Every data team is being asked the same question right now: how do we know our AI features are working? Most don't have a good answer. The tooling isn't there and the old playbooks for measurement don't map cleanly onto AI-driven products.
That's exactly why we built the Analytics & Data Science track at AI Council 2026. Curated by
@imightbemary, Head of Data at
@_hex_tech, we’re bringing together practitioners who are building the new playbooks in real time. Here's the lineup:
@pablankley, CTO & Co-Founder at
@zenlytic - argues that semantic layers are now capping your agent's potential, and shares what to build instead for agents that gather business context dynamically.
@isidoremiller, AI Engineer at Hex - exposes why current analytics benchmarks are fundamentally broken, and proposes evals that test what analysts actually do: learn a messy warehouse over time, not answer a frozen question.
@JillACates, Senior Data Scientist at
@Shopify - introduces a practical framework for AI attribution: measuring not just whether users engaged with an AI feature, but the degree to which AI shaped the final result.
Avik Basu, Staff Data Scientist at
@Intuit - bridges prediction and decision-making with uplift modeling, showing how to estimate the causal effect of interventions at the individual level to target the right people.
Andrew Zigler, GTM Engineer & Podcast Host at
@LinearB_Inc / Dev Interrupted - draws on five pedagogical frameworks from education research that map directly to eval design patterns for AI agents.
@seanhughes92, Co-Founder at
@evidence_dev - runs a thought experiment on what analytics looks like in an AI-first world, where data teams shift from building dashboards to managing systems of AI agents.
A huge thank you to Katie for curating this track!
Join us SF, May 12-14! 🎟️
aicouncil.com