(2024-10-13, 10:54 PM)Laird Wrote: OK, but then we also forget about relevance to the argument, because the argument relies on proximity.
That doesn't sound right, unless n - k data points (protein foldings) are identical with some other data point, which I don't think you'd suggest is the case here. [Edit: OK, but being more charitable, you probably don't intend that the representations are identical. I think I see what you mean.]
You seem to be putting up a straw man here. Maybe you can cite something relevant from the DI and explain how this AI result affects it.
Maybe it’s a straw man, but it could suggest that fewer semi-random walk iterations are needed to arrive at a biologically functional protein, given the constraints imposed by protein folding and natural selection.
There are others (who actually know more about biology than I do) who seem to make similar inquiries.
Quote:The recent development of artificial intelligence provides us with new and powerful tools for studying the mysterious relationship between organism evolution and protein evolution.
Quote:just as thermodynamic laws and collective order can emerge from the random motions of molecules, it may be possible to discover a “collective” trend consistent with the increase of organismal complexity
https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9550990/
Quote:This part of our research I find particularly exciting. When we want to go back in time to look at evolution, the way we commonly do this is to compare the sequences between proteins in different species. By doing that we can try to guess what that sequence looked like in the evolutionary past.https://deepmind.google/discover/blog/tr...n-of-life/