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[2023-10-23 07:11:39,883::train::INFO] [train] Iter 567889 | loss 0.6095 | loss(rot) 0.3263 | loss(pos) 0.0415 | loss(seq) 0.2417 | grad 3.1567 | lr 0.0000 | time_forward 1.0790 | time_backward 1.2040
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[2023-10-23 07:11:45,339::train::INFO] [train] Iter 567891 | loss 0.7717 | loss(rot) 0.4259 | loss(pos) 0.0441 | loss(seq) 0.3017 | grad 4.7811 | lr 0.0000 | time_forward 1.3310 | time_backward 1.4260
[2023-10-23 07:11:52,512::train::INFO] [train] Iter 567892 | loss 0.1020 | loss(rot) 0.0307 | loss(pos) 0.0131 | loss(seq) 0.0582 | grad 1.2920 | lr 0.0000 | time_forward 3.0910 | time_backward 4.0790
[2023-10-23 07:11:59,396::train::INFO] [train] Iter 567893 | loss 0.3858 | loss(rot) 0.1504 | loss(pos) 0.0473 | loss(seq) 0.1881 | grad 3.5682 | lr 0.0000 | time_forward 2.9610 | time_backward 3.9200
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