snuh/hari-q3-14b

TEXT GENERATIONConcurrency Cost:1Model Size:14BQuant:FP8Ctx Length:32kPublished:Jun 11, 2025License:apache-2.0Architecture:Transformer0.0K Open Weights Cold

The snuh/hari-q3-14b is a 14 billion parameter Korean Medical Large Language Model (LLM) developed by the Healthcare AI Research Institute (HARI) at Seoul National University Hospital (SNUH). Fine-tuned for medical Question-Answer (QA) style generation, it excels in clinical medicine, achieving 84.14% accuracy on the Korean Medical Licensing Examination (KMLE). This model is designed for applications such as clinical decision support, medical education, and automated medical reasoning.

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Korean Medical LLM by SNUH HARI

snuh/hari-q3-14b is a 14 billion parameter Large Language Model (LLM) developed by the Healthcare AI Research Institute (HARI) at Seoul National University Hospital (SNUH). This model is specifically fine-tuned for medical Question-Answer (QA) style generation, primarily in Korean and English, focusing on the clinical medicine domain.

Key Capabilities & Performance

  • Medical QA Generation: Optimized for generating answers to medical questions, reflecting clinical reasoning.
  • High Accuracy: Achieves 84.14% accuracy on the reasoning section of the Korean Medical Licensing Examination (KMLE) benchmark.
  • Training Data: Fine-tuned on a curated corpus of publicly available, de-identified Korean medical QA data, including clinical guidelines, academic publications, and exam-style questions.
  • Ethical Compliance: Trained exclusively on de-identified data, ensuring no real patient data or PII is included.

Intended Use Cases

  • Clinical Decision Support: Provides QA-style assistance for medical professionals.
  • Medical Education: Useful for self-assessment tools and educational platforms.
  • Automated Medical Reasoning: Aids in documentation and reasoning tasks within healthcare.

Important Considerations

  • This model is intended for research and educational purposes only and should not be used to make clinical decisions.
  • Benchmarks are provided for research and do not imply clinical safety or efficacy.