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I am trying to find the GroupBy Clause (in PANDAS DATAFRAME) which can do following things.

  1. InPlace Transformation.
  2. Add All the Money
  3. If possible then to get the Original Dataframe with Columns "A" and "Money", And not "A" as index and "Money" as column.

The input is like below.

dataframe = pandas.DataFrame({'A':[11,11,22,22],

Now I wanted to add / subtract Money column based on Type of Cust. Like if its "C" then subtract while "D" then add and rolled to the column "A". So for this example it will be

For A as in "11" Money is "5" For B as in "22" Money is "-45"

share|improve this question
up vote 2 down vote accepted

Starting with your example

In [16]: df
    A Cust  Money
0  11    C     10
1  11    D     15
2  22    C     20
3  22    C     25
  1. Set the sign of Money based on whether Cust is C or D, as you describe.

    In [17]: df['Money'][df['Cust'] == 'C'] *= -1
  2. Sum the money, grouped by the column 'A'.

    In [18]: df.groupby('A').sum()
    11      5
    22    -45
  3. Run In [17] again to restore your original DataFrame, intact.

share|improve this answer
Hmmm, I'm surprised that [17] isn't editing a copy... – Andy Hayden May 22 '13 at 15:24
The above works for me. But reversing the []s, as in df[df['Cust'] == 'C']['Money'] *= -1, would edit a copy. Right? – Dan Allan May 22 '13 at 15:28
*Scatches head*, I need to write something up about this as it's confusing. :) – Andy Hayden May 22 '13 at 15:30
Haha. When it comes to this, I still haven't really graduated from the dumb approach: "Try things until one works." If you share a write-up, I look forward to finally knowing what I'm doing. – Dan Allan May 22 '13 at 15:36
Depending on exactly what you mean, you might want df.groupby('A').sum().reset_index() or df.groupby('A').transform(np.sum).reset_index(). – Dan Allan May 22 '13 at 19:31

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