Learning Hadoop 2 – Packt Publishing
Original price was: $75.00.$20.00Current price is: $20.00.
Learning Hadoop 2 – Packt Publishing Download. Hadoop emerged in response to the proliferation of masses and masses of data collected by organizations, off…
Unlock your potential with the Learning Hadoop 2 - Packt Publishing course for only Original price was: $75.00.$20.00Current price is: $20.00. at WSOLib.com! Discover our vast library of over 60,000 downloadable digital courses across Internet Marketing. Get expert-guided, self-paced learning and save over 80% compared to retail prices. Transform your skills today!
Salepage link: At HERE. Archive: http://archive.is/dpjbH
Learning Hadoop 2
An introduction to storing, structuring, and analyzing data at scale with Hadoop
An introduction to storing, structuring, and analyzing data at scale with Hadoop
About This Video
- Explore Hadoop and its ecosystem of core components, and set up an instance
- Import, organize, and query data with HDFS, Flume, Sqoop, and Hive
- Learn Pig, a simplified scripting language for Hadoop, to manipulate your data
In Detail
Hadoop emerged in response to the proliferation of masses and masses of data collected by organizations, offering a strong solution to store, process, and analyze what has commonly become known as Big Data. It comprises a comprehensive stack of components designed to enable these tasks on a distributed scale, across multiple servers and thousands of machines.
Learning Hadoop 2 introduces you to the powerful system synonymous with Big Data, demonstrating how to create an instance and leverage Hadoop ecosystem’s many components to store, process, manage, and query massive data sets with confidence.
We open this course by providing an overview of the Hadoop component ecosystem, including HDFS, Sqoop, Flume, YARN, MapReduce, Pig, and Hive, before installing and configuring our Hadoop environment. We take a look at Hue, the graphical user interface of Hadoop.
We will then discover HDFS, Hadoop’s file-system used to store data. We will learn how to import and export data, both manually and automatically. Afterward, we turn our attention toward running computations using MapReduce, and get to grips working with Hadoop’s scripting language, Pig. Lastly, we will siphon data from HDFS into Hive, and demonstrate how it can be used to structure and query data sets.
Course Curriculum
The Hadoop Ecosystem
- The Course Overview (1:51)
- Overview of HDFS and YARN (7:24)
- Overview of Sqoop and Flume (3:17)
- Overview of MapReduce (3:38)
- Overview of Pig (3:04)
- Overview of Hive (6:33)
Installing and Configuring Hadoop
- Downloading and Installing Hadoop (2:53)w
- Exploring Hue (5:24)
Data Import and Export
- Manual Import (4:33)
- Importing from Databases Using Sqoop (6:27)
- Using Flume to Import Streaming Data (5:07)
Using MapReduce and Pig
- Coding “Word Count” in MapReduce (5:55)
- Coding “Word Count” in Pig (2:30)
- Performing Common ETL Functions in Pig (8:48)
- Using User-defined Functions in Pig (5:58)
Using Hive
- Importing Data from HDFS into Hive (4:57)
- Importing Data Directly from a Database (2:23)
- Performing Basic Queries in Hive (6:58)
- Putting It All Together (2:15)
Secure your future with the Learning Hadoop 2 - Packt Publishing course at WSOLib.com! Gain lifetime access to expertly curated content, empowering your career and personal development.
- Lifetime Access: Enjoy unlimited access to your digital courses.
- Huge Savings: Prices are consistently up to 80% lower than original sales pages.
- Secure Transactions: Shop with confidence using our trusted payment methods.
- Actionable Knowledge: Acquire real-world skills from diverse topics.
- Instant Delivery: Start learning immediately after purchase.
- Device Flexibility: Access your courses on desktop, mobile, or tablet.
Begin your learning journey with WSOLib.com!
Specification: Learning Hadoop 2 – Packt Publishing
|
User Reviews
Only logged in customers who have purchased this product may leave a review.

Original price was: $75.00.$20.00Current price is: $20.00.
There are no reviews yet.