Inspiring Computing

Lazy Dynamics - Reactive Bayesian AI - Your Engine for Next Generation AI

May 03, 2024 Gareth Thomas Season 1 Episode 8
Lazy Dynamics - Reactive Bayesian AI - Your Engine for Next Generation AI
Inspiring Computing
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Inspiring Computing
Lazy Dynamics - Reactive Bayesian AI - Your Engine for Next Generation AI
May 03, 2024 Season 1 Episode 8
Gareth Thomas

In this episode, Albert recounts his journey from Nakhodka  Russia to the CEO of a Dutch company Lazy Dynamics.  He describes his academic trajectory from studying in St. Petersburg. To earning scholarship and master programs in Kyoto, Japan. There he focused on , developing driving aids for elderly drivers, but face challenges with system performances, leading him to pursue a PhD in Bayesian Inference. Albert explains Bayesian inference as a method for updating beliefs, about uncertain quantities based on new evidence. He discusses its applications and addressing uncertainty in complex systems like personalized. Just hearing it, the conversation touches on the differences between patient AI and reinforcement learning,  I'll but also introduces RxInfer and for an open source toolbox programmed in Julia designed to automate Bayesian Inference through reactive message passing. He emphasizes RxInfer and its efficiency in handling computational resources by processing information only when necessary.

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Show Notes

In this episode, Albert recounts his journey from Nakhodka  Russia to the CEO of a Dutch company Lazy Dynamics.  He describes his academic trajectory from studying in St. Petersburg. To earning scholarship and master programs in Kyoto, Japan. There he focused on , developing driving aids for elderly drivers, but face challenges with system performances, leading him to pursue a PhD in Bayesian Inference. Albert explains Bayesian inference as a method for updating beliefs, about uncertain quantities based on new evidence. He discusses its applications and addressing uncertainty in complex systems like personalized. Just hearing it, the conversation touches on the differences between patient AI and reinforcement learning,  I'll but also introduces RxInfer and for an open source toolbox programmed in Julia designed to automate Bayesian Inference through reactive message passing. He emphasizes RxInfer and its efficiency in handling computational resources by processing information only when necessary.

Support the Show.