OPPerTune: Post-Deployment Configuration Tuning of Services Made Easy

NSDI 2024 |

Published by USENIX | Organized by USENIX

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Real-world application deployments have hundreds of interdependent configuration parameters, many of which significantly influence performance and efficiency. With today’s complex and dynamic services, operators need to continuously monitor and set the right configuration values (configuration tuning) well after a service is widely deployed. This is challenging since experimenting with different configurations post-deployment may reduce application performance or cause disruptions. While state-of-the-art ML approaches do help to automate configuration tuning, they do not fully address the multiple challenges in end-to-end configuration tuning of deployed applications.

This paper presents OPPerTune, a service that enables configuration tuning of applications in deployment at Microsoft. OPPerTune reduces application interruptions while maximizing the performance of deployed applications as and when the workload or the underlying infrastructure changes. It automates three essential processes that facilitate post-deployment configuration tuning: (a) determining which configurations to tune, (b) automatically managing the scope at which to tune the configurations, and (c) using a novel reinforcement learning algorithm to simultaneously and quickly tune numerical and categorical configurations, thereby keeping the overhead of configuration tuning low. We deploy OPPerTune on two enterprise applications in Microsoft Azure’s clusters. Our experiments show that OPPerTune reduces the end-to-end P95 latency of microservice applications by more than 50% over expert configuration choices made ahead of deployment. The code and datasets used are made available at https://aka.ms/OPPerTune (opens in new tab).

 

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OPPerTune

janvier 19, 2024

OPPerTune is a framework that enables configuration tuning of applications, including those in live deployment. It reduces application interruptions while maximizing the performance of the application as and when the workload or the underlying infrastructure changes. It automates three essential processes that facilitate post-deployment configuration tuning.