12

In Python 2.7.11 & Pandas 0.18.1:

If we have the following csv file:

YEAR,MONTH,ID
2011,JAN,1
2011,FEB,1
2011,MAR,1

Is there any way to read it as a Pandas data frame and convert the MONTH column into strings like this?

YEAR,MONTH,ID
2011,1,1
2011,2,1
2011,3,1

Some pandas functions such as "dt.strftime('%b')" doesn't seem to work. Could someone enlighten?

3 Answers 3

28

I guess the easiest and one of the fastest method would be to create a mapping dict and map like as follows:

In [2]: df
Out[2]:
   YEAR MONTH  ID
0  2011   JAN   1
1  2011   FEB   1
2  2011   MAR   1

In [3]: d = {'JAN':1, 'FEB':2, 'MAR':3, 'APR':4, }

In [4]: df.MONTH = df.MONTH.map(d)

In [5]: df
Out[5]:
   YEAR  MONTH  ID
0  2011      1   1
1  2011      2   1
2  2011      3   1

you may want to use df.MONTH = df.MONTH.str.upper().map(d) if not all MONTH values are in upper case

another more slower but more robust method:

In [11]: pd.to_datetime(df.MONTH, format='%b').dt.month
Out[11]:
0    1
1    2
2    3
Name: MONTH, dtype: int64

UPDATE: we can create a mapping automatically (thanks to @Quetzalcoatl)

import calendar

d = dict((v,k) for k,v in enumerate(calendar.month_abbr))

or alternatively (using only Pandas):

d = dict(zip(range(1,13), pd.date_range('2000-01-01', freq='M', periods=12).strftime('%b')))
1
2

Here's a one-liner using the pandas API and the calendar.month_abbr convenience:

from calendar import month_abbr

lower_ma = [m.lower() for m in month_abbr]

# one-liner with Pandas
df['MONTH'] = df['MONTH'].str.lower().map(lambda m: lower_ma.index(m)).astype('Int8')
  1. Convert the calendar.month_abbr which are title-cased, into lower-cased
  2. Feed the lowered-cased MONTH series to a map method >> .str.lower()
  3. Use a lambda function within the map method and get the index of the corresponding month abbreviation via the .index python list method >> .map(lambda m: lower_ma.index(m))
  4. Convert to integer >> .astype('Int8')
0
-1

Following Max's last point; create the same thing but rely on your local dataframe's way of encoding months:

# create mapping
d = dict((v,k) for k,v in zip(range(1, 13), df.Month.unique()))
# create column
df['month_index'] = df['Month'].map(d)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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