prathams0ni/Predictive_HR_Analytics_Employee_Attrition_Forecasting_using_ML_Streamlit_Deployment
This project is an end-to-end Machine Learning web application that predicts whether an employee is likely to leave the company based on HR analytics data. The system helps organizations identify high-risk employees and take proactive retention actions.
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Mar 16, 2026
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