HOME > Development > Become a Big Data Hadoop Developer from scratch

Become a Big Data Hadoop Developer from scratch

  • Development
  • Apr 27, 2025
SynopsisBecome a Big Data Hadoop Developer from scratch, available at...
Become a Big Data Hadoop Developer from scratch  No.1

Become a Big Data Hadoop Developer from scratch, available at $19.99, has an average rating of 3.4, with 82 lectures, based on 33 reviews, and has 410 subscribers.

You will learn about learn introduction to hadoop Hadoop Distributed File System(HDFS) MapReduce(MR) Run MapReduce Application using JAVA Run Word Count example in JAVA Run Max.Temp. Hadoop MapReduce program in JAVA HDFS Commands for accessing Hadoop File System Running Queries in HBase Different operations in HBase using JAVA API HBase Architecture Apache HIVE Apache PIG This course is ideal for individuals who are Professionals who want to learn Hadoop or Data Analyst or Hadoop Beginners or Professionals who want to make MapReduce Application It is particularly useful for Professionals who want to learn Hadoop or Data Analyst or Hadoop Beginners or Professionals who want to make MapReduce Application.

Enroll now: Become a Big Data Hadoop Developer from scratch

Summary

Title: Become a Big Data Hadoop Developer from scratch

Price: $19.99

Average Rating: 3.4

Number of Lectures: 82

Number of Published Lectures: 82

Number of Curriculum Items: 82

Number of Published Curriculum Objects: 82

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • learn introduction to hadoop
  • Hadoop Distributed File System(HDFS)
  • MapReduce(MR)
  • Run MapReduce Application using JAVA
  • Run Word Count example in JAVA
  • Run Max.Temp. Hadoop MapReduce program in JAVA
  • HDFS Commands for accessing Hadoop File System
  • Running Queries in HBase
  • Different operations in HBase using JAVA API
  • HBase Architecture
  • Apache HIVE
  • Apache PIG
  • Who Should Attend

  • Professionals who want to learn Hadoop
  • Data Analyst
  • Hadoop Beginners
  • Professionals who want to make MapReduce Application
  • Target Audiences

  • Professionals who want to learn Hadoop
  • Data Analyst
  • Hadoop Beginners
  • Professionals who want to make MapReduce Application
  • Apache Hadoop is an open-source software framework for distributed storage and distributed processing of?large data?on computer clusters built from commodity hardware.

    In this course we’ll discuss about several important aspects of Hadoop like HDFS(Hadoop Distributed File System), MapReduce, Hive, HBase and Pig.

    First we’ll talk about Overview of Big data means what is Big Data, Facts of Big Data, Scenarios, Hadoop cluster architecture. Then we’ll move towards HDFS, Components of HDFS and its architecture, NameNode, Secondary NameNode and DataNode.

    Next module is about MapReduce. In this we’ll talk about Map Phase and?Reduce Phase, Architecture of MapReduce, Combiners and Reducers.?

    Next module is about PIG. In this we’ll see what is Apache Pig, its importance, Pig Latin language, and where to avoid Pig.

    Them we’ll talk about HBase, we’ll talk about its use cases, general commands in HBase, DDL in HBase, DML in HBase, How to create, delete and integrate table in HBase and lot more.

    So start learning Hadoop today.

    Course Curriculum

    Chapter 1: Module1

    Lecture 1: 1.1 Overview of BigData

    Lecture 2: 1.2 Facts about Big Data

    Lecture 3: 1.3 Big Data Scenarios

    Lecture 4: 1.4 Introduction to Hadoop

    Lecture 5: 1.7 Difference between RDBMS and Hadoop

    Lecture 6: 1.8 Cluster Modes in Hadoop

    Lecture 7: 1.9 Hadoop Ecosystem

    Lecture 8: 1.10 HDFS Daemons and Mapreduce daemons

    Lecture 9: 1.11 HADOOP CLUSTER ARCHITECTURE

    Chapter 2: Module 2

    Lecture 1: 2.1 HDFS

    Lecture 2: 2.2 HDFS FILES AND BLOCKS

    Lecture 3: 2.3 HDFS Components and Architecture

    Lecture 4: 2.4 NameNode Secondary NameNode and DataNode

    Lecture 5: 2.5 HDFS FILE READ AND WRITE OPERATIONS

    Lecture 6: HDFS Commands

    Chapter 3: Module 3

    Lecture 1: 3.1 Basics of MapReduce

    Lecture 2: 3.2 Map Phase and Reduce Phase

    Lecture 3: 3.3 JOB Submission Flow in MapReduce

    Lecture 4: 3.4 HDFS BLOCK AND INPUTSPLIT

    Lecture 5: 3.5 MAPREDUCE ARCHITECTURE

    Lecture 6: 3.6 COMBINER and REDUCERS

    Lecture 7: 3.7 MapReduce DataFlow

    Lecture 8: Wordcount Prgram in MapReduce

    Lecture 9: Maximum Temprature Program part-1

    Lecture 10: Maximum Temprature Program part-2

    Chapter 4: Module 4

    Lecture 1: 4.1 Map, Reduce and Driver

    Lecture 2: 4.2 Difference between New API and Old API

    Lecture 3: 4.3 GenericOptionsParser, Tool and ToolRunner

    Lecture 4: 4.4 Writables in Hadoop

    Lecture 5: 4.5 Serialization and Deserialization in Hadoop

    Lecture 6: 4.6 Schedulers and Distributed Cache

    Lecture 7: 4.7 Sequence File

    Lecture 8: 4.9 MRUNIT TESTING

    Chapter 5: Module 5

    Lecture 1: 5.1 Apache Pig

    Lecture 2: 5.2 Importance of Apache PIG

    Lecture 3: 5.3 Apache Pig vs MapReduce

    Lecture 4: 5.4 Where Pig is Best Suited

    Lecture 5: 5.5 Where to avoid Pig

    Lecture 6: 5.6 PIG Latin Language

    Lecture 7: 5.7 Running PIG in Different Modes

    Chapter 6: Module 6

    Lecture 1: 6.1 What is HBase

    Lecture 2: 6.2 UseCases of Apache PIG

    Lecture 3: 6.3 What is NoSQL Databases

    Lecture 4: 6.4 Characteristics of NoSQL Databases

    Lecture 5: 6.5 Categories of NoSQL Databases

    Lecture 6: 6.6 Difference between NoSQL and RDBMS

    Lecture 7: 6.7 Characteristics of Apache HBase

    Lecture 8: 6.8 Comparison between HDFS and HBase

    Lecture 9: 6.9 Where to use HBase

    Lecture 10: 6.10 Where to avoid HBase

    Lecture 11: 6.11 Building Blocks of Apache HBase

    Lecture 12: 6.12 Column Family in HBase

    Lecture 13: 6.13 Storage of Column Family

    Lecture 14: 6.14 TimeStamp as Version

    Lecture 15: 6.15 General Commands in HBase

    Lecture 16: 6.16 DDL in HBase

    Lecture 17: 6.17 DDL in HBase-2

    Lecture 18: 6.18 DML in HBase

    Lecture 19: 6.19 Core Components of HBase

    Lecture 20: 6.20 Need of Zookeeper

    Lecture 21: 6.21 How Client interacts with HBase Cluster

    Lecture 22: 6.22 Bloom Filter in HBase

    Lecture 23: 6.23 HFile in HBase

    Lecture 24: 6.24 Write Ahead Log in HBase

    Lecture 25: 6.25 Creating Table in Apache HBase Using JAVA API

    Lecture 26: 6.26 Deleating Table in Apache HBase Using JAVA API

    Lecture 27: 6.27 Disabling Table in Apache HBase Using JAVA API

    Lecture 28: 6.28 Inserting data in Table in Apache HBase Using JAVA API

    Lecture 29: 6.29 How to list and Enable a table in Apache HBase Using JAVA API

    Lecture 30: 6.30 Integrating Apache HBase with Pig Tool part-I

    Lecture 31: 6.31 Integrating HBase with Apache Pig -II

    Lecture 32: 6.32 Integrating HBase with Apache PIG-III

    Lecture 33: 6.33 Integrating HBase with Apache HIve

    Lecture 34: 6.34 Integration of Hive Tool with Apache HBase

    Lecture 35: 6.35 Integrating HBase with Apache Sqoop

    Lecture 36: 6.36 Integration of Apache HBase with Sqoop Tool part-2

    Lecture 37: 6.37 Filtering Operations in HBase

    Lecture 38: 6.38 KeyOnlyFilter in HBase

    Lecture 39: 6.39 FirstKeyOnlyFilter and PrefixFilter in HBase

    Lecture 40: 6.40 ColumnCountGetFilter and PageFilter

    Lecture 41: 6.42 ColumnPrefixFilter and MultipleColumnPrefixFilters

    Lecture 42: 6.43 ValueFilter

    Instructors

  • Become a Big Data Hadoop Developer from scratch  No.2
    Elementary Learners
    Make learning online
  • Rating Distribution

  • 1 stars: 2 votes
  • 2 stars: 8 votes
  • 3 stars: 7 votes
  • 4 stars: 8 votes
  • 5 stars: 8 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!