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I have a csv file extracted from my windows pc:

date
16/07/2014 09:15:28
16/07/2014 09:15:22
16/07/2014 09:14:56
16/07/2014 09:14:50
16/07/2014 09:14:49
16/07/2014 09:14:46
16/07/2014 09:14:46
16/07/2014 09:14:46
16/07/2014 09:14:46
16/07/2014 09:14:46
16/07/2014 09:14:46
16/07/2014 09:14:46
15/07/2014 14:41:56
15/07/2014 14:41:47
15/07/2014 14:41:30
15/07/2014 14:39:58
15/07/2014 14:39:57
15/07/2014 14:39:54
15/07/2014 14:39:53
15/07/2014 14:39:49

I'd like to count the work hours per day but I did not find any function to split the time from the date and group it. Do you have any idea how to solve it? I also looked for it in google but I only found the count of objects.

Thanks a lot.

share|improve this question
    
Sorry can you clarify further with expected output. You can get the hour by doing df['date'].apply(lambda x: x.hour()) –  EdChum Jul 22 at 10:11
    
I got this error: "AttributeError: 'str' object has no attribute 'hour'" –  alexmulo Jul 22 at 10:21
    
This means it's a string and not a datetime, convert it first import pandas as pd df['date'] = pd.to_datetime(dfp'date']) –  EdChum Jul 22 at 10:22
1  
Can you edit the errors into your post including code –  EdChum Jul 22 at 10:33
1  
Sorry my mistake try: df['hour'] = df['date'].apply(lambda x: x.hour), hour is an attribute not a method –  EdChum Jul 22 at 11:00

2 Answers 2

up vote 1 down vote accepted

Firstly your date values are strings, you can either convert it after loading:

df['date'] = pd.to_datetime(df['date'])

or better is to load it in as datetime in the first place:

In [144]:

df = pd.read_csv('time.csv', parse_dates=[0])
# now extract the hour by applying a lambda and accessing the hour attribute
df['hour']  = df['date'].apply(lambda x: x.hour)
df
Out[144]:
                  date  hour
0  2014-07-16 09:15:28     9
1  2014-07-16 09:15:22     9
2  2014-07-16 09:14:56     9
3  2014-07-16 09:14:50     9
4  2014-07-16 09:14:49     9
5  2014-07-16 09:14:46     9
6  2014-07-16 09:14:46     9
7  2014-07-16 09:14:46     9
8  2014-07-16 09:14:46     9
9  2014-07-16 09:14:46     9
10 2014-07-16 09:14:46     9
11 2014-07-16 09:14:46     9
12 2014-07-15 14:41:56    14
13 2014-07-15 14:41:47    14
14 2014-07-15 14:41:30    14
15 2014-07-15 14:39:58    14
16 2014-07-15 14:39:57    14
17 2014-07-15 14:39:54    14
18 2014-07-15 14:39:53    14
19 2014-07-15 14:39:49    14
share|improve this answer

If I try to use this code, then I got this error:

import pandas as pd
df=pd.read_csv('time.csv')
df['date'] = pd.to_datetime(df['date'])
df['date'].apply(lambda x: x.hour())

---------------------------------------------------------------------------
TypeError                                 Traceback (most recent call last)
/home/alessandro/<ipython-input-65-49985609528c> in <module>()
      2 df=pd.read_csv('time.csv')
      3 df['date'] = pd.to_datetime(df['date'])
----> 4 df['date'].apply(lambda x: x.hour())

/usr/local/lib/python2.7/dist-packages/pandas/core/series.pyc in apply(self, func, convert_dtype, args, **kwds)
   1996             values = lib.map_infer(values, lib.Timestamp)
   1997 
-> 1998         mapped = lib.map_infer(values, f, convert=convert_dtype)
   1999         if len(mapped) and isinstance(mapped[0], Series):
   2000             from pandas.core.frame import DataFrame

/usr/local/lib/python2.7/dist-packages/pandas/lib.so in pandas.lib.map_infer (pandas/lib.c:51482)()

/home/alessandro/<ipython-input-65-49985609528c> in <lambda>(x)
      2 df=pd.read_csv('time.csv')
      3 df['date'] = pd.to_datetime(df['date'])
----> 4 df['date'].apply(lambda x: x.hour())

TypeError: 'int' object is not callable
share|improve this answer
    
This should be an edit in your question not posted as an answer –  EdChum Jul 22 at 11:03

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