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I suppose that the key here is to have the less number of intermediate conversions but I'm not able to find a simple way in the new Numpy 2.0 dev

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up vote 4 down vote accepted

Actually, numpy.datetime64 objects are basically unix times internally (with 6 extra significant digits to account for millisecond precision). You just need to multiply by 1e6.

As an example:

import numpy as np

# Generate a few unix time stamps near today...
x = np.arange(1326706251, 1326706260)

# Convert to datetimes...
x *= 1e6
x = x.view(np.datetime64)

print x

This yields:

[2012-01-16 09:30:51 2012-01-16 09:30:52 2012-01-16 09:30:53
 2012-01-16 09:30:54 2012-01-16 09:30:55 2012-01-16 09:30:56
 2012-01-16 09:30:57 2012-01-16 09:30:58 2012-01-16 09:30:59]
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Multiplying by 1e6 seems that overflows the np.datetime64. On the other hand using np.datetime64(1326706251,'s') seems that gives the results I want. Which version of numpy are you using? – tonicebrian Jan 17 '12 at 12:51
    
I'm using 1.6. It doesn't overflow it for me, and np.datetime64 doesn't take a second argument for me, either... – Joe Kington Jan 17 '12 at 16:13
    
Ok, so perhaps it's me using the 2.0 dev. Thanks!! – tonicebrian Jan 17 '12 at 16:25
    
Yeah, I'd heard there were a lot of changes coming to numpy's datetime behavior in 2.0... My answer above is very implementation-specific, and apparently it's going to be changing soon. Glad you found something else that worked! – Joe Kington Jan 17 '12 at 17:14

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