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phi-4-minecraft-advisor-qlora-sft
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License: mitEval results (104-prompt advisor eval, Claude judge)
| Metric | Score | Gate | |
|---|---|---|---|
| TP recall | 0.972 | ≥0.90 | PASS |
| TN precision | 0.958 | ≥0.85 | PASS |
| Joint F | 0.965 | ≥0.88 | PASS |
| Edge accuracy | 1.000 | ≥0.75 | PASS |
| Mechanism mean | 1.84/2.0 | ≥1.50 | PASS |
Zero-shot phi-4 baseline: TP=1.000, TN=0.667 (over-alerts on every scenario).
Training details
- Base model: microsoft/phi-4
- Task: QLoRA SFT, 3 epochs, r=32, alpha=64, target_modules=all-linear, NF4 4-bit
- Corpus: 1384 train / 154 val scenarios
Framework versions
- PEFT 0.13.0
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trentnorth
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microsoft/phi-4
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this model
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