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Note: load from checkpoint-1200

Using base model: openthaigpt/openthaigpt1.5-7b-instruct

[1350/1478 6:35:56 < 37:35, 0.06 it/s, Epoch 225/247]

Step	Training Loss	Validation Loss
50	1.889000	1.865288
100	1.870800	1.834186
150	1.820800	1.764748
200	1.737800	1.674067
250	1.627800	1.553900
300	1.497700	1.423024
350	1.405200	1.382410
400	1.372600	1.353901
450	1.347100	1.336994
500	1.333100	1.327204
550	1.323400	1.319559
600	1.314500	1.313397
650	1.305600	1.308328
700	1.299300	1.304130
750	1.293200	1.300670
800	1.287200	1.297785
850	1.282200	1.295370
900	1.277600	1.293365
950	1.273900	1.291738
1000	1.268300	1.290392
1050	1.266100	1.289331
1100	1.262100	1.288488
1150	1.260900	1.287844
1200	1.259000	1.287367
1250	1.257700	1.287037
1300	1.257400	1.286821
1350	1.257100	1.286700

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