import random import torch class Config: DEBUG = False batch_size = 32 eval_batch_size = 128 test_percent = 20 val_percent = 10 learning_rate = 0.0001 decay_rate = 1 # 0.99**50=0.6, 0.99**100=0.36 n_epoch = 2 if DEBUG else 20 available_device = "cuda" if torch.cuda.is_available() and not DEBUG else "cpu" print(f"Device: {available_device}") workers = 1 if DEBUG else 40 # learned from evaluate_image_patcher_and_visualize.py laplacian_threshold = 298 # RANDOM SEED seed = 115 @staticmethod def reset_random_seeds(): random.seed(Config.seed) torch.manual_seed(Config.seed) class_names = ["BENIGN", "MALIGNANT"] class_idx_dict = {"BENIGN": 0, "MALIGNANT": 1} train_val_acc_max_distance_for_best_epoch = 6 # Percent n_epoch_for_image_patcher = 60 train_phase = False evaluate_phase = False Config.reset_random_seeds()