학술논문

CMS Workflow Execution using Intelligent Job Scheduling and Data Access Strategies
Document Type
Working Paper
Source
IEEE Transactions in Nuclear Science 58 (3) pp. 1221-1232. ISSN 0018-9499 2011
Subject
Computer Science - Software Engineering
Computer Science - Distributed, Parallel, and Cluster Computing
Language
Abstract
Complex scientific workflows can process large amounts of data using thousands of tasks. The turnaround times of these workflows are often affected by various latencies such as the resource discovery, scheduling and data access latencies for the individual workflow processes or actors. Minimizing these latencies will improve the overall execution time of a workflow and thus lead to a more efficient and robust processing environment. In this paper, we propose a pilot job based infrastructure that has intelligent data reuse and job execution strategies to minimize the scheduling, queuing, execution and data access latencies. The results have shown that significant improvements in the overall turnaround time of a workflow can be achieved with this approach. The proposed approach has been evaluated, first using the CMS Tier0 data processing workflow, and then simulating the workflows to evaluate its effectiveness in a controlled environment.
Comment: 12 pages, 12 figures