There seem to be a couple things worth nothing here.
df_a.cumsum() defaults to
axis=0 (Pandas has no concept of summing the whole DataFrame in one call), while the NumPy call defaults to
axis=None. So by specifying an axis on one operation and effectively flattening the other, you're comparing apples to oranges.
That said, there are three calls that you could compare:
>>> np.cumsum(df_a, axis=0)
>>> val.cumsum(axis=0) # val = df_a.values
where, in the final call,
val is the underlying NumPy array and we don't count getting the
.values attribute in runtime.
So, if you're working in IPython shell, give line profiling with
%prun a try:
>>> %prun -q -T pdcumsum.txt df_a.cumsum()
>>> val = df_a.values
>>> %prun -q -T ndarraycumsum.txt val.cumsum(axis=0)
>>> %prun -q -T df_npcumsum.txt np.cumsum(df_a, axis=0)
-T saves the output to text so that you can view all three matched up with one another. Here's what you end up with:
df_a.cumsum(): 186 function calls, .022 seconds. 0.013 of that is spent on
numpy.ndarray.cumsum(). (My guess is that if there are no NaNs, then
nancumsum() isn't needed, but please don't quote me on that). Another chunk is spent on copying the array.
val.cumsum(axis=0): 5 function calls, 0.020 seconds. No copy is made (although this isn't an inplace operation).
np.cumsum(df_a, axis=0): 204 function calls, 0.026 seconds. Suffice it to say that passing a Pandas object to a top-level NumPy function seems to eventually invoke the equivalent method on the Pandas object, which goes through a whole bunch of overhead and then re-calls the NumPy function.
%timeit, you're only making 1 call here, as you would in
%time, so I wouldn't lean too heavily on the relative timing differences with
%prun; perhaps comparing the internal function calls is what's useful. But in this case, when you specify the same axis for both, the timing differences aren't actually that drastic, even if the number of calls made by Pandas dwarfs that of NumPy. In other words, in this case the time of all three calls is dominated by
np.ndarray.cumsum(), and the ancillary Pandas calls don't eat up much time. There are other instances where the ancillary Pandas calls do eat up a lot more runtime, but this doesn't seem to be one of them.
Big picture--as acknowledged by Wes McKinney,
Fairly simple operations, from indexing to summary statistics, may pass through multiple layers of scaffolding before hitting the lowest tier of computations.
with the tradeoff being flexibility and increased functionality, you could argue.
One last detail: within NumPy, you can avoid a tiny bit of overhead by calling the instance method
ndarray.cumsum() rather than the top-level function
np.cumsum(), because the latter just ends up routing to the former. But as a wise man once said, premature optimization is the root of all evil.
>>> pd.__version__, np.__version__