# Copyright (c) ModelScope Contributors. All rights reserved. import os from dataclasses import dataclass from transformers.utils.versions import require_version from typing import Literal, Optional from swift.trainers import Seq2SeqTrainingArguments, TrainerFactory from swift.utils import (add_version_to_work_dir, get_device_count, get_logger, get_pai_tensorboard_dir, is_mp, is_pai_training_job, is_swanlab_available, json_parse_to_dict, to_abspath) from .base_args import BaseArguments from .tuner_args import TunerArguments logger = get_logger() @dataclass class SwanlabArguments: """Arguments for configuring Swanlab for experiment result logging. This dataclass stores all the configuration parameters required for initializing and using Swanlab to track experiments. Args: swanlab_token (Optional[str]): The API key for SwanLab. You can also specify it using the `SWANLAB_API_KEY` environment variable. swanlab_project (str): The SwanLab project, which can be created in advance on the page [https://swanlab.cn/space/~](https://swanlab.cn/space/~) or created automatically. The default is "ms-swift". swanlab_workspace (Optional[str]): The SwanLab workspace. Defaults to `None`, in which case the username associated with the API key will be used. swanlab_exp_name (Optional[str]): The name of the experiment. If `None`, it will default to the value of the `output_dir` argument. swanlab_notification_method (Optional[str]): The notification method for SwanLab when training completes or errors occur. For details, refer to [here](https://docs.swanlab.cn/plugin/notification-dingtalk.html). Supports 'dingtalk', 'lark', 'email', 'discord', 'wxwork', 'slack'. swanlab_webhook_url (Optional[str]): Defaults to None. The webhook URL corresponding to SwanLab's `swanlab_notification_method`. swanlab_secret (Optional[str]): Defaults to None. The secret corresponding to SwanLab's `swanlab_notification_method`. swanlab_sender_email (Optional[str]): The email address of the sender. Required when `swanlab_notification_method` is 'email'. swanlab_receiver_email (Optional[str]): The email address of the receiver. Required when `swanlab_notification_method` is 'email'. swanlab_smtp_server (Optional[str]): The SMTP server address for email notification (e.g., 'smtp.qq.com'). swanlab_smtp_port (Optional[int]): The SMTP server port for email notification (e.g., 465). swanlab_email_language (Optional[str]): email messages language. Supports 'zh', 'en'. The default is "zh". swanlab_mode (Literal['cloud', 'local']): The operation mode, either 'cloud' for cloud-based logging or 'local' for local-only logging. """ swanlab_token: Optional[str] = None swanlab_project: str = 'ms-swift' swanlab_workspace: Optional[str] = None swanlab_exp_name: Optional[str] = None swanlab_notification_method: Optional[str] = None swanlab_webhook_url: Optional[str] = None swanlab_secret: Optional[str] = None swanlab_sender_email: Optional[str] = None swanlab_receiver_email: Optional[str] = None swanlab_smtp_server: Optional[str] = None swanlab_smtp_port: Optional[int] = None swanlab_email_language: Optional[str] = 'zh' swanlab_mode: Literal['cloud', 'local'] = 'cloud' def _init_swanlab(self): if not is_swanlab_available(): raise ValueError('You are using swanlab as `report_to`, please install swanlab by ' '`pip install swanlab`') if not self.swanlab_exp_name: self.swanlab_exp_name = self.output_dir import swanlab from swanlab.integration.transformers import SwanLabCallback from transformers.integrations import INTEGRATION_TO_CALLBACK if self.swanlab_token: swanlab.login(self.swanlab_token) if self.swanlab_notification_method is not None: from swanlab.plugin.notification import (DingTalkCallback, DiscordCallback, EmailCallback, LarkCallback, SlackCallback, WXWorkCallback) notification_mapping = { 'lark': LarkCallback, 'dingtalk': DingTalkCallback, 'email': EmailCallback, 'discord': DiscordCallback, 'wxwork': WXWorkCallback, 'slack': SlackCallback, } callback_cls = notification_mapping.get(self.swanlab_notification_method) if callback_cls is None: raise ValueError( f'Unsupported swanlab_notification_method: "{self.swanlab_notification_method}". Supported methods' f' are: {list(notification_mapping.keys())}') if self.swanlab_notification_method == 'email': if not (self.swanlab_sender_email and self.swanlab_receiver_email and self.swanlab_smtp_server and self.swanlab_smtp_port): raise ValueError("When 'swanlab_notification_method' is 'email', both 'swanlab_sender_email' " "and 'swanlab_receiver_email' and 'swanlab_smtp_server' and 'swanlab_smtp_port' " 'must be provided.') callback = EmailCallback( sender_email=self.swanlab_sender_email, receiver_email=self.swanlab_receiver_email, password=self.swanlab_secret, smtp_server=self.swanlab_smtp_server, port=self.swanlab_smtp_port, language=self.swanlab_email_language) else: callback = callback_cls( webhook_url=self.swanlab_webhook_url, secret=self.swanlab_secret, ) swanlab.register_callbacks([callback]) INTEGRATION_TO_CALLBACK['swanlab'] = SwanLabCallback( project=self.swanlab_project, workspace=self.swanlab_workspace, experiment_name=self.swanlab_exp_name, config={'UPPERFRAME': '🐦‍⬛ms-swift'}, mode=self.swanlab_mode, ) @dataclass class SftArguments(SwanlabArguments, TunerArguments, BaseArguments, Seq2SeqTrainingArguments): """Arguments pertaining to the training process. SftArguments is a dataclass that inherits from multiple argument classes: SwanlabArguments, TunerArguments, BaseArguments, Seq2SeqTrainingArguments. Args: add_version (bool): Whether to add a versioned subdirectory like '-' to the `output_dir` to prevent overwriting existing checkpoints. Defaults to True. create_checkpoint_symlink (bool): Whether to create additional symbolic links for checkpoints, which can be useful for automated training scripts. The symlinks for the best and last models will be created at `f'{output_dir}/best'` and `f'{output_dir}/last'`, respectively. Defaults to False. output_dir (Optional[str]): The directory to save model outputs. Defaults to 'output/'. learning_rate (Optional[float]): The learning rate. Defaults to 1e-5 for full-parameter training and 1e-4 for tuners like LoRA. Note: To set a minimum learning rate (min_lr), you can pass the arguments --lr_scheduler_type cosine_with_min_lr --lr_scheduler_kwargs '{"min_lr": 1e-6}'. eval_strategy (Optional[str]): The evaluation strategy. By default, it aligns with `save_strategy`. It will default to 'no' if no validation dataset is provided (i.e., `val_dataset` and `eval_dataset` are not used, and `split_dataset_ratio` is 0). fp16 (Optional[bool]): Defaults to None. bf16 (Optional[bool]): Defaults to None. max_new_tokens (int): Overrides generation parameters. The maximum number of new tokens to generate when `predict_with_generate` is True. Defaults to 64. temperature (float): Overrides generation parameters. The temperature for sampling when `predict_with_generate` is True. Defaults to 0.0. load_args (bool): Whether to load `args.json` from a saved directory when `--resume_from_checkpoint`, `--model`, or `--adapters` is specified. For details on which keys are loaded, refer to `base_args.py`. Defaults to `True` for inference and exporting, and `False` for training. This argument typically does not need to be modified. zero_hpz_partition_size (Optional[int]): A feature of ZeRO++. Enables model sharding within a node and data sharding between nodes. If you encounter `grad_norm` NaN issues, consider trying `--torch_dtype float16`. Defaults to None. deepspeed_autotp_size (Optional[int]): The tensor parallelism size for DeepSpeed AutoTP. To use this, the `--deepspeed` argument must be set to 'zero0', 'zero1', or 'zero2'. Note: This feature only supports full-parameter fine-tuning. Defaults to None. """ add_version: bool = True create_checkpoint_symlink: bool = False # override output_dir: Optional[str] = None learning_rate: Optional[float] = None eval_strategy: Optional[str] = None # steps, epoch fp16: Optional[bool] = None bf16: Optional[bool] = None # extra max_new_tokens: int = 64 temperature: float = 0. load_args: bool = False # zero++ zero_hpz_partition_size: Optional[int] = None # auto_tp deepspeed_autotp_size: Optional[int] = None # fsdp fsdp: Optional[str] = None def _check_padding_free(self): if self.padding_free or self.packing: if self.packing: feature = 'packing' self.padding_free = True else: feature = 'padding_free' supported_impls = ['flash_attn', 'flash_attention_2', 'flash_attention_3', 'flash_attention_4'] if self.attn_impl not in supported_impls: supported_impls_str = ', '.join([f'"{impl}"' for impl in supported_impls]) raise ValueError(f'The "{feature}" feature requires a flash attention implementation. ' f'Please use one of: {supported_impls_str}.') def __post_init__(self) -> None: if self.resume_from_checkpoint: self.resume_from_checkpoint = to_abspath(self.resume_from_checkpoint, True) # The non-resume_only_model will have its weights loaded in the trainer. if self.resume_only_model: if self.tuner_type == 'full': self.model = self.resume_from_checkpoint else: self.adapters = [self.resume_from_checkpoint] BaseArguments.__post_init__(self) self._init_override() TunerArguments.__post_init__(self) self._check_padding_free() if self.vit_gradient_checkpointing is None: self.vit_gradient_checkpointing = not self.freeze_vit if self.optimizer is None: if self.lorap_lr_ratio: self.optimizer = 'lorap' elif self.use_galore: self.optimizer = 'galore' if len(self.dataset) == 0 and len(self.cached_dataset) == 0: raise ValueError(f'self.dataset: {self.dataset}, self.cached_dataset: {self.cached_dataset}. ' 'Please input the training dataset.') self._handle_pai_compat() self._init_deepspeed() self._init_fsdp() self._init_device() if getattr(self, 'accelerator_config', None) is None: self.accelerator_config = {'dispatch_batches': False} if not (self.eval_dataset or self._val_dataset_exists): self.eval_strategy = 'no' self.training_args = TrainerFactory.get_training_args(self) self.training_args.remove_unused_columns = False self._add_version() if 'swanlab' in self.report_to: self._init_swanlab() def _init_override(self): self._init_output_dir() self._init_metric() if self.learning_rate is None: if self.tuner_type == 'full': self.learning_rate = 1e-5 else: self.learning_rate = 1e-4 self._init_eval_strategy() def _init_deepspeed(self): if self.deepspeed: require_version('deepspeed') if is_mp() and not self.use_ray: raise ValueError('DeepSpeed is not compatible with `device_map`. ' f'n_gpu: {get_device_count()}, ' f'local_world_size: {self.local_world_size}.') ds_config_folder = os.path.abspath(os.path.join(os.path.dirname(__file__), '..', 'config')) deepspeed_mapping = { name: f'{name}.json' for name in ['zero0', 'zero1', 'zero2', 'zero3', 'zero2_offload', 'zero3_offload'] } for ds_name, ds_config in deepspeed_mapping.items(): if self.deepspeed == ds_name: self.deepspeed = os.path.join(ds_config_folder, ds_config) break self.deepspeed = json_parse_to_dict(self.deepspeed) if self.zero_hpz_partition_size is not None: assert 'zero_optimization' in self.deepspeed self.deepspeed['zero_optimization']['zero_hpz_partition_size'] = self.zero_hpz_partition_size logger.warn('If `zero_hpz_partition_size`(ZeRO++) causes grad_norm NaN, please' ' try `--torch_dtype float16`') if self.deepspeed_autotp_size is not None: assert self.deepspeed is not None, ( 'To use `deepspeed_autotp_size`, you need to additionally set the `--deepspeed` argument.') self.deepspeed['tensor_parallel'] = {'autotp_size': self.deepspeed_autotp_size} self.deepspeed['zero_optimization']['gather_16bit_weights_on_model_save'] = True logger.info(f'Using deepspeed: {self.deepspeed}') def _init_fsdp(self): if not self.fsdp: self.fsdp = [] return if is_mp() and not self.use_ray: raise ValueError('FSDP2 is not compatible with `device_map`. ' f'n_gpu: {get_device_count()}, ' f'local_world_size: {self.local_world_size}.') if self.deepspeed: raise ValueError('FSDP2 is not compatible with DeepSpeed.') fsdp_config_folder = os.path.abspath(os.path.join(os.path.dirname(__file__), '..', 'config')) # FSDP2 preset configurations fsdp_mapping = { 'fsdp2': 'fsdp2.json', } fsdp_config_path = self.fsdp for fsdp_name, fsdp_config in fsdp_mapping.items(): if self.fsdp == fsdp_name: fsdp_config_path = os.path.join(fsdp_config_folder, fsdp_config) break fsdp_config_dict = json_parse_to_dict(fsdp_config_path) # Extract fsdp string options (e.g., "full_shard auto_wrap offload") fsdp_options = fsdp_config_dict.get('fsdp', 'full_shard auto_wrap') self.fsdp = fsdp_options # Extract fsdp_config dict self.fsdp_config = fsdp_config_dict.get('fsdp_config', {}) # Set FSDP_VERSION environment variable for accelerate to recognize FSDP2 fsdp_version = self.fsdp_config.get('fsdp_version', 2) os.environ['FSDP_VERSION'] = str(fsdp_version) # Set environment variable to optimize NCCL memory usage if 'TORCH_NCCL_AVOID_RECORD_STREAMS' not in os.environ: os.environ['TORCH_NCCL_AVOID_RECORD_STREAMS'] = '1' # Check FSDP2 compatibility with other training arguments self._check_fsdp2_compatibility() logger.info(f'Using FSDP2: fsdp={self.fsdp}, fsdp_config={self.fsdp_config}') def _check_fsdp2_compatibility(self): """Check for incompatible argument combinations with FSDP2. FSDP2 has several known limitations: 1. save_only_model=True + SHARDED_STATE_DICT: Can't save only model weights with sharded state dict 2. gradient_checkpointing=True: Should use activation_checkpointing in fsdp_config instead """ state_dict_type = self.fsdp_config.get('state_dict_type', 'SHARDED_STATE_DICT') # Check 1: save_only_model + SHARDED_STATE_DICT if getattr(self, 'save_only_model', False) and 'SHARDED' in state_dict_type.upper(): raise ValueError( 'FSDP2 with SHARDED_STATE_DICT is not compatible with save_only_model=True. ' 'Either set save_only_model=False, or change state_dict_type to FULL_STATE_DICT in fsdp_config. ' 'Note: FULL_STATE_DICT requires more memory and is slower.') # Check 2: gradient_checkpointing should be disabled, use activation_checkpointing instead if getattr(self, 'gradient_checkpointing', False): activation_checkpointing = self.fsdp_config.get('activation_checkpointing', False) if activation_checkpointing: logger.warning('Both gradient_checkpointing and fsdp_config.activation_checkpointing are enabled. ' 'For FSDP2, it is recommended to use only activation_checkpointing in fsdp_config. ' 'Disabling gradient_checkpointing automatically.') self.gradient_checkpointing = False else: logger.warning( 'gradient_checkpointing is enabled with FSDP2. ' 'For better performance, consider using activation_checkpointing in fsdp_config instead. ' 'Add "activation_checkpointing": true to your fsdp_config.') def _handle_pai_compat(self) -> None: if not is_pai_training_job(): return logger.info('Handle pai compat...') pai_tensorboard_dir = get_pai_tensorboard_dir() if self.logging_dir is None and pai_tensorboard_dir is not None: self.logging_dir = pai_tensorboard_dir logger.info(f'Setting args.logging_dir: {self.logging_dir}') self.add_version = False logger.info(f'Setting args.add_version: {self.add_version}') def _add_version(self): """Prepare the output_dir""" if self.add_version: self.output_dir = add_version_to_work_dir(self.output_dir) logger.info(f'output_dir: {self.output_dir}') if self.logging_dir is None: self.logging_dir = f'{self.output_dir}/runs' self.logging_dir = to_abspath(self.logging_dir) os.makedirs(self.output_dir, exist_ok=True) if self.run_name is None: self.run_name = self.output_dir self.training_args.output_dir = self.output_dir self.training_args.run_name = self.run_name self.training_args.logging_dir = self.logging_dir def _init_output_dir(self): if self.output_dir is None: self.output_dir = f'output/{self.model_suffix}' self.output_dir = to_abspath(self.output_dir) def _init_eval_strategy(self): if self.eval_strategy is None: self.eval_strategy = self.save_strategy if self.eval_strategy == 'no': self.eval_steps = None if self.split_dataset_ratio > 0: self.split_dataset_ratio = 0. logger.info(f'Setting args.split_dataset_ratio: {self.split_dataset_ratio}') elif self.eval_strategy == 'steps' and self.eval_steps is None: self.eval_steps = self.save_steps self.evaluation_strategy = self.eval_strategy def _init_metric(self): if self.eval_metric is None: if self.task_type == 'causal_lm' and self.predict_with_generate: self.eval_metric = 'nlg' elif self.task_type == 'embedding': self.eval_metric = 'infonce' if self.loss_type == 'infonce' else 'paired' elif self.task_type in {'reranker', 'generative_reranker'}: self.eval_metric = 'reranker' if self.eval_metric == 'nlg': require_version('jieba', 'Setting `--eval_metric nlg` requires installing the jieba dependency.') if self.metric_for_best_model is None: self.metric_for_best_model = 'rouge-l' if self.predict_with_generate else 'loss' if self.greater_is_better is None and self.metric_for_best_model is not None: self.greater_is_better = 'loss' not in self.metric_for_best_model