# Is there a difference in computation for Numpy vs Pandas?

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

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
Out[4]:
array([[ 1.,  4.],
[ 2.,  3.],
[ 3.,  2.],
[ 4.,  1.]])
``````

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