Course Outline

Big Data Overview:

  • What is Big Data
  • Why Big Data is gaining popularity
  • Big Data Case Studies
  • Big Data Characteristics
  • Solutions to work on Big Data.

Hadoop & Its components:

  • What is Hadoop and what are its components.
  • Hadoop Architecture and its characteristics of Data it can handle /Process.
  • Brief on Hadoop History, companies using it and why they have started using it.
  • Hadoop Frame work & its components- explained in detail.
  • What is HDFS and Reads -Writes to Hadoop Distributed File System.
  • How to Setup Hadoop Cluster in different modes- Stand- alone/Pseudo/Multi Node cluster.

(This includes setting up a Hadoop cluster in VirtualBox/KVM/VMware, Network configurations that need to be carefully looked into, running Hadoop Daemons and testing the cluster).

  • What is Map Reduce frame work and how it works.
  • Running Map Reduce jobs on Hadoop cluster.
  • Understanding Replication , Mirroring and Rack awareness in context of Hadoop clusters.

Hadoop Cluster Planning:

  • How to plan your hadoop cluster.
  • Understanding hardware-software to plan your hadoop cluster.
  • Understanding workloads and planning cluster to avoid failures and perform optimum.

What is MapR and why MapR :

  • Overview of MapR and its architecture.
  • Understanding & working of MapR Control System, MapR Volumes , snapshots & Mirrors.
  • Planning a cluster in context of MapR.
  • Comparison of MapR with other distributions and Apache Hadoop.
  • MapR installation and cluster deployment.

Cluster Setup & Administration:

  • Managing services, nodes ,snapshots, mirror volumes and remote clusters.
  • Understanding and managing Nodes.
  • Understanding of Hadoop components, Installing Hadoop components alongside MapR Services.
  • Accessing Data on cluster including via NFS Managing services & nodes.
  • Managing data by using volumes, managing users and groups, managing & assigning roles to nodes, commissioning decommissioning of nodes, cluster administration and performance monitoring, configuring/ analyzing and monitoring metrics to monitor performance, configuring and administering MapR security.
  • Understanding and working with M7- Native storage for MapR tables.
  • Cluster configuration and tuning for optimum performance.

Cluster upgrade and integration with other setups:

  • Upgrading software version of MapR and types of upgrade.
  • Configuring Mapr cluster to access HDFS cluster.
  • Setting up MapR cluster on Amazon Elastic Mapreduce.

All the above topics include Demonstrations and practice sessions for learners to have hands on experience of the technology.

Requirements

  • Basic knowledge of Linux FS
  • Basic Java
  • Knowledge of Apache Hadoop (recommended)
 28 Hours

Number of participants



Price per participant

Testimonials (1)

Related Courses

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

Administrator Training for Apache Hadoop

35 Hours

Big Data Analytics in Health

21 Hours

Datameer for Data Analysts

14 Hours

Hadoop Administration

21 Hours

Hadoop For Administrators

21 Hours

Hadoop for Developers (4 days)

28 Hours

Advanced Hadoop for Developers

21 Hours

Hadoop for Developers and Administrators

21 Hours

Hadoop for Project Managers

14 Hours

Hadoop with Python

28 Hours

Hadoop and Spark for Administrators

35 Hours

Related Categories

1