Developing with Spark for Big Data | Enterprise-Grade Spark Programming for the Hadoop & Big Data Ecosystem

Next Level Spark Development for Experienced Developers

TTSK7505

Intermediate

5 Days

Course Overview

Apache Spark, a significant component in the Hadoop Ecosystem, is a cluster computing engine used in Big Data. Building on top of the Hadoop YARN and HDFS ecosystem, it offers order-of-magnitude faster processing for many in-memory computing tasks compared to Map/Reduce. It can be programmed in Java, Scala, Python, and R - the favorite languages of Data Scientists - along with SQL-based front ends.  With advanced libraries like Mahout and MLib for Machine Learning, GraphX or Neo4J for rich data graph processing as well as access to other NOSQL data stores, Rule engines and other Enterprise components, Spark is a lynchpin in modern Big Data and Data Science computing.

Geared for experienced developers, Developing with Spark for Big Data is an intermediate-level and beyond course that provides students with a comprehensive, hands-on exploration of enterprise-grade Spark programming, interacting with the significant components mentioned above to craft complete data science solutions.  Students will leave this course armed with the skills they require to work with Spark in a practical, real world environment to an advanced level.

NOTE: Students newer to data science or with lighter development background should consider the TTSK7503 Spark Developer | Introduction to Spark for Big Data, Hadoop & Machine Learning, our three-day subset of this course, as an alternative.

This course is offered in support of the Java programming language, with alternatives available in R Programming, Python and Scala. Our team will work with you to coordinate the languages, tools and environment that will work best for your organization and needs.

Course Objectives

This course provides indoctrination in the practical use of the umbrella of technologies that are on the leading edge of data science development focused on Spark and related tools.  Working in a hands-on learning environment, students will learn:

  • The essentials of Spark architecture and applications
  • How to execute Spark Programs
  • How to create and manipulate both RDDs (Resilient Distributed Datasets) and UDFs (Unified Data Frames)
  • How to persist and restore data frames
  • Essential NOSQL access
  • How to integrate machine learning into Spark applications
  • How to use Spark Streaming and Kafka to create streaming applications

Need different skills or topics?  If your team requires different topics or tools, additional skills or custom approach, this course may be easily adjusted to accommodate.  We offer additional related Spark, Hadoop, data science, programming and development courses which may be blended with this course for a track that best suits your development objectives. Our team will collaborate with you to understand your needs and will target the course to focus on your specific learning objectives and goals.

Course Prerequisites

This in an intermediate-level course is geared for experienced developers seeking to be proficient in Spark tools & technologies. Attendees should be experienced developers who are comfortable with Java, Scala or Python programming.  Students should also be able to navigate Linux command line, and who have basic knowledge of Linux editors (such as VI / nano) for editing code.

Take Before: Students should have attended the course(s) below, or should have basic skills in these areas:

  • TT2104          Java Programming Fundamentals (for Java supported course flavor)
  • TTPS4800      Introduction to Python Programming (for Python supported course flavor)
  • TTSQLB3        Introduction to SQL (Basic familiarity is needed for all editions)

Please see the Related Courses tab for specific Pre-Requisite courses, Related Courses that offer similar skills or topics, and next-step Learning Path recommendations.

 

Course Agenda

Please note that this list of topics is based on our standard course offering, evolved from typical industry uses and trends. We’ll work with you to tune this course and level of coverage to target the skills you need most.

Spark Overview

  • Hadoop Ecosystem
  • Hadoop YARN vs. Mesos
  • Spark vs. Map/Reduce
  • Spark with Map/Reduce: Lambda Architecture
  • Spark in the Enterprise Data Science Architecture

Spark Component Overview

  • Spark Shell
  • RDDs: Resilient Distributed Datasets
  • Data Frames
  • Spark 2 Unified DataFrames
  • Spark Sessions
  • Functional Programming
  • Spark SQL
  • MLib
  • Structured Streaming
  • Spark R
  • Spark and Python

RDDs: Resilient Distributed Datasets

  • Coding with RDDs
  • Transformations
  • Actions
  • Lazy Evaluation and Optimization
  • RDDs in Map/Reduce

DataFrames

  • RDDs vs. DataFrames
  • Unified Dataframes (UDF) in Spark 2.0
  • Partitioning

Spark Applications

  • Spark Sessions
  • Running Applications
  • Logging

DataFrame Persistence

  • RDD Persistence
  • DataFrame and Unified DataFrame Persistence

Distributed Persistence

Spark Streaming

  • Streaming Overview
  • Streams
  • Structured Streaming
  • DStreams and Apache Kafka

Accessing NOSQL Data

  • Ingesting data
  • Parquet Files
  • Relational Databases
  • Graph Databases (Neo4J, GraphX)
  • Interacting with Hive
  • Accessing Cassandra Data
  • Document Databases (MongoDB, CouchDB)

Enterprise Integration

  • Map/Reduce and Lambda Integration
  • Camel Integration
  • Drools and Spark

Algorithms and Patterns

  • MLib and Mahout
  • Classification
  • Clustering
  • Decision Trees
  • Decompositions
  • Pipelines
  • Spark Packages

Spark SQL

  • Spark SQL
  • SQL and DataFrames
  • Spark SQL and Hive
  • Spark SQL and JDBC

GraphX

  • Graph APIs
  • GraphX
  • ETL in GraphX
  • Exploratory Analysis
  • Graph computation
  • Pregel API Overview
  • GraphX Algorithms
  • Neo4J as an alternative

Alternate Languages

  • Using Web Notebooks (Zeppelin, Jupyter)
  • R on Spark
  • Python on Spark
  • Scala on Spark

Clustering Spark for Developers

  • Parallelizing Spark Applications
  • Clustering concerns for Developers

Performance and Tuning

  • Monitoring Spark Performance
  • Tuning Memory
  • Tuning CPU
  • Tuning Data Locality
  • Troubleshooting

Course Materials

Student Materials: Each participant will receive a Student Guide with course notes, code samples, software tutorials, step-by-step written lab instructions, diagrams and related reference materials and resource links. Students will also receive the project files (or code, if applicable) and solutions required for the hands-on work.

Hands-On Setup Made Simple! Our dedicated tech team will work with you to ensure our ‘easy-access’ cloud-based course environment is accessible, fully-tested and verified as ready to go well in advance of the course start date, ensuring a smooth start to class and effective learning experience for all participants. Please inquire for details and options.

Raise the bar for advancing technology skills

Attend a Class!

Live scheduled classes are listed below or browse our full course catalog anytime

Special Offers

We regulary offer discounts for individuals, groups and corporate teams. Contact us

Custom Team Training

Check out custom training solutions planned around your unique needs and skills.

EveryCourse Extras

Exclusive materials, ongoing support and a free live course refresh with every class.

Attend a Course

Please see the current upcoming available open enrollment course dates posted below. Please feel free to Register Online below, or call 844-475-4559 toll free to connect with our Registrar for assistance. If you need additional date options, please contact us for scheduling.

Course Title Days Date Time Price
Developing with Spark for Big Data | Enterprise-Grade Spark Programming for the Hadoop & Big Data Ecosystem 5 Days Aug 23 to Aug 27 10:00 AM to 06:00 PM EST $2,895.00 Register
Developing with Spark for Big Data | Enterprise-Grade Spark Programming for the Hadoop & Big Data Ecosystem 5 Days Oct 18 to Oct 22 10:00 AM to 06:00 PM EST $2,895.00 Register
Developing with Spark for Big Data | Enterprise-Grade Spark Programming for the Hadoop & Big Data Ecosystem 5 Days Nov 30 to Dec 4 10:00 AM to 06:00 PM EST $2,895.00 Register

See Our Special Offers and Promotions
Trivera offers exclusive promotional offers here at our site that change regularly. Check back often and don’t miss these limited opportunities to learn for less.

See our latest offers and promotions

Learn. Explore. Advance!

Trivera EveryCourse Extras
Extend your training investment! Recorded sessions, free re-sits and after course support included with Every Course
Trivera MiniCamps
Gain the skills you need with less time in the classroom with our short course, live-online hands-on events
Trivera QuickSkills: Free Courses and Webinars
Training on us! Keep your skills current with free live events, courses & webinars
Trivera AfterCourse: Coaching and Support
Expert level after-training support to help organizations put new training skills into practice on the job

The voices of our customers speak volumes

Special Offers
Limited Offer for most courses.

SAVE 50%

Learn More