Personalized Service Delivery using Reinforcement Learning in Fog and Cloud Environment

C. Dehury, S. Srirama
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引用次数: 8

Abstract

The ability to fulfil the resource demand in runtime is encouraging the businesses to migrate to cloud. Recently, to provide real-time cloud services and to save network resources, fog computing is introduced. To further improve the quality of service in delivery process, Artificial Intelligence is being applied extensively. However, the state-of-the-art in this regard is still immature as it mainly focuses at either fog or cloud. To address this issue, a novel reinforcement learning-based personalized service delivery (RLPSD) mechanism is proposed in this paper, which allows the service provider to combine the fog and cloud environments, while providing the service. RLPSD distributes the user's service requests between fog and cloud, considering the users' constraints (e.g. the distance from fog), thus resulting in personalized service delivery. The proposed RLPSD algorithm is implemented and evaluated in terms of its success rate, percentage of service requests' distribution, learning rate, discount factor, etc.
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在雾和云环境中使用强化学习的个性化服务交付
在运行时满足资源需求的能力鼓励企业迁移到云。近年来,为了提供实时云服务和节省网络资源,引入了雾计算。为了进一步提高交付过程中的服务质量,人工智能正在被广泛应用。然而,这方面的最新技术仍然不成熟,因为它主要集中在雾或云上。为了解决这一问题,本文提出了一种新的基于强化学习的个性化服务交付(RLPSD)机制,该机制允许服务提供商在提供服务的同时结合雾和云环境。RLPSD在雾和云之间分配用户的服务请求,考虑用户的约束条件(如与雾的距离),从而实现个性化的服务交付。本文从成功率、服务请求分布百分比、学习率、折现系数等方面对RLPSD算法进行了实现和评价。
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