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a self-adaptive approach to job scheduling in cloud computing environments
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نویسنده
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sheibanirad a. ,ashtiani m.
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منبع
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scientia iranica - 2024 - دوره : 31 - شماره : 5-D - صفحه:373 -387
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چکیده
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Due to its convenience and flexible services, cloud users have drastically increased during the past decade. manual configuration for the available resources makes the resource management process potentially error-prone. while optimal scheduling is an np-complete problem, it becomes more complicated due to other factors such as resource dynamicity and on-demand consumer applications’ requirements. in this research, we have used deep reinforcement learning (drl) as a sequential decision-making method for automatic resource management that changes its behavior to deal with environmental changes. the proposed approach uses the discrete soft actor-critic algorithm which is a model-free deep reinforcement learning algorithm. the proposed approach is compared to similar reinforcement learning-based automatic resource management researches using google’s dataset. results show that the proposed approach improves the slowdown and the balance of slowdown at least, 3 and 5 times in the left-bi-model, 4 and 3 times in the right-bi-model, 3 and 7 times in the normal-model, 4 and 2 times in the balanced-bi-model and 3 and 3 times using the google’s dataset.
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کلیدواژه
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cloud computing ,reinforcement learning ,job scheduling ,autonomicity ,soft actor-critic
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آدرس
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iran university of science and technology, cloud computing center, school of computer engineering, iran, iran university of science and technology, cloud computing center, school of computer engineering, iran
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پست الکترونیکی
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m_ashtiani@iust.ac.ir
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Authors
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