Thanks everyone for joining our latest webinar with Number Station. Here is the replay!
Integrating Large Language Models (LLMs) into production-level data workflows presents both significant challenges and opportunities. In this talk, we’ll introduce Numbers Station, a platform that automates data analytics workflows using LLMs, Retrieval Augmented Generation (RAG) over a Knowledge Layer, and a customizable multi-agent architecture. We’ll start by discussing practical use cases for analytics, such as dashboard search, query generation, or analysis summarization into slide presentations. We’ll then delve into the methodologies for deploying LLMs within data analytics workflows, focusing on a detailed case study to build a SQL agent from the ground up. We will cover the architectural considerations necessary to support agent-based analytics, including the role of dynamic control flows and the importance of incorporating business context through a unified Knowledge Layer. This session aims to provide a deep technical insight into transforming theoretical AI frameworks into practical, scalable solutions that advance organizational data capabilities.