The Challenge

An enterprise with 5,000+ employees was experiencing an unusually high turnover rate in its R&D department. The 'cost of replacement' was estimated at 1.5x the annual salary per employee, causing significant financial and intellectual property loss.

HR exit interviews provided qualitative data, but the company needed a quantitative way to predict which employees were at risk *before* they resigned. They lacked a unified view of engagement and performance metrics across the organization.

Technical Implementation

I developed a Machine Learning model using the XGBoost algorithm to predict employee attrition risk. The feature set included over 50 variables, including engagement scores, training history, salary benchmarks, and manager feedback sentiment.

I integrated the model predictions into a secure HR dashboard, allowing managers to see 'Risk Scores' for their teams. I also implemented a 'What-If' analysis tool where HR could simulate the impact of different retention strategies (e.g., salary adjustments or training programs).

The solution included a SHAP-based explanation layer, helping HR understand the *why* behind every risk score (e.g., 'Lack of growth' vs 'Salary disparity'), making the AI's output actionable and fair.

Interactive Experience

Explore the high-fidelity implementation and architectural logic of the HR Attrition Prediction Model development environment.

Project Visualization

Development Lifecycle

The sequential process followed to ensure architectural integrity and delivery excellence.

Discovery

Requirement gathering and technical feasibility audits.

Architecture

Structural design and integration of core microservices.

Execution

Agile development cycles and real-time integration testing.

Deployment

Production release and automated staging environment validation.

Visual Ethos

Designed with a focus on high data density and accessibility. The interface utilizes a fluid grid system to ensure seamless performance across enterprise environments.

Core Stack

Built using industry-standard protocols to ensure scalability. Every module is optimized for fast load times and real-time data integrity.

Python • Scikit-learn • XGBoost • Power BI • HR Analytics • Explainable AI (SHAP)

System Modules & Core Capabilities

An analytical breakdown of the proprietary modules and architectural logic integrated into the system.

CORE-01

Early Warning System for At-risk Staff

CORE-02

Department-wise Stability Analysis

CORE-03

Competency-based Replacement Planning

CORE-04

Sentiment Analysis on Exit Interviews

CORE-05

Automated Recruitment Recommendation Engine

CORE-06

Diversity & Inclusion Metrics Dashboard