Submitted by mrx-ai t3_11zi2uq in Futurology
Pinterest improved it's recommendation system by 150%.
Google Maps improved its ETA predictions by up to 50%.
MIT discovered a novel antibiotic, Halicin.
Baker Lab invented a protein design paradigm that solves 100% more benchmark problems than its predecessor.
All of these seemingly disparate advances have one thing in common - Graph Neural Networks.
GNNs are type of neural network that have been quietly making rapid progress for several years, driven by a relatively small team of dedicated researchers.
While Diffusion Models, like those which have been powering DALL-E 2 and Stable Diffusion, have been in the limelight, GNNs have quietly become the dark horse behind a wealth of exciting discoveries and innovations.
Could GNNs be the future of AI?
DauntingPrawn t1_jddtbgn wrote
Not on their own. We know the human brain has different processing centers, and I think AGI is going to require activation and routing networks to invoke specific functional networks, ie image processing, language processing, etc. So I could see graph networks to work out simulated thought processing of inputs that produces probabilistic routes through those functional networks, with a sort of reality filter or expectation filter -- maybe a Boltzmann type of energy activation -- to choose from those results.