2023-06-27 11:25:43.307219 cuda 2023-06-27 11:26:10.528154 Train: epoch: 1 batch: 0/4, loss: 0.694377 2023-06-27 11:27:37.088485 Validation: avg loss: 0.6900, avg acc: 58.0952% 2023-06-27 11:28:04.274261 Train: epoch: 2 batch: 0/4, loss: 0.682107 2023-06-27 11:29:31.164142 Validation: avg loss: 0.6882, avg acc: 58.0952% 2023-06-27 11:29:58.520648 Train: epoch: 3 batch: 0/4, loss: 0.679390 2023-06-27 11:31:25.626905 Validation: avg loss: 0.6869, avg acc: 58.0952% 2023-06-27 11:31:53.026354 Train: epoch: 4 batch: 0/4, loss: 0.680164 2023-06-27 11:33:19.822167 Validation: avg loss: 0.6829, avg acc: 58.0952% 2023-06-27 11:33:47.197666 Train: epoch: 5 batch: 0/4, loss: 0.650284 2023-06-27 11:35:13.854674 Validation: avg loss: 0.6994, avg acc: 41.9048% 2023-06-27 11:35:41.257044 Train: epoch: 6 batch: 0/4, loss: 0.627514 2023-06-27 11:37:07.892390 Validation: avg loss: 0.7255, avg acc: 41.9048% 2023-06-27 11:37:35.113169 Train: epoch: 7 batch: 0/4, loss: 0.601305 2023-06-27 11:39:01.400625 Validation: avg loss: 0.7415, avg acc: 41.9048% 2023-06-27 11:39:28.628852 Train: epoch: 8 batch: 0/4, loss: 0.543208 2023-06-27 11:40:54.961255 Validation: avg loss: 0.7183, avg acc: 41.9048% 2023-06-27 11:41:22.234808 Train: epoch: 9 batch: 0/4, loss: 0.482571 2023-06-27 11:42:48.540137 Validation: avg loss: 0.7260, avg acc: 41.9048% 2023-06-27 11:43:15.619276 Train: epoch: 10 batch: 0/4, loss: 0.408161 2023-06-27 11:44:41.998452 Validation: avg loss: 0.7692, avg acc: 41.9048% 2023-06-27 11:45:09.179220 Train: epoch: 11 batch: 0/4, loss: 0.377784 2023-06-27 11:46:35.427269 Validation: avg loss: 0.7082, avg acc: 50.4762% 2023-06-27 11:47:02.789648 Train: epoch: 12 batch: 0/4, loss: 0.245929 2023-06-27 11:48:29.284276 Validation: avg loss: 0.7218, avg acc: 52.3810% 2023-06-27 11:48:56.519824 Train: epoch: 13 batch: 0/4, loss: 0.193640 2023-06-27 11:50:23.003832 Validation: avg loss: 0.6665, avg acc: 59.0476% 2023-06-27 11:50:50.149866 Train: epoch: 14 batch: 0/4, loss: 0.134887 2023-06-27 11:52:16.632313 Validation: avg loss: 0.6073, avg acc: 64.7619% 2023-06-27 11:52:43.855746 Train: epoch: 15 batch: 0/4, loss: 0.116741 2023-06-27 11:54:10.460123 Validation: avg loss: 0.6112, avg acc: 66.6667% 2023-06-27 11:54:37.673824 Train: epoch: 16 batch: 0/4, loss: 0.056002 2023-06-27 11:56:03.927156 Validation: avg loss: 0.6511, avg acc: 70.4762% 2023-06-27 11:56:31.277013 Train: epoch: 17 batch: 0/4, loss: 0.039492 2023-06-27 11:57:57.749525 Validation: avg loss: 0.7000, avg acc: 67.6190% 2023-06-27 11:58:24.951971 Train: epoch: 18 batch: 0/4, loss: 0.025889 2023-06-27 11:59:51.491950 Validation: avg loss: 0.7304, avg acc: 66.6667% 2023-06-27 12:00:18.728440 Train: epoch: 19 batch: 0/4, loss: 0.039517 2023-06-27 12:01:45.047607 Validation: avg loss: 0.7353, avg acc: 66.6667% 2023-06-27 12:02:12.402953 Train: epoch: 20 batch: 0/4, loss: 0.037402 2023-06-27 12:03:38.841518 Validation: avg loss: 0.7263, avg acc: 66.6667% 2023-06-27 12:04:06.000490 Train: epoch: 21 batch: 0/4, loss: 0.018236 2023-06-27 12:05:32.367566 Validation: avg loss: 0.7570, avg acc: 64.7619% 2023-06-27 12:05:59.499032 Train: epoch: 22 batch: 0/4, loss: 0.025706 2023-06-27 12:07:25.798044 Validation: avg loss: 0.8620, avg acc: 68.5714% 2023-06-27 12:07:53.042050 Train: epoch: 23 batch: 0/4, loss: 0.006979 2023-06-27 12:09:19.386309 Validation: avg loss: 0.8502, avg acc: 67.6190% 2023-06-27 12:09:46.546452 Train: epoch: 24 batch: 0/4, loss: 0.013295 2023-06-27 12:11:13.049669 Validation: avg loss: 0.8720, avg acc: 67.6190% 2023-06-27 12:11:40.399711 Train: epoch: 25 batch: 0/4, loss: 0.017644 2023-06-27 12:13:06.721808 Validation: avg loss: 0.8946, avg acc: 69.5238% 2023-06-27 12:13:33.901891 Train: epoch: 26 batch: 0/4, loss: 0.009154 2023-06-27 12:15:00.278508 Validation: avg loss: 0.9153, avg acc: 68.5714% 2023-06-27 12:15:27.444753 Train: epoch: 27 batch: 0/4, loss: 0.004955 2023-06-27 12:16:54.014796 Validation: avg loss: 0.9225, avg acc: 68.5714% 2023-06-27 12:17:21.180353 Train: epoch: 28 batch: 0/4, loss: 0.003607 2023-06-27 12:18:47.605041 Validation: avg loss: 0.9346, avg acc: 68.5714% 2023-06-27 12:19:14.851889 Train: epoch: 29 batch: 0/4, loss: 0.003095 2023-06-27 12:20:41.196987 Validation: avg loss: 0.9443, avg acc: 67.6190% 2023-06-27 12:21:08.365717 Train: epoch: 30 batch: 0/4, loss: 0.004005 2023-06-27 12:22:34.755427 Validation: avg loss: 0.9436, avg acc: 67.6190% 2023-06-27 12:23:01.954312 Train: epoch: 31 batch: 0/4, loss: 0.003913 2023-06-27 12:24:28.403747 Validation: avg loss: 0.9505, avg acc: 68.5714% 2023-06-27 12:24:55.549514 Train: epoch: 32 batch: 0/4, loss: 0.005185 2023-06-27 12:26:21.749116 Validation: avg loss: 0.9559, avg acc: 69.5238% 2023-06-27 12:26:48.891141 Train: epoch: 33 batch: 0/4, loss: 0.002091 2023-06-27 12:28:15.035038 Validation: avg loss: 0.9427, avg acc: 68.5714% 2023-06-27 12:28:42.149200 Train: epoch: 34 batch: 0/4, loss: 0.001567 2023-06-27 12:30:08.417017 Validation: avg loss: 0.9374, avg acc: 67.6190% 2023-06-27 12:30:35.547546 Train: epoch: 35 batch: 0/4, loss: 0.002373 2023-06-27 12:32:01.499473 Validation: avg loss: 0.9400, avg acc: 68.5714% 2023-06-27 12:32:28.569395 Train: epoch: 36 batch: 0/4, loss: 0.003582 2023-06-27 12:33:54.857292 Validation: avg loss: 0.9354, avg acc: 67.6190% 2023-06-27 12:34:21.949400 Train: epoch: 37 batch: 0/4, loss: 0.001832 2023-06-27 12:35:48.160750 Validation: avg loss: 0.9443, avg acc: 68.5714% 2023-06-27 12:36:15.310859 Train: epoch: 38 batch: 0/4, loss: 0.001962 2023-06-27 12:37:41.613417 Validation: avg loss: 0.9425, avg acc: 68.5714% 2023-06-27 12:38:08.759034 Train: epoch: 39 batch: 0/4, loss: 0.001382 2023-06-27 12:39:35.093859 Validation: avg loss: 0.9507, avg acc: 66.6667% 2023-06-27 12:40:02.433032 Train: epoch: 40 batch: 0/4, loss: 0.001698 2023-06-27 12:41:28.818298 Validation: avg loss: 0.9661, avg acc: 66.6667% 2023-06-27 12:41:56.175044 Train: epoch: 41 batch: 0/4, loss: 0.001760 2023-06-27 12:43:22.649339 Validation: avg loss: 0.9720, avg acc: 66.6667% 2023-06-27 12:43:49.896349 Train: epoch: 42 batch: 0/4, loss: 0.001426 2023-06-27 12:45:16.419486 Validation: avg loss: 0.9811, avg acc: 67.6190% 2023-06-27 12:45:43.749214 Train: epoch: 43 batch: 0/4, loss: 0.002155 2023-06-27 12:47:10.163677 Validation: avg loss: 0.9918, avg acc: 67.6190% 2023-06-27 12:47:37.472330 Train: epoch: 44 batch: 0/4, loss: 0.001377 2023-06-27 12:49:03.932090 Validation: avg loss: 0.9809, avg acc: 67.6190% 2023-06-27 12:49:31.117277 Train: epoch: 45 batch: 0/4, loss: 0.001217 2023-06-27 12:50:57.605537 Validation: avg loss: 0.9833, avg acc: 65.7143% 2023-06-27 12:51:24.885712 Train: epoch: 46 batch: 0/4, loss: 0.001027 2023-06-27 12:52:51.391136 Validation: avg loss: 1.0012, avg acc: 67.6190% 2023-06-27 12:53:18.681766 Train: epoch: 47 batch: 0/4, loss: 0.001231 2023-06-27 12:54:45.126626 Validation: avg loss: 1.0262, avg acc: 67.6190% 2023-06-27 12:55:12.307979 Train: epoch: 48 batch: 0/4, loss: 0.001463 2023-06-27 12:56:38.840175 Validation: avg loss: 1.0485, avg acc: 66.6667% 2023-06-27 12:57:06.132147 Train: epoch: 49 batch: 0/4, loss: 0.001413 2023-06-27 12:58:32.521124 Validation: avg loss: 1.0609, avg acc: 67.6190% 2023-06-27 12:58:59.748739 Train: epoch: 50 batch: 0/4, loss: 0.000888 2023-06-27 13:00:26.082251 Validation: avg loss: 1.0667, avg acc: 68.5714%