I have a column in pandas dataframe which has items like following,

Sam William Mathew
Jonty Rodes
Chris Gayle

I want to create a new column (SubBrand_new) such as

1 JR
2 CG

I am using this piece of code,

df1["SubBrand_new"] = "".join([x[0] for x in (df1["SubBrand"].str.split())])

but not able to get what I am looking for. Can anybody help?

2 Answers 2


We can do split with expand and sum i.e

df['SubBrand'].str.split(expand=True).apply(lambda x : x.str[0]).fillna('').sum(1)

0    SWM
1     JR
2     CG
dtype: object
  • 1
    ha-ha, i had exactly the same version: df.SubBrand.str.split(expand=True).apply(lambda c: c.str[0]).fillna('').sum(1), but you were faster :-D Commented Dec 6, 2017 at 14:31
  • 2
    I had df['Abbrev'] = df['Name'].str.split(expand=True).apply(lambda x: x.str[0]).apply(''.join) but I think this is nicer +1
    – EdChum
    Commented Dec 6, 2017 at 14:32
  • @EdChum my first solution was that since there were None I went for sum Commented Dec 6, 2017 at 14:34

You want to apply a function to every line and return a new column with its result. This kind of operation can be applied with the .apply() method, a simple = attribution will not do the trick. A solution in the spirit of your code would be:

df = pd.DataFrame({'Name': ['Marcus Livius Drussus',
                            'Lucius Cornelius Sulla',
                            'Gaius Julius Caesar']})
df['Abrev'] = df.Name.apply(lambda x: "".join([y[0] for y in (x.split())]))

Which yields

    Name                    Abrev
0   Marcus Levius Drussus   MLD
1   Lucius Cornelius Sulla  LCS
2   Gaius Julius Caesar     GJC


I compared it to the other solution, thinking that the apply() method with join() would be pretty slow. I was surprised to find that it is in fact faster. Setting:

N = 3000000
bank = pd.util.testing.rands_array(3,N)
vec = [bank[3*i] + ' ' + bank[3*i+1] + ' ' + bank[3*i+2]  for i in range(N/3)]
df = pd.DataFrame({'Name': vec})

I find:

df.Name.apply(lambda x: "".join([y[0] for y in (x.split())]))
executed in 581ms

df.Name.str.split(expand=True).apply(lambda x : x.str[0]).fillna('').sum(1)
executed in 2.81s
  • If there are 2 different names for which Abrev are coming as same, how to tackle that scenario? Commented Dec 6, 2017 at 14:46
  • What do you want for output if you have names with the same initials?
    – Ricardo
    Commented Dec 6, 2017 at 14:52
  • 1
    In fact list comprehension was what came to my mind when I saw the question, my way is a pandas way of doing it, since we expand it is a lot lot slower Commented Dec 6, 2017 at 15:00

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