It is a binary classification task, where given a set of features we need to predict whether the employee is likely to leave or not
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Updated
Jan 11, 2019 - Jupyter Notebook
It is a binary classification task, where given a set of features we need to predict whether the employee is likely to leave or not
Predictive model on employee turnover using machine learning
An interactive Employee Retention Dashboard that visualizes simulated data to analyze turnover trends and employee satisfaction.
This project analyzes employee retention using machine learning models and explores factors affecting it, such as workload, job satisfaction, and salary disparities. The goal is to provide actionable insights for HR and management, aiding in the development of effective retention strategies.
Interactive Power BI Dashboard for HR Analytics. Visualizes employee attrition trends, demographic breakdowns, and key retention drivers using DAX and dynamic filtering.
This project is a capstone part of the Google Advanced Data Analytics Professional Certificate on Coursera. This project involves data preparation and cleaning, exploratory data analysis (EDA), feature engineering, and model building and evaluation. Machine learning techniques are Logistic Regression, Decision Tree, Random Forest and XGBoost.
RetenX is a Flask-based web app for predicting employee attrition using machine learning. It analyzes HR data, provides insights via interactive visualizations, and offers personalized retention strategies. Features include single/batch predictions, model comparisons, historical trend analysis.
This is a group project in the Data Science for Business I course where we took a data-driven approach to foster employee retention and enhance operational efficiency by building predictive models on Python.
SQL-based HR analytics project analyzing employee retention, performance, and compensation patterns to support data-driven business decisions.
An end-to-end data science project on HR attrition. Built a predictive model to identify at-risk employees and provided actionable, data-driven recommendations to improve retention.
People Analytics case study addressing post-layoff retention at Meta. Identified high-performer flight risk and delivered data-backed retention strategy to C-suite
Excel project analyzing employee churn to identify key factors and improve retention strategies.
The main goal of this project is to accurately predict that the employee will resign or not based on predefined criteria. Various implementations and learning methods are used in this project to increase the efficiency of predicting that any employee will apply for resignation. A web-app is also made to facilitate the execution of the project. T…
AI-powered HR Flight Risk Simulator. Uses Logistic Regression with Class Balancing to predict employee turnover and simulate retention strategies. Deployed on Streamlit.
This project presents an interactive Tableau dashboard that analyzes employee attrition trends across various dimensions such as department, gender, age, and job satisfaction. The goal is to help HR teams identify patterns in workforce turnover and support data-driven decision-making to improve employee retention.
This repo contains machine learning projects for beginners.
🚀 End-to-end ML pipeline using XGBoost to predict employee attrition with 92.03% Recall. Features extensive EDA, Logistic Regression threshold optimization, and actionable HR strategy based on burnout signals and promotion cycles.
Figuring Out Which Employees May Quit
ML model predicting employee attrition with 100% accuracy
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