针对网络服务的用户驱动的云干扰缓解

Joydeep Mukherjee, Diwakar Krishnamurthy
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引用次数: 3

摘要

网络服务,如视频流服务,越来越多地部署在公共云平台上。此类服务通常采用水平扩展,其中一组资源实例(例如虚拟机)处理传入的工作负载。此类服务的响应时间经常受到干扰的影响,即属于多个云订阅者的资源实例之间争用共享云资源。大多数商业云平台不支持检测干扰和减轻其影响的内置机制。本文概述了一种称为PRIMA的解决方案,通过部署这种平台的用户,即网络服务运营商,即使面对工作量波动和干扰,也能确保满足指定的最终用户响应时间目标。PRIMA使用自动化和受控的性能测试来构建模型,这些模型捕获工作负载和干扰对服务所使用的每个资源实例的响应时间的共同影响。PRIMA通过在运行时使用这些模型来控制系统中的实例数量和这些实例之间的负载分布,从而使系统适应不断变化的工作负载和干扰条件。与文献中现有的面向订阅者的干扰缓解技术不同,PRIMA提供了一种明确的机制来保证分配给服务的每个资源实例都满足指定的响应时间阈值。此外,与这些方法相比,PRIMA可以帮助操作员避免使用不必要的实例来处理观察到的工作负载和干扰。
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Subscriber-Driven Cloud Interference Mitigation for Network Services
Network services, e.g., video streaming services, are increasingly being deployed on public cloud platforms. Such services often employ horizontal scaling where a group of resource instances, e.g., virtual machines (VMs), handle the incoming workload. The response time of such services is often affected by interference, i.e., contention among resource instances belonging to multiple cloud subscribers for shared cloud resources. Most commercial cloud platforms do not support built-in mechanisms to detect interference and mitigate its impact. This paper outlines a solution called PRIMA that subscribers of such platforms, i.e., network service operators, can deploy to ensure a specified end user response time target is met even in the face of fluctuations in workload and interference. PRIMA uses automated and controlled performance tests to build models that capture the joint impact of workload and interference on the response time of each resource instance employed by a service. PRIMA adapts the system to changing workload and interference conditions by using these models at runtime to control the number of instances in the system and the distribution of load among these instances. Unlike existing subscriber-oriented interference mitigation techniques in literature, PRIMA provides an explicit mechanism to guarantee that the specified response time threshold is met at every resource instance assigned to a service. Furthermore, in contrast to these approaches PRIMA can help an operator avoid using more instances than necessary for handling the observed workload and interference.
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