A deep reinforcement learning-based algorithm for reliability-aware multi-domain service deployment in smart ecosystems

被引:0
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作者
Godfrey Kibalya
Joan Serrat
Juan-Luis Gorricho
Dorothy Okello
Peiying Zhang
机构
[1] Universitat Politecnica de Catalunya,Department of Network Engineering
[2] Makerere University,Department of Electrical and Computer Engineering
[3] China University of Petroleum (East China),College of Computer Science and Technology
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关键词
Multi-domain orchestration; Service function chaining; Service reliability; QoS embedding; Multi-attribute embedding;
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摘要
The transition towards full network virtualization will see services for smart ecosystems including smart metering, healthcare and transportation among others, being deployed as Service Function Chains (SFCs) comprised of an ordered set of virtual network functions. However, since such services are usually deployed in remote cloud networks, the SFCs may transcend multiple domains belonging to different Infrastructure Providers (InPs), possibly with differing policies regarding billing and Quality-of-service (QoS) guarantees. Therefore, efficiently allocating the exhaustible network resources to the different SFCs while meeting the stringent requirements of the services such as delay and QoS among others, remains a complex challenge, especially under limited information disclosure by the InPs. In this work, we formulate the SFC deployment problem across multiple domains focusing on delay constraints, and propose a framework for SFC orchestration which adheres to the privacy requirements of the InPs. Then, we propose a reinforcement learning (RL)-based algorithm for partitioning the SFC request across the different InPs while considering service reliability across the participating InPs. Such RL-based algorithms have the intelligence to infer undisclosed InP information from historical data obtained from past experiences. Simulation results, considering both online and offline scenarios, reveal that the proposed algorithm results in up to 10% improvement in terms of acceptance ratio and provisioning cost compared to the benchmark algorithms, with up to more than 90% saving in execution time for large networks. In addition, the paper proposes an enhancement to a state-of-the-art algorithm which results in up to 5% improvement in terms of provisioning cost.
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页码:23795 / 23817
页数:22
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