Udemy

Spark Machine Learning Project (House Sale Price Prediction)

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  • 18,875 Students
  • Updated 7/2025
  • Certificate Available
4.3
(92 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
4 Hour(s) 55 Minute(s)
Language
English
Taught by
Bigdata Engineer
Certificate
  • Available
  • *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Rating
4.3
(92 Ratings)
2 views

Course Overview

Spark Machine Learning Project (House Sale Price Prediction)

Spark Machine Learning Project (House Sale Price Prediction) for beginner using Databricks Notebook (Unofficial)

Are you looking to build real-world machine learning projects using Apache Spark?


Do you want to learn how to work with big data, build end-to-end ML pipelines, and apply your skills to a practical use case?

If yes, this course is for you!

In this hands-on project-based course, we will use Apache Spark MLlib to build a House Sale Price Prediction model from scratch. You’ll go beyond theory and actually implement a complete machine learning workflow—covering data ingestion, preprocessing, feature engineering, model training, evaluation, and visualization—all inside Apache Zeppelin notebooks and Databricks.


Whether you are a data engineering beginner, a machine learning enthusiast, or a professional preparing for real-world Spark projects, this course will give you the confidence and skills to apply Spark MLlib to solve real business problems.


What makes this course unique?


  • Project-based learning: Instead of just slides, you’ll learn by building an end-to-end project on house price prediction.

  • Step-by-step environment setup: We’ll guide you through installing Java, Apache Zeppelin, Docker, and Spark on both Ubuntu and Windows.

  • Hands-on with Zeppelin: Learn how to write, run, and visualize Spark code inside Zeppelin notebooks.

  • Spark MLlib in action: From RDDs and DataFrames to pipelines and regression models, you’ll gain practical experience in Spark’s machine learning library.

  • Performance insights: Learn how to track jobs and optimize performance when working with large datasets.

  • Flexible workflow: Work locally with Zeppelin or on the cloud with Databricks free account.


What you’ll work on in the project


  • Load and explore a real-world house sales dataset

  • Use StringIndexer to handle categorical variables

  • Apply VectorAssembler to prepare training data

  • Train a regression model in Spark MLlib

  • Test and evaluate the model with RMSE (Root Mean Squared Error)

  • Visualize and interpret model results for business insights


By the end of the course, you will have built a complete Spark ML project and gained skills you can confidently apply in data science, data engineering, or machine learning roles.


If you want to master Spark MLlib through a real-world project and add an impressive machine learning use case to your portfolio, this course is the perfect place to start!

Course Content

  • 9 section(s)
  • 62 lecture(s)
  • Section 1 Introduction to the Course
  • Section 2 Setting Up the Environment
  • Section 3 Download Resources
  • Section 4 Zeppelin Basics
  • Section 5 Zeppelin with Apache Spark
  • Section 6 Machine Learning Project
  • Section 7 Introduction
  • Section 8 Download Resources
  • Section 9 Project Begins

What You’ll Learn

  • Understand the end-to-end workflow of a Spark ML project.
  • Set up the environment by installing Java, Apache Zeppelin, Docker, and Spark.
  • Work with Zeppelin notebooks for running Spark jobs and visualizations.
  • Understand the house sales dataset and prepare it for machine learning.
  • Perform data preprocessing and feature engineering using Spark MLlib.
  • Use StringIndexer for handling categorical features.
  • Apply VectorAssembler to transform multiple features into a single vector column.
  • Split data into training and testing sets for machine learning tasks.
  • Train a regression model in Spark MLlib for predicting house sale prices.
  • Test and evaluate the regression model with metrics like RMSE.
  • Visualize outputs and interpret model results for business insights.
  • Run Spark jobs both in Apache Zeppelin and in Databricks (cloud environment).
  • Gain practical experience with Spark DataFrames, SQL queries, caching, and job tracking.
  • Build confidence to apply Spark MLlib in real-world business projects.

Reviews

  • S
    Shahzaib-Technical
    5.0

    Goo All

  • M
    Masood
    5.0

    IT WAS BEST TO LEARN OR TO MAKE A PROJECT .

  • H
    Halida Nur Ainun
    5.0

    ta

  • L
    Lorenzo Nicholas
    4.5

    very good

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