""" Utilities for working with the local dataset cache. This file is adapted from the AllenNLP library at https://github.com/allenai/allennlp Copyright by the AllenNLP authors. """ import fnmatch import json import logging import os import shutil import sys import tarfile import tempfile from contextlib import contextmanager from functools import partial, wraps from hashlib import sha256 from pathlib import Path from typing import Dict, Optional, Union from urllib.parse import urlparse from zipfile import ZipFile, is_zipfile import requests from filelock import FileLock from tqdm.auto import tqdm #from . import __version__ __version__ = "3.0.2" logger = logging.getLogger(__name__) # pylint: disable=invalid-name try: USE_TF = os.environ.get("USE_TF", "AUTO").upper() USE_TORCH = os.environ.get("USE_TORCH", "AUTO").upper() if USE_TORCH in ("1", "ON", "YES", "AUTO") and USE_TF not in ("1", "ON", "YES"): import torch _torch_available = True # pylint: disable=invalid-name logger.info("PyTorch version {} available.".format(torch.__version__)) else: logger.info("Disabling PyTorch because USE_TF is set") _torch_available = False except ImportError: _torch_available = False # pylint: disable=invalid-name try: USE_TF = os.environ.get("USE_TF", "AUTO").upper() USE_TORCH = os.environ.get("USE_TORCH", "AUTO").upper() if USE_TF in ("1", "ON", "YES", "AUTO") and USE_TORCH not in ("1", "ON", "YES"): import tensorflow as tf assert hasattr(tf, "__version__") and int(tf.__version__[0]) >= 2 _tf_available = True # pylint: disable=invalid-name logger.info("TensorFlow version {} available.".format(tf.__version__)) else: logger.info("Disabling Tensorflow because USE_TORCH is set") _tf_available = False except (ImportError, AssertionError): _tf_available = False # pylint: disable=invalid-name try: from torch.hub import _get_torch_home torch_cache_home = _get_torch_home() except ImportError: torch_cache_home = os.path.expanduser( os.getenv("TORCH_HOME", os.path.join(os.getenv("XDG_CACHE_HOME", "~/.cache"), "torch")) ) try: import torch_xla.core.xla_model as xm # noqa: F401 if _torch_available: _torch_tpu_available = True # pylint: disable= else: _torch_tpu_available = False except ImportError: _torch_tpu_available = False try: import psutil # noqa: F401 _psutil_available = True except ImportError: _psutil_available = False try: import py3nvml # noqa: F401 _py3nvml_available = True except ImportError: _py3nvml_available = False try: from apex import amp # noqa: F401 _has_apex = True except ImportError: _has_apex = False default_cache_path = os.path.join(torch_cache_home, "transformers") PYTORCH_PRETRAINED_BERT_CACHE = os.getenv("PYTORCH_PRETRAINED_BERT_CACHE", default_cache_path) PYTORCH_TRANSFORMERS_CACHE = os.getenv("PYTORCH_TRANSFORMERS_CACHE", PYTORCH_PRETRAINED_BERT_CACHE) TRANSFORMERS_CACHE = os.getenv("TRANSFORMERS_CACHE", PYTORCH_TRANSFORMERS_CACHE) WEIGHTS_NAME = "pytorch_model.bin" TF2_WEIGHTS_NAME = "tf_model.h5" TF_WEIGHTS_NAME = "model.ckpt" CONFIG_NAME = "config.json" MODEL_CARD_NAME = "modelcard.json" MULTIPLE_CHOICE_DUMMY_INPUTS = [[[0], [1]], [[0], [1]]] DUMMY_INPUTS = [[7, 6, 0, 0, 1], [1, 2, 3, 0, 0], [0, 0, 0, 4, 5]] DUMMY_MASK = [[1, 1, 1, 1, 1], [1, 1, 1, 0, 0], [0, 0, 0, 1, 1]] S3_BUCKET_PREFIX = "https://s3.amazonaws.com/models.huggingface.co/bert" CLOUDFRONT_DISTRIB_PREFIX = "https://cdn.huggingface.co" def is_torch_available(): return _torch_available def is_tf_available(): return _tf_available def is_torch_tpu_available(): return _torch_tpu_available def is_psutil_available(): return _psutil_available def is_py3nvml_available(): return _py3nvml_available def is_apex_available(): return _has_apex def add_start_docstrings(*docstr): def docstring_decorator(fn): fn.__doc__ = "".join(docstr) + (fn.__doc__ if fn.__doc__ is not None else "") return fn return docstring_decorator def add_start_docstrings_to_callable(*docstr): def docstring_decorator(fn): class_name = ":class:`~transformers.{}`".format(fn.__qualname__.split(".")[0]) intro = " The {} forward method, overrides the :func:`__call__` special method.".format(class_name) note = r""" .. note:: Although the recipe for forward pass needs to be defined within this function, one should call the :class:`Module` instance afterwards instead of this since the former takes care of running the pre and post processing steps while the latter silently ignores them. """ fn.__doc__ = intro + note + "".join(docstr) + (fn.__doc__ if fn.__doc__ is not None else "") return fn return docstring_decorator def add_end_docstrings(*docstr): def docstring_decorator(fn): fn.__doc__ = fn.__doc__ + "".join(docstr) return fn return docstring_decorator PT_TOKEN_CLASSIFICATION_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import torch >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> inputs = tokenizer("Hello, my dog is cute", return_tensors="pt") >>> labels = torch.tensor([1] * inputs["input_ids"].size(1)).unsqueeze(0) # Batch size 1 >>> outputs = model(**inputs, labels=labels) >>> loss, scores = outputs[:2] """ PT_QUESTION_ANSWERING_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import torch >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> inputs = tokenizer("Hello, my dog is cute", return_tensors="pt") >>> start_positions = torch.tensor([1]) >>> end_positions = torch.tensor([3]) >>> outputs = model(**inputs, start_positions=start_positions, end_positions=end_positions) >>> loss, start_scores, end_scores = outputs[:3] """ PT_SEQUENCE_CLASSIFICATION_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import torch >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> inputs = tokenizer("Hello, my dog is cute", return_tensors="pt") >>> labels = torch.tensor([1]).unsqueeze(0) # Batch size 1 >>> outputs = model(**inputs, labels=labels) >>> loss, logits = outputs[:2] """ PT_MASKED_LM_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import torch >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> input_ids = tokenizer("Hello, my dog is cute", return_tensors="pt")["input_ids"] >>> outputs = model(input_ids, labels=input_ids) >>> loss, prediction_scores = outputs[:2] """ PT_BASE_MODEL_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import torch >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> inputs = tokenizer("Hello, my dog is cute", return_tensors="pt") >>> outputs = model(**inputs) >>> last_hidden_states = outputs[0] # The last hidden-state is the first element of the output tuple """ PT_MULTIPLE_CHOICE_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import torch >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> prompt = "In Italy, pizza served in formal settings, such as at a restaurant, is presented unsliced." >>> choice0 = "It is eaten with a fork and a knife." >>> choice1 = "It is eaten while held in the hand." >>> labels = torch.tensor(0).unsqueeze(0) # choice0 is correct (according to Wikipedia ;)), batch size 1 >>> encoding = tokenizer([[prompt, prompt], [choice0, choice1]], return_tensors='pt', padding=True) >>> outputs = model(**{{k: v.unsqueeze(0) for k,v in encoding.items()}}, labels=labels) # batch size is 1 >>> # the linear classifier still needs to be trained >>> loss, logits = outputs[:2] """ PT_CAUSAL_LM_SAMPLE = r""" Example:: >>> import torch >>> from transformers import {tokenizer_class}, {model_class} >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> inputs = tokenizer("Hello, my dog is cute", return_tensors="pt") >>> outputs = model(**inputs, labels=inputs["input_ids"]) >>> loss, logits = outputs[:2] """ TF_TOKEN_CLASSIFICATION_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import tensorflow as tf >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> inputs = tokenizer("Hello, my dog is cute", return_tensors="tf") >>> input_ids = inputs["input_ids"] >>> inputs["labels"] = tf.reshape(tf.constant([1] * tf.size(input_ids).numpy()), (-1, tf.size(input_ids))) # Batch size 1 >>> outputs = model(inputs) >>> loss, scores = outputs[:2] """ TF_QUESTION_ANSWERING_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import tensorflow as tf >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> question, text = "Who was Jim Henson?", "Jim Henson was a nice puppet" >>> input_dict = tokenizer(question, text, return_tensors='tf') >>> start_scores, end_scores = model(input_dict) >>> all_tokens = tokenizer.convert_ids_to_tokens(input_dict["input_ids"].numpy()[0]) >>> answer = ' '.join(all_tokens[tf.math.argmax(start_scores, 1)[0] : tf.math.argmax(end_scores, 1)[0]+1]) """ TF_SEQUENCE_CLASSIFICATION_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import tensorflow as tf >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> inputs = tokenizer("Hello, my dog is cute", return_tensors="tf") >>> inputs["labels"] = tf.reshape(tf.constant(1), (-1, 1)) # Batch size 1 >>> outputs = model(inputs) >>> loss, logits = outputs[:2] """ TF_MASKED_LM_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import tensorflow as tf >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> input_ids = tf.constant(tokenizer.encode("Hello, my dog is cute", add_special_tokens=True))[None, :] # Batch size 1 >>> outputs = model(input_ids) >>> prediction_scores = outputs[0] """ TF_BASE_MODEL_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import tensorflow as tf >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> inputs = tokenizer("Hello, my dog is cute", return_tensors="tf") >>> outputs = model(inputs) >>> last_hidden_states = outputs[0] # The last hidden-state is the first element of the output tuple """ TF_MULTIPLE_CHOICE_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import tensorflow as tf >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> prompt = "In Italy, pizza served in formal settings, such as at a restaurant, is presented unsliced." >>> choice0 = "It is eaten with a fork and a knife." >>> choice1 = "It is eaten while held in the hand." >>> encoding = tokenizer([[prompt, prompt], [choice0, choice1]], return_tensors='tf', padding=True) >>> inputs = {{k: tf.expand_dims(v, 0) for k, v in encoding.items()}} >>> outputs = model(inputs) # batch size is 1 >>> # the linear classifier still needs to be trained >>> logits = outputs[0] """ TF_CAUSAL_LM_SAMPLE = r""" Example:: >>> from transformers import {tokenizer_class}, {model_class} >>> import tensorflow as tf >>> tokenizer = {tokenizer_class}.from_pretrained('{checkpoint}') >>> model = {model_class}.from_pretrained('{checkpoint}') >>> inputs = tokenizer("Hello, my dog is cute", return_tensors="tf") >>> outputs = model(inputs) >>> logits = outputs[0] """ def add_code_sample_docstrings(*docstr, tokenizer_class=None, checkpoint=None): def docstring_decorator(fn): model_class = fn.__qualname__.split(".")[0] is_tf_class = model_class[:2] == "TF" if "SequenceClassification" in model_class: code_sample = TF_SEQUENCE_CLASSIFICATION_SAMPLE if is_tf_class else PT_SEQUENCE_CLASSIFICATION_SAMPLE elif "QuestionAnswering" in model_class: code_sample = TF_QUESTION_ANSWERING_SAMPLE if is_tf_class else PT_QUESTION_ANSWERING_SAMPLE elif "TokenClassification" in model_class: code_sample = TF_TOKEN_CLASSIFICATION_SAMPLE if is_tf_class else PT_TOKEN_CLASSIFICATION_SAMPLE elif "MultipleChoice" in model_class: code_sample = TF_MULTIPLE_CHOICE_SAMPLE if is_tf_class else PT_MULTIPLE_CHOICE_SAMPLE elif "MaskedLM" in model_class: code_sample = TF_MASKED_LM_SAMPLE if is_tf_class else PT_MASKED_LM_SAMPLE elif "LMHead" in model_class: code_sample = TF_CAUSAL_LM_SAMPLE if is_tf_class else PT_CAUSAL_LM_SAMPLE elif "Model" in model_class: code_sample = TF_BASE_MODEL_SAMPLE if is_tf_class else PT_BASE_MODEL_SAMPLE else: raise ValueError(f"Docstring can't be built for model {model_class}") built_doc = code_sample.format(model_class=model_class, tokenizer_class=tokenizer_class, checkpoint=checkpoint) fn.__doc__ = (fn.__doc__ or "") + "".join(docstr) + built_doc return fn return docstring_decorator def is_remote_url(url_or_filename): parsed = urlparse(url_or_filename) return parsed.scheme in ("http", "https") def hf_bucket_url(model_id: str, filename: str, use_cdn=True) -> str: """ Resolve a model identifier, and a file name, to a HF-hosted url on either S3 or Cloudfront (a Content Delivery Network, or CDN). Cloudfront is replicated over the globe so downloads are way faster for the end user (and it also lowers our bandwidth costs). However, it is more aggressively cached by default, so may not always reflect the latest changes to the underlying file (default TTL is 24 hours). In terms of client-side caching from this library, even though Cloudfront relays the ETags from S3, using one or the other (or switching from one to the other) will affect caching: cached files are not shared between the two because the cached file's name contains a hash of the url. """ endpoint = CLOUDFRONT_DISTRIB_PREFIX if use_cdn else S3_BUCKET_PREFIX legacy_format = "/" not in model_id if legacy_format: return f"{endpoint}/{model_id}-{filename}" else: return f"{endpoint}/{model_id}/{filename}" def url_to_filename(url, etag=None): """ Convert `url` into a hashed filename in a repeatable way. If `etag` is specified, append its hash to the url's, delimited by a period. If the url ends with .h5 (Keras HDF5 weights) adds '.h5' to the name so that TF 2.0 can identify it as a HDF5 file (see https://github.com/tensorflow/tensorflow/blob/00fad90125b18b80fe054de1055770cfb8fe4ba3/tensorflow/python/keras/engine/network.py#L1380) """ url_bytes = url.encode("utf-8") url_hash = sha256(url_bytes) filename = url_hash.hexdigest() if etag: etag_bytes = etag.encode("utf-8") etag_hash = sha256(etag_bytes) filename += "." + etag_hash.hexdigest() if url.endswith(".h5"): filename += ".h5" return filename def filename_to_url(filename, cache_dir=None): """ Return the url and etag (which may be ``None``) stored for `filename`. Raise ``EnvironmentError`` if `filename` or its stored metadata do not exist. """ if cache_dir is None: cache_dir = TRANSFORMERS_CACHE if isinstance(cache_dir, Path): cache_dir = str(cache_dir) cache_path = os.path.join(cache_dir, filename) if not os.path.exists(cache_path): raise EnvironmentError("file {} not found".format(cache_path)) meta_path = cache_path + ".json" if not os.path.exists(meta_path): raise EnvironmentError("file {} not found".format(meta_path)) with open(meta_path, encoding="utf-8") as meta_file: metadata = json.load(meta_file) url = metadata["url"] etag = metadata["etag"] return url, etag def cached_path( url_or_filename, cache_dir=None, force_download=False, proxies=None, resume_download=False, user_agent: Union[Dict, str, None] = None, extract_compressed_file=False, force_extract=False, local_files_only=False, ) -> Optional[str]: """ Given something that might be a URL (or might be a local path), determine which. If it's a URL, download the file and cache it, and return the path to the cached file. If it's already a local path, make sure the file exists and then return the path. Args: cache_dir: specify a cache directory to save the file to (overwrite the default cache dir). force_download: if True, re-dowload the file even if it's already cached in the cache dir. resume_download: if True, resume the download if incompletly recieved file is found. user_agent: Optional string or dict that will be appended to the user-agent on remote requests. extract_compressed_file: if True and the path point to a zip or tar file, extract the compressed file in a folder along the archive. force_extract: if True when extract_compressed_file is True and the archive was already extracted, re-extract the archive and overide the folder where it was extracted. Return: None in case of non-recoverable file (non-existent or inaccessible url + no cache on disk). Local path (string) otherwise """ if cache_dir is None: cache_dir = TRANSFORMERS_CACHE if isinstance(url_or_filename, Path): url_or_filename = str(url_or_filename) if isinstance(cache_dir, Path): cache_dir = str(cache_dir) if is_remote_url(url_or_filename): # URL, so get it from the cache (downloading if necessary) output_path = get_from_cache( url_or_filename, cache_dir=cache_dir, force_download=force_download, proxies=proxies, resume_download=resume_download, user_agent=user_agent, local_files_only=local_files_only, ) elif os.path.exists(url_or_filename): # File, and it exists. output_path = url_or_filename elif urlparse(url_or_filename).scheme == "": # File, but it doesn't exist. raise EnvironmentError("file {} not found".format(url_or_filename)) else: # Something unknown raise ValueError("unable to parse {} as a URL or as a local path".format(url_or_filename)) if extract_compressed_file: if not is_zipfile(output_path) and not tarfile.is_tarfile(output_path): return output_path # Path where we extract compressed archives # We avoid '.' in dir name and add "-extracted" at the end: "./model.zip" => "./model-zip-extracted/" output_dir, output_file = os.path.split(output_path) output_extract_dir_name = output_file.replace(".", "-") + "-extracted" output_path_extracted = os.path.join(output_dir, output_extract_dir_name) if os.path.isdir(output_path_extracted) and os.listdir(output_path_extracted) and not force_extract: return output_path_extracted # Prevent parallel extractions lock_path = output_path + ".lock" with FileLock(lock_path): shutil.rmtree(output_path_extracted, ignore_errors=True) os.makedirs(output_path_extracted) if is_zipfile(output_path): with ZipFile(output_path, "r") as zip_file: zip_file.extractall(output_path_extracted) zip_file.close() elif tarfile.is_tarfile(output_path): tar_file = tarfile.open(output_path) tar_file.extractall(output_path_extracted) tar_file.close() else: raise EnvironmentError("Archive format of {} could not be identified".format(output_path)) return output_path_extracted return output_path def http_get(url, temp_file, proxies=None, resume_size=0, user_agent: Union[Dict, str, None] = None): ua = "transformers/{}; python/{}".format(__version__, sys.version.split()[0]) if is_torch_available(): ua += "; torch/{}".format(torch.__version__) if is_tf_available(): ua += "; tensorflow/{}".format(tf.__version__) if isinstance(user_agent, dict): ua += "; " + "; ".join("{}/{}".format(k, v) for k, v in user_agent.items()) elif isinstance(user_agent, str): ua += "; " + user_agent headers = {"user-agent": ua} if resume_size > 0: headers["Range"] = "bytes=%d-" % (resume_size,) response = requests.get(url, stream=True, proxies=proxies, headers=headers) if response.status_code == 416: # Range not satisfiable return content_length = response.headers.get("Content-Length") total = resume_size + int(content_length) if content_length is not None else None progress = tqdm( unit="B", unit_scale=True, total=total, initial=resume_size, desc="Downloading", disable=bool(logger.getEffectiveLevel() == logging.NOTSET), ) for chunk in response.iter_content(chunk_size=1024): if chunk: # filter out keep-alive new chunks progress.update(len(chunk)) temp_file.write(chunk) progress.close() def get_from_cache( url, cache_dir=None, force_download=False, proxies=None, etag_timeout=10, resume_download=False, user_agent: Union[Dict, str, None] = None, local_files_only=False, ) -> Optional[str]: """ Given a URL, look for the corresponding file in the local cache. If it's not there, download it. Then return the path to the cached file. Return: None in case of non-recoverable file (non-existent or inaccessible url + no cache on disk). Local path (string) otherwise """ if cache_dir is None: cache_dir = TRANSFORMERS_CACHE if isinstance(cache_dir, Path): cache_dir = str(cache_dir) os.makedirs(cache_dir, exist_ok=True) etag = None if not local_files_only: try: response = requests.head(url, allow_redirects=True, proxies=proxies, timeout=etag_timeout) if response.status_code == 200: etag = response.headers.get("ETag") except (EnvironmentError, requests.exceptions.Timeout): # etag is already None pass filename = url_to_filename(url, etag) # get cache path to put the file cache_path = os.path.join(cache_dir, filename) # etag is None = we don't have a connection, or url doesn't exist, or is otherwise inaccessible. # try to get the last downloaded one if etag is None: if os.path.exists(cache_path): return cache_path else: matching_files = [ file for file in fnmatch.filter(os.listdir(cache_dir), filename + ".*") if not file.endswith(".json") and not file.endswith(".lock") ] if len(matching_files) > 0: return os.path.join(cache_dir, matching_files[-1]) else: # If files cannot be found and local_files_only=True, # the models might've been found if local_files_only=False # Notify the user about that if local_files_only: raise ValueError( "Cannot find the requested files in the cached path and outgoing traffic has been" " disabled. To enable model look-ups and downloads online, set 'local_files_only'" " to False." ) return None # From now on, etag is not None. if os.path.exists(cache_path) and not force_download: return cache_path # Prevent parallel downloads of the same file with a lock. lock_path = cache_path + ".lock" with FileLock(lock_path): # If the download just completed while the lock was activated. if os.path.exists(cache_path) and not force_download: # Even if returning early like here, the lock will be released. return cache_path if resume_download: incomplete_path = cache_path + ".incomplete" @contextmanager def _resumable_file_manager(): with open(incomplete_path, "a+b") as f: yield f temp_file_manager = _resumable_file_manager if os.path.exists(incomplete_path): resume_size = os.stat(incomplete_path).st_size else: resume_size = 0 else: temp_file_manager = partial(tempfile.NamedTemporaryFile, dir=cache_dir, delete=False) resume_size = 0 # Download to temporary file, then copy to cache dir once finished. # Otherwise you get corrupt cache entries if the download gets interrupted. with temp_file_manager() as temp_file: logger.info("%s not found in cache or force_download set to True, downloading to %s", url, temp_file.name) http_get(url, temp_file, proxies=proxies, resume_size=resume_size, user_agent=user_agent) logger.info("storing %s in cache at %s", url, cache_path) os.replace(temp_file.name, cache_path) logger.info("creating metadata file for %s", cache_path) meta = {"url": url, "etag": etag} meta_path = cache_path + ".json" with open(meta_path, "w") as meta_file: json.dump(meta, meta_file) return cache_path class cached_property(property): """ Descriptor that mimics @property but caches output in member variable. From tensorflow_datasets Built-in in functools from Python 3.8. """ def __get__(self, obj, objtype=None): # See docs.python.org/3/howto/descriptor.html#properties if obj is None: return self if self.fget is None: raise AttributeError("unreadable attribute") attr = "__cached_" + self.fget.__name__ cached = getattr(obj, attr, None) if cached is None: cached = self.fget(obj) setattr(obj, attr, cached) return cached def torch_required(func): # Chose a different decorator name than in tests so it's clear they are not the same. @wraps(func) def wrapper(*args, **kwargs): if is_torch_available(): return func(*args, **kwargs) else: raise ImportError(f"Method `{func.__name__}` requires PyTorch.") return wrapper def tf_required(func): # Chose a different decorator name than in tests so it's clear they are not the same. @wraps(func) def wrapper(*args, **kwargs): if is_tf_available(): return func(*args, **kwargs) else: raise ImportError(f"Method `{func.__name__}` requires TF.") return wrapper