Skip to content

Developed an end-to-end data analytics project using a real dataset from AtliQ Technologies •Conducted data preprocessing, exploratory data analysis, and insights generation to provide actionable recommendations for improving work productivity.

Notifications You must be signed in to change notification settings

SShashank00/HR-DataAnalytics

Repository files navigation

End-to-End Data Analytics Project with Power BI

Introduction

In this end-to-end data analytics project, we will take a REAL dataset for employee presence from a company called AtliQ and perform data analysis in Power BI. We invited an HR from AtliQ Technologies who conveyed her requirements, and we built a Power BI dashboard for her to help her with employee insights. This project is perfect for your data analyst resume as it is built on a real dataset (and not the toy dataset).

Dataset

The dataset used in this project is sourced from AtliQ and contains information about employee presence.

Project Overview

  • Data Preprocessing: Cleaning and preparing the dataset for analysis.
  • Exploratory Data Analysis: Exploring the dataset to understand patterns and trends.
  • Dashboard Creation: Building interactive dashboards in Power BI.
  • Insights Generation: Drawing meaningful insights to help HR in decision-making.

Technologies Used

  • Power BI
  • Python (for data preprocessing if applicable)

Usage

To replicate this project:

  1. Download the dataset from here.
  2. Open the Power BI file.
  3. Import the dataset into Power BI.
  4. Follow the steps outlined in the project documentation.

Screenshots

Include screenshots of your Power BI dashboard here. image image image

Conclusion

This project demonstrates the application of data analytics techniques in solving real-world business problems. By analyzing employee presence data, we can derive valuable insights to improve HR strategies and decision-making processes.

About

Developed an end-to-end data analytics project using a real dataset from AtliQ Technologies •Conducted data preprocessing, exploratory data analysis, and insights generation to provide actionable recommendations for improving work productivity.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published