2

I have a two columned data set that I would like to reshape.
Looking at this fake df:

df=pd.DataFrame([
    ['Alex', 'Apple'],['Bob', 'Banana'],['Clark', 'Citrus'], ['Diana', 'Banana'], [
'Elisa', 'Apple'], ['Frida', 'Citrus'], ['George', 'Citrus'], ['Hanna', 'Banana']
],columns=['Name', 'Fruit'])

I would like to have four columns; Name, Apple, Banana and Citrus where the three latter are booleans (true/false).
I've looked inte unstack but it's really not what I am looking for.

3

I think this should be a good use case for get_dummies:

df.set_index('Name')['Fruit'].str.get_dummies().astype(bool).reset_index()

     Name  Apple  Banana  Citrus
0    Alex   True   False   False
1     Bob  False    True   False
2   Clark  False   False    True
3   Diana  False    True   False
4   Elisa   True   False   False
5   Frida  False   False    True
6  George  False   False    True
7   Hanna  False    True   False

In similar vein, we have,

pd.concat([df['Name'], df['Fruit'].str.get_dummies().astype(bool)], axis=1)

     Name  Apple  Banana  Citrus
0    Alex   True   False   False
1     Bob  False    True   False
2   Clark  False   False    True
3   Diana  False    True   False
4   Elisa   True   False   False
5   Frida  False   False    True
6  George  False   False    True
7   Hanna  False    True   False
  • Great! Thank you - still new to python (I'm a r-girl). You don't happen to know how to create a matrix from the new df where True/false is 1/0? – Mactilda Mar 13 at 17:17
  • @Mactilda Just remove the astype(bool) from my code everywhere. I assumed you wanted True/False since you mentioned booleans, but representing the result as 0/1s is more straightforward. – cs95 Mar 13 at 17:18
  • Thanks! I know how to drop the first column is there anyway I can drop the column headers as well to make it a matrix? – Mactilda Mar 13 at 17:31
  • @Mactilda just do a df.values for a matrix – anky_91 Mar 13 at 17:32
  • 1
    @Mactilda Alternatively, I have an answer here that explains how to convert a DataFrame to a matrix. – cs95 Mar 13 at 17:34
2

You can use the below:

df[['Name']].join(pd.get_dummies(df.Fruit).astype(bool))

     Name  Apple  Banana  Citrus
0    Alex   True   False   False
1     Bob  False    True   False
2   Clark  False   False    True
3   Diana  False    True   False
4   Elisa   True   False   False
5   Frida  False   False    True
6  George  False   False    True
7   Hanna  False    True   False
  • I see we've the same idea... +1 – cs95 Mar 13 at 17:12
  • 1
    @coldspeed yes. :D +1d yours too – anky_91 Mar 13 at 17:12
  • 1
    Thank you! You were both very fast :) – Mactilda Mar 13 at 17:18
  • @Mactilda no problem. Cheers..!! – anky_91 Mar 13 at 17:24
2

Seems like crosstab is fine

pd.crosstab(df.Name,df.Fruit).astype(bool).reset_index()
Out[90]: 
Fruit    Name  Apple  Banana  Citrus
0        Alex   True   False   False
1         Bob  False    True   False
2       Clark  False   False    True
3       Diana  False    True   False
4       Elisa   True   False   False
5       Frida  False   False    True
6      George  False   False    True
7       Hanna  False    True   False

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