Datasets:
text string | id string | dump string | url string | date string | file_path string | offset int64 | token_count int64 | language string | page_average_lid string | page_average_lid_score float64 | full_doc_lid string | full_doc_lid_score float64 | per_page_languages list | is_truncated bool | extractor string | page_ends list | fw_edu_scores list | minhash_cluster_size int64 | duplicate_count int64 |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
CROWN®
Ceramic Hob
Instruction Manual / Installation Manual
Упътване за употреба на керамичен плот
MODEL: CROWN VCP 32D
Модел: VCP 32D
Предупреждения за безопасност
Вашата безопасност е важна за нас. Моля, прочетете тази информация, преди да използвате плота.
✓ Уредът не трябва да се използва от деца или лица с нам... | eb503e0f-9688-4053-bfd0-d857506587a4 | CC-MAIN-2024-22 | https://c.scdn.gr/ds/product_guides/5623/20230410124844_66ed2e8d.pdf | 2024-05-18T14:09:25+00:00 | crawl-data/CC-MAIN-2024-22/segments/1715971057422.43/warc/CC-MAIN-20240518121005-20240518151005-00468.warc.gz | 128,795,161 | 13,210 | eng_Latn | bul_Cyrl | 0.531292 | bul_Cyrl | 0.998985 | [
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"unknown",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"bul_Cyrl",
"eng_Latn",
"eng_Latn",
"unknown",
"unknown",... | true | rolmOCR | [
135,
1330,
2751,
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37258,
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39313,
41213,
42969
] | [
1.421875,
0.671875
] | 1 | 0 |
विषय: दि.01/01/2016 रोजी ची प्राध्यापक (पशुविज्ञान विद्या शाखा) या संबंधाची अंतिम ज्येष्ठतासूची प्रसिद्ध करणे बाबत...
उपरोक्त विषयाचे अनुरोधाने प्राध्यापक (पशुविज्ञान विद्या शाखा) या संबंधाची दिनांक 01/01/2016 रोजीची अंतिम ज्येष्ठतासूची तयार करण्यात आली असून प्रसिद्ध करण्यात येत आहे. सदरील ज्येष्ठतासूची ही विद्यापीठ स... | 679e2127-6ea3-47dd-8f74-2cd143889a8d | CC-MAIN-2023-14 | https://mafsu.in/downloads/Seniority/Professor%20Veterinary.pdf | 2023-03-20T22:58:42+00:00 | crawl-data/CC-MAIN-2023-14/segments/1679296943562.70/warc/CC-MAIN-20230320211022-20230321001022-00414.warc.gz | 429,788,070 | 2,227 | eng_Latn | eng_Latn | 0.499931 | mar_Deva | 0.980776 | [
"mar_Deva",
"eng_Latn"
] | true | rolmOCR | [
1570,
4405
] | [
1.8515625
] | 2 | 1 |
በእርግዝና ወቅት የሚታዩ የችግር ጠቋሚ ምልክቶች
መቼ መደወል እንዳለብዎት
ከዚህ በታች የተጠቀሱትን የችግር ጠቋሚ ምልክቶችን ከተመለከቱ ወዲያዉኑ ወደ ጤና እንክብካቤ አገልግሎት ሰጭዎ ይደውሉ። ችግሮችን አስቀድሞ አውቆ ለችግሮቹ መፍትሔ ማግኘት፣ በእርስዎና በህጻን ልጅዎ ላይ ሊደርስ የሚችለውን ችግር ዘውትር ይቀንሳል።
ሰውነትዎ የሚነግርዎ ጠቋሚ ምልክቶች
*• ከብልትዎ ደም ሲፈስ ወይም ሲንጠባጠብ
*• ከብልትዎ ውሃ መፍሰስ ወይም መንጠባጠብ ሲጀምር
*• ከ 37 ሳምንት በታች ለሚሆን ግዜ አርግዘው ... | <urn:uuid:29095844-cfb5-4bd2-89ec-6f496c6c68eb> | CC-MAIN-2023-40 | https://www.uwmedicine.org/sites/stevie/files/2018-11/PatientResources_Forms_Warning-Signs-During-Pregnancy-Amharic.pdf | 2023-09-24T14:31:56+00:00 | crawl-data/CC-MAIN-2023-40/segments/1695233506646.94/warc/CC-MAIN-20230924123403-20230924153403-00463.warc.gz | 1,163,602,477 | 4,176 | eng_Latn | amh_Ethi | 0.499701 | amh_Ethi | 0.964092 | [
"amh_Ethi",
"amh_Ethi",
"eng_Latn",
"eng_Latn"
] | false | docling | [
1016,
1835,
3146,
4085
] | [
1.6171875
] | 4 | 2 |
二O一八年十一月
November 2018
Issue 59 期
稜聲音樂 Prism Music
透過光線、散發異彩。
源自三藩市,成立於2006年,稜聲音 樂(Prism Music)透過創作貼近大眾口味的音 樂,讓基督的真理在地上繼續「流行」。
Prism曾經推出兩張唱片集專輯和一本 作品,為人熟悉的有「鹽與光」、「Party Every Week」等歌曲,深受教友喜愛。2014 年,Prism其中的創始成員受邀請到北京參加 中港台音樂交流,從而結識了多位志同道合 的香港年青教友。回港後,他們隨即加入 Prism,讓Prism在香港正式扎根。同年,創 作歌曲「流動」更榮獲真理盃華語聖歌創作 大賽優秀獎。目前三藩市... | <urn:uuid:8ed9eabb-57ca-400b-9490-827c8aa7f93c> | CC-MAIN-2018-51 | https://www.cccmelbourne.org.au/publication/72-2018-11/file | 2018-12-11T05:24:30Z | crawl-data/CC-MAIN-2018-51/segments/1544376823565.27/warc/CC-MAIN-20181211040413-20181211061913-00534.warc.gz | 805,348,411 | 4,692 | eng_Latn | cmn_Hani | 0.499141 | cmn_Hani | 0.989191 | [
"eng_Latn",
"cmn_Hani",
"cmn_Hani",
"eng_Latn"
] | false | docling | [
1440,
3148,
5345,
7020
] | [
1.6875
] | 1 | 0 |
Dear SACRE members,
Thank you for considering the content of the last update regarding Religious Education and the Humanities Area of Learning and Experience (AoLE) within the new curriculum for Wales, sent to you in July 2017. We are grateful for the responses received so far. We are still in the process of receiving... | <urn:uuid:0991ad98-2509-490f-b4d7-5fbef82f9a10> | CC-MAIN-2021-43 | https://democracy.merthyr.gov.uk/documents/s38852/Appendix%202.pdf | 2021-10-18T13:14:34+00:00 | crawl-data/CC-MAIN-2021-43/segments/1634323585203.61/warc/CC-MAIN-20211018124412-20211018154412-00558.warc.gz | 315,118,729 | 3,353 | eng_Latn | cym_Latn | 0.599916 | cym_Latn | 0.980991 | [
"eng_Latn",
"eng_Latn",
"cym_Latn",
"cym_Latn",
"cym_Latn"
] | false | docling | [
2388,
4938,
6732,
9621,
10693
] | [
1.4453125
] | 1 | 0 |
529
*
社會正義、差異政治、以及溝通民主
郭秋永
中央研究院人文社會科學研究中心研究員
「公民」原本就是超越「差異性」而邁向「普遍性」的一個概念。然而,「公 民」概念所在標榜的「普遍性」,實際上隱藏著其所要超越的或其所要拋棄的「差 異性」,從而常使一些社會運動人士陷入「普遍性的弔詭」或「差異性的弔詭」: 在一方面,為了求得公平對待,必須否認差異性(或強調普遍性);在另一方 面,為了能夠矯正不利處境或獲得補償,則需強調差異性(或否認普遍性)。 顯而易見的,這種「普遍性的弔詭」或「差異性的弔詭」,密切關連著社會正 義與民主政治的重要議題。民主政治中的社會正義,究竟意指執政者應該依據 「普遍性」的公民觀念,「平等而無差異地公... | <urn:uuid:aa766f61-b87d-46b5-90b4-630fe7ab6265> | CC-MAIN-2025-05 | https://www.rchss.sinica.edu.tw/files_news/24-04-2012/4a.pdf | 2025-01-14T03:53:03+00:00 | crawl-data/CC-MAIN-2025-05/segments/1736703362184.5/warc/CC-MAIN-20250114014030-20250114044030-00234.warc.gz | 1,034,299,894 | 690 | eng_Latn | eng_Latn | 0.49757 | eng_Latn | 0.948685 | [
"cmn_Hani",
"eng_Latn"
] | false | docling | [
455,
1888
] | [
1.4375
] | 1 | 0 |
How Much Should I Feed My Puppy? Guidelines for Bland Diet 1 cup = 50% Chicken 50% Rice = 270 kcal
Under 4 months
| WEIGHT | KCAL/DAY | CAN/CUP OF I/D PER DAY |
|---|---|---|
| 2lb | 190 | 1/2 |
| 5lb | 380 | 1 |
| 8lb | 565 | 1 & 1/2 |
| 10lb | 660 | 1 & 3/4 |
| 15lb | 875 | 2 & 1/3 |
| 20lb | 1130 | 3 |
| 30lb | 15... | <urn:uuid:4080e8b4-aa9d-4ce8-9e04-999bd6c80aad> | CC-MAIN-2022-21 | https://www.winchestervetgroup.com/uploads/1/2/0/1/120185449/feeding_guidelines.pdf | 2022-05-21T09:56:58+00:00 | crawl-data/CC-MAIN-2022-21/segments/1652662539049.32/warc/CC-MAIN-20220521080921-20220521110921-00789.warc.gz | 1,173,253,016 | 1,005 | eng_Latn | eng_Latn | 0.748098 | eng_Latn | 0.748098 | [
"eng_Latn",
"unknown"
] | false | docling | [
1496,
1604
] | [
1.8046875
] | 1 | 0 |
The Weather in Chicago
Friday, 21 October
| | 5° | | | | |
|---|---|---|---|---|---|
| Atmospheric Overview | | Clear | Sunny intervals | Sunny | Clear |
| Wind | | 14 mph N | 15 mph N | 13 mph N | 11 mph N |
| Rain | | 0 mm | 0 mm | 0 mm | 0 mm |
| Relative Humidity | | 75 % | 73 % | 42 % | 45 % |
| Atmosp... | <urn:uuid:8e5ecaba-ec5f-4ca7-87c3-940a55ed7e50> | CC-MAIN-2016-44 | http://www.yourweather.co.uk/pdf_print-Chicago-Chicago+Weather+Service+Forecast+Office-United+States-North+America-10452.html | 2016-10-21T23:48:36Z | crawl-data/CC-MAIN-2016-44/segments/1476988718311.12/warc/CC-MAIN-20161020183838-00010-ip-10-171-6-4.ec2.internal.warc.gz | 802,057,958 | 1,551 | eng_Latn | eng_Latn | 0.888458 | eng_Latn | 0.866828 | [
"unknown",
"eng_Latn"
] | false | docling | [
1805,
3769
] | [
2.359375
] | 1 | 0 |
Primary Works – Individual Short Stories
Magona, Sindiwe. "A Drowning in Cala."Push‐Push! And Other Stories.Cape Town: David Philip, 1996. 1‐18. Print.
‐‐‐. "A Peaceful Exit."Push‐Push! And Other Stories.Cape Town: David Philip, 1996. 86‐106. Print.
‐‐‐. "A State of Outrage."A State Of Outrage and Other Stories.Ed. An... | <urn:uuid:2db6f8f3-9eb7-4a92-b48f-58e0d2f41d7e> | CC-MAIN-2019-26 | https://english.gsu.edu/files/2014/08/Sindiwe-Magona-bibliography-15.pdf | 2019-06-25T05:39:00Z | crawl-data/CC-MAIN-2019-26/segments/1560627999800.5/warc/CC-MAIN-20190625051950-20190625073950-00484.warc.gz | 415,815,316 | 1,472 | eng_Latn | eng_Latn | 0.61163 | eng_Latn | 0.605152 | [
"eng_Latn",
"eng_Latn"
] | false | docling | [
1874,
3378
] | [
1.515625
] | 1 | 2 |
## Kindergarten Calendar 2024-25
**Brant Christian School**
**Board Approval:** January 16, 2024
### August
| Mo | Tu | We | Th | Fr |
|----|----|----|----|----|
| | | | 1 | 2 |
| 5 | 6 | 7 | 8 | 9 |
| 12 | 13 | 14 | 15 | 16 |
| 19 | 20 | 21 | 22 | 23 |
| 26 | 27 | 28 | 29 | 30 |
**August 26/27 - Ne... | aa290e39-fb8b-4f31-bd58-2606ac917f2d | CC-MAIN-2022-27 | https://www.brantchristianschool.ca/download/391376 | 2022-07-05T03:31:38+00:00 | crawl-data/CC-MAIN-2022-27/segments/1656104512702.80/warc/CC-MAIN-20220705022909-20220705052909-00078.warc.gz | 723,196,405 | 6,061 | eng_Latn | eng_Latn | 0.492579 | eng_Latn | 0.666304 | [
"dag_Latn",
"dag_Latn",
"dag_Latn",
"eng_Latn",
"eng_Latn"
] | true | rolmOCR | [
4802,
8534,
12232,
15048,
17383
] | [
1.375
] | 1 | 0 |
The water used mainly takes from the river and the reservoir in Taiwan, and the water source was depended on the rainfall supply. The long term rainfall and runoff records were collected to investigate the variation of water resource in Keelung River and Jhuoshuei River. According to historical record, the long-term ra... | <urn:uuid:4c2a9547-6740-41e0-a794-845ce3f979f7> | CC-MAIN-2018-39 | https://core.ac.uk/download/pdf/41695693.pdf | 2018-09-22T18:02:29Z | crawl-data/CC-MAIN-2018-39/segments/1537267158609.70/warc/CC-MAIN-20180922162437-20180922182837-00407.warc.gz | 484,905,306 | 5,378 | eng_Latn | cmn_Hani | 0.507041 | cmn_Hani | 0.905568 | [
"eng_Latn",
"cmn_Hani",
"cmn_Hani",
"cmn_Hani",
"cmn_Hani",
"cmn_Hani",
"eng_Latn",
"eng_Latn",
"eng_Latn",
"cmn_Hani",
"eng_Latn"
] | true | rolmOCR | [
726,
1913,
2708,
4358,
5678,
6371,
6558,
6786,
7016,
8094,
9112
] | [
1.984375
] | 1 | 0 |
PRE-2020 MITIGATION ACTION NOW!
Bonn, October 2015
Climate change is a cumulative problem. Every added molecule of CO2 loads the carbon budget further, adds to the extreme weather events we are already experiencing, and takes us one step closer to irreversible tipping points and runaway warming. Emissions today canno... | <urn:uuid:9b34f476-7ed8-420a-996b-4a45b5519a57> | CC-MAIN-2021-04 | https://gbdrrrf.org/system/files/privatefiles/pre-2020_commitments_and_actions.pdf | 2021-01-20T19:36:13+00:00 | crawl-data/CC-MAIN-2021-04/segments/1610703521987.71/warc/CC-MAIN-20210120182259-20210120212259-00334.warc.gz | 362,664,585 | 5,573 | eng_Latn | eng_Latn | 0.997215 | eng_Latn | 0.997236 | [
"eng_Latn",
"eng_Latn"
] | false | docling | [
4592,
8698
] | [
1.3359375
] | 4 | 6 |
New horizon scholars school
Kavesar, Ghodbunder Road, Thane (W)-400615
English Story Telling Competition
Date:- 06/08/2018
Grade II
| 1 | Vanya Joshi | D | Neptune | I |
|---|---|---|---|---|
| 2 | Yahvi Sorathia | E | Mars | II |
| 3 | Anica Dongerkery | L | Jupiter | II |
| 4 | Niyati Singh | I | Jupiter | III ... | <urn:uuid:36bae116-d144-437f-a781-76210ae01b4c> | CC-MAIN-2024-33 | https://www.nhssthane.com/download.php?file=NHSST/4a29d00a70f6aab827012c3eacf21b98.pdf&type=document | 2024-08-09T01:47:30+00:00 | crawl-data/CC-MAIN-2024-33/segments/1722640751424.48/warc/CC-MAIN-20240809013306-20240809043306-00445.warc.gz | 700,739,016 | 336 | eng_Latn | eng_Latn | 0.770029 | eng_Latn | 0.770029 | [
"eng_Latn"
] | false | docling | [
882
] | [
2.21875
] | 1 | 0 |
STRATEGIC PLAN UPDATE 2013-2014
Culture & Climate
Goal One: Foster the culture of continuous improvement.
* Utilized ECRA and 5 Essential Data to address goals and directives, shared with all District 70 staff and Board of Education
* Created aBuilding a Community of Character theme as part of the Character Counts ... | <urn:uuid:9ee0b6b5-4cc7-4544-93d7-ed6a1e8794f7> | CC-MAIN-2017-13 | http://d70schools.org/lib/dash/files/strategic_plan_update_2014.pdf | 2017-03-30T02:42:17Z | crawl-data/CC-MAIN-2017-13/segments/1490218191984.96/warc/CC-MAIN-20170322212951-00649-ip-10-233-31-227.ec2.internal.warc.gz | 85,212,012 | 10,483 | eng_Latn | eng_Latn | 0.983557 | eng_Latn | 0.988402 | [
"eng_Latn",
"eng_Latn",
"eng_Latn",
"eng_Latn",
"eng_Latn",
"eng_Latn",
"eng_Latn"
] | false | docling | [
2286,
5245,
7309,
9332,
11863,
13623,
15580
] | [
1.359375
] | 2 | 2 |
📚 FinePDFs-Edu
350B+ of highly educational tokens from PDFs 📄
What is it?
📚 FinePDFs-Edu dataset consists of 350B+ tokens of educational PDFs filtered from 📄 FinePDFs dataset covering 69 languages.
FinePDFs was created using the formula inspired from FineWeb-Edu, we developed an educational quality classifier using annotations generated by Qwen3-235B-A22B-Instruct-2507 for each of 69 languages present in this dataset. We then used this classifier to retain only the most educational web pages. FinePDFs-Edu outperforms FinePDFs on popular benchmarks and shows the power of classifiers trained on synthetic data.
The Dataset Curation section details the process for creating the dataset. While it might seem that the dataset is an order of magnitude smaller than FineWeb-Edu, unlike its web ancestor, this dataset is globally deduplicated!
What is being released?
Along with the dataset, which includes all filtered CommonCrawl dumps since CC-MAIN-2013-20 to CC-MAIN-2025-08, we also release:
- The educational classifier used for the filtering (for each language)
- The dataset with educational (and 3 other) labels by Qwen3-235B-A22B-Instruct-2507 for English.
- The dataset with educational labels by Qwen3-235B-A22B-Instruct-2507 for 69 languages beyond English.
- The code for training it and running inference.
How to download and use 📄 FinePDFs-Edu
See the tables above for the subset of the language you want to download.
We currently do not provide smaller sample versions, but by setting limit or using streaming=True you can easily fetch a sample of the data. If there is interest from the community we might upload smaller sampled versions later on.
Using 🏭 datatrove
from datatrove.pipeline.readers import ParquetReader
# limit determines how many documents will be streamed (remove for all)
# this will fetch the Portuguese filtered data
data_reader = ParquetReader("hf://datasets/HuggingFaceFW/finepdfs-edu/data/por_Latn/train", limit=1000)
for document in data_reader():
# do something with document
print(document)
###############################
# OR for a processing pipeline:
###############################
from datatrove.executor import LocalPipelineExecutor
from datatrove.pipeline.readers import ParquetReader
from datatrove.pipeline.filters import LambdaFilter
from datatrove.pipeline.writers import JsonlWriter
pipeline_exec = LocalPipelineExecutor(
pipeline=[
ParquetReader("hf://datasets/HuggingFaceFW/finepdfs-edu/data/por_Latn/train", limit=1000),
LambdaFilter(lambda doc: "hugging" in doc.text),
JsonlWriter("some-output-path")
],
tasks=10
)
pipeline_exec.run()
Using huggingface_hub
from huggingface_hub import snapshot_download
folder = snapshot_download(
"HuggingFaceFW/finepdfs-edu",
repo_type="dataset",
local_dir="./finepdfs-edu/",
# download the Czech filtered
allow_patterns=["data/ces_Latn/train/*"])
For faster downloads, make sure to install pip install huggingface_hub[hf_transfer] and set the environment variable HF_HUB_ENABLE_HF_TRANSFER=1.
Using datasets
from datasets import load_dataset
# get Croatian data
fw = load_dataset("HuggingFaceFW/finepdfs-edu", name="hrv_Latn", split="train", streaming=True)
Similiar to original FinePDFs, this dataset contains high amount of language switching samples, we thus recommend using the filtering function if this is not desired.
Dataset curation
We have used the same approach for FineWeb-Edu with minimal adjustments of the prompt. To scale to languages beyond English we decided to train separate classifier for each.
Educational Scoring
We used Qwen3-235B-A22B-Instruct-2507 to score approximately 300,000 FinePDFs samples for educational quality on a 0–5 scale. The final prompt used for scoring is available here.
After experimenting with several prompt variants, we found that the FineWeb-Edu prompt yielded the most consistent and reliable results. As in FineWeb-Edu, we observed that highly technical or graduate-level content did not correlate well with the benchmarks we track. However, unlike in FineWeb-Edu, the overall average score was noticeably lower—if we had used a fixed threshold of score = 3, only about 2% of samples would have been retained.
To address this, we instead selected the top 10% of samples based on their education score.
| Threshold | Drop Rate |
|---|---|
| 1 | 0.3028 |
| 2 | 0.9451 |
| 3 | 0.9802 |
| 4 | 0.9906 |
| 5 | 0.9987 |
We also replaced the teacher model to improve multilingual coverage and take advantage of the better inference efficiency offered by Mixture-of-Experts (MoE) architectures. To identify a suitable model, we aimed for one that was most “Claude-like”, i.e., whose scoring behavior most closely matched Claude Sonnet-4. We compared models using mean squared error (MSE) on a 10k-sample development set and found that Qwen3-235B-A22B-Instruct-2507 was both the most Claude-like and highly efficient—processing up to 14 chunks/sec on a single H100 GPU.
| Model | MSE (vs. Sonnet-4) |
|---|---|
| Qwen_Qwen3-235B-A22B-Instruct-2507 | 0.398 |
| Qwen_Qwen3-235B-A22B-Thinking-2507 | 0.812 |
| Qwen_Qwen3-30B-A3B-Instruct-2507 | 0.364 |
| Qwen_Qwen3-30B-A3B-Thinking-2507 | 0.925 |
| google_gemma-3-27b-it | 2.727 |
| meta-llama_Llama-3.3-70B-Instruct | 0.553 |
| meta-llama_Llama-4-Maverick-17B-128E-Instruct | 0.707 |
| meta-llama_Llama-4-Scout-17B-16E-Instruct | 1.177 |
| mistralai_Magistral-Small-2507 | 0.717 |
| zai-org_GLM-4.5-Air-FP8 | 0.510 |
For long documents, we take the first 2,048 tokens from the top of the document. If the document exceeds 10,000 characters, we also take the last 2,048 tokens and compute the final score as max(top_score, bottom_score).
Classifier Training
We fine-tuned a BERT-like regression model using these annotations, based on answerdotai/ModernBERT-large for English and jhu-clsp/mmBERT-base for other languages. Both models achieved the best F1 performance among the options we evaluated, while supporting FA2, which allowed us to label over 220 samples per second on an H100 GPU.
For each model, we unfroze both the classifier head and the last four transformer layers. To address severe class imbalance, we rebalanced the training data.
The resulting classifiers are available at:
https://huggingface.co/HuggingFaceFW/finepdfs_edu_classifier_{lang}
Filtering and results
We then built 📚 FinePDFs-Edu by filtering out 90% of samples with lowest edu score for each language. Our ablation demonstrated that this refined dataset surpasses 📄 FinePDFs and all other open web datasets, with remarkable improvements on educational benchmarks such as MMLU and ARC. You will find all the ablation models and datasets in this collection.
Considerations for Using the Data
See: FinePDFs.
Additional Information
Licensing Information
The dataset is released under the Open Data Commons Attribution License (ODC-By) v1.0 license. The use of this dataset is also subject to CommonCrawl's Terms of Use.
Citation Information
@misc{kydlicek2025finepdfs,
title={FinePDFs},
author={Hynek Kydl{\'\i}{\v{c}}ek and Guilherme Penedo and Leandro von Werra},
year={2025},
publisher = {Hugging Face},
journal = {Hugging Face repository},
howpublished = {\url{https://huggingface.co/datasets/HuggingFaceFW/finepdfs_edu}}
}
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