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train_-1083680136327211056_0_0
List_of_countries_by_total_renewable_water_resources_BD944C2B2ACBEFE9
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train_2917736522934642870_0_0
Midnight,_Texas_554552077864FEDB
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train_2090420929226937922_0_0
List_of_dates_for_Easter_BD5A79EEC800C93A
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train_943011371485322102_0_0
Park_City,_Utah_35C727612035D578
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Sri_Lankan_Civil_War_60C2FAF195E76C8D
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train_5736854479482235395_0_0
Sagarmatha_National_Park_2DE41F1D768721D4
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train_8353449313006939505_0_0
And_Still_I_Rise_A3470AC9F65F163B
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train_3475080409674051393_0_0
List_of_countries_by_homeless_population_A072E7C5A95CEDC5
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train_-1361044712482742145_0_0
United_States_Senate_elections,_2018_63E57DE754C43D44
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train_-3770005128376258808_0_0
iPhone_6S_DB8C5E30A29FD048
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2017_NCAA_Division_I_Men's_Basketball_Tournament_186CA5043C8130FF
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train_3277202392210844477_0_0
Cricket_World_Cup_B28527E848B1D489
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train_2338110276144095_0_0
63rd_National_Film_Awards_411460936E924ABC
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Snow_White_and_the_Seven_Dwarfs_(1937_film)_605592F148638ACC
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train_-48009583706115394_0_0
40-yard_dash_8F0B92ABE3187A07
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train_-7536188072665054537_0_0
United_States_presidential_approval_rating_6E551E5DD9046C29
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train_1591757317673895944_0_0
Samsung_Galaxy_Note_5_1CB32D9722E0E7DA
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train_-6797044040053792718_0_0
United_States_House_of_Representatives_A3C600CB2C7E0C4B
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Port_St._Lucie,_Florida_4838B7F861C5447D
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train_-2792106084015163483_0_0
Rick_and_Morty_(season_3)_87B29006E04900C7
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train_9040912460744908300_0_0
United_States_at_the_Olympics_3DB907D8BFCF1031
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train_-6735948273898305110_0_0
Robot_(Lost_in_Space)_E833B6C11AA827DB
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train_-2066273191558715470_0_0
Prison_Break_(season_4)_B14D09B1EEFCDE08
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train_4259834979883910150_0_0
Challenge_Cup_5C603CC7DA7AEDF1
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train_-5655551859270743763_0_0
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train_-6095377631955879126_0_0
List_of_La_Liga_top_scorers_81EE2D49D5C743C4
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train_-2167917327563820692_0_0
Eddie_and_the_Cruisers_D105AC3756F31775
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List_of_American_Horror_Story_episodes_7C2B6062B3F32285
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train_-5817469955288994961_0_0
2018_Big_Ten_Conference_Men's_Basketball_Tournament_13CD4C5B272978B4
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Harry_Potter_and_the_Philosopher's_Stone_A71B030985ABD062
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Dinosaur_National_Monument_3E7BAA41FBFD3104
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United_States_presidential_election,_2016_AC0A7B4A2A4FCC3
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Oakland_Raiders_3EF40200CDDF006C
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iPad_Air_265B957EF5176C5C
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List_of_Olympic_medalists_in_figure_skating_6CD2E388F21EFA80
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train_-3743752845140460199_0_0
Saved_by_the_Bell:_Wedding_in_Las_Vegas_7CA2D63601E956C3
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I_Won't_Give_Up_48517DC6ED51DACA
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Indian_Head_cent_15D07180DF839911
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Friends_in_Low_Places_B35B3B09CEAE50A3
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train_-8600822423528035773_0_0
As_Told_by_Ginger_24D5D159436A75F
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train_-5144857012337911560_0_0
List_of_most_streamed_songs_on_Spotify_B386F17BE04827FD
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Energy_5BF865C4BC044730
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List_of_SpongeBob_SquarePants_episodes_F8AC12A1BB3F2FB6
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train_-1398607593711215503_0_0
Ivy_League_F1A5F6B3E9E59B25
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United_States_Department_of_Defense_481AB06AF32854FD
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California_B9DC05FE18E2FF63
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Falcon_Heavy_2BF1573A87C50A52
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List_of_best-selling_music_artists_AB53E63713A854EE
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train_629645110144434820_0_0
Michigan–Michigan_State_football_rivalry_58EC6382F4D97044
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Basilica_of_Saint_Mary_(Minneapolis)_560DAAB4D79EEC70
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Uncle_Tom's_Cabin_4407EFDC743C00B4
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Stranger_Things_DA96B5F2108A0CC5
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train_3640178421252637312_0_0
List_of_Governors_of_Missouri_A11C7B9A40EDE8E1
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train_-7288562121057681413_0_0
International_System_of_Units_7B165B364F6ACF1B
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train_2475196988721992244_0_0
Figure_skating_at_the_2018_Winter_Olympics_–_Men's_singles_63D1C10198C81DAA
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train_2475196988721992244_0_0
Figure_skating_at_the_2018_Winter_Olympics_–_Men's_singles_B769E8342ECCED96
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train_-79009179653210421_0_0
State_Bank_of_India_CEA06874012245E4
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train_-513423377959062495_0_0
List_of_most-subscribed_YouTube_channels_D1507F7867AF7018
1
train_-8651120381457272918_0_0
Georgia_Southern_Eagles_football_9CA811E54B75CB14
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train_4225606747923731709_0_0
India_at_the_2014_Commonwealth_Games_6E213AF27B155B11
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train_7415792613958531769_0_0
Battle_of_Fort_Sumter_E3E410630262245E
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train_740595771296379568_0_0
Game_of_Thrones_(season_6)_571F87D1F753CC1B
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train_-1216737595947309468_0_0
List_of_Oklahoma_Sooners_bowl_games_A4EC58A985F3DB43
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2016_Detroit_Lions_season_9907BDA35EA4047
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train_9036390272351152131_0_0
Tigris_8745F3067871F101
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train_5335464807444260742_0_0
Palace_of_Westminster_D145066C92F35B4F
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train_7603668105064319228_0_0
2018_NFL_Draft_F5F8A24446B894F0
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train_-3482434625885223301_0_0
I'm_Lovin'_It_(song)_459F9CFC1D68A870
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train_1547085671773219043_0_0
College_World_Series_B5C5CD984F36215
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train_6372179109733239045_0_0
Oakland_Athletics_1E6D2CBFD6F7A70D
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train_6280232224921554210_0_0
War_of_1812_127AE82F64FC7CEC
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train_641420765014827752_0_0
History_of_the_St._Louis_Rams_BC2DBF1CE1AA5C95
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train_-714825372503717792_0_0
List_of_New_York_Knicks_seasons_8760DB7FD47A07D3
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train_-4844328160553780966_0_0
Timeline_of_The_Walt_Disney_Company_45749A58C3BB15A9
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train_4268095364459092216_0_0
List_of_Madam_Secretary_episodes_9FD1C0AD1C29C55A
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train_1137824187641353603_0_0
Batman_and_Harley_Quinn_472D44B88C90AAF5
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train_4552515739507918901_0_0
Pirates_of_the_Caribbean_(attraction)_F49E6766374C3ECA
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train_-1814194713962028817_0_0
American_Idol_(season_8)_77BB81D45916730C
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train_52378181532581320_0_0
List_of_best-selling_music_artists_B5E477949787BAA3
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train_-1870138397862265432_0_0
The_Joker_(The_Dark_Knight)_559279D69ECE84FC
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Saturday_Night_Live_cast_members_48C3CEADA0101658
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Legal_status_of_tattooing_in_the_United_States_4FAB80927329466A
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United_States_presidential_line_of_succession_7479A0222CA87AC7
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train_-2413729541426561137_0_0
The_Marvelous_Mrs._Maisel_5EF2CB84A5764AE6
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train_8233282612960128828_0_0
A_Song_of_Ice_and_Fire_C1E12D791EEF18FC
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train_5622255573522995449_0_0
The_X_Factor_(UK_series_7)_FE6F2C91B759A144
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train_19332312892410851_0_0
Visa_requirements_for_Australian_citizens_B49C6C619B0244C7
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train_-4454293534395971022_0_0
Truth_or_Dare_(2018_film)_51BB786165560A0C
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train_7547989219847383340_0_0
Mission_San_Carlos_Borromeo_de_Carmelo_FD72E2908F33C502
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train_-2774780599256744285_0_0
List_of_most_subscribed_YouTube_channels_BE9EBE7C8186FB43
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train_-2985396307111305101_0_0
RuPaul's_Drag_Race_(season_1)_BF8F354BAA6BFB1D
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train_-3412266270699019779_0_0
List_of_most_common_surnames_in_North_America_7EEC92CEAA91A983
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train_57158629568519760_0_0
Cavaliers–Warriors_rivalry_3858BB62B72A64B0
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NQTables Retrieval

This dataset is part of a Table + Text retrieval benchmark. Includes queries and relevance judgments across train, dev, test split(s), with corpus in 3 format(s): corpus_linearized, corpus_md, corpus_structure.

Configs

Config Description Split(s)
default Relevance judgments (qrels): qid, did, score train, dev, test
queries Query IDs and text train_queries, dev_queries, test_queries
corpus_linearized Linearized table representation corpus_linearized
corpus_md Markdown table representation corpus_md
corpus_structure Structured corpus with headers, cells, meta_data. text field corresponds to linearized Text + Table. corpus_structure

corpus_structure additional fields

Field Type Description
meta_data string Table metadata / caption
headers list[string] Column headers
cells list[string] Flattened cell values

TableIR Benchmark Statistics

Dataset Structured #Train #Dev #Test #Corpus
OpenWikiTables 53.8k 6.6k 6.6k 24.7k
NQTables 9.6k 1.1k 1k 170k
FeTaQA 7.3k 1k 2k 10.3k
OTT-QA (small) 41.5k 2.2k -- 8.8k
MultiHierTT -- 929 -- 9.9k
AIT-QA -- -- 515 1.9k
StatcanRetrieval -- -- 870 5.9k
watsonxDocsQA -- -- 30 1.1k

Citation

If you use TableIR Eval: Table-Text IR Evaluation Collection, please cite:

@misc{doshi2026tableir,
  title        = {TableIR Eval: Table-Text IR Evaluation Collection},
  author       = {Doshi, Meet and Boni, Odellia and Kumar, Vishwajeet and Sen, Jaydeep and Joshi, Sachindra},
  year         = {2026},
  institution  = {IBM Research},
  howpublished = {https://huggingface.co/collections/ibm-research/table-text-ir-evaluation},
  note         = {Hugging Face dataset collection}
}

All credit goes to original authors. Please cite their work:

@inproceedings{herzig-etal-2021-open,
    title = "Open Domain Question Answering over Tables via Dense Retrieval",
    author = {Herzig, Jonathan  and
      M{\"u}ller, Thomas  and
      Krichene, Syrine  and
      Eisenschlos, Julian},
    editor = "Toutanova, Kristina  and
      Rumshisky, Anna  and
      Zettlemoyer, Luke  and
      Hakkani-Tur, Dilek  and
      Beltagy, Iz  and
      Bethard, Steven  and
      Cotterell, Ryan  and
      Chakraborty, Tanmoy  and
      Zhou, Yichao",
    booktitle = "Proceedings of the 2021 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies",
    month = jun,
    year = "2021",
    address = "Online",
    publisher = "Association for Computational Linguistics",
    url = "https://aclanthology.org/2021.naacl-main.43/",
    doi = "10.18653/v1/2021.naacl-main.43",
    pages = "512--519",
    abstract = "Recent advances in open-domain QA have led to strong models based on dense retrieval, but only focused on retrieving textual passages. In this work, we tackle open-domain QA over tables for the first time, and show that retrieval can be improved by a retriever designed to handle tabular context. We present an effective pre-training procedure for our retriever and improve retrieval quality with mined hard negatives. As relevant datasets are missing, we extract a subset of Natural Questions (Kwiatkowski et al., 2019) into a Table QA dataset. We find that our retriever improves retrieval results from 72.0 to 81.1 recall@10 and end-to-end QA results from 33.8 to 37.7 exact match, over a BERT based retriever."
}
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