exp_name: SSN # model related model: name: 'SSN' in_channels: 1 out_channels: 1 resnet: False mid_act: "relu" out_act: 'relu' optimizer: 'Adam' weight_decay: 4e-5 beta1: 0.9 # dataset dataset: name: 'SSN_Dataset' hdf5_file: 'Dataset/SSN/ssn_shadow/shadow_base/ssn_base.hdf5' shadow_per_epoch: 10 # test_dataset: # name: 'SSN_Dataset' # hdf5_file: 'Dataset/SSN/ssn_shadow/shadow_base/ssn_base.hdf5' # training related hyper_params: lr: 1e-3 epochs: 100000 workers: 40 batch_size: 10 save_epoch: 10 eval_batch: 10 eval_save: False # visualization vis_iter: 100 # iteration for visualization save_iter: 100 n_cols: 5 gpus: - 0 - 1 default_folder: 'weights' resume: False weight_file: 'latest'