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[2023-10-25 01:29:05,967::train::INFO] [train] Iter 589961 | loss 0.4038 | loss(rot) 0.3236 | loss(pos) 0.0231 | loss(seq) 0.0570 | grad 5.0829 | lr 0.0000 | time_forward 3.2640 | time_backward 4.3180 |
[2023-10-25 01:29:13,530::train::INFO] [train] Iter 589962 | loss 0.3912 | loss(rot) 0.1408 | loss(pos) 0.0467 | loss(seq) 0.2037 | grad 3.7351 | lr 0.0000 | time_forward 3.2210 | time_backward 4.3390 |
[2023-10-25 01:29:21,520::train::INFO] [train] Iter 589963 | loss 0.3693 | loss(rot) 0.0100 | loss(pos) 0.3585 | loss(seq) 0.0008 | grad 7.6876 | lr 0.0000 | time_forward 3.3690 | time_backward 4.6180 |
[2023-10-25 01:29:24,250::train::INFO] [train] Iter 589964 | loss 1.0332 | loss(rot) 0.6997 | loss(pos) 0.0248 | loss(seq) 0.3086 | grad 42.3019 | lr 0.0000 | time_forward 1.3310 | time_backward 1.3970 |
[2023-10-25 01:29:31,839::train::INFO] [train] Iter 589965 | loss 0.6046 | loss(rot) 0.5767 | loss(pos) 0.0159 | loss(seq) 0.0120 | grad 3.7394 | lr 0.0000 | time_forward 3.2580 | time_backward 4.2950 |
[2023-10-25 01:29:37,278::train::INFO] [train] Iter 589966 | loss 0.6168 | loss(rot) 0.1043 | loss(pos) 0.1966 | loss(seq) 0.3160 | grad 4.0402 | lr 0.0000 | time_forward 2.3270 | time_backward 3.1080 |
[2023-10-25 01:29:40,004::train::INFO] [train] Iter 589967 | loss 1.1708 | loss(rot) 0.5904 | loss(pos) 0.0585 | loss(seq) 0.5219 | grad 3.1831 | lr 0.0000 | time_forward 1.2810 | time_backward 1.4400 |
[2023-10-25 01:29:48,965::train::INFO] [train] Iter 589968 | loss 0.6369 | loss(rot) 0.2432 | loss(pos) 0.2213 | loss(seq) 0.1723 | grad 2.5049 | lr 0.0000 | time_forward 3.8190 | time_backward 5.1390 |
[2023-10-25 01:29:51,708::train::INFO] [train] Iter 589969 | loss 1.3803 | loss(rot) 0.1320 | loss(pos) 1.2471 | loss(seq) 0.0012 | grad 12.0561 | lr 0.0000 | time_forward 1.3180 | time_backward 1.4210 |
[2023-10-25 01:29:55,043::train::INFO] [train] Iter 589970 | loss 0.5334 | loss(rot) 0.2859 | loss(pos) 0.1849 | loss(seq) 0.0626 | grad 2.7469 | lr 0.0000 | time_forward 1.5080 | time_backward 1.8240 |
[2023-10-25 01:30:03,941::train::INFO] [train] Iter 589971 | loss 1.0917 | loss(rot) 0.8657 | loss(pos) 0.0831 | loss(seq) 0.1429 | grad 15.0675 | lr 0.0000 | time_forward 3.7760 | time_backward 5.0940 |
[2023-10-25 01:30:11,253::train::INFO] [train] Iter 589972 | loss 0.6417 | loss(rot) 0.2542 | loss(pos) 0.0894 | loss(seq) 0.2981 | grad 4.3029 | lr 0.0000 | time_forward 3.0670 | time_backward 4.2410 |
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