# How can I accurately display numpy.timedelta64?

As the following code makes apparent, the representation of numpy.datetime64 falls victim to overflow well before the objects fail to work.

``````import numpy as np
import datetime
def showMeDifference( t1, t2 ):
dt      = t2-t1
dt64_ms = np.array( [ dt ], dtype = "timedelta64[ms]" )[0]
dt64_us = np.array( [ dt ], dtype = "timedelta64[us]" )[0]
dt64_ns = np.array( [ dt ], dtype = "timedelta64[ns]" )[0]
assert( dt64_ms / dt64_ns == 1.0 )
assert( dt64_us / dt64_ms == 1.0 )
assert( dt64_ms / dt64_us == 1.0 )
print str( dt64_ms )
print str( dt64_us )
print str( dt64_ns )

t1      = datetime.datetime( 2014, 4, 1, 12, 0, 0 )
t2      = datetime.datetime( 2014, 4, 1, 12, 0, 1 )
showMeDifference( t1, t2 )

t1      = datetime.datetime( 2014, 4, 1, 12, 0, 0 )
t2      = datetime.datetime( 2014, 4, 1, 12, 1, 0 )
showMeDifference( t1, t2 )

t1      = datetime.datetime( 2014, 4, 1, 12, 0, 0 )
t2      = datetime.datetime( 2014, 4, 1, 13, 0, 0 )
showMeDifference( t1, t2 )

print "These are for " + np.__version__
``````

``````1000 milliseconds
1000000 microseconds
1000000000 nanoseconds
60000 milliseconds
60000000 microseconds
-129542144 nanoseconds
3600000 milliseconds
-694967296 microseconds
817405952 nanoseconds
These are for 1.7.1
``````

Is this just a bug in np.timedelta64? If so, what idiom / workarounds have people used when working with np.timedelta64?

-
The problem appears to have been fixed as of NumPy 1.8.1. –  unutbu Apr 22 '14 at 14:06
Code does not run on 1.6.1 (divide not implemented), but even without that it probably does not show what you want. Time to upgrade Ubuntu from 12.04 to 14.04 ... –  Bas Swinckels Apr 22 '14 at 17:12