this post was submitted on 12 Sep 2024
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I work in computer science but not really anything to do with AI so I'm only adjacently knowledgeable about it. But my understanding is unfortunately, no not really. The problem would be that if you run a bunch of evolutions in parallel you just get a bunch of independent AIs, all with slightly different parameters but they're incapable of working together because they weren't evolved to work together, they were evolved independently.
In theory you could come up with some kind of file format that allowed for the transfer of AI between each cluster, but you'd probably spend as much time transferring AI as you saved by having multiple iterations run at the same time. It's n^n problem, where n is the number of AIs you have.
Genetic algorithms is a sort of broad category and there's certainly ways you could federate and parallelize. I think autoML basically applies this within the ML space (multiple trainings explore a solution topology and convergence progress is compared between epochs, with low performers dropping out). Keep in mind, you can also use a genetic algorithm to learn how to explore an old fashioned state tree.