I'm allocating a (possibly large) matrix of zeros with Python and numpy. I plan to put unsigned integers from 1 to
N in it.
N is quite variable: could easily range from 1 all the way up to a million, perhaps even more.
N prior to matrix initialisation. How can I choose the data type of my matrix such that I know it can hold (unsigned) integers of size
Furthermore, I want to pick the smallest such data type that will do.
For example, if
N was 1000, I'd pick
N is 240,
uint16 would work, but
uint8 would also work and is the smallest data type I can use to hold the numbers.
This is how I initialise the array. I'm looking for the
import numpy as np # N is known by some other calculation. lbls = np.zeros( (10,20), dtype=np.dtype( SOMETHING_DEPENDING_ON_N ) )
Just realised numpy v1.6.0+ has
np.min_scalar_type, documentation. D'oh! (although the answers are still useful because I don't have 1.6.0).