--- license: mit --- # AI Health Assistant This project is a Flask-based web application that provides several machine learning-powered features such as: - Counseling Response Generation using a GPT-2 model. - Medication Information Generation using a GPT-2 model. - Diabetes Classification using a Random Forest classifier. - Medicine Classification using a K-Nearest Neighbors (KNN) model. - General Chat powered by LLaMA 3.1 API hosted on Groq Cloud for AI-powered conversations. The project is divided into two main parts: Backend (Flask) and Frontend (HTML, CSS, JavaScript), with a connection to pre-trained machine learning models. ### Project Setup - **System Requirements:** - Python 3.8+ - Flask - Transformers library (for GPT-2 models) - Joblib (for loading pre-trained models) - Langchain Groq (for LLaMA integration) - Frontend: HTML, CSS, JavaScript - **Project Structure:** ``` AI Health Assistant/ │ ├── backend/ │ ├── models/ │ │ ├── mental_health_model/ │ │ ├── medication_info/ │ │ ├── diabetes_model/ │ │ ├── medication_classification_model/ │ ├── utils.py ├── frontend/ │ ├── index.html │ ├── styles.css │ ├── script.js ├── app.py ├── requirements.txt ### Backend **Counseling Response Generation:** - Generates counseling-related responses using a GPT-2 mental health model. **Medication Information Generation:** - Provides medication-related responses using a GPT-2 medication model. **Diabetes Classification:** - Classifies users as diabetic or non-diabetic based on glucose, BMI, and age using a Random Forest classifier. **Medicine Classification:** - Predicts suitable medications based on gender, blood type, medical condition, and test results using a K-Nearest Neighbors (KNN) model. **General Chat:** - Offers general chat responses using LLaMA 3.1 API hosted on Groq Cloud for AI-powered conversations. ### Frontend **Diabetes Classification Tab:** - Form input for glucose, BMI, and age to classify diabetes risk. **Medicine Classification Tab:** - Input fields for gender, blood type, medical condition, and test results to classify appropriate medications. **Counseling and Medication Tabs:** - Text inputs for receiving AI-generated responses for counseling and medication questions. **General Chat Tab:** - General-purpose chatbot powered by LLaMA 3.1 for natural conversations. **Dark Mode:** - Toggle dark mode for user interface customization. ### Usage 1. **Access the Application:** Users interact with the web interface, accessible through a browser once the Flask server is running. 2. **Input Data:** Users provide medical-related information or general queries depending on the feature they want to use. 3. **Receive Responses:** Based on the input, AI models provide responses such as classification results (diabetes, medicine) or generated text (counseling, medication, chat). 4. **Interactive Interface:** Users can toggle between different features, making it suitable for general chat, medical insights, or counseling help. ### WebApp ![App Screenshot](https://huggingface.co/datasets/hassaanik/HealthCare_Bot_App/resolve/main/AI%20Health%20Assisstant.gif)