Udemy

Mastering Apache SQOOP with Hadoop,Hive, MySQL (Mac & Win)

Enroll Now
  • 418 Students
  • Updated 12/2018
4.1
(44 Ratings)
CTgoodjobs selects quality courses to enhance professionals' competitiveness. By purchasing courses through links on our site, we may receive an affiliate commission.

Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
3 Hour(s) 33 Minute(s)
Language
English
Taught by
DataShark Academy
Rating
4.1
(44 Ratings)

Course Overview

Mastering Apache SQOOP with Hadoop,Hive, MySQL (Mac & Win)

The Complete Course on Apache SQOOP. Great for CCA175 Spark & Hortonworks Big Data Hadoop Developer Certifications.

WHY APACHE SQOOP

Apache SQOOP is designed to import data from relational databases such as Oracle, MySQL, etc to Hadoop systems. Hadoop is ideal for batch processing of huge amounts of data. It is industry standard nowadays. In real world scenarios, using SQOOP you can transfer the data from relational tables into Hadoop and then leverage the parallel processing capabilities of Hadoop to process huge amounts of data and generate meaningful data insights. The results of Hadoop processing can again be stored back to relational tables using SQOOP export functionality. 


Big data analytics start with data ingestion and thats where apache sqoop comes in picture. It is the first step in getting the data ready.


ABOUT THIS COURSE

In this course, you will learn step by step everything that you need to know about Apache Sqoop and how to integrate it within Hadoop ecosystem. With every concept explained with real world like examples, you will learn how to create Data Pipelines to move in/out the data from Hadoop. In this course, you will learn following major concepts in great details:


APACHE SQOOP - IMPORT TOPICS   << MySQL to Hadoop/Hive >>

  1. default hadoop storage

  2. specific target on hadoop storage

  3. controlling parallelism

  4. overwriting existing data

  5. append data

  6. load specific columns from MySQL table

  7. control data splitting logic

  8. default to single mapper when needed

  9. Sqoop Option files

  10. debugging Sqoop Operations

  11. Importing data in various file formats - TEXT, SEQUENCE, AVRO, PARQUET & ORC

  12. data compression while importing

  13. custom query execution

  14. handling null strings and non string values

  15. setting delimiters for imported data files

  16. setting escaped characters

  17. incremental loading of data

  18. write directly to hive table

  19. using HCATALOG parameters

  20. importing all tables from MySQL database

  21. importing entire MySQL database into Hive database


APACHE SQOOP - EXPORT TOPICS  << Hadoop/Hive to MySQL >>

  1. Move data from Hadoop to MySQL table

  2. Move specific columns from Hadoop to MySQL table

  3. Avoid partial export issues

  4. Update Operation while exporting


APACHE SQOOP - JOBS TOPICS  << Automation >>

  1. create sqoop job

  2. list existing sqoop jobs

  3. check metadata about sqoop jobs

  4. execute sqoop job

  5. delete sqoop job

  6. enable password storage for easy execution in production


WHAT YOU WILL ACHIEVE AFTER COMPLETING THIS COURSE

After completing this course, you will cover one of the topic that is heavily asked in below certifications. You will need to take other lessons as well to fully prepare for the test. We will be launching other courses soon.

1. CCA Spark and Hadoop Developer Exam (CCA175)

2. Hortonworks Data Platform (HDP) Certified Developer Exam (HDPCD)


WHO ARE YOUR INSTRUCTORS

This course is taught by professionals with extensive experience in handling big data applications for Fortune 100 companies of the world. They have managed to create data pipelines for extracting, transforming & processing over 100's of Terabytes of data in a day for their clients providing data analytics for user services. After successful launch of their course - Complete ElasticSearch with LogStash, Hive, Pig, MR & Kibana, same team has brought to you a complete course on learning Apache Sqoop with Hadoop, Hive, MySQL.


You will also get step by step instructions for installing all required tools and components on your machine in order to run  all examples provided in this course. Each video will explain entire process in detail and easy to understand manner.

You will get access to working code for you to play with it and expand on it. All code examples are working and will be demonstrated in video lessons.

Windows users will need to install virtual machine on their device to setup single node hadoop cluster while MacBook or Linux users can directly install hadoop and sqoop components on their machines. The step by step process is illustrated within course.

Course Content

  • 7 section(s)
  • 47 lecture(s)
  • Section 1 Introduction
  • Section 2 Apache SQOOP in a nutshell
  • Section 3 Environment Setup
  • Section 4 Apache SQOOP - IMPORT
  • Section 5 Apache SQOOP - EXPORT
  • Section 6 Apache SQOOP - JOBS
  • Section 7 Conclusion

What You’ll Learn

  • Get Ready for CCA Spark and Hadoop Developer Exam (CCA175)
  • Get Ready for Hortonworks Data Platform (HDP) Certified Developer Exam (HDPCD)
  • Advance your career by applying for high paying Big Data jobs
  • Install & configure Hortonworks Data Platform (HDP) Sandbox on Windows Machine
  • Crack Big Data Developer Interviews
  • Develop sound understanding about Data Ingestion process from Relational System (MySQL) to Hadoop ecosystem & vice versa


Reviews

  • T
    Tuncay Yaylalı
    5.0

    The content is well prepared. The only thing I don't like is the background music.

  • B
    Bharath Kumar Srinivasan
    3.5

    Could have explained other options like boundaries, eval, etc...

  • A
    Aman Neelkat
    1.5

    so far I don't feel this is a paid course -

  • k
    khushboo kaul
    4.0

    The course is good. but queries and questions were not answered//

Start FollowingSee all

We use cookies to enhance your experience on our website. Please read and confirm your agreement to our Privacy Policy and Terms and Conditions before continue to browse our website.

Read and Agreed