Adaptive Service Management in Mobile Cloud Computing by Means of Supervised and Reinforcement Learning

被引:0
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作者
Piotr Nawrocki
Bartlomiej Sniezynski
机构
[1] AGH University of Science and Technology,Department of Computer Science, Faculty of Computer Science, Electronics and Telecommunications
关键词
Machine learning; Optimization; Handheld device; Internet-based computing;
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摘要
Since the concept of merging the capabilities of mobile devices and cloud computing is becoming increasingly popular, an important question is how to optimally schedule services/tasks between the device and the cloud. The main objective of this article is to investigate the possibilities for using machine learning on mobile devices in order to manage the execution of services within the framework of Mobile Cloud Computing. In this study, an agent-based architecture with learning possibilities is proposed to solve this problem. Two learning strategies are considered: supervised and reinforcement learning. The solution proposed leverages, among other things, knowledge about mobile device resources, network connection possibilities and device power consumption, as a result of which a decision is made with regard to the place where the task in question is to be executed. By employing machine learning techniques, the agent working on a mobile device gains experience in determining the optimal place for the execution of a given type of task. The research conducted allowed for the verification of the solution proposed in the domain of multimedia file conversion and demonstrated its usefulness in reducing the time required for task execution. Using the experience gathered as a result of subsequent series of tests, the agent became more efficient in assigning the task of multimedia file conversion to either the mobile device or cloud computing resources.
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页码:1 / 22
页数:21
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