AI Navigate

Agentic Control Center for Data Product Optimization

arXiv cs.AI / 3/12/2026

💬 OpinionIdeas & Deep AnalysisModels & Research

Key Points

  • The paper proposes a system of specialized AI agents that automate data product improvement within a continuous optimization loop.
  • It surfaces questions, monitors multi-dimensional quality metrics, and supports human-in-the-loop controls to balance automation with trust and oversight.
  • By transforming data into observable and refinable assets, the approach reduces dependence on domain experts for crafting supporting assets.
  • The work discusses implications for data-product development, governance, and the integration of agentic control in data systems.

Abstract

Data products enable end users to gain greater insights about their data by providing supporting assets, such as example question-SQL pairs which can be answered using the data or views over the database tables. However, producing useful data products is challenging, and typically requires domain experts to hand-craft supporting assets. We propose a system that automates data product improvement through specialized AI agents operating in a continuous optimization loop. By surfacing questions, monitoring multi-dimensional quality metrics, and supporting human-in-the-loop controls, it transforms data into observable and refinable assets that balance automation with trust and oversight.