# How to loop through comparing one column with its corresponding column in Python

I have an excel file which I imported as a dataframe. I want to loop through the columns of the dataframe. For eg, I want to compare 2nd column with first , then 3rd column with second.I have converted rule_id column into index. This is the data:

``````rule_id reqid1  reqid2  reqid3
53139   0         0      1
51181   1         1      0
50412   0         1      1
50356   0         0      1
50239   0         1      0
50238   1         1      0
50014   1         0      1
``````

And this is the code I am using.

``````for n in fin2.columns[0:]:
n = 0
n_int = int(n)
if ([fin2.iloc[: , n_int+1] != fin2.iloc[: , n_int]]):
print dframe2

if ([fin2.iloc[: , n_int+1] == fin2.iloc[: , n_int]]):
print dframe3
n = n+1
``````

With this code , I am only able to compare second column with first , I have set the value of n to 0 and also applied the logic , n=n+1 which increments the value of n every time the conditions fulfills. Your help would be much appreciated. I have created these two functions:

``````def solved_prior(df):
n = 0
n_int = int(n)
df['solved_prior'] = np.where(df.iloc[: , n_int+1] < df.iloc[: , n_int] , 100 , np.nan)
return df
``````

and

``````def repeated_prior(df):
n = 0
n_int = int(n)
df['repeated_prior'] = np.where((df.iloc[: , n_int+1] == df.iloc[: , n_int]) & (df.iloc[: , n_int] == 1) , 1 , np.nan)
return df
``````

I have stored these functions in daframe2 and dataframe3 respectively. I want the result for first comparison between 2nd and 1st column as:

``````rule_id reqid1  reqid2  reqid3 solved prior repeated prior
53139   0         0      1    NaN          NaN
51181   1         1      0    NaN           1
50412   0         1      1    NaN          NaN
50356   0         0      1    NaN          NaN
50239   0         1      0    NaN          NaN
50238   1         1      0    NaN           1
50014   1         0      1    100          NaN
``````

And the result for the comparison between column 3rd and 2nd should look like this:

``````  rule_id reqid1     reqid2 reqid3 solved prior repeated prior
53139   0         0      1       NaN          NaN
51181   1         1      0       100          NaN
50412   0         1      1       NaN           1
50356   0         0      1       NaN          NaN
50239   0         1      0       100          NaN
50238   1         1      0       NaN          NaN
50014   1         0      1       NaN          NaN
``````
• Please share expected output – yatu Feb 11 at 11:36
• "For every column, instantiate a variable called 'n' to zero, then do some comparison and ultimately increment 'n' by one." <- which at the repeat will re-instatiate `n` to zero. While I think it could be done more efficiently in the first place; you should fix even in this implementation 2 bugs .. instantiate OUTside of the loop and increment INside the if-statements.. – Uvar Feb 11 at 11:46
• yatu I have edited this question , please take a look. – sagar khanna Feb 11 at 12:15
• @Uvar , I tried that already , but it doesn't work. – sagar khanna Feb 11 at 12:19

Like one of the comments state, your expected output could influence what the best solution is. Keeping that in mind, looping over columns is rarely the best solution. I suggest simply adding new columns that indicate whether the columns being compared are equal or not. For instance:

``````In [1]: import pandas as pd

In [2]: df = pd.DataFrame({'rule_id': [53139,51181,50412,50356,50239,50238,50014], 'reqid1':[0,1,0,0,0,1,1],'reqid2':[0,1,1,0,1,1,0],'reqid3':[1,0,1,1,0,0,1]})

In [3]: df
Out[3]:
rule_id  reqid1  reqid2  reqid3
0    53139       0       0       1
1    51181       1       1       0
2    50412       0       1       1
3    50356       0       0       1
4    50239       0       1       0
5    50238       1       1       0
6    50014       1       0       1

In [4]: df['compare_1_and_2'] = df.reqid1 == df.reqid2

In [5]: df
Out[5]:
rule_id  reqid1  reqid2  reqid3  compare_1_and_2
0    53139       0       0       1             True
1    51181       1       1       0             True
2    50412       0       1       1            False
3    50356       0       0       1             True
4    50239       0       1       0            False
5    50238       1       1       0             True
6    50014       1       0       1            False

In [6]: df['compare_2_and_3'] = df.reqid2 == df.reqid3

In [7]: df
Out[7]:
rule_id  reqid1  reqid2  reqid3  compare_1_and_2  compare_2_and_3
0    53139       0       0       1             True            False
1    51181       1       1       0             True            False
2    50412       0       1       1            False             True
3    50356       0       0       1             True            False
4    50239       0       1       0            False            False
5    50238       1       1       0             True            False
6    50014       1       0       1            False            False
``````

Now if the columns are very long, you might find any() and all() useful. To see if any of the values are true (There is at least one value that is identical):

``````In [8]: df.compare_1_and_2.any()
Out[8]: True
``````

And to see if all values are true (The columns are identical):

``````In [9]: df.compare_1_and_2.all()
Out[9]: False
``````

Edit: (to match expected output) Now it is a simple matter of using the boolean columns to match what you require

``````df['solved_prior_1_vs_2'] = np.NaN
df['repeated_prior_1_vs_2'] = np.NaN
df.loc[(df.compare_1_and_2 == False) & (df.reqid1 == 1),'solved_prior_1_vs_2'] = 100
df.loc[(df.compare_1_and_2 == True) & (df.reqid1 == 1),'repeated_prior_1_vs_2'] = 1
``````

And the results look like this:

``````In [27]: df[['rule_id','reqid1','reqid2','solved_prior_1_vs_2','repeated_prior_1_vs_2']]
Out[27]:
rule_id  reqid1  reqid2  solved_prior_1_vs_2  repeated_prior_1_vs_2
0    53139       0       0                  NaN                    NaN
1    51181       1       1                  NaN                    1.0
2    50412       0       1                  NaN                    NaN
3    50356       0       0                  NaN                    NaN
4    50239       0       1                  NaN                    NaN
5    50238       1       1                  NaN                    1.0
6    50014       1       0                100.0                    NaN
``````

You can now remove the columns you don't need, and do the same for comparing 2 to 3. Also may convert new columns to ints.

Final edit(Hopefully): A simpler solution is to just define a function such as:

``````def compare_columns(df, col1, col2):
repeated_name = "{}_{}_repeated".format(col1, col2)
solved_name = "{}_{}_solved".format(col1, col2)
diff = df[col1] == df[col2]
col1_is_1 = df[col1] == 1
df[repeated_name] = 100
df[solved_name] = 1
df[repeated_name] = df[repeated_name].astype(int)
df[solved_name] = df[sovled_name].astype(int)
df.loc[~(diff & col1_is_1), solved_name] = np.NaN
df.loc[~(~diff & col1_is_1), repeated_name] = np.NaN
return df
``````

And now you can just do:

``````In [42]: df1 = compare_columns(df, 'reqid1', 'reqid2')
In [43]: df1
Out[43]:
rule_id  reqid1  reqid2  reqid3  reqid1_reqid2_repeated  reqid1_reqid2_solved
0    53139       0       0       1                     NaN                   NaN
1    51181       1       1       0                     NaN                   1
2    50412       0       1       1                     NaN                   NaN
3    50356       0       0       1                     NaN                   NaN
4    50239       0       1       0                     NaN                   NaN
5    50238       1       1       0                     NaN                   1
6    50014       1       0       1                     100                   NaN
``````
• this seems fine but I don't want the comparison result in boolean. I have edited the question , please take a look. – sagar khanna Feb 11 at 12:15
• This just might work. Thankyou. – sagar khanna Feb 11 at 12:38
• If values are repeated and if both columns have value = 1 , then 1 should be allotted. And if the first column has 1 and the second column has 0 , then 100 should be allotted and for all other scenarios NaN should be allotted. The end result seems wrong. – sagar khanna Feb 11 at 13:29
• Oops, typo in the second astype(). Fixed. – Marius Feb 12 at 6:36
• In this , the result is correct but you need to swap the repeated and solved column names. The value of solved should be 100 and repeated should be 1. You have done the other way round. Also, instead of 2 columns for solved and repeated ruleid , can't we just have one combine column consisting of the logic for solved and repeated. – sagar khanna Feb 12 at 11:00