cxllin/Llama2-7b-med-v1
Model Details
Description
The cxllin/Llama2-7b-med-v1 model, derived from the Llama 7b model, is posited to specialize in Natural Language Processing tasks within the medical domain.
Development Details
- Developer: Collin Heenan
- Model Architecture: Transformer
- Base Model: Llama-2-7b
- Primary Language: English
- License: apache 2.0
Model Source Links
- Repository: Not Specified
- Paper: Jin, Di, et al. "What Disease does this Patient Have?..."
Direct Applications
The model is presumed to be applicable for various NLP tasks within the medical domain, such as:
- Medical text generation or summarization.
- Question answering related to medical topics.
Downstream Applications
Potential downstream applications might encompass:
- Healthcare chatbot development.
- Information extraction from medical documentation.
Out-of-Scope Utilizations
- Rendering definitive medical diagnoses or advice.
- Employing in critical healthcare systems without stringent validation.
- Applying in any high-stakes or legal contexts without thorough expert validation.
Bias, Risks, and Limitations
- Biases: The model may perpetuate biases extant in the training data, influencing neutrality.
- Risks: There exists the peril of disseminating inaccurate or misleading medical information.
- Limitations: Expertise in highly specialized or novel medical topics may be deficient.
Recommendations for Use
Utilizers are urged to:
- Confirm outputs via expert medical review, especially in professional contexts.
- Employ the model judiciously, adhering to pertinent legal and ethical guidelines.
- Maintain transparency with end-users regarding the model’s capabilities and limitations.
Getting Started with the Model
Details regarding model deployment and interaction remain to be provided.
Training Dataset
- Dataset Source:cxllin/medinstruct
- Size: 10.2k rows
- Scope: Medical exam-related question-answering data.
Preprocessing Steps
Details regarding data cleaning, tokenization, and special term handling during training are not specified.
@article{jin2020disease, title={What Disease does this Patient Have? A Large-scale Open Domain Question Answering Dataset from Medical Exams}, author={Jin, Di and Pan, Eileen and Oufattole, Nassim and Weng, Wei-Hung and Fang, Hanyi and Szolovits, Peter}, journal={arXiv preprint arXiv:2009.13081}, year={2020} }
- Downloads last month
- 20