# python: for loop compact representation

Python, Numpy

Is there a more compact way to operate on array elements, without having to use the standard for loop.?

For example, consider the function below:

``````filterData(A):
B = numpy.zeros(len(A));
B[0] = (A[0] + A[1])/2.0;
for i in range(1, len(A)):
B[i] = (A[i]-A[i-1])/2.0;
return B;
``````
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check out np.diff, which works on both numpy arrays and python native arrays –  Cam.Davidson.Pilon Dec 30 '12 at 3:37
I think you should look at this question here: stackoverflow.com/questions/1156087/… –  Diego Garcia Dec 30 '12 at 3:39
`B[1:]=(A[1:]-A[:-1])/2.0` can replace your whole loop. –  Jaime Dec 30 '12 at 4:27

Numpy has a diff operator that works on both numpy arrays and Python native arrays. You can rewrite your code as:

``````def filterData(A):
B = numpy.zeros(len(A));
B[1:] = np.diff( A )/2.0
B[0] = (A[0] + A[1])/2.0;
return B
``````
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Nice, i didnt know that. –  Diego Garcia Dec 30 '12 at 3:41
There's also `numpy.ediff1d`, which allows you to explicitly prepend or append to the diff using the `to_end` and `to_begin` parameters, e.g.:
``````>>> import numpy as np