# How to calculate inverse normal distribution in python?

Help me to calculate inverse normal distribution in Python

which library should i use. scipy?

I can't found the function/method to do calculate.

-
Do you mean the inverse Gaussian distribution (en.wikipedia.org/wiki/Inverse_Gaussian_distribution), or the inverse of the cumulative distribution function of the normal distribution (en.wikipedia.org/wiki/Normal_distribution), or something else? –  Warren Weckesser Dec 17 '13 at 6:30
@WarrenWeckesser the second one: inverse of the cumulative distribution function of the normal distribution –  Yueyoum Dec 17 '13 at 6:32
@WarrenWeckesser i mean the python version of "normsinv" function in excel. –  Yueyoum Dec 17 '13 at 6:39

NORMSINV (mentioned in a comment) is the inverse of the CDF of the standard normal distribution. Using `scipy`, you can compute this with the `ppf` method of the `scipy.stats.norm` object.

``````In [20]: from scipy.stats import norm

In [21]: norm.ppf(0.95)
Out[21]: 1.6448536269514722
``````

Check that it is the inverse of the CDF:

``````In [34]: norm.cdf(norm.ppf(0.95))
Out[34]: 0.94999999999999996
``````

By default, `norm.ppf` uses mean=0 and stddev=1, which is the "standard" normal distribution. You can use a different mean and standard deviation by specifying the `loc` and `scale` arguments, respectively.

``````In [35]: norm.ppf(0.95, loc=10, scale=2)
Out[35]: 13.289707253902945
``````
-
You can find it at `scipy.stats.wald`