Dataset Preview
Duplicate
The full dataset viewer is not available (click to read why). Only showing a preview of the rows.
The dataset generation failed because of a cast error
Error code:   DatasetGenerationCastError
Exception:    DatasetGenerationCastError
Message:      An error occurred while generating the dataset

All the data files must have the same columns, but at some point there are 3 new columns ({'ProdTaken', 'Unnamed: 0', 'CustomerID'})

This happened while the csv dataset builder was generating data using

hf://datasets/KarmaLoop/tourism-project/tourism.csv (at revision 1dec072127f8f7f0b47afdfa22b60c1414390ec3), [/tmp/hf-datasets-cache/medium/datasets/88327256284044-config-parquet-and-info-KarmaLoop-tourism-project-8c5472d8/hub/datasets--KarmaLoop--tourism-project/snapshots/1dec072127f8f7f0b47afdfa22b60c1414390ec3/Xtest.csv (origin=hf://datasets/KarmaLoop/tourism-project@1dec072127f8f7f0b47afdfa22b60c1414390ec3/Xtest.csv), /tmp/hf-datasets-cache/medium/datasets/88327256284044-config-parquet-and-info-KarmaLoop-tourism-project-8c5472d8/hub/datasets--KarmaLoop--tourism-project/snapshots/1dec072127f8f7f0b47afdfa22b60c1414390ec3/Xtrain.csv (origin=hf://datasets/KarmaLoop/tourism-project@1dec072127f8f7f0b47afdfa22b60c1414390ec3/Xtrain.csv), /tmp/hf-datasets-cache/medium/datasets/88327256284044-config-parquet-and-info-KarmaLoop-tourism-project-8c5472d8/hub/datasets--KarmaLoop--tourism-project/snapshots/1dec072127f8f7f0b47afdfa22b60c1414390ec3/tourism.csv (origin=hf://datasets/KarmaLoop/tourism-project@1dec072127f8f7f0b47afdfa22b60c1414390ec3/tourism.csv), /tmp/hf-datasets-cache/medium/datasets/88327256284044-config-parquet-and-info-KarmaLoop-tourism-project-8c5472d8/hub/datasets--KarmaLoop--tourism-project/snapshots/1dec072127f8f7f0b47afdfa22b60c1414390ec3/ytest.csv (origin=hf://datasets/KarmaLoop/tourism-project@1dec072127f8f7f0b47afdfa22b60c1414390ec3/ytest.csv), /tmp/hf-datasets-cache/medium/datasets/88327256284044-config-parquet-and-info-KarmaLoop-tourism-project-8c5472d8/hub/datasets--KarmaLoop--tourism-project/snapshots/1dec072127f8f7f0b47afdfa22b60c1414390ec3/ytrain.csv (origin=hf://datasets/KarmaLoop/tourism-project@1dec072127f8f7f0b47afdfa22b60c1414390ec3/ytrain.csv)]

Please either edit the data files to have matching columns, or separate them into different configurations (see docs at https://hf.co/docs/hub/datasets-manual-configuration#multiple-configurations)
Traceback:    Traceback (most recent call last):
                File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 1887, in _prepare_split_single
                  writer.write_table(table)
                File "/usr/local/lib/python3.12/site-packages/datasets/arrow_writer.py", line 675, in write_table
                  pa_table = table_cast(pa_table, self._schema)
                             ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.12/site-packages/datasets/table.py", line 2272, in table_cast
                  return cast_table_to_schema(table, schema)
                         ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.12/site-packages/datasets/table.py", line 2218, in cast_table_to_schema
                  raise CastError(
              datasets.table.CastError: Couldn't cast
              Unnamed: 0: int64
              CustomerID: int64
              ProdTaken: int64
              Age: double
              TypeofContact: string
              CityTier: int64
              DurationOfPitch: double
              Occupation: string
              Gender: string
              NumberOfPersonVisiting: int64
              NumberOfFollowups: double
              ProductPitched: string
              PreferredPropertyStar: double
              MaritalStatus: string
              NumberOfTrips: double
              Passport: int64
              PitchSatisfactionScore: int64
              OwnCar: int64
              NumberOfChildrenVisiting: double
              Designation: string
              MonthlyIncome: double
              -- schema metadata --
              pandas: '{"index_columns": [{"kind": "range", "name": null, "start": 0, "' + 2881
              to
              {'Age': Value('float64'), 'NumberOfPersonVisiting': Value('int64'), 'NumberOfTrips': Value('float64'), 'NumberOfChildrenVisiting': Value('float64'), 'MonthlyIncome': Value('float64'), 'PitchSatisfactionScore': Value('int64'), 'NumberOfFollowups': Value('float64'), 'DurationOfPitch': Value('float64'), 'TypeofContact': Value('string'), 'CityTier': Value('int64'), 'Occupation': Value('string'), 'Gender': Value('string'), 'PreferredPropertyStar': Value('float64'), 'MaritalStatus': Value('string'), 'Passport': Value('int64'), 'OwnCar': Value('int64'), 'Designation': Value('string'), 'ProductPitched': Value('string')}
              because column names don't match
              
              During handling of the above exception, another exception occurred:
              
              Traceback (most recent call last):
                File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 1347, in compute_config_parquet_and_info_response
                  parquet_operations = convert_to_parquet(builder)
                                       ^^^^^^^^^^^^^^^^^^^^^^^^^^^
                File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 980, in convert_to_parquet
                  builder.download_and_prepare(
                File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 884, in download_and_prepare
                  self._download_and_prepare(
                File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 947, in _download_and_prepare
                  self._prepare_split(split_generator, **prepare_split_kwargs)
                File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 1736, in _prepare_split
                  for job_id, done, content in self._prepare_split_single(
                                               ^^^^^^^^^^^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 1889, in _prepare_split_single
                  raise DatasetGenerationCastError.from_cast_error(
              datasets.exceptions.DatasetGenerationCastError: An error occurred while generating the dataset
              
              All the data files must have the same columns, but at some point there are 3 new columns ({'ProdTaken', 'Unnamed: 0', 'CustomerID'})
              
              This happened while the csv dataset builder was generating data using
              
              hf://datasets/KarmaLoop/tourism-project/tourism.csv (at revision 1dec072127f8f7f0b47afdfa22b60c1414390ec3), [/tmp/hf-datasets-cache/medium/datasets/88327256284044-config-parquet-and-info-KarmaLoop-tourism-project-8c5472d8/hub/datasets--KarmaLoop--tourism-project/snapshots/1dec072127f8f7f0b47afdfa22b60c1414390ec3/Xtest.csv (origin=hf://datasets/KarmaLoop/tourism-project@1dec072127f8f7f0b47afdfa22b60c1414390ec3/Xtest.csv), /tmp/hf-datasets-cache/medium/datasets/88327256284044-config-parquet-and-info-KarmaLoop-tourism-project-8c5472d8/hub/datasets--KarmaLoop--tourism-project/snapshots/1dec072127f8f7f0b47afdfa22b60c1414390ec3/Xtrain.csv (origin=hf://datasets/KarmaLoop/tourism-project@1dec072127f8f7f0b47afdfa22b60c1414390ec3/Xtrain.csv), /tmp/hf-datasets-cache/medium/datasets/88327256284044-config-parquet-and-info-KarmaLoop-tourism-project-8c5472d8/hub/datasets--KarmaLoop--tourism-project/snapshots/1dec072127f8f7f0b47afdfa22b60c1414390ec3/tourism.csv (origin=hf://datasets/KarmaLoop/tourism-project@1dec072127f8f7f0b47afdfa22b60c1414390ec3/tourism.csv), /tmp/hf-datasets-cache/medium/datasets/88327256284044-config-parquet-and-info-KarmaLoop-tourism-project-8c5472d8/hub/datasets--KarmaLoop--tourism-project/snapshots/1dec072127f8f7f0b47afdfa22b60c1414390ec3/ytest.csv (origin=hf://datasets/KarmaLoop/tourism-project@1dec072127f8f7f0b47afdfa22b60c1414390ec3/ytest.csv), /tmp/hf-datasets-cache/medium/datasets/88327256284044-config-parquet-and-info-KarmaLoop-tourism-project-8c5472d8/hub/datasets--KarmaLoop--tourism-project/snapshots/1dec072127f8f7f0b47afdfa22b60c1414390ec3/ytrain.csv (origin=hf://datasets/KarmaLoop/tourism-project@1dec072127f8f7f0b47afdfa22b60c1414390ec3/ytrain.csv)]
              
              Please either edit the data files to have matching columns, or separate them into different configurations (see docs at https://hf.co/docs/hub/datasets-manual-configuration#multiple-configurations)

Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.

Age
float64
NumberOfPersonVisiting
int64
NumberOfTrips
float64
NumberOfChildrenVisiting
float64
MonthlyIncome
float64
PitchSatisfactionScore
int64
NumberOfFollowups
float64
DurationOfPitch
float64
TypeofContact
string
CityTier
int64
Occupation
string
Gender
string
PreferredPropertyStar
float64
MaritalStatus
string
Passport
int64
OwnCar
int64
Designation
string
ProductPitched
string
44
3
2
0
22,879
4
1
8
Self Enquiry
1
Salaried
Female
3
Married
1
1
Senior Manager
Standard
35
3
3
2
27,306
1
4
20
Self Enquiry
3
Small Business
Male
3
Married
0
1
Senior Manager
Standard
47
4
3
2
29,131
2
4
7
Self Enquiry
3
Small Business
Female
5
Married
0
1
Senior Manager
Standard
32
3
2
0
21,220
3
3
6
Self Enquiry
1
Salaried
Male
4
Married
0
1
Manager
Deluxe
59
3
6
2
21,157
2
4
9
Self Enquiry
1
Large Business
Male
3
Single
0
1
Executive
Basic
44
2
1
1
33,213
5
3
11
Self Enquiry
3
Small Business
Male
4
Divorced
0
1
VP
King
32
2
2
0
17,837
3
4
35
Self Enquiry
1
Salaried
Female
4
Single
0
1
Executive
Basic
27
3
3
2
23,974
5
4
7
Self Enquiry
3
Salaried
Male
3
Married
0
0
Manager
Deluxe
38
2
4
1
20,249
5
4
8
Company Invited
3
Salaried
Male
3
Divorced
0
1
Manager
Deluxe
32
3
2
1
23,499
4
4
12
Self Enquiry
1
Large Business
Male
3
Married
1
1
Executive
Basic
40
3
2
1
18,319
3
3
30
Self Enquiry
1
Large Business
Male
3
Married
0
1
Manager
Deluxe
38
3
3
1
22,963
1
4
20
Self Enquiry
1
Small Business
Male
3
Married
0
0
Manager
Deluxe
35
3
2
0
23,789
5
3
6
Company Invited
3
Small Business
Fe Male
3
Unmarried
0
1
Senior Manager
Standard
35
3
2
1
17,074
1
3
8
Self Enquiry
1
Salaried
Female
5
Married
1
1
Executive
Basic
34
3
2
1
22,086
5
6
17
Self Enquiry
1
Small Business
Male
3
Married
0
0
Executive
Basic
33
3
3
1
21,515
3
5
36
Self Enquiry
1
Salaried
Female
4
Unmarried
0
1
Executive
Basic
51
3
4
0
17,075
3
3
15
Self Enquiry
1
Salaried
Male
3
Divorced
0
1
Executive
Basic
29
2
2
1
16,091
3
1
30
Company Invited
3
Large Business
Male
5
Single
0
1
Executive
Basic
34
3
1
2
20,304
2
2
25
Company Invited
3
Small Business
Male
3
Single
1
1
Manager
Deluxe
38
2
6
1
32,342
2
4
14
Self Enquiry
1
Small Business
Male
3
Single
0
0
Senior Manager
Standard
46
3
1
0
24,396
2
3
6
Self Enquiry
1
Small Business
Male
5
Married
0
0
Senior Manager
Standard
54
2
3
0
25,725
3
3
25
Self Enquiry
2
Small Business
Male
4
Divorced
0
1
Senior Manager
Standard
56
2
1
0
26,103
4
3
15
Self Enquiry
1
Small Business
Male
3
Married
0
0
AVP
Super Deluxe
30
2
19
1
17,285
4
3
10
Company Invited
1
Large Business
Male
3
Single
1
1
Executive
Basic
26
3
1
2
17,867
5
3
6
Self Enquiry
1
Small Business
Male
5
Single
0
1
Executive
Basic
33
2
1
0
26,691
4
3
13
Self Enquiry
1
Small Business
Male
3
Married
0
1
Senior Manager
Standard
24
3
2
1
17,127
3
4
23
Self Enquiry
1
Salaried
Male
4
Married
0
1
Executive
Basic
30
4
2
3
25,062
5
6
36
Self Enquiry
1
Salaried
Male
3
Married
0
1
Manager
Deluxe
33
3
1
0
20,147
1
3
8
Company Invited
3
Small Business
Female
4
Single
0
0
Manager
Deluxe
53
2
3
0
22,525
1
4
8
Company Invited
3
Small Business
Female
4
Married
0
1
Senior Manager
Standard
29
3
2
2
23,576
3
4
14
Company Invited
3
Salaried
Male
5
Unmarried
0
1
Manager
Deluxe
39
2
2
0
20,151
4
3
15
Self Enquiry
1
Small Business
Male
5
Married
0
1
Manager
Deluxe
46
4
2
3
23,483
5
4
9
Self Enquiry
3
Salaried
Male
4
Married
0
1
Manager
Deluxe
35
3
2
1
30,672
3
4
14
Self Enquiry
1
Salaried
Female
4
Single
0
1
Senior Manager
Standard
35
4
8
1
20,909
5
4
9
Company Invited
3
Small Business
Female
3
Married
0
0
Executive
Basic
33
4
8
3
21,010
3
5
7
Company Invited
1
Salaried
Female
4
Married
0
0
Executive
Basic
29
2
2
0
21,623
4
4
16
Company Invited
1
Salaried
Female
3
Unmarried
0
1
Executive
Basic
41
2
1
1
21,230
1
3
16
Company Invited
3
Salaried
Male
3
Single
0
0
Manager
Deluxe
43
3
6
1
22,950
3
6
36
Self Enquiry
1
Small Business
Male
3
Unmarried
0
1
Manager
Deluxe
35
3
2
2
21,029
4
6
13
Company Invited
3
Small Business
Female
3
Married
0
0
Executive
Basic
41
3
4
0
28,591
1
3
12
Self Enquiry
3
Salaried
Female
3
Single
1
0
Senior Manager
Standard
33
2
1
0
21,949
4
4
6
Self Enquiry
1
Salaried
Female
3
Unmarried
0
0
Manager
Deluxe
40
2
1
0
28,499
4
3
15
Company Invited
1
Small Business
Fe Male
3
Unmarried
0
0
Senior Manager
Standard
26
3
1
1
18,102
3
3
9
Company Invited
1
Large Business
Male
5
Single
0
0
Executive
Basic
41
2
3
0
18,072
1
3
25
Self Enquiry
1
Salaried
Male
5
Married
0
0
Manager
Deluxe
37
2
2
1
27,185
3
3
17
Company Invited
1
Salaried
Male
3
Married
1
0
Senior Manager
Standard
31
2
4
1
17,329
4
4
13
Self Enquiry
3
Salaried
Male
3
Married
0
1
Executive
Basic
45
3
8
2
21,040
3
6
8
Self Enquiry
3
Salaried
Male
4
Single
0
0
Manager
Deluxe
33
3
2
2
18,348
5
3
9
Company Invited
1
Salaried
Male
5
Single
1
1
Executive
Basic
33
4
3
1
21,048
4
4
9
Self Enquiry
1
Small Business
Female
4
Divorced
0
0
Executive
Basic
33
3
3
2
21,388
3
3
14
Self Enquiry
1
Salaried
Male
3
Unmarried
1
0
Manager
Deluxe
30
2
1
0
21,577
2
3
18
Self Enquiry
3
Large Business
Female
3
Unmarried
0
1
Manager
Deluxe
42
2
7
1
17,759
3
2
25
Company Invited
1
Small Business
Male
3
Married
1
1
Executive
Basic
46
2
7
0
32,861
5
3
8
Self Enquiry
1
Salaried
Male
3
Married
0
1
AVP
Super Deluxe
51
4
6
3
21,058
5
4
16
Self Enquiry
1
Salaried
Male
3
Married
0
1
Executive
Basic
30
2
3
0
21,091
1
5
8
Self Enquiry
1
Salaried
Female
3
Single
0
1
Manager
Deluxe
37
3
6
1
22,366
5
3
25
Company Invited
1
Salaried
Male
3
Divorced
0
0
Executive
Basic
28
2
2
1
17,706
4
3
6
Company Invited
2
Salaried
Male
3
Married
0
0
Executive
Basic
42
2
1
0
28,348
3
3
12
Self Enquiry
1
Small Business
Male
5
Married
0
1
Senior Manager
Standard
44
2
1
0
20,933
2
3
10
Self Enquiry
1
Small Business
Male
4
Single
0
1
Manager
Deluxe
39
3
3
1
21,118
1
5
9
Company Invited
1
Small Business
Female
4
Single
0
1
Executive
Basic
42
2
4
0
21,545
2
2
23
Self Enquiry
1
Salaried
Female
5
Unmarried
1
0
Manager
Deluxe
39
2
2
1
25,880
5
3
28
Company Invited
1
Small Business
Fe Male
5
Unmarried
1
1
Senior Manager
Standard
28
2
1
0
21,674
3
5
6
Company Invited
1
Salaried
Female
3
Divorced
0
1
Manager
Deluxe
43
3
7
1
32,159
5
3
20
Self Enquiry
1
Salaried
Male
5
Married
0
1
AVP
Super Deluxe
45
4
3
2
26,656
3
4
22
Self Enquiry
1
Small Business
Female
3
Divorced
0
0
Senior Manager
Standard
53
4
5
2
24,255
4
4
13
Self Enquiry
1
Large Business
Male
5
Married
1
1
Manager
Deluxe
42
4
4
1
20,916
1
4
16
Self Enquiry
1
Salaried
Male
5
Married
0
0
Executive
Basic
36
3
7
0
20,237
3
3
33
Self Enquiry
1
Small Business
Male
3
Divorced
0
1
Manager
Deluxe
22
4
3
3
20,748
5
5
7
Self Enquiry
1
Large Business
Female
4
Single
1
0
Executive
Basic
37
4
2
3
24,592
2
4
12
Self Enquiry
1
Salaried
Male
4
Unmarried
0
0
Manager
Deluxe
30
3
7
2
24,443
3
4
20
Company Invited
3
Large Business
Fe Male
4
Unmarried
0
0
Manager
Deluxe
36
4
4
3
28,562
5
5
18
Company Invited
1
Small Business
Male
5
Married
1
1
Senior Manager
Standard
40
2
2
1
34,033
5
3
10
Self Enquiry
1
Small Business
Female
3
Divorced
0
0
VP
King
51
2
3
1
25,650
2
5
14
Company Invited
1
Salaried
Male
3
Unmarried
0
0
Senior Manager
Standard
39
3
6
2
21,536
3
5
7
Self Enquiry
3
Salaried
Male
5
Unmarried
0
0
Executive
Basic
43
2
2
1
29,336
3
4
18
Self Enquiry
1
Salaried
Male
4
Married
0
0
AVP
Super Deluxe
35
3
2
0
16,951
4
3
10
Self Enquiry
1
Salaried
Male
3
Married
0
0
Executive
Basic
40
4
2
2
29,616
2
4
9
Company Invited
1
Large Business
Female
3
Single
0
1
Senior Manager
Standard
27
3
3
1
23,362
1
4
17
Self Enquiry
3
Small Business
Male
3
Unmarried
0
0
Manager
Deluxe
26
2
7
0
17,042
5
3
8
Company Invited
1
Salaried
Male
5
Divorced
1
1
Executive
Basic
43
3
2
0
31,959
2
3
32
Company Invited
3
Salaried
Male
3
Divorced
1
0
AVP
Super Deluxe
32
4
3
3
25,511
2
4
18
Self Enquiry
1
Small Business
Male
5
Divorced
1
0
Manager
Deluxe
35
3
4
1
30,309
2
5
12
Self Enquiry
1
Small Business
Female
5
Single
0
0
Senior Manager
Standard
34
3
8
2
21,300
4
5
11
Self Enquiry
1
Small Business
Female
4
Married
0
0
Executive
Basic
31
2
2
1
16,261
4
4
14
Self Enquiry
1
Salaried
Female
4
Single
0
0
Executive
Basic
35
4
3
1
24,392
1
4
16
Self Enquiry
3
Salaried
Female
3
Married
0
0
Manager
Deluxe
42
3
2
2
24,829
5
6
16
Company Invited
3
Salaried
Male
3
Married
0
1
AVP
Super Deluxe
34
2
4
1
20,121
5
3
14
Self Enquiry
1
Salaried
Female
5
Married
0
1
Manager
Deluxe
34
3
2
1
21,385
3
4
9
Self Enquiry
1
Salaried
Female
5
Divorced
0
1
Executive
Basic
34
2
1
0
26,994
3
3
13
Self Enquiry
1
Salaried
Fe Male
4
Unmarried
0
1
Senior Manager
Standard
39
3
5
2
24,939
2
4
36
Self Enquiry
1
Large Business
Male
3
Divorced
0
0
Manager
Deluxe
29
3
3
1
22,119
1
4
12
Self Enquiry
1
Large Business
Male
3
Unmarried
1
0
Executive
Basic
35
2
3
1
20,762
3
3
8
Company Invited
1
Small Business
Male
3
Married
0
0
Manager
Deluxe
26
2
2
1
20,828
2
4
10
Self Enquiry
3
Small Business
Male
3
Single
1
1
Manager
Deluxe
37
3
7
1
21,513
2
4
10
Self Enquiry
1
Salaried
Female
3
Married
0
1
Executive
Basic
35
4
6
2
24,024
3
4
16
Company Invited
1
Salaried
Male
5
Married
0
0
Manager
Deluxe
40
3
2
1
30,847
3
4
9
Company Invited
1
Salaried
Male
3
Married
0
1
AVP
Super Deluxe
33
2
2
0
17,851
2
3
11
Self Enquiry
3
Small Business
Female
3
Single
1
1
Executive
Basic
38
3
1
0
17,899
4
4
15
Self Enquiry
3
Small Business
Male
4
Divorced
0
0
Executive
Basic
End of preview.

No dataset card yet

Downloads last month
12