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

IBM

Apache Spark for Data Engineering and Machine Learning

IBM via edX

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!

Apache® Spark™ is a fast, flexible, and developer-friendly open-source platform for large-scale SQL, batch processing, stream processing, and machine learning. Users can take advantage of its open-source ecosystem, speed, ease of use, and analytic capabilities to work with Big Data in new ways.

In this short course, you explore concepts and gain hands-on skills to use Spark for data engineering and machine learning applications. You'll learn about Spark Structured Streaming, including data sources, output modes, operations. Then, explore how Graph theory works and discover how GraphFrames supports Spark DataFrames and popular algorithms.

Organizations can acquire data from structured and unstructured sources and deliver the data to users in formats they can use. Learn how to use Spark for extract, transform and load (ETL) data. Then, you'll hone your newly acquired skills during your "ETL for Machine Learning Pipelines" lab.

Next, discover why machine learning practitioners prefer Spark. You'll learn how to create pipelines and quickly implement features for extraction, selections, and transformations on structured data sets. Discover how to perform classification and regression using Spark. You'll be able to define and identify both supervised and unsupervised learning. Learn about clustering and how to apply the k-mean s clustering algorithm using Spark MLlib​. You'll reinforce your knowledge with focused, hands-on labs and a final project where you will apply Spark to a real-world inspired problem.

Prior to taking this course, please ensure you have foundational Spark knowledge and skills, for example, by first completing the IBM course titled "Big Data, Hadoop and Spark Basics."

Syllabus

Module 1 – Spark for Data Engineering

  • Spark Structured Streaming

  • GraphFrames on Apache Spark

  • ETL Workloads

  • Hands-on Lab: ETL for ML Pipelines

Module 2 – Spark ML for Machine Learning

  • Spark ML Fundamentals

  • Spark ML Regression and Classification

  • Spark ML Clustering

Module 3 – Final Project

o Lab: Setup & Practice Assignment

o Project Overview

o Lab: Final Assignment Project

o Project Submission & Grading

  • Final Quiz

Taught by

Romeo Kienzler

Reviews

4.7 rating at edX based on 28 ratings

Start your review of Apache Spark for Data Engineering and Machine Learning

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.