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I am going crazy about this one. I am trying to add a new column to a data frame DF1, based on values found in another data frame DF2. This is how they look,

DF1=

    Date         Amount      Currency
0   2014-08-20   -20000000   EUR
1   2014-08-20   -12000000   CAD
2   2014-08-21   10000       EUR
3   2014-08-21   20000       USD
4   2014-08-22   25000       USD

DF2=

    NAME       OPEN
0   EUR        10
1   CAD        20
2   USD        30

Now, I would like to create a new column in DF1, named 'Amount (Local)', where each amount in 'Amount' is multipled with the correct matching value found in DF2 yielding a result,

DF1=

    Date         Amount      Currency   Amount (Local)
0   2014-08-20   -20000000   EUR        -200000000
1   2014-08-20   -12000000   CAD        -240000000
2   2014-08-21   10000       EUR        100000
3   2014-08-21   20000       USD        600000
4   2014-08-22   25000       USD        750000

If there exists a method for adding a column to DF1 based on a function, instead of just multiplication as the above problem, that would be very much appreciated also.

Thanks,

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2 Answers 2

up vote 2 down vote accepted

You can use map from a dict of your second df (in my case it is called df1. yours is DF2), and then multiply the result of this by the amount:

In [65]:

df['Amount (Local)'] = df['Currency'].map(dict(df1[['NAME','OPEN']].values)) * df['Amount']
df
Out[65]:
             Date    Amount Currency  Amount (Local)
index                                               
0      2014-08-20 -20000000      EUR      -200000000
1      2014-08-20 -12000000      CAD      -240000000
2      2014-08-21     10000      EUR          100000
3      2014-08-21     20000      USD          600000
4      2014-08-22     25000      USD          750000

So breaking this down, map will match the value against the value in the dict key, in this case we are matching Currency against the NAME key, the value in the dict is the OPEN values, the result of this would be:

In [66]:

df['Currency'].map(dict(df1[['NAME','OPEN']].values))
Out[66]:
index
0        10
1        20
2        10
3        30
4        30
Name: Currency, dtype: int64

We then simply multiply this series against the Amount column from df (DF1 in your case) to get the desired result.

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Thanks @EdChum ! Works like a charm. Thanks for the break down as well. I tried @shx2 solution too, which seems to work only if all of the currencies are the same in both data frames. In my real work, I do have a lot more currency tickers in my DF2 whence the second solution is more general. Sorry for any inconvenience. –  gussilago Aug 22 '14 at 7:32

Use fancy-indexing to create a currency array aligned with your data in df1, then use it in multiplication, and assign the result to a new column in df1:

import pandas as pd

ccy_series = pd.Series([10,20,30], index=['EUR', 'CAD', 'USD'])
df1 = pd.DataFrame({'amount': [-200, -120, 1, 2, 2.5], 'ccy': ['EUR', 'CAD', 'EUR', 'USD', 'USD']})

aligned_ccy = ccy_series[df1.ccy].reset_index(drop=True)
aligned_ccy
=> 
0    10
1    20
2    10
3    30
4    30
dtype: int64

df1['amount_local'] = df1.amount *aligned_ccy

df1
=> 
   amount  ccy  amount_local
0  -200.0  EUR         -2000
1  -120.0  CAD         -2400
2     1.0  EUR            10
3     2.0  USD            60
4     2.5  USD            75
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