number_of_pregnancies
int8
0
17
plasma_glucose_concentration
float64
0
199
diastolic_blood_pressure
float64
0
122
triceps_thickness
float64
0
99
serum_insulin
float64
0
846
bmi
float64
0
67.1
diabetes_pedigree
float64
0.08
2.42
age
float64
21
81
has_diabetes
class label
2 classes
6
148
72
35
0
33.6
0.627
50
1yes
1
85
66
29
0
26.6
0.351
31
0no
8
183
64
0
0
23.3
0.672
32
1yes
1
89
66
23
94
28.1
0.167
21
0no
0
137
40
35
168
43.1
2.288
33
1yes
5
116
74
0
0
25.6
0.201
30
0no
3
78
50
32
88
31
0.248
26
1yes
10
115
0
0
0
35.3
0.134
29
0no
2
197
70
45
543
30.5
0.158
53
1yes
8
125
96
0
0
0
0.232
54
1yes
4
110
92
0
0
37.6
0.191
30
0no
10
168
74
0
0
38
0.537
34
1yes
10
139
80
0
0
27.1
1.441
57
0no
1
189
60
23
846
30.1
0.398
59
1yes
5
166
72
19
175
25.8
0.587
51
1yes
7
100
0
0
0
30
0.484
32
1yes
0
118
84
47
230
45.8
0.551
31
1yes
7
107
74
0
0
29.6
0.254
31
1yes
1
103
30
38
83
43.3
0.183
33
0no
1
115
70
30
96
34.6
0.529
32
1yes
3
126
88
41
235
39.3
0.704
27
0no
8
99
84
0
0
35.4
0.388
50
0no
7
196
90
0
0
39.8
0.451
41
1yes
9
119
80
35
0
29
0.263
29
1yes
11
143
94
33
146
36.6
0.254
51
1yes
10
125
70
26
115
31.1
0.205
41
1yes
7
147
76
0
0
39.4
0.257
43
1yes
1
97
66
15
140
23.2
0.487
22
0no
13
145
82
19
110
22.2
0.245
57
0no
5
117
92
0
0
34.1
0.337
38
0no
5
109
75
26
0
36
0.546
60
0no
3
158
76
36
245
31.6
0.851
28
1yes
3
88
58
11
54
24.8
0.267
22
0no
6
92
92
0
0
19.9
0.188
28
0no
10
122
78
31
0
27.6
0.512
45
0no
4
103
60
33
192
24
0.966
33
0no
11
138
76
0
0
33.2
0.42
35
0no
9
102
76
37
0
32.9
0.665
46
1yes
2
90
68
42
0
38.2
0.503
27
1yes
4
111
72
47
207
37.1
1.39
56
1yes
3
180
64
25
70
34
0.271
26
0no
7
133
84
0
0
40.2
0.696
37
0no
7
106
92
18
0
22.7
0.235
48
0no
9
171
110
24
240
45.4
0.721
54
1yes
7
159
64
0
0
27.4
0.294
40
0no
0
180
66
39
0
42
1.893
25
1yes
1
146
56
0
0
29.7
0.564
29
0no
2
71
70
27
0
28
0.586
22
0no
7
103
66
32
0
39.1
0.344
31
1yes
7
105
0
0
0
0
0.305
24
0no
1
103
80
11
82
19.4
0.491
22
0no
1
101
50
15
36
24.2
0.526
26
0no
5
88
66
21
23
24.4
0.342
30
0no
8
176
90
34
300
33.7
0.467
58
1yes
7
150
66
42
342
34.7
0.718
42
0no
1
73
50
10
0
23
0.248
21
0no
7
187
68
39
304
37.7
0.254
41
1yes
0
100
88
60
110
46.8
0.962
31
0no
0
146
82
0
0
40.5
1.781
44
0no
0
105
64
41
142
41.5
0.173
22
0no
2
84
0
0
0
0
0.304
21
0no
8
133
72
0
0
32.9
0.27
39
1yes
5
44
62
0
0
25
0.587
36
0no
2
141
58
34
128
25.4
0.699
24
0no
7
114
66
0
0
32.8
0.258
42
1yes
5
99
74
27
0
29
0.203
32
0no
0
109
88
30
0
32.5
0.855
38
1yes
2
109
92
0
0
42.7
0.845
54
0no
1
95
66
13
38
19.6
0.334
25
0no
4
146
85
27
100
28.9
0.189
27
0no
2
100
66
20
90
32.9
0.867
28
1yes
5
139
64
35
140
28.6
0.411
26
0no
13
126
90
0
0
43.4
0.583
42
1yes
4
129
86
20
270
35.1
0.231
23
0no
1
79
75
30
0
32
0.396
22
0no
1
0
48
20
0
24.7
0.14
22
0no
7
62
78
0
0
32.6
0.391
41
0no
5
95
72
33
0
37.7
0.37
27
0no
0
131
0
0
0
43.2
0.27
26
1yes
2
112
66
22
0
25
0.307
24
0no
3
113
44
13
0
22.4
0.14
22
0no
2
74
0
0
0
0
0.102
22
0no
7
83
78
26
71
29.3
0.767
36
0no
0
101
65
28
0
24.6
0.237
22
0no
5
137
108
0
0
48.8
0.227
37
1yes
2
110
74
29
125
32.4
0.698
27
0no
13
106
72
54
0
36.6
0.178
45
0no
2
100
68
25
71
38.5
0.324
26
0no
15
136
70
32
110
37.1
0.153
43
1yes
1
107
68
19
0
26.5
0.165
24
0no
1
80
55
0
0
19.1
0.258
21
0no
4
123
80
15
176
32
0.443
34
0no
7
81
78
40
48
46.7
0.261
42
0no
4
134
72
0
0
23.8
0.277
60
1yes
2
142
82
18
64
24.7
0.761
21
0no
6
144
72
27
228
33.9
0.255
40
0no
2
92
62
28
0
31.6
0.13
24
0no
1
71
48
18
76
20.4
0.323
22
0no
6
93
50
30
64
28.7
0.356
23
0no
1
122
90
51
220
49.7
0.325
31
1yes
YAML Metadata Error: "configs[0]" must be of type object

pima

The pima dataset from the UCI ML repository. Predict diabetes of a patient.

Configurations and tasks

Configuration Task Description
pima Binary classification Does the patient have diabetes?

Usage

from datasets import load_dataset

dataset = load_dataset("mstz/pima")["train"]
Downloads last month
10
Edit dataset card