# Center of mass of a numpy array, how to make less verbose?

From what I know of numpy, it's a bad idea to apply an operation to each row of an array one at a time. Broadcasting is clearly the prefered method. Given that, how do I take data with a shape `(N,3)` and translate it to the center of mass? Below is the 'bad method' I'm using. This works, but I suspect it will have a performance hit for large `N`:

``````CM = R.sum(0)/R.shape[0]
for i in xrange(R.shape[0]): R[i,:] -= CM
``````
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A bit late, but `scipy.ndimage.measurements.center_of_mass` might be a relevant function to know... –  heltonbiker Oct 19 '12 at 18:45

Try

``````R -= R.sum(0) / len(R)
``````

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So the mistake was trying to shoehorn the `CM` array into the subtraction instead of solving it in one shot? –  Hooked Jan 18 '12 at 21:16
@Hooked: You could just as well do `CM = R.sum(0) / len(R); R -= CM`, but I figured the intermediate variable doesn't really help readability. –  Sven Marnach Jan 18 '12 at 21:24

As you've defined it, you can simplify your center of mass calculation as:

``````R -= R.mean(axis=0)
``````

If the different elements of your array have different masses defined in `mass`, I would then use:

``````R -= np.average(R,axis=0,weights=mass)
``````
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