
Practical Apache Spark
Kurzinformation



inkl. MwSt. Versandinformationen
Artikel zZt. nicht lieferbar
Artikel zZt. nicht lieferbar

Beschreibung
Work with Apache Spark using Scala to deploy and set up single-node, multi-node, and high-availability clusters. This book discusses various components of Spark such as Spark Core, DataFrames, Datasets and SQL, Spark Streaming, Spark MLib, and R on Spark with the help of practical code snippets for each topic. Practical Apache Spark also covers the integration of Apache Spark with Kafka with examples. Yoüll follow a learn-to-do-by-yourself approach to learning ¿ learn the concepts, practice the code snippets in Scala, and complete the assignments given to get an overall exposure. On completion, yoüll have knowledge of the functional programming aspects of Scala, and hands-on expertise in various Spark components. Yoüll also become familiar with machine learning algorithms with real-time usage. What You Will LearnDiscover the functional programming features of Scala Understand the complete architecture of Spark and its components Integrate Apache Spark with Hive and Kafka Use Spark SQL, DataFrames, and Datasets to process data using traditional SQL queries Work with different machine learning concepts and libraries using Spark's MLlib packages Who This Book Is For Developers and professionals who deal with batch and stream data processing. von Ganesan, Dharanitharan und Chellappan, Subhashini
Produktdetails

So garantieren wir Dir zu jeder Zeit Premiumqualität.
Über den Autor
Subhashini Chellappan is a technology enthusiast with expertise in the big data and cloud space. She has rich experience in both academia and the software industry. Her areas of interest and expertise are centered on business intelligence, big data analytics and cloud computing. Dharanitharan Ganesan is a senior analyst with five years of experience in IT. He has a high level of exposure and experience in big data - Apache Hadoop, Apache Spark and various Hadoop ecosystem components. He has a proven track record of improving efficiency and productivity through the automation of various routine and administrative functions in business intelligence and big data technologies. His areas of interest and expertise are centered on machine learning algorithms, statistical modelling and predictive analysis.
- paperback
- 254 Seiten
- Erschienen 2015
- Packt Pub Ltd
- paperback
- 360 Seiten
- Erschienen 2012
- Manning
- paperback
- 459 Seiten
- Erschienen 2022
- O'Reilly Media
- Taschenbuch
- 296 Seiten
- Erschienen 2011
- Apress
- paperback
- 136 Seiten
- Erschienen 2013
- Packt Pub Ltd
- Kartoniert
- 356 Seiten
- Erschienen 2021
- dpunkt.verlag GmbH
- Hardcover
- 220 Seiten
- Erschienen 2004
- Elsevier Science
- Gebunden
- 378 Seiten
- Erschienen 2012
- Springer
- Gebunden
- 448 Seiten
- Erschienen 2005
- Springer
- Hardcover
- 256 Seiten
- Erschienen 2023
- Wiley & Sons
- Hardcover
- 352 Seiten
- Erschienen 2017
- Manning
- Hardcover
- 372 Seiten
- Erschienen 2014
- Apress
- Hardcover
- 624 Seiten
- Erschienen 2007
- Springer
- Hardcover
- 826 Seiten
- Erschienen 2021
- Packt Publishing