Cloudera Developer Training for Spark & Hadoop (DEV-S-H)

Catalog Home Databases, Business Intelligence & Data Science Cloudera
3.237.254.197
Your Training Location:  

Cloudera Developer Training for Spark & Hadoop (DEV-S-H)

Instructor Led
Loading Course Dates...
Failed
No available dates in this city.

  Available by Request
{{date.date_begin | date:'M/d'}} - {{date.date_end | date:'M/d/yyyy'}}
   Free{{date.date_price}}
 
ViewHide Additional Dates

This four-day hands-on training course delivers the key concepts and expertise developers need to use Apache Spark to develop high-performance parallel applications. Participants will learn how to use Spark SQL to query structured data and Spark Streaming to perform real-time processing on streaming data from a variety of sources. Developers will also practice writing applications that use core Spark to perform ETL processing and iterative algorithms. The course covers how to work with “big data” stored in a distributed file system, and execute Spark applications on a Hadoop cluster. After taking this course, participants will be prepared to face real-world challenges and build applications to execute faster decisions, better decisions, and interactive analysis, applied to a wide variety of use cases, architectures, and industries.

This course is designed for developers and engineers who have programming experience, but prior knowledge of Spark and Hadoop is not required. Apache Spark examples and hands-on exercises are presented in Scala and Python. The ability to program in one of those languages is required. Basic familiarity with the Linux command line is assumed. Basic knowledge of SQL is helpful.

4 Days/Lecture & Lab

This course is designed for developers and engineers who have programming experience, but prior knowledge of Hadoop and/or Spark is not required.

  • Introduction
  • Introduction to Apache Hadoop and the Hadoop Ecosystem
  • Apache Hadoop File Storage
  • Distributed Processing on an Apache Hadoop Cluster
  • Apache Spark Basics
  • Working with DataFrames and Schemas
  • Analyzing Data with DataFrame Queries
RDD Overview
  • Transforming Data with RDDs
  • Aggregating Data with Pair RDDs
  • Querying Tables and Views with SQL
  • Working with Datasets in Scala
  • Writing, Configuring, and Running Spark Applications
  • Spark Distributed Processing
  • Distributed Data Persistence
  • Common Patterns in Spark Data Processing
  • Introduction to Structured Streaming
  • Structured Streaming with Apache Kafka
  • Aggregating and Joining Streaming DataFrames
  • Conclusion





Copyright © 2020 ProTech. All Rights Reserved.

Sign In Create Account

Navigation

Social Media