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Top Ten Challenges Towards Agentic Neural Graph Databases

24 January 2025
Jiaxin Bai
Z. Wang
Yukun Zhou
Hang Yin
WeiZhi Fei
Qi Hu
Zheye Deng
Jiayang Cheng
Tianshi Zheng
Hong Ting Tsang
Y. Gao
Zhongwei Xie
Y. Li
Lixin Fan
Binhang Yuan
Wei Wang
Lei Chen
Xiaofang Zhou
Y. Song
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Abstract

Graph databases (GDBs) like Neo4j and TigerGraph excel at handling interconnected data but lack advanced inference capabilities. Neural Graph Databases (NGDBs) address this by integrating Graph Neural Networks (GNNs) for predictive analysis and reasoning over incomplete or noisy data. However, NGDBs rely on predefined queries and lack autonomy and adaptability. This paper introduces Agentic Neural Graph Databases (Agentic NGDBs), which extend NGDBs with three core functionalities: autonomous query construction, neural query execution, and continuous learning. We identify ten key challenges in realizing Agentic NGDBs: semantic unit representation, abductive reasoning, scalable query execution, and integration with foundation models like large language models (LLMs). By addressing these challenges, Agentic NGDBs can enable intelligent, self-improving systems for modern data-driven applications, paving the way for adaptable and autonomous data management solutions.

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