Scipy has a bunch of distributions defined in the scipy.stats package

```
import scipy.stats
def LogNormDist(prob, mean=0, stddev=1):
return scipy.stats.lognorm.cdf(prob,stddev,mean)
```

### Update

Okay, it looks like Scipy's stat definitions are a little nonstandard. Here's the end of the docstring for `scipy.stats.lognormal`

Lognormal distribution

lognorm.pdf(x,s) = 1/(s*x*sqrt(2*pi)) * exp(-1/2*(log(x)/s)**2)
for x > 0, s > 0.

If log x is normally distributed with mean mu and variance sigma**2,
then x is log-normally distributed with shape paramter sigma and scale
parameter exp(mu).

So maybe try

```
return scipy.stats.lognorm.cdf(prob,stddev,scipy.exp(mean))
```

If that still doesn't work, try getting a few sample points and I'll see if I can find a working relationship.

### Udpate 2

Oops, I didn't realize that the scale param is a keyword. This one should now work:

```
import scipy.stats
def LogNormDist(prob, mean=0, stddev=1):
return scipy.stats.lognorm.cdf(prob,stddev,scale=scipy.exp(mean))
```

Cheers and good luck with your project!