Reputation
578
Top tag
Next privilege 1,000 Rep.
See votes, expandable usercard
Badges
3 6
Newest
 Nice Answer
Impact
~39k people reached

Jun
8
awarded  Nice Answer
Jul
26
answered Tmux copy buffer limit
Jun
2
comment Cythonizing for loops that iterate over generators
You might consider a hybrid buffered solution: you can store a C array or typed memorview, do batches of computations with them, and then yield the results one by one. This way you can keep your streaming algorithm, but benefit from the performance of arrays and contiguous memory access.
Jun
2
comment Cythonizing for loops that iterate over generators
You may have to compromise on the purity of your code to achieve the performance you need. Since C does not natively support generators, Cython has to introduce a fair amount of extra calls to make them work. They will still be faster than pure Python generators, though. Arrays are very fast in C, so you can get much better performance from them.
Jun
1
answered Cythonizing for loops that iterate over generators
Jun
1
comment Can I suppress warnings in a Cython-generated file (but not others)?
What build system are you using for compiling the extension module? Python's distutils? Make? CMake? SCons? You'll have to tell clang to ignore these warnings with -Wno-unused-function, and make sure this flag is passed to just the Cython extension modules.
May
15
comment Poor(er) performance of Cython with NumPy array memoryview compared to C arrays
What's the compilation error message, and what version of Cython are you using? I'm able to get it to compile here.
May
15
answered Poor(er) performance of Cython with NumPy array memoryview compared to C arrays
May
15
answered Creating C structs in Cython
May
15
answered Reraising an exception in Cython on Python 2 and Python3
May
15
answered vector assign in Cython
May
12
awarded  Yearling
Apr
27
answered Can I create a static Cython library using distutils?
Jan
29
answered Wrap C++ lib with Cython
Jan
21
answered Array of pointers from C++ to numpy throught Cython
Apr
17
awarded  Yearling
Apr
17
revised Bakeoff Part 1 Python vs Cython vs Cython Typed memory views: LDA by Gibbs Sampling
Expanded / corrected example.
Apr
17
comment Bakeoff Part 1 Python vs Cython vs Cython Typed memory views: LDA by Gibbs Sampling
Memoryviews are views -- they share the underlying data with the thing they're viewing. When assigning to a memoryview, the assignment will fail if it can't share the underlying data for some reason. So if you modify the contents of a view, the thing it's viewing will change too. ascontig will create new contiguous arrays if it has to. The lda._iterate() call will modify these arrays in place, so no copying / assignments are necessary.
Apr
17
comment Bakeoff Part 1 Python vs Cython vs Cython Typed memory views: LDA by Gibbs Sampling
I see, if numbered_docs and kmn are lists of arrays of different length, then that will change things. I'll correct the posted code. It would really help if you could create a complete working example with fake data and small array sizes.
Apr
17
answered Bakeoff Part 1 Python vs Cython vs Cython Typed memory views: LDA by Gibbs Sampling