English

LogQA: Question Answering in Unstructured Logs

Networking and Internet Architecture 2023-03-22 v1

Abstract

Modern systems produce a large volume of logs to record run-time status and events. System operators use these raw logs to track a system in order to obtain some useful information to diagnose system anomalies. One of the most important problems in this area is to help operators find the answers to log-based questions efficiently and user-friendly. In this work, we propose LogQA, which aims at answering log-based questions in the form of natural language based on large-scale unstructured log corpora. Our system presents the answer to a question directly instead of returning a list of relevant snippets, thus offering better user-friendliness and efficiency. LogQA represents the first approach to solve question answering in lod domain. LogQA has two key components: Log Retriever and Log Reader. Log Retriever aims at retrieving relevant logs w.r.t. a given question, while Log Reader is responsible for inferring the final answer. Given the lack of a public dataset for log questing answering, we manually labelled a QA dataset of three open-source log corpus and will make them publicly available. We evaluated our proposed model on these datasets by comparing its performance with 6 other baseline methods. Our experimental results demonstrate that LogQA has outperformed other baseline methods.

Keywords

Cite

@article{arxiv.2303.11715,
  title  = {LogQA: Question Answering in Unstructured Logs},
  author = {Shaohan Huang and Yi Liu and Carol Fung and Jiaxing Qi and Hailong Yang and Zhongzhi Luan},
  journal= {arXiv preprint arXiv:2303.11715},
  year   = {2023}
}
R2 v1 2026-06-28T09:25:53.829Z