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I have a pandas DataFrame with 18 columns and about 10000 rows.

My first 3 columns have separate values for YEAR, MONTH, and DAY. I need to merge these three columns and have the entire date in one column for all the rows.

My code so far is:

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What is a DataFrame? Please show us some code so we can understand what you are doing. –  Lennart Regebro Dec 7 '12 at 5:11
its a pandas DataFrame im sure ... pandas being a numpy wrapper with added functionality .... (its probably classified as more than a wrapper) –  Joran Beasley Dec 7 '12 at 5:14
temp = read_table(folder + r'\BBE_12-11-13_0731_edited_2.lvm', sep=r'\t') cols = ['Year', 'Month', 'Day', 'Hour' 'Minute', 'Seconde', 'Depth (m)', 'Temperature (Deg C)', 'Green (µg_l)', 'Blue_Green (µg_l)', 'Diatom (µg_l)', 'Crypto (µg_l)', 'Class5 (µg_l)', 'Class6 (µg_l)', 'Class7 (µg_l)', 'Yellow (µg_l)', 'Transmission (%)'] df = DataFrame(data = temp) df.columns = cols –  Rahul Bhatia Dec 7 '12 at 5:27
Have Reposted the Question....Please Check below link/stackoverflow.com/questions/13757490/… –  Rahul Bhatia Dec 7 '12 at 5:35
@RahulBhatia Why did you repost the question, instead of editing it? –  kuyan Dec 7 '12 at 5:38

1 Answer 1

up vote 5 down vote accepted

You are looking for apply (merge is like a database join.):

In [1]: from pandas import DataFrame

In [2]: df = DataFrame([[1,11,2012],[1,10,2012]], columns=['day','month','year'])

In [3]: df
   day month  year
0    1    11  2012
1    1    10  2012

In [4]: df.apply(lambda row: str(row['day'])+'/'+str(row['month'])+'/'+str(row['year']), axis=1)
0    1/11/2012
1    1/10/2012

The axis=1 part means you are selecting columns rather than row.

If you wanted to give a specific date you could use datetime:

In [5]: import datetime

In [6]: df.apply(lambda row: datetime.datetime(row['year'],row['month'],row['day']), axis=1)
0    2012-11-01 00:00:00
1    2012-10-01 00:00:00

You can add these as columns in you dataframe as follows:

In [7]: df['new_date'] = df.apply(lambda row: str(row['day'])+'/'+str(row['month'])+'/'+str(row['year']), axis=1)

In [8]: df
   day month  year   new_date
0    1    11  2012  1/11/2012
1    1    10  2012  1/10/2012


It's worth noting that pandas has an easy way to parse_dates when reading as a csv.

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