# Copyright (c) 2020 PaddlePaddle 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. import os from paddle.fluid.dygraph.parallel import ParallelEnv from paddle.utils import try_import from .progressbar import ProgressBar __all__ = ['Callback', 'ProgBarLogger', 'ModelCheckpoint', 'VisualDL'] def config_callbacks(callbacks=None, model=None, batch_size=None, epochs=None, steps=None, log_freq=2, verbose=2, save_freq=1, save_dir=None, metrics=None, mode='train'): cbks = callbacks or [] cbks = cbks if isinstance(cbks, (list, tuple)) else [cbks] if not any(isinstance(k, ProgBarLogger) for k in cbks) and verbose: cbks = [ProgBarLogger(log_freq, verbose=verbose)] + cbks if not any(isinstance(k, ModelCheckpoint) for k in cbks): cbks = cbks + [ModelCheckpoint(save_freq, save_dir)] cbk_list = CallbackList(cbks) cbk_list.set_model(model) metrics = metrics or [] if mode != 'test' else [] params = { 'batch_size': batch_size, 'epochs': epochs, 'steps': steps, 'verbose': verbose, 'metrics': metrics, } cbk_list.set_params(params) return cbk_list class CallbackList(object): def __init__(self, callbacks=None): # copy self.callbacks = [c for c in callbacks] self.params = {} self.model = None def append(self, callback): self.callbacks.append(callback) def __iter__(self): return iter(self.callbacks) def set_params(self, params): for c in self.callbacks: c.set_params(params) def set_model(self, model): for c in self.callbacks: c.set_model(model) def _call(self, name, *args): for c in self.callbacks: func = getattr(c, name) func(*args) def _check_mode(self, mode): assert mode in ['train', 'eval', 'test'], \ 'mode should be train, eval or test' def on_begin(self, mode, logs=None): self._check_mode(mode) name = 'on_{}_begin'.format(mode) self._call(name, logs) def on_end(self, mode, logs=None): self._check_mode(mode) name = 'on_{}_end'.format(mode) self._call(name, logs) def on_epoch_begin(self, epoch=None, logs=None): self._call('on_epoch_begin', epoch, logs) def on_epoch_end(self, epoch=None, logs=None): self._call('on_epoch_end', epoch, logs) def on_batch_begin(self, mode, step=None, logs=None): self._check_mode(mode) name = 'on_{}_batch_begin'.format(mode) self._call(name, step, logs) def on_batch_end(self, mode, step=None, logs=None): self._check_mode(mode) name = 'on_{}_batch_end'.format(mode) self._call(name, step, logs) class Callback(object): """ Base class used to build new callbacks. Examples: .. code-block:: python import paddle # build a simple model checkpoint callback class ModelCheckpoint(paddle.callbacks.Callback): def __init__(self, save_freq=1, save_dir=None): self.save_freq = save_freq self.save_dir = save_dir def on_epoch_end(self, epoch, logs=None): if self.model is not None and epoch % self.save_freq == 0: path = '{}/{}'.format(self.save_dir, epoch) print('save checkpoint at {}'.format(path)) self.model.save(path) """ def __init__(self): self.model = None self.params = {} def set_params(self, params): """ Set parameters, which is dict. The keys contain: - 'batch_size': an integer. Number of samples per batch. - 'epochs': an integer. Number of epochs. - 'steps': an integer. Number of steps of one epoch. - 'verbose': an integer. Verbose mode is 0, 1 or 2. 0 = silent, 1 = progress bar, 2 = one line per epoch. - 'metrics': a list of str. Names of metrics, including 'loss' and the names of paddle.metric.Metric. """ self.params = params def set_model(self, model): """model is instance of paddle.Model. """ self.model = model def on_train_begin(self, logs=None): """Called at the start of training. Args: logs (dict): The logs is a dict or None. """ def on_train_end(self, logs=None): """Called at the end of training. Args: logs (dict): The logs is a dict or None. The keys of logs passed by paddle.Model contains 'loss', metric names and `batch_size`. """ def on_eval_begin(self, logs=None): """Called at the start of evaluation. Args: logs (dict): The logs is a dict or None. The keys of logs passed by paddle.Model contains 'steps' and 'metrics', The `steps` is number of total steps of validation dataset. The `metrics` is a list of str including 'loss' and the names of paddle.metric.Metric. """ def on_eval_end(self, logs=None): """Called at the end of evaluation. Args: logs (dict): The logs is a dict or None. The `logs` passed by paddle.Model is a dict contains 'loss', metrics and 'batch_size' of last batch of validation dataset. """ def on_test_begin(self, logs=None): """Called at the beginning of predict. Args: logs (dict): The logs is a dict or None. """ def on_test_end(self, logs=None): """Called at the end of predict. Args: logs (dict): The logs is a dict or None. """ def on_epoch_begin(self, epoch, logs=None): """Called at the beginning of each epoch. Args: epoch (int): The index of epoch. logs (dict): The logs is a dict or None. The `logs` passed by paddle.Model is None. """ def on_epoch_end(self, epoch, logs=None): """Called at the end of each epoch. Args: epoch (int): The index of epoch. logs (dict): The logs is a dict or None. The `logs` passed by paddle.Model is a dict, contains 'loss', metrics and 'batch_size' of last batch. """ def on_train_batch_begin(self, step, logs=None): """Called at the beginning of each batch in training. Args: step (int): The index of step (or iteration). logs (dict): The logs is a dict or None. The `logs` passed by paddle.Model is empty. """ def on_train_batch_end(self, step, logs=None): """Called at the end of each batch in training. Args: step (int): The index of step (or iteration). logs (dict): The logs is a dict or None. The `logs` passed by paddle.Model is a dict, contains 'loss', metrics and 'batch_size' of current batch. """ def on_eval_batch_begin(self, step, logs=None): """Called at the beginning of each batch in evaluation. Args: step (int): The index of step (or iteration). logs (dict): The logs is a dict or None. The `logs` passed by paddle.Model is empty. """ def on_eval_batch_end(self, step, logs=None): """Called at the end of each batch in evaluation. Args: step (int): The index of step (or iteration). logs (dict): The logs is a dict or None. The `logs` passed by paddle.Model is a dict, contains 'loss', metrics and 'batch_size' of current batch. """ def on_test_batch_begin(self, step, logs=None): """Called at the beginning of each batch in predict. Args: step (int): The index of step (or iteration). logs (dict): The logs is a dict or None. """ def on_test_batch_end(self, step, logs=None): """Called at the end of each batch in predict. Args: step (int): The index of step (or iteration). logs (dict): The logs is a dict or None. """ class ProgBarLogger(Callback): """Logger callback function Args: log_freq (int): The frequency, in number of steps, the logs such as `loss`, `metrics` are printed. Default: 1. verbose (int): The verbosity mode, should be 0, 1, or 2. 0 = silent, 1 = progress bar, 2 = one line per epoch. Default: 2. Examples: .. code-block:: python import paddle from paddle.static import InputSpec inputs = [InputSpec([-1, 1, 28, 28], 'float32', 'image')] labels = [InputSpec([None, 1], 'int64', 'label')] train_dataset = paddle.vision.datasets.MNIST(mode='train') model = paddle.Model(paddle.vision.LeNet(classifier_activation=None), inputs, labels) optim = paddle.optimizer.Adam(0.001) model.prepare(optimizer=optim, loss=paddle.nn.CrossEntropyLoss(), metrics=paddle.metric.Accuracy()) callback = paddle.callbacks.ProgBarLogger(log_freq=10) model.fit(train_dataset, batch_size=64, callbacks=callback) """ def __init__(self, log_freq=1, verbose=2): self.epochs = None self.steps = None self.progbar = None self.verbose = verbose self.log_freq = log_freq def _is_print(self): return self.verbose and ParallelEnv().local_rank == 0 def on_train_begin(self, logs=None): self.epochs = self.params['epochs'] assert self.epochs self.train_metrics = self.params['metrics'] assert self.train_metrics def on_epoch_begin(self, epoch=None, logs=None): self.steps = self.params['steps'] self.epoch = epoch self.train_step = 0 if self.epochs and self._is_print(): print('Epoch %d/%d' % (epoch + 1, self.epochs)) self.train_progbar = ProgressBar(num=self.steps, verbose=self.verbose) def _updates(self, logs, mode): values = [] metrics = getattr(self, '%s_metrics' % (mode)) progbar = getattr(self, '%s_progbar' % (mode)) steps = getattr(self, '%s_step' % (mode)) for k in metrics: if k in logs: values.append((k, logs[k])) progbar.update(steps, values) def on_train_batch_end(self, step, logs=None): logs = logs or {} self.train_step += 1 if self._is_print() and self.train_step % self.log_freq == 0: if self.steps is None or self.train_step < self.steps: self._updates(logs, 'train') def on_epoch_end(self, epoch, logs=None): logs = logs or {} if self._is_print() and (self.steps is not None): self._updates(logs, 'train') def on_eval_begin(self, logs=None): self.eval_steps = logs.get('steps', None) self.eval_metrics = logs.get('metrics', []) self.eval_step = 0 self.evaled_samples = 0 self.eval_progbar = ProgressBar( num=self.eval_steps, verbose=self.verbose) if self._is_print(): print('Eval begin...') def on_eval_batch_end(self, step, logs=None): logs = logs or {} self.eval_step += 1 samples = logs.get('batch_size', 1) self.evaled_samples += samples if self._is_print() and self.eval_step % self.log_freq == 0: if self.eval_steps is None or self.eval_step < self.eval_steps: self._updates(logs, 'eval') def on_test_begin(self, logs=None): self.test_steps = logs.get('steps', None) self.test_metrics = logs.get('metrics', []) self.test_step = 0 self.tested_samples = 0 self.test_progbar = ProgressBar( num=self.test_steps, verbose=self.verbose) if self._is_print(): print('Predict begin...') def on_test_batch_end(self, step, logs=None): logs = logs or {} self.test_step += 1 samples = logs.get('batch_size', 1) self.tested_samples += samples if self.test_step % self.log_freq == 0 and self._is_print(): if self.test_steps is None or self.test_step < self.test_steps: self._updates(logs, 'test') def on_eval_end(self, logs=None): logs = logs or {} if self._is_print() and (self.eval_steps is not None): self._updates(logs, 'eval') print('Eval samples: %d' % (self.evaled_samples)) def on_test_end(self, logs=None): logs = logs or {} if self._is_print(): if self.test_step % self.log_freq != 0 or self.verbose == 1: self._updates(logs, 'test') print('Predict samples: %d' % (self.tested_samples)) class ModelCheckpoint(Callback): """Model checkpoint callback function Args: save_freq(int): The frequency, in number of epochs, the model checkpoint are saved. Default: 1. save_dir(str|None): The directory to save checkpoint during training. If None, will not save checkpoint. Default: None. Examples: .. code-block:: python import paddle from paddle.static import InputSpec inputs = [InputSpec([-1, 1, 28, 28], 'float32', 'image')] labels = [InputSpec([None, 1], 'int64', 'label')] train_dataset = paddle.vision.datasets.MNIST(mode='train') model = paddle.Model(paddle.vision.LeNet(classifier_activation=None), inputs, labels) optim = paddle.optimizer.Adam(0.001) model.prepare(optimizer=optim, loss=paddle.nn.CrossEntropyLoss(), metrics=paddle.metric.Accuracy()) callback = paddle.callbacks.ModelCheckpoint(save_dir='./temp') model.fit(train_dataset, batch_size=64, callbacks=callback) """ def __init__(self, save_freq=1, save_dir=None): self.save_freq = save_freq self.save_dir = save_dir def on_epoch_begin(self, epoch=None, logs=None): self.epoch = epoch def _is_save(self): return self.model and self.save_dir and ParallelEnv().local_rank == 0 def on_epoch_end(self, epoch, logs=None): if self._is_save() and self.epoch % self.save_freq == 0: path = '{}/{}'.format(self.save_dir, epoch) print('save checkpoint at {}'.format(os.path.abspath(path))) self.model.save(path) def on_train_end(self, logs=None): if self._is_save(): path = '{}/final'.format(self.save_dir) print('save checkpoint at {}'.format(os.path.abspath(path))) self.model.save(path) class VisualDL(Callback): """VisualDL callback function Args: log_dir (str): The directory to save visualdl log file. Examples: .. code-block:: python import paddle from paddle.static import InputSpec inputs = [InputSpec([-1, 1, 28, 28], 'float32', 'image')] labels = [InputSpec([None, 1], 'int64', 'label')] train_dataset = paddle.vision.datasets.MNIST(mode='train') eval_dataset = paddle.vision.datasets.MNIST(mode='test') net = paddle.vision.LeNet() model = paddle.Model(net, inputs, labels) optim = paddle.optimizer.Adam(0.001, parameters=net.parameters()) model.prepare(optimizer=optim, loss=paddle.nn.CrossEntropyLoss(), metrics=paddle.metric.Accuracy()) # uncomment following lines to fit model with visualdl callback function # callback = paddle.callbacks.VisualDL(log_dir='visualdl_log_dir') # model.fit(train_dataset, eval_dataset, batch_size=64, callbacks=callback) """ def __init__(self, log_dir): self.log_dir = log_dir self.epochs = None self.steps = None self.epoch = 0 def _is_write(self): return ParallelEnv().local_rank == 0 def on_train_begin(self, logs=None): self.epochs = self.params['epochs'] assert self.epochs self.train_metrics = self.params['metrics'] assert self.train_metrics self._is_fit = True self.train_step = 0 def on_epoch_begin(self, epoch=None, logs=None): self.steps = self.params['steps'] self.epoch = epoch def _updates(self, logs, mode): if not self._is_write(): return if not hasattr(self, 'writer'): visualdl = try_import('visualdl') self.writer = visualdl.LogWriter(self.log_dir) metrics = getattr(self, '%s_metrics' % (mode)) current_step = getattr(self, '%s_step' % (mode)) if mode == 'train': total_step = current_step else: total_step = self.epoch for k in metrics: if k in logs: temp_tag = mode + '/' + k if isinstance(logs[k], (list, tuple)): temp_value = logs[k][0] elif isinstance(logs[k], numbers.Number): temp_value = logs[k] else: continue self.writer.add_scalar( tag=temp_tag, step=total_step, value=temp_value) def on_train_batch_end(self, step, logs=None): logs = logs or {} self.train_step += 1 if self._is_write(): self._updates(logs, 'train') def on_eval_begin(self, logs=None): self.eval_steps = logs.get('steps', None) self.eval_metrics = logs.get('metrics', []) self.eval_step = 0 self.evaled_samples = 0 def on_train_end(self, logs=None): if hasattr(self, 'writer'): self.writer.close() delattr(self, 'writer') def on_eval_end(self, logs=None): if self._is_write(): self._updates(logs, 'eval') if (not hasattr(self, '_is_fit')) and hasattr(self, 'writer'): self.writer.close() delattr(self, 'writer')