» » Pluralsight - Apache Spark Fundamentals

Information of news
  • Author: voska89
  • Date: 29-10-2015, 07:13
29-10-2015, 07:13

Pluralsight - Apache Spark Fundamentals

Category: Tutorials

Pluralsight - Apache Spark Fundamentals
Pluralsight - Apache Spark Fundamentals
MP4 | Video: 1280x720 | 88 kbps | 44 KHz | Duration: 4 Hours, 27Min | 731 MB
Genre: eLearning | Language: English

This course will teach you how to use Apache Spark to analyze your big data at lightning-fast speeds, leaving Hadoop in the dust!

Our ever-connected world is creating data faster than Moore's law can keep up, making it so that we have to be smarter in our decisions on how to analyze it. Previously, we had Hadoop's MapReduce framework for batch processing, but modern big data processing demands have outgrown this framework. That's where Apache Spark steps in, boasting speeds 10-100x faster than Hadoop and setting the world record in large scale sorting. Spark's general abstraction means it can expand beyond simple batch processing, making it capable of such things as blazing-fast, iterative algorithms and exactly once streaming semantics. In this course, you'll learn Spark from the ground up, starting with its history before creating a Wikipedia analysis application as one of the means for learning a wide scope of its core API. That core knowledge will make it easier to look into Spark's other libraries, such as the streaming and SQL APIs. Finally, you'll learn how to avoid a few commonly encountered rough edges of Spark. You will leave this course with a tool belt capable of creating your own performance-maximized Spark application.
Buy Premium From My Links To Get Resumable Support,Max Speed & Support Me



Site BBcode/HTML Code:
Dear visitor, you went to the site as unregistered user.
We recommend you Sign up or Login to website under your name.
Would you like to leave your comment? Please Login to your account to leave comments. Don't have an account? You can create a free account now.

Tag Cloud

archive of news

free html hit counter