1

I want to reorganize my pandas dataframe.

Currently my dataframe looks like this:

Name C Nr Value R
1 B 1 1.1 p
1 B 2 1.3 p
1 G 1 2.4 p
1 G 2 2.5 p
2 B 1 4.4 n
2 B 2 8.0 n
2 G 1 8.1 n
2 G 2 7.0 n
3 B 1 9.2 p
3 G 1 6.5 p

and i want my dataframe to look like this

ID B1 B2 G1 G2 R
1 1.1 1.3 2.4 2.5 p
2 4.4 8.0 8.1 7.0 n
3 9.2 N/A 6.5 N/A p

So far i was not able to find a combination of groupby stack unstack to solve this problem.

Do you have any ideas?

The real dataframe is much bigger with ~10000 rows and the desired dataframe would have 800 columns

1 Answer 1

1

Use DataFrame.pivot For MultiIndex in index and columns DataFrame and then map columns for flatten values:

df = df.pivot(index=['Name','R'], columns=['C','Nr'], values='Value')
df.columns = df.columns.map(lambda x: f'{x[0]}{x[1]}')
df = df.reset_index()
print (df)
   Name  R   B1   B2   G1   G2
0     1  p  1.1  1.3  2.4  2.5
1     2  n  4.4  8.0  8.1  7.0
2     3  p  9.2  NaN  6.5  NaN

If R column should be last:

df['R'] = df.pop('R')
print (df)

   Name   B1   B2   G1   G2  R
0     1  1.1  1.3  2.4  2.5  p
1     2  4.4  8.0  8.1  7.0  n
2     3  9.2  NaN  6.5  NaN  p

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.