Воспользуйтесь DataFrame.stack():
Читаем данные:
In [6]: df = pd.read_csv(r"D:\download\data.csv", sep=";", index_col=[0,1])
In [7]: df
Out[7]:
Jan 2018 I Jan 2019 II Feb 2018 I Feb 2019 II
48 Lip 12.0 14.0 16.0 12.0
47 Len 0.0 0.7 0.5 0.2
50 Mos 43.0 45.0 38.8 36.4
Решение:
In [8]: df.stack()
Out[8]:
48 Lip Jan 2018 I 12.0
Jan 2019 II 14.0
Feb 2018 I 16.0
Feb 2019 II 12.0
47 Len Jan 2018 I 0.0
Jan 2019 II 0.7
Feb 2018 I 0.5
Feb 2019 II 0.2
50 Mos Jan 2018 I 43.0
Jan 2019 II 45.0
Feb 2018 I 38.8
Feb 2019 II 36.4
dtype: float64
Решение (без мульти-индекса):
In [9]: df.stack().reset_index()
Out[9]:
level_0 level_1 level_2 0
0 48 Lip Jan 2018 I 12.0
1 48 Lip Jan 2019 II 14.0
2 48 Lip Feb 2018 I 16.0
3 48 Lip Feb 2019 II 12.0
4 47 Len Jan 2018 I 0.0
5 47 Len Jan 2019 II 0.7
6 47 Len Feb 2018 I 0.5
7 47 Len Feb 2019 II 0.2
8 50 Mos Jan 2018 I 43.0
9 50 Mos Jan 2019 II 45.0
10 50 Mos Feb 2018 I 38.8
11 50 Mos Feb 2019 II 36.4
PS переименовать столбцы можно воспользовавшись DataFrame.rename(columns={"col1_name":"new_name1", "...":"..."})...