I was noodling around recenctly with a future blog topic (multiresolution pyramids; stay tuned) when I was reminded of a recent addition to MATLAB: the function imtile, introduced in R2018b.... read more >>
Today between segfaults I got "Error in python:double free or corruption (!prev)" and this lead me to tensorflow bug reports that claim it has to do with the library that does malloc() D:
That link is an entire branch...I suspect there's more to the problem than that? Some entry point at least, when you're executing it and get a segfault?
Yes yes. It errors when running detest.py in TIGRE/Python. The code that errors (after being executed, the internal code runs) is in Python/tigre/Source/_Ax.pyx
from libc.stdlib cimport malloc, free
# Numpy must be initialized. When using numpy from C or Cython you must
# _always_ do that, or you will have segfaults
@AndrasDeak yeah you are right ah. It did not ocurr me to look there, I just recently started thinking that it may be due to malloc, and not a bug in the code. Im on it
@AndrasDeak but it is not, or something is not. the behavior is so unpredictable that I do not know anymore. But calling the Ax function without using the output will never error.
As I said I don't think there's anything special about imshow, other than perhaps it trying to get nontrivial stuff about the array. Shape, flags, stuff like that.
my point is that if you have freed memory and UB then it's an unstable mess
might be worth a temporary memory leak to check that
I don't think it should mess with it, but again, you have two indirections there and two frees where in the other non-segfault function you just have the one
Also, if you're going to return projections.swapaxes(1,2).copy(order='C') then why not create that copy first, and free the original arrays later? Also, shouldn't you free the memory of the data before returning, since you don't need the original array and you have a copy?
(which is to say you might have a memory leak in the current version)
> Note that the C-API functions for allocating memory on the Python heap are generally preferred over the low-level C functions above as the memory they provide is actually accounted for in Python’s internal memory management system. They also have special optimisations for smaller memory blocks, which speeds up their allocation by avoiding costly operating system calls.
As far as I can tell what you have should work. You allocate memory, set it, create an array that is a wrapper to that data and tell it that it also owns the data. When the array dies it should free the underlying memory. But the array should only die when the function returns, by which point the copy is already created...
Does cython have the equivalent of -C or --check bounds?
@AnderBiguri but if memory gets reshuffled relatively, then an out-of-bounds write will overwrite different parts of your code on different runs, hence potential for Heisenbug
To my understanding, it's for the cases you want to permute a matrix, perform some operation on it, then permute it back to what it was before, w/o having to rethink what the correct order of dimensions is
I am trying to find the area under the curve however I got very weird result. In the first picture, potentiostat calculates the peak area even higher than the total area of the trapz calculation. I tried abs() but no change, I could not find what is wrong here.
Has anyone seen the term 'non-existant' before? All I get from interwebz is 'common misspelling of nonexistent'; this paper I am reading from a couple of native speakers (Australians) uses it often in for terms in a recursion formula which are not (yet) available
Well the list comp will be created in its entirety, so it's simpler to get [0] from it. But you could swap the listcomp for a genexp and then you don't need iter. That's what I'd do.
and you can set a default in the next() call to handle an empty generator, which is not possible when indexing a listcomp
no the generator object itself is (key for key, value in self._searched_store.items() if value == child) which you can iterate over, or take items from it with next(), or call list() on it to consume it, etc. In other words, it's a lazy iterator.
I recently acquired a GPU, a graphics processing unit. It's called a GPU because such processors were originally intended to speed up graphics. But MATLAB uses it to speed up computation. Let's see how the gpuArray object benchmarks on my machine.... read more >>
Nice. You just disproved my comment. Apparently this is how Stack Overflow works. Dump your homework question and someone will answer it for you. You robbed OP of a chance to learn, and you made it harder for all of us to moderate this website. Thank you! — Cris Luengo53 secs ago
Too rough on the new guy? :)
@Dev-iL interesting. Now I won’t have to compute the inverse manually.