# create two new columns by using two existing columns

I want to create a function . My data frame is df' and it has two columnsAcandAt`. Both have integer values.

I want to create two new columns c and t.

• if Ac ==Atthenc=1andt=1`
• if Ac > At then c=0 and AP=5
• if Ac < At then c'=1 and AP=3.

I tried this but neither getting any error nor getting any result.

def my_fun(row):
if df.loc[row,"Ac"] == df.loc[row,"At"]:
df.loc[row,"Ac"] = 1
df.loc[row,"At"] = 1
elif df.loc[row,"Ac"] > df.loc[row,"At"]:
df.loc[row,"Ac"] = 0
df.loc[row,"At"] = 5
else:
df.loc[row,"Ac"] = 1
df.loc[row,"At"] = 3
• post the output you are getting and expected output Commented Apr 20, 2020 at 11:11

You can try np.select instead of loops:

cond1 = df['FTHG'].eq(df['FTAG'])
choice1 = [1,1]
cond2 = df['FTHG'].gt(df['FTAG'])
choice2 = [3,0]
cond3 = df['FTHG'].lt(df['FTAG'])
choice3 = [0,3]
df[['HP','AP']]= pd.DataFrame(np.select([cond1[:,None],cond2[:,None],cond3[:,None]],
[choice1,choice2,choice3]))
print(df)

FTHG  FTAG  HP  AP
0     4     0   3   0
1     1     5   0   3
2     0     3   0   3
3     5     2   3   0
4     7     5   3   0

u can use np.select

conditions_hp  = [ df['FTHG'] == df['FTHG'],  df['FTHG'] > df['FTHG'],  df['FTHG'] < df['FTHG'] ]
conditions_ap  = [ df['FTHG'] == df['FTHG'],  df['FTHG'] < df['FTHG'],  df['FTHG'] > df['FTHG'] ]
choices     = [ 1, 3, 0 ]
df2['HP'] = np.select(conditions_hp, choices, default=np.nan)
df2['AP'] = np.select(conditions_ap, choices, default=np.nan)