# Copyright 2020 The HuggingFace Datasets Authors and the TensorFlow Datasets Authors. # # 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. # Lint as: python3 """DatasetBuilder base class.""" import abc import contextlib import copy import inspect import os import posixpath import shutil import textwrap import time import urllib from collections.abc import Iterable, Mapping from dataclasses import dataclass from functools import partial from pathlib import Path from typing import TYPE_CHECKING, Optional, Union from unittest.mock import patch import fsspec from fsspec.core import url_to_fs from multiprocess import Pool from tqdm.contrib.concurrent import thread_map from . import config, utils from .arrow_dataset import Dataset from .arrow_reader import ( ArrowReader, ReadInstruction, ) from .arrow_writer import ArrowWriter, ParquetWriter, SchemaInferenceError from .data_files import DataFilesDict, DataFilesPatternsDict, sanitize_patterns from .dataset_dict import DatasetDict, IterableDatasetDict from .download.download_config import DownloadConfig from .download.download_manager import DownloadManager, DownloadMode from .download.streaming_download_manager import StreamingDownloadManager, xjoin from .exceptions import DatasetGenerationCastError, DatasetGenerationError, FileFormatError, ManualDownloadError from .features import Features from .filesystems import ( is_remote_filesystem, rename, ) from .fingerprint import Hasher from .info import DatasetInfo, DatasetInfosDict, PostProcessedInfo from .iterable_dataset import ArrowExamplesIterable, ExamplesIterable, IterableDataset from .keyhash import DuplicatedKeysError from .naming import INVALID_WINDOWS_CHARACTERS_IN_PATH, camelcase_to_snakecase from .splits import Split, SplitDict, SplitGenerator, SplitInfo from .streaming import extend_dataset_builder_for_streaming from .table import CastError from .utils import logging from .utils import tqdm as hf_tqdm from .utils._filelock import FileLock from .utils.file_utils import is_remote_url from .utils.info_utils import VerificationMode, get_size_checksum_dict, verify_checksums, verify_splits from .utils.py_utils import ( classproperty, convert_file_size_to_int, has_sufficient_disk_space, iflatmap_unordered, map_nested, memoize, size_str, temporary_assignment, ) from .utils.sharding import _number_of_shards_in_gen_kwargs, _split_gen_kwargs from .utils.track import tracked_list if TYPE_CHECKING: from .load import DatasetModule logger = logging.get_logger(__name__) class InvalidConfigName(ValueError): pass @dataclass class BuilderConfig: """Base class for `DatasetBuilder` data configuration. `DatasetBuilder` subclasses with data configuration options should subclass `BuilderConfig` and add their own properties. Attributes: name (`str`, defaults to `default`): The name of the configuration. version (`Version` or `str`, defaults to `0.0.0`): The version of the configuration. data_dir (`str`, *optional*): Path to the directory containing the source data. data_files (`str` or `Sequence` or `Mapping`, *optional*): Path(s) to source data file(s). description (`str`, *optional*): A human description of the configuration. """ name: str = "default" version: Optional[Union[utils.Version, str]] = utils.Version("0.0.0") data_dir: Optional[str] = None data_files: Optional[Union[DataFilesDict, DataFilesPatternsDict]] = None description: Optional[str] = None def __post_init__(self): # The config name is used to name the cache directory. for invalid_char in INVALID_WINDOWS_CHARACTERS_IN_PATH: if invalid_char in self.name: raise InvalidConfigName( f"Bad characters from black list '{INVALID_WINDOWS_CHARACTERS_IN_PATH}' found in '{self.name}'. " f"They could create issues when creating a directory for this config on Windows filesystem." ) if self.data_files is not None and not isinstance(self.data_files, (DataFilesDict, DataFilesPatternsDict)): raise ValueError(f"Expected a DataFilesDict in data_files but got {self.data_files}") def __eq__(self, o): # we need to override the default dataclass __eq__ since it doesn't check for # other attributes that the ones of the signature. if set(self.__dict__.keys()) != set(o.__dict__.keys()): return False return all((k, getattr(self, k)) == (k, getattr(o, k)) for k in self.__dict__.keys()) def create_config_id( self, config_kwargs: dict, custom_features: Optional[Features] = None, ) -> str: """ The config id is used to build the cache directory. By default it is equal to the config name. However the name of a config is not sufficient to have a unique identifier for the dataset being generated since it doesn't take into account: - the config kwargs that can be used to overwrite attributes - the custom features used to write the dataset - the data_files for json/text/csv/pandas datasets Therefore the config id is just the config name with an optional suffix based on these. """ # Possibly add a suffix to the name to handle custom features/data_files/config_kwargs suffix: Optional[str] = None config_kwargs_to_add_to_suffix = config_kwargs.copy() # name and version are already used to build the cache directory config_kwargs_to_add_to_suffix.pop("name", None) config_kwargs_to_add_to_suffix.pop("version", None) # data dir handling (when specified it points to the manually downloaded data): # it was previously ignored before the introduction of config id because we didn't want # to change the config name. Now it's fine to take it into account for the config id. # config_kwargs_to_add_to_suffix.pop("data_dir", None) if "data_dir" in config_kwargs_to_add_to_suffix: if config_kwargs_to_add_to_suffix["data_dir"] is None: config_kwargs_to_add_to_suffix.pop("data_dir", None) else: # canonicalize the data dir to avoid two paths to the same location having different # hashes data_dir = config_kwargs_to_add_to_suffix["data_dir"] data_dir = os.path.normpath(data_dir) config_kwargs_to_add_to_suffix["data_dir"] = data_dir if config_kwargs_to_add_to_suffix: # we don't care about the order of the kwargs config_kwargs_to_add_to_suffix = { k: config_kwargs_to_add_to_suffix[k] for k in sorted(config_kwargs_to_add_to_suffix) } if all(isinstance(v, (str, bool, int, float)) for v in config_kwargs_to_add_to_suffix.values()): suffix = ",".join( str(k) + "=" + urllib.parse.quote_plus(str(v)) for k, v in config_kwargs_to_add_to_suffix.items() ) if len(suffix) > 32: # hash if too long suffix = Hasher.hash(config_kwargs_to_add_to_suffix) else: suffix = Hasher.hash(config_kwargs_to_add_to_suffix) if custom_features is not None: m = Hasher() if suffix: m.update(suffix) m.update(custom_features) suffix = m.hexdigest() if suffix: config_id = self.name + "-" + suffix if len(config_id) > config.MAX_DATASET_CONFIG_ID_READABLE_LENGTH: config_id = self.name + "-" + Hasher.hash(suffix) return config_id else: return self.name def _resolve_data_files(self, base_path: str, download_config: DownloadConfig) -> None: if isinstance(self.data_files, DataFilesPatternsDict): base_path = xjoin(base_path, self.data_dir) if self.data_dir else base_path self.data_files = self.data_files.resolve(base_path, download_config) class DatasetBuilder: """Abstract base class for all datasets. `DatasetBuilder` has 3 key methods: - [`DatasetBuilder.info`]: Documents the dataset, including feature names, types, shapes, version, splits, citation, etc. - [`DatasetBuilder.download_and_prepare`]: Downloads the source data and writes it to disk. - [`DatasetBuilder.as_dataset`]: Generates a [`Dataset`]. Some `DatasetBuilder`s expose multiple variants of the dataset by defining a [`BuilderConfig`] subclass and accepting a config object (or name) on construction. Configurable datasets expose a pre-defined set of configurations in [`DatasetBuilder.builder_configs`]. Args: cache_dir (`str`, *optional*): Directory to cache data. Defaults to `"~/.cache/huggingface/datasets"`. dataset_name (`str`, *optional*): Name of the dataset, if different from the builder name. Useful for packaged builders like csv, imagefolder, audiofolder, etc. to reflect the difference between datasets that use the same packaged builder. config_name (`str`, *optional*): Name of the dataset configuration. It affects the data generated on disk. Different configurations will have their own subdirectories and versions. If not provided, the default configuration is used (if it exists). Parameter `name` was renamed to `config_name`. hash (`str`, *optional*): Hash specific to the dataset code. Used to update the caching directory when the dataset loading script code is updated (to avoid reusing old data). The typical caching directory (defined in `self._relative_data_dir`) is `name/version/hash/`. base_path (`str`, *optional*): Base path for relative paths that are used to download files. This can be a remote URL. features ([`Features`], *optional*): Features types to use with this dataset. It can be used to change the [`Features`] types of a dataset, for example. token (`str` or `bool`, *optional*): String or boolean to use as Bearer token for remote files on the Datasets Hub. If `True`, will get token from `"~/.huggingface"`. repo_id (`str`, *optional*): ID of the dataset repository. Used to distinguish builders with the same name but not coming from the same namespace, for example "rajpurkar/squad" and "lhoestq/squad" repo IDs. In the latter, the builder name would be "lhoestq___squad". data_files (`str` or `Sequence` or `Mapping`, *optional*): Path(s) to source data file(s). For builders like "csv" or "json" that need the user to specify data files. They can be either local or remote files. For convenience, you can use a `DataFilesDict`. data_dir (`str`, *optional*): Path to directory containing source data file(s). Use only if `data_files` is not passed, in which case it is equivalent to passing `os.path.join(data_dir, "**")` as `data_files`. For builders that require manual download, it must be the path to the local directory containing the manually downloaded data. storage_options (`dict`, *optional*): Key/value pairs to be passed on to the dataset file-system backend, if any. writer_batch_size (`int`, *optional*): Batch size used by the ArrowWriter. It defines the number of samples that are kept in memory before writing them and also the length of the arrow chunks. None means that the ArrowWriter will use its default value. **config_kwargs (additional keyword arguments): Keyword arguments to be passed to the corresponding builder configuration class, set on the class attribute [`DatasetBuilder.BUILDER_CONFIG_CLASS`]. The builder configuration class is [`BuilderConfig`] or a subclass of it. """ # Default version VERSION = None # Default version set in BuilderConfig # Class for the builder config. BUILDER_CONFIG_CLASS = BuilderConfig # Named configurations that modify the data generated by download_and_prepare. BUILDER_CONFIGS = [] # Optional default config name to be used when name is None DEFAULT_CONFIG_NAME = None # Default batch size used by the ArrowWriter # It defines the number of samples that are kept in memory before writing them # and also the length of the arrow chunks # None means that the ArrowWriter will use its default value DEFAULT_WRITER_BATCH_SIZE = None def __init__( self, cache_dir: Optional[str] = None, dataset_name: Optional[str] = None, config_name: Optional[str] = None, hash: Optional[str] = None, base_path: Optional[str] = None, info: Optional[DatasetInfo] = None, features: Optional[Features] = None, token: Optional[Union[bool, str]] = None, repo_id: Optional[str] = None, data_files: Optional[Union[str, list, dict, DataFilesDict]] = None, data_dir: Optional[str] = None, storage_options: Optional[dict] = None, writer_batch_size: Optional[int] = None, **config_kwargs, ): # DatasetBuilder name self.name: str = camelcase_to_snakecase(self.__module__.split(".")[-1]) self.hash: Optional[str] = hash self.base_path = base_path self.token = token self.repo_id = repo_id self.storage_options = storage_options or {} self.dataset_name = camelcase_to_snakecase(dataset_name) if dataset_name else self.name self._writer_batch_size = writer_batch_size or self.DEFAULT_WRITER_BATCH_SIZE if data_files is not None and not isinstance(data_files, DataFilesDict): data_files = DataFilesDict.from_patterns( sanitize_patterns(data_files), base_path=base_path, download_config=DownloadConfig(token=token, storage_options=self.storage_options), ) # Prepare config: DatasetConfig contains name, version and description but can be extended by each dataset if "features" in inspect.signature(self.BUILDER_CONFIG_CLASS.__init__).parameters and features is not None: config_kwargs["features"] = features if data_files is not None: config_kwargs["data_files"] = data_files if data_dir is not None: config_kwargs["data_dir"] = data_dir self.config_kwargs = config_kwargs self.config, self.config_id = self._create_builder_config( config_name=config_name, custom_features=features, **config_kwargs, ) # prepare info: DatasetInfo are a standardized dataclass across all datasets # Prefill datasetinfo if info is None: # TODO FOR PACKAGED MODULES IT IMPORTS DATA FROM src/packaged_modules which doesn't make sense info = self.get_exported_dataset_info() info.update(self._info()) info.builder_name = self.name info.dataset_name = self.dataset_name info.config_name = self.config.name info.version = self.config.version self.info = info # update info with user specified infos if features is not None: self.info.features = features # Prepare data dirs: # cache_dir can be a remote bucket on GCS or S3 self._cache_dir_root = str(cache_dir or config.HF_DATASETS_CACHE) self._cache_dir_root = ( self._cache_dir_root if is_remote_url(self._cache_dir_root) else os.path.expanduser(self._cache_dir_root) ) self._cache_downloaded_dir = ( posixpath.join(self._cache_dir_root, config.DOWNLOADED_DATASETS_DIR) if cache_dir else str(config.DOWNLOADED_DATASETS_PATH) ) self._cache_downloaded_dir = ( self._cache_downloaded_dir if is_remote_url(self._cache_downloaded_dir) else os.path.expanduser(self._cache_downloaded_dir) ) # In case there exists a legacy cache directory self._legacy_relative_data_dir = None self._cache_dir = self._build_cache_dir() if not is_remote_url(self._cache_dir_root): os.makedirs(self._cache_dir_root, exist_ok=True) lock_path = os.path.join( self._cache_dir_root, Path(self._cache_dir).as_posix().replace("/", "_") + ".lock" ) with FileLock(lock_path): if os.path.exists(self._cache_dir): # check if data exist if len(os.listdir(self._cache_dir)) > 0: if os.path.exists(os.path.join(self._cache_dir, config.DATASET_INFO_FILENAME)): logger.info("Overwrite dataset info from restored data version if exists.") self.info = DatasetInfo.from_directory(self._cache_dir) else: # dir exists but no data, remove the empty dir as data aren't available anymore logger.warning( f"Old caching folder {self._cache_dir} for dataset {self.dataset_name} exists but no data were found. Removing it. " ) os.rmdir(self._cache_dir) # Store in the cache by default unless the user specifies a custom output_dir to download_and_prepare self._output_dir = self._cache_dir self._fs: fsspec.AbstractFileSystem = fsspec.filesystem("file") # Set download manager self.dl_manager = None # Set to True by "datasets-cli test" to generate file checksums for (deprecated) dataset_infos.json independently of verification_mode value. self._record_infos = False # Set in `.download_and_prepare` once the format of the generated dataset is known self._file_format = None # Enable streaming (e.g. it patches "open" to work with remote files) extend_dataset_builder_for_streaming(self) def __getstate__(self): return self.__dict__ def __setstate__(self, d): self.__dict__ = d # Re-enable streaming, since patched functions are not kept when pickling extend_dataset_builder_for_streaming(self) # Must be set for datasets that use 'data_dir' functionality - the ones # that require users to do additional steps to download the data # (this is usually due to some external regulations / rules). # This field should contain a string with user instructions, including # the list of files that should be present. It will be # displayed in the dataset documentation. @property def manual_download_instructions(self) -> Optional[str]: return None def _check_legacy_cache(self) -> Optional[str]: """Check for the old cache directory template {cache_dir}/{namespace}___{builder_name} from 2.13""" if ( self.__module__.startswith("datasets.") and not is_remote_url(self._cache_dir_root) and self.config.name == "default" ): from .packaged_modules import _PACKAGED_DATASETS_MODULES namespace = self.repo_id.split("/")[0] if self.repo_id and self.repo_id.count("/") > 0 else None config_name = self.repo_id.replace("/", "--") if self.repo_id is not None else self.dataset_name config_id = config_name + self.config_id[len(self.config.name) :] hash = _PACKAGED_DATASETS_MODULES.get(self.name, "missing")[1] legacy_relative_data_dir = posixpath.join( self.dataset_name if namespace is None else f"{namespace}___{self.dataset_name}", config_id, "0.0.0", hash, ) legacy_cache_dir = posixpath.join(self._cache_dir_root, legacy_relative_data_dir) if os.path.isdir(legacy_cache_dir): return legacy_relative_data_dir def _check_legacy_cache2(self, dataset_module: "DatasetModule") -> Optional[str]: """Check for the old cache directory template {cache_dir}/{namespace}___{dataset_name}/{config_name}-xxx from 2.14 and 2.15""" if ( self.__module__.startswith("datasets.") and not is_remote_url(self._cache_dir_root) and not (set(self.config_kwargs) - {"data_files", "data_dir"}) ): from .packaged_modules import _PACKAGED_DATASETS_MODULES_2_15_HASHES from .utils._dill import Pickler def update_hash_with_config_parameters(hash: str, config_parameters: dict) -> str: """ Used to update hash of packaged modules which is used for creating unique cache directories to reflect different config parameters which are passed in metadata from readme. """ params_to_exclude = {"config_name", "version", "description"} params_to_add_to_hash = { param: value for param, value in sorted(config_parameters.items()) if param not in params_to_exclude } m = Hasher() m.update(hash) m.update(params_to_add_to_hash) return m.hexdigest() namespace = self.repo_id.split("/")[0] if self.repo_id and self.repo_id.count("/") > 0 else None with patch.object(Pickler, "_legacy_no_dict_keys_sorting", True): config_id = self.config.name + "-" + Hasher.hash({"data_files": self.config.data_files}) hash = _PACKAGED_DATASETS_MODULES_2_15_HASHES.get(self.name, "missing") if ( dataset_module.builder_configs_parameters.metadata_configs and self.config.name in dataset_module.builder_configs_parameters.metadata_configs ): hash = update_hash_with_config_parameters( hash, dataset_module.builder_configs_parameters.metadata_configs[self.config.name] ) legacy_relative_data_dir = posixpath.join( self.dataset_name if namespace is None else f"{namespace}___{self.dataset_name}", config_id, "0.0.0", hash, ) legacy_cache_dir = posixpath.join(self._cache_dir_root, legacy_relative_data_dir) if os.path.isdir(legacy_cache_dir): return legacy_relative_data_dir @classmethod def get_all_exported_dataset_infos(cls) -> DatasetInfosDict: """Empty dict if doesn't exist Example: ```py >>> from datasets import load_dataset_builder >>> ds_builder = load_dataset_builder('vivos') >>> ds_builder.get_all_exported_dataset_infos() {'default': DatasetInfo(description='', citation='', homepage='', license='', features={'speaker_id': Value(dtype='string', id=None), 'path': Value(dtype='string', id=None), 'audio': Audio(sampling_rate=16000, mono=True, decode=True, id=None), 'sentence': Value(dtype='string', id=None)}, post_processed=None, supervised_keys=None, builder_name=None, dataset_name=None, config_name='default', version=None, splits={'train': SplitInfo(name='train', num_bytes=1722002133, num_examples=11660, shard_lengths=None, dataset_name=None), 'test': SplitInfo(name='test', num_bytes=86120227, num_examples=760, shard_lengths=None, dataset_name=None)}, download_checksums=None, download_size=1475540500, post_processing_size=None, dataset_size=1808122360, size_in_bytes=None)} ``` """ return DatasetInfosDict.from_directory(cls.get_imported_module_dir()) def get_exported_dataset_info(self) -> DatasetInfo: """Empty `DatasetInfo` if doesn't exist Example: ```py >>> from datasets import load_dataset_builder >>> ds_builder = load_dataset_builder('cornell-movie-review-data/rotten_tomatoes') >>> ds_builder.get_exported_dataset_info() DatasetInfo(description='', citation='', homepage='', license='', features={'speaker_id': Value(dtype='string', id=None), 'path': Value(dtype='string', id=None), 'audio': Audio(sampling_rate=16000, mono=True, decode=True, id=None), 'sentence': Value(dtype='string', id=None)}, post_processed=None, supervised_keys=None, builder_name=None, dataset_name=None, config_name='default', version=None, splits={'train': SplitInfo(name='train', num_bytes=1722002133, num_examples=11660, shard_lengths=None, dataset_name=None), 'test': SplitInfo(name='test', num_bytes=86120227, num_examples=760, shard_lengths=None, dataset_name=None)}, download_checksums=None, download_size=1475540500, post_processing_size=None, dataset_size=1808122360, size_in_bytes=None) ``` """ return self.get_all_exported_dataset_infos().get(self.config.name, DatasetInfo()) def _create_builder_config( self, config_name=None, custom_features=None, **config_kwargs ) -> tuple[BuilderConfig, str]: """Create and validate BuilderConfig object as well as a unique config id for this config. Raises ValueError if there are multiple builder configs and config_name and DEFAULT_CONFIG_NAME are None. config_kwargs override the defaults kwargs in config """ builder_config = None # try default config if config_name is None and self.BUILDER_CONFIGS: if self.DEFAULT_CONFIG_NAME is not None: builder_config = self.builder_configs.get(self.DEFAULT_CONFIG_NAME) logger.info(f"No config specified, defaulting to: {self.dataset_name}/{builder_config.name}") else: if len(self.BUILDER_CONFIGS) > 1: if not config_kwargs: example_of_usage = ( f"load_dataset('{self.repo_id or self.dataset_name}', '{self.BUILDER_CONFIGS[0].name}')" ) raise ValueError( "Config name is missing." f"\nPlease pick one among the available configs: {list(self.builder_configs.keys())}" + f"\nExample of usage:\n\t`{example_of_usage}`" ) else: builder_config = self.BUILDER_CONFIGS[0] logger.info( f"No config specified, defaulting to the single config: {self.dataset_name}/{builder_config.name}" ) # try to get config by name if isinstance(config_name, str): builder_config = self.builder_configs.get(config_name) if builder_config is None and self.BUILDER_CONFIGS: raise ValueError( f"BuilderConfig '{config_name}' not found. Available: {list(self.builder_configs.keys())}" ) # if not using an existing config, then create a new config on the fly if not builder_config: if config_name is not None: config_kwargs["name"] = config_name elif self.DEFAULT_CONFIG_NAME and not config_kwargs: # Use DEFAULT_CONFIG_NAME only if no config_kwargs are passed config_kwargs["name"] = self.DEFAULT_CONFIG_NAME if "version" not in config_kwargs and hasattr(self, "VERSION") and self.VERSION: config_kwargs["version"] = self.VERSION builder_config = self.BUILDER_CONFIG_CLASS(**config_kwargs) # otherwise use the config_kwargs to overwrite the attributes else: builder_config = copy.deepcopy(builder_config) if config_kwargs else builder_config for key, value in config_kwargs.items(): if value is not None: if not hasattr(builder_config, key): raise ValueError(f"BuilderConfig {builder_config} doesn't have a '{key}' key.") setattr(builder_config, key, value) if not builder_config.name: raise ValueError(f"BuilderConfig must have a name, got {builder_config.name}") # resolve data files if needed builder_config._resolve_data_files( base_path=self.base_path, download_config=DownloadConfig(token=self.token, storage_options=self.storage_options), ) # compute the config id that is going to be used for caching config_id = builder_config.create_config_id( config_kwargs, custom_features=custom_features, ) is_custom = (config_id not in self.builder_configs) and config_id != "default" if is_custom: logger.info(f"Using custom data configuration {config_id}") else: if ( builder_config.name in self.builder_configs and builder_config != self.builder_configs[builder_config.name] ): raise ValueError( "Cannot name a custom BuilderConfig the same as an available " f"BuilderConfig. Change the name. Available BuilderConfigs: {list(self.builder_configs.keys())}" ) if not builder_config.version: raise ValueError(f"BuilderConfig {builder_config.name} must have a version") return builder_config, config_id @classproperty @classmethod @memoize() def builder_configs(cls) -> dict[str, BuilderConfig]: """Dictionary of pre-defined configurations for this builder class.""" configs = {config.name: config for config in cls.BUILDER_CONFIGS} if len(configs) != len(cls.BUILDER_CONFIGS): names = [config.name for config in cls.BUILDER_CONFIGS] raise ValueError(f"Names in BUILDER_CONFIGS must not be duplicated. Got {names}") return configs @property def cache_dir(self): return self._cache_dir def _use_legacy_cache_dir_if_possible(self, dataset_module: "DatasetModule"): # Check for the legacy cache directory template (datasets<3.0.0) self._legacy_relative_data_dir = ( self._check_legacy_cache2(dataset_module) or self._check_legacy_cache() or None ) self._cache_dir = self._build_cache_dir() self._output_dir = self._cache_dir def _relative_data_dir(self, with_version=True, with_hash=True) -> str: """Relative path of this dataset in cache_dir: Will be: self.dataset_name/self.config.version/self.hash/ or if a repo_id with a namespace has been specified: self.namespace___self.dataset_name/self.config.version/self.hash/ If any of these element is missing or if ``with_version=False`` the corresponding subfolders are dropped. """ if self._legacy_relative_data_dir is not None and with_version and with_hash: return self._legacy_relative_data_dir namespace = self.repo_id.split("/")[0] if self.repo_id and self.repo_id.count("/") > 0 else None builder_data_dir = self.dataset_name if namespace is None else f"{namespace}___{self.dataset_name}" builder_data_dir = posixpath.join(builder_data_dir, self.config_id) if with_version: builder_data_dir = posixpath.join(builder_data_dir, str(self.config.version)) if with_hash and self.hash and isinstance(self.hash, str): builder_data_dir = posixpath.join(builder_data_dir, self.hash) return builder_data_dir def _build_cache_dir(self): """Return the data directory for the current version.""" builder_data_dir = posixpath.join(self._cache_dir_root, self._relative_data_dir(with_version=False)) version_data_dir = posixpath.join(self._cache_dir_root, self._relative_data_dir(with_version=True)) def _other_versions_on_disk(): """Returns previous versions on disk.""" if not os.path.exists(builder_data_dir): return [] version_dirnames = [] for dir_name in os.listdir(builder_data_dir): try: version_dirnames.append((utils.Version(dir_name), dir_name)) except ValueError: # Invalid version (ex: incomplete data dir) pass version_dirnames.sort(reverse=True) return version_dirnames # Check and warn if other versions exist if not is_remote_url(builder_data_dir): version_dirs = _other_versions_on_disk() if version_dirs: other_version = version_dirs[0][0] if other_version != self.config.version: warn_msg = ( f"Found a different version {str(other_version)} of dataset {self.dataset_name} in " f"cache_dir {self._cache_dir_root}. Using currently defined version " f"{str(self.config.version)}." ) logger.warning(warn_msg) return version_data_dir @abc.abstractmethod def _info(self) -> DatasetInfo: """Construct the DatasetInfo object. See `DatasetInfo` for details. Warning: This function is only called once and the result is cached for all following .info() calls. Returns: info: (DatasetInfo) The dataset information """ raise NotImplementedError @classmethod def get_imported_module_dir(cls): """Return the path of the module of this class or subclass.""" return os.path.dirname(inspect.getfile(inspect.getmodule(cls))) def _rename(self, src: str, dst: str): rename(self._fs, src, dst) def download_and_prepare( self, output_dir: Optional[str] = None, download_config: Optional[DownloadConfig] = None, download_mode: Optional[Union[DownloadMode, str]] = None, verification_mode: Optional[Union[VerificationMode, str]] = None, dl_manager: Optional[DownloadManager] = None, base_path: Optional[str] = None, file_format: str = "arrow", max_shard_size: Optional[Union[int, str]] = None, num_proc: Optional[int] = None, storage_options: Optional[dict] = None, **download_and_prepare_kwargs, ): """Downloads and prepares dataset for reading. Args: output_dir (`str`, *optional*): Output directory for the dataset. Default to this builder's `cache_dir`, which is inside `~/.cache/huggingface/datasets` by default. download_config (`DownloadConfig`, *optional*): Specific download configuration parameters. download_mode ([`DownloadMode`] or `str`, *optional*): Select the download/generate mode, default to `REUSE_DATASET_IF_EXISTS`. verification_mode ([`VerificationMode`] or `str`, defaults to `BASIC_CHECKS`): Verification mode determining the checks to run on the downloaded/processed dataset information (checksums/size/splits/...). dl_manager (`DownloadManager`, *optional*): Specific `DownloadManger` to use. base_path (`str`, *optional*): Base path for relative paths that are used to download files. This can be a remote url. If not specified, the value of the `base_path` attribute (`self.base_path`) will be used instead. file_format (`str`, *optional*): Format of the data files in which the dataset will be written. Supported formats: "arrow", "parquet". Default to "arrow" format. If the format is "parquet", then image and audio data are embedded into the Parquet files instead of pointing to local files. max_shard_size (`Union[str, int]`, *optional*): Maximum number of bytes written per shard, default is "500MB". The size is based on uncompressed data size, so in practice your shard files may be smaller than `max_shard_size` thanks to Parquet compression for example. num_proc (`int`, *optional*, defaults to `None`): Number of processes when downloading and generating the dataset locally. Multiprocessing is disabled by default. storage_options (`dict`, *optional*): Key/value pairs to be passed on to the caching file-system backend, if any. **download_and_prepare_kwargs (additional keyword arguments): Keyword arguments. Example: Download and prepare the dataset as Arrow files that can be loaded as a Dataset using `builder.as_dataset()`: ```py >>> from datasets import load_dataset_builder >>> builder = load_dataset_builder("cornell-movie-review-data/rotten_tomatoes") >>> builder.download_and_prepare() ``` Download and prepare the dataset as sharded Parquet files locally: ```py >>> from datasets import load_dataset_builder >>> builder = load_dataset_builder("cornell-movie-review-data/rotten_tomatoes") >>> builder.download_and_prepare("./output_dir", file_format="parquet") ``` Download and prepare the dataset as sharded Parquet files in a cloud storage: ```py >>> from datasets import load_dataset_builder >>> storage_options = {"key": aws_access_key_id, "secret": aws_secret_access_key} >>> builder = load_dataset_builder("cornell-movie-review-data/rotten_tomatoes") >>> builder.download_and_prepare("s3://my-bucket/my_rotten_tomatoes", storage_options=storage_options, file_format="parquet") ``` """ output_dir = output_dir if output_dir is not None else self._cache_dir # output_dir can be a remote bucket on GCS or S3 fs, output_dir = url_to_fs(output_dir, **(storage_options or {})) self._fs = fs self._output_dir = output_dir if not is_remote_filesystem(self._fs) else self._fs.unstrip_protocol(output_dir) download_mode = DownloadMode(download_mode or DownloadMode.REUSE_DATASET_IF_EXISTS) verification_mode = VerificationMode(verification_mode or VerificationMode.BASIC_CHECKS) base_path = base_path if base_path is not None else self.base_path if file_format is not None and file_format not in ["arrow", "parquet"]: raise ValueError(f"Unsupported file_format: {file_format}. Expected 'arrow' or 'parquet'") self._file_format = file_format if self._fs._strip_protocol(self._output_dir) == "": # We don't support the root directory, because it has no dirname, # and we need a dirname to use a .incomplete directory # when the dataset is being written raise RuntimeError( f"Unable to download and prepare the dataset at the root {self._output_dir}. " f"Please specify a subdirectory, e.g. '{self._output_dir + self.dataset_name}'" ) if dl_manager is None: if download_config is None: download_config = DownloadConfig( cache_dir=self._cache_downloaded_dir, force_download=download_mode == DownloadMode.FORCE_REDOWNLOAD, force_extract=download_mode == DownloadMode.FORCE_REDOWNLOAD, use_etag=False, num_proc=num_proc, token=self.token, storage_options=self.storage_options, ) # We don't use etag for data files to speed up the process dl_manager = DownloadManager( dataset_name=self.dataset_name, download_config=download_config, data_dir=self.config.data_dir, base_path=base_path, record_checksums=(self._record_infos or verification_mode == VerificationMode.ALL_CHECKS), ) is_local = not is_remote_filesystem(self._fs) self.dl_manager = dl_manager # Prevent parallel local disk operations if is_local: # Create parent directory of the output_dir to put the lock file in there Path(self._output_dir).parent.mkdir(parents=True, exist_ok=True) lock_path = self._output_dir + "_builder.lock" # File locking only with local paths; no file locking on GCS or S3 with FileLock(lock_path) if is_local else contextlib.nullcontext(): # Check if the data already exists data_exists = self._fs.exists(posixpath.join(self._output_dir, config.DATASET_INFO_FILENAME)) if data_exists and download_mode == DownloadMode.REUSE_DATASET_IF_EXISTS: logger.info(f"Found cached dataset {self.dataset_name} ({self._output_dir})") # We need to update the info in case some splits were added in the meantime # for example when calling load_dataset from multiple workers. self.info = self._load_info() self.download_post_processing_resources(dl_manager) return logger.info(f"Generating dataset {self.dataset_name} ({self._output_dir})") if is_local: # if cache dir is local, check for available space if not has_sufficient_disk_space( self.info.size_in_bytes or 0, directory=Path(self._output_dir).parent ): raise OSError( f"Not enough disk space. Needed: {size_str(self.info.size_in_bytes or 0)} (download: {size_str(self.info.download_size or 0)}, generated: {size_str(self.info.dataset_size or 0)}, post-processed: {size_str(self.info.post_processing_size or 0)})" ) @contextlib.contextmanager def incomplete_dir(dirname): """Create temporary dir for dirname and rename on exit.""" if not is_local: self._fs.makedirs(dirname, exist_ok=True) yield dirname else: tmp_dir = dirname + ".incomplete" os.makedirs(tmp_dir, exist_ok=True) try: yield tmp_dir if os.path.isdir(dirname): shutil.rmtree(dirname) # LocalFileSystem.mv does copy + rm, it is more efficient to simply rename a local directory shutil.move(tmp_dir, dirname) finally: if os.path.exists(tmp_dir): shutil.rmtree(tmp_dir) # Print is intentional: we want this to always go to stdout so user has # information needed to cancel download/preparation if needed. # This comes right before the progress bar. if self.info.size_in_bytes: logger.info( f"Downloading and preparing dataset {self.dataset_name}/{self.config.name} " f"(download: {size_str(self.info.download_size)}, generated: {size_str(self.info.dataset_size)}, " f"post-processed: {size_str(self.info.post_processing_size)}, " f"total: {size_str(self.info.size_in_bytes)}) to {self._output_dir}..." ) else: _dest = self._fs._strip_protocol(self._output_dir) if is_local else self._output_dir logger.info(f"Downloading and preparing dataset {self.dataset_name}/{self.config.name} to {_dest}...") self._check_manual_download(dl_manager) # Create a tmp dir and rename to self._output_dir on successful exit. with incomplete_dir(self._output_dir) as tmp_output_dir: # Temporarily assign _output_dir to tmp_data_dir to avoid having to forward # it to every sub function. with temporary_assignment(self, "_output_dir", tmp_output_dir): prepare_split_kwargs = {"file_format": file_format} if max_shard_size is not None: prepare_split_kwargs["max_shard_size"] = max_shard_size if num_proc is not None: prepare_split_kwargs["num_proc"] = num_proc self._download_and_prepare( dl_manager=dl_manager, verification_mode=verification_mode, **prepare_split_kwargs, **download_and_prepare_kwargs, ) # Sync info self.info.dataset_size = sum(split.num_bytes for split in self.info.splits.values()) self.info.download_checksums = dl_manager.get_recorded_sizes_checksums() if self.info.download_size is not None: self.info.size_in_bytes = self.info.dataset_size + self.info.download_size # Save info self._save_info() # Download post processing resources self.download_post_processing_resources(dl_manager) logger.info( f"Dataset {self.dataset_name} downloaded and prepared to {self._output_dir}. " f"Subsequent calls will reuse this data." ) def _check_manual_download(self, dl_manager): if self.manual_download_instructions is not None and dl_manager.manual_dir is None: raise ManualDownloadError( textwrap.dedent( f"""\ The dataset {self.dataset_name} with config {self.config.name} requires manual data. Please follow the manual download instructions: {self.manual_download_instructions} Manual data can be loaded with: datasets.load_dataset("{self.repo_id or self.dataset_name}", data_dir="")""" ) ) def _download_and_prepare(self, dl_manager, verification_mode, **prepare_split_kwargs): """Downloads and prepares dataset for reading. This is the internal implementation to overwrite called when user calls `download_and_prepare`. It should download all required data and generate the pre-processed datasets files. Args: dl_manager ([`DownloadManager`]): `DownloadManager` used to download and cache data. verification_mode ([`VerificationMode`]): if `ALL_CHECKS`, perform all the verifications including checksums. if `BASIC_CHECKS`, do not perform checksums, only perform split tests. if `NO_CHECKS`, do not perform any verification. prepare_split_kwargs: Additional options, such as `file_format`, `max_shard_size` """ # Generating data for all splits split_dict = SplitDict(dataset_name=self.dataset_name) split_generators_kwargs = self._make_split_generators_kwargs(prepare_split_kwargs) split_generators = self._split_generators(dl_manager, **split_generators_kwargs) # Checksums verification if verification_mode == VerificationMode.ALL_CHECKS and dl_manager.record_checksums: verify_checksums( self.info.download_checksums, dl_manager.get_recorded_sizes_checksums(), "dataset source files" ) # Build splits for split_generator in split_generators: if str(split_generator.split_info.name).lower() == "all": raise ValueError( "`all` is a special split keyword corresponding to the " "union of all splits, so cannot be used as key in " "._split_generator()." ) logger.info(f"Generating {split_generator.split_info.name} split") split_dict.add(split_generator.split_info) try: # Prepare split will record examples associated to the split self._prepare_split(split_generator, **prepare_split_kwargs) except OSError as e: raise OSError( "Cannot find data file. " + (self.manual_download_instructions or "") + "\nOriginal error:\n" + str(e) ) from None # If check_duplicates is set to True , then except DuplicatedKeysError except DuplicatedKeysError as e: raise DuplicatedKeysError( e.key, e.duplicate_key_indices, fix_msg=f"To avoid duplicate keys, please fix the dataset script {self.name}.py", ) from None dl_manager.manage_extracted_files() if verification_mode == VerificationMode.BASIC_CHECKS or verification_mode == VerificationMode.ALL_CHECKS: verify_splits(self.info.splits, split_dict) # Update the info object with the splits. self.info.splits = split_dict self.info.download_size = dl_manager.downloaded_size def download_post_processing_resources(self, dl_manager): for split in self.info.splits or []: for resource_name, resource_file_name in self._post_processing_resources(split).items(): if not not is_remote_filesystem(self._fs): raise NotImplementedError(f"Post processing is not supported on filesystem {self._fs}") if os.sep in resource_file_name: raise ValueError(f"Resources shouldn't be in a sub-directory: {resource_file_name}") resource_path = os.path.join(self._output_dir, resource_file_name) if not os.path.exists(resource_path): downloaded_resource_path = self._download_post_processing_resources( split, resource_name, dl_manager ) if downloaded_resource_path: logger.info(f"Downloaded post-processing resource {resource_name} as {resource_file_name}") shutil.move(downloaded_resource_path, resource_path) def _load_info(self) -> DatasetInfo: return DatasetInfo.from_directory(self._output_dir, storage_options=self._fs.storage_options) def _save_info(self): file_lock = ( FileLock(self._output_dir + "_info.lock") if not is_remote_filesystem(self._fs) else contextlib.nullcontext() ) with file_lock: self.info.write_to_directory(self._output_dir, storage_options=self._fs.storage_options) def _save_infos(self): file_lock = ( FileLock(self._output_dir + "_infos.lock") if not is_remote_filesystem(self._fs) else contextlib.nullcontext() ) with file_lock: DatasetInfosDict(**{self.config.name: self.info}).write_to_directory(self.get_imported_module_dir()) def _make_split_generators_kwargs(self, prepare_split_kwargs): """Get kwargs for `self._split_generators()` from `prepare_split_kwargs`.""" del prepare_split_kwargs return {} def as_dataset( self, split: Optional[Split] = None, run_post_process=True, verification_mode: Optional[Union[VerificationMode, str]] = None, in_memory=False, ) -> Union[Dataset, DatasetDict]: """Return a Dataset for the specified split. Args: split (`datasets.Split`): Which subset of the data to return. run_post_process (`bool`, defaults to `True`): Whether to run post-processing dataset transforms and/or add indexes. verification_mode ([`VerificationMode`] or `str`, defaults to `BASIC_CHECKS`): Verification mode determining the checks to run on the downloaded/processed dataset information (checksums/size/splits/...). in_memory (`bool`, defaults to `False`): Whether to copy the data in-memory. Returns: datasets.Dataset Example: ```py >>> from datasets import load_dataset_builder >>> builder = load_dataset_builder('cornell-movie-review-data/rotten_tomatoes') >>> builder.download_and_prepare() >>> ds = builder.as_dataset(split='train') >>> ds Dataset({ features: ['text', 'label'], num_rows: 8530 }) ``` """ if self._file_format is not None and self._file_format != "arrow": raise FileFormatError('Loading a dataset not written in the "arrow" format is not supported.') if is_remote_filesystem(self._fs): raise NotImplementedError(f"Loading a dataset cached in a {type(self._fs).__name__} is not supported.") if not os.path.exists(self._output_dir): raise FileNotFoundError( f"Dataset {self.dataset_name}: could not find data in {self._output_dir}. Please make sure to call " "builder.download_and_prepare(), or use " "datasets.load_dataset() before trying to access the Dataset object." ) logger.debug(f"Constructing Dataset for split {split or ', '.join(self.info.splits)}, from {self._output_dir}") # By default, return all splits if split is None: split = {s: s for s in self.info.splits} verification_mode = VerificationMode(verification_mode or VerificationMode.BASIC_CHECKS) # Create a dataset for each of the given splits datasets = map_nested( partial( self._build_single_dataset, run_post_process=run_post_process, verification_mode=verification_mode, in_memory=in_memory, ), split, map_tuple=True, disable_tqdm=True, ) if isinstance(datasets, dict): datasets = DatasetDict(datasets) return datasets def _build_single_dataset( self, split: Union[str, ReadInstruction, Split], run_post_process: bool, verification_mode: VerificationMode, in_memory: bool = False, ): """as_dataset for a single split.""" if not isinstance(split, ReadInstruction): split = str(split) if split == "all": split = "+".join(self.info.splits.keys()) split = Split(split) # Build base dataset ds = self._as_dataset( split=split, in_memory=in_memory, ) if run_post_process: for resource_file_name in self._post_processing_resources(split).values(): if os.sep in resource_file_name: raise ValueError(f"Resources shouldn't be in a sub-directory: {resource_file_name}") resources_paths = { resource_name: os.path.join(self._output_dir, resource_file_name) for resource_name, resource_file_name in self._post_processing_resources(split).items() } post_processed = self._post_process(ds, resources_paths) if post_processed is not None: ds = post_processed recorded_checksums = {} record_checksums = False for resource_name, resource_path in resources_paths.items(): size_checksum = get_size_checksum_dict(resource_path) recorded_checksums[resource_name] = size_checksum if verification_mode == VerificationMode.ALL_CHECKS and record_checksums: if self.info.post_processed is None or self.info.post_processed.resources_checksums is None: expected_checksums = None else: expected_checksums = self.info.post_processed.resources_checksums.get(split) verify_checksums(expected_checksums, recorded_checksums, "post processing resources") if self.info.post_processed is None: self.info.post_processed = PostProcessedInfo() if self.info.post_processed.resources_checksums is None: self.info.post_processed.resources_checksums = {} self.info.post_processed.resources_checksums[str(split)] = recorded_checksums self.info.post_processing_size = sum( checksums_dict["num_bytes"] for split_checksums_dicts in self.info.post_processed.resources_checksums.values() for checksums_dict in split_checksums_dicts.values() ) if self.info.dataset_size is not None and self.info.download_size is not None: self.info.size_in_bytes = ( self.info.dataset_size + self.info.download_size + self.info.post_processing_size ) self._save_info() ds._info.post_processed = self.info.post_processed ds._info.post_processing_size = self.info.post_processing_size ds._info.size_in_bytes = self.info.size_in_bytes if self.info.post_processed.features is not None: if self.info.post_processed.features.type != ds.features.type: raise ValueError( f"Post-processed features info don't match the dataset:\nGot\n{self.info.post_processed.features}\nbut expected something like\n{ds.features}" ) else: ds.info.features = self.info.post_processed.features return ds def _as_dataset(self, split: Union[ReadInstruction, Split] = Split.TRAIN, in_memory: bool = False) -> Dataset: """Constructs a `Dataset`. This is the internal implementation to overwrite called when user calls `as_dataset`. It should read the pre-processed datasets files and generate the `Dataset` object. Args: split (`datasets.Split`): which subset of the data to read. in_memory (`bool`, defaults to `False`): Whether to copy the data in-memory. Returns: `Dataset` """ cache_dir = self._fs._strip_protocol(self._output_dir) dataset_name = self.dataset_name if self._check_legacy_cache(): dataset_name = self.name dataset_kwargs = ArrowReader(cache_dir, self.info).read( name=dataset_name, instructions=split, split_infos=self.info.splits.values(), in_memory=in_memory, ) fingerprint = self._get_dataset_fingerprint(split) return Dataset(fingerprint=fingerprint, **dataset_kwargs) def _get_dataset_fingerprint(self, split: Union[ReadInstruction, Split]) -> str: """The dataset fingerprint is the hash of the relative directory dataset_name/config_name/version/hash, as well as the split specs.""" hasher = Hasher() hasher.update(Path(self._relative_data_dir()).as_posix()) hasher.update(str(split)) # for example: train, train+test, train[:10%], test[:33%](pct1_dropremainder) fingerprint = hasher.hexdigest() return fingerprint def as_streaming_dataset( self, split: Optional[str] = None, base_path: Optional[str] = None, ) -> Union[dict[str, IterableDataset], IterableDataset]: if is_remote_filesystem(self._fs): raise NotImplementedError( f"Loading a streaming dataset cached in a {type(self._fs).__name__} is not supported yet." ) dl_manager = StreamingDownloadManager( base_path=base_path or self.base_path, download_config=DownloadConfig(token=self.token, storage_options=self.storage_options), dataset_name=self.dataset_name, data_dir=self.config.data_dir, ) self._check_manual_download(dl_manager) splits_generators = {sg.name: sg for sg in self._split_generators(dl_manager)} # By default, return all splits if split is None: splits_generator = splits_generators elif split in splits_generators: splits_generator = splits_generators[split] else: raise ValueError(f"Bad split: {split}. Available splits: {list(splits_generators)}") # Create a dataset for each of the given splits datasets = map_nested( self._as_streaming_dataset_single, splits_generator, map_tuple=True, ) if isinstance(datasets, dict): datasets = IterableDatasetDict(datasets) return datasets def _as_streaming_dataset_single( self, splits_generator, ) -> IterableDataset: ex_iterable = self._get_examples_iterable_for_split(splits_generator) # add auth to be able to access and decode audio/image files from private repositories. token_per_repo_id = {self.repo_id: self.token} if self.repo_id else {} return IterableDataset( ex_iterable, info=self.info, split=splits_generator.name, token_per_repo_id=token_per_repo_id ) def _post_process(self, dataset: Dataset, resources_paths: Mapping[str, str]) -> Optional[Dataset]: """Run dataset transforms or add indexes""" return None def _post_processing_resources(self, split: str) -> dict[str, str]: """Mapping resource_name -> resource_file_name""" return {} def _download_post_processing_resources( self, split: str, resource_name: str, dl_manager: DownloadManager ) -> Optional[str]: """Download the resource using the download manager and return the downloaded path.""" return None @abc.abstractmethod def _split_generators(self, dl_manager: Union[DownloadManager, StreamingDownloadManager]): """Specify feature dictionary generators and dataset splits. This function returns a list of `SplitGenerator`s defining how to generate data and what splits to use. Example: return [ datasets.SplitGenerator( name=datasets.Split.TRAIN, gen_kwargs={'file': 'train_data.zip'}, ), datasets.SplitGenerator( name=datasets.Split.TEST, gen_kwargs={'file': 'test_data.zip'}, ), ] The above code will first call `_generate_examples(file='train_data.zip')` to write the train data, then `_generate_examples(file='test_data.zip')` to write the test data. Datasets are typically split into different subsets to be used at various stages of training and evaluation. Note that for datasets without a `VALIDATION` split, you can use a fraction of the `TRAIN` data for evaluation as you iterate on your model so as not to overfit to the `TEST` data. For downloads and extractions, use the given `download_manager`. Note that the `DownloadManager` caches downloads, so it is fine to have each generator attempt to download the source data. A good practice is to download all data in this function, and then distribute the relevant parts to each split with the `gen_kwargs` argument Args: dl_manager (`Union[DownloadManager, StreamingDownloadManager]`): Download manager to download the data Returns: `list`. """ raise NotImplementedError() @abc.abstractmethod def _prepare_split( self, split_generator: SplitGenerator, file_format: str = "arrow", max_shard_size: Optional[Union[str, int]] = None, num_proc: Optional[int] = None, **kwargs, ): """Generate the examples and record them on disk. Args: split_generator (`SplitGenerator`): Split generator to process file_format (`str`, *optional*): format of the data files in which the dataset will be written. Supported formats: "arrow", "parquet". Default to "arrow" format. max_shard_size (`Union[str, int]`, *optional*): Maximum number of bytes written per shard, default is "500MB". The size is based on uncompressed data size, so in practice your shard files may be smaller than `max_shard_size` thanks to Parquet compression for example. num_proc (`int`, *optional*, defaults to `None`): Number of processes when downloading and generating the dataset locally. Multiprocessing is disabled by default. **kwargs: Additional kwargs forwarded from _download_and_prepare """ raise NotImplementedError() def _get_examples_iterable_for_split(self, split_generator: SplitGenerator) -> ExamplesIterable: """Generate the examples on the fly. Args: split_generator (`SplitGenerator`): Split generator to process """ raise NotImplementedError() class GeneratorBasedBuilder(DatasetBuilder): """Base class for datasets with data generation based on dict generators. `GeneratorBasedBuilder` is a convenience class that abstracts away much of the data writing and reading of `DatasetBuilder`. It expects subclasses to implement generators of feature dictionaries across the dataset splits (`_split_generators`). See the method docstrings for details. """ @abc.abstractmethod def _generate_examples(self, **kwargs): """Default function generating examples for each `SplitGenerator`. This function preprocess the examples from the raw data to the preprocessed dataset files. This function is called once for each `SplitGenerator` defined in `_split_generators`. The examples yielded here will be written on disk. Args: **kwargs (additional keyword arguments): Arguments forwarded from the SplitGenerator.gen_kwargs Yields: key: `str` or `int`, a unique deterministic example identification key. * Unique: An error will be raised if two examples are yield with the same key. * Deterministic: When generating the dataset twice, the same example should have the same key. Good keys can be the image id, or line number if examples are extracted from a text file. The key will be hashed and sorted to shuffle examples deterministically, such as generating the dataset multiple times keep examples in the same order. example: `dict`, a feature dictionary ready to be encoded and written to disk. The example will be encoded with `self.info.features.encode_example({...})`. """ raise NotImplementedError() def _prepare_split( self, split_generator: SplitGenerator, check_duplicate_keys: bool, file_format="arrow", num_proc: Optional[int] = None, max_shard_size: Optional[Union[int, str]] = None, ): max_shard_size = convert_file_size_to_int(max_shard_size or config.MAX_SHARD_SIZE) if self.info.splits is not None: split_info = self.info.splits[split_generator.name] else: split_info = split_generator.split_info SUFFIX = "-JJJJJ-SSSSS-of-NNNNN" fname = f"{self.dataset_name}-{split_generator.name}{SUFFIX}.{file_format}" fpath = posixpath.join(self._output_dir, fname) if num_proc and num_proc > 1: num_input_shards = _number_of_shards_in_gen_kwargs(split_generator.gen_kwargs) if num_input_shards <= 1: logger.warning( f"Setting num_proc from {num_proc} back to 1 for the {split_info.name} split to disable multiprocessing as it only contains one shard." ) num_proc = 1 elif num_input_shards < num_proc: logger.warning( f"Setting num_proc from {num_proc} to {num_input_shards} for the {split_info.name} split as it only contains {num_input_shards} shards." ) num_proc = num_input_shards pbar = hf_tqdm( unit=" examples", total=split_info.num_examples, desc=f"Generating {split_info.name} split", ) _prepare_split_args = { "fpath": fpath, "file_format": file_format, "max_shard_size": max_shard_size, "split_info": split_info, "check_duplicate_keys": check_duplicate_keys, } if num_proc is None or num_proc == 1: result = None gen_kwargs = split_generator.gen_kwargs job_id = 0 with pbar: for job_id, done, content in self._prepare_split_single( gen_kwargs=gen_kwargs, job_id=job_id, **_prepare_split_args ): if done: result = content else: pbar.update(content) # wrapping everything into lists for consistency with the multiprocessed code path assert result is not None, "Failed to retrieve results from prepare_split" examples_per_job, bytes_per_job, features_per_job, shards_per_job, shard_lengths_per_job = ( [item] for item in result ) else: kwargs_per_job = [ {"gen_kwargs": gen_kwargs, "job_id": job_id, **_prepare_split_args} for job_id, gen_kwargs in enumerate( _split_gen_kwargs(split_generator.gen_kwargs, max_num_jobs=num_proc) ) ] num_jobs = len(kwargs_per_job) examples_per_job = [None] * num_jobs bytes_per_job = [None] * num_jobs features_per_job = [None] * num_jobs shards_per_job = [None] * num_jobs shard_lengths_per_job = [None] * num_jobs with Pool(num_proc) as pool: with pbar: for job_id, done, content in iflatmap_unordered( pool, self._prepare_split_single, kwargs_iterable=kwargs_per_job ): if done: # the content is the result of the job ( examples_per_job[job_id], bytes_per_job[job_id], features_per_job[job_id], shards_per_job[job_id], shard_lengths_per_job[job_id], ) = content else: # the content is the number of examples progress update pbar.update(content) assert None not in examples_per_job, ( f"Failed to retrieve results from prepare_split: result list {examples_per_job} still contains None - at least one worker failed to return its results" ) total_shards = sum(shards_per_job) total_num_examples = sum(examples_per_job) total_num_bytes = sum(bytes_per_job) features = features_per_job[0] split_generator.split_info.num_examples = total_num_examples split_generator.split_info.num_bytes = total_num_bytes # should rename everything at the end logger.debug(f"Renaming {total_shards} shards.") if total_shards > 1: # use the -SSSSS-of-NNNNN pattern def _rename_shard(shard_and_job: tuple[int]): shard_id, job_id = shard_and_job global_shard_id = sum(shards_per_job[:job_id]) + shard_id self._rename( fpath.replace("SSSSS", f"{shard_id:05d}").replace("JJJJJ", f"{job_id:05d}"), fpath.replace("JJJJJ-SSSSS", f"{global_shard_id:05d}").replace("NNNNN", f"{total_shards:05d}"), ) shards_and_jobs = [ (shard_id, job_id) for job_id, num_shards in enumerate(shards_per_job) for shard_id in range(num_shards) ] thread_map(_rename_shard, shards_and_jobs, disable=True, max_workers=64) split_generator.split_info.shard_lengths = [ shard_length for shard_lengths in shard_lengths_per_job for shard_length in shard_lengths ] else: # don't use any pattern shard_id, job_id = 0, 0 self._rename( fpath.replace("SSSSS", f"{shard_id:05d}").replace("JJJJJ", f"{job_id:05d}"), fpath.replace(SUFFIX, ""), ) if self.info.features is None: self.info.features = features def _prepare_split_single( self, gen_kwargs: dict, fpath: str, file_format: str, max_shard_size: int, split_info: SplitInfo, check_duplicate_keys: bool, job_id: int, ) -> Iterable[tuple[int, bool, Union[int, tuple]]]: generator = self._generate_examples(**gen_kwargs) writer_class = ParquetWriter if file_format == "parquet" else ArrowWriter embed_local_files = file_format == "parquet" shard_lengths = [] total_num_examples, total_num_bytes = 0, 0 shard_id = 0 num_examples_progress_update = 0 try: writer = writer_class( features=self.info.features, path=fpath.replace("SSSSS", f"{shard_id:05d}").replace("JJJJJ", f"{job_id:05d}"), writer_batch_size=self._writer_batch_size, hash_salt=split_info.name, check_duplicates=check_duplicate_keys, storage_options=self._fs.storage_options, embed_local_files=embed_local_files, ) try: _time = time.time() for key, record in generator: if max_shard_size is not None and writer._num_bytes > max_shard_size: num_examples, num_bytes = writer.finalize() writer.close() shard_lengths.append(num_examples) total_num_examples += num_examples total_num_bytes += num_bytes shard_id += 1 writer = writer_class( features=writer._features, path=fpath.replace("SSSSS", f"{shard_id:05d}").replace("JJJJJ", f"{job_id:05d}"), writer_batch_size=self._writer_batch_size, hash_salt=split_info.name, check_duplicates=check_duplicate_keys, storage_options=self._fs.storage_options, embed_local_files=embed_local_files, ) example = self.info.features.encode_example(record) if self.info.features is not None else record writer.write(example, key) num_examples_progress_update += 1 if time.time() > _time + config.PBAR_REFRESH_TIME_INTERVAL: _time = time.time() yield job_id, False, num_examples_progress_update num_examples_progress_update = 0 finally: yield job_id, False, num_examples_progress_update num_shards = shard_id + 1 num_examples, num_bytes = writer.finalize() writer.close() shard_lengths.append(num_examples) total_num_examples += num_examples total_num_bytes += num_bytes except Exception as e: # Ignore the writer's error for no examples written to the file if this error was caused by the error in _generate_examples before the first example was yielded if isinstance(e, SchemaInferenceError) and e.__context__ is not None: e = e.__context__ raise DatasetGenerationError("An error occurred while generating the dataset") from e yield job_id, True, (total_num_examples, total_num_bytes, writer._features, num_shards, shard_lengths) def _download_and_prepare(self, dl_manager, verification_mode, **prepare_splits_kwargs): super()._download_and_prepare( dl_manager, verification_mode, check_duplicate_keys=verification_mode == VerificationMode.BASIC_CHECKS or verification_mode == VerificationMode.ALL_CHECKS, **prepare_splits_kwargs, ) def _get_examples_iterable_for_split(self, split_generator: SplitGenerator) -> ExamplesIterable: return ExamplesIterable(self._generate_examples, split_generator.gen_kwargs) class ArrowBasedBuilder(DatasetBuilder): """Base class for datasets with data generation based on Arrow loading functions (CSV/JSON/Parquet).""" @abc.abstractmethod def _generate_tables(self, **kwargs): """Default function generating examples for each `SplitGenerator`. This function preprocess the examples from the raw data to the preprocessed dataset files. This function is called once for each `SplitGenerator` defined in `_split_generators`. The examples yielded here will be written on disk. Args: **kwargs (additional keyword arguments): Arguments forwarded from the SplitGenerator.gen_kwargs Yields: key: `str` or `int`, a unique deterministic example identification key. * Unique: An error will be raised if two examples are yield with the same key. * Deterministic: When generating the dataset twice, the same example should have the same key. Good keys can be the image id, or line number if examples are extracted from a text file. The key will be hashed and sorted to shuffle examples deterministically, such as generating the dataset multiple times keep examples in the same order. example: `pyarrow.Table`, a feature table ready to be encoded and written to disk. """ raise NotImplementedError() def _prepare_split( self, split_generator: SplitGenerator, file_format: str = "arrow", num_proc: Optional[int] = None, max_shard_size: Optional[Union[str, int]] = None, ): max_shard_size = convert_file_size_to_int(max_shard_size or config.MAX_SHARD_SIZE) try: split_info = self.info.splits[split_generator.name] except Exception: split_info = split_generator.split_info SUFFIX = "-JJJJJ-SSSSS-of-NNNNN" fname = f"{self.dataset_name}-{split_generator.name}{SUFFIX}.{file_format}" fpath = posixpath.join(self._output_dir, fname) if num_proc and num_proc > 1: num_input_shards = _number_of_shards_in_gen_kwargs(split_generator.gen_kwargs) if num_input_shards <= 1: logger.warning( f"Setting num_proc from {num_proc} back to 1 for the {split_info.name} split to disable multiprocessing as it only contains one shard." ) num_proc = 1 elif num_input_shards < num_proc: logger.warning( f"Setting num_proc from {num_proc} to {num_input_shards} for the {split_info.name} split as it only contains {num_input_shards} shards." ) num_proc = num_input_shards pbar = hf_tqdm( unit=" examples", total=split_info.num_examples, desc=f"Generating {split_info.name} split", ) _prepare_split_args = { "fpath": fpath, "file_format": file_format, "max_shard_size": max_shard_size, } if num_proc is None or num_proc == 1: result = None gen_kwargs = split_generator.gen_kwargs job_id = 0 with pbar: for job_id, done, content in self._prepare_split_single( gen_kwargs=gen_kwargs, job_id=job_id, **_prepare_split_args ): if done: result = content else: pbar.update(content) # wrapping everything into lists for consistency with the multiprocessed code path assert result is not None, "Failed to retrieve results from prepare_split" examples_per_job, bytes_per_job, features_per_job, shards_per_job, shard_lengths_per_job = ( [item] for item in result ) else: kwargs_per_job = [ {"gen_kwargs": gen_kwargs, "job_id": job_id, **_prepare_split_args} for job_id, gen_kwargs in enumerate( _split_gen_kwargs(split_generator.gen_kwargs, max_num_jobs=num_proc) ) ] num_jobs = len(kwargs_per_job) examples_per_job = [None] * num_jobs bytes_per_job = [None] * num_jobs features_per_job = [None] * num_jobs shards_per_job = [None] * num_jobs shard_lengths_per_job = [None] * num_jobs with Pool(num_proc) as pool: with pbar: for job_id, done, content in iflatmap_unordered( pool, self._prepare_split_single, kwargs_iterable=kwargs_per_job ): if done: # the content is the result of the job ( examples_per_job[job_id], bytes_per_job[job_id], features_per_job[job_id], shards_per_job[job_id], shard_lengths_per_job[job_id], ) = content else: # the content is the number of examples progress update pbar.update(content) assert None not in examples_per_job, ( f"Failed to retrieve results from prepare_split: result list {examples_per_job} still contains None - at least one worker failed to return its results" ) total_shards = sum(shards_per_job) total_num_examples = sum(examples_per_job) total_num_bytes = sum(bytes_per_job) features = features_per_job[0] split_generator.split_info.num_examples = total_num_examples split_generator.split_info.num_bytes = total_num_bytes # should rename everything at the end logger.debug(f"Renaming {total_shards} shards.") if total_shards > 1: # use the -SSSSS-of-NNNNN pattern def _rename_shard(shard_id_and_job: tuple[int]): shard_id, job_id = shard_id_and_job global_shard_id = sum(shards_per_job[:job_id]) + shard_id self._rename( fpath.replace("SSSSS", f"{shard_id:05d}").replace("JJJJJ", f"{job_id:05d}"), fpath.replace("JJJJJ-SSSSS", f"{global_shard_id:05d}").replace("NNNNN", f"{total_shards:05d}"), ) shard_ids_and_jobs = [ (shard_id, job_id) for job_id, num_shards in enumerate(shards_per_job) for shard_id in range(num_shards) ] thread_map(_rename_shard, shard_ids_and_jobs, disable=True, max_workers=64) split_generator.split_info.shard_lengths = [ shard_length for shard_lengths in shard_lengths_per_job for shard_length in shard_lengths ] else: # don't use any pattern shard_id, job_id = 0, 0 self._rename( fpath.replace("SSSSS", f"{shard_id:05d}").replace("JJJJJ", f"{job_id:05d}"), fpath.replace(SUFFIX, ""), ) if self.info.features is None: self.info.features = features def _prepare_split_single( self, gen_kwargs: dict, fpath: str, file_format: str, max_shard_size: int, job_id: int ) -> Iterable[tuple[int, bool, Union[int, tuple]]]: gen_kwargs = {k: tracked_list(v) if isinstance(v, list) else v for k, v in gen_kwargs.items()} generator = self._generate_tables(**gen_kwargs) writer_class = ParquetWriter if file_format == "parquet" else ArrowWriter embed_local_files = file_format == "parquet" shard_lengths = [] total_num_examples, total_num_bytes = 0, 0 shard_id = 0 num_examples_progress_update = 0 try: writer = writer_class( features=self.info.features, path=fpath.replace("SSSSS", f"{shard_id:05d}").replace("JJJJJ", f"{job_id:05d}"), writer_batch_size=self._writer_batch_size, storage_options=self._fs.storage_options, embed_local_files=embed_local_files, ) try: _time = time.time() for _, table in generator: if max_shard_size is not None and writer._num_bytes > max_shard_size: num_examples, num_bytes = writer.finalize() writer.close() shard_lengths.append(num_examples) total_num_examples += num_examples total_num_bytes += num_bytes shard_id += 1 writer = writer_class( features=writer._features, path=fpath.replace("SSSSS", f"{shard_id:05d}").replace("JJJJJ", f"{job_id:05d}"), writer_batch_size=self._writer_batch_size, storage_options=self._fs.storage_options, embed_local_files=embed_local_files, ) try: writer.write_table(table) except CastError as cast_error: raise DatasetGenerationCastError.from_cast_error( cast_error=cast_error, builder_name=self.info.builder_name, gen_kwargs=gen_kwargs, token=self.token, ) num_examples_progress_update += len(table) if time.time() > _time + config.PBAR_REFRESH_TIME_INTERVAL: _time = time.time() yield job_id, False, num_examples_progress_update num_examples_progress_update = 0 finally: yield job_id, False, num_examples_progress_update num_shards = shard_id + 1 num_examples, num_bytes = writer.finalize() writer.close() shard_lengths.append(num_examples) total_num_examples += num_examples total_num_bytes += num_bytes except Exception as e: # Ignore the writer's error for no examples written to the file if this error was caused by the error in _generate_examples before the first example was yielded if isinstance(e, SchemaInferenceError) and e.__context__ is not None: e = e.__context__ if isinstance(e, DatasetGenerationError): raise raise DatasetGenerationError("An error occurred while generating the dataset") from e yield job_id, True, (total_num_examples, total_num_bytes, writer._features, num_shards, shard_lengths) def _get_examples_iterable_for_split(self, split_generator: SplitGenerator) -> ExamplesIterable: return ArrowExamplesIterable(self._generate_tables, kwargs=split_generator.gen_kwargs)