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function_builder.py
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function_builder.py
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"""doc."""
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import functools
import os
import tensorflow as tf
import modeling
import xlnet
def construct_scalar_host_call(
monitor_dict,
model_dir,
prefix="",
reduce_fn=None):
"""
Construct host calls to monitor training progress on TPUs.
"""
metric_names = list(monitor_dict.keys())
def host_call_fn(global_step, *args):
"""actual host call function."""
step = global_step[0]
with tf.contrib.summary.create_file_writer(
logdir=model_dir, filename_suffix=".host_call").as_default():
with tf.contrib.summary.always_record_summaries():
for i, name in enumerate(metric_names):
if reduce_fn is None:
scalar = args[i][0]
else:
scalar = reduce_fn(args[i])
with tf.contrib.summary.record_summaries_every_n_global_steps(
100, global_step=step):
tf.contrib.summary.scalar(prefix + name, scalar, step=step)
return tf.contrib.summary.all_summary_ops()
global_step_tensor = tf.reshape(tf.train.get_or_create_global_step(), [1])
other_tensors = [tf.reshape(monitor_dict[key], [1]) for key in metric_names]
return host_call_fn, [global_step_tensor] + other_tensors
def two_stream_loss(FLAGS, features, labels, mems, is_training):
"""Pretraining loss with two-stream attention Transformer-XL."""
#### Unpack input
mem_name = "mems"
mems = mems.get(mem_name, None)
inp_k = tf.transpose(features["input_k"], [1, 0])
inp_q = tf.transpose(features["input_q"], [1, 0])
seg_id = tf.transpose(features["seg_id"], [1, 0])
inp_mask = None
perm_mask = tf.transpose(features["perm_mask"], [1, 2, 0])
if FLAGS.num_predict is not None:
# [num_predict x tgt_len x bsz]
target_mapping = tf.transpose(features["target_mapping"], [1, 2, 0])
else:
target_mapping = None
# target for LM loss
tgt = tf.transpose(features["target"], [1, 0])
# target mask for LM loss
tgt_mask = tf.transpose(features["target_mask"], [1, 0])
# construct xlnet config and save to model_dir
xlnet_config = xlnet.XLNetConfig(FLAGS=FLAGS)
xlnet_config.to_json(os.path.join(FLAGS.model_dir, "config.json"))
# construct run config from FLAGS
run_config = xlnet.create_run_config(is_training, False, FLAGS)
xlnet_model = xlnet.XLNetModel(
xlnet_config=xlnet_config,
run_config=run_config,
input_ids=inp_k,
seg_ids=seg_id,
input_mask=inp_mask,
mems=mems,
perm_mask=perm_mask,
target_mapping=target_mapping,
inp_q=inp_q)
output = xlnet_model.get_sequence_output()
new_mems = {mem_name: xlnet_model.get_new_memory()}
lookup_table = xlnet_model.get_embedding_table()
initializer = xlnet_model.get_initializer()
with tf.variable_scope("model", reuse=tf.AUTO_REUSE):
# LM loss
lm_loss = modeling.lm_loss(
hidden=output,
target=tgt,
n_token=xlnet_config.n_token,
d_model=xlnet_config.d_model,
initializer=initializer,
lookup_table=lookup_table,
tie_weight=True,
bi_data=run_config.bi_data,
use_tpu=run_config.use_tpu)
#### Quantity to monitor
monitor_dict = {}
if FLAGS.use_bfloat16:
tgt_mask = tf.cast(tgt_mask, tf.float32)
lm_loss = tf.cast(lm_loss, tf.float32)
total_loss = tf.reduce_sum(lm_loss * tgt_mask) / tf.reduce_sum(tgt_mask)
monitor_dict["total_loss"] = total_loss
return total_loss, new_mems, monitor_dict
def get_loss(FLAGS, features, labels, mems, is_training):
"""Pretraining loss with two-stream attention Transformer-XL."""
if FLAGS.use_bfloat16:
with tf.tpu.bfloat16_scope():
return two_stream_loss(FLAGS, features, labels, mems, is_training)
else:
return two_stream_loss(FLAGS, features, labels, mems, is_training)
def get_classification_loss(
FLAGS, features, n_class, is_training):
"""Loss for downstream classification tasks."""
bsz_per_core = tf.shape(features["input_ids"])[0]
inp = tf.transpose(features["input_ids"], [1, 0])
seg_id = tf.transpose(features["segment_ids"], [1, 0])
inp_mask = tf.transpose(features["input_mask"], [1, 0])
label = tf.reshape(features["label_ids"], [bsz_per_core])
xlnet_config = xlnet.XLNetConfig(json_path=FLAGS.model_config_path)
run_config = xlnet.create_run_config(is_training, True, FLAGS)
xlnet_model = xlnet.XLNetModel(
xlnet_config=xlnet_config,
run_config=run_config,
input_ids=inp,
seg_ids=seg_id,
input_mask=inp_mask)
summary = xlnet_model.get_pooled_out(FLAGS.summary_type, FLAGS.use_summ_proj)
with tf.variable_scope("model", reuse=tf.AUTO_REUSE):
if FLAGS.cls_scope is not None and FLAGS.cls_scope:
cls_scope = "classification_{}".format(FLAGS.cls_scope)
else:
cls_scope = "classification_{}".format(FLAGS.task_name.lower())
per_example_loss, logits = modeling.classification_loss(
hidden=summary,
labels=label,
n_class=n_class,
initializer=xlnet_model.get_initializer(),
scope=cls_scope,
return_logits=True)
total_loss = tf.reduce_mean(per_example_loss)
return total_loss, per_example_loss, logits
def get_regression_loss(
FLAGS, features, is_training):
"""Loss for downstream regression tasks."""
bsz_per_core = tf.shape(features["input_ids"])[0]
inp = tf.transpose(features["input_ids"], [1, 0])
seg_id = tf.transpose(features["segment_ids"], [1, 0])
inp_mask = tf.transpose(features["input_mask"], [1, 0])
label = tf.reshape(features["label_ids"], [bsz_per_core])
xlnet_config = xlnet.XLNetConfig(json_path=FLAGS.model_config_path)
run_config = xlnet.create_run_config(is_training, True, FLAGS)
xlnet_model = xlnet.XLNetModel(
xlnet_config=xlnet_config,
run_config=run_config,
input_ids=inp,
seg_ids=seg_id,
input_mask=inp_mask)
summary = xlnet_model.get_pooled_out(FLAGS.summary_type, FLAGS.use_summ_proj)
with tf.variable_scope("model", reuse=tf.AUTO_REUSE):
per_example_loss, logits = modeling.regression_loss(
hidden=summary,
labels=label,
initializer=xlnet_model.get_initializer(),
scope="regression_{}".format(FLAGS.task_name.lower()),
return_logits=True)
total_loss = tf.reduce_mean(per_example_loss)
return total_loss, per_example_loss, logits
def get_qa_outputs(FLAGS, features, is_training):
"""Loss for downstream span-extraction QA tasks such as SQuAD."""
inp = tf.transpose(features["input_ids"], [1, 0])
seg_id = tf.transpose(features["segment_ids"], [1, 0])
inp_mask = tf.transpose(features["input_mask"], [1, 0])
cls_index = tf.reshape(features["cls_index"], [-1])
seq_len = tf.shape(inp)[0]
xlnet_config = xlnet.XLNetConfig(json_path=FLAGS.model_config_path)
run_config = xlnet.create_run_config(is_training, True, FLAGS)
xlnet_model = xlnet.XLNetModel(
xlnet_config=xlnet_config,
run_config=run_config,
input_ids=inp,
seg_ids=seg_id,
input_mask=inp_mask)
output = xlnet_model.get_sequence_output()
initializer = xlnet_model.get_initializer()
return_dict = {}
# invalid position mask such as query and special symbols (PAD, SEP, CLS)
p_mask = features["p_mask"]
# logit of the start position
with tf.variable_scope("start_logits"):
start_logits = tf.layers.dense(
output,
1,
kernel_initializer=initializer)
start_logits = tf.transpose(tf.squeeze(start_logits, -1), [1, 0])
start_logits_masked = start_logits * (1 - p_mask) - 1e30 * p_mask
start_log_probs = tf.nn.log_softmax(start_logits_masked, -1)
# logit of the end position
with tf.variable_scope("end_logits"):
if is_training:
# during training, compute the end logits based on the
# ground truth of the start position
start_positions = tf.reshape(features["start_positions"], [-1])
start_index = tf.one_hot(start_positions, depth=seq_len, axis=-1,
dtype=tf.float32)
start_features = tf.einsum("lbh,bl->bh", output, start_index)
start_features = tf.tile(start_features[None], [seq_len, 1, 1])
end_logits = tf.layers.dense(
tf.concat([output, start_features], axis=-1), xlnet_config.d_model,
kernel_initializer=initializer, activation=tf.tanh, name="dense_0")
end_logits = tf.contrib.layers.layer_norm(
end_logits, begin_norm_axis=-1)
end_logits = tf.layers.dense(
end_logits, 1,
kernel_initializer=initializer,
name="dense_1")
end_logits = tf.transpose(tf.squeeze(end_logits, -1), [1, 0])
end_logits_masked = end_logits * (1 - p_mask) - 1e30 * p_mask
end_log_probs = tf.nn.log_softmax(end_logits_masked, -1)
else:
# during inference, compute the end logits based on beam search
start_top_log_probs, start_top_index = tf.nn.top_k(
start_log_probs, k=FLAGS.start_n_top)
start_index = tf.one_hot(start_top_index,
depth=seq_len, axis=-1, dtype=tf.float32)
start_features = tf.einsum("lbh,bkl->bkh", output, start_index)
end_input = tf.tile(output[:, :, None],
[1, 1, FLAGS.start_n_top, 1])
start_features = tf.tile(start_features[None],
[seq_len, 1, 1, 1])
end_input = tf.concat([end_input, start_features], axis=-1)
end_logits = tf.layers.dense(
end_input,
xlnet_config.d_model,
kernel_initializer=initializer,
activation=tf.tanh,
name="dense_0")
end_logits = tf.contrib.layers.layer_norm(end_logits,
begin_norm_axis=-1)
end_logits = tf.layers.dense(
end_logits,
1,
kernel_initializer=initializer,
name="dense_1")
end_logits = tf.reshape(end_logits, [seq_len, -1, FLAGS.start_n_top])
end_logits = tf.transpose(end_logits, [1, 2, 0])
end_logits_masked = end_logits * (
1 - p_mask[:, None]) - 1e30 * p_mask[:, None]
end_log_probs = tf.nn.log_softmax(end_logits_masked, -1)
end_top_log_probs, end_top_index = tf.nn.top_k(
end_log_probs, k=FLAGS.end_n_top)
end_top_log_probs = tf.reshape(
end_top_log_probs,
[-1, FLAGS.start_n_top * FLAGS.end_n_top])
end_top_index = tf.reshape(
end_top_index,
[-1, FLAGS.start_n_top * FLAGS.end_n_top])
if is_training:
return_dict["start_log_probs"] = start_log_probs
return_dict["end_log_probs"] = end_log_probs
else:
return_dict["start_top_log_probs"] = start_top_log_probs
return_dict["start_top_index"] = start_top_index
return_dict["end_top_log_probs"] = end_top_log_probs
return_dict["end_top_index"] = end_top_index
# an additional layer to predict answerability
with tf.variable_scope("answer_class"):
# get the representation of CLS
cls_index = tf.one_hot(cls_index, seq_len, axis=-1, dtype=tf.float32)
cls_feature = tf.einsum("lbh,bl->bh", output, cls_index)
# get the representation of START
start_p = tf.nn.softmax(start_logits_masked, axis=-1,
name="softmax_start")
start_feature = tf.einsum("lbh,bl->bh", output, start_p)
# note(zhiliny): no dependency on end_feature so that we can obtain
# one single `cls_logits` for each sample
ans_feature = tf.concat([start_feature, cls_feature], -1)
ans_feature = tf.layers.dense(
ans_feature,
xlnet_config.d_model,
activation=tf.tanh,
kernel_initializer=initializer, name="dense_0")
ans_feature = tf.layers.dropout(ans_feature, FLAGS.dropout,
training=is_training)
cls_logits = tf.layers.dense(
ans_feature,
1,
kernel_initializer=initializer,
name="dense_1",
use_bias=False)
cls_logits = tf.squeeze(cls_logits, -1)
return_dict["cls_logits"] = cls_logits
return return_dict
def get_race_loss(FLAGS, features, is_training):
"""Loss for downstream multi-choice QA tasks such as RACE."""
bsz_per_core = tf.shape(features["input_ids"])[0]
def _transform_features(feature):
out = tf.reshape(feature, [bsz_per_core, 4, -1])
out = tf.transpose(out, [2, 0, 1])
out = tf.reshape(out, [-1, bsz_per_core * 4])
return out
inp = _transform_features(features["input_ids"])
seg_id = _transform_features(features["segment_ids"])
inp_mask = _transform_features(features["input_mask"])
label = tf.reshape(features["label_ids"], [bsz_per_core])
xlnet_config = xlnet.XLNetConfig(json_path=FLAGS.model_config_path)
run_config = xlnet.create_run_config(is_training, True, FLAGS)
xlnet_model = xlnet.XLNetModel(
xlnet_config=xlnet_config,
run_config=run_config,
input_ids=inp,
seg_ids=seg_id,
input_mask=inp_mask)
summary = xlnet_model.get_pooled_out(FLAGS.summary_type, FLAGS.use_summ_proj)
with tf.variable_scope("logits"):
logits = tf.layers.dense(summary, 1,
kernel_initializer=xlnet_model.get_initializer())
logits = tf.reshape(logits, [bsz_per_core, 4])
one_hot_target = tf.one_hot(label, 4)
per_example_loss = -tf.reduce_sum(
tf.nn.log_softmax(logits) * one_hot_target, -1)
total_loss = tf.reduce_mean(per_example_loss)
return total_loss, per_example_loss, logits