2023-06-27 23:48:12.676545 cuda 2023-06-27 23:48:26.762922 Train: epoch: 1 batch: 0/4, loss: 0.692719 2023-06-27 23:49:11.360796 Validation: avg loss: 0.6874, avg acc: 59.0476% 2023-06-27 23:49:25.567329 Train: epoch: 2 batch: 0/4, loss: 0.694902 2023-06-27 23:50:10.296476 Validation: avg loss: 0.6767, avg acc: 59.0476% 2023-06-27 23:50:24.635274 Train: epoch: 3 batch: 0/4, loss: 0.748423 2023-06-27 23:51:09.163575 Validation: avg loss: 0.6772, avg acc: 59.0476% 2023-06-27 23:51:23.470784 Train: epoch: 4 batch: 0/4, loss: 0.668663 2023-06-27 23:52:07.813810 Validation: avg loss: 0.6772, avg acc: 59.0476% 2023-06-27 23:52:21.899027 Train: epoch: 5 batch: 0/4, loss: 0.706061 2023-06-27 23:53:07.070617 Validation: avg loss: 0.6767, avg acc: 59.0476% 2023-06-27 23:53:21.447441 Train: epoch: 6 batch: 0/4, loss: 0.642712 2023-06-27 23:54:06.452342 Validation: avg loss: 0.6765, avg acc: 59.0476% 2023-06-27 23:54:20.942774 Train: epoch: 7 batch: 0/4, loss: 0.599767 2023-06-27 23:55:06.229018 Validation: avg loss: 0.6817, avg acc: 59.0476% 2023-06-27 23:55:20.888484 Train: epoch: 8 batch: 0/4, loss: 0.571694 2023-06-27 23:56:06.082262 Validation: avg loss: 0.7155, avg acc: 59.0476% 2023-06-27 23:56:20.563207 Train: epoch: 9 batch: 0/4, loss: 0.544862 2023-06-27 23:57:05.395680 Validation: avg loss: 0.6855, avg acc: 59.0476% 2023-06-27 23:57:19.790148 Train: epoch: 10 batch: 0/4, loss: 0.440930 2023-06-27 23:58:04.789425 Validation: avg loss: 0.6718, avg acc: 59.0476% 2023-06-27 23:58:19.325372 Train: epoch: 11 batch: 0/4, loss: 0.377782 2023-06-27 23:59:04.998068 Validation: avg loss: 0.6241, avg acc: 59.0476% 2023-06-27 23:59:19.486408 Train: epoch: 12 batch: 0/4, loss: 0.324883 2023-06-28 00:00:04.747729 Validation: avg loss: 0.6436, avg acc: 60.0000% 2023-06-28 00:00:19.341636 Train: epoch: 13 batch: 0/4, loss: 0.278890 2023-06-28 00:01:04.832568 Validation: avg loss: 0.5584, avg acc: 66.6667% 2023-06-28 00:01:19.377407 Train: epoch: 14 batch: 0/4, loss: 0.166610 2023-06-28 00:02:04.890031 Validation: avg loss: 0.5498, avg acc: 71.4286% 2023-06-28 00:02:19.093233 Train: epoch: 15 batch: 0/4, loss: 0.137812 2023-06-28 00:03:03.813998 Validation: avg loss: 0.5520, avg acc: 72.3810% 2023-06-28 00:03:17.912250 Train: epoch: 16 batch: 0/4, loss: 0.082624 2023-06-28 00:04:02.792006 Validation: avg loss: 0.5491, avg acc: 77.1429% 2023-06-28 00:04:17.202393 Train: epoch: 17 batch: 0/4, loss: 0.068832 2023-06-28 00:05:02.498994 Validation: avg loss: 0.5363, avg acc: 80.9524% 2023-06-28 00:05:16.720201 Train: epoch: 18 batch: 0/4, loss: 0.040624 2023-06-28 00:06:01.866280 Validation: avg loss: 0.5907, avg acc: 76.1905% 2023-06-28 00:06:16.861147 Train: epoch: 19 batch: 0/4, loss: 0.026078 2023-06-28 00:07:01.990593 Validation: avg loss: 0.7162, avg acc: 72.3810% 2023-06-28 00:07:16.178375 Train: epoch: 20 batch: 0/4, loss: 0.032948 2023-06-28 00:08:01.200749 Validation: avg loss: 0.8366, avg acc: 69.5238% 2023-06-28 00:08:15.625394 Train: epoch: 21 batch: 0/4, loss: 0.019867 2023-06-28 00:09:00.661095 Validation: avg loss: 0.8742, avg acc: 69.5238% 2023-06-28 00:09:14.899593 Train: epoch: 22 batch: 0/4, loss: 0.019119 2023-06-28 00:09:59.624718 Validation: avg loss: 0.8526, avg acc: 72.3810% 2023-06-28 00:10:13.976701 Train: epoch: 23 batch: 0/4, loss: 0.013461 2023-06-28 00:10:59.149665 Validation: avg loss: 0.8197, avg acc: 74.2857% 2023-06-28 00:11:13.582789 Train: epoch: 24 batch: 0/4, loss: 0.011778 2023-06-28 00:11:58.923315 Validation: avg loss: 0.8129, avg acc: 73.3333% 2023-06-28 00:12:13.196466 Train: epoch: 25 batch: 0/4, loss: 0.008090 2023-06-28 00:12:58.233841 Validation: avg loss: 0.8435, avg acc: 74.2857% 2023-06-28 00:13:12.497409 Train: epoch: 26 batch: 0/4, loss: 0.007485 2023-06-28 00:13:58.058072 Validation: avg loss: 0.8873, avg acc: 73.3333% 2023-06-28 00:14:12.557283 Train: epoch: 27 batch: 0/4, loss: 0.012831 2023-06-28 00:14:57.797601 Validation: avg loss: 0.9106, avg acc: 77.1429% 2023-06-28 00:15:12.113567 Train: epoch: 28 batch: 0/4, loss: 0.008352 2023-06-28 00:15:57.620574 Validation: avg loss: 0.8554, avg acc: 75.2381% 2023-06-28 00:16:11.834754 Train: epoch: 29 batch: 0/4, loss: 0.003746 2023-06-28 00:16:57.506909 Validation: avg loss: 0.8870, avg acc: 74.2857% 2023-06-28 00:17:11.843754 Train: epoch: 30 batch: 0/4, loss: 0.006036 2023-06-28 00:17:56.766811 Validation: avg loss: 0.7923, avg acc: 76.1905% 2023-06-28 00:18:10.978173 Train: epoch: 31 batch: 0/4, loss: 0.003501 2023-06-28 00:18:55.909253 Validation: avg loss: 0.7713, avg acc: 78.0952% 2023-06-28 00:19:10.124389 Train: epoch: 32 batch: 0/4, loss: 0.003706 2023-06-28 00:19:55.141533 Validation: avg loss: 0.7787, avg acc: 77.1429% 2023-06-28 00:20:09.240360 Train: epoch: 33 batch: 0/4, loss: 0.002162 2023-06-28 00:20:54.349713 Validation: avg loss: 0.7848, avg acc: 78.0952% 2023-06-28 00:21:08.623282 Train: epoch: 34 batch: 0/4, loss: 0.002487 2023-06-28 00:21:53.630017 Validation: avg loss: 0.7555, avg acc: 77.1429% 2023-06-28 00:22:07.706382 Train: epoch: 35 batch: 0/4, loss: 0.002501 2023-06-28 00:22:52.953638 Validation: avg loss: 0.7596, avg acc: 76.1905% 2023-06-28 00:23:07.442662 Train: epoch: 36 batch: 0/4, loss: 0.001733 2023-06-28 00:23:52.886656 Validation: avg loss: 0.7571, avg acc: 77.1429% 2023-06-28 00:24:07.114257 Train: epoch: 37 batch: 0/4, loss: 0.001552 2023-06-28 00:24:52.605825 Validation: avg loss: 0.7792, avg acc: 77.1429% 2023-06-28 00:25:06.795100 Train: epoch: 38 batch: 0/4, loss: 0.001730 2023-06-28 00:25:52.150007 Validation: avg loss: 0.8097, avg acc: 77.1429% 2023-06-28 00:26:06.181996 Train: epoch: 39 batch: 0/4, loss: 0.001733 2023-06-28 00:26:50.730113 Validation: avg loss: 0.8571, avg acc: 80.0000% 2023-06-28 00:27:04.861965 Train: epoch: 40 batch: 0/4, loss: 0.002980 2023-06-28 00:27:50.246158 Validation: avg loss: 0.9048, avg acc: 75.2381% 2023-06-28 00:28:05.091455 Train: epoch: 41 batch: 0/4, loss: 0.001818 2023-06-28 00:28:50.104469 Validation: avg loss: 0.9164, avg acc: 76.1905% 2023-06-28 00:29:04.291436 Train: epoch: 42 batch: 0/4, loss: 0.002385 2023-06-28 00:29:49.425707 Validation: avg loss: 0.9623, avg acc: 74.2857% 2023-06-28 00:30:03.823110 Train: epoch: 43 batch: 0/4, loss: 0.000947 2023-06-28 00:30:48.510228 Validation: avg loss: 0.9341, avg acc: 75.2381% 2023-06-28 00:31:02.610482 Train: epoch: 44 batch: 0/4, loss: 0.001757 2023-06-28 00:31:47.867238 Validation: avg loss: 0.9372, avg acc: 76.1905% 2023-06-28 00:32:02.121239 Train: epoch: 45 batch: 0/4, loss: 0.001092 2023-06-28 00:32:53.404032 Validation: avg loss: 0.9359, avg acc: 76.1905% 2023-06-28 00:33:07.542866 Train: epoch: 46 batch: 0/4, loss: 0.000694 2023-06-28 00:33:53.051343 Validation: avg loss: 0.9180, avg acc: 75.2381% 2023-06-28 00:34:07.450520 Train: epoch: 47 batch: 0/4, loss: 0.000740 2023-06-28 00:34:52.014761 Validation: avg loss: 0.9117, avg acc: 74.2857% 2023-06-28 00:35:06.127767 Train: epoch: 48 batch: 0/4, loss: 0.000983 2023-06-28 00:35:50.953911 Validation: avg loss: 0.9229, avg acc: 74.2857% 2023-06-28 00:36:05.429212 Train: epoch: 49 batch: 0/4, loss: 0.000797 2023-06-28 00:36:50.611333 Validation: avg loss: 0.9111, avg acc: 75.2381% 2023-06-28 00:37:04.781826 Train: epoch: 50 batch: 0/4, loss: 0.000721 2023-06-28 00:37:49.944599 Validation: avg loss: 0.8921, avg acc: 75.2381%