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The dataset generation failed
Error code:   DatasetGenerationError
Exception:    CastError
Message:      Couldn't cast
data_id: string
entity_id: string
entity_text: string
answer_eval: null
answer: list<item: string>
  child 0, item: string
question: string
data_split: string
image_id: string
to
{'data_id': Value('string'), 'image_id': Value('string'), 'question': Value('string'), 'answer': List(Value('string')), 'answer_eval': List(Json(decode=True)), 'data_split': Value('string')}
because column names don't match
Traceback:    Traceback (most recent call last):
                File "/usr/local/lib/python3.14/site-packages/datasets/builder.py", line 1816, in _prepare_split_single
                  for key, table in generator:
                                    ^^^^^^^^^
                File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 613, in wrapped
                  for item in generator(*args, **kwargs):
                              ~~~~~~~~~^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/site-packages/datasets/packaged_modules/json/json.py", line 343, in _generate_tables
                  self._cast_table(pa_table, json_field_paths=json_field_paths),
                  ~~~~~~~~~~~~~~~~^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/site-packages/datasets/packaged_modules/json/json.py", line 132, in _cast_table
                  pa_table = table_cast(pa_table, self.info.features.arrow_schema)
                File "/usr/local/lib/python3.14/site-packages/datasets/table.py", line 2369, in table_cast
                  return cast_table_to_schema(table, schema)
                File "/usr/local/lib/python3.14/site-packages/datasets/table.py", line 2297, in cast_table_to_schema
                  raise CastError(
                  ...<3 lines>...
                  )
              datasets.table.CastError: Couldn't cast
              data_id: string
              entity_id: string
              entity_text: string
              answer_eval: null
              answer: list<item: string>
                child 0, item: string
              question: string
              data_split: string
              image_id: string
              to
              {'data_id': Value('string'), 'image_id': Value('string'), 'question': Value('string'), 'answer': List(Value('string')), 'answer_eval': List(Json(decode=True)), 'data_split': Value('string')}
              because column names don't match
              
              The above exception was the direct cause of the following exception:
              
              Traceback (most recent call last):
                File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 1369, in compute_config_parquet_and_info_response
                  parquet_operations, partial, estimated_dataset_info = stream_convert_to_parquet(
                                                                        ~~~~~~~~~~~~~~~~~~~~~~~~~^
                      builder, max_dataset_size_bytes=max_dataset_size_bytes
                      ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                  )
                  ^
                File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 948, in stream_convert_to_parquet
                  builder._prepare_split(split_generator=splits_generators[split], file_format="parquet")
                  ~~~~~~~~~~~~~~~~~~~~~~^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                File "/usr/local/lib/python3.14/site-packages/datasets/builder.py", line 1683, in _prepare_split
                  for job_id, done, content in self._prepare_split_single(
                                               ~~~~~~~~~~~~~~~~~~~~~~~~~~^
                      gen_kwargs=gen_kwargs, job_id=job_id, **_prepare_split_args
                      ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
                  ):
                  ^
                File "/usr/local/lib/python3.14/site-packages/datasets/builder.py", line 1869, in _prepare_split_single
                  raise DatasetGenerationError("An error occurred while generating the dataset") from e
              datasets.exceptions.DatasetGenerationError: An error occurred while generating the dataset

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data_id
string
image_id
string
question
string
answer
list
answer_eval
list
data_split
string
infoseek_train_00000000
oven_01963180
Which place is this animal endemic to?
[ "People's Republic of China" ]
[ "cn", "People's Republic of China", "China", "Mainland China", "China PR", "PR China", "CHN", "CN", "PRC", "🇨🇳" ]
train
infoseek_train_00000001
oven_03952028
What is the mohs' hardness of this material?
[ "7.6" ]
[ { "wikidata": 7.6, "range": [ 6.84, 8.36 ] } ]
train
infoseek_train_00000002
oven_01857671
What is the conservation status of this animal? (The status is assigned by the international union for conservation of nature. Choose one among Endangered,Least Concern,Critically Endangered,extinct species,extinct in the wild,Vulnerable,Near Threatened,Data Deficient)
[ "Endangered" ]
[ "Endangered species", "Endangered", "EN" ]
train
infoseek_train_00000003
oven_02959375
Who is the manufacturer of this vehicle?
[ "AM General" ]
[ "Am General", "AM General LLC", "AM General", "AM General Corporation" ]
train
infoseek_train_00000004
oven_04416546
What fields are the person in the image specialized in?
[ "baking" ]
[ "baking" ]
train
infoseek_train_00000005
oven_03002067
Which culture is associated with this vehicle?
[ "Inuit" ]
[ "Inuit", "Inuk", "Inuits" ]
train
infoseek_train_00000006
oven_03957581
Who is the discoverer or inventor of this material?
[ "Jean-Baptiste Guimet" ]
[ "Jean-Baptiste Guimet" ]
train
infoseek_train_00000007
oven_00077923
What is the height of this building in metre?
[ "28" ]
[ { "wikidata": 28, "range": [ 25.2, 30.8 ] } ]
train
infoseek_train_00000008
oven_04148759
What is the source that produces this animal?
[ "Fabaceae" ]
[ "Fabaceae", "Papilionaceae", "Leguminosae" ]
train
infoseek_train_00000009
oven_00057589
What is this place named after?
[ "Spain" ]
[ "Kingdom of Spain", "ESP", "🇪🇸", "ES", "Spain" ]
train
infoseek_train_00000010
oven_03088640
What does this person do for a living?
[ "playwright", "comedian", "singer", "stage actor", "film actor" ]
[ "comedian", "theatrical actress", "scriptwriter", "film actor", "theatre actress", "comedienne", "movie actress", "dramatist", "stage actress", "comic", "songstress", "film actress", "movie actor", "playwrite", "theatre actor", "playwright", "theater actress", "vocalist", "theate...
train
infoseek_train_00000011
oven_02976344
Who is the developer of this object?
[ "Apple Inc." ]
[ "Apple", "Apple, Inc", "Apple Computer Incorporated", "Apple Inc.", "Apple Computer Inc", "Apple Incorporated", "Apple Computer, Inc." ]
train
infoseek_train_00000012
oven_00155366
Who is the discoverer or inventor of this food?
[ "Aidu-ya" ]
[ "Aizuya", "Aidu-ya", "Aiduya" ]
train
infoseek_train_00000013
oven_02762378
What kind of effect does this object have?
[ "dam failure", "death", "property damage" ]
[ "cessation", "meeting the Reaper", "death", "final rest", "destruction of property", "bereft of life", "went to the afterlife", "damage to property", "succumbs", "damage", "morbidity", "dam failure", "has succumbed", "has passed away", "fatal", "perish", "deceased", "passes away", ...
train
infoseek_train_00000014
oven_03721368
In which year was this vehicle invented or discovered?
[ "1915" ]
[ 1916, 1914, 1915 ]
train
infoseek_train_00000015
oven_01642366
What is the litter size of this animal?
[ "5.4" ]
[ { "wikidata": 5.4, "range": [ 4.86, 5.94 ] } ]
train
infoseek_train_00000016
oven_00106760
How long in metre is the longest span of this bridge?
[ "564" ]
[ { "wikidata": 564, "range": [ 507.6, 620.4 ] } ]
train
infoseek_train_00000017
oven_03871483
What is the location of this object?
[ "bathroom" ]
[ "restroom", "bathroom" ]
train
infoseek_train_00000018
oven_02511896
Which company manufactures this food?
[ "pastry chef" ]
[ "patissier", "pâtissier", "pastry chef" ]
train
infoseek_train_00000019
oven_03183340
What is the country of origin of this material?
[ "India" ]
[ "in", "Bharat", "India", "🇮🇳", "Republic of India", "Hindustan", "IN", "IND", "Bharatvarsh", "Aryavratt" ]
train
infoseek_train_00000020
oven_04633031
What is this plant named after?
[ "Matthias de l'Obel" ]
[ "Matthias de l'Obel", "Matthaeus Lobelius", "Mathias de Lobel", "Lobel", "Mathias de l'Obel" ]
train
infoseek_train_00000021
oven_00022576
What is this building dedicated to?
[ "Gautama Buddha" ]
[ "Trikay", "Padmayani", "Trigyesh", "Mahatma", "Siddarth", "Siddhārtha Gautama", "Gautam", "Fo", "Buddhadeva", "Shakyamuni", "Tatharaj", "Trigya", "Lokpradeep", "Buddha", "Khajit", "Munish", "Shakyasinha", "Lord Buddha", "Tathagat", "Sakyasinha", "Shaakya", "Sakyamuni", "P...
train
infoseek_train_00000022
oven_01614994
What is the maximum weight of a male of this animal in kilogram?
[ "30" ]
[ { "wikidata": 30, "range": [ 27, 33 ] } ]
train
infoseek_train_00000023
oven_04138941
What is the source that produces this plant?
[ "Capsicum annuum", "Capsicum annuum var. annuum sweet cultivar group" ]
[ "Capsicum annuum var. annuum sweet cultivar group", "pepper", "Capsicum annuum" ]
train
infoseek_train_00000024
oven_01519940
What is the maximum height of this animal in centimetre?
[ "27" ]
[ { "wikidata": 27, "range": [ 24.3, 29.7 ] } ]
train
infoseek_train_00000025
oven_00003528
Who is appointed by this aircraft as its CEO?
[ "Scott Ernest" ]
[ "Scott Ernest" ]
train
infoseek_train_00000026
oven_03088296
Which government has executive power of this city?
[ "Corporation of Chennai" ]
[ "Corporation of Madras", "Chennai Corporation", "Madras Corporation", "Corporation of Chennai" ]
train
infoseek_train_00000027
oven_03088768
What is this person's place of birth?
[ "Brooklyn" ]
[ "Brooklyn, New York City", "Brooklyn, New York", "Brooklyn" ]
train
infoseek_train_00000028
oven_04335061
What is the country of origin of this drink?
[ "Switzerland" ]
[ "Confoederatio Helvetica", "SUI", "Schweiz", "Swiss Confederation", "CHE", "Svizzera", "CH", "Switzerland", "Suisse", "Swiss" ]
train
infoseek_train_00000029
oven_02563072
What is the source of energy of this object?
[ "two-wheel tractor", "tractor" ]
[ "two-wheel tractor", "Two-wheel tractors", "walking tractor", "tractor" ]
train
infoseek_train_00000030
oven_01810198
What is the closest parent taxonomy of this animal?
[ "Arvicola" ]
[ "Arvicola" ]
train
infoseek_train_00000031
oven_02282874
What is the melting point of this material in degree Celsius?
[ "932" ]
[ { "wikidata": 932, "range": [ 838.8, 1025.2 ] } ]
train
infoseek_train_00000032
oven_00649331
What is the closest parent taxonomy of this animal?
[ "Diadophis" ]
[ "Diadophis" ]
train
infoseek_train_00000033
oven_01223607
What is the closest upper taxonomy of this animal?
[ "Cryptobranchoidea" ]
[ "Cryptobranchoidea" ]
train
infoseek_train_00000034
oven_03890288
What is the source of energy of this vehicle?
[ "muscle strength" ]
[ "muscle strength", "muscular strength" ]
train
infoseek_train_00000035
oven_03952005
What is the mohs' hardness of this material?
[ "7.6" ]
[ { "wikidata": 7.6, "range": [ 6.84, 8.36 ] } ]
train
infoseek_train_00000036
oven_02976478
Who is the developer of this object?
[ "Apple Inc." ]
[ "Apple", "Apple, Inc", "Apple Computer Incorporated", "Apple Inc.", "Apple Computer Inc", "Apple Incorporated", "Apple Computer, Inc." ]
train
infoseek_train_00000037
oven_00545944
What is the closest parent taxonomy of this insect?
[ "Calopteryx" ]
[ "Calopteryx (damselfly)", "Calopteryx" ]
train
infoseek_train_00000038
oven_01871954
What country does this place belong to?
[ "Germany" ]
[ "Germany", "BRD", "de", "GFR", "DE", "Bundesrepublik Deutschland", "Federal Republic of Germany", "GER", "Deutschland", "BR Deutschland" ]
train
infoseek_train_00000039
oven_04168394
What is the country of origin of this plant?
[ "Australia" ]
[ "au", "Australia", "Aussieland", "AU", "Commonwealth of Australia", "Oz", "🇦🇺", "Straya", "AUS" ]
train
infoseek_train_00000040
oven_03537845
In which year was this object invented or discovered?
[ "1790" ]
[ 1789, 1790, 1791 ]
train
infoseek_train_00000041
oven_02788852
In which year was this animal born?
[ "1988" ]
[ 1989, 1987, 1988 ]
train
infoseek_train_00000042
oven_00079743
What country does this lake belong to?
[ "North Macedonia", "Albania" ]
[ "People's Socialist Republic of Albania", "Albania", "Shqipërisë", "NM", "People's Republic of Albania", "Republika e Shqipërisë", "FYROM", "🇦🇱", "nm", "Republika Popullore Socialiste e Shqiperise", "Republika Popullore e Shqiperise", "Republic of North Macedonia", "North Macedonia", "Re...
train
infoseek_train_00000043
oven_01660031
What is the area in square kilometre occupied by this city?
[ "48.74" ]
[ { "wikidata": 48.74, "range": [ 43.866, 53.614 ] } ]
train
infoseek_train_00000044
oven_03639456
How many orbits this vehicle has done?
[ "1440" ]
[ { "wikidata": 1440, "range": [ 1296, 1584 ] } ]
train
infoseek_train_00000045
oven_04014713
What is the immediately prior item that this object follows in a series?
[ "breakfast" ]
[ "breakfast" ]
train
infoseek_train_00000046
oven_00052584
Who designed this bridge?
[ "Joseph Strauss" ]
[ "Joseph Baermann Strauss", "Joseph Strauss" ]
train
infoseek_train_00000047
oven_01669186
how many year do these object in the image typically live?
[ "12" ]
[ { "wikidata": 12, "range": [ 10.8, 13.2 ] } ]
train
infoseek_train_00000048
oven_03952006
What is the mohs' hardness of this material?
[ "7.6" ]
[ { "wikidata": 7.6, "range": [ 6.84, 8.36 ] } ]
train
infoseek_train_00000049
oven_03640001
Who is the manufacturer of this vehicle?
[ "S.P. Korolev Rocket and Space Corporation Energia" ]
[ "RKK Energia", "RKK “Energiya”", "Raketno-kosmicheskaya korporatsiya “Energiya” im. S. P. Koroleva", "OKB-1", "S.P. Korolev Rocket and Space Corporation Energia", "RSC Energia" ]
train
infoseek_train_00000050
oven_04342793
where was this food located when discovered?
[ "New Orleans" ]
[ "New Orleans, LA", "New Orleans, Louisiana", "The Big Easy", "New Orleans", "Crescent City", "NOLA" ]
train
infoseek_train_00000051
oven_00108395
Which city or region does this park locate in?
[ "Lviv Oblast" ]
[ "L’vivshchyna", "L’vivs’ka oblast’", "Lviv Oblast" ]
train
infoseek_train_00000052
oven_04081591
Where did this food first appear?
[ "Europe" ]
[ "European continent", "Europe", "Old Continent" ]
train
infoseek_train_00000053
oven_00180914
where was this food located when discovered?
[ "Piedras Negras" ]
[ "Ciudad Porfirio Díaz", "Piedras Negras", "Ciudad Porfirio Diaz" ]
train
infoseek_train_00000054
oven_02901271
What is this object named after?
[ "reaper" ]
[ "reaper" ]
train
infoseek_train_00000055
oven_03089009
What is the writing language this person uses?
[ "English" ]
[ "English", "en", "eng", "English language" ]
train
infoseek_train_00000056
oven_03024478
What product does this material produce?
[ "laminate" ]
[ "laminate", "laminated flooring", "laminate flooring" ]
train
infoseek_train_00000057
oven_02728594
Which country does this hat come from?
[ "Morocco" ]
[ "Marocco", "al-Maġrib", "Kingdom of Morocco", "🇲🇦", "MAR", "Morocco", "Lmaġrib", "ma", "Maroc" ]
train
infoseek_train_00000058
oven_01265051
what is the temporal range start of this animal?
[ "Maastrichtian" ]
[ "Maastrichtian" ]
train
infoseek_train_00000059
oven_04413015
What is the surface gravity of the place in metre per square second?
[ "274.0" ]
[ { "wikidata": 274, "range": [ 246.6, 301.4 ] } ]
train
infoseek_train_00000060
oven_01771071
What is the closest upper taxonomy of this animal?
[ "Neuropterida" ]
[ "Neuropterida" ]
train
infoseek_train_00000061
oven_00015180
What is this building dedicated to?
[ "John the Apostle" ]
[ "John the Apostle", "St John the Apostle", "Johannes", "John", "St. John the Apostle", "St. John", "Saint John the Apostle" ]
train
infoseek_train_00000062
oven_03951880
What is the mohs' hardness of this material?
[ "7.6" ]
[ { "wikidata": 7.6, "range": [ 6.84, 8.36 ] } ]
train
infoseek_train_00000063
oven_00827413
What is the conservation status of this plant? (The status is assigned by the international union for conservation of nature. Choose one among Endangered,Least Concern,Critically Endangered,extinct species,extinct in the wild,Vulnerable,Near Threatened,Data Deficient)
[ "Least Concern" ]
[ "LR/lc", "Least Concern", "LC" ]
train
infoseek_train_00000064
oven_00252203
What is this building named after?
[ "public space" ]
[ "public area", "public places", "in public", "public space", "public spaces", "public place", "public venue", "public distance" ]
train
infoseek_train_00000065
oven_01665092
How many offspring can this animal produce at the same time?
[ "2.4" ]
[ { "wikidata": 2.4, "range": [ 2.16, 2.64 ] } ]
train
infoseek_train_00000066
oven_04325893
What is the country of origin of this drink?
[ "Greece" ]
[ "🇬🇷", "Greek", "gr", "Hellas", "Greek Republic", "Greece", "Hellenic Republic", "el", "Ellada", "GRE" ]
train
infoseek_train_00000067
oven_04148474
What is the source that produces this animal?
[ "Fabaceae" ]
[ "Fabaceae", "Papilionaceae", "Leguminosae" ]
train
infoseek_train_00000068
oven_01802338
What country does this animal belong to?
[ "Turkey" ]
[ "Türkiye", "TUR", "TR", "Turkey", "Republic of Türkiye", "Republic of Turkey", "Türkiye Cumhuriyeti" ]
train
infoseek_train_00000069
oven_01998022
What is the closest parent taxonomy of this animal?
[ "Characidae" ]
[ "Characids", "Characidae", "Characins" ]
train
infoseek_train_00000070
oven_00044432
Who commissioned this building?
[ "Order of Hospitallers" ]
[ "Order of Saint John of Jerusalem", "Order of Saint John", "O.S.Io.Hieros.", "Hospitallers", "Order of the Hospital of St. John of Jerusalem", "Order of Hospitallers", "Knights of Saint John", "Knights of St. John" ]
train
infoseek_train_00000071
oven_03435573
Who is the discoverer or inventor of this item?
[ "Robert Adler", "Eugene Polley", "Nikola Tesla" ]
[ "Robert Adler", "Nicola Tesla", "Eugene Polley", "Nikola Tesla", "Eugene Theodore Polley", "Eugene Joseph Polley", "Tesla" ]
train
infoseek_train_00000072
oven_01902536
What is the highest observed lifespan of this animal?
[ "35.4" ]
[ { "wikidata": 35.4, "range": [ 31.86, 38.94 ] } ]
train
infoseek_train_00000073
oven_02205470
In which year was this vehicle invented or discovered?
[ "1885" ]
[ 1886, 1884, 1885 ]
train
infoseek_train_00000074
oven_00098132
What is this garden named after?
[ "Tuileries Palace" ]
[ "Tuileries Palace", "Palais des Tuileries" ]
train
infoseek_train_00000075
oven_03600362
What is the typical diameter (in centimetre) of this sport?
[ "21.64-22.28" ]
[ { "wikidata": 21.96, "range": [ 21.64, 22.28 ] } ]
train
infoseek_train_00000076
oven_02886230
What is the source of energy of this device?
[ "electricity" ]
[ "electricity", "Electricity" ]
train
infoseek_train_00000077
oven_00079219
In which year was this bridge retired from operational service?
[ "1945" ]
[ 1945, 1944, 1946 ]
train
infoseek_train_00000078
oven_04726108
What is the basionym of this plant?
[ "Donia formosa" ]
[ "Donia formosa" ]
train
infoseek_train_00000079
oven_00067515
Who designed this building?
[ "Otto Wagner" ]
[ "Otto Colomann Wagner", "Otto Koloman Wagner", "Otto Wagner" ]
train
infoseek_train_00000080
oven_00115659
What country does this building belong to?
[ "Portugal" ]
[ "PRT", "Portugal", "🇵🇹", "República Portuguesa", "PT", "Portuguese Republic" ]
train
infoseek_train_00000081
oven_03978421
What country does this city belong to?
[ "United Kingdom" ]
[ "U K", "Great Britain", "Britain", "The United Kingdom of Great Britain and Northern Ireland", "Great Britain and Northern Ireland", "Unitit Kinrick o Greet Britain an Norlin Airlann", "G.B.", "U. K.", "Rìoghachd Aonaichte", "U.K.", "🇬🇧", "G. B.", "G B", "Unitit Kinrick", "GBR", "The...
train
infoseek_train_00000082
oven_00957209
where do you usually find this animal?
[ "forest", "shrubland" ]
[ "shrubland", "Forest", "wood", "scrubland", "brush", "forests", "bush", "scrub", "woods", "forest" ]
train
infoseek_train_00000083
oven_00069142
Where is the lake inflow from?
[ "Reuss" ]
[ "Reuss River", "Reuss (river)", "Reuss" ]
train
infoseek_train_00000084
oven_00956170
where do you usually find this animal?
[ "forest", "shrubland" ]
[ "shrubland", "Forest", "wood", "scrubland", "brush", "forests", "bush", "scrub", "woods", "forest" ]
train
infoseek_train_00000085
oven_00012853
Who found this building?
[ "Rani Rashmoni" ]
[ "Rāṇī Rāsamaṇi", "Rashmoni Das", "Rani Rashmoni" ]
train
infoseek_train_00000086
oven_04196986
What country does this city belong to?
[ "Oman" ]
[ "Sultanate of Oman", "🇴🇲", "سلطنت عمان", "om", "Oman" ]
train
infoseek_train_00000087
oven_03844278
What is this object named after?
[ "John Venn" ]
[ "John Venn" ]
train
infoseek_train_00000088
oven_02240376
What country does this object belong to?
[ "Sweden" ]
[ "SE", "SWE", "🇸🇪", "Sverige", "se", "Kingdom of Sweden", "Sweden", "Konungariket Sverige" ]
train
infoseek_train_00000089
oven_00514554
What is the basionym of this plant?
[ "Anagallis arvensis" ]
[ "scarlet pimpernel", "Anagallis arvensis" ]
train
infoseek_train_00000090
oven_04501010
Where is this person educated at?
[ "Jadavpur University" ]
[ "Jadabpur University", "University of Jadabpur", "Jadavpur University", "JU", "University of Jadavpur" ]
train
infoseek_train_00000091
oven_04148441
What is the source that produces this animal?
[ "Fabaceae" ]
[ "Fabaceae", "Papilionaceae", "Leguminosae" ]
train
infoseek_train_00000092
oven_01154101
What is the source that produces this bird?
[ "Atlantic Canary" ]
[ "Island canary", "canary (finches)", "Atlantic Canary", "Serinus canaria", "atlantic canary" ]
train
infoseek_train_00000093
oven_00056345
Who designed this bridge?
[ "Cass Gilbert" ]
[ "Cass Gilbert" ]
train
infoseek_train_00000094
oven_01105085
What is the oldest age of this animal?
[ "26.3" ]
[ { "wikidata": 26.3, "range": [ 23.67, 28.93 ] } ]
train
infoseek_train_00000095
oven_00928760
how many day is the egg incubation period of this bird?
[ "14" ]
[ { "wikidata": 14, "range": [ 12.6, 15.4 ] } ]
train
infoseek_train_00000096
oven_00269746
What is the minimum number of players of a game in this sport?
[ "2" ]
[ { "wikidata": 2, "range": [ 1.8, 2.2 ] } ]
train
infoseek_train_00000097
oven_02415127
Who is the discoverer or inventor of this material?
[ "Jacques E. Brandenberger" ]
[ "Jacques Edwin Brandenberger", "Jacques E. Brandenberger" ]
train
infoseek_train_00000098
oven_00043622
which mountain range is this mountain belong to?
[ "Saxon Switzerland" ]
[ "Sächsische Schweiz", "Saxon Switzerland" ]
train
infoseek_train_00000099
oven_00729352
What is the conservation status of this animal? (The status is assigned by the international union for conservation of nature. Choose one among Endangered,Least Concern,Critically Endangered,extinct species,extinct in the wild,Vulnerable,Near Threatened,Data Deficient)
[ "Data Deficient" ]
[ "DD", "Data Deficient" ]
train
End of preview.

YAML Metadata Warning:empty or missing yaml metadata in repo card

Check out the documentation for more information.

# InfoSeek Numeric/Time Fact Store

InfoSeek numeric/time 계열 질문에서 Wikidata claim을 이용해 복원한 fact retrieval 학습용 데이터다. 목적은 FactHead를 contrastive하게 학습하기 위한 positive fact와 hard negative fact를 제공하는 것이다.

이 데이터는 official InfoSeek evidence가 아니다. Gold QID, answer value/range, Wikidata claims, property/unit/qualifier rule을 이용해 만든 pseudo-supervision이다.

1. Layout

fact_store/
  data/facts/
    infoseek_numeric_facts_enriched.jsonl
    numeric_qid_to_fact_ids.json
    numeric_pid_to_fact_ids.json
    numeric_label_cache.json
  data/maps/
    infoseek_train_numeric_question_fact_map_enriched_v2.jsonl
    infoseek_val_numeric_question_fact_map_enriched_v2.jsonl
  data/annotations/
    infoseek_train.jsonl
    infoseek_train_withkb.jsonl
    infoseek_val.jsonl
    infoseek_val_withkb.jsonl
    infoseek_val_qtype.jsonl
  data/docs/
    match_vector_sampling_policy.md
    *_match_vector_eval.json
    *_numeric_enrichment_summary_v2.json
    statistics.md
    fact_coverage.md
    numeric_fact_enrichment.md
  samples/
    *.sample.jsonl

2. Download from Hugging Face

Replace <repo_id> with the actual dataset repo.

pip install -U huggingface_hub
huggingface-cli login
huggingface-cli download <repo_id> \
  --repo-type dataset \
  --local-dir fact_store \
  --local-dir-use-symlinks False

Python version:

from huggingface_hub import snapshot_download

snapshot_download(
    repo_id="hwoos/infoseek-numeric-fact-store",
    repo_type="dataset",
    local_dir="fact_store",
    local_dir_use_symlinks=False,
)

Git LFS version:

git lfs install
git clone https://huggingface.co/datasets/hwoos/infoseek-numeric-fact-store fact_store

infoseek_train_numeric_question_fact_map_enriched_v2.jsonl is large, so CLI or snapshot_download is recommended.

3. Core files

Fact database

data/facts/infoseek_numeric_facts_enriched.jsonl

Each line is one fact item. Important fields are:

fact_id
subject_qid / subject_label
property_id / property_label / property_description
amount or time
unit_qid / unit_label
qualifiers
text_for_encoder

Training code should load this file as:

fact_id -> fact item

text_for_encoder is the easiest input for a first fact encoder.

Query-to-fact maps

data/maps/infoseek_train_numeric_question_fact_map_enriched_v2.jsonl
data/maps/infoseek_val_numeric_question_fact_map_enriched_v2.jsonl

Each line is one InfoSeek QA row with recovered positive/negative facts.

Important fields:

data_id
image_id
question
answer / answer_eval
entity_id
selected_positive_fact_ids
positive_status_v2
hard_negative_fact_ids_by_type
hard_negative_meta_v2

Use rows only if:

positive_status_v2 == "selected_positive"
selected_positive_fact_ids is not empty

4. How to use for training

The intended module is a dual-encoder style FactHead.

query side:
  z_q_fact(e_i) = FactQueryHead(image, question, candidate_entity)

fact side:
  z_fact = FactItemHead(fact_text_or_fields)

training:
  pull z_q_fact close to positive fact
  push z_q_fact away from hard negative facts

For the first experiment, use oracle/gold entity from InfoSeek with-KB:

image + question + gold entity -> z_q_fact
selected_positive_fact_ids -> positives
hard_negative_meta_v2 -> negatives

For full pipeline inference:

1. EntityHead retrieves top-K entities.
2. For each candidate entity e_i:
     z_q_fact(e_i) = FactQueryHead(image, question, e_i)
     retrieve facts from facts[e_i]
3. Use retrieved facts for QA generation or entity reranking.

5. Negative sampling policy

Do not rely only on old negative type labels. Use hard_negative_meta_v2[fact_id].

Important metadata:

match_vector
match_vector_key
match_vector_label
negative_tier
use_as_negative
legacy_type

Match vector order:

entity / property / qualifier / value

Examples:

11n0 = same entity, same property, qualifier not applicable, wrong value
10n1 = same entity, different property, qualifier not applicable, same value
01n0 = different entity, same property, qualifier not applicable, wrong value

Recommended tiers:

Tier A: same entity + same property + wrong value/qualifier
Tier B: same entity + different property
Tier C: different entity + same property
Tier D: easier or mixed negatives

Do not use these as negatives:

1111
11n1

They are positive-like because entity/property/value all match.

6. Minimal dataloader sketch

import json
from pathlib import Path

root = Path("fact_store")

fact_by_id = {}
with open(root / "data/facts/infoseek_numeric_facts_enriched.jsonl", encoding="utf-8") as f:
    for line in f:
        item = json.loads(line)
        fact_by_id[item["fact_id"]] = item

def iter_training_rows(split="train"):
    path = root / "data/maps" / f"infoseek_{split}_numeric_question_fact_map_enriched_v2.jsonl"
    with open(path, encoding="utf-8") as f:
        for line in f:
            row = json.loads(line)
            pos = row.get("selected_positive_fact_ids", [])
            if row.get("positive_status_v2") != "selected_positive" or not pos:
                continue

            neg_meta = row.get("hard_negative_meta_v2", {})
            neg_ids = [
                fid for fid, meta in neg_meta.items()
                if meta.get("use_as_negative", True)
                and meta.get("match_vector_key") not in {"1111", "11n1"}
            ]
            if not neg_ids:
                continue

            yield {
                "data_id": row["data_id"],
                "image_id": row.get("image_id"),
                "entity_id": row["entity_id"],
                "question": row["question"],
                "positive_facts": [fact_by_id[fid] for fid in pos if fid in fact_by_id],
                "negative_facts": [fact_by_id[fid] for fid in neg_ids if fid in fact_by_id],
                "negative_meta": {fid: neg_meta[fid] for fid in neg_ids},
            }

A practical sampler should cap negatives per row, for example:

Tier A: up to 4
Tier B: up to 4
Tier C: up to 4
Tier D: up to 2
in-batch facts: included by contrastive batch

Treat the exact ratio as a hyperparameter.

7. Suggested batch format

query_input:
  image_id
  question
  entity_id / entity_text

positive_fact_text:
  fact_by_id[pos_id]["text_for_encoder"]

negative_fact_texts:
  fact_by_id[neg_id]["text_for_encoder"]

Example fact text:

Subject: Rhine Falls. Property: height. Property description: vertical extent of the item. Value: 23 metre.

A simple MVP fact encoder:

z_fact = normalize(MLP(TextEncoder(text_for_encoder)))

The query encoder should be entity-conditioned:

z_q_fact = FactQueryHead(image, question, candidate_entity)

8. What is not included

Image pixels are not included. The rows reference InfoSeek/OVEN image ids only. Training code must resolve image files separately.

The current fact store focuses on numeric/time-like Wikidata claims. String-valued fact recovery and text evidence retrieval are separate workstreams.

9. Sanity summary

Current generated maps have:

val:
  rows = 19,301
  usable_rows = 18,128
  hard negative meta items = 283,465
  missing_vector = 0
  positive_like_negative = 0

train:
  rows = 190,983
  usable_rows = 140,772
  hard negative meta items = 2,163,357
  missing_vector = 0
  positive_like_negative = 0

See data/docs/*match_vector_eval.json and data/docs/match_vector_sampling_policy.md for details.

10. Recommended first experiment

Experiment: oracle-entity FactHead retrieval

Input:
  image + question + gold entity

Target:
  selected_positive_fact_ids

Negatives:
  match_vector tiered hard negatives + in-batch negatives

Metric:
  Fact Recall@1 / Recall@5 / Recall@10
  optional final QA accuracy with retrieved fact text

Compare against:

random fact retrieval
BM25 over fact text
dense text-only fact retrieval
FactHead without match-vector hard negatives
FactHead with match-vector hard negatives
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