Optimizing System z Batch Applications by Exploiting Parallelism Optimizing System z Batch Applications by Exploiting Parallelism

Optimizing System z Batch Applications by Exploiting Parallelism

発行者による作品情報

This IBM® Redpaper™ publication shows you how to speed up batch jobs by splitting them into near-identical instances (sometimes referred to as ). It is a practical guide, which is based on the authors' testing experiences with a batch job that is similar to those jobs that are found in customer applications. This guide documents the issues that the team encountered and how the issues were resolved. The final tuned implementation produced better results than the initial traditional implementation.

Because job splitting often requires application code changes, this guide includes a description of some aspects of application modernization you might consider if you must modify your application.

The authors mirror the intended audience for this paper because they are specialists in IBM DB2®, IBM Tivoli® Workload Scheduler for z/OS®, and z/OS batch performance.

ジャンル
コンピュータ/インターネット
発売日
2014年
8月21日
言語
EN
英語
ページ数
132
ページ
発行者
IBM Redbooks
販売元
International Business Machines Corp
サイズ
1.7
MB
IT Service Management Best Practices Using IBM SmartCloud Control Desk IT Service Management Best Practices Using IBM SmartCloud Control Desk
2013年
IBM Bluemix Architecture Series: Web Application Hosting on Java Liberty IBM Bluemix Architecture Series: Web Application Hosting on Java Liberty
2015年
IBM SAN Solution Design Best Practices for VMware vSphere ESXi IBM SAN Solution Design Best Practices for VMware vSphere ESXi
2013年
A Software Architect's Guide to New Java Workloads in IBM CICS Transaction Server A Software Architect's Guide to New Java Workloads in IBM CICS Transaction Server
2015年
WebSphere Application Server V8: Administration and Configuration Guide WebSphere Application Server V8: Administration and Configuration Guide
2011年
Information Governance Principles and Practices for a Big Data Landscape Information Governance Principles and Practices for a Big Data Landscape
2014年