动态满足服务网格上多个服务的性能目标

Forough Shahab Samani, R. Stadler
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引用次数: 4

摘要

我们提出了一个框架,允许服务提供者在不同负载下实现端到端管理目标。动态控制动作由强化学习(RL)代理执行。我们的工作包括在实验室测试台上进行实验和评估,我们在Istio和Kubernetes平台支持的服务网格上实现了基本信息服务。我们研究了不同的管理目标,包括服务请求的端到端延迟界限、吞吐量目标和服务差异化。这些目标被映射到RL代理通过执行控制动作(即请求路由和请求阻塞)来学习优化的奖励函数上。我们不是在测试台上,而是在模拟器上计算控制策略,这将学习过程加快了几个数量级。在我们的方法中,系统模型是在测试台上学习的;然后将其用于实例化模拟器,从而为各种管理目标生成接近最优的控制策略。然后在测试台上使用不可见的负载模式评估学习到的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamically meeting performance objectives for multiple services on a service mesh
We present a framework that lets a service provider achieve end-to-end management objectives under varying load. Dynamic control actions are performed by a reinforcement learning (RL) agent. Our work includes experimentation and evaluation on a laboratory testbed where we have implemented basic information services on a service mesh supported by the Istio and Kubernetes platforms. We investigate different management objectives that include end-to-end delay bounds on service requests, throughput objectives, and service differentiation. These objectives are mapped onto reward functions that an RL agent learns to optimize, by executing control actions, namely, request routing and request blocking. We compute the control policies not on the testbed, but in a simulator, which speeds up the learning process by orders of magnitude. In our approach, the system model is learned on the testbed; it is then used to instantiate the simulator, which produces near-optimal control policies for various management objectives. The learned policies are then evaluated on the testbed using unseen load patterns.
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