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"Hadoop training in sgraph infotech Maratahalli" is no longer available

1 Reviews

Marathahalli, Bangalore

Course ID: 30095

Marathahalli, Bangalore

1 Reviews

About the Course

SGraph Infotech is one of the pioneers in software training. We delivered the training for many individuals, groups, and corporations. We prioritize to give our best quality of training and further assistance. You have complete freedom to customize course topics and time. Online training is a good experience and a generation ahead.. Register yourself for unbelievable prices.


1. Understanding Big Data and Hadoop
Learning Objectives - In this, 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, how MapReduce Framework works.

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, Hadoop Different Distributions.

2. Hadoop Architecture and HDFS
Learning Objectives - In this, you will learn the Hadoop Cluster Architecture, Important Configuration files in a Hadoop Cluster, Data Loading Techniques, how to setup single node and multi node hadoop cluster.

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, Single node cluster and Multi node cluster set up Hadoop Administration.

3. Hadoop MapReduce Framework
Learning Objectives - In this, you will understand Hadoop MapReduce framework and the working of MapReduce on data stored in HDFS. You will understand concepts like Input Splits in MapReduce, Combiner & Partitioner and Demos on MapReduce using different data sets.

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. Input Splits, Relation between Input Splits and HDFS Blocks, MapReduce: Combiner & Partitioner, Demo on de-identifying Health Care Data set, Demo on Weather Data set.

4. Advanced MapReduce
Learning Objectives - In this , you will learn Advanced MapReduce concepts such as Counters, Distributed Cache, MRunit, Reduce Join, Custom Input Format, Sequence Input Format and XML parsing.

Topics - Counters, Distributed Cache, MRunit, Reduce Join, Custom Input Format, Sequence Input Format, Xml file Parsing using MapReduce.

5. Pig
Learning Objectives - In this , you will learn Pig, types of use case we can use Pig, tight coupling between Pig and MapReduce, and Pig Latin scripting, PIG running modes, PIG UDF, Pig Streaming, Testing PIG Scripts. Demo on healthcare dataset.

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, Shell and Utility Commands, Pig Latin : Relational Operators, File Loaders, Group Operator, COGROUP Operator, Joins and COGROUP, Union, Diagnostic Operators, Specialized joins in Pig, Built In Functions ( Eval Function, Load and Store Functions, Math function, String Function, Date Function, Pig UDF, Piggybank, Parameter Substitution ( PIG macros and Pig Parameter substitution ), Pig Streaming, Testing Pig scripts with Punit, Aviation use case in PIG, Pig Demo on Healthcare Data set.

6. Hive
Learning Objectives - This will help you in understanding Hive concepts, Hive Data types, loading and Querying Data in Hive, running hive scripts 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, Retail use case in Hive, Hive Demo on Healthcare Data set.

7. Advanced Hive and HBase
Learning Objectives - In this , you will understand Advanced Hive concepts such as UDF, Dynamic Partitioning, Hive indexes and views, optimizations in hive. You will also acquire in-depth knowledge of HBase, HBase Architecture, running modes and its components.

Topics - Hive QL: Joining Tables, Dynamic Partitioning, Custom Map/Reduce Scripts, Hive Indexes and views Hive query optimizers, Hive : Thrift Server, User Defined Functions, HBase: Introduction to NoSQL Databases and HBase, HBase v/s RDBMS, HBase Components, HBase Architecture, Run Modes & Configuration, HBase Cluster Deployment.

8. Advanced HBase
Learning Objectives - This will cover Advanced 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.

9. Processing Distributed Data with Apache Spark
Learning Objectives - In this you will learn Spark ecosystem and its components, how scala is used in Spark, SparkContext. You will learn how to work in RDD in Spark. Demo will be there on running application on Spark Cluster, Comparing performance of MapReduce and Spark.

Topics - What is Apache Spark, Spark Ecosystem, Spark Components, History of Spark and Spark Versions/Releases, Spark a Polyglot, What is Scala?, Why Scala?, SparkContext, RDD.

10. Oozie and Hadoop Project
Learning Objectives - In this 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 will also cover Flume & Sqoop demo, Apache Oozie Workflow Scheduler for Hadoop Jobs, and Hadoop Talend integration.

Topics - Flume and Sqoop Demo, Oozie, Oozie Components, Oozie Workflow, Scheduling with Oozie, Demo on Oozie Workflow, Oozie Co-coordinator, Oozie Commands, Oozie Web Console, Oozie for MapReduce, PIG, Hive, and Sqoop, Combine flow of MR, PIG, Hive in Oozie, Hadoop Project Demo, Hadoop Integration with Talend.

Core Java Topics

Learning Objectives - In this you will understand core Java topics to understand Map reduce

Topics - Core Java Basic Concepts, Different Objects, Classes, Operators, Data Types and Arrays, Constructors, Constructor overloading Package, Inheritance, Method Overloading, Method Overriding Abstract Class, Interface and Concept of Input and Output Method.'Enums', Different LoopConstructs, ArrayList, HashMap, HashTable, Exception Handling, and Try and Catch Block.


Learning Objectives - In this you will understand SQL topics to understand Hive.

Topics- Introduction to SQL,DDL Statements(Create,Alter,Drop etc.), DML Statements(Insert update Delete), Aggregate functions, GROUP BY, HAVING clauses, Simple and complex joins, Sub queries, Where and order by clauses,sequences and views.


Learning Objectives - In this you will understand Unix commands which are required to work on Hadoop.

Topics- Unix Architecture, Login, Change password, Listing directories, Listing files, Creating files, Editing files, Displaying contents of file, Copying files, Renaming files, Deleting files, Unix directories, Listing directories, Creating directories,Removing directories, Changing directories, Unix file permissions, Using chmod to change permissions, File access modes, Background processes

S graph Infotech.

Date and Time

Not decided yet.

About the Trainer

4.96 Avg Rating

82 Reviews

89 Students

4 Courses

Trainer is working in one of the MNC. Having 10+yrs of experience in various domains. He will provide you real time scenarios along with project.

Student Feedback


Average Rating





Excellent training for Bigdata Hadoop and I learnt Hadoop with Spark and Scala.Training includes live projects explanation. Thanks for your patience teaching Bhaskar and I am working for Genpact now.


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