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Diabetes-Risk-Prediction

A machine learning project for predicting early diabetes risk using the PIMA Indians dataset. Includes data preprocessing, model training (Random Forest), SHAP-based explainability, and a Streamlit we

비디오

기술 스택

Python
Web3
Pandas
Scikit-learn
SHAP
Streamlit

설명

Early Diabetes Risk Prediction System
Developed a machine learning application to predict early diabetes risk using the PIMA Indians Diabetes Dataset. The project involved data preprocessing, feature scaling, and handling class imbalance to ensure accurate predictions. Implemented a Random Forest classifier for risk prediction and integrated SHAP (SHapley Additive Explanations) to provide model interpretability and highlight key risk factors influencing predictions. Deployed the solution as an interactive Streamlit web app, enabling users to input health parameters and receive real-time risk assessment with explainable AI insights.

Tech Stack: Python, Pandas, Scikit-learn, Random Forest, SHAP, Streamlit

해커톤 진행 상황

Increased model accuracy from 60% to 78%.
팀 리더
AAyan Ali
프로젝트 링크
부문
AI