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I'm seeing a strange behaviour in the pandas.to_datetime function. If I put in a string, I get the correct date:

In [100]: pandas.to_datetime(' 2012-10-19 16:32:35')
Out[100]: datetime.datetime(2012, 10, 19, 16, 32, 35)

However, I've got a data set that has a datetime column with strings that have the same format as the string in line 100 above:

In [101]: data_frame = pandas.read_csv('my_data.csv', header=None, names=['bid', 'datetime'])
In [102]: data_frame.ix[0]

Out[102]:
bid                                    428916
datetime                  2012-10-19 16:32:35  # NOTE: THIS IS A STRING
Name: 0

When I try to set the datetime column to a timestamp, I get a very strange datetime object:

In [102]: data_frame['datetime'] = pandas.to_datetime(data_frame['datetime'])
In [103]: data_frame.ix[0]
Out [103]: 
bid                                    428916
datetime                  1970-01-16 80:32:35  # SEE THIS
Name: 0

So either I'm misunderstanding the way that to_datetime works (very possible) or this is unexpected behavior (less possible). Which is it?

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1 Answer 1

up vote 0 down vote accepted

I suspect the problem is in the printing of numpy datetime64[ns] objects. If you take those funny date values and convert them back into pandas Timestamp objects, they look normal.

pandas.Timestamp(data_frame.ix[0]['datetime'])

should give a normal-looking result.

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I've submitted this as an issue. –  guyrt Nov 3 '12 at 3:54

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