# Copyright (c) ModelScope Contributors. All rights reserved. import numpy as np import os from datasets import load_from_disk from swift.dataset import DatasetSyntax, sample_dataset from swift.template import update_generation_config_eos_token from swift.tuner_plugin import tuners_map from swift.tuners import Swift from swift.utils import get_logger logger = get_logger() def prepare_adapter(args, model, adapters=None): if args.tuner_backend == 'unsloth': if args.model_meta.is_multimodal: from unsloth import FastVisionModel as UnslothModel else: from unsloth import FastLanguageModel as UnslothModel UnslothModel.for_inference(model) return model if args.tuner_type in tuners_map: tuner = tuners_map[args.tuner_type] else: tuner = Swift # compat deploy adapters = adapters if adapters is not None else args.adapters for adapter in adapters: model = tuner.from_pretrained(model, adapter) if args.tuner_type == 'bone': # Bone has a problem of float32 matmul with bloat16 in `peft==0.14.0` model.to(model.dtype) return model def prepare_model_template(args, **kwargs): adapters = kwargs.get('adapters') model, processor = args.get_model_processor(**kwargs) template = args.get_template(processor) if model is not None: if template.use_model: template.model = model model = prepare_adapter(args, model, adapters=adapters) if args.task_type == 'causal_lm': update_generation_config_eos_token(model.generation_config, template) return model, template def _select_dataset(args, dataset): if 'length' in dataset.column_names and 'lengths' not in dataset.column_names: # Compatible with ms-swift 3.x cache_dataset dataset = dataset.rename_column('length', 'lengths') max_length = args.max_length if args.truncation_strategy == 'delete': lengths = dataset['lengths'] idxs = [ i for i, length in enumerate(lengths) if (max(length) if isinstance(length, list) else length) <= max_length ] new_dataset = dataset.select(idxs) else: new_dataset = dataset if len(new_dataset) < len(dataset): logger.info(f'Dataset filtered, origin length: {len(dataset)}, filtered dataset length: {len(new_dataset)}') return new_dataset def get_cached_dataset(args): train_datasets, val_datasets = [], [] random_state = np.random.RandomState(args.data_seed) for cached_dataset, datasets in zip([args.cached_dataset, args.cached_val_dataset], [train_datasets, val_datasets]): for path in cached_dataset: if os.path.exists(path): dataset_sample = None else: path, dataset_sample = DatasetSyntax._safe_split(path, '#', True, 'right') dataset = _select_dataset(args, load_from_disk(path)) if dataset_sample is not None: dataset = sample_dataset( dataset, int(dataset_sample), args.dataset_shuffle, random_state=random_state, shuffle_all=True) datasets.append(dataset) return train_datasets, val_datasets