Best Hadoop Training in Bangalore

Home / Hadoop Training Institute with Placement Assistance

Call us on TOLL FREE NUMBER : 080 3799 5776 for Real-time Practical Oriented Training in Bangalore with Guaranteed Placements | No.1 Training center in Bangalore for AWS, DevOps and Python for freshers with 100% JOB Support, Java Android, IOS training provided by Industrial Experts from Bangalore. Book your Free Demo Now And get Placed in 60 Days

Hadoop Training in Bangalore

Hadoop-Training-in-Bangalore

TecMax is one of the leading Hadoop Training Institute in Bangalore. Certified experts at TecMax are real-time consultants at multinational companies and have more than 5+ years of experience in Hadoop Training. Our Trainers have conducted more than 200 classes and have extensive experience in teaching Hadoop in most simple manner for the benefit of sudents.

We have advanced lab facilities for students to practice Hadoop course and get hands-on experience in every topics that are covered under Hadoop Training. In the presence of Hadoop Trainer, students can execute all the techniques that has been explained by the instructor. Course Material for Hadoop is specifically designed to cover all the advanced topics and each of the module will have both theory and practical classes. Hadoop Batch Timings at TecMax are flexible and students can choose to join the batch as per their requirements. We have a batch starting every week for Hadoop for regular students. Weekend batches and fast track batches for Hadoop training can be arranged based on the requirement.

All our students will get placement assistance in Hadoop after successfully completing the Hadoop training from our institute. We are committed to provide high-quality training and provide assistance to get you the right job.

Course Content

MODULE 1- INTRODUCTION TO BIGDATA

What is BigData
how did data become so big
why BigData deserves your attention-
use cases of big data
A different option of analyzing big data.
How can such a huge data are analyzed.

MODULE 2- INTRODUCTION TO HADOOP

What is Hadoop,
History of Hadoop
How Hadoop name was given
Problems with Traditional Large-Scale Systems and Need for Hadoop
Where Hadoop is being used
Understanding distributed systems and Hadoop
RDBMS and Hadoop

MODULE 3- STARTING HADOOP

Setup single node Hadoop cluster
Configuring Hadoop
Understanding Hadoop Architecture
Understanding Hadoop configuration files
Hadoop Components- HDFS, Map Reduce
Overview of Hadoop Processes
Overview of Hadoop Distributed File System
Name nodes
Data nodes
The Command-Line Interface
The building blocks of Hadoop
Setting up SSH for a Hadoop cluster
Running Hadoop
Web-based cluster UI-NameNode UI, MapReduce UI
Hands-On Exercise: Using HDFS commands

MODULE 4- UNDERSTANDING MapReduce

How MapReduce Works
Data flow in MapReduce
Map operation
Reduce operation
MapReduce Program In JAVA using Eclipse
Counting words with Hadoop—Running your first program
Writing MapReduce Drivers, Mappers and Reducers in Java
Real-world “MapReduce” problems
Hands-On Exercise: Writing a MapReduce Program and Running a MapReduce Job
Java WordCount Code Walkthrough

MODULE 5- HADOOP ECOSYSTEM

Hive
Sqoop
Pig
HBase
Flume

MODULE 6- EXTENDED SUBJECTS ON HIVE

Installing Hive
Introduction to Apache Hive
Getting data into Hive
Hive’s architecture
Hive-HQL
Query execution
Programming Practices and projects in Hive
Troubleshooting
Hands-On Exercise: Hive Programming

MODULE 7- EXTENDED SUBJECTS ON SQOOP

Installing Sqoop
Configure Sqoop
Import RDBMS data to Hive using Sqoop
Export from to Hive to RDBMS using Sqoop
Hands-On Exercise: Import data from RDBMS to HDFS and Hive
Hands-On Exercise: Export data from HDFS/Hive to RDBM

MODULE 8- EXTENDED SUBJECTS ON PIG

Introduction to Apache Pig
Install Pig
Pig architecture
Pig Latin – Reading and writing data using Pig
Hands-On Exercise: Programming with pig, Load data, execute data processing statements.

MODULE 9- EXTENDED SUBJECTS ON

What is HBase?
Install HBase
HBase Architecture
HBase API
Managing large data sets with HBase

MODULE 10- SETUP MULTI-NODE HADOOP CLUSTER

Setup multi-node Hadoop cluster using CentOS dump.

MODULE 11- FLUME

MODULE 12- ADVANCED MAP/REDUCE-

Map Reduce API
Combiner, partitioner
Custom Data Types
Input Formats
Output Formats
Common MapReduce Algorithms
Sorting
Searching
Indexing

MODULE 13- ADVANCED HADOOP CONCEPT

Authentication in Hadoop
Administration best practices
Hardware selection for master nodes (NameNode, Job Tracker, HBase Master)
Hardware selection for slave nodes (Data Nodes, Task Trackers, and Region Serv­ers)
Cluster growth plan based on storage

MODULE 14- SUMMARY

Case studies
Sample Applications
References

MODULE 15- TEST

 

 

We Also Provide Hadoop Training in Marathahalli

Have any Query ?






    Hadoop Reviews

    Tecmax
    Average rating:  
     5 reviews
    by Rahib h on Tecmax

    Tecmax training for hadoop is so good. The trainer will guide you as per your requirement and will explain you each and every concepts very clearly. If you are planning for IT then go for it Thanks......

    by Arish on Tecmax

    This institute is a wonderful place to master the knowledge of IT Training. The advanced real-time training which is delivered here from the hands of expert training professional has helped me a lot in securing a wonderful opportunity as a IT expert in a well reputed company.....................

    by Navin on Tecmax

    Very auspicious place to learn new technologies..good placement opportunities..good teaching..best place for Freshers..thanks to Management))

    by Akhilendra on Tecmax

    The best coching center in Bangalore, experienced trainers training is to good for hadoop

    by Akanksha on Tecmax

    I have Joined This institute for Basis course based on my friends reference. Trainer excellent. Even though i am a fresher the faculty is making me understood all the concepts from depth. Very good institute. The management is very friendly and always motivate us to practice more in the lab. I worked on Real time sample project from My Faculty. thanks to Managements,,,,,,,,,,,,,,,,,:)