I am working with python / numpy. As input data I have a large number of value pairs
(x,y). I basically want to plot
<y>(x), i.e., the mean value of
y for a certain data bin
x. At the moment I use a plain
for loop to achieve this, which is terribly slow.
# create example data x = numpy.random.rand(1000) y = numpy.random.rand(1000) # set resolution xbins = 100 # find x bins H, xedges, yedges = numpy.histogram2d(x, y, bins=(xbins,xbins) ) # calculate mean and std of y for each x bin mean = numpy.zeros(xbins) std = numpy.zeros(xbins) for i in numpy.arange(xbins): mean[i] = numpy.mean(y[ numpy.logical_and( x>=xedges[i], x<xedges[i+1] ) ]) std[i] = numpy.std (y[ numpy.logical_and( x>=xedges[i], x<xedges[i+1] ) ])
Is it possible to have a kind of vectorized writing for it?