# How to draw a random sample from a Poisson distribution?

I have a number `X` of integers (very large) and a probability p with which I want to draw a sample `s` (a number) from `X` following a Poisson distribution. For example, if `X = 10^8` and `p=0.05`, I expect s to be the number of heads we get.

I was able to easily do this with random.binomial as:

``````s=np.random.binomial(n=X, p=p)
``````

How can I apply the same idea using `random.poisson`?

Just multiply `p` and `X`:

``````np.random.poisson(10**8 * 0.05)
``````

The probability to get more than 10**8 is numerically zero.

Professor @pjs emphasizes that we are combining probability and number into a rate which is the parameter of the Poisson process.

Further worth mentioning that for such a large number you'll find the pmf's of Binomial and Poisson very similar to each other and also (using probability function or "cdf" as engineers call it) to a Gaussian.

https://docs.scipy.org/doc/numpy-1.14.0/reference/generated/numpy.random.poisson.html

`````` import numpy as np
s = np.random.poisson(size=n, lam=p)
``````
• Where did the 5 and 10**4 come from?
– pjs
May 13, 2018 at 15:11
• I copied it from the example in the numpy docs - now fixed it :) May 15, 2018 at 8:57
• I hope you realize that the rate (`lam`) is not a probability.
– pjs
May 15, 2018 at 19:37