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import os, json |
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import torch |
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from tqdm import tqdm |
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from modules.dataset_init import prepare_dataset |
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from modules.infer_lib import grab_corpus_feature, eval_epoch |
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from utils.basic_utils import get_logger |
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from utils.setup import set_seed, get_args |
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from utils.run_utils import prepare_optimizer, prepare_model, logger_ndcg_iou, resume_model |
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def main(): |
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opt = get_args() |
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logger = get_logger(opt.results_path, opt.exp_id) |
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set_seed(opt.seed) |
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logger.info("Arguments:\n%s", json.dumps(vars(opt), indent=4)) |
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opt.device = torch.device('cuda' if torch.cuda.is_available() else 'cpu') |
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logger.info(f"device: {opt.device}") |
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train_loader, corpus_loader, corpus_video_list, val_loader, test_loader, val_gt, test_gt = prepare_dataset(opt) |
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model = prepare_model(opt, logger) |
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model, _, _ = resume_model(logger, opt, model) |
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model.eval() |
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corpus_feature = grab_corpus_feature(model, corpus_loader, opt.device) |
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val_ndcg_iou = eval_epoch(model, corpus_feature, val_loader, val_gt, opt, corpus_video_list) |
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test_ndcg_iou = eval_epoch(model, corpus_feature, test_loader, test_gt, opt, corpus_video_list) |
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logger_ndcg_iou(val_ndcg_iou, logger, "VAL") |
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logger_ndcg_iou(test_ndcg_iou, logger, "TEST") |
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if __name__ == '__main__': |
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main() |
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