Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm trying to generate random 64-bit integer values for integers and floats using Numpy, within the entire range of valid values for that type. To generate random 32-bit floats, I can use:

In [2]: np.random.uniform(low=np.finfo(np.float32).min,high=np.finfo(np.float32).max,size=10)
array([  1.47351436e+37,   9.93620693e+37,   2.22893053e+38,
        -3.33828977e+38,   1.08247781e+37,  -8.37481260e+37,
         2.64176554e+38,  -2.72207226e+37,   2.54790459e+38,

but if I try and use this for 64-bit numbers, I get

In [3]: np.random.uniform(low=np.finfo(np.float64).min,high=np.finfo(np.float64).max,size=10)
Out[3]: array([ Inf,  Inf,  Inf,  Inf,  Inf,  Inf,  Inf,  Inf,  Inf,  Inf])

Similarly, for integers, I can successfully generate random 32-bit integers:

In [4]: np.random.random_integers(np.iinfo(np.int32).min,high=np.iinfo(np.int32).max,size=10)
array([-1506183689,   662982379, -1616890435, -1519456789,  1489753527,
        -604311122,  2034533014,   449680073,  -444302414, -1924170329])

but am unsuccessful for 64-bit integers:

In [5]: np.random.random_integers(np.iinfo(np.int64).min,high=np.iinfo(np.int64).max,size=10)
OverflowError                             Traceback (most recent call last)

/Users/tom/tmp/<ipython console> in <module>()

/Library/Python/2.6/site-packages/numpy/random/mtrand.so in mtrand.RandomState.random_integers (numpy/random/mtrand/mtrand.c:6640)()

/Library/Python/2.6/site-packages/numpy/random/mtrand.so in mtrand.RandomState.randint (numpy/random/mtrand/mtrand.c:5813)()

OverflowError: long int too large to convert to int

Is this expected behavior, or should I report these as bugs in Numpy?

share|improve this question

4 Answers 4

For integers you could generate 2 32 bit random numbers and combine them:

a + (b << 32)
share|improve this answer

It would appear that the code for numpy.random.uniform() does high-low calculation at some point, and the Inf stems from there.

Uniformly distributed integers are easy to generate as was shown. Uniformly distributed floating point numbers would require rather more careful thought.

As for reporting these oddities as bugs, I think you should do either that or post a message to the project mailing list. That way you'll at least find out what the developers think is reasonable behaviour.

share|improve this answer

The issue seems to be that the random_numbers method expects only 32-bit integers.

According to ticket #555 random seeds can now be 64-bit as of version 1.1.0 I suggest downloading and installing the latest version of NumPy from here.

share|improve this answer
I'm using the latest svn version of numpy already –  astrofrog Nov 2 '09 at 0:00
Which version does it say it is? –  Soviut Nov 2 '09 at 0:05
np.__version__ gives 1.4.0.dev7539 –  astrofrog Nov 2 '09 at 0:22
Perhaps you should try using a more stable release? The ticket simply spoke of random number seeding with 64-bit, perhaps its referring to a different random number generator. –  Soviut Nov 2 '09 at 4:13

I don't believe it refers to the random seed call. The simplest code I've got that falls into "Python int too large to convert to C long" is:

x = numpy.random.random_integers(2**64,size=(SIZE,)).astype(numpy.uint64)

numpy.version=1.5.0 here

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.