
In this episode, Jure Leskovec, co-founder and chief scientist at Kumo and professor of computer science at Stanford, joins us to explore two fronts of his work: AI for science and relational deep learning. We begin with AI Virtual Cell, a multiscale effort to learn data-driven representations from proteins to cells to patients using single-cell RNA-seq data, protein language models like ESM, and structure models like AlphaFold—without hand-encoding biology. Jure then dives into relational deep learning, reframing enterprise databases as graphs and training neural networks directly on raw multi-table data. He explains Kumo’s Relational Foundation Model (RFM2), which performs in-context learning over subgraphs to make accurate predictions on new databases and tasks with no training, and how this approach benchmarks against RelBench and other multi-table datasets. We also discuss real-world deployments at companies like Reddit, DoorDash, and Coinbase, explainability via attention over tables and columns, integration with agentic systems, deployment options, and practical limitations. The complete show notes for this episode can be found at https://twimlai.com/go/768.
Podzilla Summary coming soon
Sign up to get notified when the full AI-powered summary is ready.
Free forever for up to 3 podcasts. No credit card required.

How to Find the Agent Failures Your Evals Miss with Scott Clark - #767

How to Engineer AI Inference Systems with Philip Kiely - #766

How Capital One Delivers Multi-Agent Systems with Rashmi Shetty - #765

The Race to Production-Grade Diffusion LLMs with Stefano Ermon - #764
Free AI-powered recaps of The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence) and your other favorite podcasts, delivered to your inbox.
Free forever for up to 3 podcasts. No credit card required.