# Mean values depending on binning with respect to second variable

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?

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You are complicating things unnecessarily. All you need to know is, for every bin in `x`, what are `n`, `sy` and `sy2`, the number of `y` values in that `x` bin, the sum of those `y` values, and the sum of their squares. You can get those as:

``````>>> n, _ = np.histogram(x, bins=xbins)
>>> sy, _ = np.histogram(x, bins=xbins, weights=y)
>>> sy2, _ = np.histogram(x, bins=xbins, weights=y*y)
``````

From those:

``````>>> mean = sy / n
>>> std = np.sqrt(sy2/n - mean*mean)
``````
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Wow - I did not think of interpreting `y` as "weights" to `x`... Great! –  Jakob S. Mar 18 '13 at 13:48
@JakobS. Nobody does... until seeing it done for the first time! –  Jaime Mar 18 '13 at 13:53
This is very cool, indeed. –  HyperCube Mar 18 '13 at 13:57

If you can use pandas:

``````import pandas as pd
xedges = np.linspace(x.min(), x.max(), xbins+1)
xedges[0] -= 0.00001
xedges[-1] += 0.000001
c = pd.cut(x, xedges)
g = pd.groupby(pd.Series(y), c.labels)
mean2 = g.mean()
std2 = g.std(0)
``````
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