2023-06-28 02:18:10.191347 cuda 2023-06-28 02:18:24.590105 Train: epoch: 1 batch: 0/4, loss: 0.690249 2023-06-28 02:19:09.969172 Validation: avg loss: 0.6905, avg acc: 58.0952% 2023-06-28 02:19:24.498012 Train: epoch: 2 batch: 0/4, loss: 0.682551 2023-06-28 02:20:12.924872 Validation: avg loss: 0.6843, avg acc: 58.0952% 2023-06-28 02:20:27.411335 Train: epoch: 3 batch: 0/4, loss: 0.691065 2023-06-28 02:21:12.226704 Validation: avg loss: 0.6844, avg acc: 58.0952% 2023-06-28 02:21:26.494891 Train: epoch: 4 batch: 0/4, loss: 0.656486 2023-06-28 02:22:11.201627 Validation: avg loss: 0.6885, avg acc: 58.0952% 2023-06-28 02:22:25.324919 Train: epoch: 5 batch: 0/4, loss: 0.641778 2023-06-28 02:23:10.589578 Validation: avg loss: 0.6955, avg acc: 41.9048% 2023-06-28 02:23:24.986591 Train: epoch: 6 batch: 0/4, loss: 0.635714 2023-06-28 02:24:09.995102 Validation: avg loss: 0.6892, avg acc: 58.0952% 2023-06-28 02:24:24.299061 Train: epoch: 7 batch: 0/4, loss: 0.588812 2023-06-28 02:25:09.383180 Validation: avg loss: 0.7100, avg acc: 41.9048% 2023-06-28 02:25:23.459523 Train: epoch: 8 batch: 0/4, loss: 0.580687 2023-06-28 02:26:08.476721 Validation: avg loss: 0.6989, avg acc: 43.8095% 2023-06-28 02:26:22.636932 Train: epoch: 9 batch: 0/4, loss: 0.538401 2023-06-28 02:27:07.755846 Validation: avg loss: 0.7032, avg acc: 44.7619% 2023-06-28 02:27:22.308433 Train: epoch: 10 batch: 0/4, loss: 0.479063 2023-06-28 02:28:08.023222 Validation: avg loss: 0.7259, avg acc: 43.8095% 2023-06-28 02:28:22.212473 Train: epoch: 11 batch: 0/4, loss: 0.399180 2023-06-28 02:29:07.187142 Validation: avg loss: 0.6419, avg acc: 66.6667% 2023-06-28 02:29:21.459886 Train: epoch: 12 batch: 0/4, loss: 0.374041 2023-06-28 02:30:06.783311 Validation: avg loss: 0.6404, avg acc: 63.8095% 2023-06-28 02:30:20.925891 Train: epoch: 13 batch: 0/4, loss: 0.199607 2023-06-28 02:31:09.303999 Validation: avg loss: 0.6425, avg acc: 64.7619% 2023-06-28 02:31:26.317069 Train: epoch: 14 batch: 0/4, loss: 0.210665 2023-06-28 02:32:14.248001 Validation: avg loss: 0.6495, avg acc: 64.7619% 2023-06-28 02:32:28.770466 Train: epoch: 15 batch: 0/4, loss: 0.094463 2023-06-28 02:33:13.835456 Validation: avg loss: 0.6781, avg acc: 64.7619% 2023-06-28 02:33:28.075316 Train: epoch: 16 batch: 0/4, loss: 0.071825 2023-06-28 02:34:13.056136 Validation: avg loss: 0.6933, avg acc: 66.6667% 2023-06-28 02:34:27.574360 Train: epoch: 17 batch: 0/4, loss: 0.075157 2023-06-28 02:35:12.945181 Validation: avg loss: 0.7505, avg acc: 64.7619% 2023-06-28 02:35:27.190267 Train: epoch: 18 batch: 0/4, loss: 0.035870 2023-06-28 02:36:12.281194 Validation: avg loss: 0.8531, avg acc: 64.7619% 2023-06-28 02:36:26.858452 Train: epoch: 19 batch: 0/4, loss: 0.024990 2023-06-28 02:37:12.890268 Validation: avg loss: 0.9023, avg acc: 64.7619% 2023-06-28 02:37:27.425535 Train: epoch: 20 batch: 0/4, loss: 0.019082 2023-06-28 02:38:12.722207 Validation: avg loss: 0.9582, avg acc: 66.6667% 2023-06-28 02:38:27.265360 Train: epoch: 21 batch: 0/4, loss: 0.010728 2023-06-28 02:39:12.364647 Validation: avg loss: 0.9925, avg acc: 65.7143% 2023-06-28 02:39:26.689739 Train: epoch: 22 batch: 0/4, loss: 0.023405 2023-06-28 02:40:11.877307 Validation: avg loss: 1.0391, avg acc: 63.8095% 2023-06-28 02:40:26.261142 Train: epoch: 23 batch: 0/4, loss: 0.006633 2023-06-28 02:41:11.681557 Validation: avg loss: 1.0852, avg acc: 64.7619% 2023-06-28 02:41:25.847109 Train: epoch: 24 batch: 0/4, loss: 0.015039 2023-06-28 02:42:10.949129 Validation: avg loss: 1.2231, avg acc: 66.6667% 2023-06-28 02:42:25.108043 Train: epoch: 25 batch: 0/4, loss: 0.017307 2023-06-28 02:43:10.040710 Validation: avg loss: 1.1383, avg acc: 62.8571% 2023-06-28 02:43:24.367214 Train: epoch: 26 batch: 0/4, loss: 0.009442 2023-06-28 02:44:10.201937 Validation: avg loss: 1.1565, avg acc: 64.7619% 2023-06-28 02:44:24.655029 Train: epoch: 27 batch: 0/4, loss: 0.008642 2023-06-28 02:45:16.466766 Validation: avg loss: 1.2177, avg acc: 65.7143% 2023-06-28 02:45:34.059083 Train: epoch: 28 batch: 0/4, loss: 0.004727 2023-06-28 02:46:26.336540 Validation: avg loss: 1.2653, avg acc: 63.8095% 2023-06-28 02:46:43.131403 Train: epoch: 29 batch: 0/4, loss: 0.003736 2023-06-28 02:47:36.324387 Validation: avg loss: 1.3018, avg acc: 64.7619% 2023-06-28 02:47:53.401691 Train: epoch: 30 batch: 0/4, loss: 0.004438 2023-06-28 02:48:48.112933 Validation: avg loss: 1.3224, avg acc: 63.8095% 2023-06-28 02:49:05.076562 Train: epoch: 31 batch: 0/4, loss: 0.004074 2023-06-28 02:49:58.477870 Validation: avg loss: 1.3503, avg acc: 62.8571% 2023-06-28 02:50:15.549796 Train: epoch: 32 batch: 0/4, loss: 0.005016 2023-06-28 02:51:08.879135 Validation: avg loss: 1.3151, avg acc: 61.9048% 2023-06-28 02:51:25.677918 Train: epoch: 33 batch: 0/4, loss: 0.002044 2023-06-28 02:52:20.105423 Validation: avg loss: 1.2926, avg acc: 62.8571% 2023-06-28 02:52:37.041849 Train: epoch: 34 batch: 0/4, loss: 0.002703 2023-06-28 02:53:31.706319 Validation: avg loss: 1.2878, avg acc: 63.8095% 2023-06-28 02:53:49.176129 Train: epoch: 35 batch: 0/4, loss: 0.003849 2023-06-28 02:54:42.142647 Validation: avg loss: 1.3129, avg acc: 63.8095% 2023-06-28 02:54:56.427546 Train: epoch: 36 batch: 0/4, loss: 0.001835 2023-06-28 02:55:41.494277 Validation: avg loss: 1.3500, avg acc: 61.9048% 2023-06-28 02:55:55.778091 Train: epoch: 37 batch: 0/4, loss: 0.002286 2023-06-28 02:56:41.046795 Validation: avg loss: 1.3715, avg acc: 62.8571% 2023-06-28 02:56:55.370527 Train: epoch: 38 batch: 0/4, loss: 0.001753 2023-06-28 02:57:40.945144 Validation: avg loss: 1.3863, avg acc: 64.7619% 2023-06-28 02:57:55.244577 Train: epoch: 39 batch: 0/4, loss: 0.001636 2023-06-28 02:58:40.557081 Validation: avg loss: 1.4102, avg acc: 64.7619% 2023-06-28 02:58:54.994770 Train: epoch: 40 batch: 0/4, loss: 0.001649 2023-06-28 02:59:39.954962 Validation: avg loss: 1.4169, avg acc: 63.8095% 2023-06-28 02:59:54.214338 Train: epoch: 41 batch: 0/4, loss: 0.001002 2023-06-28 03:00:39.437733 Validation: avg loss: 1.4182, avg acc: 62.8571% 2023-06-28 03:00:53.650708 Train: epoch: 42 batch: 0/4, loss: 0.001196 2023-06-28 03:01:39.005193 Validation: avg loss: 1.4063, avg acc: 62.8571% 2023-06-28 03:01:53.324523 Train: epoch: 43 batch: 0/4, loss: 0.000889 2023-06-28 03:02:38.746603 Validation: avg loss: 1.4078, avg acc: 63.8095% 2023-06-28 03:02:52.879053 Train: epoch: 44 batch: 0/4, loss: 0.001685 2023-06-28 03:03:37.789140 Validation: avg loss: 1.3901, avg acc: 63.8095% 2023-06-28 03:03:51.837770 Train: epoch: 45 batch: 0/4, loss: 0.001467 2023-06-28 03:04:37.321315 Validation: avg loss: 1.4143, avg acc: 63.8095% 2023-06-28 03:04:51.924517 Train: epoch: 46 batch: 0/4, loss: 0.001200 2023-06-28 03:05:37.733740 Validation: avg loss: 1.4240, avg acc: 63.8095% 2023-06-28 03:05:51.972393 Train: epoch: 47 batch: 0/4, loss: 0.000806 2023-06-28 03:06:39.101561 Validation: avg loss: 1.4204, avg acc: 63.8095% 2023-06-28 03:06:53.373502 Train: epoch: 48 batch: 0/4, loss: 0.000644 2023-06-28 03:07:38.640922 Validation: avg loss: 1.4185, avg acc: 62.8571% 2023-06-28 03:07:53.026508 Train: epoch: 49 batch: 0/4, loss: 0.000653 2023-06-28 03:08:38.046226 Validation: avg loss: 1.3947, avg acc: 62.8571% 2023-06-28 03:08:52.122996 Train: epoch: 50 batch: 0/4, loss: 0.000570 2023-06-28 03:09:37.119446 Validation: avg loss: 1.3931, avg acc: 62.8571%