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 reading a data_frame directly from a database using pandas.io.sql.read_frame:

cnx = pandas.io.sql.connect(host='srv',user='me',password='pw',database='db')
df = pandas.io.sql.read_frame('sql_query',cnx)

It works nicely in retrieving the data. But I would like to parse one of the columns as a datetime64, akin to what can be done when reading from a CSV file, e.g.:

df2 = pandas.io.read_csv(csv_file, parse_dates=[0])

But there is no parse_dates flag for read_frame. What alternative approach is recommended?

The same question applies to the index_col in read_csv, which indicates which col. should be the index. Is there a recommended way to do this with read_frame?

share|improve this question
I contributed the latest version of pandas.io.sql to pandas, and it is still a work in progress, particularly detection of specific datatypes. I expect an upcoming version will contain big improvements. You can catch up on some recent discussion here: github.com/pydata/pandas/issues/1662 and here: github.com/pydata/pandas/issues/2717 –  Dan Allan Mar 5 '13 at 21:16
That said, for me, MySQL TIMESTAMP columns are parsed correctly as pd.tslib.Timestamp objects. And there is an index_col argument for read_frame. Are you using the latest stable release of pandas? –  Dan Allan Mar 5 '13 at 21:37
@DanAllan Good work on pandas.io.sql! I am using pandas v. '0.10.1' I was trying to use index_col=[0], as I do with pandas.io.read_csv, and it failed: KeyError: u'no item named 0'. After reading your comment, I tried index_col=[key_name_string] instead, and it worked. Also, as the required column index is a datetime, pandas now correctly identifies the DataFrame as having a DatetimeIndex. So my problem is solved, thank you! However, before I set the col. as index, the DateTime type was not parsed correctly, so a parse_dates argument for pandas.io.sql.read_frame would be great. –  random.me Mar 6 '13 at 12:26
I added this to our discussion. Thanks for your feedback. –  Dan Allan Mar 6 '13 at 16:10
This is also relevant for reading from SQLite dbs, since SQLite has no datetime column affinity (you just store timestamps as ISO 8601 text). –  Mechanical snail Jun 1 '13 at 13:41

3 Answers 3

df = pandas.io.sql.read_frame('sql_query', index=['date_column_name'], con=cnx)

where date_column_name is the name of the column in the database that contains date elements. sql_query should then be of the form select date_column_name, data_column_name from ...

Pandas (as of 0.13+) will then automatically parse it to a date format if it resembles a date string.

In [34]: df.index
    <class 'pandas.tseries.index.DatetimeIndex'>
share|improve this answer
data_frame["column"] = pandas.to_datetime(data_frame["column"])

should work by default but if not you can specify options. See the doc.

share|improve this answer

This question is very old by now. pandas 0.10 is very old as well. In the newest version of pandas 0.16, the read_frame method has been depricated in favour of the read_sql. Even so, the documentation says that just like the read_csv function, it takes a parse_dates argument Pandas 0.16 read_frame

It seems the parse_dates argument appeared in 0.14, at the same time as read_frame was depricated. The read_sql function seems to be a rename of the read_frame, so just updating your pandas version to 0.14 or higher and renaming your function will give you access to this argument. Here is the doc for the read_sql function: Pandas 0.16 read_sql

share|improve this answer

Your Answer


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

Not the answer you're looking for? Browse other questions tagged or ask your own question.