Back to Search Start Over

Lumos: A Library for Diagnosing Metric Regressions in Web-Scale Applications

Authors :
Pool, Jamie
Beyrami, Ebrahim
Gopal, Vishak
Aazami, Ashkan
Gupchup, Jayant
Rowland, Jeff
Li, Binlong
Kanani, Pritesh
Cutler, Ross
Gehrke, Johannes
Publication Year :
2020

Abstract

Web-scale applications can ship code on a daily to weekly cadence. These applications rely on online metrics to monitor the health of new releases. Regressions in metric values need to be detected and diagnosed as early as possible to reduce the disruption to users and product owners. Regressions in metrics can surface due to a variety of reasons: genuine product regressions, changes in user population, and bias due to telemetry loss (or processing) are among the common causes. Diagnosing the cause of these metric regressions is costly for engineering teams as they need to invest time in finding the root cause of the issue as soon as possible. We present Lumos, a Python library built using the principles of AB testing to systematically diagnose metric regressions to automate such analysis. Lumos has been deployed across the component teams in Microsoft's Real-Time Communication applications Skype and Microsoft Teams. It has enabled engineering teams to detect 100s of real changes in metrics and reject 1000s of false alarms detected by anomaly detectors. The application of Lumos has resulted in freeing up as much as 95% of the time allocated to metric-based investigations. In this work, we open source Lumos and present our results from applying it to two different components within the RTC group over millions of sessions. This general library can be coupled with any production system to manage the volume of alerting efficiently.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2006.12793
Document Type :
Working Paper