Android app that predicts chronic disease risk such as diabetes, cancer, obesity, cardiovascular diseases based on user health data, written in kotlin and jetpack compose.
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Updated
Mar 11, 2025 - Kotlin
Android app that predicts chronic disease risk such as diabetes, cancer, obesity, cardiovascular diseases based on user health data, written in kotlin and jetpack compose.
A machine learning pipeline to classify obesity levels from structured health and habit data using Python, scikit-learn, and Streamlit.
WellnessWise_ml model is neural network machine learning model trained for Providing health risk for diseases like Cardiovascular, Hypertension, cancer, Diabetes, and obesity. There are two types of model one for h5, other is in tensor flow lite formate for Mobile phone integration and low powered device's.
Machine learning project to predict obesity risk levels based on lifestyle and demographic data. This project utilizes advanced algorithms like CatBoost, LightGBM, and more to classify individuals into different obesity categories
Obesity Level Detector A machine learning model that estimates obesity levels based on user inputs, including dietary habits and physical activity. Hosted on the web, the model provides personalized health advice and recommendations.
This project predicts obesity levels using machine learning based on lifestyle and health data. The model, built with **Random Forest**, classifies individuals into categories like Normal Weight and Obesity. It aims to assist healthcare professionals in identifying obesity risks.
Developed a predictive model to classify individuals into one of seven weight categories (ranging from insufficient weight to obesity type 3) based on various personal factors using diverse neural network architectures.
This website uses a Bayesian Network to diagnose people with obesity and see what would have happened if they made different lifestyle choices
The Obesity Prediction Dataset provides a comprehensive collection of attributes related to individuals demographics, lifestyle habits, and health indicators.
Obesity Prediction Using Machine learning
A data science project analyzing the Obesity dataset to classify individuals into obesity categories using a Decision Tree model. Includes preprocessing, visualization, and model evaluation.
Multi-class classification task of determining an individual's level (or lack) of obesity, using LightGBM
This project leverages Machine Learning to classify individuals into obesity categories—Underweight, Normal, Overweight, or Obesity—based on demographic and lifestyle data. Using a Random Forest Classifier trained on features like age, sex, eating habits, physical activity, and daily routines, the model predicts obesity status with accuracy (86%)
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