1

Could you let me know how to paste a list into a multi-index dataframe?

I wanna paste list1 into column([func1 - In - Name1, Name2]['Val6'])

and list2 into column([func1 - Out - Name3, Name4]['Val6']) in multi-index dataframe

below is dataframe I used

from pandas import Series, DataFrame
raw_data = {'Function': ['env', 'env', 'env', 'func1', 'func1', 'func1'],
            'Type': ['In', 'In', 'In', 'In','In', 'out'],
            'Name': ['Volt', 'Temp', 'BD#', 'Name1','Name2', 'Name3'],
            'Val1': ['Max', 'High', '1', '3', '5', '6'],
            'Val2': ['Typ', 'Mid', '2', '4', '7', '6'],
            'Val3': ['Min', 'Low', '3', '3', '6', '3'],
            'Val4': ['Max', 'High', '4', '3', '9', '4'],
            'Val5': ['Max', 'Low', '5', '3', '4', '5'] }
df = DataFrame(raw_data)
df= df.set_index(["Function", "Type","Name"])
df['Val6'] = np.NaN

list1 = [1,2]
list2 = [3,4]

print (df)

below is printed dataframe

                     Val1 Val2 Val3  Val4 Val5  Val6
Function Type Name                                  
env      In   Volt    Max  Typ  Min   Max  Max   NaN
              Temp   High  Mid  Low  High  Low   NaN
              BD#       1    2    3     4    5   NaN
func1    In   Name1     4    2    3     4    5   NaN
              Name2     6    7    6     9    4   NaN
         out  Name3     6    6    3     4    5   NaN
              Name4     3    3    4     5    6   NaN

Below is expected results. I'd like to sequentially put each list1 and list2 into dataframe instead of NaN like below

                         Val1 Val2 Val3  Val4 Val5  Val6
    Function Type Name                                  
    env      In   Volt    Max  Typ  Min   Max  Max   NaN
                  Temp   High  Mid  Low  High  Low   NaN
                  BD#       1    2    3     4    5   NaN
    func1    In   Name1     4    2    3     4    5     1
                  Name2     6    7    6     9    4     2
             out  Name3     6    6    3     4    5     3
                  Name4     3    3    4     5    6     4

I have tried to use concat, replace functions to do it but failed

In more complex datafrmae, I think it is better to use mask of multi -index in dataframe.

list1=[1,2]
list2=[3,4]
m1 = df.index.get_level_values(0) == 'func1'
m2 = df.index.get_level_values(1) == 'In'

list1 = [float(i) for i in list1]
df_list1=pd.DataFrame(list1)

df.replace(df[m1&m2]['Val6'], df_list1)

Unfortunately, I don't have any idea to solve the problem. T_T

Please give me some advice.

1

IIUC add an extra line at the end, simple modify it like it's a non-multi-index dataframe:

df['Val6'] = df['Val6'].tolist()[:-4] + list1 + list2

So your code would be:

from pandas import Series, DataFrame
raw_data = {'Function': ['env', 'env', 'env', 'func1', 'func1', 'func1'],
            'Type': ['In', 'In', 'In', 'In','In', 'out'],
            'Name': ['Volt', 'Temp', 'BD#', 'Name1','Name2', 'Name3'],
            'Val1': ['Max', 'High', '1', '3', '5', '6'],
            'Val2': ['Typ', 'Mid', '2', '4', '7', '6'],
            'Val3': ['Min', 'Low', '3', '3', '6', '3'],
            'Val4': ['Max', 'High', '4', '3', '9', '4'],
            'Val5': ['Max', 'Low', '5', '3', '4', '5'] }
df = DataFrame(raw_data)
df= df.set_index(["Function", "Type","Name"])
df['Val6'] = np.NaN

list1 = [1,2]
list2 = [3,4]

df['Val6'] = df['Val6'].tolist()[:-4] + list1 + list2

print(df)

Output:

                     Val1 Val2 Val3  Val4 Val5  Val6
Function Type Name                                  
env      In   Volt    Max  Typ  Min   Max  Max   NaN
              Temp   High  Mid  Low  High  Low   NaN
              BD#       1    2    3     4    5   1.0
func1    In   Name1     3    4    3     3    3   2.0
              Name2     5    7    6     9    4   3.0
         out  Name3     6    6    3     4    5   4.0
  • 1
    Thank you for your answer. That's good solution. In more complex dataframe, I think it is better to use mask of multi -index in dataframe. Unfortunately, I don't have any idea to solve the problem. T_T – JY Kim Mar 26 at 2:37
  • @JYKim It will be a little harder... – U9-Forward Mar 26 at 2:38
  • I also think it over more. Thanks – JY Kim Mar 26 at 2:44

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