MahmoudAbusaqer/LLMs-Lora-Finetuning-vs-Zeroshot-Classification
Official implementation comparing parameter-efficient LoRA fine-tuning (Llama, Phi, Qwen families) with zero-shot API classification (o3, DeepSeek, Claude) for abusive language detection. Includes training pipelines and evaluation code. Published in JVLC
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Python
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MIT
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Last pushed
Feb 11, 2026
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