Dataset Viewer
Gender
stringclasses 2
values | Ever_Married
stringclasses 2
values | Age
int64 18
89
| Graduated
stringclasses 2
values | Profession
stringclasses 9
values | Work_Experience
float64 0
14
⌀ | Spending_Score
stringclasses 3
values | Family_Size
float64 1
9
⌀ | Var_1
stringclasses 7
values | __FeatEng_target__
stringclasses 4
values | __index_level_0__
int64 1
8.06k
|
|---|---|---|---|---|---|---|---|---|---|---|
Female
|
Yes
| 71 |
Yes
|
Lawyer
| 8 |
High
| 2 |
Cat_6
|
C
| 1 |
Male
|
Yes
| 43 |
Yes
|
Executive
| 1 |
High
| 4 |
Cat_6
|
B
| 3 |
Female
|
No
| 28 |
Yes
|
Engineer
| 1 |
Low
| 6 |
Cat_2
|
A
| 5 |
Male
|
Yes
| 71 |
Yes
|
Artist
| 0 |
High
| 2 |
Cat_6
|
B
| 6 |
Male
| null | 61 |
Yes
|
Artist
| 1 |
Average
| 5 |
Cat_6
|
C
| 8 |
Male
|
Yes
| 51 |
Yes
|
Entertainment
| 0 |
Low
| 3 | null |
D
| 9 |
Female
|
No
| 26 |
Yes
|
Marketing
| 0 |
Low
| 2 |
Cat_3
|
A
| 10 |
Male
|
Yes
| 53 |
Yes
|
Artist
| 6 |
Average
| 2 |
Cat_6
|
C
| 12 |
Male
|
Yes
| 67 |
Yes
|
Executive
| 1 |
Low
| 2 |
Cat_6
|
A
| 13 |
Male
|
Yes
| 71 |
Yes
|
Lawyer
| 1 |
High
| 2 |
Cat_6
|
C
| 14 |
Male
|
Yes
| 76 |
Yes
|
Lawyer
| 0 |
Low
| 2 |
Cat_6
|
A
| 15 |
Female
|
No
| 52 |
Yes
|
Artist
| null |
Low
| 1 |
Cat_6
|
C
| 16 |
Female
|
Yes
| 58 |
Yes
|
Artist
| 0 |
Average
| 5 |
Cat_6
|
C
| 17 |
Female
|
Yes
| 31 |
No
|
Engineer
| 8 |
Low
| 2 |
Cat_4
|
C
| 19 |
Female
|
No
| 25 |
Yes
|
Healthcare
| 0 |
Low
| 1 |
Cat_6
|
D
| 23 |
Male
|
Yes
| 52 |
Yes
|
Executive
| 1 |
High
| 4 |
Cat_6
|
C
| 24 |
Male
|
No
| 31 |
Yes
|
Healthcare
| 0 |
Low
| 4 |
Cat_6
|
D
| 27 |
Male
|
Yes
| 49 |
Yes
|
Artist
| 1 |
Low
| 2 |
Cat_3
|
A
| 28 |
Male
|
No
| 32 |
Yes
|
Artist
| 1 |
Low
| 2 |
Cat_6
|
A
| 30 |
Female
|
Yes
| 46 |
Yes
|
Marketing
| null |
High
| 3 |
Cat_6
|
B
| 31 |
Male
|
No
| 19 |
No
|
Healthcare
| 0 |
Low
| 3 |
Cat_6
|
D
| 32 |
Female
|
No
| 29 |
No
|
Homemaker
| 0 |
Low
| 4 |
Cat_4
|
A
| 34 |
Male
|
Yes
| 36 |
Yes
|
Artist
| 0 |
High
| 3 |
Cat_6
|
C
| 35 |
Male
|
Yes
| 43 |
Yes
|
Artist
| 1 |
Low
| 2 |
Cat_6
|
B
| 39 |
Female
|
Yes
| 70 |
Yes
|
Engineer
| 0 |
High
| 2 |
Cat_6
|
B
| 40 |
Male
|
No
| 29 |
Yes
|
Doctor
| 1 |
Low
| 4 |
Cat_6
|
C
| 41 |
Male
|
Yes
| 40 |
Yes
|
Artist
| 1 |
Average
| 2 |
Cat_4
|
C
| 42 |
Female
|
No
| 33 |
Yes
|
Engineer
| null |
Low
| 5 |
Cat_7
|
D
| 43 |
Male
|
Yes
| 28 |
Yes
|
Artist
| 9 |
Average
| 2 |
Cat_6
|
A
| 45 |
Female
|
Yes
| 76 |
Yes
|
Marketing
| 0 |
Low
| 2 |
Cat_6
|
B
| 46 |
Male
|
Yes
| 73 |
Yes
|
Executive
| 1 |
High
| 2 |
Cat_6
|
B
| 47 |
Male
|
Yes
| 50 |
Yes
|
Doctor
| 1 |
Low
| 2 |
Cat_6
|
C
| 48 |
Female
|
No
| 49 |
Yes
|
Engineer
| 9 |
Low
| 1 |
Cat_6
|
A
| 49 |
Male
|
Yes
| 65 |
Yes
|
Lawyer
| 11 |
High
| 2 |
Cat_6
|
C
| 50 |
Male
|
Yes
| 57 |
Yes
|
Artist
| 1 |
Average
| 5 |
Cat_6
|
C
| 51 |
Male
|
Yes
| 59 |
Yes
|
Executive
| 1 |
High
| 5 |
Cat_6
|
C
| 52 |
Female
|
No
| 32 |
Yes
|
Engineer
| 0 |
Low
| 3 |
Cat_6
|
D
| 55 |
Female
|
No
| 19 |
No
|
Healthcare
| 0 |
Low
| 5 |
Cat_2
|
D
| 56 |
Female
|
No
| 86 |
Yes
|
Lawyer
| 1 |
Low
| 1 |
Cat_6
|
A
| 58 |
Male
|
Yes
| 52 |
No
|
Entertainment
| 1 |
Average
| 4 |
Cat_3
|
B
| 61 |
Male
|
Yes
| 53 |
Yes
|
Artist
| 3 |
Average
| 4 |
Cat_6
|
C
| 62 |
Male
|
No
| 25 |
Yes
|
Healthcare
| 0 |
Low
| null |
Cat_4
|
D
| 63 |
Male
|
Yes
| 61 |
Yes
|
Entertainment
| 11 |
Average
| 3 |
Cat_6
|
A
| 64 |
Female
|
Yes
| 45 |
Yes
|
Artist
| 8 |
Average
| 2 | null |
B
| 65 |
Female
|
Yes
| 52 |
Yes
|
Doctor
| 1 |
Low
| 3 |
Cat_4
|
B
| 66 |
Female
| null | 33 |
No
|
Healthcare
| 2 |
Low
| 3 |
Cat_2
|
C
| 68 |
Female
|
No
| 40 |
Yes
|
Artist
| null |
Low
| 1 |
Cat_2
|
B
| 69 |
Male
|
Yes
| 25 |
Yes
| null | null |
Low
| null |
Cat_7
|
A
| 70 |
Female
|
Yes
| 86 |
Yes
|
Lawyer
| 1 |
Low
| 2 |
Cat_6
|
C
| 72 |
Male
|
Yes
| 53 |
Yes
|
Artist
| 1 |
Average
| 4 |
Cat_6
|
C
| 77 |
Female
|
No
| 37 |
Yes
|
Doctor
| 1 |
Low
| 1 |
Cat_4
|
A
| 79 |
Male
|
Yes
| 58 |
Yes
|
Doctor
| 0 |
Average
| 2 |
Cat_6
|
C
| 82 |
Male
|
No
| 28 |
Yes
|
Doctor
| 1 |
Low
| 9 |
Cat_4
|
B
| 86 |
Male
|
Yes
| 49 |
Yes
|
Artist
| 1 |
Average
| 3 |
Cat_6
|
C
| 87 |
Male
|
No
| 20 |
No
|
Healthcare
| 1 |
Low
| 5 |
Cat_2
|
D
| 88 |
Male
| null | 47 | null |
Executive
| 1 |
Average
| 5 |
Cat_4
|
B
| 89 |
Male
|
Yes
| 40 |
Yes
|
Executive
| null |
High
| 4 |
Cat_6
|
A
| 92 |
Female
|
No
| 30 |
No
|
Healthcare
| 0 |
Low
| 9 |
Cat_6
|
C
| 93 |
Female
|
No
| 39 |
Yes
|
Entertainment
| 7 |
Low
| 1 |
Cat_6
|
A
| 94 |
Female
|
Yes
| 47 |
Yes
|
Artist
| 0 |
Low
| 3 |
Cat_6
|
C
| 95 |
Male
|
Yes
| 53 |
No
|
Executive
| 0 |
Average
| 5 |
Cat_4
|
B
| 98 |
Female
|
No
| 22 |
No
|
Healthcare
| 1 |
Low
| 9 |
Cat_4
|
D
| 99 |
Female
|
Yes
| 78 |
No
|
Lawyer
| 1 |
Low
| 1 |
Cat_5
|
A
| 100 |
Female
|
Yes
| 47 |
No
|
Engineer
| 8 |
Average
| 5 |
Cat_4
|
B
| 104 |
Female
|
Yes
| 35 |
No
|
Engineer
| 0 |
Average
| 5 |
Cat_4
|
D
| 106 |
Male
|
Yes
| 50 |
Yes
|
Artist
| 0 |
Low
| 2 |
Cat_6
|
B
| 107 |
Male
|
Yes
| 47 |
No
|
Executive
| null |
High
| 4 |
Cat_4
|
B
| 109 |
Female
|
No
| 38 |
Yes
|
Healthcare
| 0 |
Low
| 2 |
Cat_6
|
C
| 110 |
Male
| null | 81 |
No
|
Executive
| null |
High
| 2 |
Cat_4
|
A
| 114 |
Female
|
Yes
| 49 |
No
|
Engineer
| 1 |
Average
| 4 |
Cat_6
|
A
| 116 |
Male
|
Yes
| 52 |
Yes
|
Engineer
| 1 |
Average
| 3 |
Cat_4
|
C
| 117 |
Male
|
No
| 32 |
No
|
Healthcare
| 8 |
Low
| 4 | null |
C
| 119 |
Female
|
Yes
| 73 |
Yes
|
Artist
| null |
Average
| 3 |
Cat_3
|
C
| 122 |
Female
|
Yes
| 63 |
Yes
|
Artist
| 0 |
Average
| 3 |
Cat_6
|
C
| 123 |
Male
|
No
| 35 |
Yes
|
Doctor
| 0 |
Low
| 1 |
Cat_6
|
D
| 124 |
Male
|
Yes
| 46 |
Yes
|
Artist
| 0 |
Average
| 2 |
Cat_6
|
B
| 126 |
Male
|
Yes
| 45 |
Yes
|
Entertainment
| 4 |
Average
| 3 |
Cat_2
|
B
| 129 |
Male
|
Yes
| 56 |
Yes
|
Executive
| 0 |
High
| 1 |
Cat_6
|
B
| 130 |
Male
|
Yes
| 46 |
No
|
Entertainment
| 1 |
High
| 3 |
Cat_6
|
B
| 133 |
Female
|
No
| 28 |
No
|
Healthcare
| 0 |
Low
| 4 |
Cat_6
|
D
| 134 |
Female
|
No
| 20 |
No
|
Doctor
| 1 |
Low
| 6 |
Cat_6
|
D
| 135 |
Female
|
No
| 32 |
Yes
|
Engineer
| 0 |
Low
| 2 |
Cat_6
|
D
| 137 |
Female
|
No
| 51 |
Yes
|
Artist
| 0 |
Low
| 1 |
Cat_3
|
A
| 138 |
Female
|
No
| 41 |
No
|
Engineer
| 9 |
Low
| 1 |
Cat_6
|
A
| 139 |
Male
|
Yes
| 56 |
No
|
Lawyer
| 0 |
High
| 3 |
Cat_3
|
A
| 140 |
Female
|
Yes
| 43 |
Yes
|
Artist
| 0 |
Average
| 4 |
Cat_6
|
C
| 141 |
Male
|
No
| 27 |
Yes
|
Healthcare
| 1 |
Low
| 3 |
Cat_6
|
D
| 144 |
Female
|
No
| 22 |
No
|
Marketing
| 1 |
Low
| 2 |
Cat_1
|
D
| 145 |
Female
|
No
| 25 |
No
|
Engineer
| 1 |
Low
| 1 |
Cat_4
|
A
| 151 |
Male
|
Yes
| 86 |
No
|
Executive
| 0 |
High
| 2 |
Cat_6
|
A
| 152 |
Female
|
No
| 28 |
Yes
|
Healthcare
| null |
Low
| 5 |
Cat_6
|
B
| 153 |
Male
|
Yes
| 72 |
Yes
|
Executive
| 0 |
High
| 2 |
Cat_6
|
C
| 154 |
Female
|
Yes
| 49 |
Yes
|
Artist
| 0 |
Average
| 4 |
Cat_6
|
C
| 156 |
Male
|
No
| 53 |
No
|
Engineer
| 1 |
Low
| 3 |
Cat_4
|
A
| 157 |
Female
|
No
| 43 |
Yes
|
Homemaker
| 14 |
Low
| 1 |
Cat_6
|
D
| 160 |
Male
|
No
| 19 |
No
|
Healthcare
| 1 |
Low
| 4 |
Cat_6
|
D
| 161 |
Female
|
Yes
| 36 |
No
|
Artist
| 1 |
Average
| 4 |
Cat_4
|
B
| 164 |
Female
|
Yes
| 38 |
No
|
Engineer
| 1 |
Low
| 2 |
Cat_4
|
A
| 165 |
Male
|
Yes
| 35 |
Yes
|
Artist
| 1 |
Average
| 2 |
Cat_6
|
B
| 170 |
Male
|
Yes
| 36 |
No
|
Doctor
| 0 |
Average
| 2 |
Cat_7
|
A
| 171 |
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Size of downloaded dataset files:
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Size of the auto-converted Parquet files:
348 MB
Number of rows:
4,594,428
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