

Diabetica
Overview :
Diabetica is an advanced language model developed specifically for diabetes treatment and care. Through deep learning and big data analysis, it provides a wide range of services, including diagnosis, treatment recommendations, medication management, lifestyle advice, and patient education. The models Diabetica-7B and Diabetica-1.5B have demonstrated outstanding performance across various diabetes-related tasks, offering a reproducible framework that allows other medical fields to benefit from such AI technologies.
Target Users :
The target audience includes healthcare professionals, researchers, and diabetes patients. Diabetica enables healthcare professionals to provide more accurate treatment recommendations and patient education. Researchers can utilize it for diabetes-related studies, while diabetes patients can receive personalized lifestyle advice and daily management guidance.
Use Cases
Doctors use Diabetica to provide personalized treatment suggestions for diabetic patients.
Researchers use Diabetica to analyze trends in diabetes treatment.
Patients obtain daily dietary and exercise advice through Diabetica.
Features
High-performance domain-specific model: Demonstrates superior performance on diabetes-related tasks.
Reproducible framework: Offers detailed methods for creating specialized medical language models using open-source models, specific disease datasets, and fine-tuning techniques.
Comprehensive evaluation: Designed comprehensive benchmarking and clinical trials to validate the model's effectiveness in clinical applications.
Model access: The model can be accessed through the Huggingface platform.
Model inference: Provides code examples for model inference.
Data acquisition: Training data can be obtained by contacting the developers.
Evaluation scripts: Offers evaluation scripts for multiple-choice questions, fill-in-the-blank tasks, and open dialogue.
How to Use
Visit Diabetica's GitHub page.
Read the README file to understand the project's background and usage instructions.
Download the models as needed and install the required dependencies.
Use the provided code examples for model inference.
Contact the developers if you need access to training data.
Utilize evaluation scripts to test the model's performance.
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