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README

License: mit

Overview

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
  • C means 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

tussiiiii

Model tree

Base

unsloth/Qwen2.5-7B-Instruct-bnb-4bit

Fine-tuned

this model

Modalities

Input

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Output

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Pricing

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Supported Functionality

Model APIs

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