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run_pretraining.py
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run_pretraining.py
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# coding=utf-8
# Copyright 2020 The Google Research 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.
"""Pre-trains an ELECTRA model."""
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import argparse
import collections
import json
import tensorflow.compat.v1 as tf
import configure_pretraining
from model import modeling
from model import optimization
from pretrain import pretrain_data
from pretrain import pretrain_helpers
from util import training_utils
from util import utils
class PretrainingModel(object):
"""Transformer pre-training using the replaced-token-detection task."""
def __init__(self, config: configure_pretraining.PretrainingConfig,
features, is_training):
# Set up model config
self._config = config
self._bert_config = training_utils.get_bert_config(config)
if config.debug:
self._bert_config.num_hidden_layers = 3
self._bert_config.hidden_size = 144
self._bert_config.intermediate_size = 144 * 4
self._bert_config.num_attention_heads = 4
# Mask the input
masked_inputs = pretrain_helpers.mask(
config, pretrain_data.features_to_inputs(features), config.mask_prob)
# Generator
embedding_size = (
self._bert_config.hidden_size if config.embedding_size is None else
config.embedding_size)
if config.uniform_generator:
mlm_output = self._get_masked_lm_output(masked_inputs, None)
elif config.electra_objective and config.untied_generator:
generator = self._build_transformer(
masked_inputs, is_training,
bert_config=get_generator_config(config, self._bert_config),
embedding_size=(None if config.untied_generator_embeddings
else embedding_size),
untied_embeddings=config.untied_generator_embeddings,
name="generator")
mlm_output = self._get_masked_lm_output(masked_inputs, generator)
else:
generator = self._build_transformer(
masked_inputs, is_training, embedding_size=embedding_size)
mlm_output = self._get_masked_lm_output(masked_inputs, generator)
fake_data = self._get_fake_data(masked_inputs, mlm_output.logits)
self.mlm_output = mlm_output
self.total_loss = config.gen_weight * mlm_output.loss
# Discriminator
disc_output = None
if config.electra_objective:
discriminator = self._build_transformer(
fake_data.inputs, is_training, reuse=not config.untied_generator,
embedding_size=embedding_size)
disc_output = self._get_discriminator_output(
fake_data.inputs, discriminator, fake_data.is_fake_tokens)
self.total_loss += config.disc_weight * disc_output.loss
# Evaluation
eval_fn_inputs = {
"input_ids": masked_inputs.input_ids,
"masked_lm_preds": mlm_output.preds,
"mlm_loss": mlm_output.per_example_loss,
"masked_lm_ids": masked_inputs.masked_lm_ids,
"masked_lm_weights": masked_inputs.masked_lm_weights,
"input_mask": masked_inputs.input_mask
}
if config.electra_objective:
eval_fn_inputs.update({
"disc_loss": disc_output.per_example_loss,
"disc_labels": disc_output.labels,
"disc_probs": disc_output.probs,
"disc_preds": disc_output.preds,
"sampled_tokids": tf.argmax(fake_data.sampled_tokens, -1,
output_type=tf.int32)
})
eval_fn_keys = eval_fn_inputs.keys()
eval_fn_values = [eval_fn_inputs[k] for k in eval_fn_keys]
def metric_fn(*args):
"""Computes the loss and accuracy of the model."""
d = {k: arg for k, arg in zip(eval_fn_keys, args)}
metrics = dict()
metrics["masked_lm_accuracy"] = tf.metrics.accuracy(
labels=tf.reshape(d["masked_lm_ids"], [-1]),
predictions=tf.reshape(d["masked_lm_preds"], [-1]),
weights=tf.reshape(d["masked_lm_weights"], [-1]))
metrics["masked_lm_loss"] = tf.metrics.mean(
values=tf.reshape(d["mlm_loss"], [-1]),
weights=tf.reshape(d["masked_lm_weights"], [-1]))
if config.electra_objective:
metrics["sampled_masked_lm_accuracy"] = tf.metrics.accuracy(
labels=tf.reshape(d["masked_lm_ids"], [-1]),
predictions=tf.reshape(d["sampled_tokids"], [-1]),
weights=tf.reshape(d["masked_lm_weights"], [-1]))
if config.disc_weight > 0:
metrics["disc_loss"] = tf.metrics.mean(d["disc_loss"])
metrics["disc_auc"] = tf.metrics.auc(
d["disc_labels"] * d["input_mask"],
d["disc_probs"] * tf.cast(d["input_mask"], tf.float32))
metrics["disc_accuracy"] = tf.metrics.accuracy(
labels=d["disc_labels"], predictions=d["disc_preds"],
weights=d["input_mask"])
metrics["disc_precision"] = tf.metrics.accuracy(
labels=d["disc_labels"], predictions=d["disc_preds"],
weights=d["disc_preds"] * d["input_mask"])
metrics["disc_recall"] = tf.metrics.accuracy(
labels=d["disc_labels"], predictions=d["disc_preds"],
weights=d["disc_labels"] * d["input_mask"])
return metrics
self.eval_metrics = (metric_fn, eval_fn_values)
def _get_masked_lm_output(self, inputs: pretrain_data.Inputs, model):
"""Masked language modeling softmax layer."""
masked_lm_weights = inputs.masked_lm_weights
with tf.variable_scope("generator_predictions"):
if self._config.uniform_generator:
logits = tf.zeros(self._bert_config.vocab_size)
logits_tiled = tf.zeros(
modeling.get_shape_list(inputs.masked_lm_ids) +
[self._bert_config.vocab_size])
logits_tiled += tf.reshape(logits, [1, 1, self._bert_config.vocab_size])
logits = logits_tiled
else:
relevant_hidden = pretrain_helpers.gather_positions(
model.get_sequence_output(), inputs.masked_lm_positions)
hidden = tf.layers.dense(
relevant_hidden,
units=modeling.get_shape_list(model.get_embedding_table())[-1],
activation=modeling.get_activation(self._bert_config.hidden_act),
kernel_initializer=modeling.create_initializer(
self._bert_config.initializer_range))
hidden = modeling.layer_norm(hidden)
output_bias = tf.get_variable(
"output_bias",
shape=[self._bert_config.vocab_size],
initializer=tf.zeros_initializer())
logits = tf.matmul(hidden, model.get_embedding_table(),
transpose_b=True)
logits = tf.nn.bias_add(logits, output_bias)
oh_labels = tf.one_hot(
inputs.masked_lm_ids, depth=self._bert_config.vocab_size,
dtype=tf.float32)
probs = tf.nn.softmax(logits)
log_probs = tf.nn.log_softmax(logits)
label_log_probs = -tf.reduce_sum(log_probs * oh_labels, axis=-1)
numerator = tf.reduce_sum(inputs.masked_lm_weights * label_log_probs)
denominator = tf.reduce_sum(masked_lm_weights) + 1e-6
loss = numerator / denominator
preds = tf.argmax(log_probs, axis=-1, output_type=tf.int32)
MLMOutput = collections.namedtuple(
"MLMOutput", ["logits", "probs", "loss", "per_example_loss", "preds"])
return MLMOutput(
logits=logits, probs=probs, per_example_loss=label_log_probs,
loss=loss, preds=preds)
def _get_discriminator_output(self, inputs, discriminator, labels):
"""Discriminator binary classifier."""
with tf.variable_scope("discriminator_predictions"):
hidden = tf.layers.dense(
discriminator.get_sequence_output(),
units=self._bert_config.hidden_size,
activation=modeling.get_activation(self._bert_config.hidden_act),
kernel_initializer=modeling.create_initializer(
self._bert_config.initializer_range))
logits = tf.squeeze(tf.layers.dense(hidden, units=1), -1)
weights = tf.cast(inputs.input_mask, tf.float32)
labelsf = tf.cast(labels, tf.float32)
losses = tf.nn.sigmoid_cross_entropy_with_logits(
logits=logits, labels=labelsf) * weights
per_example_loss = (tf.reduce_sum(losses, axis=-1) /
(1e-6 + tf.reduce_sum(weights, axis=-1)))
loss = tf.reduce_sum(losses) / (1e-6 + tf.reduce_sum(weights))
probs = tf.nn.sigmoid(logits)
preds = tf.cast(tf.round((tf.sign(logits) + 1) / 2), tf.int32)
DiscOutput = collections.namedtuple(
"DiscOutput", ["loss", "per_example_loss", "probs", "preds",
"labels"])
return DiscOutput(
loss=loss, per_example_loss=per_example_loss, probs=probs,
preds=preds, labels=labels,
)
def _get_fake_data(self, inputs, mlm_logits):
"""Sample from the generator to create corrupted input."""
inputs = pretrain_helpers.unmask(inputs)
disallow = tf.one_hot(
inputs.masked_lm_ids, depth=self._bert_config.vocab_size,
dtype=tf.float32) if self._config.disallow_correct else None
sampled_tokens = tf.stop_gradient(pretrain_helpers.sample_from_softmax(
mlm_logits / self._config.temperature, disallow=disallow))
sampled_tokids = tf.argmax(sampled_tokens, -1, output_type=tf.int32)
updated_input_ids, masked = pretrain_helpers.scatter_update(
inputs.input_ids, sampled_tokids, inputs.masked_lm_positions)
labels = masked * (1 - tf.cast(
tf.equal(updated_input_ids, inputs.input_ids), tf.int32))
updated_inputs = pretrain_data.get_updated_inputs(
inputs, input_ids=updated_input_ids)
FakedData = collections.namedtuple("FakedData", [
"inputs", "is_fake_tokens", "sampled_tokens"])
return FakedData(inputs=updated_inputs, is_fake_tokens=labels,
sampled_tokens=sampled_tokens)
def _build_transformer(self, inputs: pretrain_data.Inputs, is_training,
bert_config=None, name="electra", reuse=False, **kwargs):
"""Build a transformer encoder network."""
if bert_config is None:
bert_config = self._bert_config
with tf.variable_scope(tf.get_variable_scope(), reuse=reuse):
return modeling.BertModel(
bert_config=bert_config,
is_training=is_training,
input_ids=inputs.input_ids,
input_mask=inputs.input_mask,
token_type_ids=inputs.segment_ids,
use_one_hot_embeddings=self._config.use_tpu,
scope=name,
**kwargs)
def get_generator_config(config: configure_pretraining.PretrainingConfig,
bert_config: modeling.BertConfig):
"""Get model config for the generator network."""
gen_config = modeling.BertConfig.from_dict(bert_config.to_dict())
gen_config.hidden_size = int(round(
bert_config.hidden_size * config.generator_hidden_size))
gen_config.num_hidden_layers = int(round(
bert_config.num_hidden_layers * config.generator_layers))
gen_config.intermediate_size = 4 * gen_config.hidden_size
gen_config.num_attention_heads = max(1, gen_config.hidden_size // 64)
return gen_config
def model_fn_builder(config: configure_pretraining.PretrainingConfig):
"""Build the model for training."""
def model_fn(features, labels, mode, params):
"""Build the model for training."""
model = PretrainingModel(config, features,
mode == tf.estimator.ModeKeys.TRAIN)
utils.log("Model is built!")
if mode == tf.estimator.ModeKeys.TRAIN:
train_op = optimization.create_optimizer(
model.total_loss, config.learning_rate, config.num_train_steps,
weight_decay_rate=config.weight_decay_rate,
use_tpu=config.use_tpu,
warmup_steps=config.num_warmup_steps,
lr_decay_power=config.lr_decay_power
)
output_spec = tf.estimator.tpu.TPUEstimatorSpec(
mode=mode,
loss=model.total_loss,
train_op=train_op,
training_hooks=[training_utils.ETAHook(
{} if config.use_tpu else dict(loss=model.total_loss),
config.num_train_steps, config.iterations_per_loop,
config.use_tpu)]
)
elif mode == tf.estimator.ModeKeys.EVAL:
output_spec = tf.estimator.tpu.TPUEstimatorSpec(
mode=mode,
loss=model.total_loss,
eval_metrics=model.eval_metrics,
evaluation_hooks=[training_utils.ETAHook(
{} if config.use_tpu else dict(loss=model.total_loss),
config.num_eval_steps, config.iterations_per_loop,
config.use_tpu, is_training=False)])
else:
raise ValueError("Only TRAIN and EVAL modes are supported")
return output_spec
return model_fn
def train_or_eval(config: configure_pretraining.PretrainingConfig):
"""Run pre-training or evaluate the pre-trained model."""
if config.do_train == config.do_eval:
raise ValueError("Exactly one of `do_train` or `do_eval` must be True.")
if config.debug:
utils.rmkdir(config.model_dir)
utils.heading("Config:")
utils.log_config(config)
is_per_host = tf.estimator.tpu.InputPipelineConfig.PER_HOST_V2
tpu_cluster_resolver = None
if config.use_tpu and config.tpu_name:
tpu_cluster_resolver = tf.distribute.cluster_resolver.TPUClusterResolver(
config.tpu_name, zone=config.tpu_zone, project=config.gcp_project)
tpu_config = tf.estimator.tpu.TPUConfig(
iterations_per_loop=config.iterations_per_loop,
num_shards=(config.num_tpu_cores if config.do_train else
config.num_tpu_cores),
tpu_job_name=config.tpu_job_name,
per_host_input_for_training=is_per_host)
run_config = tf.estimator.tpu.RunConfig(
cluster=tpu_cluster_resolver,
model_dir=config.model_dir,
save_checkpoints_steps=config.save_checkpoints_steps,
tpu_config=tpu_config)
model_fn = model_fn_builder(config=config)
estimator = tf.estimator.tpu.TPUEstimator(
use_tpu=config.use_tpu,
model_fn=model_fn,
config=run_config,
train_batch_size=config.train_batch_size,
eval_batch_size=config.eval_batch_size)
if config.do_train:
utils.heading("Running training")
estimator.train(input_fn=pretrain_data.get_input_fn(config, True),
max_steps=config.num_train_steps)
if config.do_eval:
utils.heading("Running evaluation")
result = estimator.evaluate(
input_fn=pretrain_data.get_input_fn(config, False),
steps=config.num_eval_steps)
for key in sorted(result.keys()):
utils.log(" {:} = {:}".format(key, str(result[key])))
return result
def train_one_step(config: configure_pretraining.PretrainingConfig):
"""Builds an ELECTRA model an trains it for one step; useful for debugging."""
train_input_fn = pretrain_data.get_input_fn(config, True)
features = tf.data.make_one_shot_iterator(train_input_fn(dict(
batch_size=config.train_batch_size))).get_next()
model = PretrainingModel(config, features, True)
with tf.Session() as sess:
sess.run(tf.global_variables_initializer())
utils.log(sess.run(model.total_loss))
def main():
parser = argparse.ArgumentParser(description=__doc__)
parser.add_argument("--data-dir", required=True,
help="Location of data files (model weights, etc).")
parser.add_argument("--model-name", required=True,
help="The name of the model being fine-tuned.")
parser.add_argument("--hparams", default="{}",
help="JSON dict of model hyperparameters.")
args = parser.parse_args()
if args.hparams.endswith(".json"):
hparams = utils.load_json(args.hparams)
else:
hparams = json.loads(args.hparams)
tf.logging.set_verbosity(tf.logging.ERROR)
train_or_eval(configure_pretraining.PretrainingConfig(
args.model_name, args.data_dir, **hparams))
if __name__ == "__main__":
main()