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[2023-10-24 08:13:47,800::train::INFO] [train] Iter 581069 | loss 0.3164 | loss(rot) 0.0868 | loss(pos) 0.0281 | loss(seq) 0.2016 | grad 2.7117 | lr 0.0000 | time_forward 3.4180 | time_backward 4.7820 |
[2023-10-24 08:13:56,074::train::INFO] [train] Iter 581070 | loss 0.8980 | loss(rot) 0.4385 | loss(pos) 0.0430 | loss(seq) 0.4165 | grad 5.0653 | lr 0.0000 | time_forward 3.4240 | time_backward 4.8470 |
[2023-10-24 08:14:04,588::train::INFO] [train] Iter 581071 | loss 1.6013 | loss(rot) 0.9021 | loss(pos) 0.2181 | loss(seq) 0.4811 | grad 4.4880 | lr 0.0000 | time_forward 3.5710 | time_backward 4.9400 |
[2023-10-24 08:14:12,294::train::INFO] [train] Iter 581072 | loss 2.3987 | loss(rot) 1.6095 | loss(pos) 0.4140 | loss(seq) 0.3752 | grad 7.1559 | lr 0.0000 | time_forward 3.2030 | time_backward 4.4970 |
[2023-10-24 08:14:21,078::train::INFO] [train] Iter 581073 | loss 0.3535 | loss(rot) 0.0391 | loss(pos) 0.3039 | loss(seq) 0.0104 | grad 8.8721 | lr 0.0000 | time_forward 3.6800 | time_backward 5.0990 |
[2023-10-24 08:14:29,321::train::INFO] [train] Iter 581074 | loss 0.2887 | loss(rot) 0.1343 | loss(pos) 0.0296 | loss(seq) 0.1248 | grad 3.4609 | lr 0.0000 | time_forward 3.5530 | time_backward 4.6870 |
[2023-10-24 08:14:37,645::train::INFO] [train] Iter 581075 | loss 1.9455 | loss(rot) 1.5862 | loss(pos) 0.0571 | loss(seq) 0.3021 | grad 7.7469 | lr 0.0000 | time_forward 3.5280 | time_backward 4.7920 |
[2023-10-24 08:14:43,704::train::INFO] [train] Iter 581076 | loss 1.3603 | loss(rot) 1.3344 | loss(pos) 0.0249 | loss(seq) 0.0011 | grad 5.8054 | lr 0.0000 | time_forward 2.5310 | time_backward 3.5260 |
[2023-10-24 08:14:52,029::train::INFO] [train] Iter 581077 | loss 0.2744 | loss(rot) 0.0827 | loss(pos) 0.0086 | loss(seq) 0.1831 | grad 1.7833 | lr 0.0000 | time_forward 3.5200 | time_backward 4.8010 |
[2023-10-24 08:14:59,900::train::INFO] [train] Iter 581078 | loss 0.2463 | loss(rot) 0.2258 | loss(pos) 0.0202 | loss(seq) 0.0003 | grad 2.2357 | lr 0.0000 | time_forward 3.3010 | time_backward 4.5670 |
[2023-10-24 08:15:09,909::train::INFO] [train] Iter 581079 | loss 0.6388 | loss(rot) 0.2429 | loss(pos) 0.0824 | loss(seq) 0.3135 | grad 3.3142 | lr 0.0000 | time_forward 4.2000 | time_backward 5.8050 |
[2023-10-24 08:15:12,638::train::INFO] [train] Iter 581080 | loss 0.6900 | loss(rot) 0.1884 | loss(pos) 0.1457 | loss(seq) 0.3560 | grad 3.7267 | lr 0.0000 | time_forward 1.3170 | time_backward 1.4080 |
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