Conditionally fill column values based on another columns value in pandas

I have a DataFrame with a few columns. One columns contains a symbol for which currency is being used, for instance a euro or a dollar sign. Another column contains a budget value. So for instance in one row it could mean a budget of 5000 in euro and in the next row it could say a budget of 2000 in dollar.

In pandas I would like to add an extra column to my DataFrame, normalizing the budgets in euro. So basically, for each row the value in the new column should be the value from the budget column * 1 if the symbol in the currency column is a euro sign, and the value in the new column should be the value of the budget column * 0.78125 if the symbol in the currency column is a dollar sign.

I know how to add a column, fill it with values, copy values from another column etc. but not how to fill the new column conditionally based on the value of another column.

Any suggestions?

Answers:

Thank you for visiting the Q&A section on Magenaut. Please note that all the answers may not help you solve the issue immediately. So please treat them as advisements. If you found the post helpful (or not), leave a comment & I’ll get back to you as soon as possible.

Method 1

You probably want to do

df['Normalized'] = np.where(df['Currency'] == '$', df['Budget'] * 0.78125, df['Budget'])

Method 2

Similar results via an alternate style might be to write a function that performs the operation you want on a row, using row['fieldname'] syntax to access individual values/columns, and then perform a DataFrame.apply method upon it

This echoes the answer to the question linked here: pandas create new column based on values from other columns

def normalise_row(row):
    if row['Currency'] == '$'
    ...
    ...
    ...
    return result

df['Normalized'] = df.apply(lambda row : normalise_row(row), axis=1)

Method 3

An option that doesn’t require an additional import for numpy:

df['Normalized'] = df['Budget'].where(df['Currency']=='$', df['Budget'] * 0.78125)

Method 4

Taking Tom Kimber’s suggestion one step further, you could use a Function Dictionary to set various conditions for your functions. This solution is expanding the scope of the question.

I’m using an example from a personal application.

# write the dictionary

def applyCalculateSpend (df_name, cost_method_col, metric_col, rate_col, total_planned_col):
    calculations = {
            'CPMV'  : df_name[metric_col] / 1000 * df_name[rate_col],
            'Free'  : 0
            }
    df_method = df_name[cost_method_col]
    return calculations.get(df_method, "not in dict")

# call the function inside a lambda

test_df['spend'] = test_df.apply(lambda row: applyCalculateSpend(
row,
cost_method_col='cost method',
metric_col='metric',
rate_col='rate',
total_planned_col='total planned'), axis = 1)

  cost method  metric  rate  total planned  spend
0        CPMV    2000   100           1000  200.0
1        CPMV    4000   100           1000  400.0
4        Free       1     2              3    0.0


All methods was sourced from stackoverflow.com or stackexchange.com, is licensed under cc by-sa 2.5, cc by-sa 3.0 and cc by-sa 4.0

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