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I am trying to find the row number corresponding to a timestamp in a pandas dataframe. I think the way I am currently doing it comes up with ambiguous results and does not select the right row:

idx = pd.DatetimeIndex(freq='d', start='1979-01-01', end='2015-12-30')
df = pd.DataFrame(data=randint(-10, high=20, size=(len(idx),2)), index=idx)
row = abs(df.sum(axis=1)- df.ix['2014-05-30'].sum(axis=1)).values.argmin()

when I check my result I get a row number of 77 which gives:


0    14
1     9
Name: 1979-03-19 00:00:00, dtype: int32

This is not the correct date which should have been '2014-05-30'

Is there a more general way of doing this with the pandas timestamp?

share|improve this question
Can you give some short sample of your data (and optimally some code that reproduces it?) –  FooBar May 15 '14 at 15:50
@FooBar as requested –  pbreach May 15 '14 at 16:10
Why you expect it should be '2014-05-30'? The code is summing random integers and searching for the minimum. –  elias May 15 '14 at 16:26
I expect that the number in 'row' should correspond to the time '2014-05-30' because after subtracting the summed value at this time from the summed dataframe the absolute value of the row at the time would equal zero. I think it is not giving the right answer because it is ambiguous so I am looking for a more generic solution –  pbreach May 15 '14 at 16:41

1 Answer 1

up vote 1 down vote accepted
In [12]: np.random.seed(1234)

In [13]: df = pd.DataFrame(data=randint(-10, high=20, size=(len(idx),2)), index=idx)

If you really want the row number

In [14]: df.index.get_loc('2014-05-30')
Out[14]: array([12933])

In [15]: df.iloc[12933]
0    18
1     8
Name: 2014-05-30 00:00:00, dtype: int64

This is partial string indexing, see here: http://pandas-docs.github.io/pandas-docs-travis/timeseries.html#datetimeindex-partial-string-indexing; in this case its the same as if you specified df.loc[Timestamp('2014-05-30')] because its an exact match (e.g. you have daily freq)

In [16]: df.loc['2014-05-30']
0    18
1     8
Name: 2014-05-30 00:00:00, dtype: int64
share|improve this answer
This is exactly what I've been looking for –  pbreach May 16 '14 at 4:09
Why is the DateIndex different? This doesn't work: group[group['low'].idxmin()] but with .loc it does. wtf –  Tjorriemorrie Jan 28 at 8:36
@Tjorriemorrie because the result of group['low'].idxmin() is a scalar and then you are column indexing. (not row indexing). –  Jeff Jan 28 at 10:52

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