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Not much here (yet).


Dec
17
awarded  Yearling
Oct
22
comment RegExp: Remove last period in string that can contain other periods (dig output)
This doesn't work because sometimees there is no period at the end of the resolved name (for instance 98.139.21.169). But I believe abarnert and I proposed some working solutions ;)
Oct
22
revised RegExp: Remove last period in string that can contain other periods (dig output)
Also remove the period from the first group
Oct
21
comment RegExp: Remove last period in string that can contain other periods (dig output)
I really have the impression that there is also an unwanted period at the end of first group (therefore line[0][:-1]), am I wrong here ?
Oct
21
comment RegExp: Remove last period in string that can contain other periods (dig output)
Sorry I'm not sleeping so I end up doing the same questions as you. I hope you don't mind ;(
Oct
21
suggested approved edit on RegExp: Remove last period in string that can contain other periods (dig output)
Oct
21
comment RegExp: Remove last period in string that can contain other periods (dig output)
@abarnert makes a good point about using raw string (in this case it is not needed but it's good practice, I don't put them because I'm lazy to add 4 r, but do it on production code.)
Oct
21
answered RegExp: Remove last period in string that can contain other periods (dig output)
Oct
21
comment Beginner at Python : Exiting inner for loop soon as completing the job
Why class BreakException(RuntimeError) and not simply class BreakException(Exception) as this is clearly not an error but a desired behaviour ?
Oct
21
comment Is there a way to make this Python kNN function more efficient?
My understanding was that sample were vector of 2000 elements of dimension 2, but indeed it was n = len(otherSamples) and not n = len(sample) so I completly misjudged the problem ... You must be right: the overhead of allocating memory for a numpy matrix 4000000 times should completly kill the process.
Oct
21
answered How to connect Python to PostgreSQL
Oct
21
comment Is there a way to make this Python kNN function more efficient?
I added a method based on space partitionning to compute the distance in my answer, and I don't think you should give up so fast on python. Still we can't tell you any ting very relevant about what is slow without any profiling, and it would be the same in Java or another language.
Oct
21
revised Is there a way to make this Python kNN function more efficient?
Renaming
Oct
21
revised Is there a way to make this Python kNN function more efficient?
added 932 characters in body
Oct
21
comment Is there a way to make this Python kNN function more efficient?
I don't neccesarily agree that most time is spend in overhead here, it could also be on numpy : we are creating a 2000*2000 matrix in numpy just to find it's minimum ! Anyway some profiling information from @Roy would be great.
Oct
20
comment Is there a way to make this Python kNN function more efficient?
I don't believe there is much actual computation done by python here. Can the op give us some profiling information ? For instance by runnning python -m cProfile -s time YOU_PROGRAM.py and post the result on pastebin ?
Oct
20
comment Is there a way to make this Python kNN function more efficient?
This paper: www-cgrl.cs.mcgill.ca/~godfried/publications/mindist.pdf (don't ask me why it is reversed ...), describes an O(n log(n)) algorithm.
Oct
20
comment Is there a way to make this Python kNN function more efficient?
I was thinking of using some algorithm based on spatial division, for instance something along the lines of en.wikipedia.org/wiki/Closest_pair_of_points_problem . I'll look a bit into it (I'm not a geometry specialist and I don't know any particular algorithm on this problem).
Oct
17
comment Is there a way to make this Python kNN function more efficient?
The factor of 60 is between what and what ? cdist(r1, r2, 'euclidean').min() seems standard but it's far from obtimal in practice for large number of points, can you tell us a bit more about the size of your sets ?
Oct
16
revised Is there a way to make this Python kNN function more efficient?
looking for closer not farther