AI Agents 相关度: 9/10

Nomad: Autonomous Exploration and Discovery

Bokang Jia, Samta Kamboj, Satheesh Katipomu, Seung Hun Han, Neha Sengupta, Andrew Jackson
arXiv: 2603.29353v1 发布: 2026-03-31 更新: 2026-03-31

AI 摘要

Nomad系统通过探索图谱自主发现数据中的洞见,并生成可信报告。

主要贡献

  • 提出exploration-first架构
  • 构建显式探索图谱
  • 提出自主发现系统的评估框架

方法论

构建探索图谱并系统遍历,使用探索代理和验证器生成高质量报告。

原文摘要

We introduce Nomad, a system for autonomous data exploration and insight discovery. Given a corpus of documents, databases, or other data sources, users rarely know the full set of questions, hypotheses, or connections that could be explored. As a result, query-driven question answering and prompt-driven deep-research systems remain limited by human framing and often fail to cover the broader insight space. Nomad addresses this problem with an exploration-first architecture. It constructs an explicit Exploration Map over the domain and systematically traverses it to balance breadth and depth. It generates and selects hypotheses and investigates them with an explorer agent that can use document search, web search, and database tools. Candidate insights are then checked by an independent verifier before entering a reporting pipeline that produces cited reports and higher-level meta-reports. We also present a comprehensive evaluation framework for autonomous discovery systems that measures trustworthiness, report quality, and diversity. Using a corpus of selected UN and WHO reports, we show that \nomad{} produces more trustworthy and higher-quality reports than baselines, while also producing more diverse insights over several runs. Nomad is a step toward autonomous systems that not only answer user questions or conduct directed research, but also discover which questions, research directions, and insights are worth surfacing in the first place.

标签

自主探索 知识发现 报告生成

arXiv 分类

cs.AI