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Find mode among all values in c1_ind and c2_ind . I don't want to mode along each column.

import pandas as pd
import numpy as np
from scipy.stats import mode


list =[{"col1":123,"C1_IND    ":"Rev","C2_IND":"Hold"},
{"col1":456,"C1_IND    ":"Hold","C2_IND":"Rev"},
{"col1":123,"C1_IND    ":"Hold","C2_IND":"Service"},
{"col1":1236,"C1_IND    ":"Man","C2_IND":"Man"}]

df = pd.DataFrame.from_dict(list)
print(df)

For another example Find mode among all values in c1_ind and c3_ind


import pandas as pd
import numpy as np
from scipy.stats import mode


list =[{"col1":123,"C1_IND    ":"Rev","C2_IND":"Hold","C3_IND":"Hold"},
{"col1":456,"C1_IND    ":"Hold","C2_IND":"Rev","C3_IND":"Rev"},
{"col1":123,"C1_IND    ":"Hold","C2_IND":"Service","C3_IND":"Service"},
{"col1":1236,"C1_IND    ":"Man","C2_IND":"Man","C3_IND":"Man"}]

df = pd.DataFrame.from_dict(list)
print(df)
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1 Answer 1

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You can use filter to select the columns of interest (here by regex), then stack and finally use mode.:

df.filter(regex='C\d+_IND').stack().mode().iloc[0]

NB. If there are several modes, we only keep one. If you want all, remove the iloc[0], optionally replacing with squeeze.

Output: 'Hold'

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  • Incase I received multiple values using squeeze, is there way to convert those values to list ?
    – pbh
    Commented Mar 20, 2023 at 17:46
  • I got it . Thanks list=v.to_list() print(list)
    – pbh
    Commented Mar 20, 2023 at 17:50
  • 1
    squeeze will just convert a series to scalar if there is only one item. You might want df.filter(regex='C\d+_IND').stack().mode().tolist()
    – mozway
    Commented Mar 20, 2023 at 17:50
  • You have provided better option
    – pbh
    Commented Mar 20, 2023 at 17:51

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