2023-06-28 03:09:37.154578 cuda 2023-06-28 03:09:51.449183 Train: epoch: 1 batch: 0/4, loss: 0.693002 2023-06-28 03:10:37.293540 Validation: avg loss: 0.6892, avg acc: 58.0952% 2023-06-28 03:10:51.688451 Train: epoch: 2 batch: 0/4, loss: 0.687561 2023-06-28 03:11:36.852454 Validation: avg loss: 0.6810, avg acc: 58.0952% 2023-06-28 03:11:50.960553 Train: epoch: 3 batch: 0/4, loss: 0.681805 2023-06-28 03:12:36.129192 Validation: avg loss: 0.6913, avg acc: 58.0952% 2023-06-28 03:12:50.476572 Train: epoch: 4 batch: 0/4, loss: 0.665961 2023-06-28 03:13:35.487521 Validation: avg loss: 0.6886, avg acc: 58.0952% 2023-06-28 03:13:49.861003 Train: epoch: 5 batch: 0/4, loss: 0.644194 2023-06-28 03:14:35.147609 Validation: avg loss: 0.6877, avg acc: 58.0952% 2023-06-28 03:14:49.535890 Train: epoch: 6 batch: 0/4, loss: 0.622670 2023-06-28 03:15:34.784671 Validation: avg loss: 0.6870, avg acc: 58.0952% 2023-06-28 03:15:49.337855 Train: epoch: 7 batch: 0/4, loss: 0.599810 2023-06-28 03:16:34.214166 Validation: avg loss: 0.6969, avg acc: 41.9048% 2023-06-28 03:16:48.536066 Train: epoch: 8 batch: 0/4, loss: 0.545521 2023-06-28 03:17:33.960131 Validation: avg loss: 0.6841, avg acc: 55.2381% 2023-06-28 03:17:48.281651 Train: epoch: 9 batch: 0/4, loss: 0.452313 2023-06-28 03:18:33.276105 Validation: avg loss: 0.6612, avg acc: 72.3810% 2023-06-28 03:18:47.585477 Train: epoch: 10 batch: 0/4, loss: 0.390662 2023-06-28 03:19:32.407151 Validation: avg loss: 0.6701, avg acc: 50.4762% 2023-06-28 03:19:46.747612 Train: epoch: 11 batch: 0/4, loss: 0.324581 2023-06-28 03:20:31.709394 Validation: avg loss: 0.5978, avg acc: 67.6190% 2023-06-28 03:20:45.958098 Train: epoch: 12 batch: 0/4, loss: 0.254065 2023-06-28 03:21:31.222952 Validation: avg loss: 0.5616, avg acc: 68.5714% 2023-06-28 03:21:45.962876 Train: epoch: 13 batch: 0/4, loss: 0.200924 2023-06-28 03:22:31.271403 Validation: avg loss: 0.5085, avg acc: 71.4286% 2023-06-28 03:22:45.628448 Train: epoch: 14 batch: 0/4, loss: 0.124987 2023-06-28 03:23:32.817547 Validation: avg loss: 0.4824, avg acc: 75.2381% 2023-06-28 03:23:47.162008 Train: epoch: 15 batch: 0/4, loss: 0.090232 2023-06-28 03:24:32.146921 Validation: avg loss: 0.5138, avg acc: 70.4762% 2023-06-28 03:24:46.642517 Train: epoch: 16 batch: 0/4, loss: 0.083759 2023-06-28 03:25:32.353083 Validation: avg loss: 0.5420, avg acc: 69.5238% 2023-06-28 03:25:47.131522 Train: epoch: 17 batch: 0/4, loss: 0.066651 2023-06-28 03:26:32.781357 Validation: avg loss: 0.5527, avg acc: 73.3333% 2023-06-28 03:26:47.379127 Train: epoch: 18 batch: 0/4, loss: 0.024152 2023-06-28 03:27:33.147812 Validation: avg loss: 0.5908, avg acc: 71.4286% 2023-06-28 03:27:47.568344 Train: epoch: 19 batch: 0/4, loss: 0.017142 2023-06-28 03:28:33.092234 Validation: avg loss: 0.5997, avg acc: 70.4762% 2023-06-28 03:28:47.603911 Train: epoch: 20 batch: 0/4, loss: 0.012679 2023-06-28 03:29:33.533011 Validation: avg loss: 0.6142, avg acc: 76.1905% 2023-06-28 03:29:48.120699 Train: epoch: 21 batch: 0/4, loss: 0.019406 2023-06-28 03:30:33.497260 Validation: avg loss: 0.6960, avg acc: 74.2857% 2023-06-28 03:30:47.796580 Train: epoch: 22 batch: 0/4, loss: 0.023462 2023-06-28 03:31:32.909514 Validation: avg loss: 0.7432, avg acc: 73.3333% 2023-06-28 03:31:47.165250 Train: epoch: 23 batch: 0/4, loss: 0.010763 2023-06-28 03:32:31.899234 Validation: avg loss: 0.7907, avg acc: 72.3810% 2023-06-28 03:32:46.438450 Train: epoch: 24 batch: 0/4, loss: 0.013663 2023-06-28 03:33:31.940938 Validation: avg loss: 0.7950, avg acc: 68.5714% 2023-06-28 03:33:46.516226 Train: epoch: 25 batch: 0/4, loss: 0.006725 2023-06-28 03:34:32.670997 Validation: avg loss: 0.8249, avg acc: 69.5238% 2023-06-28 03:34:47.337794 Train: epoch: 26 batch: 0/4, loss: 0.004846 2023-06-28 03:35:33.504480 Validation: avg loss: 0.8479, avg acc: 72.3810% 2023-06-28 03:35:47.772504 Train: epoch: 27 batch: 0/4, loss: 0.005277 2023-06-28 03:36:32.575498 Validation: avg loss: 0.8493, avg acc: 72.3810% 2023-06-28 03:36:46.665919 Train: epoch: 28 batch: 0/4, loss: 0.011446 2023-06-28 03:37:31.196006 Validation: avg loss: 0.8339, avg acc: 71.4286% 2023-06-28 03:37:45.377302 Train: epoch: 29 batch: 0/4, loss: 0.003922 2023-06-28 03:38:30.580648 Validation: avg loss: 0.8505, avg acc: 72.3810% 2023-06-28 03:38:44.775296 Train: epoch: 30 batch: 0/4, loss: 0.002529 2023-06-28 03:39:29.493308 Validation: avg loss: 0.8773, avg acc: 71.4286% 2023-06-28 03:39:43.608244 Train: epoch: 31 batch: 0/4, loss: 0.001875 2023-06-28 03:40:28.207967 Validation: avg loss: 0.8870, avg acc: 70.4762% 2023-06-28 03:40:42.352605 Train: epoch: 32 batch: 0/4, loss: 0.002372 2023-06-28 03:41:27.482733 Validation: avg loss: 0.8911, avg acc: 72.3810% 2023-06-28 03:41:41.670935 Train: epoch: 33 batch: 0/4, loss: 0.003411 2023-06-28 03:42:26.716992 Validation: avg loss: 0.8858, avg acc: 72.3810% 2023-06-28 03:42:41.008464 Train: epoch: 34 batch: 0/4, loss: 0.002562 2023-06-28 03:43:26.039612 Validation: avg loss: 0.8796, avg acc: 72.3810% 2023-06-28 03:43:40.260189 Train: epoch: 35 batch: 0/4, loss: 0.003069 2023-06-28 03:44:25.722423 Validation: avg loss: 0.8868, avg acc: 72.3810% 2023-06-28 03:44:39.923484 Train: epoch: 36 batch: 0/4, loss: 0.001231 2023-06-28 03:45:25.127050 Validation: avg loss: 0.8910, avg acc: 73.3333% 2023-06-28 03:45:39.527841 Train: epoch: 37 batch: 0/4, loss: 0.001668 2023-06-28 03:46:24.319152 Validation: avg loss: 0.8928, avg acc: 73.3333% 2023-06-28 03:46:38.520530 Train: epoch: 38 batch: 0/4, loss: 0.001577 2023-06-28 03:47:23.353992 Validation: avg loss: 0.8915, avg acc: 73.3333% 2023-06-28 03:47:37.434393 Train: epoch: 39 batch: 0/4, loss: 0.001705 2023-06-28 03:48:22.834245 Validation: avg loss: 0.8936, avg acc: 73.3333% 2023-06-28 03:48:37.254894 Train: epoch: 40 batch: 0/4, loss: 0.001388 2023-06-28 03:49:22.471289 Validation: avg loss: 0.9009, avg acc: 73.3333% 2023-06-28 03:49:36.564547 Train: epoch: 41 batch: 0/4, loss: 0.000861 2023-06-28 03:50:21.412126 Validation: avg loss: 0.9012, avg acc: 74.2857% 2023-06-28 03:50:35.489009 Train: epoch: 42 batch: 0/4, loss: 0.001102 2023-06-28 03:51:20.143782 Validation: avg loss: 0.9065, avg acc: 74.2857% 2023-06-28 03:51:34.559930 Train: epoch: 43 batch: 0/4, loss: 0.000969 2023-06-28 03:52:19.340878 Validation: avg loss: 0.9071, avg acc: 74.2857% 2023-06-28 03:52:33.401578 Train: epoch: 44 batch: 0/4, loss: 0.000865 2023-06-28 03:53:18.033301 Validation: avg loss: 0.9177, avg acc: 73.3333% 2023-06-28 03:53:32.150168 Train: epoch: 45 batch: 0/4, loss: 0.000941 2023-06-28 03:54:17.146896 Validation: avg loss: 0.9327, avg acc: 74.2857% 2023-06-28 03:54:31.352235 Train: epoch: 46 batch: 0/4, loss: 0.000957 2023-06-28 03:55:17.407628 Validation: avg loss: 0.9416, avg acc: 74.2857% 2023-06-28 03:55:31.626750 Train: epoch: 47 batch: 0/4, loss: 0.000746 2023-06-28 03:56:16.058637 Validation: avg loss: 0.9409, avg acc: 74.2857% 2023-06-28 03:56:30.100803 Train: epoch: 48 batch: 0/4, loss: 0.001412 2023-06-28 03:57:14.611239 Validation: avg loss: 0.9413, avg acc: 73.3333% 2023-06-28 03:57:28.762473 Train: epoch: 49 batch: 0/4, loss: 0.000834 2023-06-28 03:58:13.474519 Validation: avg loss: 0.9323, avg acc: 75.2381% 2023-06-28 03:58:27.820951 Train: epoch: 50 batch: 0/4, loss: 0.000935 2023-06-28 03:59:12.546035 Validation: avg loss: 0.9237, avg acc: 74.2857%