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'm starting using Python and I have a simple question related with csv files and parsing datetime.

I have a csv file that look like this:

YYYYMMDD, HH,    X
20110101,  1,   10
20110101,  2,   20
20110101,  3,   30

I would like to read it using pandas (read_csv) and have it in a dataframe indexed by the datetime. So far I've tried to implement the following:

import pandas as pnd
pnd.read_csv("..\\file.csv",  parse_dates = True, index_col = [0,1])

and the result I get is:

                         X
YYYYMMDD    HH            
2011-01-01 2012-07-01   10
           2012-07-02   20
           2012-07-03   30

As you see the parse_dates in converting the HH into a different date.

Is there a simple and efficient way to combine properly the column "YYYYMMDD" with the column "HH" in order to have something like this? :

                      X
Datetime              
2011-01-01 01:00:00  10
2011-01-01 02:00:00  20
2011-01-01 03:00:00  30

Thanks in advance for the help.

share|improve this question
add comment

2 Answers 2

up vote 15 down vote accepted

If you pass a list to index_col, it means you want to create a hierarchical index out of the columns in the list.

In addition, the parse_dates keyword can be set to either True or a list/dict. If True, then it tries to parse individual columns as dates, otherwise it combines columns to parse a single date column.

In summary, what you want to do is:

from datetime import datetime
import pandas as pd
parse = lambda x: datetime.strptime(x, '%Y%m%d %H')
pd.read_csv("..\\file.csv",  parse_dates = [['YYYYMMDD', 'HH']], 
            index_col = 0, 
            date_parser=parse)
share|improve this answer
    
Thanks a lot Chang! It solved my problem =) –  Mauricio Jul 24 '12 at 9:52
    
What if you start with a dataframe instead as oppose from reading directly in from csv –  user1234440 Feb 12 at 1:53
add comment

I am doing this all the time, so I tested different ways for speed. The fastest I found is the following, approx. 3 times faster than Chang She's solution, at least in my case, when taking the total time of file parsing and date parsing into account:

First, parse the data file using pd.read_csv withOUT parsing dates. I find that it is slowing down the file-reading quite a lot. Make sure that the columns of the CSV file are now columns in the dataframe df. Then:

format = "%Y%m%d %H"
times = pd.to_datetime(df.YYYYMMDD + ' ' + df.HH, format=format)
df.set_index(times, inplace=True)
# and maybe for cleanup
df = df.drop(['YYYYMMDD','HH'], axis=1)
share|improve this answer
1  
doesn't work, I get unsupported operand type(s) for +: 'numpy.ndarray' and 'str' –  user1234440 Feb 12 at 1:50
    
I assume you already converted the read-in dates to integers. (Even so in that case my error message looks slightly different: TypeError: unsupported operand type(s) for +: 'numpy.dtype' and 'str'. When df.YYYYMMDD and df.HH are strings read-in from a csv file without conversion to integers, this works fine. –  K.-Michael Aye Feb 12 at 4:22
add comment

Your Answer

 
discard

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.