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import torch |
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import sys |
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from torch import nn |
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from new_impl.cv.elasticdnn.api.model import ElasticDNN_OfflineVQAFMModel, ElasticDNN_OfflineVQAMDModel |
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from new_impl.cv.elasticdnn.api.algs.md_pretraining_wo_fbs import ElasticDNN_MDPretrainingWoFBSAlg |
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from new_impl.cv.elasticdnn.model.base import ElasticDNNUtil |
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from new_impl.cv.elasticdnn.pipeline.offline.fm_to_md.base import FM_to_MD_Util |
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from blip import FM_to_MD_blip_Util |
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from new_impl.cv.elasticdnn.pipeline.offline.fm_lora.base import FMLoRA_Util |
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from blip import FMLoRA_blip_Util |
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from blip import ElasticblipUtil |
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from utils.dl.common.model import LayerActivation2, get_module, get_parameter |
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from utils.common.exp import save_models_dict_for_init, get_res_save_dir |
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from data import build_scenario |
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from utils.dl.common.loss import CrossEntropyLossSoft |
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import torch.nn.functional as F |
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from utils.common.log import logger |
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class ElasticDNN_blip_OfflineVQAFMModel(ElasticDNN_OfflineVQAFMModel): |
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def generate_md_by_reducing_width(self, reducing_width_ratio, samples: torch.Tensor): |
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return FM_to_MD_blip_Util().init_md_from_fm_by_reducing_width_with_perf_test(self.models_dict['main'], |
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reducing_width_ratio, samples) |
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def get_feature_hook(self) -> LayerActivation2: |
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return LayerActivation2(get_module(self.models_dict['main'], 'text_decoder.cls.predictions.decoder')) |
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def get_elastic_dnn_util(self) -> ElasticDNNUtil: |
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return ElasticblipUtil() |
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def forward_to_get_task_loss(self, x, y, *args, **kwargs): |
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self.to_train_mode() |
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o = self.models_dict['main'](**y) |
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return o.loss |
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def get_lora_util(self) -> FMLoRA_Util: |
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return FMLoRA_blip_Util() |
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def get_task_head_params(self): |
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head = get_module(self.models_dict['main'], 'text_decoder.cls.predictions.decoder') |
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params_name = {k for k, v in head.named_parameters()} |
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logger.info(f'task head params: {params_name}') |
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return list(head.parameters()) |
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class ElasticDNN_blip_OfflineVQAMDModel(ElasticDNN_OfflineVQAMDModel): |
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def get_feature_hook(self) -> LayerActivation2: |
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return LayerActivation2(get_module(self.models_dict['main'], 'text_decoder.cls.predictions.decoder')) |
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def forward_to_get_task_loss(self, x, y, *args, **kwargs): |
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self.to_train_mode() |
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o = self.models_dict['main'](**y) |
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return o.loss |
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def get_distill_loss(self, student_output, teacher_output): |
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return F.mse_loss(student_output, teacher_output.detach()) |
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def get_matched_param_of_fm(self, self_param_name, fm: nn.Module): |
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if any([k in self_param_name for k in ['fbs', 'ab', 'embeddings']]): |
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return None |
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p = get_parameter(self.models_dict['main'], self_param_name) |
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if p.dim() == 0: |
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return None |
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elif p.dim() == 1 and 'LayerNorm' in self_param_name.lower() and 'weight' in self_param_name: |
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return get_parameter(fm, self_param_name) |
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elif p.dim() == 1 and 'norm' in self_param_name and 'weight' in self_param_name: |
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return get_parameter(fm, self_param_name) |
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if ('query' in self_param_name or 'key' in self_param_name or \ |
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'value' in self_param_name) and ('weight' in self_param_name): |
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ss = self_param_name.split('.') |
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fm_qkv_name = '.'.join(ss[0: -1]) + '.fc' |
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fm_qkv = get_module(fm, fm_qkv_name) |
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fm_abs_name = '.'.join(ss[0: -1]) + '.ab' |
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fm_abs = get_module(fm, fm_abs_name) |
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return torch.cat([ |
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fm_qkv.weight.data, |
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fm_abs[1].weight @ fm_abs[0].weight |
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], dim=0) |
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elif ('query' in self_param_name or 'key' in self_param_name or \ |
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'value' in self_param_name) and ('bias' in self_param_name): |
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ss = self_param_name.split('.') |
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fm_qkv_name = '.'.join(ss[0: -1]) + '.fc.bias' |
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return get_parameter(fm, fm_qkv_name) |
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elif 'intermediate.dense' in self_param_name: |
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fm_param_name = self_param_name.replace('.linear', '') |
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return get_parameter(fm, fm_param_name) |
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elif 'qkv.weight' in self_param_name: |
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ss = self_param_name.split('.') |
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fm_qkv_name = '.'.join(ss[0: -1]) + '.fc' |
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fm_qkv = get_module(fm, fm_qkv_name) |
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fm_abs_name = '.'.join(ss[0: -1]) + '.ab' |
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fm_abs = get_module(fm, fm_abs_name) |
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return torch.cat([ |
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fm_qkv.weight.data, |
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fm_abs[1].weight @ fm_abs[0].weight |
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], dim=0) |
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elif 'mlp.fc1' in self_param_name and 'weight' in self_param_name: |
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fm_param_name = self_param_name.replace('.linear', '') |
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return get_parameter(fm, fm_param_name) |
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elif 'mlp.fc2' in self_param_name and 'weight' in self_param_name: |
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fm_param_name = self_param_name |
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res = get_parameter(fm, fm_param_name) |
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return res |
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else: |
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return None |
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if __name__ == '__main__': |
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from utils.dl.common.env import set_random_seed |
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set_random_seed(1) |
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scenario = build_scenario( |
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source_datasets_name=['VQA_split1'], |
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target_datasets_order=['VQA_split1_c'] * 1, |
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da_mode='close_set', |
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data_dirs={ |
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'VQA_split1': '/data/zql/datasets/vqav2', |
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'VQA_split1_c': '/data/zql/datasets/vqav2' |
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}, |
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) |
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fm_models_dict_path = 'new_impl/mm/Vis_bert/QuestionAnswering/results/blip_fbs.py/20231020/999999-162038-/data/zql/concept-drift-in-edge-projects/UniversalElasticNet/new_impl/mm/Vis_bert/QuestionAnswering/blip_fbs.py/models/fm_best.pt' |
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fm_models = torch.load(fm_models_dict_path) |
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fm_models_dict_path = save_models_dict_for_init(fm_models, __file__, 'fm_blip_vqa_lora') |
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md_models_dict_path = save_models_dict_for_init( |
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torch.load('new_impl/mm/Vis_bert/QuestionAnswering/results/blip_fbs.py/20231020/999999-162038-/data/zql/concept-drift-in-edge-projects/UniversalElasticNet/new_impl/mm/Vis_bert/QuestionAnswering/blip_fbs.py/models/md_best.pt'), |
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__file__, 'md_blip_vqa_raw_pretrained') |
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device = 'cuda' |
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fm_model = ElasticDNN_blip_OfflineVQAFMModel('fm', fm_models_dict_path, device) |
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md_model = ElasticDNN_blip_OfflineVQAMDModel('md', md_models_dict_path, device) |
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models = { |
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'fm': fm_model, |
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'md': md_model |
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} |
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from new_impl.cv.elasticdnn.api.algs.md_pretraining_index_v2_train_index_and_md import ElasticDNN_MDPretrainingIndexAlg |
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fm_to_md_alg = ElasticDNN_MDPretrainingIndexAlg(models, get_res_save_dir(__file__, sys.argv[0])) |
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sample_dataset = list(scenario.get_offline_datasets().values())[0]['train'] |
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sample = sample_dataset[0][0] |
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from utils.dl.common.lr_scheduler import get_linear_schedule_with_warmup |
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fm_to_md_alg.run(scenario, hyps={ |
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'launch_tbboard': False, |
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'samples_size': sample, |
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'FBS_r': 8, |
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'FBS_ignore_layers': [], |
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'train_batch_size': 16, |
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'val_batch_size': 256, |
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'num_workers': 16, |
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'optimizer': 'AdamW', |
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'optimizer_args': {'lr': 1e-4, 'betas': [0.9, 0.999], 'weight_decay': 0.01}, |
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'scheduler': 'LambdaLR', |
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'scheduler_args': {'lr_lambda': get_linear_schedule_with_warmup(10000, 70000)}, |
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'indexes_optimizer_args': {'lr': 3e-3, 'momentum': 0.9, 'weight_decay': 5e-4}, |
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'num_iters': 80000, |
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'val_freq': 20, |
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'max_sparsity': 0.9, |
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'min_sparsity': 0.0, |
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'l1_reg_loss_weight': 1e-9, |
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'index_loss_weight': 1e-4, |
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'val_num_sparsities': 4, |
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'bn_cal_num_iters': 0, |
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'index_init': 'zero', |
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'index_guided_linear_comb_split_size': 512 |
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}) |
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