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pythonpandaspython-dateutil

Using python pandas to parse CSV with date in format Year, Day, Hour, Min, Sec


I have several CSV files with the format:

Year,Day,Hour,Min,Sec.,P1'S1
 2003,  1, 0, 0,12.22, 0.541
 2003,  1, 1, 0,20.69, 0.708
 2003,  1, 2, 0, 4.95, 0.520
 2003,  1, 3, 0,13.42, 0.539
...

(where day, is the day of the year) and I'm trying to read them using the pandas library (seems a fantastic lib so far).

There is a built-in function to read CSV in pandas, and even better, that function supposedly checks the columns for a date type. and automatically uses that as an index (which would be exactly perfect for what I'm doing).

The thing is, I cannot get it to work with date data in this format.

I tried:

data = pd.read_csv("csvFile.csv", index_col=[0, 1],  , index_col=[0, 1, 2, 3, 4] parse_dates=True)

but it only gets the year correctly:

In [36]: data.index
Out[36]: 
MultiIndex
[(<Timestamp: 2003-09-04 00:00:00>, 1, 0, 0, 12.22)
 (<Timestamp: 2003-09-04 00:00:00>, 1, 1, 0, 20.69)
 (<Timestamp: 2003-09-04 00:00:00>, 1, 2, 0, 4.95) ...,
 (<Timestamp: 2003-09-04 00:00:00>, 365, 21, 0, 3.77)
 (<Timestamp: 2003-09-04 00:00:00>, 365, 22, 0, 14.6)
 (<Timestamp: 2003-09-04 00:00:00>, 365, 23, 0, 13.36)]

From the documentation, I see that you can specify the "date_parser" attribute in the read_csv function of pandas. But the documentation doesn't show how and I'm not being able to figure it out. Anyone with experience in the subject that can give a hand.

Cheers, Bruno


Solution

  • In order to parse a multi-column date, you need to tell pandas which columns should be combined into a single date, so you need to say parse_dates=['Year','Day','Hour','Min','Sec']

    You also need to define your own parser that takes a element from each column you specified in parse_dates:

    In [1]: import pandas as pd
    
    In [2]: from datetime import datetime, timedelta
    
    In [3]: from cStringIO import StringIO
    
    In [4]: data = """\
    Year,Day,Hour,Min,Sec.,P1'S1
     2003,  1, 0, 0,12.22, 0.541
     2003,  1, 1, 0,20.69, 0.708
     2003,  1, 2, 0, 4.95, 0.520
     2003,  1, 3, 0,13.42, 0.539
    """
    
    In [5]: def parse(yr, doy, hr, min, sec):
        yr, doy, hr, min = [int(x) for x in [yr, doy, hr, min]]
        sec = float(sec)
        mu_sec = int((sec - int(sec)) * 1e6)
        sec = int(sec)
        dt = datetime(yr - 1, 12, 31)
        delta = timedelta(days=doy, hours=hr, minutes=min, seconds=sec,
                          microseconds=mu_sec)
        return dt + delta
       ...: 
    
    In [6]: pd.read_csv(StringIO(data), parse_dates={'datetime':      
               ['Year','Day','Hour','Min','Sec.']}, 
               date_parser=parse, index_col='datetime')
    Out[6]: 
                                P1'S1
    datetime                         
    2003-01-01 00:00:12.220000  0.541
    2003-01-01 01:00:20.690000  0.708
    2003-01-01 02:00:04.950000  0.520
    2003-01-01 03:00:13.419999  0.539