Cloudera Developer Training for Apache Spark (CDTAS)

Course Description Schedule Course Outline

Who should attend

  • Developers
  • Data Engineers


  • Course examples and exercises are presented in Python and Scala, so knowledge of one of these programming languages is required.
  • Basic knowledge of Linux is assumed.

Course Objectives

By the end of this course, you will learn:

  • Using the Spark shell for interactive data analysis
  • The features of Spark’s Resilient Distributed Datasets
  • How Spark runs on a cluster
  • How Spark parallelizes task execution
  • Writing Spark applications
  • Processing streaming data with Spark

Course Content

This three-day course for Apache Spark enables you to build complete, unified big data applications combining batch, streaming, and interactive analytics on all their data. With Spark, developers can write sophisticated parallel applications to execute faster decisions, better decisions, and real-time actions, applied to a wide variety of use cases, architectures and industries.

Advance Your Ecosystem Expertise

Apache Spark is the next-generation successor to MapReduce. Spark is a powerful, opensource processing engine for data in the Hadoop cluster, optimized for speed, ease of use, and sophisticated analytics. The Spark framework supports streaming data processing and complex, iterative algorithms, enabling applications to run up to 100x faster than traditional Hadoop MapReduce programs.

Classroom Training

Duration 3 days

Price (excl. tax)
  • Germany: 1,995.- €
Dates and Booking
Price (excl. tax)
  • Germany: 1,600.- €
Buy E-Learning
Click on town name to bookSchedule
Fast Lane will carry out all guaranteed training regardless of the number of attendees, exempt from force majeure or other unexpected events, like e.g. accidents or illness of the trainer, which prevent the course from being conducted.
This computer icon in the schedule indicates that this date/time will be conducted as Instructor-Led Online Training.

Currently no local training dates available.  For enquiries please write to info@flane.de.