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I have a dataframe with columns A and B. I want to say for each row if A contains "Fred" then B is called "Blue".

I can do this with this line

df.loc[df['A'].str.contains('Fred'),'B']='Blue'

I would like to do this in a loop of a dictionary.

so

dict = {'Fred':'blue','Jess':'red','David':'Green'}

how would I turn this into a loop?

Example df

0   FREDDDD     xxx
1   dfdfa       dfdf
2   dfdf        dfsd
3   GFDFJESS    sdfedf
4   sdfdsfds    dsfd

Expected output

0   FREDDDD     blue
1   dfdfa       dfdf
2   dfdf        dfsd
3   GFDFJESS    red
4   sdfdsfds    dsfd
  • Does dic always only have two entries? – cs95 Mar 11 at 14:53
  • no, it will have loads – fred.schwartz Mar 11 at 14:54
  • just did 2 for the example – fred.schwartz Mar 11 at 14:54
  • Okay, in this case what if A contains anything besides Fred and Jess? – cs95 Mar 11 at 14:54
  • I see what you're getting at, but there will be alot more outputs, than TRUE and FALSE. so Fred=1, Jess=2,George=Blue,Matt=car etc – fred.schwartz Mar 11 at 14:55
3

Using findall with map , then assign it back

s=df.A.str.findall('|'.join(dic.keys())).str[0].map(dic)
df.loc[s.notnull(),'B']=s
df
Out[1077]: 
           A     B
0  Fred llll  blue
1      CHECK     1
2   Jess mmm   red
3      CHECK     3
4        efg   NaN
5        ijk     3
6        lmn     1
7        opq     7
4

Let's use str.extract with Series.map:

df = pd.DataFrame({
    'A': ['Fred Flintstone', 'Jessie', 'Jess abcxyz', 'something else']})
df

                 A
0  Fred Flintstone
1           Jessie
2      Jess abcxyz
3   something else

p = r'({})'.format('|'.join(dic.keys()))
df['A'].str.extract(p, expand=False).map(dic)

0     TRUE
1    FALSE
2    FALSE
3      NaN
Name: A, dtype: object
  • @anky_91 It's weird, I think dic is already given. – cs95 Mar 11 at 15:05
  • yes. :D true that – anky_91 Mar 11 at 15:06
3

Use something like:

print(df) #dummy dataframe

    Name  some_col
0   Fred       1.0
1  CHECK       1.0
2   Jess       NaN
3  CHECK       3.0
4    efg       NaN
5    ijk       3.0
6    lmn       1.0
7    opq       7.0

d=dict(zip(df.Name,df.Name.str.contains('Fred')))
print(d)

{'Fred': True,
'CHECK': False,
 'Jess': False,
 'efg': False,
 'ijk': False,
 'lmn': False,
 'opq': False}

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