Recognition of Persomnality Types from Facebook status using Machine Learning
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Updated
Jul 16, 2021 - JavaScript
Recognition of Persomnality Types from Facebook status using Machine Learning
A method to predict activating, deactivating and resistance mutations in kinases
An Employee Attrition detection web application, that predicts if an employee is going to leave an organization in near future.
🏥 A model which gives the rate of change of emotions by classifying the emotions. This can be used to diagnose brain related diseases such as Bipolar disorder.
An end-to-end application for crime rate detection and crime type classification
Floodplain Area Classifier Using Optical and Radar Imagery
Anveshan Hackathon Project Submission Repo of Numeric Nomads
AquaScribe is a smart water management system that leverages IoT sensors, ML Algorithms and automation to optimize irrigation processes in real-time
A light infoSec recon extension for Chrome browser
This is a machine learning project to detect whether a note is real or fake [Accuracy : 99% | No Overfitting].
Disease diagnosis using ML; 3rd place at Hackcoming 2 🏆
Crowdsourced Personal Travel Itinerary Creator
RetainX is a full-stack web application designed to predict customer churn using a trained machine learning model. The application allows users to input customer information through a frontend form and returns a prediction on whether the customer is likely to churn, along with a probability score.
NutriNavigator is not just a nutritional recommendation system; it's also an e-commerce platform offering organic food products. Now working to dockerize it then host on azure or aws .
A full-stack web app to predict the risk of heart attacks using a machine learning model (Random Forest, 98.1% accuracy). Built with React, Node.js, and Python
Main branch is older version from a sole partner .
Um site de reconhecimento de dígitos de 0 a 9, onde é possível desenhar manualmente o número e o algoritmo de IA irá reconhecê-lo.
A collection of JavaScript projects built for the Google Earth Engine Code Editor, including scripts for terrain analysis, wetland mapping, and remote sensing workflows.
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