Daily Arxiv

This is a page that curates AI-related papers published worldwide.
All content here is summarized using Google Gemini and operated on a non-profit basis.
Copyright for each paper belongs to the authors and their institutions; please make sure to credit the source when sharing.

Towards a Playground to Democratize Experimentation and Benchmarking of AI Agents for Network Troubleshooting

Created by
  • Haebom

Author

Zhihao Wang, Alessandro Cornacchia, Franco Galante, Carlo Centofanti, Alessio Sacco, Dingde Jiang

Outline

This paper presents the impact of recent research on applying artificial intelligence (AI), particularly large-scale language models (LLMs), to network configuration synthesis and automation of network diagnostics. This paper focuses on the application of AI agents to network problem solving, and details the need for a standardized, reproducible, and open benchmarking platform that enables building and evaluating AI agents with low operational effort.

Takeaways, Limitations

Takeaways: Demonstrates the utility of AI agents in solving network problems and emphasizes the importance of developing a standardized benchmarking platform, which can contribute to the advancement of AI-based network management technology.
Limitations: This study is preliminary and does not provide details on the implementation of specific AI agents or the design of a benchmarking platform. In addition, there is a lack of examination of generalizability to various network environments and problem types.
👍