controller.py 22.6 KB
Newer Older
A
A. Unique TensorFlower 已提交
1
# Copyright 2022 The Orbit Authors. All Rights Reserved.
A
A. Unique TensorFlower 已提交
2 3 4 5 6 7 8 9 10 11 12 13
#
# 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.
H
Hongkun Yu 已提交
14

D
Dan Holtmann-Rice 已提交
15
"""Provides a `Controller` class for managing the outer training loop."""
A
A. Unique TensorFlower 已提交
16

D
Dan Holtmann-Rice 已提交
17
import pprint
A
A. Unique TensorFlower 已提交
18
import time
D
Dan Holtmann-Rice 已提交
19

J
Jiayu Ye 已提交
20
from typing import Any, Callable, Iterable, Optional, Union
D
Dan Holtmann-Rice 已提交
21

A
A. Unique TensorFlower 已提交
22
from absl import logging
D
Dan Holtmann-Rice 已提交
23

A
A. Unique TensorFlower 已提交
24 25 26 27 28 29
from orbit import runner
from orbit import utils

import tensorflow as tf


D
Dan Holtmann-Rice 已提交
30
def _log(message: str):
A
A. Unique TensorFlower 已提交
31 32 33 34 35
  """Logs `message` to the `info` log, and also prints to stdout."""
  logging.info(message)
  print(message)


D
Dan Holtmann-Rice 已提交
36 37 38 39 40 41 42 43 44 45 46 47 48
logging.ABSLLogger.register_frame_to_skip(__file__, _log.__name__)


def _format_output(output, indent=4):
  """Formats `output`, either on one line, or indented across multiple lines."""
  formatted = pprint.pformat(output)
  lines = formatted.splitlines()
  if len(lines) == 1:
    return formatted
  lines = [" " * indent + line for line in lines]
  return "\n" + "\n".join(lines)


D
Dan Holtmann-Rice 已提交
49 50 51
Action = Callable[[runner.Output], None]


H
Hongkun Yu 已提交
52
class Controller:
D
Dan Holtmann-Rice 已提交
53 54 55 56 57 58
  """Class that controls the outer loop of model training and evaluation.

  Orbit divides training and evaluation into "inner" and "outer" loops. Inner
  loops are implemented by users in the form of `AbstractTrainer` and
  `AbstractEvaluator` subclasses, and define how to run a given number of
  training or evaluation steps. The outer loop is provided by this `Controller`,
D
Dan Holtmann-Rice 已提交
59 60 61
  and interleaves calls to the user-provided inner loops with additional actions
  such as saving checkpoints, running evaluations, writing summaries, as well as
  (optionally) user provided `Action`s (see below).
D
Dan Holtmann-Rice 已提交
62 63 64 65 66 67 68 69 70 71 72 73 74

  There are four top-level "outer loops" provided:

    - `train`, which trains until a specified number of global steps is reached;
    - `evaluate`, for one-off model evaluation;
    - `train_and_evaluate`, for interleaved training and evaluation;
    - `evaluate_continuously`, for monitoring a given directory and running
      evaluations on new model checkpoints.

  While this class attempts to provide out-of-the-box solutions for common
  training and evaluation use cases, the internal details and method
  implementations are also intended to be simple enough to make subclassing or
  other custom outer loop implementations easy to achieve.
D
Dan Holtmann-Rice 已提交
75 76

  Some additional customization can be achieved by supplying `train_actions` or
R
Ron Shapiro 已提交
77 78 79 80 81 82 83
  `eval_actions` when constructing the `Controller`. Actions arbitrary callables
  that are applied by the `Controller` to the output of train steps (after each
  inner loop of `steps_per_loop` steps) or an evaluation. This provides a hook
  mechanism, enabling things like reporting metrics to Vizier, model exporting,
  additional logging, etc. See the `orbit.actions` package for a small handful
  of predefined actions and some utility classes that may be useful in defining
  your own.
D
Dan Holtmann-Rice 已提交
84
  """
A
A. Unique TensorFlower 已提交
85 86 87

  def __init__(
      self,
88 89
      *,  # Makes all args keyword only.
      global_step: tf.Variable,
A
A. Unique TensorFlower 已提交
90 91
      trainer: Optional[runner.AbstractTrainer] = None,
      evaluator: Optional[runner.AbstractEvaluator] = None,
92
      strategy: Optional[tf.distribute.Strategy] = None,
D
Dan Holtmann-Rice 已提交
93
      # Actions
R
Ron Shapiro 已提交
94 95
      train_actions: Optional[Iterable[Action]] = None,
      eval_actions: Optional[Iterable[Action]] = None,
A
A. Unique TensorFlower 已提交
96
      # Train related
97
      steps_per_loop: Optional[Union[int, Callable[[int], int]]] = None,
A
A. Unique TensorFlower 已提交
98 99 100
      checkpoint_manager: Optional[tf.train.CheckpointManager] = None,
      # Summary related
      summary_interval: Optional[int] = None,
D
Dan Holtmann-Rice 已提交
101
      summary_dir: Optional[str] = None,
A
A. Unique TensorFlower 已提交
102
      # Evaluation related
D
Dan Holtmann-Rice 已提交
103
      eval_summary_dir: Optional[str] = None,
J
Jiayu Ye 已提交
104 105
      summary_manager: Optional[Any] = None,
      eval_summary_manager: Optional[Any] = None):
D
Dan Holtmann-Rice 已提交
106 107 108 109 110
    """Initializes a `Controller` instance.

    Note that if `checkpoint_manager` is provided and there are checkpoints in
    the associated model directory, the model will be restored from the most
    recent checkpoint during this `__init__` method.
A
A. Unique TensorFlower 已提交
111 112

    Args:
D
Dan Holtmann-Rice 已提交
113 114 115 116 117 118 119 120 121
      global_step: An integer `tf.Variable` storing the global training step
        number. Usually this can be obtained from the `iterations` property of
        the model's optimizer (e.g. `trainer.optimizer.iterations`). In cases
        where multiple optimizers are used, or if one model "step" corresponds
        to more than one update to model parameters, users can create and
        increment their own global step variable as well. In this case it is
        recommended to create the `tf.Variable` inside the distribution strategy
        scope, with `aggregation=tf.VariableAggregation.ONLY_FIRST_REPLICA` (see
        also `orbit.utils.create_global_step()`).
122 123 124 125 126 127 128
      trainer: An instance of `orbit.AbstractTrainer`, which implements the
        inner training loop.
      evaluator: An instance of `orbit.AbstractEvaluator`, which implements
        evaluation.
      strategy: An instance of `tf.distribute.Strategy`. If not provided, the
        strategy will be initialized from the current in-scope strategy using
        `tf.distribute.get_strategy()`.
R
Ron Shapiro 已提交
129 130 131 132 133
      train_actions: Optional `orbit.Action`s to call after each block of
        `steps_per_loop` training steps are run. These will be called with the
        output of `trainer.train`.
      eval_actions: Optional `orbit.Action`s to call after each evaluation.
        These will be called with the output of `evaluator.evaluate`.
134 135 136 137 138
      steps_per_loop: Optional integer to indicate the number of steps to run in
        each inner loop of training (passed as the `num_steps` parameter of
        `trainer.train`). It can be also a callable which takes the current
        global step value as input and returns the number of steps to run as
        output.
D
Dan Holtmann-Rice 已提交
139 140 141 142 143
      checkpoint_manager: An instance of `tf.train.CheckpointManager`. If
        provided and there are checkpoints in the associated model directory,
        the model will be restored from the most recent checkpoint inside this
        `__init__` method. If not provided, the `Controller` will not
        automatically save to or restore from checkpoints.
A
A. Unique TensorFlower 已提交
144
      summary_interval: Step interval for training summaries. Note that this
D
Dan Holtmann-Rice 已提交
145 146 147 148 149 150 151 152 153 154 155
        argument only applies to `tf.summary` calls inside the `trainer.train`
        function. Summaries written by the `Controller` (specifically
        "steps_per_second" and output from the `trainer.train` method) will
        always be enabled unless the `summary_dir` parameter is `None`. If set,
        the value must be divisible by `steps_per_loop`.
      summary_dir: The directory to write summaries to. To use the same
        directory as for checkpointing, pass `checkpoint_manager.directory`. If
        `None`, no training summaries will be written.
      eval_summary_dir: The directory to write eval summaries to. If `None`, it
        will be set to `summary_dir`. If both `summary_dir` and
        `eval_summary_dir` are `None`, no eval summaries will be written.
J
Jiayu Ye 已提交
156 157 158 159 160 161 162 163
      summary_manager: Instance of the summary manager. If set, the
        `summary_dir` will be ignored. Otherwise the summary manager will be
        created internally for TensorBoard summaries by default from the
        `summary_dir`.
      eval_summary_manager: Instance of the eval summary manager. If set, the
        `eval_summary_dir` will be ignored. Otherwise the eval summary manager
        will be created internally for TensorBoard summaries by default from the
        `eval_summary_dir`.
A
A. Unique TensorFlower 已提交
164 165

    Raises:
D
Dan Holtmann-Rice 已提交
166
      ValueError: If both `trainer` and `evaluator` are `None`.
167
      ValueError: If `steps_per_loop` is not a positive integer or a callable.
D
Dan Holtmann-Rice 已提交
168 169
      ValueError: If `summary_interval` is not a positive integer or is not
        divisible by `steps_per_loop`.
A
A. Unique TensorFlower 已提交
170 171
    """
    if trainer is None and evaluator is None:
D
Dan Holtmann-Rice 已提交
172
      raise ValueError("`trainer` and `evaluator` should not both be `None`.")
D
Dan Holtmann-Rice 已提交
173

A
A. Unique TensorFlower 已提交
174 175
    if trainer is not None:
      if steps_per_loop is None:
D
Dan Holtmann-Rice 已提交
176 177
        raise ValueError(
            "`steps_per_loop` is required when `trainer` is provided.")
178 179
      elif not callable(steps_per_loop) and (
          not isinstance(steps_per_loop, int) or steps_per_loop < 1):
D
Dan Holtmann-Rice 已提交
180
        raise ValueError(
181 182
            f"`steps_per_loop` ({steps_per_loop}) must be a positive integer "
            "or a callable.")
A
A. Unique TensorFlower 已提交
183 184 185

      if summary_interval is not None:
        if summary_interval <= 0:
D
Dan Holtmann-Rice 已提交
186 187
          raise ValueError(
              f"`summary_interval` ({summary_interval}) must be larger than 0.")
188 189
        elif not callable(steps_per_loop) and (summary_interval % steps_per_loop
                                               != 0):
D
Dan Holtmann-Rice 已提交
190 191 192 193
          raise ValueError(
              f"`summary interval` ({summary_interval}) must be a multiple "
              f"of `steps_per_loop` ({steps_per_loop}).")

194
    if not isinstance(global_step, tf.Variable):
D
Dan Holtmann-Rice 已提交
195
      raise ValueError("`global_step` must be a `tf.Variable`.")
A
A. Unique TensorFlower 已提交
196 197 198 199 200 201

    self.trainer = trainer
    self.evaluator = evaluator

    self.strategy = strategy or tf.distribute.get_strategy()

R
Ron Shapiro 已提交
202 203
    self.train_actions = () if train_actions is None else tuple(train_actions)
    self.eval_actions = () if eval_actions is None else tuple(eval_actions)
D
Dan Holtmann-Rice 已提交
204

A
A. Unique TensorFlower 已提交
205 206 207 208 209 210
    self.global_step = global_step
    self.checkpoint_manager = checkpoint_manager

    if self.trainer is not None:
      self.step_timer = None
      self.summary_interval = summary_interval
J
Jiayu Ye 已提交
211 212 213 214 215
      if summary_manager:
        self.summary_manager = summary_manager
      else:
        self.summary_manager = utils.SummaryManager(
            summary_dir, tf.summary.scalar, global_step=self.global_step)
216
      self._steps_per_loop = steps_per_loop
A
A. Unique TensorFlower 已提交
217 218 219 220 221 222 223 224

    if self.evaluator is not None:
      eval_summary_dir = eval_summary_dir or summary_dir
      if eval_summary_dir == summary_dir and self.trainer is not None:
        # Reuse the summary writer if train and evaluation summary directory
        # are the same.
        self.eval_summary_manager = self.summary_manager
      else:
J
Jiayu Ye 已提交
225 226 227 228 229
        if eval_summary_manager:
          self.eval_summary_manager = eval_summary_manager
        else:
          self.eval_summary_manager = utils.SummaryManager(
              eval_summary_dir, tf.summary.scalar, global_step=self.global_step)
A
A. Unique TensorFlower 已提交
230

231
    tf.summary.experimental.set_step(self.global_step)
A
A. Unique TensorFlower 已提交
232 233 234

    # Restores the model if needed.
    if self.checkpoint_manager is not None:
235 236
      restored_path = self.restore_checkpoint()
      if restored_path:
D
Dan Holtmann-Rice 已提交
237
        _log(f"restored from checkpoint: {restored_path}")
A
A. Unique TensorFlower 已提交
238 239

  def train(self, steps: int, checkpoint_at_completion: bool = True):
D
Dan Holtmann-Rice 已提交
240
    """Runs training until the specified global step count has been reached.
A
A. Unique TensorFlower 已提交
241

D
Dan Holtmann-Rice 已提交
242 243 244 245
    This method makes calls to `self.trainer.train()` until the global step
    count is equal to `steps`. It will additionally save checkpoints (if a
    `CheckpointManager` was passed to `Controller.__init__`) and summarize
    training output (if `summary_dir` is set).
A
A. Unique TensorFlower 已提交
246 247 248 249

    Args:
      steps: The global step count to train up to.
      checkpoint_at_completion: Whether to save a checkpoint when this method
D
Dan Holtmann-Rice 已提交
250
        returns (regardless of the checkpointing interval). Defaults to `True`.
A
A. Unique TensorFlower 已提交
251
    """
D
Dan Holtmann-Rice 已提交
252
    self._require("trainer", for_method="train")
A
A. Unique TensorFlower 已提交
253 254

    # TODO(momernick): Support steps=None or -1 (training to exhaustion).
D
Dan Holtmann-Rice 已提交
255 256
    current_step = self.global_step.numpy()  # Cache, since this is expensive.
    _log(f"train | step: {current_step: 6d} | training until step {steps}...")
A
A. Unique TensorFlower 已提交
257 258 259 260 261
    while current_step < steps:
      # Calculates steps to run for the next train loop.
      num_steps = min(steps - current_step, self.steps_per_loop)
      self._train_n_steps(num_steps)
      self._maybe_save_checkpoint()
D
Dan Holtmann-Rice 已提交
262
      current_step = self.global_step.numpy()
A
A. Unique TensorFlower 已提交
263 264

    if checkpoint_at_completion:
D
Dan Holtmann-Rice 已提交
265
      self._maybe_save_checkpoint(check_interval=False)
A
A. Unique TensorFlower 已提交
266

D
Dan Holtmann-Rice 已提交
267 268
  def evaluate(self, steps: int = -1) -> Optional[runner.Output]:
    """Runs evaluation for the given number of steps.
A
A. Unique TensorFlower 已提交
269

D
Dan Holtmann-Rice 已提交
270 271
    This method calls `self.evaluator.evaluate(steps)`, then writes the returned
    summaries (if any).
A
A. Unique TensorFlower 已提交
272 273

    Args:
D
Dan Holtmann-Rice 已提交
274 275 276 277
      steps: The number of evaluation steps to run. The value `-1` is reserved
        as a special sentinel to indicate a "complete" evaluation that runs
        until the underlying dataset is exhausted. Support for this is dependent
        on the specific `evaluator` being used.
A
A. Unique TensorFlower 已提交
278

S
Simon Kornblith 已提交
279
    Returns:
D
Dan Holtmann-Rice 已提交
280
      The evaluation results as a dictionary mapping names to NumPy values.
S
Simon Kornblith 已提交
281

A
A. Unique TensorFlower 已提交
282
    Raises:
D
Dan Holtmann-Rice 已提交
283 284 285
      ValueError: If `evaluator` was not provided to `Controller.__init__`.
      ValueError: If no checkpoint is present in `checkpoint_manager.directory`.
      ValueError: If `steps` is not a positive value or -1.
A
A. Unique TensorFlower 已提交
286
    """
D
Dan Holtmann-Rice 已提交
287
    self._require("evaluator", for_method="evaluate")
A
A. Unique TensorFlower 已提交
288 289

    if steps > 0:
D
Dan Holtmann-Rice 已提交
290 291 292
      steps_msg = f"running {steps} steps of evaluation..."
    elif steps == -1:
      steps_msg = "running complete evaluation..."
A
A. Unique TensorFlower 已提交
293
    else:
D
Dan Holtmann-Rice 已提交
294
      raise ValueError(f"`steps` ({steps}) should be > 0, or == -1.")
A
A. Unique TensorFlower 已提交
295

D
Dan Holtmann-Rice 已提交
296 297
    current_step = self.global_step.numpy()
    _log(f" eval | step: {current_step: 6d} | {steps_msg}")
A
A. Unique TensorFlower 已提交
298

D
Dan Holtmann-Rice 已提交
299 300 301 302 303
    start = time.time()
    with self.eval_summary_manager.summary_writer().as_default():
      steps_tensor = tf.convert_to_tensor(steps, dtype=tf.int32)
      eval_output = self.evaluator.evaluate(steps_tensor)
    elapsed = time.time() - start
A
A. Unique TensorFlower 已提交
304

D
Dan Holtmann-Rice 已提交
305 306 307 308 309
    eval_output = eval_output or {}
    for action in self.eval_actions:
      action(eval_output)
    eval_output = tf.nest.map_structure(utils.get_value, eval_output)

D
Dan Holtmann-Rice 已提交
310
    _log(f" eval | step: {current_step: 6d} | "
311
         f"eval time: {elapsed: 6.1f} sec | "
D
Dan Holtmann-Rice 已提交
312
         f"output: {_format_output(eval_output)}")
A
A. Unique TensorFlower 已提交
313

D
Dan Holtmann-Rice 已提交
314
    self.eval_summary_manager.write_summaries(eval_output)
A
A. Unique TensorFlower 已提交
315 316
    self.eval_summary_manager.flush()

D
Dan Holtmann-Rice 已提交
317
    return eval_output
A
A. Unique TensorFlower 已提交
318 319

  def train_and_evaluate(self,
A
A. Unique TensorFlower 已提交
320
                         train_steps: int,
321
                         eval_steps: int = -1,
A
A. Unique TensorFlower 已提交
322
                         eval_interval: Optional[int] = None) -> None:
D
Dan Holtmann-Rice 已提交
323
    """Runs interleaved training and evaluation.
A
A. Unique TensorFlower 已提交
324

D
Dan Holtmann-Rice 已提交
325 326 327 328 329
    This method interleaves calls to `self.train()` and `self.evaluate()`,
    training the model until the global step count equals `train_steps`, and
    running an evaluation for `eval_steps` every `eval_interval` training steps.
    In addition, this method will run a final evaluation at the end of the
    training sequence.
A
A. Unique TensorFlower 已提交
330 331 332

    Args:
      train_steps: The global step count to train up to.
333
      eval_steps: The number of steps to run during an evaluation. If -1, this
D
Dan Holtmann-Rice 已提交
334 335 336 337
        method will evaluate over the entire evaluation dataset.
      eval_interval: The number of training steps to run between evaluations. If
        set, training will always stop every `eval_interval` steps, even if this
        results in a shorter inner loop than specified by `steps_per_loop`
R
Ruoxin Sang 已提交
338 339
        setting. If None, evaluation will only be performed after training is
        complete.
A
A. Unique TensorFlower 已提交
340
    """
D
Dan Holtmann-Rice 已提交
341 342 343 344
    self._require("trainer", for_method="train_and_evaluate")
    self._require("evaluator", for_method="train_and_evaluate")

    current_step = self.global_step.numpy()  # Cache, since this is expensive.
A
A. Unique TensorFlower 已提交
345 346 347 348 349 350
    eval_interval = eval_interval or (train_steps - current_step)
    while current_step < train_steps:
      interval = min(train_steps - current_step, eval_interval)
      num_steps = current_step + interval
      self.train(steps=num_steps, checkpoint_at_completion=False)
      self.evaluate(steps=eval_steps)
D
Dan Holtmann-Rice 已提交
351 352
      current_step = self.global_step.numpy()
    self._maybe_save_checkpoint(check_interval=False)
A
A. Unique TensorFlower 已提交
353 354

  def evaluate_continuously(self,
355
                            steps: int = -1,
A
A. Unique TensorFlower 已提交
356 357
                            timeout: Optional[Union[int, float]] = None,
                            timeout_fn: Optional[Callable[[], bool]] = None):
D
Dan Holtmann-Rice 已提交
358
    """Continuously monitors a directory and evaluates new checkpoints in it.
A
A. Unique TensorFlower 已提交
359 360 361 362 363 364

    This method continuously monitors a directory as specified by this
    Controller's CheckpointManager init arg and runs evaluation on the
    checkpoints found there.

    Args:
365 366
      steps: The number of steps to run when evaluating. If -1, this method will
        evaluate over the entire evaluation dataset.
A
A. Unique TensorFlower 已提交
367 368 369 370 371 372 373 374 375 376
      timeout: The maximum number of seconds to wait between checkpoints. See
        tf.train.checkpoints_iterator documentation.
      timeout_fn: Optional callable to call after a timeout. If the function
        returns True, then it means that no new checkpoints will be generated
        and the iterator will exit.

    Raises:
      ValueError: If no checkpoint found in `self.checkpoint_manager.directory`.
      ValueError: If `evaluator` was not provided as a controller init arg.
    """
D
Dan Holtmann-Rice 已提交
377 378 379
    self._require("evaluator", for_method="evaluate_continuously")
    self._require("checkpoint_manager", for_method="evaluate_continuously")

A
A. Unique TensorFlower 已提交
380 381 382 383 384 385 386
    for checkpoint_path in tf.train.checkpoints_iterator(
        self.checkpoint_manager.directory,
        timeout=timeout,
        timeout_fn=timeout_fn):
      self.restore_checkpoint(checkpoint_path)
      self.evaluate(steps)

R
Rebecca Chen 已提交
387
  def restore_checkpoint(self, checkpoint_path: Optional[str] = None):
D
Dan Holtmann-Rice 已提交
388 389 390 391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425 426 427 428 429 430
    """Restores the model from a checkpoint.

    Args:
      checkpoint_path: An optional string specifying the checkpoint path to
        restore from. If `None`, will restore from the most recent checkpoint
        (or initialize the model using a custom `init_fn` if no checkpoints can
        be found) using `self.checkpoint_manager.restore_or_initialize()`.

    Returns:
      The path to the restored checkpoint if a restore happened, or `None` if no
      restore occurred.
    """
    self._require("checkpoint_manager", for_method="restore_checkpoint")

    with self.strategy.scope():
      # Checkpoint restoring should be inside scope (b/139450638).
      if checkpoint_path is not None:
        _log(f"restoring model from {checkpoint_path}...")
        self.checkpoint_manager.checkpoint.restore(checkpoint_path)
      else:
        _log("restoring or initializing model...")
        checkpoint_path = self.checkpoint_manager.restore_or_initialize()

    if checkpoint_path is not None:
      _log(f"restored model from {checkpoint_path}.")
    else:
      _log("initialized model.")

    return checkpoint_path

  def save_checkpoint(self):
    """Saves the model to a checkpoint.

    This method will save a checkpoint containing the current state of the
    model.

    Raises:
      ValueError: If no `checkpoint_manager` was provided to
        `Controller.__init__`.
    """
    self._require("checkpoint_manager", for_method="save_checkpoint")
    self._maybe_save_checkpoint(check_interval=False)

431 432 433 434 435 436 437
  @property
  def steps_per_loop(self):
    """Returns current steps_per_loop value in a training loop."""
    if callable(self._steps_per_loop):
      return self._steps_per_loop(self.global_step.numpy())
    return self._steps_per_loop

A
A. Unique TensorFlower 已提交
438
  def _train_n_steps(self, num_steps: int):
D
Dan Holtmann-Rice 已提交
439
    """Runs training for `num_steps` steps.
A
A. Unique TensorFlower 已提交
440

D
Dan Holtmann-Rice 已提交
441 442 443
    Also prints/logs updates about training progress, and summarizes training
    output (if output is returned from `self.trainer.train()`, and if
    `self.summary_dir` is set).
A
A. Unique TensorFlower 已提交
444 445

    Args:
D
Dan Holtmann-Rice 已提交
446
      num_steps: An integer specifying how many steps of training to run.
A
A. Unique TensorFlower 已提交
447 448

    Raises:
D
Dan Holtmann-Rice 已提交
449 450
      RuntimeError: If `global_step` is not properly incremented by `num_steps`
        after calling `self.trainer.train(num_steps)`.
A
A. Unique TensorFlower 已提交
451 452 453 454 455
    """
    if not self.step_timer:
      self.step_timer = StepTimer(self.global_step)
    current_step = self.global_step.numpy()

R
Ruoxin Sang 已提交
456
    with self.summary_manager.summary_writer().as_default():
A
A. Unique TensorFlower 已提交
457 458
      should_record = False  # Allows static optimization in no-summary cases.
      if self.summary_interval:
D
Dan Holtmann-Rice 已提交
459
        # Create a predicate to determine when summaries should be written.
A
A. Unique TensorFlower 已提交
460 461
        should_record = lambda: (self.global_step % self.summary_interval == 0)
      with tf.summary.record_if(should_record):
D
Dan Holtmann-Rice 已提交
462 463 464 465 466 467
        num_steps_tensor = tf.convert_to_tensor(num_steps, dtype=tf.int32)
        train_output = self.trainer.train(num_steps_tensor)

    # Verify that global_step was updated properly, then update current_step.
    expected_step = current_step + num_steps
    if self.global_step.numpy() != expected_step:
468
      message = (
D
Dan Holtmann-Rice 已提交
469 470 471
          f"`trainer.train({num_steps})` did not update `global_step` by "
          f"{num_steps}. Old value was {current_step}, expected updated value "
          f"to be {expected_step}, but it was {self.global_step.numpy()}.")
472
      logging.warning(message)
A
A. Unique TensorFlower 已提交
473

D
Dan Holtmann-Rice 已提交
474 475 476 477 478
    train_output = train_output or {}
    for action in self.train_actions:
      action(train_output)
    train_output = tf.nest.map_structure(utils.get_value, train_output)

479
    current_step = self.global_step.numpy()
A
A. Unique TensorFlower 已提交
480
    steps_per_second = self.step_timer.steps_per_second()
D
Dan Holtmann-Rice 已提交
481 482 483 484 485 486 487
    _log(f"train | step: {current_step: 6d} | "
         f"steps/sec: {steps_per_second: 6.1f} | "
         f"output: {_format_output(train_output)}")

    train_output["steps_per_second"] = steps_per_second
    self.summary_manager.write_summaries(train_output)
    self.summary_manager.flush()
A
A. Unique TensorFlower 已提交
488

D
Dan Holtmann-Rice 已提交
489 490
  def _maybe_save_checkpoint(self, check_interval: bool = True):
    """Conditionally saves a checkpoint.
A
A. Unique TensorFlower 已提交
491

D
Dan Holtmann-Rice 已提交
492 493 494
    A checkpoint is saved if a `CheckpointManager` is available, and if the
    required number of steps has elapsed since the last checkpoint was saved
    (although this condition can be disabled by setting `check_interval=False`).
A
A. Unique TensorFlower 已提交
495 496

    Args:
D
Dan Holtmann-Rice 已提交
497 498 499 500
      check_interval: Whether to check if the checkpoint interval has fully
        elapsed. If `False`, a checkpoint is saved regardless of the elapsed
        steps since the most recent checkpoint, unless no `checkpoint_manager`
        was provided to `Controller.__init__`.
A
A. Unique TensorFlower 已提交
501 502 503 504 505 506 507

    Returns:
      A boolean indicating whether a checkpoint was saved.
    """
    if self.checkpoint_manager and self.checkpoint_manager.checkpoint_interval:
      ckpt_path = self.checkpoint_manager.save(
          checkpoint_number=self.global_step.numpy(),
D
Dan Holtmann-Rice 已提交
508
          check_interval=check_interval)
A
A. Unique TensorFlower 已提交
509
      if ckpt_path is not None:
D
Dan Holtmann-Rice 已提交
510
        _log(f"saved checkpoint to {ckpt_path}.")
A
A. Unique TensorFlower 已提交
511 512 513
        return True
    return False

D
Dan Holtmann-Rice 已提交
514 515 516 517 518 519 520
  def _require(self, attribute, for_method):
    """Utility method to raise an error if the given `attribute` is not set."""
    if getattr(self, attribute, None) is None:
      raise ValueError(
          f"`{attribute}` is not set. Pass `{attribute}` to "
          f"`Controller.__init__` before calling `{for_method}()`.")

A
A. Unique TensorFlower 已提交
521

H
Hongkun Yu 已提交
522
class StepTimer:
A
A. Unique TensorFlower 已提交
523 524 525 526 527 528 529 530 531 532 533 534 535 536 537 538
  """Utility class for measuring steps/second."""

  def __init__(self, step):
    self.step = step
    self.start()

  def start(self):
    self.last_iteration = self.step.numpy()
    self.last_time = time.time()

  def steps_per_second(self, restart=True):
    value = ((self.step.numpy() - self.last_iteration) /
             (time.time() - self.last_time))
    if restart:
      self.start()
    return value