup.")
def validate_class_name(flag_value, category, modules, expected_superclass):
"""Checks that the given string matches a class of the expected type.
Args:
flag_value: A string naming the class to instantiate.
category: A string used further describe the class in error messages (e.g.
'model', 'reader', 'loss').
modules: A list of modules to search for the given class.
expected_superclass: A class that the given class should inherit from.
Raises:
FlagsError: If the given class could not be found or if the first class
found with that name doesn't inherit from the expected superclass.
Returns:
True if a class was found that matches the given constraints.
"""
candidates = [getattr(module, flag_value, None) for module in modules]
for candidate in candidates:
if not candidate:
continue
if not issubclass(candidate, expected_superclass):
raise flags.FlagsError(
"%s '%s' doesn't inherit from %s." %
(category, flag_value, expected_superclass.__name__))
return True
raise flags.FlagsError("Unable to find %s '%s'." % (category, flag_value))
def get_input_data_tensors(reader,
data_pattern,
batch_size=1000,
num_epochs=None,
num_readers=1):
"""Creates the section of the graph which reads the training data.
Args:
reader: A class which parses the training data.
data_pattern: A 'glob' style path to the data files.
batch_size: How many examples to process at a time.
num_epochs: How many passes to make over the training data. Set to 'None' to
run indefinitely.
num_readers: How many I/O threads to use.
Returns:
A tuple containing the features tensor, labels tensor, and optionally a
tensor containing the number of frames per video. The exact dimensions
depend on the reader being used.
Raises:
IOError: If no files matching the given pattern were found.
"""
logging.info("Using batch size of " + str(batch_size) + " for training.")
with tf.name_scope("train_input"):
files = gfile.Glob(data_pattern)
if not files:
raise IOError("Unable to find training files. data_pattern='" +
data_pattern + "'.")
logging.info("Number of training files: %s.", str(len(files)))
filename_queue = tf.train.string_input_producer(files,
num_epochs=num_epochs,
shuffle=True)
training_data = [
reader.prepare_reader(filename_queue) for _ in range(num_readers)
]
return tf.train.shuffle_batch_join(training_data,
batch_size=batch_size,
capacity=batch_size * 5,
min_after_dequeue=batch_size,
allow_smaller_final_batch=True,
enqueue_many=True)
def find_class_by_name(name, modules):
"""Searches the provided modules for the named class and returns it."""
modules = [getattr(module, name, None) for module in modules]
return next(a for a in modules if a)
def build_graph(reader,
model,
train_data_pattern,
label_loss_fn=losses.CrossEntropyLoss(),
batch_size=1000,
base_learning_rate=0.01,
learning_rate_decay_examples=1000000,
learning_rate_decay=0.95,
optimizer_class=tf.train.AdamOptimizer,
clip_gradient_norm=1.0,
regularization_penalty=1,
num_readers=1,
num_epochs=None):
"""Creates the Tensorflow graph.
This will only be called once in the life of
a training model, because after the graph is created the model will be
restored from a meta graph file rather than being recreated.
Args:
reader: The data file reader. It should inherit from BaseReader.
model: The core model (e.g. logistic or neural net). It should inherit from
BaseModel.
train_data_pattern: glob path to the training data files.
label_loss_fn: What kind of loss to apply to the model. It should inherit
from BaseLoss.
batch_size: How many examples to process at a time.
base_learning_rate: What learning rate to initialize the optimizer with.
optimizer_class: Which optimization algorithm to use.
clip_gradient_norm: Magnitude of the gradient to clip to.
regularization_penalty: How much weight to give the regularization loss
compared to the label loss.
num_readers: How many threads to use for I/O operations.
num_epochs: How many passes to make over the data. 'None' means an unlimited
number of passes.
"""
global_step = tf.Variable(0, trainable=False, name="global_step")
local_device_protos = device_lib.list_local_devices()
gpus = [x.name for x in local_device_protos if x.device_type == "GPU"]
gpus = gpus[:FLAGS.num_gpu]
num_gpus = len(gpus)
if num_gpus > 0:
logging.info("Using the following GPUs to train: " + str(gpus))
num_towers = num_gpus
device_string = "/gpu:%d"
else:
logging.info("No GPUs found. Training on CPU.")
num_towers = 1
device_string = "/cpu:%d"
learning_rate = tf.train.exponential_decay(base_learning_rate,
global_step * batch_size *
num_towers,
learning_rate_decay_examples,
learning_rate_decay,
staircase=True)
tf.summary.scalar("learning_rate", learning_rate)
optimizer = optimizer_class(learning_rate)
input_data_dict = (get_input_data_tensors(reader,
train_data_pattern,
batch_size=batch_size * num_towers,
num_readers=num_readers,
num_epochs=num_epochs))
model_input_raw = input_data_dict["video_matrix"]
labels_batch = input_data_dict["labels"]
num_frames = input_data_dict["num_frames"]
print("model_input_shape, ", model_input_raw.shape)
tf.summary.histogram("model/input_raw", model_input_raw)
feature_dim = len(model_input_raw.get_shape()) - 1
model_input = tf.nn.l2_normalize(model_input_raw, feature_dim)
tower_inputs = tf.split(model_input, num_towers)
tower_labels = tf.split(labels_batch, num_towers)
tower_num_frames = tf.split(num_frames, num_towers)
tower_gradients = []
tower_predictions = []
tower_label_losses = []
tower_reg_losses = []
for i in range(num_towers):
# For some reason these 'with' statements can't be combined onto the same
# line. They have to be nested.
with tf.device(device_string % i):
with (tf.variable_scope(("tower"), reuse=True if i > 0 else None)):
with (slim.arg_scope([slim.model_variable, slim.variable],
device="/cpu:0" if num_gpus != 1 else "/gpu:0")):
result = model.create_model(tower_inputs[i],
num_frames=tower_num_frames[i],
vocab_size=reader.num_classes,
labels=tower_labels[i])
for variable in slim.get_model_variables():
tf.summary.histogram(variable.op.name, variable)
predictions = result["predictions"]
tower_predictions.append(predictions)
if "loss" in result.keys():
label_loss = result["loss"]
else:
label_loss = label_loss_fn.calculate_loss(predictions,
tower_labels[i])
if "regularization_loss" in result.keys():
reg_loss = result["regularization_loss"]
else:
reg_loss = tf.constant(0.0)
reg_losses = tf.losses.get_regularization_losses()
if reg_losses:
reg_loss += tf.add_n(reg_losses)
tower_reg_losses.append(reg_loss)
# Adds update_ops (e.g., moving average updates in batch normalization) as
# a dependency to the train_op.
update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS)
if "update_ops" in result.keys():
update_ops += result["update_ops"]
if update_ops:
with tf.control_dependencies(update_ops):
barrier = tf.no_op(name="gradient_barrier")
with tf.control_dependencies([barrier]):
label_loss = tf.identity(label_loss)
tower_label_losses.append(label_loss)
# Incorporate the L2 weight penalties etc.
final_loss = regularization_penalty * reg_loss + label_loss
gradients = optimizer.compute_gradients(
final_loss, colocate_gradients_with_ops=False)
tower_gradients.append(gradients)
label_loss = tf.reduce_mean(tf.stack(tower_label_losses))
tf.summary.scalar("label_loss", label_loss)
if regularization_penalty != 0:
reg_loss = tf.reduce_mean(tf.stack(tower_reg_losses))
tf.summary.scalar("reg_loss", reg_loss)
merged_gradients = utils.combine_gradients(tower_gradients)
if clip_gradient_norm > 0:
with tf.name_scope("clip_grads"):
merged_gradients = utils.clip_gradient_norms(merged_gradients,
clip_gradient_norm)
train_op = optimizer.apply_gradients(merged_gradients,
global_step=global_step)
tf.add_to_collection("global_step", global_step)
tf.add_to_collection("loss", label_loss)
tf.add_to_collection("predictions", tf.concat(tower_predictions, 0))
tf.add_to_collection("input_batch_raw", model_input_raw)
tf.add_to_collection("input_batch", model_input)
tf.add_to_collection("num_frames", num_frames)
tf.add_to_collection("labels", tf.cast(labels_batch, tf.float32))
tf.add_to_collection("train_op", train_op)
class Trainer(object):
"""A Trainer to train a Tensorflow graph."""
def __init__(self,
cluster,
task,
train_dir,
model,
reader,
model_exporter,
log_device_placement=True,
max_steps=None,
export_model_steps=1000):
""""Creates a Trainer.
Args:
cluster: A tf.train.ClusterSpec if the execution is distributed. None
otherwise.
task: A TaskSpec describing the job type and the task index.
"""
self.cluster = cluster
self.task = task
self.is_master = (task.type == "master" and task.index == 0)
self.train_dir = train_dir
self.config = tf.ConfigProto(allow_soft_placement=True,
log_device_placement=log_device_placement)
self.config.gpu_options.allow_growth = True
self.model = model
self.reader = reader
self.model_exporter = model_exporter
self.max_steps = max_steps
self.max_steps_reached = False
self.export_model_steps = export_model_steps
self.last_model_export_step = 0
# if self.is_master and self.task.index > 0:
# raise StandardError("%s: Only one replica of master expected",
# task_as_string(self.task))
def run(self, start_new_model=False):
"""Performs training on the currently defined Tensorflow graph.
Returns:
A tuple of the training Hit@1 and the training PERR.
"""
if self.is_master and start_new_model:
self.remove_training_directory(self.train_dir)
if not os.path.exists(self.train_dir):
os.makedirs(self.train_dir)
model_flags_dict = {
"model": FLAGS.model,
"feature_sizes": FLAGS.feature_sizes,
"feature_names": FLAGS.feature_names,
"frame_features": FLAGS.frame_features,
"label_loss": FLAGS.label_loss,
}
flags_json_path = os.path.join(FLAGS.train_dir, "model_flags.json")
if file_io.file_exists(flags_json_path):
existing_flags = json.load(file_io.FileIO(flags_json_path, mode="r"))
if existing_flags != model_flags_dict:
logging.error(
"Model flags do not match existing file %s. Please "
"delete the file, change --train_dir, or pass flag "
"--start_new_model", flags_json_path)
logging.error("Ran model with flags: %s", str(model_flags_dict))
logging.error("Previously ran with flags: %s", str(existing_flags))
exit(1)
else:
# Write the file.
with file_io.FileIO(flags_json_path, mode="w") as fout:
fout.write(json.dumps(model_flags_dict))
target, device_fn = self.start_server_if_distributed()
meta_filename = self.get_meta_filename(start_new_model, self.train_dir)
with tf.Graph().as_default() as graph:
if meta_filename:
saver = self.recover_model(meta_filename)
with tf.device(device_fn):
if not meta_filename:
saver = self.build_model(self.model, self.reader)
global_step = tf.get_collection("global_step")[0]
loss = tf.get_collection("loss")[0]
predictions = tf.get_collection("predictions")[0]
labels = tf.get_collection("labels")[0]
train_op = tf.get_collection("train_op")[0]
init_op = tf.global_variables_initializer()
sv = tf.train.Supervisor(graph,
logdir=self.train_dir,
init_op=init_op,
is_chief=self.is_master,
global_step=global_step,
save_model_secs=15 * 60,
save_summaries_secs=120,
saver=saver)
logging.info("%s: Starting managed session.", task_as_string(self.task))
with sv.managed_session(target, config=self.config) as sess:
try:
logging.info("%s: Entering training loop.", task_as_string(self.task))
while (not sv.should_stop()) and (not self.max_steps_reached):
batch_start_time = time.time()
_, global_step_val, loss_val, predictions_val, labels_val = sess.run(
[train_op, global_step, loss, predictions, labels])
seconds_per_batch = time.time() - batch_start_time
examples_per_second = labels_val.shape[0] / seconds_per_batch
if self.max_steps and self.max_steps <= global_step_val:
self.max_steps_reached = True
if self.is_master and global_step_val % 10 == 0 and self.train_dir:
eval_start_time = time.time()
hit_at_one = eval_util.calculate_hit_at_one(predictions_val,
labels_val)
perr = eval_util.calculate_precision_at_equal_recall_rate(
predictions_val, labels_val)
gap = eval_util.calculate_gap(predictions_val, labels_val)
eval_end_time = time.time()
eval_time = eval_end_time - eval_start_time
logging.info("training step " + str(global_step_val) + " | Loss: " +
("%.2f" % loss_val) + " Examples/sec: " +
("%.2f" % examples_per_second) + " | Hit@1: " +
("%.2f" % hit_at_one) + " PERR: " + ("%.2f" % perr) +
" GAP: " + ("%.2f" % gap))
sv.summary_writer.add_summary(
utils.MakeSummary("model/Training_Hit@1", hit_at_one),
global_step_val)
sv.summary_writer.add_summary(
utils.MakeSummary("model/Training_Perr", perr), global_step_val)
sv.summary_writer.add_summary(
utils.MakeSummary("model/Training_GAP", gap), global_step_val)
sv.summary_writer.add_summary(
utils.MakeSummary("global_step/Examples/Second",
examples_per_second), global_step_val)
sv.summary_writer.flush()
# Exporting the model every x steps
time_to_export = ((self.last_model_export_step == 0) or
(global_step_val - self.last_model_export_step >=
self.export_model_steps))
if self.is_master and time_to_export:
self.export_model(global_step_val, sv.saver, sv.save_path, sess)
self.last_model_export_step = global_step_val
else:
logging.info("training step " + str(global_step_val) + " | Loss: " +
("%.2f" % loss_val) + " Examples/sec: " +
("%.2f" % examples_per_second))
except tf.errors.OutOfRangeError:
logging.info("%s: Done training -- epoch limit reached.",
task_as_string(self.task))
logging.info("%s: Exited training loop.", task_as_string(self.task))
sv.Stop()
def export_model(self, global_step_val, saver, save_path, session):
# If the model has already been exported at this step, return.
if global_step_val == self.last_model_export_step:
return
last_checkpoint = saver.save(session, save_path, global_step_val)
model_dir = "{0}/export/step_{1}".format(self.train_dir, global_step_val)
logging.info("%s: Exporting the model at step %s to %s.",
task_as_string(self.task), global_step_val, model_dir)
self.model_exporter.export_model(model_dir=model_dir,
global_step_val=global_step_val,
last_checkpoint=last_checkpoint)
def start_server_if_distributed(self):
"""Starts a server if the execution is distributed."""
if self.cluster:
logging.info("%s: Starting trainer within cluster %s.",
task_as_string(self.task), self.cluster.as_dict())
server = start_server(self.cluster, self.task)
target = server.target
device_fn = tf.train.replica_device_setter(
ps_device="/job:ps",
worker_device="/job:%s/task:%d" % (self.task.type, self.task.index),
cluster=self.cluster)
else:
target = ""
device_fn = ""
return (target, device_fn)
def remove_training_directory(self, train_dir):
"""Removes the training directory."""
try:
logging.info("%s: Removing existing train directory.",
task_as_string(self.task))
gfile.DeleteRecursively(train_dir)
except:
logging.error(
"%s: Failed to delete directory " + train_dir +
" when starting a new model. Please delete it manually and" +
" try again.", task_as_string(self.task))
def get_meta_filename(self, start_new_model, train_dir):
if start_new_model:
logging.info("%s: Flag 'start_new_model' is set. Building a new model.",
task_as_string(self.task))
return None
latest_checkpoint = tf.train.latest_checkpoint(train_dir)
if not latest_checkpoint:
logging.info("%s: No checkpoint file found. Building a new model.",
task_as_string(self.task))
return None
meta_filename = latest_checkpoint + ".meta"
if not gfile.Exists(meta_filename):
logging.info("%s: No meta graph file found. Building a new model.",
task_as_string(self.task))
return None
else:
return meta_filename
def recover_model(self, meta_filename):
logging.info("%s: Restoring from meta graph file %s",
task_as_string(self.task), meta_filename)
return tf.train.import_meta_graph(meta_filename)
def build_model(self, model, reader):
"""Find the model and build the graph."""
label_loss_fn = find_class_by_name(FLAGS.label_loss, [losses])()
optimizer_class = find_class_by_name(FLAGS.optimizer, [tf.train])
build_graph(reader=reader,
model=model,
optimizer_class=optimizer_class,
clip_gradient_norm=FLAGS.clip_gradient_norm,
train_data_pattern=FLAGS.train_data_pattern,
label_loss_fn=label_loss_fn,
base_learning_rate=FLAGS.base_learning_rate,
learning_rate_decay=FLAGS.learning_rate_decay,
learning_rate_decay_examples=FLAGS.learning_rate_decay_examples,
regularization_penalty=FLAGS.regularization_penalty,
num_readers=FLAGS.num_readers,
batch_size=FLAGS.batch_size,
num_epochs=FLAGS.num_epochs)
return tf.train.Saver(max_to_keep=0, keep_checkpoint_every_n_hours=0.25)
def get_reader():
# Convert feature_names and feature_sizes to lists of values.
feature_names, feature_sizes = utils.GetListOfFeatureNamesAndSizes(
FLAGS.feature_names, FLAGS.feature_sizes)
if FLAGS.frame_features:
reader = readers.YT8MFrameFeatureReader(feature_names=feature_names,
feature_sizes=feature_sizes,
segment_labels=FLAGS.segment_labels)
else:
reader = readers.YT8MAggregatedFeatureReader(feature_names=feature_names,
feature_sizes=feature_sizes)
return reader
class ParameterServer(object):
"""A parameter server to serve variables in a distributed execution."""
def __init__(self, cluster, task):
"""Creates a ParameterServer.
Args:
cluster: A tf.train.ClusterSpec if the execution is distributed. None
otherwise.
task: A TaskSpec describing the job type and the task index.
"""
self.cluster = cluster
self.task = task
def run(self):
"""Starts the parameter server."""
logging.info("%s: Starting parameter server within cluster %s.",
task_as_string(self.task), self.cluster.as_dict())
server = start_server(self.cluster, self.task)
server.join()
def start_server(cluster, task):
"""Creates a Server.
Args:
cluster: A tf.train.ClusterSpec if the execution is distributed. None
otherwise.
task: A TaskSpec describing the job type and the task index.
"""
if not task.type:
raise ValueError("%s: The task type must be specified." %
task_as_string(task))
if task.index is None:
raise ValueError("%s: The task index must be specified." %
task_as_string(task))
# Create and start a server.
return tf.train.Server(tf.train.ClusterSpec(cluster),
protocol="grpc",
job_name=task.type,
task_index=task.index)
def task_as_string(task):
return "/job:%s/task:%s" % (task.type, task.index)
def main(unused_argv):
# Load the environment.
env = json.loads(os.environ.get("TF_CONFIG", "{}"))
# Load the cluster data from the environment.
cluster_data = env.get("cluster", None)
cluster = tf.train.ClusterSpec(cluster_data) if cluster_data else None
# Load the task data from the environment.
task_data = env.get("task", None) or {"type": "master", "index": 0}
task = type("TaskSpec", (object,), task_data)
# Logging the version.
logging.set_verbosity(tf.logging.INFO)
logging.info("%s: Tensorflow version: %s.", task_as_string(task),
tf.__version__)
# Dispatch to a master, a worker, or a parameter server.
if not cluster or task.type == "master" or task.type == "worker":
model = find_class_by_name(FLAGS.model,
[frame_level_models, video_level_models])()
reader = get_reader()
model_exporter = export_model.ModelExporter(
frame_features=FLAGS.frame_features, model=model, reader=reader)
Trainer(cluster, task, FLAGS.train_dir, model, reader, model_exporter,
FLAGS.log_device_placement, FLAGS.max_steps,
FLAGS.export_model_steps).run(start_new_model=FLAGS.start_new_model)
elif task.type == "ps":
ParameterServer(cluster, task).run()
else:
raise ValueError("%s: Invalid task_type: %s." %
(task_as_string(task), task.type))
if __name__ == "__main__":
app.run()