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Recommending Root-Cause and Mitigation Steps for Cloud Incidents using Large Language Models

Toufique Ahmed, Supriyo Ghosh, Chetan Bansal, Thomas Zimmermann, Xuchao Zhang, Saravan Rajmohan

202394 citationsDOI

Abstract

Incident management for cloud services is a complex process involving several steps and has a huge impact on both service health and developer productivity. On-call engineers require significant amount of domain knowledge and manual effort for root causing and mitigation of production incidents. Recent advances in artificial intelligence has resulted in state-of-the-art large language models like GPT-3.x (both GPT-3.0 and GPT-3.5), which have been used to solve a variety of problems ranging from question answering to text summarization. In this work, we do the first large-scale study to evaluate the effectiveness of these models for helping engineers root cause and mitigate production incidents. We do a rigorous study at Microsoft, on more than 40,000 incidents and compare several large language models in zero-shot, fine-tuned and multi-task setting using semantic and lexical metrics. Lastly, our human evaluation with actual incident owners show the efficacy and future potential of using artificial intelligence for resolving cloud incidents.

Topics & Concepts

Automatic summarizationComputer scienceCloud computingVariety (cybernetics)Process (computing)Domain (mathematical analysis)Root (linguistics)Task (project management)Root causeDomain knowledgeArtificial intelligenceEngineeringSystems engineeringLinguisticsOperating systemPhilosophyReliability engineeringMathematical analysisMathematicsTopic ModelingSoftware System Performance and ReliabilityData Quality and Management