CSE343, Machine Learning Course Project, IIIT Delhi, Monsoon 2021
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Updated
Sep 18, 2023 - Jupyter Notebook
CSE343, Machine Learning Course Project, IIIT Delhi, Monsoon 2021
This repository demonstrates how data science can help to identify the employee attrition which is part of Human Resource Management
This project involves Employee Attrition Prediction using various data visualisation techniques & machine learning models. The repository consists of the .ipynb file and files used for deploying the ML model on 'Heroku' using the Flask framework.
This project is a machine learning classification problem. The objective of this project was to predict the rate of employee attrition in the current scenario based on different features. It was the classification problem. I tried three algorithms (Logistics, Decision Tree & Random Forest). But I got high accuracy score about 0.97 using random F…
Bill Gates was once quoted as saying, "You take away our top 20 employees and we [Microsoft] become a mediocre company". This statement by Bill Gates took our attention to one of the major problems of employee attrition at workplaces. Employee attrition (turnover) causes a significant cost to any organization which may later on effect its overal…
In this project, the team strives to use machine learning principles to predict employee attrition, provide managerial insights to prevent attrition, and finally rule out and present the factors that lead to attrition.
In this project I did Complete EDA, and Build a ML model that can accurately predict whether an Employee will be leave a company or not based on different factors.
Uncover the factors that lead to employee attrition using IBM Employee Data
Uncover the factors that lead to employee attrition at IBM
Predicting why employees are leaving organization & building a model to predict in future, who will leave the company.
HR Analytics in R Script: "Why Employees leave the company?"
Final presentation project for completing Rakamin Academy Data Science Bootcamp.
Clustering employee performances to predict resignation likelihood and develop strategies for employee retention
Understanding and predicting employee's attrition
This project focuses on predicting the attrition rate of employees by using different ML algorithms. The dataset is a fictional data taken from Kaggle
PREDICTIVE ANALYTICS - LOGISTIC REGRESSION . Predicting employee attrition using HR data
This is a project based on the Employee Attrition analysis and then predicting it. Also analysing what are the major factors for attrition.
Employee churn prediction using Gradient Boosting Classifier
Tingginya tingkat employee attrition dapat mempengaruhi kinerja perusahaan. Oleh karena itu, perlu dilakukan proses analisa mengenai faktor-faktor apa saja yang menyebabkan seorang karyawan memilih untuk resign sehingga team HR dapat memberikan treatment khusus kepada karyawan agar tidak meninggalkan perusahaan.
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