It seems if it is the same distribution, drawing random samples from numpy.random is faster than doing so from scipy.stats.....rvs. I was wondering what causes the speed difference between the two?
scipy.stats.uniform actually uses numpy, here is the corresponding function in stats (mtrand is an alias for numpy.random)
scipy.stats has a bit of overhead for error checking and making the interface more flexible. The speed difference should be minimal as long as you don't call uniform.rvs in a loop for each draw. You can get instead all random draws at once, for example (10 million)
Here is the long answer, that I wrote a while ago:
The basic random numbers in scipy/numpy are created by Mersenne-Twister PRNG in numpy.random. The random numbers for distributions in numpy.random are in cython/pyrex and are pretty fast.
scipy.stats doesn't have a random number generator, random numbers are obtained in one of three ways: