Annual Conference of KIPS (한국정보처리학회:학술대회논문집)
- 2016.10a
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- Pages.114-116
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- 2016
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- 2005-0011(pISSN)
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- 2671-7298(eISSN)
DOI QR Code
Design of Machine Learning based Smart Service Abstraction Layer for Future Network Provisioning
미래 네트워크 제공을 위한 기계 학습 기반 스마트 서비스 추상화 계층 설계
- Vu, Duc Tiep (Dept. of Electronics and Computer Engineering, Chonnam National University) ;
- N., Gde Dharma (Dept. of Electronics and Computer Engineering, Chonnam National University) ;
- Kim, Kyungbaek (Dept. of Electronics and Computer Engineering, Chonnam National University) ;
- Choi, Deokjai (Dept. of Electronics and Computer Engineering, Chonnam National University)
- Published : 2016.10.27
Abstract
Recently, SDN and NFV technology have been developed actively and provide enormous flexibility of network provisioning. The future network services would generally involve many different types of services such as hologram games, social network live streaming videos and cloud-computing services, which have dynamic service requirements. To provision networks for future services dynamically and efficiently, SDN/NFV orchestrators must clearly understand the service requirements. Currently, network provisioning relies heavily on QoS parameters such as bandwidth, delay, jitter and throughput, and those parameters are necessary to describe the network requirements of a service. However it is often difficult for users to understand and use them proficiently. Therefore, in order to maintain interoperability and homogeneity, it is required to have a service abstraction layer between users and orchestrators. The service abstraction layer analyzes ambiguous user's requirements for the desired services, and this layer generates corresponding refined services requirements. In this paper, we present our initial effort to design a Smart Service Abstraction Layer (SmSAL) for future network architecture, which takes advantage of machine learning method to analyze ambiguous and abstracted user-friendly input parameters and generate corresponding network parameters of the desired service for better network provisioning. As an initial proof-of-concept implementation for providing viability of the proposed idea, we implemented SmSAL with a decision tree model created by learning process with previous service requests in order to generate network parameters related to various audio and video services, and showed that the parameters are generated successfully.
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