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:
		
			348 MB
Size of the auto-converted Parquet files:
		
			348 MB
Number of rows:
		
			4,594,428
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			Spawning.aiNo elements in this dataset have been identified as either opted-out, or opted-in, by their creator.
