Title :
Improving Multisite Workflow Performance Using Model-Based Scheduling
Author :
Maheshwari, Ketan ; Eun-Sung Jung ; Jiayuan Meng ; Vishwanath, Venkatram ; Kettimuthu, Rajkumar
Author_Institution :
MCS Div., Argonne Nat. Lab., Argonne, IL, USA
Abstract :
Workflows play an important role in expressing and executing scientific applications. In recent years, a variety of computational sites and resources have emerged, and users often have access to multiple resources that are geographically distributed. These computational sites are heterogeneous in nature and performance of different tasks in a workflow varies from one site to another. Additionally, users typically have a limited resource allocation at each site. In such cases, judicious scheduling strategy is required in order to map tasks in the workflow to resources so that the workload is balanced among sites and the overhead is minimized in data transfer. Most existing systems either run the entire workflow in a single site or use naive approaches to distribute the tasks across sites or leave it to the user to optimize the allocation of tasks to distributed resources. This results in a significant loss in productivity for a scientist. In this paper, we propose a multi-site workflow scheduling technique that uses performance models to predict the execution time on different resources and dynamic probes to identify the achievable network throughput between sites. We evaluate our approach using real world applications in a distributed environment using the Swift distributed execution framework and show that our approach improves the execution time by up to 60% compared to the default schedule.
Keywords :
distributed processing; electronic data interchange; resource allocation; Swift distributed execution framework; computational resources; computational sites; data transfer; geographically distributed resources; model-based scheduling; multisite workflow performance improvement; multisite workflow scheduling technique; resource allocation; scientific applications; task allocation; Arrays; Computational modeling; Data transfer; Schedules; Scheduling algorithms; Skeleton; clouds; distributed computing; parallel programming; resource modeling; scripting; swift;
Conference_Titel :
Parallel Processing (ICPP), 2014 43rd International Conference on
Conference_Location :
Minneapolis MN
DOI :
10.1109/ICPP.2014.22