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A Comparison of Reinforcement Learning Techniques for Fuzzy Cloud Auto-Scaling

机译:模糊云自动扩展的强化学习技术比较

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A goal of cloud service management is to design self-adaptable auto-scaler to react to workload fluctuations and changing the resources assigned. The key problem is how and when to add/remove resources in order to meet agreed service-level agreements. Reducing application cost and guaranteeing service-level agreements (SLAs) are two critical factors of dynamic controller design. In this paper, we compare two dynamic learning strategies based on a fuzzy logic system, which learns and modifies fuzzy scaling rules at runtime. A self-adaptive fuzzy logic controller is combined with two reinforcement learning (RL) approaches: (i) Fuzzy SARSA learning FSL and (ii) Fuzzy Q-learning FQL. As an off-policy approach, Q-learning learns independent of the policy currently followed, whereas SARSA as an on-policy always incorporates the actual agent's behavior and leads to faster learning. Both approaches are implemented and compared in their advantages and disadvantages, here in the OpenStack cloud platform. We demonstrate that both auto-scaling approaches can handle various load traffic situations, sudden and periodic, and delivering resources on demand while reducing operating costs and preventing SLA violations. The experimental results demonstrate that FSL and FQL have acceptable performance in terms of adjusted number of virtual machine targeted to optimize SLA compliance and response time.
机译:云服务管理的目标是设计自适应的自动缩放器,以对工作负载波动反应并改变分配的资源。关键问题是如何以及何时添加/删除资源,以满足商定的服务级别协议。减少申请费用和保证服务级别协议(SLA)是动态控制器设计的两个关键因素。在本文中,我们基于模糊逻辑系统比较了两个动态学习策略,从而在运行时学习和修改模糊缩放规则。自适应模糊逻辑控制器与两种加固学习(RL)接近:(i)模糊SARSA学习FSL和(II)模糊Q学习FQL。作为一个违规方法,Q-Leaching学习独立于目前所遵循的政策,而Sarsa作为一项政策始终包含实际代理的行为并导致更快的学习。在OpenStack云平台中,这两种方法都实施并比较了它们的优缺点。我们证明,两种自动缩放方法都可以处理各种负载流量情况,突然和周期性,并在降低运营成本和防止SLA违规时提供资源。实验结果表明,FSL和FQL在针对优化SLA合规性和响应时间的调整后的虚拟机方面具有可接受的性能。

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