Quality of Service (QoS) Modelling in Federated Cloud Computing
Kun Ma, Antoine Bagula, Olasupo Ajayi

TL;DR
This paper introduces models and a differential evolution-based policy to improve QoS in federated cloud computing, addressing resource allocation and migration challenges in cooperative and competitive settings.
Contribution
It presents a multi-QoS task allocation model, a VM migration model, and a novel DE-based binding policy tailored for federated cloud environments.
Findings
Improved QoS performance with proposed models and policies.
Advantages of mixed cooperation and competition in resource management.
Enhanced resource utilization and task scheduling efficiency.
Abstract
Building around the idea of a large scale server infrastructure with a potentially large number of tailored resources, which are capable of interacting to facilitate the deployment, adaptation, and support of services, cloud computing needs to frequently reschedule and manage various application tasks in order to accommodate the requests of a wide range and number of users. One of the challenges of cloud computing is to support and manage Quality-of-Service (QoS) by designing efficient techniques for the allocation of tasks between users and the cloud virtual resources, as well as assigning virtual resources to the cloud physical resources. The migration of virtual resources across physical resources is another challenge that requires considerable attention; especially in federated cloud computing environments wherein, providers might be willing to offer their unused resources as a…
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Taxonomy
TopicsCloud Computing and Resource Management · IoT and Edge/Fog Computing · Caching and Content Delivery
