Edge Federation: Towards an Integrated Service Provisioning Model
February 25, 2019 Β· Declared Dead Β· π IEEE/ACM Transactions on Networking
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Authors
Xiaofeng Cao, Guoming Tang, Deke Guo, Yan Li, Weiming Zhang
arXiv ID
1902.09055
Category
cs.NI: Networking & Internet
Citations
83
Venue
IEEE/ACM Transactions on Networking
Last Checked
4 months ago
Abstract
Edge computing is a promising computing paradigm for pushing the cloud service to the network edge. To this end, edge infrastructure providers (EIPs) need to bring computation and storage resources to the network edge and allow edge service providers (ESPs) to provision latency-critical services to users. Currently, EIPs prefer to establish a series of private edge-computing environments to serve specific requirements of users. This kind of resource provisioning mechanism severely limits the development and spread of edge computing for serving diverse user requirements. To this end, we propose an integrated resource provisioning model, named edge federation, to seamlessly realize the resource cooperation and service provisioning across standalone edge computing providers and clouds. To efficiently schedule and utilize the resources across multiple EIPs, we systematically characterize the provisioning process as a large-scale linear programming (LP) problem and transform it into an easily solved form. Accordingly, we design a dynamic algorithm to tackle the varying service demands from users. We conduct extensive experiments over the base station networks in Toronto city. Compared with the existing fixed contract model and multihoming model, edge federation can reduce the overall cost of EIPs by 23.3% to 24.5%, and 15.5% to 16.3%, respectively.
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