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Epoch = 1 Reference: https://wandb.ai/vaishnavi-bhargava-nutanix/SFT/runs/qi3wqhcv/overview
Summary: eval/loss:0.5149228572845459 eval/runtime:40.5083 eval/samples_per_second:1.086 eval/steps_per_second:1.086 total_flos:258,033,288,411,611,140 train_loss:0.5756525500067349 train_runtime:2,242.7365 train_samples_per_second:0.311 train_steps_per_second:0.155 train/epoch:0.9985652797704448 train/global_step:348 train/grad_norm:0.3046875 train/learning_rate:0.00000766773162939297 train/loss:0.538
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