Big Data & Hadoop Full Course – Learn Hadoop In 10 Hours | Hadoop Tutorial For Beginners | Edureka

šŸ”„ Edureka Big Data Architect Master Program: https://www.edureka.co/masters-program/big-data-architect-training
This Edureka Big Data & Hadoop Full Course video will help you understand and learn Hadoop concepts in detail. This Big Data & Hadoop Tutorial is ideal for both beginners as well as professionals who want to master the Hadoop Ecosystem. Below are the topics covered in this Big Data & Hadoop Tutorial for Beginners video:
00:00 Agenda
2:37 Introduction to Big Data
8:22 What is Big Data?
9:32 5 V’s of Big Data
15:02 Big Data as an Opportunity
18:27 IBM Big Data Analytics Use-Case
24:38 Big Data Analytics & Use-Case
32:43 What is Big Data Analytics?
33:28 Stages of Big Data Analytics
34:33 Types of Big Data Analytics
39:53 Big Data Analytics in Different Domains
46:38 Problems with Big Data: Restaurant Analogy
54:53 Apache Hadoop
56:18 Hadoop Master-Slave Architecture
1:00:38 HDFS
1:01:03 NameNode & DataNode
1:02:33 Secondary Namenode & Checkpointing
1:06:18 HDFS Data Blocks
1:11:18 HDFS Replication
1:12:48 HDFS Read/Write Mechanism
1:20:43 MapReduce
1:24:33 What is MapReduce?
1:25:43 MapReduce Word Count Program
1:42:13 YARN
1:43:38 MapReduce Job Workflow
1:47:28 YARN Architecture
1:48:33 Hadoop Architecture
1:49:38 Hadoop Ecosystem
1:50:53 Hadoop Cluster Mode
1:52:33 Hadoop Ecosystem
1:55:38 Hadoop Installation
2:08:03 MapReduce Examples
2:08:08 Weather Data Set Analysis
2:16:23 MapReduce Last.FM Example
2:24:13 Apache Sqoop Tutorial
2:26:03 What is Sqoop?
2:27:33 Features of Sqoop
2:28:43 Sqoop Architecture
2:30:48 Import Sqoop Command
2:38:23 Export Sqoop Command
2:40:03 List Database Command
2:42:28 Apache Flume Tutorial
2:45:18 Flume Architecture
2:46:58 Flume Twitter Streaming
2:52:23 Apache Pig Tutorial
2:55:18 Pig vs MapReduce
2:58:23 Twitter Case Study
3:04:48 Pig Architecture
3:05:48 Pig Components
3:09:38 Pig Data Models
3:14:33 Pig Commands
3:27:33 Apache Hive Tutorial
3:40:43 What is Hive?
3:43:23 PigLatin Vs HiveQL
3:47:09 Hive Architecture
3:50:19 Hive Components
3:51:24 Metastore
3:55:44 Hive Commands
3:56:44 Hive Setup
4:01:04 Type Systems
4:02:54 Hive Data Models
4:46:54 Hive Partitioning
4:56:44 Bucketing in Hive
5:44:19 External Table
5:48:49 Apache HBase Tutorial
6:13:05 Types of NoSQL Databases
6:21:36 History if HBase
6:23:06 HBase vs RDBMS
6:27:56 Uses of HBase
6:31:46 Companies Using HBase
6:41:03 HBase Operation
6:51:28 HBase Shell
7:16:38 Single Map
7:17:23 Multidimensional Map
7:18:03 Multidimensional Columns
7:20:33 Row vs Column Oriented Databases
7:22:33 HBase Data Models
7:25:03 HBase Physical Storage
7:28:43 HBase Architecture
7:30:48 HBase Components
7:31:04 HBase Read Write Mechanism
7:40:49 Compaction in HBase
7:41:49 HBase Shell
7:42:09 HBase Client API
7:42:24 Hadoop E-Commerce Projects
7:58:24 Distributed Cache
8:00:14 Code Sections
8:17:44 How to Become a Big Data Engineer?
8:18:24 Who is a Big Data Engineer?
8:19:14 Big Data Engineer Responsibilities
8:24:49 Big Data Engineer Skills
8:32:44 Big Data Engineer Learning Path
8:36:19 Big Data & Hadoop Interview Questions

——————–Edureka Big Data Training and Certifications————————

šŸ”µ Edureka Hadoop Training: http://bit.ly/2YBlw29
šŸ”µ Edureka Spark Training: http://bit.ly/2PeHvc9
šŸ”µ Edureka Kafka Training: http://bit.ly/34e7Riy
šŸ”µ Edureka Cassandra Training: http://bit.ly/2E9AK54
šŸ”µ Edureka Talend Training: http://bit.ly/2YzYIjg
šŸ”µ Edureka Hadoop Administration Training: http://bit.ly/2YE8Nf9

PG in Big Data Engineering with NIT Rourkela : https://www.edureka.co/post-graduate/big-data-engineering (450+ Hrs || 9 Months || 20+ Projects & 100+ Case studies)

——————————————————————————————————–

Instagram: https://www.instagram.com/edureka_learning
Facebook: https://www.facebook.com/edurekaIN/
Twitter: https://twitter.com/edurekain
LinkedIn: https://www.linkedin.com/company/edureka

———————————————————————————————————-

Got a question on the topic? Please share it in the comment section below and our experts will answer it for you.

For more information, please write back to us at [email protected] or call us at IND: 9606058406 / US: 18338555775 (toll-free).

Leave a Reply