Python: pick appropriate datatype size (int) automatically

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.

I know `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 `N`?

Furthermore, I want to pick the smallest such data type that will do.

For example, if `N` was 1000, I'd pick `np.dtype('uint16')`. If `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 `SOMETHING_DEPENDING_ON_N`:

``````import numpy as np
# N is known by some other calculation.
lbls = np.zeros( (10,20), dtype=np.dtype( SOMETHING_DEPENDING_ON_N ) )
``````

cheers!

Aha!

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).

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I've just realised I can do `np.array([N]).dtype` to get an appropriate `int` dtype (`int32`,`int64`) but would like `uint`. –  mathematical.coffee Dec 19 '11 at 4:31
Now I've worked out I can do `np.array([N]).astype('uint')` to get the appropriate `uint8` dtype, except that it starts at `uint32`. For example, `np.array([54]).astype('uint')` returns a dtype of `uint32`, but I want `uint8`, being the minimal type that can still hold unsigned integers up to 54. –  mathematical.coffee Dec 19 '11 at 4:34
When you use a basic dtype like `'uint'` or `float` Numpy uses the default for the system you are on, which is why you get `uint32`. To get the non-default size you need to specify the size explicitly. –  dtlussier Dec 19 '11 at 17:28

What about writing a simple function to do the job?

``````def type_chooser(N):
import numpy as np
for dtype in [np.uint8, np.uint16, np.uint32, np.uint64]:
if N <= dtype(-1):
return dtype
raise StandardError('{} is really big!'.format(N))
``````

Example usage:

``````>>> type_chooser(255)
<type 'numpy.uint8'>
>>> type_chooser(256)
<type 'numpy.uint16'>
>>> type_chooser(18446744073709551615)
<type 'numpy.uint64'>
>>> type_chooser(18446744073709551616)
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
File "spam.py", line 6, in type_chooser
raise StandardError('{} is really big!'.format(N))
StandardError: 18446744073709551616 is really big!
``````
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If you want to be really clever, you could implement this using `np.log2(N)` ! –  wim Dec 19 '11 at 4:50
Aha, this was what I was after. I did come up with my own version using bitshifts, but it's basically the same as yours. cheers –  mathematical.coffee Dec 19 '11 at 5:04

Create a mapping of maximum value to type, and then look for the smallest value larger than N.

``````typemap = {
256: uint8,
65536: uint16,
...
}

return typemap.get(min((x for x in typemap.iterkeys() if x > N)))
``````
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cheers! I ran with @wim's because it didn't rely on me making a dict, although I realise your approaches are essentially the same. –  mathematical.coffee Dec 19 '11 at 5:07
The dict isn't really being used as a dict here, though. You could just as easily use a tuple of 2-tuples. –  Karl Knechtel Dec 19 '11 at 5:39
``````def minimal_uint_type(N):