TensorFlow与train_and_evaluate相关的类和函数

2018-04-28 11:24 更新

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“与train_and_evaluate有关的类和函数.”

from __future__ import absolute_import from __future__ import division from __future__ import print_function import collections import json import os import time import six from tensorflow.core.protobuf import config_pb2 from tensorflow.python.estimator import estimator as estimator_lib from tensorflow.python.estimator import exporter as exporter_lib from tensorflow.python.estimator import run_config as run_config_lib from tensorflow.python.framework import ops from tensorflow.python.platform import tf_logging as logging from tensorflow.python.training import basic_session_run_hooks from tensorflow.python.training import server_lib from tensorflow.python.training import session_run_hook from tensorflow.python.util import compat _MAX_DELAY_SECS = 60 _DELAY_SECS_PER_WORKER = 5 _TF_CONFIG_ENV = 'TF_CONFIG' _ENVIRONMENT_KEY = 'environment' _ENVIRONMENT_GOOGLE_VALUE = 'google' _TRAINER_JOBS = (run_config_lib.TaskType.CHIEF, run_config_lib.TaskType.MASTER, run_config_lib.TaskType.WORKER) def _validate_input_fn(input_fn): """Validates the `input_fn`.""" if not callable(input_fn): raise TypeError('`input_fn` must be callable, given: {}'.format(input_fn)) def _validate_hooks(hooks): """Validates the `hooks`.""" hooks = tuple(hooks or []) for hook in hooks: if not isinstance(hook, session_run_hook.SessionRunHook): raise TypeError( 'All hooks must be `SessionRunHook` instances, given: {}'.format( hook)) return hooks def _validate_exporters(exporters): """Validates `exporters` and returns them as a tuple.""" if not exporters: return () if isinstance(exporters, exporter_lib.Exporter): exporters = [exporters] unique_names = [] # `Exporter`s should have unique names. try: for exporter in exporters: if not isinstance(exporter, exporter_lib.Exporter): # Error message will be printed out by the outer try/except. raise TypeError if not exporter.name: full_list_of_names = [e.name for e in exporters] raise ValueError('An Exporter cannot have a name that is `None` or' ' empty. All exporter names:' ' {}'.format(full_list_of_names)) if not isinstance(exporter.name, six.string_types): raise ValueError('An Exporter must have a string name. Given: ' '{}'.format(type(exporter.name))) if exporter.name in unique_names: full_list_of_names = [e.name for e in exporters] raise ValueError( '`exporters` must have unique names. Such a name cannot be `None`.' ' All exporter names: {}'.format(full_list_of_names)) unique_names.append(exporter.name) except TypeError: # Two possibilities: # - `exporters` is neither `Exporter` nor iterable. Python has # raised a `TypeError` when iterating over `exporters`. # - an `exporter` was None or not of type `Exporter`, so we raised a # `TypeError`. raise TypeError('`exporters` must be an Exporter,' ' an iterable of Exporter, or `None`,' ' found %s.' % exporters) return tuple(exporters) def _is_google_env(): """Detects whether current environment is google.""" tf_config = json.loads(os.environ.get(_TF_CONFIG_ENV) or '{}') if not tf_config: logging.warn('TF_CONFIG should not be empty in distributed environment.') return tf_config.get(_ENVIRONMENT_KEY) == _ENVIRONMENT_GOOGLE_VALUE class TrainSpec( collections.namedtuple('TrainSpec', ['input_fn', 'max_steps', 'hooks'])): """Configuration for the "train" part for the `train_and_evaluate` call. `TrainSpec` determines the input data for the training, as well as the duration. Optional hooks run at various stages of training. """ def __new__(cls, input_fn, max_steps=None, hooks=None): """Creates a validated `TrainSpec` instance. Args: input_fn: Training input function returning a tuple of: features - `Tensor` or dictionary of string feature name to `Tensor`. labels - `Tensor` or dictionary of `Tensor` with labels. max_steps: Int. Positive number of total steps for which to train model. If `None`, train forever. The training `input_fn` is not expected to generate `OutOfRangeError` or `StopIteration` exceptions. See the `train_and_evaluate` stop condition section for details. hooks: Iterable of `tf.train.SessionRunHook` objects to run on all workers (including chief) during training. Returns: A validated `TrainSpec` object. Raises: ValueError: If any of the input arguments is invalid. TypeError: If any of the arguments is not of the expected type. """ # Validate input_fn. _validate_input_fn(input_fn) # Validate max_steps. if max_steps is not None and max_steps <= 0: raise ValueError( 'Must specify max_steps > 0, given: {}'.format(max_steps)) # Validate hooks. hooks = _validate_hooks(hooks) return super(TrainSpec, cls).__new__( cls, input_fn=input_fn, max_steps=max_steps, hooks=hooks) class EvalSpec( collections.namedtuple('EvalSpec', [ 'input_fn', 'steps', 'name', 'hooks', 'exporters', 'start_delay_secs', 'throttle_secs' ])): """Configuration for the "eval" part for the `train_and_evaluate` call. `EvalSpec` combines details of evaluation of the trained model as well as its export. Evaluation consists of computing metrics to judge the performance of the trained model. Export writes out the trained model on to external storage. """ def __new__(cls, input_fn, steps=100, name=None, hooks=None, exporters=None, start_delay_secs=120, throttle_secs=600): """Creates a validated `EvalSpec` instance. Args: input_fn: Evaluation input function returning a tuple of: features - `Tensor` or dictionary of string feature name to `Tensor`. labels - `Tensor` or dictionary of `Tensor` with labels. steps: Int. Positive number of steps for which to evaluate model. If `None`, evaluates until `input_fn` raises an end-of-input exception. See `Estimator.evaluate` for details. name: String. Name of the evaluation if user needs to run multiple evaluations on different data sets. Metrics for different evaluations are saved in separate folders, and appear separately in tensorboard. hooks: Iterable of `tf.train.SessionRunHook` objects to run during evaluation. exporters: Iterable of `Exporter`s, or a single one, or `None`. `exporters` will be invoked after each evaluation. start_delay_secs: Int. Start evaluating after waiting for this many seconds. throttle_secs: Int. Do not re-evaluate unless the last evaluation was started at least this many seconds ago. Of course, evaluation does not occur if no new checkpoints are available, hence, this is the minimum. Returns: A validated `EvalSpec` object. Raises: ValueError: If any of the input arguments is invalid. TypeError: If any of the arguments is not of the expected type. """ # Validate input_fn. _validate_input_fn(input_fn) # Validate steps. if steps is not None and steps <= 0: raise ValueError('Must specify steps > 0, given: {}'.format(steps)) # Validate name. if name is not None and not isinstance(name, six.string_types): raise TypeError('`name` must be string, given: {}'.format(name)) # Validate hooks. hooks = _validate_hooks(hooks) # Validate exporters. exporters = _validate_exporters(exporters) # Validate start_delay_secs. if start_delay_secs < 0: raise ValueError('Must specify start_delay_secs >= 0, given: {}'.format( start_delay_secs)) # Validate throttle_secs. if throttle_secs < 0: raise ValueError( 'Must specify throttle_secs >= 0, given: {}'.format(throttle_secs)) return super(EvalSpec, cls).__new__( cls, input_fn=input_fn, steps=steps, name=name, hooks=hooks, exporters=exporters, start_delay_secs=start_delay_secs, throttle_secs=throttle_secs) def train_and_evaluate(estimator, train_spec, eval_spec): """Train and evaluate the `estimator`. This utility function trains, evaluates, and (optionally) exports the model by using the given `estimator`. All training related specification is held in `train_spec`, including training `input_fn` and training max steps, etc. All evaluation and export related specification is held in `eval_spec`, including evaluation `input_fn`, steps, etc. This utility function provides consistent behavior for both local (non-distributed) and distributed configurations. Currently, the only supported distributed training configuration is between-graph replication. Overfitting: In order to avoid overfitting, it is recommended to set up the training `input_fn` to shuffle the training data properly. It is also recommended to train the model a little longer, say multiple epochs, before performing evaluation, as the input pipeline starts from scratch for each training. It is particularly important for local training and evaluation. Stop condition: In order to support both distributed and non-distributed configuration reliably, the only supported stop condition for model training is `train_spec.max_steps`. If `train_spec.max_steps` is `None`, the model is trained forever. *Use with care* if model stop condition is different. For example, assume that the model is expected to be trained with one epoch of training data, and the training `input_fn` is configured to throw `OutOfRangeError` after going through one epoch, which stops the `Estimator.train`. For a three-training-worker distributed configuration, each training worker is likely to go through the whole epoch independently. So, the model will be trained with three epochs of training data instead of one epoch. Example of local (non-distributed) training: ```python # Set up feature columns. categorial_feature_a = categorial_column_with_hash_bucket(...) categorial_feature_a_emb = embedding_column( categorical_column=categorial_feature_a, ...) ... # other feature columns estimator = DNNClassifier( feature_columns=[categorial_feature_a_emb, ...], hidden_units=[1024, 512, 256]) # Or set up the model directory # estimator = DNNClassifier( # config=tf.estimator.RunConfig( # model_dir='/my_model', save_summary_steps=100), # feature_columns=[categorial_feature_a_emb, ...], # hidden_units=[1024, 512, 256]) # Input pipeline for train and evaluate. def train_input_fn: # returns x, y # please shuffle the data. pass def eval_input_fn_eval: # returns x, y pass train_spec = tf.estimator.TrainSpec(input_fn=train_input_fn, max_steps=1000) eval_spec = tf.estimator.EvalSpec(input_fn=eval_input_fn) tf.estimator.train_and_evaluate(estimator, train_spec, eval_spec) ``` Example of distributed training: Regarding the example of distributed training, the code above can be used without a change (Please do make sure that the `RunConfig.model_dir` for all workers is set to the same directory, i.e., a shared file system all workers can read and write). The only extra work to do is setting the environment variable `TF_CONFIG` properly for each worker correspondingly. Also see: https://www.tensorflow.org/deploy/distributed Setting environment variable depends on the platform. For example, on Linux, it can be done as follows (`$` is the shell prompt):
``` $ TF_CONFIG='<replace_with_real_content>' python train_model.py ``` For the content in `TF_CONFIG`, assume that the training cluster spec looks like: ``` cluster = {"chief": ["host0:2222"], "worker": ["host1:2222", "host2:2222", "host3:2222"], "ps": ["host4:2222", "host5:2222"]} ``` Example of `TF_CONFIG` for chief training worker (must have one and only one): ``` # This should be a JSON string, which is set as environment variable. Usually # the cluster manager handles that. TF_CONFIG='{ "cluster": { "chief": ["host0:2222"], "worker": ["host1:2222", "host2:2222", "host3:2222"], "ps": ["host4:2222", "host5:2222"] }, "task": {"type": "chief", "index": 0} }' ``` Note that the chief worker also does the model training job, similar to other non-chief training workers (see next paragraph). In addition to the model training, it manages some extra work, e.g., checkpoint saving and restoring, writing summaries, etc. Example of `TF_CONFIG` for non-chief training worker (optional, could be multiple): ``` # This should be a JSON string, which is set as environment variable. Usually # the cluster manager handles that. TF_CONFIG='{ "cluster": { "chief": ["host0:2222"], "worker": ["host1:2222", "host2:2222", "host3:2222"], "ps": ["host4:2222", "host5:2222"] }, "task": {"type": "worker", "index": 0} }' ``` where the `task.index` should be set as 0, 1, 2, in this example, respectively for non-chief training workers. Example of `TF_CONFIG` for parameter server, aka ps (could be multiple): ``` # This should be a JSON string, which is set as environment variable. Usually # the cluster manager handles that. TF_CONFIG='{ "cluster": { "chief": ["host0:2222"], "worker": ["host1:2222", "host2:2222", "host3:2222"], "ps": ["host4:2222", "host5:2222"] }, "task": {"type": "ps", "index": 0} }' ``` where the `task.index` should be set as 0 and 1, in this example, respectively for parameter servers. Example of `TF_CONFIG` for evaluator task. Evaluator is a special task that is not part of the training cluster. There could be only one. It is used for model evaluation. ``` # This should be a JSON string, which is set as environment variable. Usually # the cluster manager handles that. TF_CONFIG='{ "cluster": { "chief": ["host0:2222"], "worker": ["host1:2222", "host2:2222", "host3:2222"], "ps": ["host4:2222", "host5:2222"] }, "task": {"type": "evaluator", "index": 0} }' ``` Args: estimator: An `Estimator` instance to train and evaluate. train_spec: A `TrainSpec` instance to specify the training specification. eval_spec: A `EvalSpec` instance to specify the evaluation and export specification. Raises: ValueError: if environment variable `TF_CONFIG` is incorrectly set. """ executor = _TrainingExecutor( estimator=estimator, train_spec=train_spec, eval_spec=eval_spec) config = estimator.config if (config.task_type == run_config_lib.TaskType.EVALUATOR and config.task_id > 0): raise ValueError( 'For distributed training, there can only be one `evaluator` task ' '(with task id 0). Given task id {}'.format(config.task_id)) executor.run() class _StopAtSecsHook(session_run_hook.SessionRunHook): """Stops given secs after begin is called.""" def __init__(self, stop_after_secs): self._stop_after_secs = stop_after_secs self._start_time = None def begin(self): self._start_time = time.time() def after_run(self, run_context, run_values): del run_values if time.time() - self._start_time >= self._stop_after_secs: run_context.request_stop() class _TrainingExecutor(object): """The executor to run `Estimator` training and evaluation. This implementation supports both distributed and non-distributed (aka local) training and evaluation based on the setting in `tf.estimator.RunConfig`. """ def __init__(self, estimator, train_spec, eval_spec, train_hooks=None, continuous_eval_listener=None): if not isinstance(estimator, estimator_lib.Estimator): raise TypeError('`estimator` must have type `tf.estimator.Estimator`.') self._estimator = estimator if not isinstance(train_spec, TrainSpec): raise TypeError('`train_spec` must have type `tf.estimator.TrainSpec`.') self._train_spec = train_spec if not isinstance(eval_spec, EvalSpec): raise TypeError('`eval_spec` must have type `tf.estimator.EvalSpec`.') self._eval_spec = eval_spec self._train_hooks = _validate_hooks(train_hooks) if (continuous_eval_listener and not isinstance(continuous_eval_listener, _ContinuousEvalListener)): raise TypeError('`continuous_eval_listener` must have type ' '`_ContinuousEvalListener`.') self._continuous_eval_listener = ( continuous_eval_listener or _ContinuousEvalListener()) @property def estimator(self): return self._estimator def run(self): """Executes the run_foo for task type `foo`. `_TrainingExecutor` predefines the procedure for task type 'chief', 'worker', 'ps', and 'evaluator'. For task type `foo`, the corresponding procedure is `run_foo'. This `run` method invoke the procedure base on the `RunConfig.task_type`. Raises: ValueError: if the estimator.config is mis-configured. """ config = self._estimator.config if (not config.cluster_spec and config.task_type != run_config_lib.TaskType.EVALUATOR): logging.info('Running training and evaluation locally (non-distributed).') self.run_local() return # Distributed case. if not config.task_type: # TODO(xiejw): Improve the error message about how to set the TF_CONFIG # correctly. raise ValueError( '`estimator.config` must have task_type set. This usually means ' 'TF_CONFIG environment is not set correctly.') if config.task_type == 'local': raise ValueError( '`task.type` in TF_CONFIG cannot be `local`. Leaving `cluster` and ' '`task` properties in TF_CONFIG absent triggers train and evaluate ' '`Estimator` locally (non-distributed).') # For task type foo, call executor.run_foo. available_tasks = [ x for x in dir(self) if x.startswith('run_') and x != 'run_local' and callable(getattr(self, x)) ] task_to_run = 'run_' + config.task_type if task_to_run not in available_tasks: raise ValueError( 'Task type {} is not supported. Supported task types are {}'.format( config.task_type, [x[len('run_'):] for x in available_tasks])) getattr(self, task_to_run)() def run_chief(self): """Runs task chief.""" # TODO(xiejw): To allow execution framework to add train hooks. return self._start_distributed_training() def run_worker(self): """Runs task (training) worker.""" # TODO(xiejw): To allow execution framework to add train hooks. return self._start_distributed_training() def run_master(self): """Runs task master.""" class NewCheckpointListener( basic_session_run_hooks.CheckpointSaverListener): def __init__(self, evaluator, eval_throttle_secs): self._evaluator = evaluator self._eval_throttle_secs = eval_throttle_secs def begin(self): self._timer = basic_session_run_hooks.SecondOrStepTimer( every_secs=self._eval_throttle_secs) def after_save(self, session, global_step_value): del session # unused; required by signature. if self._timer.should_trigger_for_step(global_step_value): self._timer.update_last_triggered_step(global_step_value) self._evaluator.evaluate_and_export() else: logging.info('Skip the current checkpoint eval due to throttle secs ' '({} secs).'.format(self._eval_throttle_secs)) # Final export signal: For any eval result with global_step >= train # max_steps, the evaluator will send the final export signal. There is a # small chance that the Estimator.train stopping logic sees a different # global_step value (due to global step race condition and the fact the # saver sees a larger value for checkpoing saving), which does not end # the training. When the training ends, a new checkpoint is generated, which # triggers the listener again. So, it could be the case the final export is # triggered twice. # # But here, throttle_secs will skip the next intermediate checkpoint and, # so, the double final export chance is very small. evaluator = _TrainingExecutor._Evaluator(self._estimator, self._eval_spec, self._train_spec.max_steps) # When the underlying `Estimator` object saves a new checkpoint, we would # like this callback to be called so that evaluation and export can trigger. saving_listeners = [ NewCheckpointListener(evaluator, self._eval_spec.throttle_secs) ] self._start_distributed_training(saving_listeners=saving_listeners) if not evaluator.is_final_export_triggered: logging.info('Training has already ended. But the last eval is skipped ' 'due to eval throttle_secs. Now evaluating the final ' 'checkpoint.') evaluator.evaluate_and_export() def run_evaluator(self): """Runs task evaluator.""" # TODO(xiejw): To allow execution framework to add continuous eval listener. return self._start_continuous_evaluation() def run_ps(self): """Runs task parameter server (in training cluster spec).""" config = self._estimator.config server = self._start_std_server(config) server.join() def run_local(self): """Runs training and evaluation locally (non-distributed).""" def _should_stop_local_train(global_step): if self._train_spec.max_steps is None: return False if global_step >= self._train_spec.max_steps: return True return False if self._eval_spec.throttle_secs <= 0: raise ValueError('eval_spec.throttle_secs should be positive, given: {}.' 'It is used do determine how long each training ' 'iteration should go when train and evaluate ' 'locally.'.format(self._eval_spec.throttle_secs)) stop_hook = _StopAtSecsHook(self._eval_spec.throttle_secs) train_hooks = ( list(self._train_spec.hooks) + [stop_hook] + list(self._train_hooks)) logging.info('Start train and evaluate loop. The evaluate will happen ' 'after {} secs (eval_spec.throttle_secs) or training is ' 'finished.'.format(self._eval_spec.throttle_secs)) evaluator = _TrainingExecutor._Evaluator(self._estimator, self._eval_spec, self._train_spec.max_steps) while True: self._estimator.train( input_fn=self._train_spec.input_fn, max_steps=self._train_spec.max_steps, hooks=train_hooks) # Final export signal: For any eval result with global_step >= train # max_steps, the evaluator will send the final export signal. The # _should_stop_local_train will then end the while True as the stopping # condition is satisfied (both checks use the same global_step value, # i.e., no race condition) eval_result = evaluator.evaluate_and_export() if eval_result.status != _EvalStatus.EVALUATED: # This is unexpected; should never happen. # Training should always end with a new checkpoint. raise RuntimeError('There was no new checkpoint after the training. ' 'Eval status: {}'.format(eval_result.status)) if _should_stop_local_train( eval_result.metrics[ops.GraphKeys.GLOBAL_STEP]): break def _start_std_server(self, config): """Creates, starts, and returns a server_lib.Server.""" if (not config.cluster_spec or not config.task_type or config.task_id is None): raise RuntimeError('Could not start server; be sure to specify ' 'cluster_spec, task_type, and task in ' 'RunConfig or set the TF_CONFIG environment variable.') if not config.master: jobs = config.cluster_spec.jobs if (len(jobs) == 1 and len(config.cluster_spec.job_tasks(jobs[0])) == 1 and config.task_type in _TRAINER_JOBS): # For distributed training, config.master is empty if and only if it has # a single node in the cluster spec. In this case, we should not start # the server. logging.info('Skip starting Tensorflow server as there is only one ' 'node in the cluster.') return else: raise RuntimeError( 'Could not start server; be sure to specify master in ' 'RunConfig or set the TF_CONFIG environment variable.') logging.info('Start Tensorflow server.') if config.session_config is None: session_config = config_pb2.ConfigProto(log_device_placement=False) else: session_config = config_pb2.ConfigProto( log_device_placement=False, gpu_options=config.session_config.gpu_options) server = server_lib.Server( config.cluster_spec, job_name=config.task_type, task_index=config.task_id, config=session_config, start=False) server.start() return server def _start_distributed_training(self, saving_listeners=None): """Calls `Estimator` train in a distributed setting.""" config = self._estimator.config # Start in-process TensorFlow server if needed. It's important to start the # server before we (optionally) sleep. Otherwise, the servers will wait to # connect to each other before starting to train. if not _is_google_env(): self._start_std_server(config) # Delay worker to start. For asynchronous training, this usually helps model # to converge faster. Chief starts the training immediately, so, worker # with task id x (0-based) should wait (x+1) * _DELAY_SECS_PER_WORKER. start_delay_secs = 0 if config.task_type == run_config_lib.TaskType.WORKER: # TODO(xiejw): Replace the hard code logic (task_id + 1) with unique id in # training cluster. start_delay_secs = min(_MAX_DELAY_SECS, (config.task_id + 1) * _DELAY_SECS_PER_WORKER) if start_delay_secs > 0: logging.info('Waiting %d secs before starting training.', start_delay_secs) time.sleep(start_delay_secs) self._estimator.train( input_fn=self._train_spec.input_fn, max_steps=self._train_spec.max_steps, hooks=list(self._train_spec.hooks) + list(self._train_hooks), saving_listeners=saving_listeners) def _start_continuous_evaluation(self): """Repeatedly calls `Estimator` evaluate and export until training ends.""" start_delay_secs = self._eval_spec.start_delay_secs if start_delay_secs: logging.info('Waiting %f secs before starting eval.', start_delay_secs) time.sleep(start_delay_secs) latest_eval_result = None evaluator = _TrainingExecutor._Evaluator(self._estimator, self._eval_spec, self._train_spec.max_steps) should_early_stop = False while not should_early_stop: if (latest_eval_result and latest_eval_result.status == _EvalStatus.EVALUATED): global_step = latest_eval_result.metrics.get(ops.GraphKeys.GLOBAL_STEP) if (global_step and self._train_spec.max_steps and global_step >= self._train_spec.max_steps): logging.info( 'Exiting evaluation, global_step=%s >= train max_steps=%s', global_step, self._train_spec.max_steps) return latest_eval_result, should_early_stop = self._execute_evaluator_once( evaluator, self._continuous_eval_listener, self._eval_spec.throttle_secs) def _execute_evaluator_once(self, evaluator, continuous_eval_listener, throttle_secs): """Executes the `evaluator`.""" start = time.time() eval_result = None should_early_stop = False if not continuous_eval_listener.before_eval(): logging.info('Exiting evaluation, as requested by ' '_ContinuousEvalListener.before_eval.') should_early_stop = True return (eval_result, should_early_stop) # Final export signal: For any eval result with global_step >= train # max_steps, the evaluator will send the final export signal. The next # iteration of while loop will end the continuous eval as the stopping # condition is satisfied (both checks use the same global_step value, # i.e., no race condition) eval_result = evaluator.evaluate_and_export() if not self._continuous_eval_listener.after_eval(eval_result): logging.info('Exiting evaluation, as requested by ' '_ContinuousEvalListener.after_eval.') should_early_stop = True return (eval_result, should_early_stop) # Throttle if necessary. elapsed_time = time.time() - start difference = throttle_secs - elapsed_time if difference > 0: logging.info('Waiting %f secs before starting next eval run.', difference) time.sleep(difference) return (eval_result, should_early_stop) class _Evaluator(object): """A helper class to call `Estimator.evaluate` and export model.""" def __init__(self, estimator, eval_spec, max_training_steps): self._estimator = estimator self._eval_spec = eval_spec self._is_final_export_triggered = False self._previous_ckpt_path = None self._last_warning_time = 0 self._max_training_steps = max_training_steps @property def is_final_export_triggered(self): return self._is_final_export_triggered def evaluate_and_export(self): """Evaluate and (maybe) export the current model. Returns: An `EvalResult` instance. Raises: RuntimeError: for any unexpected internal error. TypeError: if evaluation result has wrong type. """ latest_ckpt_path = self._estimator.latest_checkpoint() if not latest_ckpt_path: self._log_err_msg('Estimator is not trained yet. Will start an ' 'evaluation when a checkpoint is ready.') return _EvalResult(status=_EvalStatus.MISSING_CHECKPOINT) if latest_ckpt_path == self._previous_ckpt_path: self._log_err_msg( 'No new checkpoint ready for evaluation. Skip the current ' 'evaluation pass as evaluation results are expected to be same ' 'for the same checkpoint.') return _EvalResult(status=_EvalStatus.NO_NEW_CHECKPOINT) metrics = self._estimator.evaluate( input_fn=self._eval_spec.input_fn, steps=self._eval_spec.steps, name=self._eval_spec.name, checkpoint_path=latest_ckpt_path, hooks=self._eval_spec.hooks) # _EvalResult validates the metrics. eval_result = _EvalResult( status=_EvalStatus.EVALUATED, metrics=metrics, checkpoint_path=latest_ckpt_path) is_the_final_export = ( eval_result.metrics[ops.GraphKeys.GLOBAL_STEP] >= self._max_training_steps if self._max_training_steps else False) self._export_eval_result(eval_result, is_the_final_export) if is_the_final_export: logging.debug('Calling exporter with the `is_the_final_export=True`.') self._is_final_export_triggered = True self._last_warning_time = 0 self._previous_ckpt_path = latest_ckpt_path return eval_result def _log_err_msg(self, message): """Prints warning `message` every 10 mins.""" current_time = time.time() if current_time - self._last_warning_time > 600: logging.warning(message) self._last_warning_time = current_time def _export_eval_result(self, eval_result, is_the_final_export): """Export `eval_result` according to exporters in `EvalSpec`.""" export_dir_base = os.path.join( compat.as_str_any(self._estimator.model_dir), compat.as_str_any('export')) for exporter in self._eval_spec.exporters: exporter.export( estimator=self._estimator, export_path=os.path.join( compat.as_str_any(export_dir_base), compat.as_str_any(exporter.name)), checkpoint_path=eval_result.checkpoint_path, eval_result=eval_result.metrics, is_the_final_export=is_the_final_export) class _EvalStatus(object): """The status of an evaluation event. For local training and evaluation, the status can only be `EVALUATED` as `Estimator.train` always generates a new checkpoint. For distributed training and evaluation, a separated evaluator keeps looking for new checkpoint. So, multiple situations might occur: - EVALUATED: A new checkpoint is found since last evaluation. `Estimator.evaluate` will be invoked. - MISSING_CHECKPOINT: No checkpoint can be found. Typically, this means the trainer has not yet produced any checkpoint. - NO_NEW_CHECKPOINT: No new checkpoint can be found since last evaluation. Typically, this means the trainer has not yet produced any new checkpoint. """ EVALUATED = 'evaluated' MISSING_CHECKPOINT = 'missing checkpoint' NO_NEW_CHECKPOINT = 'no new checkpoint' class _EvalResult( collections.namedtuple('EvalResult', ['status', 'metrics', 'checkpoint_path'])): """_EvalResult holds the result of an evaluation event.""" def __new__(cls, status, metrics=None, checkpoint_path=None): """Creates a validated `_EvalResult`. Args: status: See `_EvalStatus`. metrics: The evaluation results returned by `Estimator.evaluate`. Only set if status is `EVALUATED`. checkpoint_path: The corresponding checkpoint path for the `metrics`. Only set if status is `EVALUATED`. Returns: A validated `_EvalResult` object. Raises: ValueError: If validation fails. TypeError: If any of the arguments is not the expected type. """ if status != _EvalStatus.EVALUATED: if metrics: raise ValueError( 'metrics must be `None` if status is not {}; got status {},' ' metrics {}'.format(_EvalStatus.EVALUATED, status, metrics)) if checkpoint_path: raise ValueError( 'checkpoint must be `None` if status is not {}; got status {}, ' 'checkpoint_path {}'.format(_EvalStatus.EVALUATED, status, checkpoint_path)) return super(_EvalResult, cls).__new__(cls, status, metrics, checkpoint_path) # Now, evaluated case. assert status == _EvalStatus.EVALUATED # Validates metrics. if not metrics: raise ValueError( 'Internal error: `Estimator.evaluate` should never return empty ' 'metrics.') if not isinstance(metrics, dict): raise TypeError( '`Estimator.evaluate` should return dict. Given {}.'.format( type(metrics))) if ops.GraphKeys.GLOBAL_STEP not in metrics: raise ValueError( 'Internal error: `Estimator.evaluate` result should have ' '`global_step` in result. Given {}'.format(metrics)) # Validates checkpoint_path. if not checkpoint_path: raise ValueError( 'Internal error: `checkpoint_path` should never be empty.') return super(_EvalResult, cls).__new__(cls, status, metrics, checkpoint_path) class _ContinuousEvalListener(object): """Interface for listeners that take action before or after evaluation.""" def before_eval(self): """Called before evaluation. Returns: `False` if you want to skip the current evaluation and early stop the continuous evaluation; `True` otherwise. """ return True def after_eval(self, eval_result): """Called after the evaluation is executed. Args: eval_result: An `_EvalResult` instance. Returns: False if you want to early stop continuous evaluation; `True` otherwise. """ del eval_result return True
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