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"ОМОН МАТЖОН \nЁНАЁТГАН ДАРАХТ \nШеърлар, драматик досто(...TRUNCATED) |
"G.N.IBRAGIMOVA, D.A.CHORIYEVA \nMAKTABGACHA TA’LIMDA \nPEDAGOGIK DIAGNOSTIKA \nQ \n \n\nU 290/3(...TRUNCATED) |
"QO \nTadqiqot uz \nISSN 2181-9599 \n(9) 5? \nDoi Journal 10.26739/2181-9599 \nЎТМИШГА НАЗ(...TRUNCATED) |
"5-15 \nC2 10; \nO‘ZBEKISTON RESPUBLIKASI OILY VA O‘RTA \n/ \nMAXSUS TA’LIM VAZIRLIGI \nI \nГ(...TRUNCATED) |
"Х.Х.Зокиров, Д.Отамуродова \n \n \n \n \n \n \n \n \n \n \nЭКОИҚТИСО(...TRUNCATED) |
"да\n\nУЗБЕКИСТОН РЕСПУБЛИКАСИ ОЛИЙ ВА УРТА МАХСУС\nТАЪЛ(...TRUNCATED) |
"ШЕР РД \nАсарлар \n \nТЎРТ ЖИЛДЛИК \nТошкент \nҒафур Ғулом(...TRUNCATED) |
"S.M.MUSTAFAYEV \nUNIVERSITETLARNING BIOLOGIYA YO‘NALISHI \nTALABALARI UCHUN MO‘LJALLANGAN DARSL(...TRUNCATED) |
"МУРОД \nБУРБУН \nЧАҚИРТИКАНАНЛИ ТОҒ \n \nРОМАН \nҒАФУР ҒУ(...TRUNCATED) |
"А.И.МАЪРУПОВ \n \n \n \n \n \n \n \n \n \n \n \n \n \n \n \n \n(Тўлдирилган я(...TRUNCATED) |
Dataset Card for BookCorpus
Dataset Summary
In an effort to democratize research on low-resource languages, we release UzBooks dataset, a cleaned book corpus consisting of nearly 40000 books in Uzbek Language divided into two branches: "original" and "lat," representing the OCRed (Latin and Cyrillic) and fully Latin versions of the texts, respectively.
Please refer to our blogpost and paper (Coming soon!) for further details.
To load and use dataset, run this script:
from datasets import load_dataset
uz_books=load_dataset("tahrirchi/uz-books")
Dataset Structure
Data Instances
plain_text
- Size of downloaded dataset files: 16.98 GB
- Size of the generated dataset: 32.95 GB
- Total amount of disk used: 49.93 GB
An example of 'train' looks as follows.
{
"text": "Hamsa\nAlisher Navoiy ..."
}
Data Fields
The data fields are the same among all splits.
plain_text
text
: astring
feature that contains text of the books.
Data Splits
name | |
---|---|
original | 39712 |
lat | 39712 |
Dataset Creation
The books have been crawled from various internet sources and preprocessed using Optical Character Recognition techniques in Tesseract OCR Engine. The latin version is created by converting the original dataset with highly curated scripts in order to put more emphasis on the research and development of the field.
Citation
Please cite this model using the following format:
@online{Mamasaidov2023UzBooks,
author = {Mukhammadsaid Mamasaidov and Abror Shopulatov},
title = {UzBooks dataset},
year = {2023},
url = {https://huggingface.co./datasets/tahrirchi/uz-books},
note = {Accessed: 2023-10-28}, % change this date
urldate = {2023-10-28} % change this date
}
Gratitude
We are thankful to these awesome organizations and people for helping to make it happen:
- Ilya Gusev: for advise throughout the process
- David Dale: for advise throughout the process
Contacts
We believe that this work will enable and inspire all enthusiasts around the world to open the hidden beauty of low-resource languages, in particular Uzbek.
For further development and issues about the dataset, please use [email protected] or [email protected] to contact.
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