# How to convert numpy.timedelta64 to minutes

I have a date time column in a Pandas DataFrame and I'd like to convert it to minutes or seconds.

For example: I want to convert `00:27:00` to 27 mins.

``````example = data['duration'][0]
example
``````

result: `numpy.timedelta64(1620000000000,'ns')`

What's the best way to achieve this?

• I think you mean `27 mins`, not `87 mins`? o_O Commented Oct 25, 2014 at 19:13
• In the general case, do you want the fractional part, too? E.g. if the input timedelta is `00:27:45`, do you want 27 or 27.75? Commented Oct 25, 2014 at 19:22
• I'm more interested in minutes as my data doesn't include seconds, so no I don't need the fraction. Commented Oct 25, 2014 at 19:29
• I figured you can get to the minutes by executing this line: mins = np.array([data['duration']], dtype = "timedelta64[m]")[0]. How can I append the values I receive in this array to my original data frame? Commented Oct 25, 2014 at 19:30
• see docs here: very easy in 0.15 pandas.pydata.org/pandas-docs/stable/…
– Jeff
Commented Oct 25, 2014 at 20:10

Use `array.astype()` to convert the type of an array safely:

``````>>> import numpy as np
>>> a = np.timedelta64(1620000000000,'ns')
>>> a.astype('timedelta64[m]')
numpy.timedelta64(27,'m')
``````
• Note that this will loose accuracy (based on the comments, this is ok for the questor, but should be highlighted for the general question): try `np.timedelta64(1621111111110,'ns').astype('timedelta64[m]')`
– ntg
Commented Aug 26, 2022 at 4:28

As noted by @ntg, using `.astype('timedelta64[m]')` provides the result as an integer value, potentially reducing accuracy.

To obtain the result as a float value with full accuracy, we can scale the result to the desired units with `np.timedelta64(1, 'm')` (see https://stackoverflow.com/a/20739897/12131616).

Example:

``````a = np.timedelta64(1621111111110,'ns')
print(a.astype('timedelta64[m]'))
print(a / np.timedelta64(1, 'm'))
``````

Output:

``````27 minutes
27.0185185185
``````