Title :
Multi-Resource Fair Allocation in Heterogeneous Cloud Computing Systems
Author :
Wang, Wei ; Liang, Ben ; Li, Baochun
Author_Institution :
Department of Electrical and Computer Engineering, University of Toronto, Toronto, Canada
Abstract :
We study the multi-resource allocation problem in cloud computing systems where the resource pool is constructed from a large number of heterogeneous servers, representing different points in the configuration space of resources such as processing, memory, and storage. We design a multi-resource allocation mechanism, called DRFH, that generalizes the notion of Dominant Resource Fairness (DRF) from a single server to multiple heterogeneous servers. DRFH provides a number of highly desirable properties. With DRFH, no user prefers the allocation of another user; no one can improve its allocation without decreasing that of the others; and more importantly, no coalition behavior of misreporting resource demands can benefit all its members. DRFH also ensures some level of service isolation among the users. As a direct application, we design a simple heuristic that implements DRFH in real-world systems. Large-scale simulations driven by Google cluster traces show that DRFH significantly outperforms the traditional slot-based scheduler, leading to much higher resource utilization with substantially shorter job completion times.
Keywords :
Cloud computing; Mechanical factors; Memory management; Resource management; Schedules; Servers; Vectors; Cloud computing; fairness; heterogeneous servers; job scheduling; multi-resource allocation;
Journal_Title :
Parallel and Distributed Systems, IEEE Transactions on
DOI :
10.1109/TPDS.2014.2362139