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Nov
7
comment Efficient & pythonic check for singular matrix
In numerical computing it is usually considered bad practice to explicitly calculate the inverse. In most cases it is much better to calculate the LU decomposition with scipy.linalg.lu_factor, then later you can solve it quickly for many vectors using scipy.linalg.lu_solve.
Nov
5
comment How to create a custom numpy dtype using cython
Is your reason for asking because you find writing cython simpler than writing C? I suspect that if it is possible (which I don't know), you will end up with code that is just as complex and messy as C, so there may not be any benefit.
Nov
5
comment Plotting a 2D Array with Matplotlib
I find when I have such a case, it's usually easiest to deliberately generate a test dataset with different x and y axis sizes. This will enable you to inspect the plot, and in some cases (e.g. pcolor) it will throw an error if you get the x and y axis arrays wrong.
Oct
31
comment Is there benefit to converting my program text-file output to xml-output?
Visit has a feature designed for plotting multiple time steps in a simulation. If you add sequential numbering to the filenames, they can all be loaded as one data set. This allows you to for example animate through them, and I think it should be possible to plot some derived quantity as a function of "time". Of course the variable which changes can be anything and doesn't need to be time.
Oct
26
comment Parallelise python loop with numpy arrays and shared-memory
OpenMP is typically used for fine grained parallelism of tight loops. The reason you can't find anything equivalent in python is because python doesn't give good performance for tight loops. If you don't need tight loops then use the multiprocessing module. If you do then use cython as suggested.
Oct
23
comment Calculate diff of a numpy array using custom function instead of subtraction
It is a weakness of python that tight loops with repeated function call can't really be made efficient. Numpy allows things to be efficient if you can vectorise them. Tools like cython and pypy can overcome this limitation but may be overkill for your problem.
Sep
25
comment compile fortran program with 2 compilers
In this case I'd suggest examining the libraries with a hex editor and looking for any sensible text strings such as copyright notices which may help determine which compiler was used.
Sep
14
comment compile fortran program with 2 compilers
I am most curious to know why you are engaging in such an act of self-flagellation! Intel documentation seems to indicate that this is impossible: software.intel.com/file/40271
Aug
20
comment How to build i686-linux-android-gfortran for android-ndk8b (x86 arch Android)?
My suggestions is to try building the c compiler (even though it's already available), because this will help you iron out many issues that might be well known (and for which help may be more readily available), before you worry about those issues specific to fortran.
Aug
17
comment How to build i686-linux-android-gfortran for android-ndk8b (x86 arch Android)?
Have you succeeded in building just the c compiler part of gcc working before trying gfortran?
Aug
13
comment Using Eclipse for FORTRAN
/bin/sh isn't a directory. It's the shell interpreter that is calling gfortran. Maybe the sh shell can't find gfortran in its path - but I'm just guessing here. You could try running /bin/sh in a terminal, then see if you can invoke gfortran.
Aug
13
comment Using Eclipse for FORTRAN
Have you confirmed that gfortran is installed correctly?
Aug
9
comment Using F2py in distutils
Not sure, but it sounds like you are missing a library routine. Either you forgot to link something, or some necessary shared library is not in the path or LD_LIBRARY_PATH (on Linux). Also, you can test your module without installing it by passing the --inplace option to setup.py.
Aug
8
comment Using F2py in distutils
You need to add all the sources if you want them compiled into your .so file. If you want f2py to only wrap certain routines, then use its "only" command line option in the list called "f2py_options"
Aug
8
comment Signal/memory allocation failed using gfortran on Cygwin
When you say that you "increased the memory of cygwin" do you mean using "ulimit -S" or a similar command?
Aug
8
comment Using F2py in distutils
Do you have all your .f90 files added to the list named "sources" in the Extension object? Apart from that it seems that you have everything you would need.
Aug
3
comment Modules compiled with /openmp cannot be import?
Does the code work fine under windows if prange is replaced by range?
Jul
31
comment MEX equivalent for Python ( C wrapper functions)
This question largely duplicates stackoverflow.com/questions/10351450/…
Jul
31
comment Installing numpy on Red Hat 6?
numpy 1.6.2 definitely works with python 2.7 - I'm currently using this combination. You must have been confused by the fact that recent versions of numpy work with both 2.x and 3.x lines.
Jul
25
comment f2py wrapper compilation error: setting shape of array
No worries. My guess is that there is some error in your code which may be only slightly related to the error message. I have found that f2py can give very unhelpful error messages at times, or even throw an exception. A good check is to compile the code directly with your fortran compiler - this can give a meaningful error or warning message when f2py just gives up.