Charles Roques-Carmes, a Science Fellow at Stanford University, is interviewed by Yuval Boger. They discuss his work on using optical parametric oscillators as a form of random number generator with controllable bias. He elaborates on the potential applications of this technology in trainable randomness for Bayesian neural networks and logistics planning, previews the next steps for this research, and much more.
Fler avsnitt av The Superposition Guy's Podcast
Visa alla avsnitt av The Superposition Guy's PodcastThe Superposition Guy's Podcast med Yuval Boger finns tillgänglig på flera plattformar. Informationen på denna sida kommer från offentliga podd-flöden.
