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I'm still confused whether to use list or numpy array.
I started with the latter, but since I have to do a lot of append I ended up with many vstacks slowing my code down.
Using list would solve this problem, but I also need to delete elements which again works well with delete on numpy array.

As it looks now I'll have to write my own data type (in a compiled language, and wrap). I'm just curious if there isn't a way to get the job done using a python type.

To summarize this are the criterions my data type would have to fulfil:

  • 2d n (variable) rows, each row k (fixed) elements
  • in memory in one piece (would be nice for efficient operating)
  • append row (with an in average constant time, like C++ vector just always k elements)
  • delete a set of elements (best: inplace, keep free space at the end for later append)
  • access element given the row and column index ( O(1) like data[row*k+ column]

It appears generally useful to me to have a data type like this and not impossible to implement in C/Fortran.
What would be the closest I could get with python? (Or maybe, Do you think it would work to write a python class for the datatype? what performance should I expect in this case?)

share|improve this question
I suspect the problem is not the numpy data structure itself, but rather the use of vstack, which always creates a new array rather than resizing an existing array. – Dietrich Epp Jul 5 '11 at 3:28
One full stop, two commas, three question marks... it must be a record in syntax boycotting! :o – mac Jul 5 '11 at 5:57
up vote 1 down vote accepted

As I see it, if you were doing this in C or Fortran, you'd have to have an idea of the size of the array so that you can allocate the correct amount of memory (ignoring realloc!). So assuming you do know this, why do you need to append to the array?

In any case, numpy arrays have the resize method, which you can use to extend the size of the array.

share|improve this answer
In C I would start with eg. an array size of kx1000 and double the allocated memory every time I run out of space (if this doubling copies all the data is ok, as long as it is not copied every single time I add a row). Resize looks interesting. (I was not aware of it before.) I guess I should still rather do the bookkeeping myself and always resize to double the size, rather then resizing for every new row. – Matthias Jul 5 '11 at 16:03

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