I've been having a look at some interesting videos and papers made by Ramin Hasani.
The subject concerns liquid time-constant neural networks, which are based on reverse-engineering how neurons work in
C. elegans.
They are apparently incredibly effective at processing tasks which are both dynamic and occur over a varying time-series. You can see in the video how well it processes info related to autonomous driving compared to our current neural networks.
I'm thinking that Zero-K is a perfect candidate for this sort of neural network, with its dynamic, shifting gameplay. What are your thoughts on this coincidence? If we choose to embrace this technology, how could we apply this to make Zero-K a better experience?
Paper:
https://arxiv.org/pdf/2006.04439.pdfVideo: