Episode Details

Back to Episodes
Episode 102 | Active Physical Intelligence Unleashed | Tara Javidi & Sam Bigdeli

Episode 102 | Active Physical Intelligence Unleashed | Tara Javidi & Sam Bigdeli

Episode 102 Published 10 months ago
Description

How do you get AI to seek the right data in the real world instead of drowning in all of it?


 In this episode, I sit down with Tara Javidi (UCSD professor and AI researcher) and Sam Bigdeli (repeat founder & former semiconductor supply‑chain exec), co-founders of Kav AI, to talk about “active physical intelligence”—hypothesis‑driven, curiosity‑led AI that hunts for the signals that matter in physical systems.

We cover:

  • Why passive, data-soaks-everything AI hits a wall in the physical world
  • Hypothesis-driven learning: letting models ask “what should I look at next?”
  • From oil & gas spills to structural failures—predicting the next “leak” like a language model predicts the next word
  • Handling massive, messy, multimodal sensor streams in real time (volume of context, not just length)
  • Interpretability when your model is deciding which sensor to query and why
  • What academia gets wrong (and right) about startups—and vice versa
  • The hardest part of moving from novelty-driven research to problem-driven product
  • How (and when) to disagree productively as co-founders

Links mentioned

🎙 Connect with me
LinkedIn – https://www.linkedin.com/in/greg-toroosian

Listen Now

Love PodBriefly?

If you like Podbriefly.com, please consider donating to support the ongoing development.

Support Us