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DocHPLT: A Massively Multilingual Document-Level Translation Dataset

Existing document-level machine translation resources are only available for a handful of languages, mostly high-resourced ones. To facilitate the training and evaluation of document-level translation and, more broadly, long-context modeling for global communities, we create DocHPLT, the largest publicly available document-level translation dataset to date. It contains 124 million aligned document pairs across 50 languages paired with English, comprising 4.26 billion sentences, with further possibility to provide 2500 bonus pairs not involving English. Unlike previous reconstruction-based approaches that piece together documents from sentence-level data, we modify an existing web extraction pipeline to preserve complete document integrity from the source, retaining all content including un- aligned portions. After our preliminary experiments identify the optimal training context strategy for document-level translation, we demonstrate that LLMs fine-tuned on DocHPLT substantially outperform off-the-shelf instruction- tuned baselines, with particularly dramatic improvements for under-resourced languages. We open-source the dataset under a permissive license, providing essential infrastructure for advancing multilingual document-level translation.

Corpus statistics

#sentences #docs
af 16,416,841 297,636
ar 65,482,300 2,271,167
az 12,202,189 332,742
be 10,672,952 212,121
bg 80,018,549 1,746,301
bn 10,473,372 414,099
bs 20,635,243 514,615
ca 47,905,003 1,198,217
cy 8,908,119 265,261
en 2,665,945,834 47,484,349
eo 6,115,355 119,196
et 33,684,509 774,561
eu 6,783,654 189,347
fa 24,837,952 810,029
fi 111,615,913 2,445,791
ga 6,398,081 172,167
gl 10,657,570 233,545
gu 3,202,679 108,507
he 38,077,820 1,190,198
hi 37,592,475 1,336,090
hr 52,267,826 1,063,347
is 12,571,982 274,078
ja 164,136,152 4,032,689
kk 5,948,866 140,082
kn 4,463,262 123,053
ko 84,527,642 2,058,811
lt 48,692,264 1,031,628
lv 37,426,957 796,659
mk 12,465,228 307,055
ml 2,925,457 115,189
mr 3,066,703 128,808
ms 51,150,528 978,185
mt 6,328,544 141,088
nb 89,189,502 1,884,362
ne 1,549,852 74,579
nn 4,228,079 93,285
si 1,497,375 50,605
sk 70,057,465 1,461,804
sl 37,501,647 797,858
sq 11,475,561 328,651
sr 21,620,629 407,440
sw 8,409,824 185,287
ta 6,790,864 215,564
te 5,131,680 141,279
th 16,134,265 676,699
tr 100,380,235 3,884,137
uk 89,841,883 1,955,041
ur 5,479,098 234,708
uz 3,502,356 69,440
vi 87,511,126 1,986,258
xh 995,556 21,561
total 4,264,894,818 87,775,169

Link for Arxiv preprint: https://arxiv.org/abs/2508.13079

Citation

If you use this resource, please kindly cite:

@article{dochplt,
      title={{DocHPLT}: A Massively Multilingual Document-Level Translation Dataset}, 
      author={Dayyán O'Brien and Bhavitvya Malik and Ona de Gibert and Pinzhen Chen and Barry Haddow and Jörg Tiedemann},
      year={2025},
      journal={arXiv preprint},
      url={[https://arxiv.org/abs/2508.13079](https://arxiv.org/abs/2508.13079)}, 
}
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