Xpert: Empowering Incident Management with Query Recommendations via Large Language Models
- Yuxuan Jiang ,
- Chaoyun Zhang ,
- Shilin He ,
- Zhihao Yang ,
- Minghua Ma ,
- Si Qin ,
- Yu Kang ,
- Yingnong Dang ,
- Saravan Rajmohan ,
- Qingwei Lin 林庆维 ,
- Dongmei Zhang
Large-scale cloud systems play a pivotal role in modern IT infrastructure. However, incidents occurring within these systems can lead to service disruptions and adversely affect user experience. To swiftly resolve such incidents, on-call engineers depend on crafting domain-specific language (DSL) queries to analyze telemetry data. However, writing these queries can be challenging and time-consuming. This paper presents a thorough empirical study on the utilization of queries of XQL, a DSL employed for incident management in a large-scale cloud management system at CompanyX. The findings obtained underscore the importance and viability of XQL queries recommendation to enhance incident management.
Building upon these valuable insights, we introduce Xpert, an end-to-end machine learning framework that automates XQL recommendation process. By leveraging historical incident data and large language models, Xpert generates customized XQL queries tailored to new incidents. Furthermore, Xpert incorporates a novel performance metric called Xcore, enabling a thorough evaluation of query quality from three comprehensive perspectives. We conduct extensive evaluations of Xpert, demonstrating its effectiveness in offline settings. Notably, we deploy Xpert in the real production environment of a large-scale incident management system in CompanyX, validating its efficiency in supporting incident management. To the best of our knowledge, this paper represents the first empirical study of its kind, and Xpert stands as a pioneering XQL recommendation framework designed for incident management.