Course Outline

  • Section 1: Introduction to Big Data & NoSQL
    • Big Data ecosystem
    • NoSQL overview
    • CAP theorem
    • When is NoSQL appropriate
    • Columnar storage
    • HBase and NoSQL
  • Section 2 : HBase Intro
    • Concepts and Design
    • Architecture (HMaster and Region Server)
    • Data integrity
    • HBase ecosystem
    • Lab : Exploring HBase
  • Section 3 : HBase Data model
    • Namespaces, Tables and Regions
    • Rows, columns, column families, versions
    • HBase Shell and Admin commands
    • Lab : HBase Shell
  • Section 3 : Accessing HBase using Java API
    • Introduction to Java API
    • Read / Write path
    • Time Series data
    • Scans
    • Map Reduce
    • Filters
    • Counters
    • Co-processors
    • Labs (multiple) : Using HBase Java API to implement  time series , Map Reduce, Filters and counters.
  • Section 4 : HBase schema Design : Group session
    • students are presented with real world use cases
    • students work in groups to come up with design solutions
    • discuss / critique and learn from multiple designs
    • Labs : implement a scenario in HBase
  • Section 5 : HBase Internals
    • Understanding HBase under the hood
    • Memfile / HFile / WAL
    • HDFS storage
    • Compactions
    • Splits
    • Bloom Filters
    • Caches
    • Diagnostics
  • Section 6 : HBase installation and configuration
    • hardware selection
    • install methods
    • common configurations
    • Lab : installing HBase
  • Section 7 : HBase eco-system
    • developing applications using HBase
    • interacting with other Hadoop stack (MapReduce, Pig, Hive)
    • frameworks around HBase
    • advanced concepts (co-processors)
    • Labs : writing HBase applications
  • Section 8 : Monitoring And Best Practices
    • monitoring tools and practices
    • optimizing HBase
    • HBase in the cloud
    • real world use cases of HBase
    • Labs : checking HBase vitals

Requirements

  • comfortable with Java programming language
  • comfortable in Java programming language (navigate Linux command line, edit files with vi / nano)
  • A Java IDE like Eclipse or IntelliJ

Lab environment:

A working HBase cluster will be provided for students. Students would need an SSH client and a browser to access the cluster.

Zero Install : There is no need to install HBase software on students’ machines!

 21 Hours

Number of participants



Price per participant

Testimonials (5)

Related Courses

NoSQL Database with Microsoft Azure Cosmos DB

14 Hours

Hortonworks Data Platform (HDP) for Administrators

21 Hours

Apache Ambari: Efficiently Manage Hadoop Clusters

21 Hours

Impala for Business Intelligence

21 Hours

Data Analysis with Hive/HiveQL

7 Hours

Big Data Storage Solution - NoSQL

14 Hours

Big Data & Database Systems Fundamentals

14 Hours

MemSQL

28 Hours

A Practical Introduction to NoSQL Databases

28 Hours

OrientDB for Developers

14 Hours

Scylla Database

21 Hours

Administrator Training for Apache Hadoop

35 Hours

Big Data Analytics in Health

21 Hours

Datameer for Data Analysts

14 Hours

Related Categories

1