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)): i[j]+=1 else: i+=1 return i df = pd.DataFrame([1,1],columns=['A']) df['A']=df['A'].astype(object) df.at[[0,1],'A']=[1,2] 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?