I am looking to emulate the functionality of
numpy.cumsum(), except I need to capture the cumulative squares of the values.
For example: I have an array that is [1,2,3,4].
I can use
numpy.cumsum(array) to return an
array([1,3,6,10]). My goal is to use some fast numpy trick to get the cumulative squares of the values.
In pure Python using a list:
>>> y = [1,2,3,4] >>> sqVal = 0 >>> for val in y: ... sqVal += val*val ... print sqVal ... 1 5 14 30
numpy.cumprod(), but that is cumulative product, not the sum of the cumulative squares of the values. My desire to use NumPy is purely based on speed. Using
cumsum() is substantially faster than using for loops (which makes sense).