Abstract
Deciding where to handle services and tasks, as well as provisioning an adequate amount of computing resources for this handling, is a main challenge of edge computing systems. Moreover, latency-sensitive services constrain the type and location of edge devices that can provide the needed resources. When available resources are scarce there is a possibility that some resource allocation requests are denied.In this work, we propose the VioLinn system to tackle the joint problems of task placement, service placement, and edge device provisioning. Dealing with latency-sensitive services is achieved through proximity-aware algorithms that ensure the tasks are handled close to the end-user. Moreover, the concept of spare edge device is introduced to handle sudden load variations in time and space without having to continuously overprovision. Several spare device selection algorithms are proposed with different cost/performance tradeoffs.Evaluations are performed both in a Kubernetes-based testbed and using simulations and show the benefit of using spare devices for handling localized load spikes with higher quality of service (QoS) and lower computing resource usage. The study of the different algorithms shows that it is possible to achieve this increase in QoS with different tradeoffs against cost and performance.
Original language | English |
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Journal | ACM Transactions on Internet of Things |
Volume | 4 |
Issue number | 1 |
DOIs | |
Publication status | Published - 23 Feb 2023 |
Externally published | Yes |
Funding
The work at Linköping University was supported by CUGS national graduate school and ELLIIT strategic research area, and the IRISA collaboration by a mobility grant from Rennes Métropole.
Funders | Funder number |
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National Graduate School in Computer Science |