I'd like to create a new column B by applying a function on each row of column A, which is of data type object and filled with list data, in dataframe DF without changing the values of column A.

def f(i):
 if(type(i) is list):
    for j in range(0,len(i)):
 return i
df = pd.DataFrame([1,1],columns=['A'])
df['B']=df['A'].apply(lambda x: f(x))

Unfortunately the following happens: df['B'] = function(df['A']), but also df['A'] = function(df['A']).

Please note: df['A'] is a list, dtype is object (o).

To be clear: I want column A to remain as original. Can anyone tell me how to achieve this?

  • What does function look like? Doesn't df['A'].apply(function, axis=1) do what you want? – Jon Clements Jul 15 '18 at 12:05
  • function is defined as: def label(name): for k in concepts.keys(): if (name in concepts[k]): label = "#"+str(k) return label – Willem Jul 15 '18 at 12:11
  • Can you edit your post to include that in a codeblock - it's not particularly readable in comments... – Jon Clements Jul 15 '18 at 12:12

you want to use apply on column A

df['B'] = df['A'].apply(function)

this does the function on each value in A.

essentially you are using the apply method of the series object, more info:


  • With this approach both df['A'] and df['B'] change to function(A), am I missing something here? – Willem Jul 15 '18 at 12:20
  • Only df['B'] gets updated with this approach, df['A'] does not change – lhay86 Jul 15 '18 at 12:21
  • note that apply returns a Series, it doesn't do operations inplace. the original info doesn't change. – moshevi Jul 15 '18 at 12:34
  • please note that column A is a list in df['A'].dtype = object (O). I still get the same result: both A and B change – Willem Jul 15 '18 at 14:16
  • you can make a copy of the list in function. if type(name) is list: label = name.copy() – moshevi Jul 15 '18 at 14:24
df2 = df.copy()
df['B'] = df2.apply(lamba row: function(row['A']), axis=1)

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