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I've written a bunch of code on the assumption that I was going to use Numpy arrays. Turns out the data I am getting is loaded through Pandas. I remember now that I loaded it in Pandas because I was having some problems loading it in Numpy. I believe the data was just too large.

Therefore I was wondering, is there a difference in computational ability when using Numpy vs Pandas?

If Pandas is more efficient then I would rather rewrite all my code for Pandas but if there is no more efficiency then I'll just use a numpy array...

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This is probably too broad a question to be useful. pandas provides a bunch of C or Cython optimized routines that can be faster than numpy "equivalents" (e.g. reading text). For something like a dot product, pandas DataFrames are generally going to be slower than a numpy array since pandas is doing a lot more stuff aligning labels, potentially dealing with heterogenous types, and so on. –  TomAugspurger Feb 5 '14 at 3:25
@TomAugspurger Hmmmm okay...is there somewhere I can read about what it excels at vs what it is less optimized for? –  Chowza Feb 5 '14 at 6:12
I'm not sure of a single source for that. I could be glib and say do it yourself :). Profiling can be really important. This doesn't directly answer your question but may be useful anyway. –  TomAugspurger Feb 5 '14 at 13:32

2 Answers 2

Pandas data structures are backed by numpy. For example pandas dataframes have a values() method which gives you the underlying numpy array:

In [3]: df = DataFrame({'one' : [1., 2., 3., 4.],'two' : [4., 3., 2., 1.]}, index=['a', 'b', 'c', 'd'])

In [4]: df.values
array([[ 1.,  4.],
       [ 2.,  3.],
       [ 3.,  2.],
       [ 4.,  1.]])

So to answer your question, there is no performance difference.

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Not quite true: a = pd.DataFrame(np.random.uniform(size=(10, 10))) With numpy %timeit a.values.dot(a.values.T) 100000 loops, best of 3: 15 µs per loop With pandas %timeit a.dot(a) 10000 loops, best of 3: 121 µs per loop. So an order of magnitude difference. You do point out an easy way to get to the numpy arrays, which the OP may want to do for performance critical parts. –  TomAugspurger Feb 5 '14 at 3:28
Also no longer true as of version 0.13, Series objects are no longer subclasses numpy arrays. So that means that Panels, DataFrame, and Series objects are all subclasses of the NDFrame object defined by pandas. (see pandas.pydata.org/pandas-docs/stable/…) –  Paul H Feb 5 '14 at 6:10

There can be a significant performance difference, of an order of magnitude for multiplications and multiple orders of magnitude for indexing a few random vaues.

I was actually wondering about the same thing and came across this interesting comparison: http://penandpants.com/2014/09/05/performance-of-pandas-series-vs-numpy-arrays/

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