{ "config_schema_version": 1, "family_name": "aimnet2-nse", "ensemble_size": 4, "member_names": [ "aimnet2nse_0", "aimnet2nse_1", "aimnet2nse_2", "aimnet2nse_3" ], "cutoff": 5.0, "needs_coulomb": true, "needs_dispersion": true, "coulomb_mode": "sr_embedded", "implemented_species": [ 1, 5, 6, 7, 8, 9, 14, 15, 16, 17, 33, 34, 35, 53 ], "library_name": "aimnet", "tags": [ "chemistry", "molecular-dynamics", "force-field", "aimnet2" ], "model_yaml": "class: aimnet.models.aimnet2.AIMNet2\nkwargs:\n nfeature: 16\n d2features: true\n ncomb_v: 12\n hidden:\n - - 512\n - 380\n - - 512\n - 380\n - - 512\n - 380\n - 380\n aim_size: 256\n num_charge_channels: 2\n aev:\n rc_s: 5.0\n nshifts_s: 16\n outputs:\n energy_mlp:\n class: aimnet.modules.Output\n kwargs:\n n_in: 256\n n_out: 1\n key_in: aim\n key_out: energy\n mlp:\n activation_fn: torch.nn.GELU\n last_linear: true\n hidden:\n - 128\n - 128\n atomic_shift:\n class: aimnet.modules.AtomicShift\n kwargs:\n key_in: energy\n key_out: energy\n atomic_sum:\n class: aimnet.modules.AtomicSum\n kwargs:\n key_in: energy\n key_out: energy\n srcoulomb:\n class: aimnet.modules.SRCoulomb\n kwargs:\n rc: 4.199999809265137\n key_in: charges\n key_out: energy\n envelope: exp\n", "format_version": 2, "d3_params": { "s8": 0.3908, "a1": 0.566, "a2": 3.128, "s6": 1.0 }, "coulomb_sr_rc": 4.199999809265137, "coulomb_sr_envelope": "exp", "has_embedded_lr": true }