# Compare multiple row values

I want to compare for each row, values of A with the other columns

The problem is more complex but i tried to simplify it in this table:

``````     A    B    C  D
0  1.3  1.0  1.1  1
1  2.5  2.9  2.6  3
2  3.1  3.0  3.2  2
``````

The result should look like this:

Here in index 0: 1.3 is larger than the values in B,C and D, then we return 1, otherwise it is 0

``````     A    B    C  D  result
0  1.3  1.0  1.1  1       1
1  2.5  2.9  2.6  3       0
2  3.1  3.0  3.2  2       0
``````

Use `assign` to create new column
Use `df.le(df.A, 0)` to compare column `'A'` to all other columns
Use `all(1)` to find where `True` for all columns
Use `astype(int)` to make it `1` or `0`

``````df.assign(result=df.lt(df.A, 0).all(1).astype(int))

A    B    C  D  result
0  1.3  1.0  1.1  1       1
1  2.5  2.9  2.6  3       0
2  3.1  3.0  3.2  2       0
``````

You can use `gt` or `le` for compare, then `any` or `all` for get at least one `True` or `all` Trues and last cast boolean mask to `int`:

``````df['result'] = (~df[['B','C','D']].gt(df.A, axis=0).any(1)).astype(int)
print (df)
A    B    C  D  result
0  1.3  1.0  1.1  1       1
1  2.5  2.9  2.6  3       0
2  3.1  3.0  3.2  2       0
``````

Another solution:

``````df['result'] = df[['B','C','D']].le(df.A, axis=0).all(1).astype(int)
print (df)
A    B    C  D  result
0  1.3  1.0  1.1  1       1
1  2.5  2.9  2.6  3       0
2  3.1  3.0  3.2  2       0
``````

You can use idxmax:

``````df['result'] = (df.idxmax(axis=1)== 'A').astype(int)
``````

Output:

``````    A    B    C  D  result
0  1.3  1.0  1.1  1       1
1  2.5  2.9  2.6  3       0
2  3.1  3.0  3.2  2       0
``````

if you know the column names do:

``````df['results']=(df.loc[:,'A']>df.loc[:,'B':'D'].max(axis=1)).astype(int)
``````

if you know want to work with columns order you can do:

``````df['results']=(df.iloc[:,0]>df.iloc[:,1:].max(axis=1)).astype(int)
``````

on your example those will give the same output. the "astype(int)" at the end converts the boolean value to 0/1.