41

Assume I have a DataFrame sales of timestamp values:

timestamp               sales_office
2014-01-01 09:01:00     Cincinnati
2014-01-01 09:11:00     San Francisco
2014-01-01 15:22:00     Chicago
2014-01-01 19:01:00     Chicago

I would like to create a new column time_hour. I can create it by writing a short function as so and using apply() to apply it iteratively:

def hr_func(ts):
    return ts.hour

sales['time_hour'] = sales['timestamp'].apply(hr_func)

I would then see this result:

timestamp               sales_office         time_hour
2014-01-01 09:01:00     Cincinnati           9
2014-01-01 09:11:00     San Francisco        9
2014-01-01 15:22:00     Chicago              15
2014-01-01 19:01:00     Chicago              19

What I'd like to achieve is some shorter transformation like this (which I know is erroneous but gets at the spirit):

sales['time_hour'] = sales['timestamp'].hour

Obviously the column is of type Series and as such doesn't have those attributes, but it seems there's a simpler way to make use of matrix operations.

Is there a more-direct approach?

  • 10
    pd.Datetimeindex(sales['timestamp']).hour will be MUCH faster than using .apply – Jeff Aug 5 '14 at 10:21
  • This is the way I'll go. I was looking for a way to convert those columns to a datetimeindex-like object using pd.to_datetime iteratively. But the entire column itself needs to be a datetimeindex object, which isn't achieved with pd.to_datetime. – Daniel Black Aug 6 '14 at 16:04
  • you can do this with pd.to_datetime(column.values,box=True) as well (as somepoint I think will add a Series.to_index() method to basically do this directly. This is all vectorized. – Jeff Aug 6 '14 at 16:07
  • @JohnE not sure where you are talking about – Jeff Mar 26 '15 at 22:13
  • 5
    @Jeff -- Datetimeindex should be DatetimeIndex, right? (capital I in Index) – JohnE Mar 26 '15 at 23:05
27

Assuming timestamp is the index of the dataframe, you can just do

    hours = sales.index.hour

If you want to add that to your sales dataframe, just do

    import pandas as pd
    pd.concat([sales, pd.DataFrame(hours, index=sales.index)], axis = 1)

Edit: If you have several columns of datetime objects, its the same process. If you have a column ['date'] in your dataframe, and assuming that 'date' has datetime values, you can access the hour from the 'date' as:

    hours = sales['date'].hour

Edit2: If you want to adjust a column in your dataframe you have to include dt:

sales['datehour'] = sales['date'].dt.hour

  • I unfortunately set my example up poorly. My actual conundrum includes several columns of datetime values. I'll be calculating elapsed business hours between the timestamps, so will be extracting several sets of hour-unit values. – Daniel Black Aug 5 '14 at 0:48
  • 16
    Assuming 'date' is a column hours = sales['date'].hour1 will give an attribute error: AttributeError: 'Series' object has no attribute 'hour' <br/> – Lucas Mar 12 '17 at 19:30
  • 16
    @Lucas right, if it's a column then the answer would be hours=sales['date'].dt.hour – famargar May 16 '17 at 10:55
  • 1
    @famargar thank you so much adding dt save my life. What's the meaning of dt btw? – overloading Dec 8 '17 at 5:47
  • 1
    @overloading probably the abbreviation of datetime – Mathias711 Mar 29 '18 at 12:50
37

For posterity: as of 0.15.0, there is a handy .dt accessor you can use to pull such values from a datetime/period series (in the above case, just sales.timestamp.dt.hour!

  • The link provided didn't work for me. This one did .dt accessor. – Niklas Dec 12 '16 at 17:24
12

You can use a lambda expression, e.g:

sales['time_hour'] = sales.timestamp.apply(lambda x: x.hour)
  • 1
    That's very helpful, especially if it turns out there's no way around using apply(). – Daniel Black Aug 5 '14 at 0:11
7

You can try this:

sales['time_hour'] = pd.to_datetime(sales['timestamp']).dt.hour
0

Here is a simple solution:

import pandas as pd
# convert the timestamp column to datetime
df['timestamp'] = pd.to_datetime(df['timestamp'])

# extract hour from the timestamp column to create an time_hour column
df['time_hour'] = df['timestamp'].dt.hour

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