23

Is there any clean way of setting numpy to use float32 values instead of float64 globally?

12

Not that I am aware of. You either need to specify the dtype explicitly when you call the constructor for any array, or cast an array to float32 (use the ndarray.astype method) before passing it to your GPU code (I take it this is what the question pertains to?). If it is the GPU case you are really worried about, I favor the latter - it can become very annoying to try and keep everything in single precision without an extremely thorough understanding of the numpy broadcasting rules and very carefully designed code.

Another alternative might be to create your own methods which overload the standard numpy constructors (so numpy.zeros, numpy.ones, numpy.empty). That should go pretty close to keeping everything in float32.

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  • That's what I'm doing for the GPU case, but I was concerned about direct comparison between CPU bound equivalent calculation precision for testing, as part of a 'weird-bug-hunt' – Bolster Apr 20 '11 at 12:03
  • Is this comment still valid concerning the broadcasting rules? If arrays are declared with dtype float32, is there then any risk in implicit conversions or broadcasting? – Chiel Oct 10 '17 at 15:50
6

This question showed up on the NumPy issue tracker. The answer is:

There isn't, sorry. And I'm afraid we're unlikely to add such a thing[.]

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2

For each function you can overload by:

def array(*args, **kwargs):
    kwargs.setdefault("dtype", np.float32)
    return np.array(*args, **kwargs)

As posted by njsmith on github

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