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Meet7_0.6b_Exp_Q8/README.md
ModelHub XC 0fe7c83063 初始化项目,由ModelHub XC社区提供模型
Model: Ma7ee7/Meet7_0.6b_Exp_Q8
Source: Original Platform
2026-04-11 13:56:03 +08:00

2.3 KiB

base_model, tags, license, language
base_model tags license language
Ma7ee7/Meet7_0.6b
text-generation-inference
transformers
unsloth
qwen3
apache-2.0
en

Meet7 0.6B — Experimental

A continued fine-tune of Meet7 0.6B, trained at a lower learning rate on the same 600-sample dataset. Trades Meet7's sharp BoolQ spike for more balanced commonsense and reasoning gains across the board.

Benchmarks

0-shot evaluation, scores are acc_norm.

Task Qwen3-0.6B (Base) Meet7 0.6B Experimental Δ vs Base
BoolQ 0.3798 0.5554 0.3991 +01.93%
ARC Easy 0.3384 0.3952 0.3965 +05.81%
ARC Challenge 0.2841 0.3285 0.3259 +04.18%
HellaSwag 0.3981 0.4205 0.4265 +02.84%
PIQA 0.6338 0.6583 0.6687 +03.49%
Winogrande 0.5225 0.5201 0.5304 +00.79%
What these measure
  • BoolQ — Reading comprehension and yes/no factual grounding
  • ARC Easy / Challenge — Grade-school science reasoning; Challenge is the retrieval-resistant subset
  • HellaSwag — Commonsense sentence completion
  • PIQA — Physical world intuition
  • Winogrande — Commonsense pronoun resolution

vs Meet7 0.6B

This model is more balanced than Meet7. It outperforms Meet7 on HellaSwag, PIQA, and Winogrande — the physical and commonsense intuition tasks — at the cost of Meet7's large BoolQ advantage. If you need consistent commonsense reasoning, prefer this model. If yes/no QA is your primary use case, prefer Meet7.

Model Details

Developed by Ma7ee7
License Apache-2.0
Base model Ma7ee7/Meet7_0.6b
Original base unsloth/Qwen3-0.6B-unsloth-bnb-4bit
Training samples 600
Training Continued LoRA fine-tune, lower LR

Trained 2x faster with Unsloth and Hugging Face TRL.