# Probability to z-score and vice versa in python

I have numpy, statsmodel, pandas, and scipy(I think)

How do I calculate the z score of a p-value and vice versa?

For example if I have a p value of 0.95 I should get 1.96 in return.

I saw some functions in scipy but they only run a z-test on a array.

``````>>> import scipy.stats as st
>>> st.norm.ppf(.95)
1.6448536269514722
>>> st.norm.cdf(1.64)
0.94949741652589625
``````

As other users noted, Python calculates left/lower-tail probabilities by default. If you want to determine the density points where 95% of the distribution is included, you have to take another approach:

``````>>>st.norm.ppf(.975)
1.959963984540054
>>>st.norm.ppf(.025)
-1.960063984540054
``````

• For anyone else, like me, who was briefly confused by the request for a function which returned 1.96 but having the accepted answer give 1.64 -- the difference is that 1.96 is the zscore inside of which is 95% of the data (ignoring both tails), but st.norm.ppf() gives the zscore which has 95% of the data below it (ignoring only the upper tail). – R.M. May 16 '15 at 17:31
• (cont) If you want 1.96 from 0.95, you have to make use of the fact that the normal distribution is symmetric and divide the amount you're ignoring in half to get just the upper tail ignored: `st.norm.ppf(1-(1-0.95)/2) == 1.959963984540054` - Basic statistics, yes, but I just wanted to make it explicit. – R.M. May 16 '15 at 17:39