RAPID: Enabling Fast Online Policy Learning in Dynamic Public Cloud Environments
This addresses the problem of resource contention for cloud service providers needing efficient resource sharing with strict QoS requirements, representing a novel method for a known bottleneck rather than an incremental improvement.
The paper tackles the challenge of fast online resource allocation policy learning in dynamic public cloud environments, where workloads are unknown and short-lived, by proposing RAPID, which learns stable policies in minutes (vs. hours in prior work) while improving QoS by 9.0x and best-effort workload performance by 19-43%.
Resource sharing between multiple workloads has become a prominent practice among cloud service providers, motivated by demand for improved resource utilization and reduced cost of ownership. Effective resource sharing, however, remains an open challenge due to the adverse effects that resource contention can have on high-priority, user-facing workloads with strict Quality of Service (QoS) requirements. Although recent approaches have demonstrated promising results, those works remain largely impractical in public cloud environments since workloads are not known in advance and may only run for a brief period, thus prohibiting offline learning and significantly hindering online learning. In this paper, we propose RAPID, a novel framework for fast, fully-online resource allocation policy learning in highly dynamic operating environments. RAPID leverages lightweight QoS predictions, enabled by domain-knowledge-inspired techniques for sample efficiency and bias reduction, to decouple control from conventional feedback sources and guide policy learning at a rate orders of magnitude faster than prior work. Evaluation on a real-world server platform with representative cloud workloads confirms that RAPID can learn stable resource allocation policies in minutes, as compared with hours in prior state-of-the-art, while improving QoS by 9.0x and increasing best-effort workload performance by 19-43%.