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MisterAI/LocalAI_Demo_backends / cpu-diffusers.upgrade-tmp /venv /lib /python3.10 /site-packages /tqdm /keras.py
| from copy import copy | |
| from functools import partial | |
| from .auto import tqdm as tqdm_auto | |
| try: | |
| import keras | |
| except (ImportError, AttributeError) as e: | |
| try: | |
| from tensorflow import keras | |
| except ImportError: | |
| raise e | |
| __author__ = {"github.com/": ["casperdcl"]} | |
| __all__ = ['TqdmCallback'] | |
| class TqdmCallback(keras.callbacks.Callback): | |
| """Keras callback for epoch and batch progress.""" | |
| def bar2callback(bar, pop=None, delta=(lambda logs: 1)): | |
| def callback(_, logs=None): | |
| n = delta(logs) | |
| if logs: | |
| if pop: | |
| logs = copy(logs) | |
| [logs.pop(i, 0) for i in pop] | |
| bar.set_postfix(logs, refresh=False) | |
| bar.update(n) | |
| return callback | |
| def __init__(self, epochs=None, data_size=None, batch_size=None, verbose=1, | |
| tqdm_class=tqdm_auto, **tqdm_kwargs): | |
| """ | |
| Parameters | |
| ---------- | |
| epochs : int, optional | |
| data_size : int, optional | |
| Number of training pairs. | |
| batch_size : int, optional | |
| Number of training pairs per batch. | |
| verbose : int | |
| 0: epoch, 1: batch (transient), 2: batch. [default: 1]. | |
| Will be set to `0` unless both `data_size` and `batch_size` | |
| are given. | |
| tqdm_class : optional | |
| `tqdm` class to use for bars [default: `tqdm.auto.tqdm`]. | |
| tqdm_kwargs : optional | |
| Any other arguments used for all bars. | |
| """ | |
| if tqdm_kwargs: | |
| tqdm_class = partial(tqdm_class, **tqdm_kwargs) | |
| self.tqdm_class = tqdm_class | |
| self.epoch_bar = tqdm_class(total=epochs, unit='epoch') | |
| self.on_epoch_end = self.bar2callback(self.epoch_bar) | |
| if data_size and batch_size: | |
| self.batches = batches = (data_size + batch_size - 1) // batch_size | |
| else: | |
| self.batches = batches = None | |
| self.verbose = verbose | |
| if verbose == 1: | |
| self.batch_bar = tqdm_class(total=batches, unit='batch', leave=False) | |
| self.on_batch_end = self.bar2callback( | |
| self.batch_bar, pop=['batch', 'size'], | |
| delta=lambda logs: logs.get('size', 1)) | |
| def on_train_begin(self, *_, **__): | |
| params = self.params.get | |
| auto_total = params('epochs', params('nb_epoch', None)) | |
| if auto_total is not None and auto_total != self.epoch_bar.total: | |
| self.epoch_bar.reset(total=auto_total) | |
| def on_epoch_begin(self, epoch, *_, **__): | |
| if self.epoch_bar.n < epoch: | |
| ebar = self.epoch_bar | |
| ebar.n = ebar.last_print_n = ebar.initial = epoch | |
| if self.verbose: | |
| params = self.params.get | |
| total = params('samples', params( | |
| 'nb_sample', params('steps', None))) or self.batches | |
| if self.verbose == 2: | |
| if hasattr(self, 'batch_bar'): | |
| self.batch_bar.close() | |
| self.batch_bar = self.tqdm_class( | |
| total=total, unit='batch', leave=True, | |
| unit_scale=1 / (params('batch_size', 1) or 1)) | |
| self.on_batch_end = self.bar2callback( | |
| self.batch_bar, pop=['batch', 'size'], | |
| delta=lambda logs: logs.get('size', 1)) | |
| elif self.verbose == 1: | |
| self.batch_bar.unit_scale = 1 / (params('batch_size', 1) or 1) | |
| self.batch_bar.reset(total=total) | |
| else: | |
| raise KeyError('Unknown verbosity') | |
| def on_train_end(self, *_, **__): | |
| if hasattr(self, 'batch_bar'): | |
| self.batch_bar.close() | |
| self.epoch_bar.close() | |
| def display(self): | |
| """Displays in the current cell in Notebooks.""" | |
| container = getattr(self.epoch_bar, 'container', None) | |
| if container is None: | |
| return | |
| from .notebook import display | |
| display(container) | |
| batch_bar = getattr(self, 'batch_bar', None) | |
| if batch_bar is not None: | |
| display(batch_bar.container) | |
| def _implements_train_batch_hooks(): | |
| return True | |
| def _implements_test_batch_hooks(): | |
| return True | |
| def _implements_predict_batch_hooks(): | |
| return True | |
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