"""Prepare and train a model on a dataset. Can also infer from a model or merge lora""" import os import signal import sys from dataclasses import dataclass from pathlib import Path from typing import Optional, Tuple, Union import torch import transformers.modelcard from accelerate.logging import get_logger from datasets import Dataset from optimum.bettertransformer import BetterTransformer from peft import PeftModel from pkg_resources import get_distribution # type: ignore from transformers import PreTrainedModel, PreTrainedTokenizer from transformers.integrations.deepspeed import is_deepspeed_zero3_enabled from axolotl.common.cli import TrainerCliArgs from axolotl.logging_config import configure_logging from axolotl.utils.dict import DictDefault from axolotl.utils.freeze import freeze_parameters_except from axolotl.utils.models import load_model, load_tokenizer from axolotl.utils.trainer import setup_trainer project_root = os.path.abspath(os.path.join(os.path.dirname(__file__), "..")) src_dir = os.path.join(project_root, "src") sys.path.insert(0, src_dir) configure_logging() LOG = get_logger("axolotl.train") @dataclass class TrainDatasetMeta: """ dataclass to capture the dataset specific options for training """ train_dataset: Dataset eval_dataset: Optional[Dataset] = None total_num_steps: Optional[int] = None def train( *, cfg: DictDefault, cli_args: TrainerCliArgs, dataset_meta: TrainDatasetMeta ) -> Tuple[Union[PeftModel, PreTrainedModel], PreTrainedTokenizer]: # load the tokenizer first LOG.debug( f"loading tokenizer... {cfg.tokenizer_config or cfg.base_model_config}", main_process_only=True, ) tokenizer = load_tokenizer(cfg) train_dataset = dataset_meta.train_dataset eval_dataset = dataset_meta.eval_dataset total_num_steps = dataset_meta.total_num_steps # Load the model and tokenizer msg = "loading model" if cfg.adapter: msg += " and peft_config..." LOG.debug(msg) model, peft_config = load_model(cfg, tokenizer, inference=cli_args.inference) model.generation_config.do_sample = True model_ref = None if cfg.rl: if cfg.adapter and not cfg.rl_adapter_ref_model: # use built-in trl autounwrap LOG.debug("Passing model_ref: None to RL trainer") model_ref = None # explicit setting to None else: # load the model again for model_ref/baseline model_ref, _ = load_model( cfg, tokenizer, inference=cli_args.inference, reference_model=True ) safe_serialization = cfg.save_safetensors is True if cfg.resume_from_checkpoint is None and cfg.auto_resume_from_checkpoints: possible_checkpoints = [ str(cp) for cp in Path(cfg.output_dir).glob("checkpoint-*") ] if len(possible_checkpoints) > 0: sorted_paths = sorted( possible_checkpoints, key=lambda path: int(path.split("-")[-1]), ) cfg.resume_from_checkpoint = sorted_paths[-1] LOG.info( f"Using Auto-resume functionality to start with checkpoint at {cfg.resume_from_checkpoint}" ) resume_from_checkpoint = cfg.resume_from_checkpoint if cfg.unfrozen_parameters: freeze_parameters_except(model, cfg.unfrozen_parameters) trainer = setup_trainer( cfg, train_dataset, eval_dataset, (model, model_ref, peft_config), tokenizer, total_num_steps, ) if hasattr(model, "config"): model.config.use_cache = False # go ahead and presave, so we have the adapter config available to inspect if peft_config: LOG.info(f"Pre-saving adapter config to {cfg.output_dir}") peft_config.save_pretrained(cfg.output_dir) # additionally presave the tokenizer and model configs if not Path(cfg.output_dir).is_dir(): os.makedirs(cfg.output_dir, exist_ok=True) tokenizer.save_pretrained(str(Path(cfg.output_dir))) if hasattr(model, "config"): model.config.save_pretrained(str(Path(cfg.output_dir))) # In case we want to stop early with ctrl+c, this is a nice to have to save the pretrained model if cfg.local_rank == 0: def terminate_handler(_, __, model): if cfg.flash_optimum: model = BetterTransformer.reverse(model) model.save_pretrained(cfg.output_dir, safe_serialization=safe_serialization) sys.exit(0) signal.signal( signal.SIGINT, lambda signum, frame: terminate_handler(signum, frame, model) ) badge_markdown = """[Built with Axolotl](https://github.com/OpenAccess-AI-Collective/axolotl)""" transformers.modelcard.AUTOGENERATED_TRAINER_COMMENT += f"\n{badge_markdown}" if getattr(cfg, "axolotl_config_path"): raw_axolotl_cfg = Path(cfg.axolotl_config_path) version = get_distribution("axolotl").version if raw_axolotl_cfg.is_file(): transformers.modelcard.AUTOGENERATED_TRAINER_COMMENT += f"\n
See axolotl config\n\naxolotl version: `{version}`\n```yaml\n{raw_axolotl_cfg.read_text(encoding='utf-8')}\n```\n\n

\n" LOG.info("Starting trainer...") if cfg.group_by_length: LOG.info("hang tight... sorting dataset for group_by_length") pretrain_hooks(cfg, trainer) if cfg.flash_optimum: with torch.backends.cuda.sdp_kernel( enable_flash=True, enable_math=True, enable_mem_efficient=True ): trainer.train(resume_from_checkpoint=resume_from_checkpoint) else: trainer.train(resume_from_checkpoint=resume_from_checkpoint) post_train_hooks(cfg, trainer) LOG.info(f"Training Completed!!! Saving pre-trained model to {cfg.output_dir}") # post training for name, module in model.named_modules(): if hasattr(module, "_post_training"): module._post_training(model, name) # pylint: disable=protected-access if trainer.is_fsdp_enabled: trainer.accelerator.state.fsdp_plugin.set_state_dict_type("FULL_STATE_DICT") LOG.info("Set FSDP state dict type to FULL_STATE_DICT for saving.") if cfg.relora_steps: if cfg.adapter == "lora" and not (cfg.load_in_4bit or cfg.load_in_8bit): model = model.merge_and_unload() else: # final model weights have already been saved by `ReLoRACallback.on_train_end` return model, tokenizer # TODO do we need this fix? https://huggingface.co/docs/accelerate/usage_guides/fsdp#saving-and-loading # only save on rank 0, otherwise it corrupts output on multi-GPU when multiple processes attempt to write the same file if cfg.fsdp: trainer.save_model(cfg.output_dir) elif cfg.deepspeed and is_deepspeed_zero3_enabled(): # Copied over from: https://github.com/huggingface/accelerate/blob/5ae611118057232f441055f7ef9ba0b0f2b8d533/docs/source/usage_guides/deepspeed.md#saving-and-loading trainer.accelerator.wait_for_everyone() unwrapped_model = trainer.accelerator.unwrap_model(trainer.model_wrapped) # Saves the whole/unpartitioned fp16 model when in ZeRO Stage-3 to the output directory if # `stage3_gather_16bit_weights_on_model_save` is True in DeepSpeed Config file or # `zero3_save_16bit_model` is True in DeepSpeed Plugin. # For Zero Stages 1 and 2, models are saved as usual in the output directory. # The model name saved is `pytorch_model.bin` unwrapped_model.save_pretrained( cfg.output_dir, is_main_process=trainer.accelerator.is_main_process, save_function=trainer.accelerator.save, state_dict=trainer.accelerator.get_state_dict(trainer.model_wrapped), ) elif cfg.local_rank == 0: if cfg.flash_optimum: model = BetterTransformer.reverse(model) model.save_pretrained(cfg.output_dir, safe_serialization=safe_serialization) if not cfg.hub_model_id: trainer.create_model_card(model_name=cfg.output_dir.lstrip("./")) elif cfg.hub_model_id: # defensively push to the hub to ensure the model card is updated trainer.push_to_hub() return model, tokenizer def pretrain_hooks(_cfg, _trainer): """ Run hooks right before kicking off the training :param cfg: :param trainer: :return: """ def post_train_hooks(_cfg, _trainer): """ Run hooks right after training completes :param cfg: :param trainer: :return: """