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[2023-10-24 03:55:56,259::train::INFO] [train] Iter 578872 | loss 0.4617 | loss(rot) 0.1939 | loss(pos) 0.0245 | loss(seq) 0.2434 | grad 2.7351 | lr 0.0000 | time_forward 1.3590 | time_backward 1.4700 |
[2023-10-24 03:55:59,098::train::INFO] [train] Iter 578873 | loss 0.4584 | loss(rot) 0.1444 | loss(pos) 0.0164 | loss(seq) 0.2975 | grad 2.7297 | lr 0.0000 | time_forward 1.3230 | time_backward 1.4800 |
[2023-10-24 03:56:07,305::train::INFO] [train] Iter 578874 | loss 1.2645 | loss(rot) 1.0659 | loss(pos) 0.0224 | loss(seq) 0.1761 | grad 6.2832 | lr 0.0000 | time_forward 3.4630 | time_backward 4.7410 |
[2023-10-24 03:56:14,482::train::INFO] [train] Iter 578875 | loss 0.7181 | loss(rot) 0.6553 | loss(pos) 0.0371 | loss(seq) 0.0257 | grad 9.0804 | lr 0.0000 | time_forward 3.0120 | time_backward 4.1620 |
[2023-10-24 03:56:17,246::train::INFO] [train] Iter 578876 | loss 0.3397 | loss(rot) 0.3018 | loss(pos) 0.0302 | loss(seq) 0.0077 | grad 2.2956 | lr 0.0000 | time_forward 1.2730 | time_backward 1.4880 |
[2023-10-24 03:56:27,095::train::INFO] [train] Iter 578877 | loss 0.6418 | loss(rot) 0.2519 | loss(pos) 0.0888 | loss(seq) 0.3012 | grad 3.3522 | lr 0.0000 | time_forward 4.0570 | time_backward 5.7880 |
[2023-10-24 03:56:29,881::train::INFO] [train] Iter 578878 | loss 1.3602 | loss(rot) 0.9513 | loss(pos) 0.0448 | loss(seq) 0.3640 | grad 4.1435 | lr 0.0000 | time_forward 1.3190 | time_backward 1.4640 |
[2023-10-24 03:56:39,924::train::INFO] [train] Iter 578879 | loss 0.5221 | loss(rot) 0.1327 | loss(pos) 0.1146 | loss(seq) 0.2748 | grad 2.8329 | lr 0.0000 | time_forward 4.1470 | time_backward 5.8940 |
[2023-10-24 03:56:43,204::train::INFO] [train] Iter 578880 | loss 0.6540 | loss(rot) 0.2277 | loss(pos) 0.3788 | loss(seq) 0.0475 | grad 3.3634 | lr 0.0000 | time_forward 1.4800 | time_backward 1.7960 |
[2023-10-24 03:56:52,863::train::INFO] [train] Iter 578881 | loss 0.5733 | loss(rot) 0.2667 | loss(pos) 0.0422 | loss(seq) 0.2645 | grad 2.0737 | lr 0.0000 | time_forward 3.9560 | time_backward 5.6880 |
[2023-10-24 03:57:01,893::train::INFO] [train] Iter 578882 | loss 0.4248 | loss(rot) 0.2763 | loss(pos) 0.0370 | loss(seq) 0.1115 | grad 3.0643 | lr 0.0000 | time_forward 4.0170 | time_backward 5.0110 |
[2023-10-24 03:57:11,355::train::INFO] [train] Iter 578883 | loss 0.6600 | loss(rot) 0.0183 | loss(pos) 0.6389 | loss(seq) 0.0029 | grad 9.4135 | lr 0.0000 | time_forward 3.8410 | time_backward 5.6180 |
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