Dynamic Resource Allocation in Computing Clouds Using Distributed Multiple Criteria Decision Analysis
Citations Over TimeTop 1% of 2010 papers
Abstract
In computing clouds, it is desirable to avoid wasting resources as a result of under-utilization and to avoid lengthy response times as a result of over-utilization. In this paper, we propose a new approach for dynamic autonomous resource management in computing clouds. The main contribution of this work is two-fold. First, we adopt a distributed architecture where resource management is decomposed into independent tasks, each of which is performed by Autonomous Node Agents that are tightly coupled with the physical machines in a data center. Second, the Autonomous Node Agents carry out configurations in parallel through Multiple Criteria Decision Analysis using the PROMETHEE method. Simulation results show that the proposed approach is promising in terms of scalability, feasibility and flexibility.
Related Papers
- → Grid Resource Allocation and Management Algorithm Based on Optimized Multi-task Target Decision(2019)9 cited
- → A scalable strategy for runtime resource management on NoC based manycore systems(2011)6 cited
- → On scalability of dynamic resource allocation in policy-enabled networks: practical and analytical evaluations(2005)1 cited
- → A note on federation management: autonomic resource allocation with economic-enhanced agents(2012)
- → Pack Up Cloud: Recursive Datacenter Resource Management and Experimental Studies(2015)