|国家预印本平台
首页|An Empirical Study of Production Incidents in Generative AI Cloud Services

An Empirical Study of Production Incidents in Generative AI Cloud Services

An Empirical Study of Production Incidents in Generative AI Cloud Services

来源:Arxiv_logoArxiv
英文摘要

The ever-increasing demand for generative artificial intelligence (GenAI) has motivated cloud-based GenAI services such as Azure OpenAI Service and Amazon Bedrock. Like any large-scale cloud service, failures are inevitable in cloud-based GenAI services, resulting in user dissatisfaction and significant monetary losses. However, GenAI cloud services, featured by their massive parameter scales, hardware demands, and usage patterns, present unique challenges, including generated content quality issues and privacy concerns, compared to traditional cloud services. To understand the production reliability of GenAI cloud services, we analyzed production incidents from a leading GenAI cloud service provider spanning in the past four years. Our study (1) presents the general characteristics of GenAI cloud service incidents at different stages of the incident life cycle; (2) identifies the symptoms and impacts of these incidents on GenAI cloud service quality and availability; (3) uncovers why these incidents occurred and how they were resolved; (4) discusses open research challenges in terms of incident detection, triage, and mitigation, and sheds light on potential solutions.

Haoran Yan、Yinfang Chen、Minghua Ma、Ming Wen、Shan Lu、Shenglin Zhang、Tianyin Xu、Rujia Wang、Chetan Bansal、Saravan Rajmohan、Chaoyun Zhang、Dongmei Zhang

计算技术、计算机技术

Haoran Yan,Yinfang Chen,Minghua Ma,Ming Wen,Shan Lu,Shenglin Zhang,Tianyin Xu,Rujia Wang,Chetan Bansal,Saravan Rajmohan,Chaoyun Zhang,Dongmei Zhang.An Empirical Study of Production Incidents in Generative AI Cloud Services[EB/OL].(2025-04-11)[2025-05-11].https://arxiv.org/abs/2504.08865.点此复制

评论