SØG - mellem flere end 8 millioner bøger:
Viser: High Performance Spark - Best Practices for Scaling and Optimizing Apache Spark
High Performance Spark Vital Source e-bog
Holden Karau og Rachel Warren
(2017)
High Performance Spark
Best Practices for Scaling and Optimizing Apache Spark
Holden Karau og Rachel Warren
(2017)
Sprog: Engelsk
om ca. 10 hverdage
Detaljer om varen
- 1. Udgave
- Vital Source searchable e-book (Reflowable pages)
- Udgiver: O'Reilly Media, Inc (Maj 2017)
- Forfattere: Holden Karau og Rachel Warren
- ISBN: 9781491943151
Bookshelf online: 5 år fra købsdato.
Bookshelf appen: ubegrænset dage fra købsdato.
Udgiveren oplyser at følgende begrænsninger er gældende for dette produkt:
Print: -1 sider kan printes ad gangen
Copy: højest -1 sider i alt kan kopieres (copy/paste)
Detaljer om varen
- Paperback: 358 sider
- Udgiver: O'Reilly Media, Incorporated (Juni 2017)
- Forfattere: Holden Karau og Rachel Warren
- ISBN: 9781491943205
Apache Spark is amazing when everything clicks. But if you haven't seen the performance improvements you expected, or still don't feel confident enough to use Spark in production, this practical book is for you. Authors Holden Karau and Rachel Warren demonstrate performance optimizations to help your Spark queries run faster and handle larger data sizes, while using fewer resources.
Ideal for software engineers, data engineers, developers, and system administrators working with large-scale data applications, this book describes techniques that can reduce data infrastructure costs and developer hours. Not only will you gain a more comprehensive understanding of Spark, you'll also learn how to make it sing.
With this book, you'll explore:
- How Spark SQL's new interfaces improve performance over SQL's RDD data structure
- The choice between data joins in Core Spark and Spark SQL
- Techniques for getting the most out of standard RDD transformations
- How to work around performance issues in Spark's key/value pair paradigm
- Writing high-performance Spark code without Scala or the JVM
- How to test for functionality and performance when applying suggested improvements
- Using Spark MLlib and Spark ML machine learning libraries
- Spark's Streaming components and external community packages