2023-06-27 22:56:27.225385 cuda 2023-06-27 22:56:41.667818 Train: epoch: 1 batch: 0/4, loss: 0.692002 2023-06-27 22:57:26.874897 Validation: avg loss: 0.6831, avg acc: 60.9524% 2023-06-27 22:57:41.358237 Train: epoch: 2 batch: 0/4, loss: 0.698575 2023-06-27 22:58:26.379618 Validation: avg loss: 0.6732, avg acc: 60.9524% 2023-06-27 22:58:40.809971 Train: epoch: 3 batch: 0/4, loss: 0.667633 2023-06-27 22:59:25.992367 Validation: avg loss: 0.6817, avg acc: 60.9524% 2023-06-27 22:59:40.568559 Train: epoch: 4 batch: 0/4, loss: 0.679582 2023-06-27 23:00:26.298536 Validation: avg loss: 0.6736, avg acc: 60.9524% 2023-06-27 23:00:40.815317 Train: epoch: 5 batch: 0/4, loss: 0.648631 2023-06-27 23:01:26.485894 Validation: avg loss: 0.6695, avg acc: 60.9524% 2023-06-27 23:01:40.843563 Train: epoch: 6 batch: 0/4, loss: 0.635978 2023-06-27 23:02:29.786361 Validation: avg loss: 0.6708, avg acc: 60.9524% 2023-06-27 23:02:44.489382 Train: epoch: 7 batch: 0/4, loss: 0.661664 2023-06-27 23:03:30.037811 Validation: avg loss: 0.6677, avg acc: 60.9524% 2023-06-27 23:03:47.009587 Train: epoch: 8 batch: 0/4, loss: 0.542907 2023-06-27 23:04:32.865509 Validation: avg loss: 0.6692, avg acc: 60.9524% 2023-06-27 23:04:47.364673 Train: epoch: 9 batch: 0/4, loss: 0.522208 2023-06-27 23:05:31.970194 Validation: avg loss: 0.6648, avg acc: 60.9524% 2023-06-27 23:05:46.158624 Train: epoch: 10 batch: 0/4, loss: 0.416084 2023-06-27 23:06:31.870999 Validation: avg loss: 0.6632, avg acc: 60.9524% 2023-06-27 23:06:46.130888 Train: epoch: 11 batch: 0/4, loss: 0.351118 2023-06-27 23:07:31.221879 Validation: avg loss: 0.6562, avg acc: 60.0000% 2023-06-27 23:07:45.620858 Train: epoch: 12 batch: 0/4, loss: 0.248121 2023-06-27 23:08:30.712929 Validation: avg loss: 0.6558, avg acc: 63.8095% 2023-06-27 23:08:45.170842 Train: epoch: 13 batch: 0/4, loss: 0.178588 2023-06-27 23:09:30.276789 Validation: avg loss: 0.6722, avg acc: 61.9048% 2023-06-27 23:09:44.853074 Train: epoch: 14 batch: 0/4, loss: 0.138953 2023-06-27 23:10:30.888671 Validation: avg loss: 0.7421, avg acc: 60.9524% 2023-06-27 23:10:45.386170 Train: epoch: 15 batch: 0/4, loss: 0.071094 2023-06-27 23:11:30.634682 Validation: avg loss: 0.7772, avg acc: 64.7619% 2023-06-27 23:11:44.951292 Train: epoch: 16 batch: 0/4, loss: 0.050339 2023-06-27 23:12:30.229361 Validation: avg loss: 0.8185, avg acc: 66.6667% 2023-06-27 23:12:44.429996 Train: epoch: 17 batch: 0/4, loss: 0.034063 2023-06-27 23:13:29.440894 Validation: avg loss: 0.8194, avg acc: 66.6667% 2023-06-27 23:13:43.809310 Train: epoch: 18 batch: 0/4, loss: 0.023794 2023-06-27 23:14:28.850536 Validation: avg loss: 0.8726, avg acc: 68.5714% 2023-06-27 23:14:43.125232 Train: epoch: 19 batch: 0/4, loss: 0.023007 2023-06-27 23:15:28.506826 Validation: avg loss: 0.9418, avg acc: 68.5714% 2023-06-27 23:15:42.724516 Train: epoch: 20 batch: 0/4, loss: 0.015237 2023-06-27 23:16:28.095369 Validation: avg loss: 0.9700, avg acc: 67.6190% 2023-06-27 23:16:42.467405 Train: epoch: 21 batch: 0/4, loss: 0.018638 2023-06-27 23:17:27.392373 Validation: avg loss: 1.0220, avg acc: 67.6190% 2023-06-27 23:17:41.575813 Train: epoch: 22 batch: 0/4, loss: 0.019878 2023-06-27 23:18:27.590927 Validation: avg loss: 1.1214, avg acc: 67.6190% 2023-06-27 23:18:41.640636 Train: epoch: 23 batch: 0/4, loss: 0.015436 2023-06-27 23:19:28.790967 Validation: avg loss: 1.2076, avg acc: 69.5238% 2023-06-27 23:19:45.854187 Train: epoch: 24 batch: 0/4, loss: 0.008988 2023-06-27 23:20:39.596887 Validation: avg loss: 1.3185, avg acc: 67.6190% 2023-06-27 23:20:56.522372 Train: epoch: 25 batch: 0/4, loss: 0.010765 2023-06-27 23:21:49.772384 Validation: avg loss: 1.4392, avg acc: 65.7143% 2023-06-27 23:22:06.752625 Train: epoch: 26 batch: 0/4, loss: 0.008803 2023-06-27 23:23:00.704419 Validation: avg loss: 1.5443, avg acc: 64.7619% 2023-06-27 23:23:17.697921 Train: epoch: 27 batch: 0/4, loss: 0.010919 2023-06-27 23:24:11.634059 Validation: avg loss: 1.5816, avg acc: 62.8571% 2023-06-27 23:24:28.635486 Train: epoch: 28 batch: 0/4, loss: 0.020247 2023-06-27 23:25:13.610646 Validation: avg loss: 1.5745, avg acc: 64.7619% 2023-06-27 23:25:27.762826 Train: epoch: 29 batch: 0/4, loss: 0.010510 2023-06-27 23:26:12.795590 Validation: avg loss: 1.5999, avg acc: 61.9048% 2023-06-27 23:26:27.565790 Train: epoch: 30 batch: 0/4, loss: 0.006730 2023-06-27 23:27:17.502410 Validation: avg loss: 1.5201, avg acc: 66.6667% 2023-06-27 23:27:34.741583 Train: epoch: 31 batch: 0/4, loss: 0.012892 2023-06-27 23:28:28.530721 Validation: avg loss: 1.5273, avg acc: 66.6667% 2023-06-27 23:28:45.886919 Train: epoch: 32 batch: 0/4, loss: 0.007448 2023-06-27 23:29:39.793679 Validation: avg loss: 1.5663, avg acc: 65.7143% 2023-06-27 23:29:56.559218 Train: epoch: 33 batch: 0/4, loss: 0.007973 2023-06-27 23:30:49.808918 Validation: avg loss: 1.6759, avg acc: 64.7619% 2023-06-27 23:31:06.749643 Train: epoch: 34 batch: 0/4, loss: 0.010191 2023-06-27 23:32:00.240737 Validation: avg loss: 1.7061, avg acc: 64.7619% 2023-06-27 23:32:17.436448 Train: epoch: 35 batch: 0/4, loss: 0.009669 2023-06-27 23:33:11.917138 Validation: avg loss: 1.6786, avg acc: 65.7143% 2023-06-27 23:33:29.083028 Train: epoch: 36 batch: 0/4, loss: 0.005688 2023-06-27 23:34:22.249065 Validation: avg loss: 1.6233, avg acc: 64.7619% 2023-06-27 23:34:36.440779 Train: epoch: 37 batch: 0/4, loss: 0.011351 2023-06-27 23:35:21.608001 Validation: avg loss: 1.4958, avg acc: 64.7619% 2023-06-27 23:35:35.757051 Train: epoch: 38 batch: 0/4, loss: 0.013235 2023-06-27 23:36:21.070012 Validation: avg loss: 1.4995, avg acc: 65.7143% 2023-06-27 23:36:35.183467 Train: epoch: 39 batch: 0/4, loss: 0.004506 2023-06-27 23:37:19.755812 Validation: avg loss: 1.5822, avg acc: 66.6667% 2023-06-27 23:37:33.834424 Train: epoch: 40 batch: 0/4, loss: 0.004020 2023-06-27 23:38:18.418379 Validation: avg loss: 1.5952, avg acc: 65.7143% 2023-06-27 23:38:32.532155 Train: epoch: 41 batch: 0/4, loss: 0.006036 2023-06-27 23:39:17.399217 Validation: avg loss: 1.5330, avg acc: 64.7619% 2023-06-27 23:39:31.655960 Train: epoch: 42 batch: 0/4, loss: 0.002260 2023-06-27 23:40:16.697558 Validation: avg loss: 1.5543, avg acc: 63.8095% 2023-06-27 23:40:31.012751 Train: epoch: 43 batch: 0/4, loss: 0.001725 2023-06-27 23:41:16.613344 Validation: avg loss: 1.6196, avg acc: 61.9048% 2023-06-27 23:41:31.058310 Train: epoch: 44 batch: 0/4, loss: 0.002373 2023-06-27 23:42:16.007442 Validation: avg loss: 2.0231, avg acc: 64.7619% 2023-06-27 23:42:30.329439 Train: epoch: 45 batch: 0/4, loss: 0.003343 2023-06-27 23:43:15.956035 Validation: avg loss: 2.3722, avg acc: 61.9048% 2023-06-27 23:43:30.537132 Train: epoch: 46 batch: 0/4, loss: 0.020183 2023-06-27 23:44:15.327968 Validation: avg loss: 1.6412, avg acc: 63.8095% 2023-06-27 23:44:29.571036 Train: epoch: 47 batch: 0/4, loss: 0.005822 2023-06-27 23:45:14.703431 Validation: avg loss: 1.7010, avg acc: 62.8571% 2023-06-27 23:45:28.895749 Train: epoch: 48 batch: 0/4, loss: 0.009988 2023-06-27 23:46:14.372640 Validation: avg loss: 1.6787, avg acc: 64.7619% 2023-06-27 23:46:28.549947 Train: epoch: 49 batch: 0/4, loss: 0.004813 2023-06-27 23:47:13.802909 Validation: avg loss: 1.7751, avg acc: 64.7619% 2023-06-27 23:47:27.910214 Train: epoch: 50 batch: 0/4, loss: 0.005619 2023-06-27 23:48:12.643633 Validation: avg loss: 1.8753, avg acc: 60.9524%