nah, I think its still science, I just think we are starting to find a stop to the hype of CNNs. There are many applications where it simply can not do the job, or not knowing how it did the job is unnacetable
again, now that I work in PET, I need to knwo 100% that a tumour in the image has not been either removed or alucinated
Optionally. You start with throwing insane amounts of CPU power to mix and match all sorts of materials you can think of. It's a streamroller of computational power using DFT (as in density functional theory) for everything. Then you take that big-ass data you have and try to reach conclusions or predictions. ML is often involved in this last step.
the dude who made tqdm made docker images of the software we use. We barely understand the software we code, so imagine how little we understand docker
@AnderBiguri They are using ML now to reduce the computational complexity of physics simulations. Instead of making the grid finer, they "learn" what happens at the boundaries of larger grid boxes if you were to simulate the fine detail. Seems to work too. Bizarre.
Do you guys have Octave on Linux, with the Image Package? (@AndrasDeak maybe?) If so, can you tell me if bwlabeln(1) gives an error? It does here (Octave 4.2.2 on Linux), but not on my Octave 4.2.2 on Windows
octave:4> version
ans = 6.1.1~hg.2020.12.27-1
octave:5> pkg load image
error: package image is not installed
error: called from
load_packages at line 47 column 7
pkg at line 588 column 7
octave:4> version
ans = 6.1.1~hg.2020.12.27-1
octave:5> pkg load image
error: package image is not installed
error: called from
load_packages at line 47 column 7
pkg at line 588 column 7
I'm not that proficient with Github. Also, Octave seems to use this other thing called Mercurial. I only wanted to know how version-specific the bug was, to assess whether I should patch it for MATL or not. I think I'll leave it unpatched for now
The strange thing is, it works on Octave 4.2.2 in my Windows 10, but not on the same Octave version in TIO's Fedora