Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am trying to insert a Pandas (using v. 0.11) dataframe into a mysql table using the Pandas io methods. The trouble I'm having is that one of the columns has dates where some of the values are loaded as '0000-00-00'. I'd like to replace these as nulls. This is where I run into problems:

import pandas as pd
from pandas.io import sql

date_data=['2013-02-15','2014-01-03','0000-00-00']  

df = pd.DataFrame(data=date_data, columns=['date'])
sql.get_schema(df, 'test', 'mysql')

# Pandas thinks this column is a VARCHAR as expected.
Out[5]: 'CREATE TABLE test (\n                  `date` VARCHAR (63)\n                  \n                  );'

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

sql.get_schema(df, 'test', 'mysql')

# Still a VARCHAR! The 0000-00-00 seem to be preventing the column from being 
# recognized as a datetime data type

Out[8]: 'CREATE TABLE test (\n                  `date` VARCHAR (63)\n                  \n                  );'

# Let's replace those values with nulls then.
df=df.replace('0000-00-00', np.nan)

Out[12]:
         date
0  2013-02-15
1  2014-01-03
2         NaN

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

Out[15]:
date    datetime64[ns]    # success!
dtype: object

#looks good...
sql.get_schema(df, 'test', 'mysql')
Out[16]: 'CREATE TABLE test (\n                  `date` DATETIME\n                  \n                  );'

However now we have a column with nan/nat values which SQL rejects (I'll spare you the code example). The other option is to try and replace 0000-00-00 with None values, however this causes pandas to consider the column an object and not datetime which is no good.

Any ideas?

share|improve this question
    
In 0.12, df['date'] = df.date.apply(pd.Timestamp) gives the desired result –  user1827356 Feb 18 at 22:31

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.