update code styles
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@ -1,6 +1,6 @@
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MIT License
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Copyright (c) 2019 Xuanyi Dong [GitHub: https://github.com/D-X-Y]
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Copyright (c) 2019 Xuanyi Dong (GitHub: https://github.com/D-X-Y)
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Permission is hereby granted, free of charge, to any person obtaining a copy
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of this software and associated documentation files (the "Software"), to deal
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@ -87,7 +87,8 @@ def test_one_shot_model(ckpath, use_train):
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ckp = torch.load(ckpath)
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xargs = ckp['args']
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train_data, valid_data, xshape, class_num = get_datasets(xargs.dataset, xargs.data_path, -1)
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config = load_config(xargs.config_path, {'class_num': class_num, 'xshape': xshape}, None)
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#config = load_config(xargs.config_path, {'class_num': class_num, 'xshape': xshape}, None)
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config = load_config('./configs/nas-benchmark/algos/DARTS.config', {'class_num': class_num, 'xshape': xshape}, None)
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if xargs.dataset == 'cifar10':
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cifar_split = load_config('configs/nas-benchmark/cifar-split.txt', None, None)
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xvalid_data = deepcopy(train_data)
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@ -15,14 +15,16 @@ def evaluate_one_shot(model, xloader, api, cal_mode, seed=111):
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with torch.no_grad():
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logits = nn.functional.log_softmax(model.arch_parameters, dim=-1)
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archs = CellStructure.gen_all(model.op_names, model.max_nodes, False)
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probs, accuracies, gt_accs = [], [], []
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probs, accuracies, gt_accs_10_valid, gt_accs_10_test = [], [], [], []
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loader_iter = iter(xloader)
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random.seed(seed)
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random.shuffle(archs)
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for idx, arch in enumerate(archs):
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arch_index = api.query_index_by_arch( arch )
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metrics = api.get_more_info(arch_index, 'cifar10-valid', None, False, False)
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gt_accs.append( metrics['valid-accuracy'] )
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gt_accs_10_valid.append( metrics['valid-accuracy'] )
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metrics = api.get_more_info(arch_index, 'cifar10', None, False, False)
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gt_accs_10_test.append( metrics['test-accuracy'] )
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select_logits = []
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for i, node_info in enumerate(arch.nodes):
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for op, xin in node_info:
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@ -31,8 +33,9 @@ def evaluate_one_shot(model, xloader, api, cal_mode, seed=111):
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select_logits.append( logits[model.edge2index[node_str], op_index] )
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cur_prob = sum(select_logits).item()
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probs.append( cur_prob )
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cor_prob = np.corrcoef(probs, gt_accs)[0,1]
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print ('correlation for probabilities : {:}'.format(cor_prob))
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cor_prob_valid = np.corrcoef(probs, gt_accs_10_valid)[0,1]
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cor_prob_test = np.corrcoef(probs, gt_accs_10_test )[0,1]
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print ('{:} correlation for probabilities : {:.6f} on CIFAR-10 validation and {:.6f} on CIFAR-10 test'.format(time_string(), cor_prob_valid, cor_prob_test))
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for idx, arch in enumerate(archs):
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model.set_cal_mode('dynamic', arch)
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@ -45,8 +48,9 @@ def evaluate_one_shot(model, xloader, api, cal_mode, seed=111):
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_, preds = torch.max(logits, dim=-1)
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correct = (preds == targets.cuda() ).float()
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accuracies.append( correct.mean().item() )
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if idx != 0 and (idx % 300 == 0 or idx + 1 == len(archs) or idx == 10):
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cor_accs = np.corrcoef(accuracies, gt_accs[:idx+1])[0,1]
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print ('{:} {:03d}/{:03d} mode={:5s}, correlation : accs={:.4f}, arch={:}'.format(time_string(), idx, len(archs), 'Train' if cal_mode else 'Eval', cor_accs, arch))
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if idx != 0 and (idx % 500 == 0 or idx + 1 == len(archs)):
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cor_accs_valid = np.corrcoef(accuracies, gt_accs_10_valid[:idx+1])[0,1]
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cor_accs_test = np.corrcoef(accuracies, gt_accs_10_test [:idx+1])[0,1]
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print ('{:} {:05d}/{:05d} mode={:5s}, correlation : accs={:.5f} for CIFAR-10 valid, {:.5f} for CIFAR-10 test.'.format(time_string(), idx, len(archs), 'Train' if cal_mode else 'Eval', cor_accs_valid, cor_accs_test))
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model.load_state_dict(weights)
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return archs, probs, accuracies
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