# Copyright 2020 The TensorFlow Authors. All Rights Reserved. # # 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. # ============================================================================== """Python module for evaluation loop.""" import tensorflow.compat.v2 as tf # isort: off from tensorflow.python.platform import tf_logging as logging from tensorflow.python.util import deprecation from keras.optimizers import optimizer from tensorflow.python.util.tf_export import keras_export _PRINT_EVAL_STEP_EVERY_SEC = 60.0 _ITERATIONS_UNINITIALIZED = -1 _CHECKPOINT_TIMEOUT_SEC = 30 def list_checkpoint_attributes(ckpt_dir_or_file): """Lists all the attributes in a checkpoint. Checkpoint keys are paths in a checkpoint graph, and attribute is the first element in the path. e.g. with a checkpoint key "optimizer/iter/.ATTRIBUTES/VARIABLE_VALUE", optimizer is the attribute. The attribute is also used to save/restore a variable in a checkpoint, e.g. tf.train.Checkpoint(optimizer=optimizer, model=model). Args: ckpt_dir_or_file: Directory with checkpoints file or path to checkpoint. Returns: Set of attributes in a checkpoint. """ reader = tf.train.load_checkpoint(ckpt_dir_or_file) variable_map = reader.get_variable_to_shape_map() return {name.split("/")[0] for name in variable_map.keys()} @keras_export("keras.utils.SidecarEvaluator", v1=[]) class SidecarEvaluator: """A class designed for a dedicated evaluator task. `SidecarEvaluator` is expected to be run in a process on a separate machine from the training cluster. It is meant for the purpose of a dedicated evaluator, evaluating the metric results of a training cluster which has one or more workers performing the training, and saving checkpoints. The `SidecarEvaluator` API is compatible with both Custom Training Loop (CTL), and Keras `Model.fit` to be used in the training cluster. Using the model (with compiled metrics) provided at `__init__`, `SidecarEvaluator` repeatedly performs evaluation "epochs" when it finds a checkpoint that has not yet been used. Depending on the `steps` argument, an eval epoch is evaluation over all eval data, or up to certain number of steps (batches). See examples below for how the training program should save the checkpoints in order to be recognized by `SidecarEvaluator`. Since under the hood, `SidecarEvaluator` uses `model.evaluate` for evaluation, it also supports arbitrary Keras callbacks. That is, if one or more callbacks are provided, their `on_test_batch_begin` and `on_test_batch_end` methods are called at the start and end of a batch, and their `on_test_begin` and `on_test_end` are called at the start and end of an evaluation epoch. Note that `SidecarEvaluator` may skip some checkpoints because it always picks up the latest checkpoint available, and during an evaluation epoch, multiple checkpoints can be produced from the training side. Example: ```python model = tf.keras.models.Sequential(...) model.compile(metrics=tf.keras.metrics.SparseCategoricalAccuracy( name="eval_metrics")) data = tf.data.Dataset.from_tensor_slices(...) tf.keras.SidecarEvaluator( model=model, data=data, # dir for training-saved checkpoint checkpoint_dir='/tmp/checkpoint_dir', steps=None, # Eval until dataset is exhausted max_evaluations=None, # The evaluation needs to be stopped manually callbacks=[tf.keras.callbacks.TensorBoard(log_dir='/tmp/log_dir')] ).start() ``` `SidecarEvaluator.start` writes a series of summary files which can be visualized by tensorboard (which provides a webpage link): ```bash $ tensorboard --logdir=/tmp/log_dir/validation ... TensorBoard 2.4.0a0 at http://host:port (Press CTRL+C to quit) ``` If the training cluster uses a CTL, the `checkpoint_dir` should contain checkpoints that track both `model` and `optimizer`, to fulfill `SidecarEvaluator`'s expectation. This can be done by a `tf.train.Checkpoint` and a `tf.train.CheckpointManager`: ```python # Same `checkpoint_dir` supplied to `SidecarEvaluator`. checkpoint_dir = ... checkpoint = tf.train.Checkpoint(model=model, optimizer=optimizer) checkpoint_manager = tf.train.CheckpointManager( checkpoint, checkpoint_dir=..., max_to_keep=...) checkpoint_manager.save() ``` If the training cluster uses Keras `Model.fit` API, a `tf.keras.callbacks.ModelCheckpoint` should be used, with `save_weights_only=True`, and the `filepath` should have 'ckpt-{epoch}' appended: ```python # Same `checkpoint_dir` supplied to `SidecarEvaluator`. checkpoint_dir = ... model_checkpoint = tf.keras.callbacks.ModelCheckpoint( filepath=os.path.join(checkpoint_dir, 'ckpt-{epoch}'), save_weights_only=True) model.fit(dataset, epochs, callbacks=[model_checkpoint]) ``` """ def __init__( self, model, data, checkpoint_dir, steps=None, max_evaluations=None, callbacks=None, ): """Initializes an `SidecarEvaluator` object. Args: model: Model to use for evaluation. The model object used here should be a `tf.keras.Model`, and should be the same as the one that is used in training, where `tf.keras.Model`s are checkpointed. The model should have one or more metrics compiled before using `SidecarEvaluator`. data: The input data for evaluation. `SidecarEvaluator` supports all data types that Keras `model.evaluate` supports as the input data `x`, such as a `tf.data.Dataset`. checkpoint_dir: Directory where checkpoint files are saved. steps: Number of steps to perform evaluation for, when evaluating a single checkpoint file. If `None`, evaluation continues until the dataset is exhausted. For repeated evaluation dataset, user must specify `steps` to avoid infinite evaluation loop. max_evaluations: Maximum number of the checkpoint file to be evaluated, for `SidecarEvaluator` to know when to stop. The evaluator will stop after it evaluates a checkpoint filepath ending with '-'. If using `tf.train.CheckpointManager.save` for saving checkpoints, the kth saved checkpoint has the filepath suffix '-' (k=1 for the first saved), and if checkpoints are saved every epoch after training, the filepath saved at the kth epoch would end with '-. Thus, if training runs for n epochs, and the evaluator should end after the training finishes, use n for this parameter. Note that this is not necessarily equal to the number of total evaluations, since some checkpoints may be skipped if evaluation is slower than checkpoint creation. If `None`, `SidecarEvaluator` will evaluate indefinitely, and the user must terminate evaluator program themselves. callbacks: List of `keras.callbacks.Callback` instances to apply during evaluation. See [callbacks](/api_docs/python/tf/keras/callbacks). """ self.model = model self.data = data self.checkpoint_dir = checkpoint_dir self._iterations = tf.Variable( name="iterations", initial_value=_ITERATIONS_UNINITIALIZED, dtype=tf.int64, ) self.max_evaluations = max_evaluations self.steps = steps self.callbacks = callbacks or [] def _timeout_fn(self): logging.info( "No checkpoints appear to be found after " f"{_CHECKPOINT_TIMEOUT_SEC} seconds. " "Please check if you are properly using a " "`tf.train.Checkpoint/CheckpointManager` or " "`tf.keras.callbacks.ModelCheckpoint(save_weights_only=True)` to " "save checkpoints by the training. See " "`tf.keras.SidecarEvaluator` doc for recommended flows " "of saving checkpoints." ) return False def start(self): """Starts the evaluation loop.""" if self.model.optimizer and isinstance( self.model.optimizer, optimizer.Optimizer ): checkpoint = tf.train.Checkpoint( model=self.model, optimizer=self.model.optimizer ) else: optimizer_checkpoint = tf.train.Checkpoint(iter=self._iterations) checkpoint = tf.train.Checkpoint( model=self.model, optimizer=optimizer_checkpoint ) for latest_checkpoint in tf.train.checkpoints_iterator( self.checkpoint_dir, timeout=_CHECKPOINT_TIMEOUT_SEC, timeout_fn=self._timeout_fn, ): try: # `expect_partial` because the checkpoint can have other # `Trackable`s such as `optimizer`. checkpoint.restore(latest_checkpoint).expect_partial() checkpoint_attributes = list_checkpoint_attributes( latest_checkpoint ) # The checkpoint should contain model and optimizer for # SidecarEvaluator to work. But the model weights saved by # ModelCheckpoint callback does not contain model as an # attribute. To make SidecarEvaluator compatibly work in this # case, use model.load_weights to load the model's weights, # while self._iterations is still restored by checkpoint # variable. if "model" not in checkpoint_attributes: self.model.load_weights(latest_checkpoint) # The model checkpoint might not include optimizer in cases, # e.g. using a custom training loop. Directly assign the # iterations property to be used in callbacks. if self.model.optimizer and not isinstance( self.model.optimizer, optimizer.Optimizer, ): # experimental optimizer automatically restores the # iteration value. self.model.optimizer.iterations.assign(self._iterations) except (tf.errors.OpError,) as e: # A couple errors can happen here with the coordinator racing to # write checkpoint: # 1) OpError: open failed for : No such file or # directory # 2) NotFoundError (subclass of OpError): Unsuccessful # TensorSliceReader constructor. # TODO(rchao): Remove this except block once b/150954027 is # resolved. logging.info( "SidecarEvaluator encountered an error when loading the " f"checkpoint at {latest_checkpoint}. Retrying. " f"Error: {e.__class__.__name__}: {e}" ) continue if ( self._iterations.numpy() == _ITERATIONS_UNINITIALIZED and not isinstance( self.model.optimizer, optimizer.Optimizer, ) ): raise RuntimeError( "Variable `iterations` cannot be loaded from the " f"checkpoint file at {self.checkpoint_dir}. " "Please ensure `iterations` is " "included in the checkpoint saved during training." ) logging.info( "Evaluation starts: Model weights loaded from latest " f"checkpoint file {latest_checkpoint}" ) self.model.evaluate( self.data, steps=self.steps, callbacks=self.callbacks, verbose=2 ) return_metrics = {} for metric in self.model.metrics: result = metric.result() if isinstance(result, dict): return_metrics.update(result) else: return_metrics[metric.name] = result logging.info( "End of evaluation. Metrics: %s", " ".join( [ f"{name}={value.numpy()}" for name, value in return_metrics.items() ] ), ) if self.max_evaluations and ( self.max_evaluations <= int(latest_checkpoint.split("-")[-1]) ): # Exit the loop because we have evaluated the final checkpoint # file. logging.info( "Last checkpoint evaluated. SidecarEvaluator stops." ) return @keras_export("keras.experimental.SidecarEvaluator", v1=[]) @deprecation.deprecated_endpoints("keras.experimental.SidecarEvaluator") class SidecarEvaluatorExperimental(SidecarEvaluator): """Deprecated. Please use `tf.keras.utils.SidecarEvaluator` instead. Caution: `tf.keras.experimental.SidecarEvaluator` endpoint is deprecated and will be removed in a future release. Please use `tf.keras.utils.SidecarEvaluator`. """ def __init__(self, *args, **kwargs): logging.warning( "`tf.keras.experimental.SidecarEvaluator` endpoint is " "deprecated and will be removed in a future release. Please use " "`tf.keras.utils.SidecarEvaluator`." ) super().__init__(*args, **kwargs)