Big Data and Hadoop
Training
RTSYS Inc
(925) 322 3131 email: eastbaytrng@gmail.com
Course
Content:
1. > Understanding Big Data and Hadoop
Learning Objectives - In this module, you
will understand Big Data, the limitations of the existing solutions for Big
Data problem, how Hadoop solves the Big Data problem, the common Hadoop
ecosystem components, Hadoop Architecture, HDFS, Anatomy of File Write and
Read, Rack Awareness.
Topics - Big Data, Limitations and Solutions of existing Data Analytics Architecture, Hadoop, Hadoop Features, Hadoop Ecosystem, Hadoop 2.x core components, Hadoop Storage: HDFS, Hadoop Processing: MapReduce Framework, Anatomy of File Write and Read, Rack Awareness.
2. > Hadoop Architecture and HDFS
Learning Objectives -
In this module, you will learn the Hadoop Cluster Architecture, Important
Configuration files in a Hadoop Cluster, Data Loading Techniques.
Topics -
Hadoop 2.x Cluster Architecture - Federation and High Availability, A Typical
Production Hadoop Cluster, Hadoop Cluster Modes, Common Hadoop Shell Commands,
Hadoop 2.x Configuration Files, Password-Less SSH, MapReduce Job Execution,
Data Loading Techniques: Hadoop Copy Commands, FLUME, SQOOP.
3. > Hadoop MapReduce Framework - I
Learning Objectives
- In this module, you will understand Hadoop MapReduce framework
and the working of MapReduce on data stored in HDFS. You will learn about YARN
concepts in MapReduce.
Topics - MapReduce
Use Cases, Traditional way Vs MapReduce way, Why MapReduce, Hadoop 2.x
MapReduce Architecture, Hadoop 2.x MapReduce Components, YARN MR Application
Execution Flow, YARN Workflow, Anatomy of MapReduce Program, Demo on MapReduce.
4. > Hadoop MapReduce Framework - II
Learning Objectives - In
this module, you will understand concepts like Input Splits in MapReduce,
Combiner & Partitioner and Demos on MapReduce using different data
sets.
Topics - Input
Splits, Relation between Input Splits and HDFS Blocks, MapReduce Job Submission
Flow, Demo of Input Splits, MapReduce: Combiner & Partitioner, Demo on
de-identifying Health Care Data set, Demo on Weather Data set.
5. > Advance MapReduce
Learning Objectives
- In this module, you will learn Advance MapReduce concepts such
as Counters, Distributed Cache, MRunit, Reduce Join, Custom Input Format,
Sequence Input Format and how to deal with complex MapReduce programs.
Topics - Counters,
Distributed Cache, MRunit, Reduce Join, Custom Input Format, Sequence Input Format.
6. > Pig
Learning Objectives
- In this module, you will learn Pig, types of use case we can use
Pig, tight coupling between Pig and MapReduce, and Pig Latin scripting.
Topics - About
Pig, MapReduce Vs Pig, Pig Use Cases, Programming Structure in Pig, Pig Running
Modes, Pig components, Pig Execution, Pig Latin Program, Data Models in Pig,
Pig Data Types.
Pig Latin : Relational
Operators, File Loaders, Group Operator, COGROUP Operator, Joins and COGROUP,
Union, Diagnostic Operators, Pig UDF, Pig Demo on Healthcare Data set.
7. > Hive
Learning Objectives - This
module will help you in understanding Hive concepts, Loading and Querying Data
in Hive and Hive UDF.
Topics - Hive
Background, Hive Use Case, About Hive, Hive Vs Pig, Hive Architecture and
Components, Metastore in Hive, Limitations of Hive, Comparison with Traditional
Database, Hive Data Types and Data Models, Partitions and Buckets, Hive
Tables(Managed Tables and External Tables), Importing Data, Querying Data,
Managing Outputs, Hive Script, Hive UDF, Hive Demo on Healthcare Data set.
8. > Advance Hive and HBase
Learning Objectives
- In this module, you will understand Advance Hive concepts such
as UDF, dynamic Partitioning. You will also acquire in-depth knowledge of
HBase, Hbase Architecture and its components.
Topics - Hive
QL: Joining Tables, Dynamic Partitioning, Custom Map/Reduce Scripts, Hive :
Thrift Server, User Defined Functions.
HBase: Introduction to
NoSQL Databases and HBase, HBase v/s RDBMS, HBase Components, HBase Architecture,
HBase Cluster Deployment.
9. > Advance HBase
Learning Objectives
- This module will cover Advance HBase concepts. We will see demos
on Bulk Loading , Filters. You will also learn what Zookeeper is all about, how
it helps in monitoring a cluster, why HBase uses Zookeeper.
Topics - HBase
Data Model, HBase Shell, HBase Client API, Data Loading Techniques, ZooKeeper
Data Model, Zookeeper Service, Zookeeper, Demos on Bulk Loading, Getting and
Inserting Data, Filters in HBase.
10. > Oozie and Hadoop Project
Learning Objectives
- In this module, you will understand working of multiple Hadoop
ecosystem components together in a Hadoop implementation to solve Big Data
problems. We will discuss multiple data sets and specifications of the project.
This module will also cover Flume & Sqoop demo and Apache Oozie Workflow
Scheduler for Hadoop Jobs.
Topics - Flume
and Sqoop Demo, Oozie, Oozie Components, Oozie Workflow, Scheduling with Oozie,
Demo on Oozie Workflow, Oozie Co-ordinator, Oozie Commands, Oozie Web Console,
Hadoop Project Demo.
Mini Project
At
the end of the course, you will be working on a project where you be expected
to perform Big Data Analytics using Map Reduce, Pig, Hive & HBase. You will
get practical exposure about Data Loading techniques in Hadoop using Flume and
SQOOP. You will understand how Oozie is used to schedule and manage Hadoop
Jobs. You will also understand how the Hadoop Project environment is setup and
how the Test environment is setup.
RTSYS Inc
(925) 322 3131 email: eastbaytrng@gmail.com
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