Big Data Hadoop Developer Course with Handson
3.9 (28 ratings)
Course Ratings are calculated from individual students’ ratings and a variety of other signals, like age of rating and reliability, to ensure that they reflect course quality fairly and accurately.
283 students enrolled

Big Data Hadoop Developer Course with Handson

Learn HDFS, HIVE, HBASE, PIG, YARN, Advanced MapReduce concept 1, 2 and other important technologies
3.9 (28 ratings)
Course Ratings are calculated from individual students’ ratings and a variety of other signals, like age of rating and reliability, to ensure that they reflect course quality fairly and accurately.
283 students enrolled
Created by Edionik Solutions
Last updated 2/2019
English
English [Auto-generated]
Current price: $11.99 Original price: $199.99 Discount: 94% off
3 days left at this price!
30-Day Money-Back Guarantee
This course includes
  • 11 hours on-demand video
  • 4 downloadable resources
  • Full lifetime access
  • Access on mobile and TV
  • Certificate of Completion
Training 5 or more people?

Get your team access to Udemy's top 3,000+ courses anytime, anywhere.

Try Udemy for Business
What you'll learn
  • Basics of Big Data
  • Detailed understanding of Big Data analytics

  • Master HDFS, MapReduce, Hive, Pig, HBase, Yarn

Course content
Expand all 88 lectures 10:47:55
+ Module 1:- Introduction to Big Data and Hadoop
7 lectures 47:53
1.3 Introduction to Hadoop
05:51
1.4 Comparison with RDBMS
03:47
1.5 Hadoop Features
02:58
1.6 Hadoop Ecosystem
12:30
1.7 Hadoop Core Components
06:38
+ Module 2- HDFS(Hadoop Distributed File System)
5 lectures 39:26
2.1 Hadoop Distributed File System
05:59
2.2 HDFS Files and Blocks
05:46
2.3 HDFS Components and Architecture
08:56
2.4 HDFS File Read-Write
06:14
2.5 HDFS Commands
12:31
+ Module 3- Mapreduce
8 lectures 50:31
3.1 Mapreduce
07:54
3.2 Map-Reduce Operation
05:09
3.3 Map-reduce Example
03:56
3.4 HDFS Input Splits
03:34
3.5 MapReduce Architecture
04:33
3.6 Combiners and Partitioners
06:45
3.7 MapReduce Data Flow
02:56
3.8 MapReduce Examples
15:44
+ Module 4- Advanced Mapreduce-I
17 lectures 01:49:04
4.1 Advanced MapReduce I
03:11
4.2 GenericOptionsParser, Tool and ToolRunner
02:56
4.3 Serialization and Deserialisation
03:25
4.4 Chaining of Jobs
02:44
4.5 Distributed Cache
01:35
4.6 Counters
04:53
4.7 JUnit Testing
01:37
4.8 Schedulers
03:01
4.9 Data Compression in Hadoop
07:21
4.10 Different Input and Output Formats in MapReduce
04:27
4.11 Chain Mapping
14:25
4.12 Compression in Gzip
06:57
4.13 Distributed cache
08:52
4.14 Counters
16:43
4.15 MRUnit Test
06:52
4.16 Multiple inputs
12:22
4.17 ReadSequence File
07:43
+ Module 5- Apache Pig
21 lectures 02:39:26
5.1 Introduction to Apache Pig
01:36
5.2 PIG Latin language
03:52
5.3 Running PIG in Different Modes
02:49
5.4 Apache PIG Architecture
01:18
5.5 Grunt Shell
07:17
5.6 Pig Latin Statements
07:22
5.7 Pig Data Model- Scalar Types
06:09
5.8 Complex Types
10:49
5.9 Arithmetic Operators
06:30
5.10 Comparison Operators
10:36
5.11 Cast Operator
12:44
5.12 Type Construction Operators
06:58
5.13 Relational Operators
00:45
5.14 Loading and Storing
05:37
5.15 Filtering Operators
10:39
5.16 Grouping and Joining Operator- Part 1
16:39
5.17 Grouping and Joining Operator- Part 2
13:40
5.18 Combining and Splitting Operators
09:30
5.19 Sorting Operators
06:48
5.20 Diagnostic Operators
10:58
5.21 Filtering Operators-Pig Streaming with Python
06:50
+ Module 6- Apache Hive
18 lectures 03:15:49
6.1 What is Hive
01:19
6.2 Hive Use Case@ Twitter
02:46
6.3 Hive vs MapReduce
02:44
6.4 What is Hive
03:18
6.5 Advantages of HiveQL
02:50
6.6 Hive Architecture
04:53
6.7 Data Types in Hive
02:49
6.8 Hive Query Language
01:42
6.9 DDL on DataBase
13:56
6.10 DDL on Tables
11:53
6.11 Different Tables in Hive
18:39
6.12 Advanced DDL on Tables
21:54
6.13 File Format in Hive
06:10
6.14 DML- Loading Data into tables
11:50
6.15 Managing Output
24:41
6.16 HiveQL-Queries
08:14
6.17 Operators and Functions in Hive
25:40
6.18 Hive Clauses
30:31
+ Apache HBase: NoSQL Database for Hadoop
12 lectures 45:46
7.1 What is HBase
01:28
7.2 HBase history
01:36
7.3 Building blocks of hbase
03:50
7.4 Column family in Hbase
03:09
7.5 Storage of Column Family
02:39
7.6 Data Model in HBase
03:31
7.7 Timestamp as Versions
03:04
7.8 Getting Started with HBase Shell
02:55
7.9 DDL in HBase part-1
06:12
7.10 DDL in HBase part-2
04:05
7.11 DDL in HBase part-3
04:41
7.12 DML in HBase
08:36
Requirements
  • Basics of UNIX
  • LINUX
  • Knowledge of Core Java
  • Basics of SQL
Description


This course on Big Data and Hadoop is curated by Hadoop industry experts, and it covers in-depth knowledge on Big Data and Hadoop Ecosystem Tools. It is a comprehensive Big Data Hadoop course designed by industry experts considering current industry job requirements to provide in-depth learning on big data and Hadoop Modules. This is an industry recognized Big Data Hadoop training course that is a combination of the training courses in Hadoop developer, Hadoop administrator, Hadoop testing, and analytics. This Hadoop training course will prepare you to clear big data certification.


Why should you take Big Data Hadoop?

  • Average Salary of Big Data Hadoop Developers is $135,000 (Indeed. com salary data)

  • McKinsey predicts that by 2018 there will be a shortage of 1,500,000 data experts

  • The Hadoop Big Data analytics market is projected to grow to USD 40.69 Billion by 2021 - MarketsandMarkets

Who this course is for:
  • Programming Developers and System Administrators
  • Experienced working professionals
  • Business Intelligence, Data warehousing and Analytics Professionals
  • Project managers
  • Graduates, undergraduates eager to learn the latest Big Data technology