An Architecture for Fast and General Data Processing on Large Clusters An Architecture for Fast and General Data Processing on Large Clusters
ACM Books

An Architecture for Fast and General Data Processing on Large Clusters

    • $44.99
    • $44.99

Publisher Description

The past few years have seen a major change in computing systems, as growing data volumes and stalling processor speeds require more and more applications to scale out to clusters. Today, a myriad data sources, from the Internet to business operations to scientific instruments, produce large and valuable data streams. However, the processing capabilities of single machines have not kept up with the size of data. As a result, organizations increasingly need to scale out their computations over clusters.



At the same time, the speed and sophistication required of data processing have grown. In addition to simple queries, complex algorithms like machine learning and graph analysis are becoming common. And in addition to batch processing, streaming analysis of real-time data is required to let organizations take timely action. Future computing platforms will need to not only scale out traditional workloads, but support these new applications too.



This book, a revised version of the 2014 ACM Dissertation Award winning dissertation, proposes an architecture for cluster computing systems that can tackle emerging data processing workloads at scale. Whereas early cluster computing systems, like MapReduce, handled batch processing, our architecture also enables streaming and interactive queries, while keeping MapReduce's scalability and fault tolerance. And whereas most deployed systems only support simple one-pass computations (e.g., SQL queries), ours also extends to the multi-pass algorithms required for complex analytics like machine learning. Finally, unlike the specialized systems proposed for some of these workloads, our architecture allows these computations to be combined, enabling rich new applications that intermix, for example, streaming and batch processing.



We achieve these results through a simple extension to MapReduce that adds primitives for data sharing, called Resilient Distributed Datasets (RDDs). We show that this is enough to capture a wide range of workloads. We implement RDDs in the open source Spark system, which we evaluate using synthetic and real workloads. Spark matches or exceeds the performance of specialized systems in many domains, while offering stronger fault tolerance properties and allowing these workloads to be combined. Finally, we examine the generality of RDDs from both a theoretical modeling perspective and a systems perspective.



This version of the dissertation makes corrections throughout the text and adds a new section on the evolution of Apache Spark in industry since 2014. In addition, editing, formatting, and links for the references have been added.

GENRE
Computers & Internet
RELEASED
2016
May 1
LANGUAGE
EN
English
LENGTH
141
Pages
PUBLISHER
Association for Computing Machinery and Morgan & Claypool Publishers
SELLER
Ingram DV LLC
SIZE
2.3
MB
Foundations of Data Intensive Applications Foundations of Data Intensive Applications
2021
Tools for High Performance Computing 2012 Tools for High Performance Computing 2012
2013
Mastering Hadoop 3 Mastering Hadoop 3
2019
Web-Scale Data Management for the Cloud Web-Scale Data Management for the Cloud
2013
Big Data with Hadoop MapReduce Big Data with Hadoop MapReduce
2020
Tools for High Performance Computing 2015 Tools for High Performance Computing 2015
2016
The VR Book The VR Book
2015
Text Data Management and Analysis Text Data Management and Analysis
2016
Verified Functional Programming in Agda Verified Functional Programming in Agda
2016
Ada's Legacy Ada's Legacy
2015
A Framework for Scientific Discovery through Video Games A Framework for Scientific Discovery through Video Games
2014
Trust Extension as a Mechanism for Secure Code Execution on Commodity Computers Trust Extension as a Mechanism for Secure Code Execution on Commodity Computers
2014