Self-assessment approach for resource management protocols in heterogeneous computational systems
By: Rui Eduardo Lopes , Duarte Raposo , Pedro V. Teixeira and more
Potential Business Impact:
Helps computers pick the best place to run tasks.
With an ever growing number of heterogeneous applicational services running on equally heterogeneous computational systems, the problem of resource management becomes more essential. Although current solutions consider some network and time requirements, they mostly handle a pre-defined list of resource types by design and, consequently, fail to provide an extensible solution to assess any other set of requirements or to switch strategies on its resource estimation. This work proposes an heuristics-based estimation solution to support any computational system as a self-assessment, including considerations on dynamically weighting the requirements, how to compute each node's capacity towards an admission request, and also offers the possibility to extend the list of resource types considered for assessment, which is an uncommon view in related works. This algorithm can be used by distributed and centralized resource allocation protocols to decide the best node(s) for a service intended for deployment. This approach was validated across its components and the results show that its performance is straightforward in resource estimation while allowing scalability and extensibility.
Similar Papers
Distributed Resource Selection for Self-Organising Cloud-Edge Systems
Distributed, Parallel, and Cluster Computing
Lets computers share work faster, everywhere.
Machine learning-based cloud resource allocation algorithms: a comprehensive comparative review
Distributed, Parallel, and Cluster Computing
Makes computers use cloud power smarter and cheaper.
A Meta-Heuristic Load Balancer for Cloud Computing Systems
Distributed, Parallel, and Cluster Computing
Keeps computer clouds running smoothly and cheaply.