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I want to generate a column after the index, before the percentile values, to print the variable that i am for-looping in Var1. Any idea on how to do it?

dropped_df is basically the same thing, but it removes all the 0 before using qcut to find the percentile values.

Sorry idk how to edit the expected output. But basically this column: ['A_Spend', 'A_Spend_drop', 'B_Spend', ....................., 'score', 'score_drop'] is expected to be printed to the left of the 10% column.

Var1 = ['A_Spend','B_Spend', 'C_Spend', 'D_Spend', 'completed_count', 'score']

df_drop_percentile_total= pd.DataFrame(columns=["10%", "20%", "30%", "40%", "50%", "60%", "70%", "80%", "90%", "100%"])

for i in Var1:
    a = pd.qcut(df_drop[i], 10, duplicates= 'drop').cat.categories.right
    df_drop_percentile_total = df_drop_percentile_total.append(pd.DataFrame([a]).rename(columns={0: "10%", 1: "20%", 2: "30%", 3: "40%", 4: "50%", 5: "60%", 6: "70%", 7: "80%", 8: "90%", 9: "100%"}), ignore_index=True, sort=False)

    dropped_df = df_drop[df_drop[i] != 0]
    a = pd.qcut(dropped_df[i], 10, duplicates= 'drop').cat.categories.right
    df_drop_percentile_total = df_drop_percentile_total.append(pd.DataFrame([a]).rename(columns={0: "10%", 1: "20%", 2: "30%", 3: "40%", 4: "50%", 5: "60%", 6: "70%", 7: "80%", 8: "90%", 9: "100%"}), ignore_index=True, sort=False)

    10% 20% 30% 40% 50% 60% 70% 80% 90% 100%
0   3.39    5.887   8.829   12.415  17.05   23.434  32.978  49.039  85.088  2963.267
1   3.524   6.02    8.963   12.574  17.223  23.626  33.208  49.318  85.477  2963.267
2   9.18    1207.051                                
3   3.843   5.284   7.109   9.146   11.548  14.929  19.55   27.424  43.493  1207.051
4   1   2   3   4   5   7   11  19  5499    
5   2   3   4   5   7   11  19  5499        
6   393 427 449 463 476 488 502 525 556 756
7   393 427 449 463 476 488 502 525 556 756
8   31.394  62.76   95.253  128.522 164.541 204.317 252.899 316.975 425.442 2963.267
9   31.481  62.879  95.352  128.602 164.632 204.359 252.985 317.03  425.598 2963.267
10  7.493   16.16   34.357  572.296
  • What do you mean with "column for title"? Could you please provide the expected output? Also, what is df_drop? Can you provide the snippet? – YusufUMS Jun 12 at 6:33

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