Working with pretrained models implemented in FPGAs for particle identification and tracking. It’s much faster and exactly as accurate. ¯\_(ツ)_/¯
Run, the butlerian jihad is already going your way.
The actual model required for general purpose likely lies beyond the range of petabytes of memory.
These models are using gigabytes and the trend indicates its exponential. A couple more gigabytes isn’t going to cut it. Layers cannot expand the predictive capabilities without increasing the error. I’m sure a proof of that will be along within in the next few years.
“Come on man, I just need a couple more pets of your data and I will totally be able to predict you something useful!”.
It’s capacitors flip polarity in anticipation.“I swear man! It’s only a couple of orders of magnitude more, man! And all your dreams will come true. I’m sure I’ll service you right!”
Well if it needs it, right?
Source?
Hahahahaha I meant for the statistics, but I appreciate ya!
“There is no free lunch.”, is a saying in ML research.
That’s just a saying.
GET YOUR SHIT TOGETHER, CORAL
There’s plenty of stuff where ML algorithms the state of the art. For example the raw data from nanopore DNA sequencing machines is extremely noisy and ML algorithms clean it up with much less error than the Markov chains used in years previous.
For the meme? The Walking Dead. For the content? No idea.
It is not even faster usually.
And if it is faster, it just converges to the wrong answer faster
A lot of new tech is not as efficient or equally so at the get go. Learning how to properly implement and utilize it is part of the process.
Right now we are just throwing raw computing power in ML format at it. As soon as it catches and shows a little promise in an area we can focus and refine. Sometimes you need to use the shotgun to see the rabbits ya know?
Ai sucks ass, stop using it
It doesn’t. It’s just overhyped.
Pretty much the only thing it’s even remotely good for is as a toy.
Coral*
So what you’re saying, Dad, is it’s nascent and already faster? Gotcha.