An Adaptive Reinforcement Learning Approach to Policy-Driven Autonomic Management

R. Bahati, M. Bauer
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引用次数: 7

Abstract

Policies have been explored as a basis for autonomic management.  In many cases, there is a need for policy-driven autonomic systems to have the ability to adapt the use of policies based, for example, on past experience, in order to deal with human error or the unpredictability in workload characteristics.  This suggests that learning approaches can offer significant potential benefits in providing autonomic systems with the ability to identify preferred uses of existing policies or learn new policies. In this context, we have explored the use of Reinforcement Learning in adaptive policy-driven autonomic management. A key question is whether a model "learned'' from the use of one set of policies could be applied to another set of "similar'' policies, or whether a new model must be learned from scratch as a result of changes to an active set of policies. In this paper, we illustrate how a Reinforcement Learning model might be adapted to accommodate such changes.
策略驱动自治管理的自适应强化学习方法
已经探讨了作为自主管理基础的政策。在许多情况下,需要策略驱动的自治系统能够根据过去的经验调整策略的使用,以便处理人为错误或工作负载特征中的不可预测性。这表明,学习方法可以提供显著的潜在好处,为自主系统提供识别现有策略的首选用途或学习新策略的能力。在此背景下,我们探索了强化学习在自适应策略驱动的自主管理中的应用。一个关键的问题是,从一组策略的使用中“学到”的模型是否可以应用于另一组“类似”的策略,或者是否必须由于对一组活动策略的更改而从头开始学习新模型。在本文中,我们说明了如何调整强化学习模型来适应这种变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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