Learning Spark Streaming (2017)
This post was published 8 years ago. Download links are most likely obsolete. If that's the case, try asking the uploader to re-upload.

300 pages | Dec 2017 | English | ISBN-10: 1491944242 | PDF | 6 MB
To build analytics tools that provide faster insights, knowing how to process data in real time is a must, and moving from batch processing to stream processing is absolutely required. Fortunately, the Spark in-memory framework/platform for processing data has added an extension devoted to fault-tolerant stream processing: Spark Streaming. If you're familiar with Apache Spark and want to learn how to implement it for streaming jobs, this practical book is a must. Understand how Spark Streaming fits in the big picture Learn core concepts such as Spark RDDs, Spark Streaming clusters, and the fundamentals of a DStream Discover how to create a robust deployment Dive into streaming algorithmics Learn how to tune, measure, and monitor Spark Streaming
Quick check before we show the links
Helps us keep automated scrapers from hammering the filehosts.