# Copyright (c) ModelScope Contributors. All rights reserved. import inspect import numpy as np import os import tempfile from datasets import Dataset as HfDataset from modelscope.hub.utils.utils import get_cache_dir from torch.utils.data import Dataset from typing import Any, Callable, Dict, Optional, Union from swift.template import MaxLengthError, Template from swift.utils import get_logger from .preprocessor import RowPreprocessor logger = get_logger() def sample_dataset( dataset: HfDataset, dataset_sample: Optional[int], shuffle: bool = True, random_state: Optional[np.random.RandomState] = None, shuffle_all: bool = False, # For compatibility, this defaults to False. ) -> HfDataset: """Sample dataset by a dataset_sample number Args: dataset: The dataset instance, iterable dataset is not supported dataset_sample: The sample number shuffle: Whether to perform random sampling on non-streaming datasets random_state: The random state Returns: The sampled dataset """ if dataset_sample is None: return dataset n_repeat_sample = dataset_sample // len(dataset) n_remain_sample = dataset_sample % len(dataset) if n_repeat_sample >= 1 and n_remain_sample >= 1: logger.warning(f'dataset_sample:{dataset_sample} is greater than len(dataset):{len(dataset)}, ' 'repeated sampling will be performed.') idx = np.tile(range(len(dataset)), n_repeat_sample) if random_state is None: random_state = np.random.RandomState() if n_remain_sample >= 1: if shuffle: idx_remain = random_state.permutation(len(dataset))[:n_remain_sample] else: idx_remain = np.arange(n_remain_sample) idx = np.concatenate([idx, idx_remain]) if n_repeat_sample >= 1 and shuffle and shuffle_all: random_state.shuffle(idx) dataset = dataset.select(idx) return dataset class LazyLLMDataset(Dataset): """This class if used to lazy tokenize the dataset, and skips bad ones when training""" def __init__(self, dataset: HfDataset, encode_func: Callable[[Dict[str, Any]], Dict[str, Any]], *, n_try_fetch: int = 10, strict: bool = False, random_state: Optional[Union[np.random.RandomState, int]] = None, traceback_limit: int = 10) -> None: self.dataset = dataset self.encode_func = encode_func n_try_fetch = 1 if strict else min(n_try_fetch, len(self.dataset)) assert n_try_fetch >= 1 self.strict = strict self.n_try_fetch = n_try_fetch if not isinstance(random_state, np.random.RandomState): random_state = np.random.RandomState(random_state) self.random_state = random_state self.traceback_limit = traceback_limit self._traceback_counter = 0 self._idx = 0 self._idx_list = self.random_state.permutation(len(self.dataset)).tolist() def __getitem__(self, idx: int) -> Dict[str, Any]: if isinstance(idx, str): return self.dataset[idx] for i in range(self.n_try_fetch): if i > 0: idx = self._idx_list[self._idx] self._idx = (self._idx + 1) % len(self.dataset) data = self.dataset[idx] try: return self.encode_func(data, return_length=True) except Exception as e: if self.strict: logger.warning('To avoid errors, you can pass `strict=False`.') raise if isinstance(e, MaxLengthError): continue if self.traceback_limit is not None and self._traceback_counter < self.traceback_limit: import traceback logger.info(traceback.format_exc()) logger.warning('πŸ‘†πŸ‘†πŸ‘†There are errors in the template.encode, ' 'and another piece of data will be randomly selected.') self._traceback_counter += 1 raise ValueError('Failed to retrieve the dataset. You can avoid this issue by increasing `max_length` or ' 'modifying the `truncation_strategy`.') def __len__(self) -> int: return len(self.dataset) class EncodePreprocessor(RowPreprocessor): def __init__(self, template: 'Template'): super().__init__() self.template = template def preprocess(self, row: Dict[str, Any]) -> Optional[Dict[str, Any]]: return self.template.encode(row, return_length=True) class AddLengthPreprocessor(EncodePreprocessor): def preprocess(self, row: Dict[str, Any]) -> Optional[Dict[str, Any]]: encoded = super().preprocess(row) row['lengths'] = encoded['lengths'] return row TEMP_DIR_POOL = {} def get_temporary_cache_files_directory(prefix=None): if prefix is None: import datasets.config prefix = datasets.config.TEMP_CACHE_DIR_PREFIX if prefix in TEMP_DIR_POOL: TEMP_DIR = TEMP_DIR_POOL[prefix] else: tmp_dir = os.path.join(get_cache_dir(), 'tmp') os.makedirs(tmp_dir, exist_ok=True) kwargs = {} parameters = inspect.signature(tempfile.TemporaryDirectory.__init__).parameters if 'ignore_cleanup_errors' in parameters: kwargs['ignore_cleanup_errors'] = True TEMP_DIR = tempfile.TemporaryDirectory(prefix=prefix, dir=tmp_dir, **kwargs) logger.info(f'create tmp_dir: {TEMP_DIR.name}') TEMP_DIR_POOL[prefix] = TEMP_DIR return TEMP_DIR.name