DistributedBERT/run_pretraining.py

674 строки
26 KiB
Python

# coding=utf-8
# Copyright 2018 The Google AI Language Team Authors.
#
# 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.
"""Run masked LM/next sentence masked_lm pre-training for BERT."""
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import os
import modeling
import optimization
import tensorflow as tf
import horovod.tensorflow as hvd
from tensorflow.python import debug as tf_debug
flags = tf.flags
FLAGS = flags.FLAGS
## Required parameters
flags.DEFINE_string(
"bert_config_file", None,
"The config json file corresponding to the pre-trained BERT model. "
"This specifies the model architecture.")
flags.DEFINE_string(
"input_file", None,
"Input TF example files (can be a glob or comma separated).")
flags.DEFINE_string(
"validation_input_file", None,
"Input validation TF example files (can be a glob or comma separated).")
flags.DEFINE_string(
"input_dir", None,
"Input TF example dir.")
flags.DEFINE_string(
"validation_input_dir", None,
"Input validation TF example dir.")
flags.DEFINE_string(
"output_dir", None,
"The output directory where the model checkpoints will be written.")
## Other parameters
flags.DEFINE_string(
"init_checkpoint", None,
"Initial checkpoint (usually from a pre-trained BERT model).")
flags.DEFINE_integer(
"max_seq_length", 128,
"The maximum total input sequence length after WordPiece tokenization. "
"Sequences longer than this will be truncated, and sequences shorter "
"than this will be padded. Must match data generation.")
flags.DEFINE_integer(
"max_predictions_per_seq", 20,
"Maximum number of masked LM predictions per sequence. "
"Must match data generation.")
flags.DEFINE_bool("do_train", False, "Whether to run training.")
flags.DEFINE_bool("do_eval", False, "Whether to run eval on the dev set.")
flags.DEFINE_bool("do_train_eval", False, "Whether to run train with eval.")
flags.DEFINE_integer("train_batch_size", 32, "Total batch size for training.")
flags.DEFINE_integer("eval_batch_size", 8, "Total batch size for eval.")
flags.DEFINE_float("learning_rate", 5e-5, "The initial learning rate for Adam.")
flags.DEFINE_integer("num_train_steps", 100000, "Number of training steps.")
flags.DEFINE_integer("num_warmup_steps", 10000, "Number of warmup steps.")
flags.DEFINE_integer("save_checkpoints_steps", 1000,
"How often to save the model checkpoint.")
flags.DEFINE_integer("iterations_per_loop", 1000,
"How many steps to make in each estimator call.")
flags.DEFINE_integer("max_eval_steps", None, "Maximum number of eval steps.")
flags.DEFINE_bool("use_tpu", False, "Whether to use TPU or GPU/CPU.")
tf.flags.DEFINE_string(
"tpu_name", None,
"The Cloud TPU to use for training. This should be either the name "
"used when creating the Cloud TPU, or a grpc://ip.address.of.tpu:8470 "
"url.")
tf.flags.DEFINE_string(
"tpu_zone", None,
"[Optional] GCE zone where the Cloud TPU is located in. If not "
"specified, we will attempt to automatically detect the GCE project from "
"metadata.")
tf.flags.DEFINE_string(
"gcp_project", None,
"[Optional] Project name for the Cloud TPU-enabled project. If not "
"specified, we will attempt to automatically detect the GCE project from "
"metadata.")
tf.flags.DEFINE_string("master", None, "[Optional] TensorFlow master URL.")
flags.DEFINE_integer(
"num_tpu_cores", 8,
"Only used if `use_tpu` is True. Total number of TPU cores to use.")
flags.DEFINE_integer("hooking_frequence", 100, "Hooking frequence.")
flags.DEFINE_bool("reduce_log", False, "Reduce log.")
flags.DEFINE_integer("keep_checkpoint_max", 1, "Keep checkpoint max.")
flags.DEFINE_bool("xla", True, "Whether to train with XLA optimization.")
flags.DEFINE_bool("adjust_lr", True, "Whether to adjust learning_rate.")
flags.DEFINE_integer("previous_train_steps", 0, "Previous train steps.")
flags.DEFINE_integer("post_train_steps", 0, "Post train steps.")
flags.DEFINE_bool("use_hvd", True, "Whether to use Horovod.")
flags.DEFINE_bool("use_compression", True, "Whether to use compression in Horovod.")
flags.DEFINE_bool("use_fp16", True, "Whether to use fp16.")
flags.DEFINE_bool("cos_decay", False, "Whether to use cos decay.")
flags.DEFINE_bool("use_lamb", False, "Whether to use lamb.")
flags.DEFINE_bool("auto_recover", False, "Whether to use auto recover.")
flags.DEFINE_string("recover_dir", None, "The output directory where the model checkpoints will be recovered.")
flags.DEFINE_integer("ckpt_no", None, "Checkpoint number of model to be recovered.")
flags.DEFINE_integer("ckpt_no_input", None, "Checkpoint number of input to be recovered.")
flags.DEFINE_bool("clip", False, "Whether to use clip.")
flags.DEFINE_bool("profile", False, "Whether to use profile.")
def model_fn_builder(bert_config, init_checkpoint, learning_rate,
num_train_steps, num_warmup_steps, use_tpu,
use_one_hot_embeddings, adjust_lr, use_hvd,
use_compression, use_fp16, clip, cos_decay,
use_lamb, previous_train_steps, post_train_steps):
"""Returns `model_fn` closure for TPUEstimator."""
def model_fn(features, labels, mode, params): # pylint: disable=unused-argument
"""The `model_fn` for TPUEstimator."""
tf.logging.info("*** Features ***")
for name in sorted(features.keys()):
tf.logging.info(" name = %s, shape = %s" % (name, features[name].shape))
input_ids = features["input_ids"]
input_mask = features["input_mask"]
segment_ids = features["segment_ids"]
masked_lm_positions = features["masked_lm_positions"]
masked_lm_ids = features["masked_lm_ids"]
masked_lm_weights = features["masked_lm_weights"]
next_sentence_labels = features["next_sentence_labels"]
is_training = (mode == tf.estimator.ModeKeys.TRAIN)
model = modeling.BertModel(
config=bert_config,
is_training=is_training,
input_ids=input_ids,
input_mask=input_mask,
token_type_ids=segment_ids,
use_one_hot_embeddings=use_one_hot_embeddings,
compute_type=tf.float16 if use_fp16 else tf.float32)
(masked_lm_loss,
masked_lm_example_loss, masked_lm_log_probs) = get_masked_lm_output(
bert_config, model.get_sequence_output(), model.get_embedding_table(),
masked_lm_positions, masked_lm_ids, masked_lm_weights, clip)
(next_sentence_loss, next_sentence_example_loss,
next_sentence_log_probs) = get_next_sentence_output(
bert_config, model.get_pooled_output(), next_sentence_labels, clip)
total_loss = masked_lm_loss + next_sentence_loss
tvars = tf.trainable_variables()
initialized_variable_names = {}
scaffold_fn = None
if init_checkpoint:
(assignment_map, initialized_variable_names
) = modeling.get_assignment_map_from_checkpoint(tvars, init_checkpoint)
if use_tpu:
def tpu_scaffold():
tf.train.init_from_checkpoint(init_checkpoint, assignment_map)
return tf.train.Scaffold()
scaffold_fn = tpu_scaffold
else:
tf.train.init_from_checkpoint(init_checkpoint, assignment_map)
tf.logging.info("**** Trainable Variables ****")
for var in tvars:
init_string = ""
if var.name in initialized_variable_names:
init_string = ", *INIT_FROM_CKPT*"
tf.logging.info(" name = %s, shape = %s%s", var.name, var.shape,
init_string)
output_spec = None
if mode == tf.estimator.ModeKeys.TRAIN:
train_op, update_learning_rate = optimization.create_optimizer(
total_loss, learning_rate, num_train_steps, num_warmup_steps, use_tpu, adjust_lr, use_hvd,
use_compression, use_fp16, clip, cos_decay, use_lamb, previous_train_steps, post_train_steps)
logging_hook = tf.train.LoggingTensorHook({"loss": total_loss, "learning_rate": update_learning_rate}, every_n_iter=FLAGS.hooking_frequence)
output_spec = tf.estimator.EstimatorSpec(
mode=mode,
loss=total_loss,
train_op=train_op,
training_hooks=[logging_hook])
elif mode == tf.estimator.ModeKeys.EVAL:
def metric_fn(masked_lm_example_loss, masked_lm_log_probs, masked_lm_ids,
masked_lm_weights, next_sentence_example_loss,
next_sentence_log_probs, next_sentence_labels):
"""Computes the loss and accuracy of the model."""
masked_lm_log_probs = tf.reshape(masked_lm_log_probs,
[-1, masked_lm_log_probs.shape[-1]])
masked_lm_predictions = tf.argmax(
masked_lm_log_probs, axis=-1, output_type=tf.int32)
masked_lm_example_loss = tf.reshape(masked_lm_example_loss, [-1])
masked_lm_ids = tf.reshape(masked_lm_ids, [-1])
masked_lm_weights = tf.reshape(masked_lm_weights, [-1])
masked_lm_accuracy = tf.metrics.accuracy(
labels=masked_lm_ids,
predictions=masked_lm_predictions,
weights=masked_lm_weights)
masked_lm_mean_loss = tf.metrics.mean(
values=masked_lm_example_loss, weights=masked_lm_weights)
next_sentence_log_probs = tf.reshape(
next_sentence_log_probs, [-1, next_sentence_log_probs.shape[-1]])
next_sentence_predictions = tf.argmax(
next_sentence_log_probs, axis=-1, output_type=tf.int32)
next_sentence_labels = tf.reshape(next_sentence_labels, [-1])
next_sentence_accuracy = tf.metrics.accuracy(
labels=next_sentence_labels, predictions=next_sentence_predictions)
next_sentence_mean_loss = tf.metrics.mean(
values=next_sentence_example_loss)
return {
"masked_lm_accuracy": masked_lm_accuracy,
"masked_lm_loss": masked_lm_mean_loss,
"next_sentence_accuracy": next_sentence_accuracy,
"next_sentence_loss": next_sentence_mean_loss,
}
eval_metrics = metric_fn(
masked_lm_example_loss, masked_lm_log_probs, masked_lm_ids,
masked_lm_weights, next_sentence_example_loss,
next_sentence_log_probs, next_sentence_labels
)
output_spec = tf.estimator.EstimatorSpec(
mode=mode,
loss=total_loss,
eval_metric_ops=eval_metrics)
else:
raise ValueError("Only TRAIN and EVAL modes are supported: %s" % (mode))
return output_spec
return model_fn
def get_masked_lm_output(bert_config, input_tensor, output_weights, positions,
label_ids, label_weights, clip):
"""Get loss and log probs for the masked LM."""
input_tensor = gather_indexes(input_tensor, positions)
with tf.variable_scope("cls/predictions"):
# We apply one more non-linear transformation before the output layer.
# This matrix is not used after pre-training.
with tf.variable_scope("transform"):
input_tensor = tf.layers.dense(
input_tensor,
units=bert_config.hidden_size,
activation=modeling.get_activation(bert_config.hidden_act),
kernel_initializer=modeling.create_initializer(
bert_config.initializer_range))
input_tensor = modeling.layer_norm(input_tensor)
# The output weights are the same as the input embeddings, but there is
# an output-only bias for each token.
output_bias = tf.get_variable(
"output_bias",
shape=[bert_config.vocab_size],
initializer=tf.zeros_initializer())
logits = tf.matmul(input_tensor, output_weights, transpose_b=True)
logits = tf.nn.bias_add(logits, output_bias)
if clip:
log_probs = tf.log(tf.clip_by_value(tf.nn.softmax(logits, axis=-1), 1e-6, 1.0 - 1e-6))
else:
log_probs = tf.nn.log_softmax(logits, axis=-1)
label_ids = tf.reshape(label_ids, [-1])
label_weights = tf.reshape(label_weights, [-1])
one_hot_labels = tf.one_hot(
label_ids, depth=bert_config.vocab_size, dtype=tf.float32)
# The `positions` tensor might be zero-padded (if the sequence is too
# short to have the maximum number of predictions). The `label_weights`
# tensor has a value of 1.0 for every real prediction and 0.0 for the
# padding predictions.
per_example_loss = -tf.reduce_sum(log_probs * one_hot_labels, axis=[-1])
numerator = tf.reduce_sum(label_weights * per_example_loss)
denominator = tf.reduce_sum(label_weights) + 1e-5
loss = numerator / denominator
return (loss, per_example_loss, log_probs)
def get_next_sentence_output(bert_config, input_tensor, labels, clip):
"""Get loss and log probs for the next sentence prediction."""
# Simple binary classification. Note that 0 is "next sentence" and 1 is
# "random sentence". This weight matrix is not used after pre-training.
with tf.variable_scope("cls/seq_relationship"):
output_weights = tf.get_variable(
"output_weights",
shape=[2, bert_config.hidden_size],
initializer=modeling.create_initializer(bert_config.initializer_range))
output_bias = tf.get_variable(
"output_bias", shape=[2], initializer=tf.zeros_initializer())
logits = tf.matmul(input_tensor, output_weights, transpose_b=True)
logits = tf.nn.bias_add(logits, output_bias)
if clip:
log_probs = tf.log(tf.clip_by_value(tf.nn.softmax(logits, axis=-1), 1e-6, 1.0 - 1e-6))
else:
log_probs = tf.nn.log_softmax(logits, axis=-1)
labels = tf.reshape(labels, [-1])
one_hot_labels = tf.one_hot(labels, depth=2, dtype=tf.float32)
per_example_loss = -tf.reduce_sum(one_hot_labels * log_probs, axis=-1)
loss = tf.reduce_mean(per_example_loss)
return (loss, per_example_loss, log_probs)
def gather_indexes(sequence_tensor, positions):
"""Gathers the vectors at the specific positions over a minibatch."""
sequence_shape = modeling.get_shape_list(sequence_tensor, expected_rank=3)
batch_size = sequence_shape[0]
seq_length = sequence_shape[1]
width = sequence_shape[2]
flat_offsets = tf.reshape(
tf.range(0, batch_size, dtype=tf.int32) * seq_length, [-1, 1])
flat_positions = tf.reshape(positions + flat_offsets, [-1])
flat_sequence_tensor = tf.reshape(sequence_tensor,
[batch_size * seq_length, width])
output_tensor = tf.gather(flat_sequence_tensor, flat_positions)
return output_tensor
def input_fn_builder(input_files,
max_seq_length,
max_predictions_per_seq,
is_training,
num_cpu_threads=4,
batch_size=None,
use_hvd=True):
"""Creates an `input_fn` closure to be passed to TPUEstimator."""
def input_fn(params):
"""The actual input function."""
# batch_size = params["batch_size"]
name_to_features = {
"input_ids":
tf.FixedLenFeature([max_seq_length], tf.int64),
"input_mask":
tf.FixedLenFeature([max_seq_length], tf.int64),
"segment_ids":
tf.FixedLenFeature([max_seq_length], tf.int64),
"masked_lm_positions":
tf.FixedLenFeature([max_predictions_per_seq], tf.int64),
"masked_lm_ids":
tf.FixedLenFeature([max_predictions_per_seq], tf.int64),
"masked_lm_weights":
tf.FixedLenFeature([max_predictions_per_seq], tf.float32),
"next_sentence_labels":
tf.FixedLenFeature([1], tf.int64),
}
# For training, we want a lot of parallel reading and shuffling.
# For eval, we want no shuffling and parallel reading doesn't matter.
if is_training:
d = tf.data.Dataset.from_tensor_slices(tf.constant(input_files))
if use_hvd:
d = d.shard(hvd.size(), hvd.rank()) #TODO only for Horovod, shard to mimic single_GPU = False
print("Data shard: %s %s" % (hvd.size(), hvd.rank()))
d = d.repeat()
d = d.shuffle(buffer_size=len(input_files))
# `cycle_length` is the number of parallel files that get read.
cycle_length = min(num_cpu_threads, len(input_files))
# `sloppy` mode means that the interleaving is not exact. This adds
# even more randomness to the training pipeline.
d = d.apply(
tf.contrib.data.parallel_interleave(
tf.data.TFRecordDataset,
sloppy=is_training,
cycle_length=cycle_length))
d = d.shuffle(buffer_size=100)
else:
d = tf.data.TFRecordDataset(input_files)
# Since we evaluate for a fixed number of steps we don't want to encounter
# out-of-range exceptions.
# d = d.repeat()
# We must `drop_remainder` on training because the TPU requires fixed
# size dimensions. For eval, we assume we are evaluating on the CPU or GPU
# and we *don't* want to drop the remainder, otherwise we wont cover
# every sample.
d = d.apply(
tf.contrib.data.map_and_batch(
lambda record: _decode_record(record, name_to_features),
batch_size=batch_size,
num_parallel_batches=num_cpu_threads,
drop_remainder=True))
return d
return input_fn
def _decode_record(record, name_to_features):
"""Decodes a record to a TensorFlow example."""
example = tf.parse_single_example(record, name_to_features)
# tf.Example only supports tf.int64, but the TPU only supports tf.int32.
# So cast all int64 to int32.
for name in list(example.keys()):
t = example[name]
if t.dtype == tf.int64:
t = tf.to_int32(t)
example[name] = t
return example
def main(_):
tf.logging.set_verbosity(tf.logging.INFO)
if FLAGS.use_hvd:
hvd.init()
if FLAGS.reduce_log and (hvd.rank() != 0):
tf.logging.set_verbosity(tf.logging.ERROR)
FLAGS.output_dir = FLAGS.output_dir if hvd.rank() == 0 else os.path.join(FLAGS.output_dir, str(hvd.rank()))
if not FLAGS.do_train and not FLAGS.do_eval and not FLAGS.do_train_eval:
raise ValueError("At least one of `do_train` or `do_eval` must be True.")
bert_config = modeling.BertConfig.from_json_file(FLAGS.bert_config_file)
tf.gfile.MakeDirs(FLAGS.output_dir)
if FLAGS.recover_dir is not None:
if FLAGS.use_hvd:
FLAGS.recover_dir = FLAGS.recover_dir if hvd.rank() == 0 else os.path.join(FLAGS.recover_dir, str(hvd.rank()))
path_ckpt = os.path.join(FLAGS.output_dir, "checkpoint")
path_ckpt_input = os.path.join(FLAGS.output_dir, "checkpoint_input")
if FLAGS.ckpt_no is not None and not tf.gfile.Exists(path_ckpt):
with tf.gfile.GFile(path_ckpt, "w") as writer:
writer.write('model_checkpoint_path: "%s-%s"\n' % (os.path.join(FLAGS.recover_dir, "model.ckpt"), str(FLAGS.ckpt_no)))
writer.write('all_model_checkpoint_paths: "%s-%s"\n' % (os.path.join(FLAGS.recover_dir, "model.ckpt"), str(FLAGS.ckpt_no)))
if FLAGS.ckpt_no_input is not None and not tf.gfile.Exists(path_ckpt_input):
with tf.gfile.GFile(path_ckpt_input, "w") as writer:
writer.write('model_checkpoint_path: "%s-%s"\n' % (os.path.join(FLAGS.recover_dir, "input.ckpt"), str(FLAGS.ckpt_no_input)))
writer.write('all_model_checkpoint_paths: "%s-%s"\n' % (os.path.join(FLAGS.recover_dir, "input.ckpt"), str(FLAGS.ckpt_no_input)))
if FLAGS.use_hvd and hvd.rank() == 0 and (FLAGS.do_train or FLAGS.do_train_eval):
(cpath, cname) = os.path.split(FLAGS.bert_config_file)
tf.gfile.Copy(FLAGS.bert_config_file, os.path.join(FLAGS.output_dir, cname), True)
input_files = []
if FLAGS.input_file is not None:
for input_pattern in FLAGS.input_file.split(","):
input_files.extend(tf.gfile.Glob(input_pattern))
if FLAGS.input_dir is not None:
for filename in tf.gfile.ListDirectory(FLAGS.input_dir):
input_files.extend(tf.gfile.Glob(os.path.join(FLAGS.input_dir, filename)))
tf.logging.info("*** Input Files ***")
for input_file in input_files:
tf.logging.info(" %s" % input_file)
validation_input_files = []
if FLAGS.validation_input_file is None and FLAGS.validation_input_dir is None:
validation_input_files = input_files
else:
if FLAGS.validation_input_file is not None:
for input_pattern in FLAGS.validation_input_file.split(","):
validation_input_files.extend(tf.gfile.Glob(input_pattern))
if FLAGS.validation_input_dir is not None:
for filename in tf.gfile.ListDirectory(FLAGS.validation_input_dir):
validation_input_files.extend(tf.gfile.Glob(os.path.join(FLAGS.validation_input_dir, filename)))
tf.logging.info("*** Input Validation Files ***")
for input_file in validation_input_files:
tf.logging.info(" %s" % input_file)
config = tf.ConfigProto()
if FLAGS.xla:
config.graph_options.optimizer_options.global_jit_level = tf.OptimizerOptions.ON_1
if FLAGS.use_hvd:
config.gpu_options.visible_device_list = str(hvd.local_rank())
config.gpu_options.allow_growth=True
run_config = tf.estimator.RunConfig(
model_dir=FLAGS.output_dir,
keep_checkpoint_max=FLAGS.keep_checkpoint_max,
save_checkpoints_steps=FLAGS.save_checkpoints_steps,
log_step_count_steps=FLAGS.hooking_frequence,
session_config=config)
if FLAGS.use_hvd and hvd.rank() != 0 and not FLAGS.auto_recover:
run_config = tf.estimator.RunConfig(
model_dir=FLAGS.output_dir,
keep_checkpoint_max=FLAGS.keep_checkpoint_max,
save_checkpoints_steps=None,
save_checkpoints_secs=None,
log_step_count_steps=FLAGS.hooking_frequence,
session_config=config)
model_fn = model_fn_builder(
bert_config=bert_config,
init_checkpoint=FLAGS.init_checkpoint,
learning_rate=FLAGS.learning_rate,
num_train_steps=FLAGS.num_train_steps,
num_warmup_steps=FLAGS.num_warmup_steps,
use_tpu=FLAGS.use_tpu,
use_one_hot_embeddings=FLAGS.use_tpu,
adjust_lr=FLAGS.adjust_lr,
use_hvd=FLAGS.use_hvd,
use_compression=FLAGS.use_compression,
use_fp16=FLAGS.use_fp16,
clip=FLAGS.clip,
cos_decay=FLAGS.cos_decay,
use_lamb=FLAGS.use_lamb,
previous_train_steps=FLAGS.previous_train_steps,
post_train_steps=FLAGS.post_train_steps)
hooks = []
if FLAGS.use_hvd:
hooks.append(hvd.BroadcastGlobalVariablesHook(0))
if hvd.rank() == -1: #if debug, set 0
CLIDebugHook = tf_debug.LocalCLIDebugHook(ui_type='readline')
CLIDebugHook.add_tensor_filter("has_inf_or_nan", tf_debug.has_inf_or_nan)
hooks.append(CLIDebugHook)
if FLAGS.profile and hvd.rank() == 0:
ProfilerHook = tf.train.ProfilerHook(save_steps=FLAGS.hooking_frequence, output_dir=FLAGS.output_dir, show_dataflow=True, show_memory=True)
hooks.append(ProfilerHook)
# If TPU is not available, this will fall back to normal Estimator on CPU
# or GPU.
estimator = tf.estimator.Estimator(
model_fn=model_fn,
config=run_config)
if FLAGS.do_train:
tf.logging.info("***** Running training *****")
tf.logging.info(" Batch size = %d", FLAGS.train_batch_size)
train_input_fn = input_fn_builder(
input_files=input_files,
max_seq_length=FLAGS.max_seq_length,
max_predictions_per_seq=FLAGS.max_predictions_per_seq,
is_training=True,
batch_size=FLAGS.train_batch_size,
use_hvd=FLAGS.use_hvd)
if FLAGS.auto_recover:
hooks.append(tf.data.experimental.CheckpointInputPipelineHook(estimator))
estimator.train(input_fn=train_input_fn, max_steps=FLAGS.num_train_steps, hooks=hooks)
if FLAGS.do_eval:
tf.logging.info("***** Running evaluation *****")
tf.logging.info(" Batch size = %d", FLAGS.eval_batch_size)
eval_input_fn = input_fn_builder(
input_files=validation_input_files,
max_seq_length=FLAGS.max_seq_length,
max_predictions_per_seq=FLAGS.max_predictions_per_seq,
is_training=False,
batch_size=FLAGS.eval_batch_size,
use_hvd=FLAGS.use_hvd)
result = estimator.evaluate(
input_fn=eval_input_fn, steps=FLAGS.max_eval_steps)
output_eval_file = os.path.join(FLAGS.output_dir, "eval_results.txt")
with tf.gfile.GFile(output_eval_file, "w") as writer:
tf.logging.info("***** Eval results *****")
for key in sorted(result.keys()):
tf.logging.info(" %s = %s", key, str(result[key]))
writer.write("%s = %s\n" % (key, str(result[key])))
if FLAGS.do_train_eval:
tf.logging.info("***** Running training *****")
tf.logging.info(" Batch size = %d", FLAGS.train_batch_size)
train_input_fn = input_fn_builder(
input_files=input_files,
max_seq_length=FLAGS.max_seq_length,
max_predictions_per_seq=FLAGS.max_predictions_per_seq,
is_training=True,
batch_size=FLAGS.train_batch_size,
use_hvd=FLAGS.use_hvd)
tf.logging.info("***** Running evaluation *****")
tf.logging.info(" Batch size = %d", FLAGS.eval_batch_size)
eval_input_fn = input_fn_builder(
input_files=validation_input_files,
max_seq_length=FLAGS.max_seq_length,
max_predictions_per_seq=FLAGS.max_predictions_per_seq,
is_training=False,
batch_size=FLAGS.eval_batch_size,
use_hvd=FLAGS.use_hvd)
if FLAGS.auto_recover:
hooks.append(tf.data.experimental.CheckpointInputPipelineHook(estimator))
train_spec = tf.estimator.TrainSpec(input_fn=train_input_fn, max_steps=FLAGS.num_train_steps, hooks=hooks)
eval_spec = tf.estimator.EvalSpec(input_fn=eval_input_fn, steps=FLAGS.max_eval_steps)
tf.estimator.train_and_evaluate(estimator, train_spec, eval_spec)
if __name__ == "__main__":
# flags.mark_flag_as_required("input_file")
flags.mark_flag_as_required("bert_config_file")
flags.mark_flag_as_required("output_dir")
tf.app.run()