虚拟环境下基于协同模糊强化学习的自适应服务性能控制

Olumuyiwa Ibidunmoye, M. H. Moghadam, Ewnetu Bayuh Lakew, E. Elmroth
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引用次数: 8

摘要

在不牺牲资源效率的情况下,设计有效的控制机制来满足不断变化的工作负载需求方面的严格性能要求,仍然是云基础设施中的一个挑战。一种流行的方法是通过自动缩放机制提供细粒度的资源,这种机制依赖于基于阈值的自适应规则或复杂的排队/控制理论模型。虽然在设计时很难指定最佳阈值规则,但为大量服务推断精确的性能模型更具挑战性。最近,强化学习被应用于解决这一挑战。然而,这种方法需要许多学习试验才能在开始时和操作条件变化时稳定下来,从而限制了它们在动态工作负载下的应用。为此,我们从两个方面扩展了标准的强化学习方法:a)我们将系统状态表述为模糊空间;b)利用一组协作智能体并行探索多个模糊状态以加快学习速度。通过在一个真实的虚拟测试平台上的多次实验,我们证明了我们的方法收敛速度快,在没有显式服务模型的情况下能够高效地满足性能目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Service Performance Control using Cooperative Fuzzy Reinforcement Learning in Virtualized Environments
Designing efficient control mechanisms to meet strict performance requirements with respect to changing workload demands without sacrificing resource efficiency remains a challenge in cloud infrastructures. A popular approach is fine-grained resource provisioning via auto-scaling mechanisms that rely on either threshold-based adaptation rules or sophisticated queuing/control-theoretic models. While it is difficult at design time to specify optimal threshold rules, it is even more challenging inferring precise performance models for the multitude of services. Recently, reinforcement learning have been applied to address this challenge. However, such approaches require many learning trials to stabilize at the beginning and when operational conditions vary thereby limiting their application under dynamic workloads. To this end, we extend the standard reinforcement learning approach in two ways: a) we formulate the system state as a fuzzy space and b) exploit a set of cooperative agents to explore multiple fuzzy states in parallel to speed up learning. Through multiple experiments on a real virtualized testbed, we demonstrate that our approach converges quickly, meets performance targets at high efficiency without explicit service models.
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