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Suppose I have the following DataFrame (timeseries, first column is a DateTimeIndex)

                           atn   file
datetime                             
2012-10-08 14:00:00  23.007462      1
2012-10-08 14:30:00  27.045666      1
2012-10-08 15:00:00  31.483825      1
2012-10-08 15:30:00  37.540651      2
2012-10-08 16:00:00  43.564573      2
2012-10-08 16:00:00  48.589852      2
2012-10-08 16:00:00  55.289452      2

My goal is to to extract the rows with the first appearance of a certain number in the last column 'file', so to obtain a table similar to this:

       datetime             atn
file                             
1      2012-10-08 14:00:00  23.007462
2      2012-10-08 15:30:00  37.540651

My approach was to groupby 'file' and then aggregate on 'first':

dt.groupby(by="file").aggregate("first")

But the problem with this is that then the index is not used as a column which is grouped. I solved this by first adding the index as a column by:

dt2 = dt.reset_index()
dt2.groupby(by="file").aggregate("first")

But now the problem is that the datetime column aren't dates anymore but floats:

          datetime        atn
file                         
1     1.349705e+18  23.007462
2     1.349710e+18  37.540651

Is there

  • a way to convert the floats back to a datetime?
  • OR a way to preserve the datetimes in the groupby/aggregate-operation?
  • OR a better way to achieve this the final tabel?

The example dataframe can be used as follows:

Copy this (to clipboard):

2012-10-08 14:00:00,  23.007462,     1
2012-10-08 14:30:00,  27.045666,     1
2012-10-08 15:00:00,  31.483825,     1
2012-10-08 15:30:00,  37.540651,     2
2012-10-08 16:00:00,  43.564573,     2
2012-10-08 16:00:00,  48.589852,     2
2012-10-08 16:00:00,  55.289452,     2

And then:

dt = pandas.read_clipboard(sep=",", parse_dates=True, index_col=0, 
                           names=["datetime", "atn", "file"])
share|improve this question
    
which version of pandas are you using? I am getting dt2 following your process with the datetime appropriately preserved. –  Calvin Cheng Nov 13 '12 at 13:21
    
And maybe also important, my numpy version (datetime64 related things): >>> pandas.__version__ '0.9.0' >>> np.__version__ '1.6.1' –  joris Nov 13 '12 at 13:44
    
Ok. parse_dates seem to be the problem @joris. See answer below. –  Calvin Cheng Nov 13 '12 at 14:50

3 Answers 3

up vote 1 down vote accepted

I assume this is a bug in pandas - the dtype is changed to a float after the groupby

dt3 = dt2.groupby(by="file").aggregate("first")
dt3.dtypes

Gives me:

datetime    float64
atn         float64

To change the dtype back to datetime64 you can do:

dt3['datetime'] = pd.Series(dt3['datetime'], dtype='datetime64[ns]')

I have created a new issue on GitHub

share|improve this answer
    
    
Thanks! Change it back to datetime64 as you pointed out is a good solution at the moment. –  joris Nov 13 '12 at 16:27

Looks like a bug but at this moment, not specifying parse_dates=True will give me the expected result.

My ipython results - no parse_dates=True:-

In [29]: dt2 = pd.read_clipboard(sep=",", index_col=0, 
                           names=["datetime", "atn", "file"])

In [30]: dt2
Out[30]: 
                           atn  file
datetime                            
2012-10-08 14:00:00  23.007462     1
2012-10-08 14:30:00  27.045666     1
2012-10-08 15:00:00  31.483825     1
2012-10-08 15:30:00  37.540651     2
2012-10-08 16:00:00  43.564573     2
2012-10-08 16:00:00  48.589852     2
2012-10-08 16:00:00  55.289452     2

In [31]: dt2.reset_index().groupby(by="file").aggregate("first")
Out[31]: 
                 datetime        atn
file                                
1     2012-10-08 14:00:00  23.007462
2     2012-10-08 15:30:00  37.540651

In [32]: 

My ipython results, with parse_dates=True:-

In [33]: dt = pd.read_clipboard(sep=",", parse_dates=True, index_col=0, 
                           names=["datetime", "atn", "file"])
KeyboardInterrupt

In [33]: dt = pd.read_clipboard(sep=",", parse_dates=True, index_col=0, 
                           names=["datetime", "atn", "file"])

In [34]: dt.reset_index().groupby(by="file").aggregate("first")
Out[34]: 
          datetime        atn
file                         
1     1.349705e+18  23.007462
2     1.349710e+18  37.540651

Explicitly checking dtypes:-

In [40]: new_dt = dt.reset_index().groupby(by="file").aggregate("first")

In [41]: new_dt
Out[41]: 
          datetime        atn
file                         
1     1.349705e+18  23.007462
2     1.349710e+18  37.540651

In [42]: new_dt.dtypes
Out[42]: 
datetime    float64
atn         float64

In [43]: new_dt2 = dt2.reset_index().groupby(by="file").aggregate("first")

In [44]: new_dt2.dtypes
Out[44]: 
datetime     object
atn         float64
share|improve this answer
    
Not specifying 'parse_dates=True' will result in an index of dtype object, it will hold strings. There is no DatatimeIndex in this case! –  Wouter Overmeire Nov 13 '12 at 15:31
    
Thanks for the answer, but I need it to still be a datetime for my further analysis. –  joris Nov 13 '12 at 16:06

I believe this is fixed and will be in 0.9.1 release

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