To chomp on data using the rules of math and physics, to derive somthing new, add that "new" to the data set, iterate. Aka "learn".What definition of "learn" are you using?
The learn model for humans (in basic terms), K-12, college/university, Phd+
It can't be done with AI ML, classic catch-22, the limits boundary seperates humans from machines. AI ML shines in "evaluation" and "analysis" realms, same as what humans can do, just much much faster. AI Ml is also rooted in "positive" space, since a pic of white-noise with some blob in it is not a Cheetah.
I would still like to see the accuracy of the neural models are in classifying object type when evaluating say AI generated images. I guess if you made an AI model of say a Canon 50mm prime glass lens coupled to a cropped cmos sensor, then I suspect images made from that AI model will be hard to detect as fake. But that said, there's still limits there.
Some day, you'll be able to click the button that says "give me AI model for the Canon EOS R5 2023 model with a Canon 50mm prime lens #0570C002"
And each time you click that "give me model" button, the AI creating the AI model you get alters the model ever so slightly to accomodate the errors found in cmos image sensors and the errors in lens glass (add more error metrics as you see fit), this way every AI model downloaded for use will create non-identical images, just like real world variances between all Canon's set up that same exact way. In real physical space, if you own a Canon setup, all the images from that setup will typically all have some identifying errors that tie all the images back to that specific setup. But with the AI I mention, every image would appear to come from unique Camera's as long as you grab a newly generated AI model to use, this way no two images will ever appear to come from same "camera". Building a single AI model that in itself creates the errors needed, is still a single AI model, not as good.
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