solid state training solution

Apache Spark 

Monday, February 23, 2026
Category:Information Technology
3 Days Dubai 9:00am – 4:00pm

Introduction

This Apache Spark certification training will enable learners to understand how Spark executes in-memory data processing and runs much faster than Hadoop MapReduce. Learners will master Scala programming and will get trained on different APIs which Spark offers such as Spark Streaming, Spark SQL, Spark RDD, Spark MLlib and Spark GraphX. This course is an integral part of the Big Data developer’s learning path.

Objectives

This Apache Spark certification course training will cover these objectives:

  • Understand Scala and its implementation
  • Install Spark and implement Spark operations on Spark Shell
  • Understand the role of Spark RDD
  • Implement Spark applications on YARN (Hadoop)
  • Learn Spark Streaming API
  • Implement machine learning algorithms in Spark MLlib API
  • Analyze Hive and Spark SQL architecture
  • Implement Broadcast variable and Accumulators for performance tuning

Training Methodology

The course utilizes a hands-on approach, teaching participants to launch Spark shells, write applications, and tune performance using real-world examples.

Organizational Impact

Organizations will benefit from:

  • Lightning-fast big data analysis capabilities
  • Ability to handle both batch and streaming data
  • Implementation of advanced machine learning algorithms
  • Improved efficiency in data processing pipelines

Personal Impact

Participants will benefit by:

  • Becoming proficient in in-memory data processing
  • Gaining skills in high-demand Big Data technologies
  • Learning to integrate Spark with Hadoop/YARN
  • Enhancing career prospects in Data Science and Analytics
2026-02-23
Dubai
2026-02-28
Dubai
2026-04-27
Dubai
2026-06-29
Dubai
2026-08-28
Dubai
2026-10-24
Dubai
2026-12-30
Dubai
AED:

Data scientists, data analytics, developers, solution architects can go for Apache Spark certification training course or anyone who is interested and willing to learn new tech stack.