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I'm exploring Pandas - trying to learn and apply it. Currently I have a csv file populated with a financial timeseries data of following structure:

date, time, open, high, low, close, volume 2003.04.08,12:00,1.06830,1.06960,1.06670,1.06690,446 2003.04.08,13:00,1.06700,1.06810,1.06570,1.06630,433 2003.04.08,14:00,1.06650,1.06810,1.06510,1.06670,473 2003.04.08,15:00,1.06670,1.06890,1.06630,1.06850,556 2003.04.08,16:00,1.06840,1.07050,1.06610,1.06680,615

Now I want to convert the csv data into a pandas DataFrame object, so that date and time fields merge and become the DateTimeIndex of the DataFrame like this:

df = pa.read_csv(path,
                 names = ['date', 'time', 'open', 'high', 'low', 'close', 'vol'],
                 parse_dates = {'dateTime': ['date', 'time']},  
                 index_col = 'dateTime')

This works yielding a nice DataFrame object:

<class 'pandas.core.frame.DataFrame'>
Index: 8676 entries, 2003.04.08 12:00 to nan nan
Data columns (total 5 columns):
open     8675  non-null values
high     8675  non-null values
low      8675  non-null values
close    8675  non-null values
vol      8675  non-null values
dtypes: float64(5)

But upon inspection it turns out that the Index is not a DataTimeIndex but unicode strings instead:

type(df.index)
>>> pandas.core.index.Index
df.index
>>> Index([u'2003.04.08 12:00', u'2003.04.08 13:00', u'2003.04.08 14:00', ....

So read_csv parsed the date and time fields, merged them but did not create a DateTimeIndex. As far as I understood from the documentation a new datastructure object supplied with a list of datetime objects should automatically create a DateTimeIndex. Am I wrong? Is the DataFrame object an exception?

I also tried to convert the current index like this:

df.index = pa.to_datetime(df.index)

but no changes have been made to the index and it is still in unicode format. I begin to suspect the default parsing functions aren't doing their job, but I don't get any error messages from them.

How to get a working DateTimeIndex in a DateFrame in this situation?

Solution:

df = pa.read_csv(path,
                 names = ['date', 'time', 'open', 'high', 'low', 'close', 'vol'],
                 parse_dates={'datetime':['date','time']},
                 keep_date_col = True, 
                 index_col='datetime'
             )

now apply the lambda function, doing what the parser should have done:

df['datetime'] = df.apply(lambda row: datetime.datetime.strptime(row['date']+ ':' + row['time'], '%Y.%m.%d:%H:%M'), axis=1)
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Could you post the first few rows of the raw csv file? My guess is you'll need to specify a date_parser function to give to read_csv. –  TomAugspurger Oct 25 '13 at 13:11
    
What happens if you try df = pa.read_csv(path, names = ['date', 'time', 'open', 'high', 'low', 'close', 'vol'], parse_dates = [['date', 'time']]) so don't explicitly name the combined datetime column, does this work? –  EdChum Oct 25 '13 at 13:20
    
@TomAugspurger added sample rows at the beginning of the question to show what the data looks like –  EmEs Oct 25 '13 at 13:22
    
@EdChum it still creates a merged date_time column and fills it with type object. The default integer index is applied i.e. pandas.core.index.Int64Index –  EmEs Oct 25 '13 at 13:26
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1 Answer

up vote 0 down vote accepted

Dateutil is unable to parse your data correctly but you can do it after loading like so using strptime:

import datetime
df['DateTime'] = df.apply(lambda row: datetime.datetime.strptime(row['date']+ ':' + row['time'], '%Y.%m.%d:%H:%M'), axis=1)

This will yield you the 'DateTime' column as datetime64[ns] and you can use it as your index

EDIT

Hmm.. interestingly when I do this it works:

df = pd.read_csv(r'c:\data\temp.txt', parse_dates={'datetime':['date','time']}, index_col='datetime')

Could you see what happens when you drop the column names from the parameters to read_csv

share|improve this answer
    
Finally your solution worked with applying a lambda worked. I had to additionally keep date and time columns by passing 'keep_date_col = True' to 'read_csv'. –  EmEs Oct 25 '13 at 17:05
    
@EmEs Glad it works, it is unclear why passing the columns fails except it produces a wierd dataframe with 2 level columns, this maybe the root of the problem –  EdChum Oct 25 '13 at 17:07
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