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A Data science and Analytics project with the main aim of doing some Descriptive and Exploratory Data Analysis and then applying predictive modelling for predicting why and which are the best and most experienced employees leaving prematurely?
People analytics project in R that implements predictive modeling to identify employees most likely to leave a company. Discussion around implications for the sample firm and proposed interventions draw on best practices in organizational development.
A Human Resource Analytics project that addresses the question "Why do employees leave?". Also helps us better understand factors for employee satisfaction
Healthcare Sector Employee Attrition Exploratory Data Analysis ## Introduction In this notebook we are going to apply an Exploratory Data Analysis (EDA) to the Watson Health Care employees dataset. The dataset contains employee and company data useful for supervised ML, unsupervised ML, and analytics. The main scope of the EDA is to analyse and…
Based on employee data recorded during 16 years of activity, a company seeks to reduce turnover rate, absences, and employee dissatisfaction; and increase performance.
HR Dashboard Project using Tableau to visualize key HR metrics, demographics, and salary insights. The project simulates real-world HR data analysis, providing high-level overviews and detailed employee records for better decision-making.