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I have some calculation involving two matrices both represented in numpy arrays.

After the calculation, i obtain a vector of floats represented in another numpy array.

I want to round up/down the values in this resultant vector, e.g. if the calculation gives:

array([1.33333, 2.56, 9.99999, 16.0])

then it should be rounded to:

array([1, 3, 10, 16])

What is the fastest way to do this?

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1 Answer 1

up vote 3 down vote accepted

NumPy arrays have a round method:

In [73]: x = np.array([1.33333, 2.56, 9.99999, 16.0])

In [74]: x.round()
Out[76]: array([  1.,   3.,  10.,  16.])
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does this method depend on the type of floats in the array? e.g. float32 vs. float64? –  MLister Nov 2 '12 at 19:25
    
If x is of dtype float32, then x.round() will also be of dtype float32. And similarly for float64. The round method is not implemented for some dtypes, for example, string dtypes. –  unutbu Nov 2 '12 at 19:32

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