I have some data in 3 arrays with shapes:
docLengths.shape = (10000,) docIds.shape = (10000,) docCounts.shape = (68,10000)
I want to obtain relative counts and their means and standard deviations for some i:
docRelCounts = docCounts/docLengths relCountMeans = docRelCounts[i,:].mean() relCountDeviations = docRelCounts[i,:].std()
Problem is, some elements of docLengths are zero. This produces NaN elements in docRelCounts and the means and deviations are thus also NaN.
I need to remove the data for documents of zero length. I could write a loop, locating zero length doc's and removing them, but I was hoping for some numpy array magic that would do this more efficiently. Any ideas?