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| from typing import List | |
| from data.dataloader import build_dataloader | |
| # from methods.elasticdnn.api.online_model import ElasticDNN_OnlineModel | |
| from methods.elasticdnn.api.online_model_v2 import ElasticDNN_OnlineModel | |
| import torch | |
| import sys | |
| from torch import nn | |
| from methods.elasticdnn.api.model import ElasticDNN_OfflineSegFMModel, ElasticDNN_OfflineSegMDModel | |
| from methods.elasticdnn.api.algs.md_pretraining_wo_fbs import ElasticDNN_MDPretrainingWoFBSAlg | |
| from methods.elasticdnn.model.base import ElasticDNNUtil | |
| from methods.elasticdnn.pipeline.offline.fm_to_md.base import FM_to_MD_Util | |
| from methods.elasticdnn.pipeline.offline.fm_to_md.vit import FM_to_MD_ViT_Util | |
| from methods.elasticdnn.pipeline.offline.fm_lora.base import FMLoRA_Util | |
| from methods.elasticdnn.pipeline.offline.fm_lora.vit import FMLoRA_ViT_Util | |
| from methods.elasticdnn.model.vit import ElasticViTUtil | |
| from utils.common.file import ensure_dir | |
| from utils.dl.common.model import LayerActivation, get_module, get_parameter | |
| from utils.common.exp import save_models_dict_for_init, get_res_save_dir | |
| from data import build_scenario | |
| from utils.dl.common.loss import CrossEntropyLossSoft | |
| import torch.nn.functional as F | |
| from utils.dl.common.env import create_tbwriter | |
| import os | |
| from utils.common.log import logger | |
| from utils.common.data_record import write_json | |
| # from methods.shot.shot import OnlineShotModel | |
| from methods.feat_align.main import FeatAlignAlg | |
| import tqdm | |
| from methods.feat_align.mmd import mmd_rbf | |
| from experiments.utils.elasticfm_da import init_online_model, elasticfm_da | |
| os.environ['TOKENIZERS_PARALLELISM'] = 'false' | |
| device = 'cuda' | |
| app_name = 'vqa' | |
| sd_sparsity = 0.8 | |
| settings = { | |
| 'involve_fm': True | |
| } | |
| target_datasets = ['VQAv2_split1_c_gaussian_noise', 'VQAv2_split1_c_shot_noise', 'VQAv2_split1_c_impulse_noise', 'VQAv2_split1_c_defocus_blur', 'VQAv2_split1_c_glass_blur', 'VQAv2_split1_c_motion_blur', 'VQAv2_split1_c_zoom_blur', 'VQAv2_split1_c_snow', 'VQAv2_split1_c_frost', 'VQAv2_split1_c_fog', 'VQAv2_split1_c_brightness', 'VQAv2_split1_c_contrast', 'VQAv2_split1_c_elastic_transform', 'VQAv2_split1_c_pixelate', 'VQAv2_split1_c_jpeg_compression', 'VQAv2_split1_c_speckle_noise', 'VQAv2_split1_c_gaussian_blur', 'VQAv2_split1_c_spatter', 'VQAv2_split1_c_saturate'] * 2 | |
| target_datasets = target_datasets[0: 30] | |
| assert len(target_datasets) == 30 | |
| scenario = build_scenario( | |
| source_datasets_name=['VQAv2_split1'], | |
| target_datasets_order=target_datasets, | |
| da_mode='close_set', | |
| data_dirs={ | |
| k: '/data/zql/datasets/vqav2' for k in ['VQAv2_split1', 'VQAv2_split1_c_gaussian_noise', 'VQAv2_split1_c_shot_noise', 'VQAv2_split1_c_impulse_noise', 'VQAv2_split1_c_defocus_blur', 'VQAv2_split1_c_glass_blur', 'VQAv2_split1_c_motion_blur', 'VQAv2_split1_c_zoom_blur', 'VQAv2_split1_c_snow', 'VQAv2_split1_c_frost', 'VQAv2_split1_c_fog', 'VQAv2_split1_c_brightness', 'VQAv2_split1_c_contrast', 'VQAv2_split1_c_elastic_transform', 'VQAv2_split1_c_pixelate', 'VQAv2_split1_c_jpeg_compression', 'VQAv2_split1_c_speckle_noise', 'VQAv2_split1_c_gaussian_blur', 'VQAv2_split1_c_spatter', 'VQAv2_split1_c_saturate'] | |
| }, | |
| ) | |
| from experiments.elasticdnn.vilt.online.vqa.model import ElasticDNN_VQAOnlineModel | |
| elasticfm_model = ElasticDNN_VQAOnlineModel('vqa', init_online_model( | |
| 'experiments/elasticdnn/vilt/offline/fm_to_md/vqa/results/vqa_w_fbs_index.py/20230731/999999-095720-trial/models/fm_best.pt', | |
| 'experiments/elasticdnn/vilt/offline/fm_to_md/vqa/results/vqa_w_fbs_index.py/20230731/999999-095720-trial/models/md_best.pt', | |
| 'vqa', __file__ | |
| ), device, { | |
| 'md_to_fm_alpha': 0.2, | |
| 'fm_to_md_alpha': 0.2 | |
| }) | |
| da_alg = FeatAlignAlg | |
| from experiments.elasticdnn.vilt.online.vqa.model import VQAOnlineFeatAlignModel | |
| da_model = VQAOnlineFeatAlignModel | |
| da_alg_hyp = { | |
| 'train_batch_size': 64, | |
| 'val_batch_size': 256, | |
| 'num_workers': 0, | |
| 'optimizer': 'AdamW', | |
| 'optimizer_args': {'lr': 1e-6, 'betas': [0.9, 0.999], 'weight_decay': 0.01}, | |
| 'scheduler': '', | |
| 'scheduler_args': {}, | |
| 'num_iters': 100, | |
| 'val_freq': 20, | |
| 'feat_align_loss_weight': 1.0, | |
| 'sd_sparsity': 0.7 | |
| } | |
| elasticfm_da( | |
| [app_name], | |
| [scenario], | |
| [elasticfm_model], | |
| [da_alg], | |
| [da_alg_hyp], | |
| [da_model], | |
| device, | |
| settings, | |
| __file__, | |
| sys.argv[1] | |
| ) | |