# Copyright (c) OpenMMLab. All rights reserved. import json from typing import List import torch.nn as nn from mmengine.dist import get_dist_info from mmengine.logging import MMLogger from mmengine.optim import DefaultOptimWrapperConstructor from mmdet.registry import OPTIM_WRAPPER_CONSTRUCTORS def get_layer_id_for_vit(var_name, max_layer_id): """Get the layer id to set the different learning rates in ``layer_wise`` decay_type. Args: var_name (str): The key of the model. max_layer_id (int): Maximum layer id. Returns: int: The id number corresponding to different learning rate in ``LayerDecayOptimizerConstructor``. """ if var_name.startswith('backbone'): if 'patch_embed' in var_name or 'pos_embed' in var_name: return 0 elif '.blocks.' in var_name: layer_id = int(var_name.split('.')[2]) + 1 return layer_id else: return max_layer_id + 1 else: return max_layer_id + 1 @OPTIM_WRAPPER_CONSTRUCTORS.register_module() class LayerDecayOptimizerConstructor(DefaultOptimWrapperConstructor): # Different learning rates are set for different layers of backbone. # Note: Currently, this optimizer constructor is built for ViT. def add_params(self, params: List[dict], module: nn.Module, **kwargs) -> None: """Add all parameters of module to the params list. The parameters of the given module will be added to the list of param groups, with specific rules defined by paramwise_cfg. Args: params (list[dict]): A list of param groups, it will be modified in place. module (nn.Module): The module to be added. """ logger = MMLogger.get_current_instance() parameter_groups = {} logger.info(f'self.paramwise_cfg is {self.paramwise_cfg}') num_layers = self.paramwise_cfg.get('num_layers') + 2 decay_rate = self.paramwise_cfg.get('decay_rate') decay_type = self.paramwise_cfg.get('decay_type', 'layer_wise') logger.info('Build LayerDecayOptimizerConstructor ' f'{decay_type} {decay_rate} - {num_layers}') weight_decay = self.base_wd for name, param in module.named_parameters(): if not param.requires_grad: continue # frozen weights if name.startswith('backbone.blocks') and 'norm' in name: group_name = 'no_decay' this_weight_decay = 0. elif 'pos_embed' in name: group_name = 'no_decay_pos_embed' this_weight_decay = 0 else: group_name = 'decay' this_weight_decay = weight_decay layer_id = get_layer_id_for_vit( name, self.paramwise_cfg.get('num_layers')) logger.info(f'set param {name} as id {layer_id}') group_name = f'layer_{layer_id}_{group_name}' this_lr_multi = 1. if group_name not in parameter_groups: scale = decay_rate**(num_layers - 1 - layer_id) parameter_groups[group_name] = { 'weight_decay': this_weight_decay, 'params': [], 'param_names': [], 'lr_scale': scale, 'group_name': group_name, 'lr': scale * self.base_lr * this_lr_multi, } parameter_groups[group_name]['params'].append(param) parameter_groups[group_name]['param_names'].append(name) rank, _ = get_dist_info() if rank == 0: to_display = {} for key in parameter_groups: to_display[key] = { 'param_names': parameter_groups[key]['param_names'], 'lr_scale': parameter_groups[key]['lr_scale'], 'lr': parameter_groups[key]['lr'], 'weight_decay': parameter_groups[key]['weight_decay'], } logger.info(f'Param groups = {json.dumps(to_display, indent=2)}') params.extend(parameter_groups.values())