# Is there a Python method to calculate lognormal mean and variance?

I am trying to understand if there is a built in python function to calculate the lognormal mean and variance. I require this information only to then feed it into `scipy.stats.lognorm` for a plot overlaid on top of a histogram.

Simply using the `numpy.mean` and `numpy.std` does not seem to be the correct idea, as the lognormal mean and variance are specific and quite different than the numpy methods. In Matlab they have a handy function called `lognstat` that returns the mean and variance of a lognormal distribution, and I can't seem to track down an analogous method in Python. It is easy enough to code a work around, but I am wondering if this method exists in a library. Thanks.

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For whatever it's worth, all `lognstat` in matlab does is this:

``````import numpy as np

def lognstat(mu, sigma):
"""Calculate the mean of and variance of the lognormal distribution given
the mean (`mu`) and standard deviation (`sigma`), of the associated normal
distribution."""
m = np.exp(mu + sigma**2 / 2.0)
v = np.exp(2 * mu + sigma**2) * (np.exp(sigma**2) - 1)
return m, v
``````

There may be a function for it in `scipy.stats` or `scikits-statsmodels`, but I'm not aware of it offhand. Either way, it's just a couple of lines of code.

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