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[2023-10-23 05:52:12,211::train::INFO] [train] Iter 567083 | loss 2.8551 | loss(rot) 2.3802 | loss(pos) 0.1081 | loss(seq) 0.3668 | grad 8.7151 | lr 0.0000 | time_forward 2.8110 | time_backward 3.7210 |
[2023-10-23 05:52:20,032::train::INFO] [train] Iter 567084 | loss 0.4321 | loss(rot) 0.0626 | loss(pos) 0.3638 | loss(seq) 0.0056 | grad 7.0601 | lr 0.0000 | time_forward 3.2610 | time_backward 4.5570 |
[2023-10-23 05:52:27,901::train::INFO] [train] Iter 567085 | loss 0.6249 | loss(rot) 0.1682 | loss(pos) 0.3284 | loss(seq) 0.1283 | grad 4.7656 | lr 0.0000 | time_forward 3.1980 | time_backward 4.6670 |
[2023-10-23 05:52:34,530::train::INFO] [train] Iter 567086 | loss 2.1603 | loss(rot) 1.4256 | loss(pos) 0.2052 | loss(seq) 0.5296 | grad 5.3584 | lr 0.0000 | time_forward 2.8780 | time_backward 3.7470 |
[2023-10-23 05:52:41,486::train::INFO] [train] Iter 567087 | loss 0.6585 | loss(rot) 0.0503 | loss(pos) 0.1852 | loss(seq) 0.4230 | grad 5.4060 | lr 0.0000 | time_forward 3.0400 | time_backward 3.9140 |
[2023-10-23 05:52:49,693::train::INFO] [train] Iter 567088 | loss 1.1376 | loss(rot) 0.4352 | loss(pos) 0.2775 | loss(seq) 0.4249 | grad 4.3546 | lr 0.0000 | time_forward 3.2240 | time_backward 4.9800 |
[2023-10-23 05:52:57,602::train::INFO] [train] Iter 567089 | loss 0.7364 | loss(rot) 0.5001 | loss(pos) 0.1016 | loss(seq) 0.1347 | grad 3.1619 | lr 0.0000 | time_forward 3.2770 | time_backward 4.6280 |
[2023-10-23 05:53:05,522::train::INFO] [train] Iter 567090 | loss 1.6003 | loss(rot) 1.1693 | loss(pos) 0.0626 | loss(seq) 0.3684 | grad 4.0077 | lr 0.0000 | time_forward 3.3060 | time_backward 4.6100 |
[2023-10-23 05:53:08,160::train::INFO] [train] Iter 567091 | loss 0.5514 | loss(rot) 0.0984 | loss(pos) 0.3920 | loss(seq) 0.0609 | grad 4.0032 | lr 0.0000 | time_forward 1.2430 | time_backward 1.3910 |
[2023-10-23 05:53:14,603::train::INFO] [train] Iter 567092 | loss 0.7583 | loss(rot) 0.6178 | loss(pos) 0.0310 | loss(seq) 0.1095 | grad 5.1161 | lr 0.0000 | time_forward 2.7630 | time_backward 3.6580 |
[2023-10-23 05:53:22,475::train::INFO] [train] Iter 567093 | loss 1.0528 | loss(rot) 0.3611 | loss(pos) 0.3205 | loss(seq) 0.3712 | grad 2.6797 | lr 0.0000 | time_forward 3.3330 | time_backward 4.5370 |
[2023-10-23 05:53:29,787::train::INFO] [train] Iter 567094 | loss 0.1966 | loss(rot) 0.0327 | loss(pos) 0.0195 | loss(seq) 0.1443 | grad 1.7272 | lr 0.0000 | time_forward 3.1510 | time_backward 4.1570 |
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