

Ultramedical
Overview :
The UltraMedical project aims to develop specialized general-purpose models for the biomedical field. These models are designed to answer questions related to exams, clinical scenarios, and research questions while maintaining a broad base of general knowledge to effectively handle cross-domain issues. By utilizing advanced alignment techniques, including supervised fine-tuning (SFT), direct preference optimization (DPO), and odds ratio preference optimization (ORPO), training large language models on the UltraMedical dataset creates powerful and versatile models that effectively serve the needs of the biomedical community.
Target Users :
The UltraMedical model is suitable for researchers, doctors, and students in the biomedical field. It can provide professional answers related to exams, clinical scenarios, and research questions, while also possessing a broad base of general knowledge, helping them more effectively address cross-disciplinary medical issues.
Use Cases
Answering questions in medical exams.
Providing professional consultation in clinical scenarios.
Performing professional analysis of biomedical research questions.
Features
Construct a large-scale, high-quality biomedical instruction dataset, UltraMedical.
Enhance data diversity and complexity using a mixture of synthetic and manually-annotated data with preference labeling.
Employ advanced alignment techniques such as supervised fine-tuning (SFT), direct preference optimization (DPO), and odds ratio preference optimization (ORPO).
Provide different-sized language models, including 7B and 70B.
Achieve excellent average results on multiple medical benchmark tests.
Plan to address the model's limitations in future research, such as hallucination and potential bias.
How to Use
Visit the UltraMedical GitHub page for project information and resources.
Read the project documentation to understand the model's architecture and functionality.
Download or access the UltraMedical training dataset.
Choose the appropriate language model size based on your needs for experimentation or application.
Test the model's performance and accuracy on biomedical questions.
Adjust the model's usage or parameters based on feedback and results.
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