# Copyright (c) ModelScope Contributors. All rights reserved. import torch.nn as nn from peft import PeftModel from transformers import Trainer as HfTrainer from typing import List, Optional, Tuple from swift.utils import get_logger from .base import OptimizerCallback logger = get_logger() def get_param_startswith(model, chosen_prefix: List[str], rejected_prefix: Optional[List[str]] = None) -> List[Tuple[str, nn.Parameter]]: chosen_prefix = chosen_prefix or [] rejected_prefix = rejected_prefix or [] res = [] if not chosen_prefix: return res is_peft_model = isinstance(model, PeftModel) if is_peft_model: model = model.model for n, p in model.named_parameters(): if not p.requires_grad: continue is_rejected = False for prefix in rejected_prefix: if n.startswith(prefix): is_rejected = True break if is_rejected: continue for prefix in chosen_prefix: if n.startswith(prefix): if is_peft_model: n = f'base_model.model.{n}' res.append((n, p)) break return res class MultimodalOptimizerCallback(OptimizerCallback): def create_optimizer(self): args = self.args model = self.trainer.model """ViT/Aligner/LLM use different learning rates.""" decay_parameters = set(HfTrainer.get_decay_parameter_names(None, model)) model_arch = model.model_meta.model_arch vit_parameters = get_param_startswith(model, model_arch.vision_tower, model_arch.aligner) aligner_parameters = get_param_startswith(model, model_arch.aligner) llm_parameters = get_param_startswith(model, model_arch.language_model) optimizer_grouped_parameters = [] vit_lr = args.vit_lr if args.vit_lr is not None else args.learning_rate aligner_lr = args.aligner_lr if args.aligner_lr is not None else args.learning_rate logger.info(f'vit_lr: {vit_lr}, aligner_lr: {aligner_lr}, llm_lr: {args.learning_rate}') for lr, parameters in zip([vit_lr, aligner_lr, args.learning_rate], [vit_parameters, aligner_parameters, llm_parameters]): for use_wd, wd in zip([False, True], [0., args.weight_decay]): if use_wd: params = [p for n, p in parameters if n in decay_parameters] else: params = [p for n, p in parameters if n not in decay_parameters] if not params: continue optimizer_grouped_parameters.append({ 'params': params, 'weight_decay': wd, 'lr': lr, }) optimizer_cls, optimizer_kwargs = HfTrainer.get_optimizer_cls_and_kwargs(args, model) return optimizer_cls(optimizer_grouped_parameters, **optimizer_kwargs)