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pandas - python: using .iterrows() to create columns

I am trying to use a loop function to create a matrix of whether a product was seen in a particular week.

Each row in the df (representing a product) has a close_date (the date the product closed) and a week_diff (the number of weeks the product was listed).

import pandas
mydata = [{'subid' : 'A', 'Close_date_wk': 25, 'week_diff':3},
          {'subid' : 'B', 'Close_date_wk': 26, 'week_diff':2},
          {'subid' : 'C', 'Close_date_wk': 27, 'week_diff':2},]
df = pandas.DataFrame(mydata)

My goal is to see how many alternative products were listed for each product in each date_range

I have set up the following loop:

for index, row in df.iterrows():
    i = 0
    max_range = row['Close_date_wk']    
    min_range = int(row['Close_date_wk'] - row['week_diff'])
    for i in range(min_range,max_range):
        col_head = 'job_week_'  +  str(i)
        row[col_head] = 1

Can you please help explain why the "row[col_head] = 1" line is neither adding a column, nor adding a value to that column for that row.

For example, if:

row A has date range 1,2,3 
row B has date range 2,3  
row C has date range 3,4,5'

then ideally I would like to end up with

row A has 0 alternative products in week 1
          1 alternative products in week 2
          2 alternative products in week 3
row B has 1 alternative products in week 2
          2 alternative products in week 3
&c..
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1 Answer

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You can't mutate the df using row here to add a new column, you'd either refer to the original df or use .loc, .iloc, or .ix, example:

In [29]:

df = pd.DataFrame(columns=list('abc'), data = np.random.randn(5,3))
df
Out[29]:
          a         b         c
0 -1.525011  0.778190 -1.010391
1  0.619824  0.790439 -0.692568
2  1.272323  1.620728  0.192169
3  0.193523  0.070921  1.067544
4  0.057110 -1.007442  1.706704
In [30]:

for index,row in df.iterrows():
    df.loc[index,'d'] = np.random.randint(0, 10)
df
Out[30]:
          a         b         c  d
0 -1.525011  0.778190 -1.010391  9
1  0.619824  0.790439 -0.692568  9
2  1.272323  1.620728  0.192169  1
3  0.193523  0.070921  1.067544  0
4  0.057110 -1.007442  1.706704  9

You can modify existing rows:

In [31]:
# reset the df by slicing
df = df[list('abc')]
for index,row in df.iterrows():
    row['b'] = np.random.randint(0, 10)
df
Out[31]:
          a  b         c
0 -1.525011  8 -1.010391
1  0.619824  2 -0.692568
2  1.272323  8  0.192169
3  0.193523  2  1.067544
4  0.057110  3  1.706704

But adding a new column using row won't work:

In [35]:

df = df[list('abc')]
for index,row in df.iterrows():
    row['d'] = np.random.randint(0,10)
df
Out[35]:
          a  b         c
0 -1.525011  8 -1.010391
1  0.619824  2 -0.692568
2  1.272323  8  0.192169
3  0.193523  2  1.067544
4  0.057110  3  1.706704

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