Hadoop Training

Hadoop is a free, Java based programming software framework for storing and processing Big Data that supports the processing of large data sets in a distributed computing environment. Hadoop is part of the Apache project sponsored by the Apache Software Foundation. Hadoop is an open-source tool build on java platform and focuses on improved performance in terms of data processing on clusters of commodity hardware. Hadoop Training comprises of multiple concepts and modules like HDFS, Map-Reduce, HBASE, PIG, HIVE, SQOOP and ZOOKEEPER to perform the easy and fast processing of huge data. Hadoop conceptually different from Relational databases and can process the high volume, high velocity and high variety of data to generate value.

Hadoop training can be taken up by Software Engineers, who are into ETL Programming and exploring for great job opportunities in Big Data hadoop. Managers, who are looking for the latest technologies to be implemented in their organization, to meet the current & upcoming challenges of data management. Any Graduate, Post-Graduate, who is aspiring for a great career towards the cutting edge technologies in the IT field. Prerequisites for learning hadoop include hands-on experience in Core Java and good analytical skills to grasp and apply the concepts in big data hadoop. We provide a complimentary Course "Java Essentials for Hadoop" to all the participants who enrol for the hadoop training.


Tutortek training institute in bangalore,  provides best real time and job oriented hadoop training. We have designed the big data hadoop course content in such a way that it covers basic to advanced level topics on big data hadoop and we also provide core java course which may help students in hadoop course learning . We have a well experienced trainer who is a working professionals with hands on real time hadoop projects experience. As soon as you complete the hadoop training, we assure you in providing 100% placement assistance. We train you in such a way that you feel no difficulty in cracking your interview. For further information about hadoop training in bangalore, please contact Tutortek


Upon completion of big data hadoop training, a hadoop course completion certificate will be awarded to you. However, in order to be certified by Tutortek, you will be evaluated based on your performance on the live project you will be working on during the big data hadoop training. This live project will equip you with hands-on experience and also in uplifting your personal strength in hadoop. Our Hadoop course trainer is well experienced and imparting real time hadoop training knowledge. We provide Hadoop training at a very reasonable fees structure.

Come join us, let’s create your growth strategy together!!


Rs. 12,000


40 Hours.


80 Hours

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• High Availability
• Scaling
• Advantages and Challenges
• What is Big data
• Big Data opportunities
• Big Data Challenges
• Characteristics of Big data
• Hadoop Distributed File System
• Comparing Hadoop & SQL.
• Industries using Hadoop.
• Data Locality.
• Hadoop Architecture.
• Map Reduce & HDFS.
• Using the Hadoop single node image (Clone).
• HDFS Design & Concepts
• Blocks, Name nodes and Data nodes
• HDFS High-Availability and HDFS Federation.
• Hadoop DFS The Command-Line Interface
• Basic File System Operations
• Anatomy of File Read
• Anatomy of File Write
• Block Placement Policy and Modes
• More detailed explanation about Configuration files.
• Metadata, FS image, Edit log, Secondary Name Node and Safe Mode.
• How to add New Data Node dynamically.
• How to decommission a Data Node dynamically (Without stopping cluster).
• FSCK Utility. (Block report).
• How to override default configuration at system level and Programming level.
• HDFS Federation.
• ZOOKEEPER Leader Election Algorithm.
• Exercise and small use case on HDFS.
• Functional Programming Basics.
• Map and Reduce Basics
• How Map Reduce Works
• Anatomy of a Map Reduce Job Run
• Legacy Architecture ->Job Submission, Job Initialization, Task Assignment, Task Execution, Progress and Status Updates
• Job Completion, Failures
• Shuffling and Sorting
• Splits, Record reader, Partition, Types of partitions & Combiner
• Optimization Techniques -> Speculative Execution, JVM Reuse and No. Slots.
• Types of Schedulers and Counters.
• Comparisons between Old and New API at code and Architecture Level.
• Getting the data from RDBMS into HDFS using Custom data types.
• Distributed Cache and Hadoop Streaming (Python, Ruby and R).
• Sequential Files and Map Files.
• Enabling Compression Codec’s.
• Map side Join with distributed Cache.
• Types of I/O Formats: Multiple outputs, NLINE inputformat.
• Handling small files using CombineFileInputFormat.
• Hands on “Word Count” in Map/Reduce in standalone and Pseudo distribution Mode.
• Sorting files using Hadoop Configuration API discussion
• Emulating “grep” for searching inside a file in Hadoop
• DBInput Format
• Job Dependency API discussion
• Input Format API discussion
• Input Split API discussion
• Custom Data type creation in Hadoop.
• ACID in RDBMS and BASE in NoSQL.
• CAP Theorem and Types of Consistency.
• Types of NoSQL Databases in detail.
• Columnar Databases in Detail (HBASE and CASSANDRA).
• TTL, Bloom Filters and Compensation.
• HBase Installation
• HBase concepts
• HBase Data Model and Comparison between RDBMS and NOSQL.
• Master & Region Servers.
• HBase Operations (DDL and DML) through Shell and Programming and HBase Architecture.
• Catalog Tables.
• Block Cache and sharding.
• DATA Modeling (Sequential, Salted, Promoted and Random Keys).
• JAVA API’s and Rest Interface.
• Client Side Buffering and Process 1 million records using Client side Buffering.
• HBASE Counters.
• Enabling Replication and HBASE RAW Scans.
• HBASE Filters.
• Bulk Loading and Coprocessors (Endpoints and Observers with programs).
• Real world use case consisting of HDFS,MR and HBASE.
• Installation
• Introduction and Architecture.
• Hive Services, Hive Shell, Hive Server and Hive Web Interface (HWI)
• Meta store
• Hive QL
• Working with Tables.
• Primitive data types and complex data types.
• Working with Partitions.
• User Defined Functions
• Hive Bucketed Tables and Sampling.
• External partitioned tables, Map the data to the partition in the table, Writing the output of one query to another table, Multiple inserts
• Dynamic Partition
• Differences between ORDER BY, DISTRIBUTE BY and SORT BY.
• Bucketing and Sorted Bucketing with Dynamic partition.
• RC File.
• Compression on hive tables and Migrating Hive tables.
• Dynamic substation of Hive and Different ways of running Hive
• How to enable Update in HIVE.
• Log Analysis on Hive.
• Access HBASE tables using Hive.
• Hands on Exercises
• Installation
• Execution Types
• Grunt Shell
• Pig Latin
• Data Processing
• Schema on read
• Primitive data types and complex data types.
• Tuple schema, BAG Schema and MAP Schema.
• Loading and Storing
• Filtering
• Grouping & Joining
• Debugging commands (Illustrate and Explain).
• Validations in PIG.
• Type casting in PIG.
• Working with Functions
• User Defined Functions
• Types of JOINS in pig and Replicated Join in detail.
• SPLITS and Multiquery execution.
• Error Handling, FLATTEN and ORDER BY.
• Parameter Substitution.
• Nested For Each.
• User Defined Functions, Dynamic Invokers and Macros.
• How to access HBASE using PIG.
• How to Load and Write JSON DATA using PIG.
• Piggy Bank.
• Hands on Exercises
• Installation
• Import Data.(Full table, Only Subset, Target Directory, protecting Password, file format other than CSV,Compressing,Control Parallelism, All tables Import)
• Incremental Import(Import only New data, Last Imported data, storing Password in Metastore, Sharing Metastore between Sqoop Clients)
• Free Form Query Import
• Export data to RDBMS,HIVE and HBASE
• Hands on Exercises.
• Installation.
• Introduction to HCATALOG.
• About Hcatalog with PIG,HIVE and MR.
• Hands on Exercises.
• Installation
• Introduction to Flume
• Flume Agents: Sources, Channels and Sinks
• Log User information using Java program in to HDFS using LOG4J and Avro Source
• Log User information using Java program in to HDFS using Tail Source
• Log User information using Java program in to HBASE using LOG4J and Avro Source
• Log User information using Java program in to HBASE using Tail Source
• Flume Commands
• Use case of Flume: Flume the data from twitter in to HDFS and HBASE. Do some analysis using HIVE & PIG
• HUE.(Hortonworks and Cloudera).
• Workflow (Action, Start, Action, End, Kill, Join and Fork), Schedulers, Coordinators and Bundles.
• Workflow to show how to schedule Sqoop Job, Hive, MR and PIG.
• Real world Use case which will find the top websites used by users of certain ages and will be scheduled to run for every one hour.
• Zoo Keeper
• HBASE Integration with HIVE and PIG.
• Phoenix
• Proof of concept (POC).
• Overview
• Linking with Spark
• Initializing Spark
• Using the Shell
• Resilient Distributed Datasets (RDDs)
• Parallelized Collections
• External Datasets
• RDD Operations
• Basics, Passing Functions to Spark
• Working with Key-Value Pairs
• Transformations
• Actions
• RDD Persistence
• Which Storage Level to Choose?
• Removing Data
• Shared Variables
• Broadcast Variables
• Accumulators
• Deploying to a Cluster
• Unit Testing
• Migrating from pre-1.0 Versions of Spark
• Where to Go from Here


Basic Programming
Course Duration (Hrs.)
Project / Assignment (Hrs)
Trainer Experience
5+ years
Batch Size


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