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What are the differences between python's numpy.ndarray and list datatypes? I have vague ideas, but would like to get a definitive answer about:

  1. Size in memory
  2. Speed / order of access
  3. Speed / order of modification in place but preserving length
  4. Effects of changing length


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Almost all aspects of this are covered in Why NumPy instead of Python lists? Please edit your question to only ask things not already covered. –  Sven Marnach Mar 7 '11 at 19:44

1 Answer 1

There are several differences:

  • You can append elements to a list, but you can't change the size of a ´numpy.ndarray´ without making a full copy.
  • Lists can containt about everything, in numpy arrays all the elements must have the same type.
  • In practice, numpy arrays are faster for vectorial functions than mapping functions to lists.
  • I think than modification times is not an issue, but iteration over the elements is.
  • Numpy arrays have many array related methods (´argmin´, ´min´, ´sort´, etc).

I prefer to use numpy arrays when I need to do some mathematical operations (sum, average, array multiplication, etc) and list when I need to iterate in 'items' (strings, files, etc).

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