; DeepH-E3 training config — generated by train_ham.py [basic] device = cuda dtype = float save_dir = /home/apolyukhin/Development/epc_ml/example/diamond/2_training/hamiltonian/results additional_folder_name = diamond_e3 simplified_output = False seed = 42 checkpoint_dir = use_new_hypp = True [data] graph_dir = DFT_data_dir = processed_data_dir = /home/apolyukhin/Development/epc_ml/example/diamond/2_training/hamiltonian/dataset save_graph_dir = /home/apolyukhin/Development/epc_ml/example/diamond/2_training/hamiltonian/graph target_data = hamiltonian dataset_name = diamond_qe_e3 get_overlap = False [train] num_epoch = 500 batch_size = 1 extra_validation = [] extra_val_test_only = True train_size = 30 val_size = 10 test_size = 10 min_lr = 1e-5 [hyperparameters] learning_rate = 0.002 Adam_betas = (0.9, 0.999) scheduler_type = 1 scheduler_params = (factor=0.5, cooldown=40, patience=120, threshold=0.05) revert_decay_patience = 20 revert_decay_rate = 0.8 [target] target = hamiltonian target_blocks_type = all target_blocks = selected_element_pairs = convert_net_out = False [network] cutoff_radius = 7.4 only_ij = False spherical_harmonics_lmax = 4 spherical_basis_irreps = irreps_embed = 64x0e irreps_mid = 64x0e+32x1o+16x2e+8x3o+8x4e num_blocks = 3 ignore_parity = False irreps_embed_node = irreps_edge_init = irreps_mid_node = irreps_post_node = irreps_out_node = irreps_mid_edge = irreps_post_edge = out_irreps =