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:
df.ix[row] 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?