2020
DOI: 10.1109/access.2020.3022038
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Adaptive Service Function Chain Scheduling in Mobile Edge Computing via Deep Reinforcement Learning

Abstract: MEC (Mobile Edge Computing) provides both IT service environment and cloud computation on the edge of the network. This technology not only minimizes the end-to-end latency but also increases the efficiency of computing. Some latency-sensitive applications, such as cloud video, online game, and augmented reality, take advantage of the MEC system to provide fast and stable services. Several new network techniques, including the implementation of NFV (Network Function Virtualization), the placement of VNF (Virtu… Show more

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Cited by 18 publications
(8 citation statements)
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“…In MEC, service deployment at distributed servers is complicated by dynamics from free mobility and wireless channels. In [50], [51], [130], [131], with the aid of virtualized technology (e.g., SDN and NFV), service deployment was discussed, as shown in Table V. In [130], for an MEC system with multiple virtual network function (VNF) components, the SFC scheduling problem was formulated as the job-shop scheduling problem.…”
Section: Studies On Distributed Service 1) Complex Service Deploymentmentioning
confidence: 99%
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“…In MEC, service deployment at distributed servers is complicated by dynamics from free mobility and wireless channels. In [50], [51], [130], [131], with the aid of virtualized technology (e.g., SDN and NFV), service deployment was discussed, as shown in Table V. In [130], for an MEC system with multiple virtual network function (VNF) components, the SFC scheduling problem was formulated as the job-shop scheduling problem.…”
Section: Studies On Distributed Service 1) Complex Service Deploymentmentioning
confidence: 99%
“…In [50], [51], [130], [131], with the aid of virtualized technology (e.g., SDN and NFV), service deployment was discussed, as shown in Table V. In [130], for an MEC system with multiple virtual network function (VNF) components, the SFC scheduling problem was formulated as the job-shop scheduling problem. To complete a specific mobile device task, where to place the VNF and how to transmit a series of network function instances between microdata centers complicate conventional optimization.…”
Section: Studies On Distributed Service 1) Complex Service Deploymentmentioning
confidence: 99%
“…The VNF/SFC resource allocation approaches can be grouped into three main categories, theoretical games approaches [9], [35], linear programming variant approaches [10]- [12], the machine learning approaches [13], [14] and the heuristic approaches [15], [16].…”
Section: Related Workmentioning
confidence: 99%
“…However, the request arrival rate in this work does not considered stochastic and the RL is based on Q-Learning algorithm, which acts only on a set of specific fixed instance of the problem. Work in [14] models the SFC scheduling problem as a flexible job-shop scheduling problem with the objective to minimize the scheduling latency. Authors proposed a deep RL based on Q-Learning that gives the environment the advantage of performing adaptive scheduling.…”
Section: Related Workmentioning
confidence: 99%
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