import os import sys sys.path.append('../') from models.model import SVHNmodel from core.dann import train_dann from utils.utils import get_data_loader, init_model, init_random_seed class Config(object): # params for path dataset_root = os.path.expanduser(os.path.join('~', 'Datasets')) model_root = os.path.expanduser(os.path.join('~', 'Models', 'pytorch-DANN')) # params for datasets and data loader batch_size = 128 # params for source dataset src_dataset = "svhn" src_model_trained = True src_classifier_restore = os.path.join(model_root, src_dataset + '-source-classifier-final.pt') # params for target dataset tgt_dataset = "mnist" tgt_model_trained = True dann_restore = os.path.join(model_root, src_dataset + '-' + tgt_dataset + '-dann-final.pt') # params for pretrain num_epochs_src = 100 log_step_src = 10 save_step_src = 50 eval_step_src = 20 # params for training dann ## for digit num_epochs = 200 log_step = 20 save_step = 50 eval_step = 5 ## for office # num_epochs = 1000 # log_step = 10 # iters # save_step = 500 # eval_step = 5 # epochs manual_seed = 8888 alpha = 0 # params for optimizing models lr = 2e-4 params = Config() # init random seed init_random_seed(params.manual_seed) # load dataset src_data_loader = get_data_loader(params.src_dataset, params.dataset_root, params.batch_size, train=True) src_data_loader_eval = get_data_loader(params.src_dataset, params.dataset_root, params.batch_size, train=False) tgt_data_loader = get_data_loader(params.tgt_dataset, params.dataset_root, params.batch_size, train=True) tgt_data_loader_eval = get_data_loader(params.tgt_dataset, params.dataset_root, params.batch_size, train=False) # load dann model dann = init_model(net=SVHNmodel(), restore=None) # train dann model print("Training dann model") if not (dann.restored and params.dann_restore): dann = train_dann(dann, params, src_data_loader, tgt_data_loader, tgt_data_loader_eval) # eval dann model print("Evaluating dann for source domain {}".format(params.src_dataset)) eval(dann, src_data_loader_eval) print("Evaluating dann for target domain {}".format(params.tgt_dataset)) eval(dann, tgt_data_loader_eval)