OptScaler: A Collaborative Framework for Robust Autoscaling in the Cloud
Ding Zou, Wei Lu, Zhibo Zhu, Xingyu Lu, Jun Zhou, Xiaojin Wang, Kangyu, Liu, Haiqing Wang, Kefan Wang, Renen Sun

TL;DR
OptScaler is a novel collaborative autoscaling framework that combines proactive workload prediction with reactive real-time feedback, using optimization techniques to significantly reduce SLO violations in cloud environments.
Contribution
It introduces a hybrid autoscaling framework integrating proactive and reactive modules via an optimization component with MPC and chance constraints, improving robustness and performance.
Findings
Over 36% reduction in SLO violations.
Effective workload prediction model demonstrated.
Successful deployment at Alipay.
Abstract
Autoscaling is a critical mechanism in cloud computing, enabling the autonomous adjustment of computing resources in response to dynamic workloads. This is particularly valuable for co-located, long-running applications with diverse workload patterns. The primary objective of autoscaling is to regulate resource utilization at a desired level, effectively balancing the need for resource optimization with the fulfillment of Service Level Objectives (SLOs). Many existing proactive autoscaling frameworks may encounter prediction deviations arising from the frequent fluctuations of cloud workloads. Reactive frameworks, on the other hand, rely on realtime system feedback, but their hysteretic nature could lead to violations of stringent SLOs. Hybrid frameworks, while prevalent, often feature independently functioning proactive and reactive modules, potentially leading to incompatibility and…
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Taxonomy
TopicsCloud Computing and Resource Management · Caching and Content Delivery · Catalytic Processes in Materials Science
Methodstravel james
