Apache Hive for Data Engineers (Hands On) with 2 Projects

Apache Hive for Data Engineers (Hands On) with 2 Projects

How To Get This Course For Free ? 

  • Click On Enroll Now.
  • Now You Go Direct Udemy Official Website.
  • Than Log in And Sign Up In #Udemy Website.
  • Now Click On Enroll Now.
  • Last Finally You Get This Course Absolutely Free.
  • You Get Message Congratulation You Enroll This Course.
What you’ll learn:
  • Why Hive is necessary for Data Engineer
  • The goal of this course is to help you become familiar with Apache Hive bits and bytes
  • Learn A to Z of Apache HIVE (From Basic to Advance level).
  • Hands on Experience on Apache Hive and Real-time Use Case
Description:

The Apache Hive data warehouse software facilitates reading, writing, and managing large datasets residing in distributed storage using SQL. Structure can be projected onto data already in storage. A command-line tool and JDBC driver are provided to connect users to Hive.

One of the most valuable technology skills is the ability to analyze huge data sets, and this course is specifically designed to bring you up to speed on one of the best technologies for this task, Apache Hive! The top technology companies like Google, Facebook, Netflix, Airbnb, Amazon, NASA, and more are all using Apache Hive!

Built on top of Apache Hadoop, Hive provides the following features:

  • Tools to enable easy access to data via SQL, thus enabling data warehousing tasks such as extract/transform/load (ETL), reporting, and data analysis.
  • A mechanism to impose structure on a variety of data formats
  • Access to files stored either directly in Apache HDFS™ or in other data storage systems such as Apache HBase™
  • Query execution via Apache Tez, Apache Spark, or MapReduce
  • Procedural language with HPL-SQL
  • Sub-second query retrieval via Hive LLAP, Apache YARN and Apache Slider.

100% off and free Udemy coupons, and Free Paid Course

Get More Courses –  Click Here 

#Udemy , #Freepaidcourse ,coupon scorpion, coupon scorpion udemy

Hive provides standard SQL functionality, including many of the later SQL:2003, SQL:2011, and SQL:2016 features for analytics.
Hive’s SQL can also be extended with user code via user defined functions (UDFs), user defined aggregates (UDAFs), and user defined table functions (UDTFs).

There is not a single “Hive format” in which data must be stored. Hive comes with built in connectors for comma and tab-separated values (CSV/TSV) text files, Apache Parquet, Apache ORC, and other formats. Users can extend Hive with connectors for other formats. Please see File Formats and Hive SerDe in the Developer Guide for details.

Hive is not designed for online transaction processing (OLTP) workloads. It is best used for traditional data warehousing tasks.

Hive is designed to maximize scalability (scale out with more machines added dynamically to the Hadoop cluster), performance, extensibility, fault-tolerance, and loose-coupling with its input formats.

Hive provides standard SQL functionality, including many of the later SQL:2003, SQL:2011, and SQL:2016 features for analytics.
Hive’s SQL can also be extended with user code via user defined functions (UDFs), user defined aggregates (UDAFs), and user defined table functions (UDTFs).

There is not a single “Hive format” in which data must be stored. Hive comes with built in connectors for comma and tab-separated values (CSV/TSV) text files, Apache Parquet, Apache ORC, and other formats. Users can extend Hive with connectors for other formats. Please see File Formats and Hive SerDe in the Developer Guide for details.

Hive is not designed for online transaction processing (OLTP) workloads. It is best used for traditional data warehousing tasks.

Hive is designed to maximize scalability (scale out with more machines added dynamically to the Hadoop cluster), performance, extensibility, fault-tolerance, and loose-coupling with its input formats.

We will learn

1) Apache Hive Overview

2) Apache Hive Architecture

3) Installation and Configuration

4) How a Hive query flows through the system.

5) Hive Features, Limitation and Data Model

6) Data Type, Data Definition Language, and Data Manipulation Language

7) Hive View, Partition, and Bucketing

8) Built-in Functions and Operators

9) Join in Apache Hive

10) Frequently Asked Interview Question and Answers

11) 2 Realtime Projects

My goal is to provide you with practical tools that will be beneficial for you in the future. While doing that, with a real use opportunity.

I am really excited you are here, I hope you are going to follow all the way to the end of the course. It is fairly straight forward fairly easy to follow through the course I will show you step by step each line of code & I will explain what it does and why we are doing it. So please I invite you to follow up on it to go through all the lectures. All right I will see you soon in the course.

Who this course is for:
  • Software Engineer, Software Developer, Big Data Engineer, Data Engineer, Data Analyst, Data Scientist, Machine Learning Engineer
  • You should take this course if want to learn Apache Hive completely from scratch

Enroll Now -:

Free 12800 100% off

100 off udemy coupons

If You Like This Article Please Feel Free Share -:👍

JOIN OUR WHATSAPP GROUP TO GET LATEST COUPON AS SOON AS UPDATED
Freepaircourse
JOIN OUR TELEGRAM CHANNEL TO GET LATEST COUPON
Freepaircourse.com
JOIN OUR FACEBOOK PAGE TO GET LATEST COUPON
Freepaircourse

 

x
Advertisements
close