Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

Udemy

Employee Attrition Prediction in Apache Spark (ML) Project

via Udemy

Overview

Employee attrition Prediction in Apache Spark (ML) & HR Analytics Employee Attrition & Performance project for beginners

What you'll learn:
  • In this course we will implement Spark Machine Learning Project Employee Attrition Prediction in Apache Spark using Databricks Notebook (Community server)
  • Launching Apache Spark Cluster
  • Process that data using a Machine Learning model (Spark ML Library)
  • Hands-on learning
  • Explore Apache Spark and Machine Learning on the Databricks platform.
  • Real-time Use Case
  • Create a Data Pipeline
  • Publish the Project on Web to Impress your recruiter

Spark Machine Learning Project (Employee Attrition Prediction) for beginners using Databricks Notebook (Unofficial) (Community edition Server)


In this Data science Machine Learning project, we will create Employee Attrition Prediction Project using Decision Tree Classification algorithm one of the predictive models.


  • Explore Apache Spark and Machine Learning on the Databricks platform.

  • Launching Spark Cluster

  • Create a Data Pipeline

  • Process that data using a Machine Learning model (Spark ML Library)

  • Hands-on learning

  • Real time Use Case

  • Publish the Project on Web to Impress your recruiter

  • GraphicalRepresentation of Data using Databricks notebook.

  • Transform structured data using SparkSQL and DataFrames


Employee Attrition Prediction a Real time Use Case on Apache Spark


About Databricks:

Databricks lets you start writing Spark ML code instantly so you can focus on your data problems.

Taught by

Bigdata Engineer

Reviews

4.5 rating at Udemy based on 32 ratings

Start your review of Employee Attrition Prediction in Apache Spark (ML) Project

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.