This is not an instruct fine tune, instead it's an attempt to de-contaminate the model, remove gptslop and refusals. I want model to feel like it was trained on human data, not synthetic one.

About 961 steps total, Yi-34B-200K llamafied DPO trained for 1 epoch on rawrr_v2 dataset via unsloth qlora at prompt length of 400 and max length of 700, lr 0.000045
Model initialized with max_positional_embeddings of 4096 to not OOM.
Training done on RTX 3090 Ti in about 14 hours.
Average mem usage was like 23.89 / 23.99 GiB, so very close to OOM at all times.
I trained it with XFCE on one 1080p monitor loaded up, on more fancy DM it would probably OOM with the same setup.
I am not sure what's the purpose of max_prompt_length being separate from max_length, so I may have used it wrong, I should read up on it.
Script I used to do this fine-tune is in the repo. I used chatml prompt format. Now I plan to fine-tune this on AEZAKMI v3 dataset soon.

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