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README
License: mitOverview
Merged student model for the Kaggle LLM Classification Finetuning task.
Base Model
unsloth/Qwen2.5-7B-Instruct-bnb-4bit
Training Data
- Distilled source:
safe_plus_filtered_plus_raw_partial - Raw Kaggle train mix mode:
partial - Raw train rows are limited to non-distilled ids only
- Teacher hard mix:
False - Base-family diversity: Qwen2.5 student for ensemble comparison with Llama v5a
Training Format
- Prompt contains
Prompt / Response A / Response B - Teacher rationale is not injected into prompt-side input
- Completion is winner-only:
A / B / C Cmeans tie
Notes
- This model is intended for direct next-token winner inference in evaluation / submission.
- A/B/C were verified as single tokenizer tokens before training.
Model provider
tussiiiii
Model tree
Base
unsloth/Qwen2.5-7B-Instruct-bnb-4bit
Fine-tuned
this model
Modalities
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Output
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