Click any tag below to further narrow down your results
Links
This article explores a shift in data modeling from rigid orthodoxies to a more pragmatic approach. It emphasizes starting with simple structures, adding complexity only when necessary, and leveraging semantic clarity for flexibility across different modeling techniques.
The article discusses the challenges and strategies of agentic data modeling in analytics, emphasizing the need for three key pillars: semantics for understanding, speed for rapid verification, and stewardship for governance. By integrating these elements, businesses can effectively leverage AI agents to enhance data insights while maintaining accuracy and trust.