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train.py
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train.py
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"""Pretraining on TPUs."""
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import os
from absl import app
from absl import flags
import absl.logging as _logging # pylint: disable=unused-import
import numpy as np
import tensorflow as tf
import model_utils
import tpu_estimator
import function_builder
import data_utils
# TPU parameters
flags.DEFINE_string("master", default=None,
help="master")
flags.DEFINE_string("tpu", default=None,
help="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.")
flags.DEFINE_string("gcp_project", default=None,
help="Project name for the Cloud TPU-enabled project. If not specified, "
"we will attempt to automatically detect the GCE project from metadata.")
flags.DEFINE_string("tpu_zone",default=None,
help="GCE zone where the Cloud TPU is located in. If not specified, we "
"will attempt to automatically detect the GCE project from metadata.")
flags.DEFINE_bool("use_tpu", default=True,
help="Use TPUs rather than plain CPUs.")
flags.DEFINE_integer("num_hosts", default=1,
help="number of TPU hosts")
flags.DEFINE_integer("num_core_per_host", default=8,
help="number of cores per host")
flags.DEFINE_bool("track_mean", default=False,
help="Whether to track mean loss.")
# Experiment (data/checkpoint/directory) config
flags.DEFINE_integer("num_passes", default=1,
help="Number of passed used for training.")
flags.DEFINE_string("record_info_dir", default=None,
help="Path to local directory containing `record_info-lm.json`.")
flags.DEFINE_string("model_dir", default=None,
help="Estimator model_dir.")
flags.DEFINE_string("init_checkpoint", default=None,
help="Checkpoint path for initializing the model.")
# Optimization config
flags.DEFINE_float("learning_rate", default=1e-4,
help="Maximum learning rate.")
flags.DEFINE_float("clip", default=1.0,
help="Gradient clipping value.")
# lr decay
flags.DEFINE_float("min_lr_ratio", default=0.001,
help="Minimum ratio learning rate.")
flags.DEFINE_integer("warmup_steps", default=0,
help="Number of steps for linear lr warmup.")
flags.DEFINE_float("adam_epsilon", default=1e-8,
help="Adam epsilon.")
flags.DEFINE_string("decay_method", default="poly",
help="Poly or cos.")
flags.DEFINE_float("weight_decay", default=0.0,
help="Weight decay rate.")
# Training config
flags.DEFINE_integer("train_batch_size", default=16,
help="Size of the train batch across all hosts.")
flags.DEFINE_integer("train_steps", default=100000,
help="Total number of training steps.")
flags.DEFINE_integer("iterations", default=1000,
help="Number of iterations per repeat loop.")
flags.DEFINE_integer("save_steps", default=None,
help="Number of steps for model checkpointing. "
"None for not saving checkpoints")
flags.DEFINE_integer("max_save", default=100000,
help="Maximum number of checkpoints to save.")
# Data config
flags.DEFINE_integer("seq_len", default=0,
help="Sequence length for pretraining.")
flags.DEFINE_integer("reuse_len", default=0,
help="How many tokens to be reused in the next batch. "
"Could be half of `seq_len`.")
flags.DEFINE_bool("uncased", False,
help="Use uncased inputs or not.")
flags.DEFINE_integer("perm_size", 0,
help="Window size of permutation.")
flags.DEFINE_bool("bi_data", default=True,
help="Use bidirectional data streams, i.e., forward & backward.")
flags.DEFINE_integer("mask_alpha", default=6,
help="How many tokens to form a group.")
flags.DEFINE_integer("mask_beta", default=1,
help="How many tokens to mask within each group.")
flags.DEFINE_integer("num_predict", default=None,
help="Number of tokens to predict in partial prediction.")
flags.DEFINE_integer("n_token", 32000, help="Vocab size")
# Model config
flags.DEFINE_integer("mem_len", default=0,
help="Number of steps to cache")
flags.DEFINE_bool("same_length", default=False,
help="Same length attention")
flags.DEFINE_integer("clamp_len", default=-1,
help="Clamp length")
flags.DEFINE_integer("n_layer", default=6,
help="Number of layers.")
flags.DEFINE_integer("d_model", default=32,
help="Dimension of the model.")
flags.DEFINE_integer("d_embed", default=32,
help="Dimension of the embeddings.")
flags.DEFINE_integer("n_head", default=4,
help="Number of attention heads.")
flags.DEFINE_integer("d_head", default=8,
help="Dimension of each attention head.")
flags.DEFINE_integer("d_inner", default=32,
help="Dimension of inner hidden size in positionwise feed-forward.")
flags.DEFINE_float("dropout", default=0.0,
help="Dropout rate.")
flags.DEFINE_float("dropatt", default=0.0,
help="Attention dropout rate.")
flags.DEFINE_bool("untie_r", default=False,
help="Untie r_w_bias and r_r_bias")
flags.DEFINE_string("summary_type", default="last",
help="Method used to summarize a sequence into a compact vector.")
flags.DEFINE_string("ff_activation", default="relu",
help="Activation type used in position-wise feed-forward.")
flags.DEFINE_bool("use_bfloat16", False,
help="Whether to use bfloat16.")
# Parameter initialization
flags.DEFINE_enum("init", default="normal",
enum_values=["normal", "uniform"],
help="Initialization method.")
flags.DEFINE_float("init_std", default=0.02,
help="Initialization std when init is normal.")
flags.DEFINE_float("init_range", default=0.1,
help="Initialization std when init is uniform.")
FLAGS = flags.FLAGS
def get_model_fn():
"""doc."""
def model_fn(features, labels, mode, params):
"""doc."""
#### Training or Evaluation
is_training = (mode == tf.estimator.ModeKeys.TRAIN)
assert is_training
#### Retrieve `mems` from `params["cache"]`
mems = {}
idx = 0
if FLAGS.mem_len > 0:
mems["mems"] = params["cache"]
#### Get loss from inputs
total_loss, new_mems, monitor_dict = function_builder.get_loss(
FLAGS, features, labels, mems, is_training)
#### Turn `new_mems` into `new_cache`
new_cache = []
if FLAGS.mem_len > 0:
new_cache += new_mems["mems"]
#### Check model parameters
num_params = sum([np.prod(v.shape) for v in tf.trainable_variables()])
tf.logging.info("#params: {}".format(num_params))
#### Configuring the optimizer
train_op, learning_rate, gnorm = model_utils.get_train_op(
FLAGS, total_loss)
monitor_dict["lr"] = learning_rate
monitor_dict["gnorm"] = gnorm
#### Customized initial checkpoint
scaffold_fn = model_utils.init_from_checkpoint(FLAGS, global_vars=True)
#### Creating host calls
host_call = function_builder.construct_scalar_host_call(
monitor_dict=monitor_dict,
model_dir=FLAGS.model_dir,
prefix="train/",
reduce_fn=tf.reduce_mean)
#### Constucting training TPUEstimatorSpec with new cache.
train_spec = tf.contrib.tpu.TPUEstimatorSpec(
mode=mode, loss=total_loss, train_op=train_op, host_call=host_call,
scaffold_fn=scaffold_fn)
train_spec.cache = new_cache
return train_spec
return model_fn
def get_cache_fn(mem_len):
"""doc."""
tf_float = tf.bfloat16 if FLAGS.use_bfloat16 else tf.float32
def cache_fn(batch_size):
mems = []
if FLAGS.mem_len > 0:
for _ in range(FLAGS.n_layer):
zeros = tf.zeros(
[mem_len, batch_size, FLAGS.d_model],
dtype=tf_float)
mems.append(zeros)
return mems
if mem_len > 0:
return cache_fn
else:
return None
def get_input_fn(split):
"""doc."""
assert split == "train"
batch_size = FLAGS.train_batch_size
input_fn, record_info_dict = data_utils.get_input_fn(
tfrecord_dir=FLAGS.record_info_dir,
split=split,
bsz_per_host=batch_size // FLAGS.num_hosts,
seq_len=FLAGS.seq_len,
reuse_len=FLAGS.reuse_len,
bi_data=FLAGS.bi_data,
num_hosts=FLAGS.num_hosts,
num_core_per_host=FLAGS.num_core_per_host,
perm_size=FLAGS.perm_size,
mask_alpha=FLAGS.mask_alpha,
mask_beta=FLAGS.mask_beta,
uncased=FLAGS.uncased,
num_passes=FLAGS.num_passes,
use_bfloat16=FLAGS.use_bfloat16,
num_predict=FLAGS.num_predict)
return input_fn, record_info_dict
def main(unused_argv):
del unused_argv # Unused
tf.logging.set_verbosity(tf.logging.INFO)
assert FLAGS.seq_len > 0
assert FLAGS.perm_size > 0
FLAGS.n_token = data_utils.VOCAB_SIZE
tf.logging.info("n_token {}".format(FLAGS.n_token))
if not tf.gfile.Exists(FLAGS.model_dir):
tf.gfile.MakeDirs(FLAGS.model_dir)
# Get train input function
train_input_fn, train_record_info_dict = get_input_fn("train")
tf.logging.info("num of batches {}".format(
train_record_info_dict["num_batch"]))
# Get train cache function
train_cache_fn = get_cache_fn(FLAGS.mem_len)
##### Get model function
model_fn = get_model_fn()
##### Create TPUEstimator
# TPU Configuration
run_config = model_utils.configure_tpu(FLAGS)
# TPU Estimator
estimator = tpu_estimator.TPUEstimator(
model_fn=model_fn,
train_cache_fn=train_cache_fn,
use_tpu=FLAGS.use_tpu,
config=run_config,
params={"track_mean": FLAGS.track_mean},
train_batch_size=FLAGS.train_batch_size,
eval_on_tpu=FLAGS.use_tpu)
#### Training
estimator.train(input_fn=train_input_fn, max_steps=FLAGS.train_steps)
if __name__ == "__main__":
app.run(main)