Exploring GFlowNets and AI-Driven Material Discovery for Carbon Capture

Breaking Math Podcast

In this episode of Breaking Math, hosts Gabriel Hesch and Autumn Phaneuf dive into the cutting-edge world of Generative Flow Networks (GFlowNets) and their role in artificial intelligence and material science. The discussion centers on how GFlowNets are revolutionizing the discovery of new materials for carbon capture, offering a powerful alternative to traditional AI models. Learn about the mechanics of GFlowNets, their advantages, and the groundbreaking results in developing materials with enhanced CO2 absorption capabilities. The episode also explores the future potential of GFlowNets in AI-driven material discovery and beyond, emphasizing their transformative impact on carbon capture technology and sustainable innovation.

Become a patron of Breaking Math for as little as a buck a month

You can find the paper “Discovery of novel reticular materials for carbon dioxide capture using GFlowNets” by Cipcigan et al in Digital Discovery Journal by the Royal Society of Chemistry.

Follow Breaking Math on Twitter, Instagram, LinkedIn, Website, YouTube, TikTok

Follow Autumn on Twitter and Instagram

Follow Gabe on Twitter.

Become a guest here

email: breakingmathpodcast@gmail.com

Para escuchar episodios explícitos, inicia sesión.

Mantente al día con este programa

Inicia sesión o regístrate para seguir programas, guardar episodios y enterarte de las últimas novedades.

Elige un país o región

Africa, Oriente Medio e India

Asia-Pacífico

Europa

Latinoamérica y el Caribe

Estados Unidos y Canadá