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I'm new to Python and Pandas, and am having some trouble indexing by a date series. I am trying to pull data into a DataFrame from a SQLite db that consists of a date in format 'mm/dd/yyyy' and an equity price. I then create a new DataFrame using set_index to index the prices by the dates. How can I set the new index as a dateseries using the dates from my dataset? Does this require a datetime conversion or does DataFrame have the ability to convert from an object to a dateseries?

Below is the code I am using:

import sqlite3 as db
import pandas as p

dbcon = db.connect(...ETF_DATA_TEST.db)
c = dbcon.cursor()
c.execute(""" QUERY """)
rs =p.DataFrame.from_records(c.fetchall(),columns =['Date','Price'])
data = rs.set_index('Date')


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What version of pandas are you using? release version 0.8 ( ) changed handling of datetime from object types to numpy datetime64 types, so they have full datetime functionality starting with that release –  K Raphael Oct 24 '12 at 0:14
Currently using an older version, 0.7.3 –  MattB Oct 24 '12 at 1:46
All set now, updated to the latest Pandas version and have set it using DatetimeIndex(). Thanks for pointing me in the right direction –  MattB Oct 24 '12 at 15:17
@KRaphael Why don't you post your comment as an answer so the OP MattB can mark this as resolved and give you your due credit? –  Aman Oct 28 '12 at 23:10

1 Answer 1

You can use datetime.datetime.strptime to parse your 'Date' strings and then construct numpy.datetime64 values from the datetime.datetime types:

data = rs.reindex(numpy.array([(lambda x : datetime.datetime.strptime(x,'%m/%d/%Y'))(x) for x in rs['Date']],dtype='datetime64[us]')
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