Datasets:
annotations_creators:
- no-annotation
language_creators:
- found
language:
- es
license:
- odc-by
size_categories:
- n<1K
- 1K<n<10K
- 10K<n<100K
- 100K<n<1M
- 1M<n<10M
- 10M<n<100M
- 100M<n<1B
source_datasets:
- mc4
- bertin-project/mc4-sampling
task_categories:
- text-generation
- fill-mask
task_ids:
- language-modeling
pretty_name: mC4-es-sampled
Dataset Card for mC4-es-sampled
Table of Contents
Dataset Description
Dataset Summary
This dataset is the result of applying perplexity sampling to the Spanish portion of mC4 using mc4-sampling
. Please, refer to BERTIN Project.
You can load the mC4 Spanish sampled like this:
from datasets import load_dataset
for config in ("random", "stepwise", "gaussian"):
mc4es = load_dataset(
"bertin-project/mc4-es-sampled",
config,
split="train",
streaming=True
).shuffle(buffer_size=1000)
for sample in mc4es:
print(config, sample)
break
Alternatively, you can bypass the datasets
library and quickly download (~1.5hrs, depending on connection) a specific config in the same order used to pre-train BERTIN models in a massive (~200GB) JSON-lines files:
import io
import gzip
import json
import sys
import requests
from tqdm import tqdm
_DATA_URL_TRAIN = "https://huggingface.co./datasets/bertin-project/mc4-es-sampled/resolve/main/mc4-es-train-50M-{config}-shard-{index:04d}-of-{n_shards:04d}.json.gz"
def main(config="stepwise"):
data_urls = [
_DATA_URL_TRAIN.format(
config=config,
index=index + 1,
n_shards=1024,
)
for index in range(1024)
]
with open(f"mc4-es-train-50M-{config}.jsonl", "w") as f:
for dara_url in tqdm(data_urls):
response = requests.get(dara_url)
bio = io.BytesIO(response.content)
with gzip.open(bio, "rt", encoding="utf8") as g:
for line in g:
json_line = json.loads(line.strip())
f.write(json.dumps(json_line) + "\
")
if __name__ == "__main__":
main(sys.argv[1])
Supported Tasks and Leaderboards
mC4-es-sampled is mainly intended for reproducibility purposes of the BERTIN Project and to pretrain language models and word representations on medium budgets.
Languages
The dataset only supports the Spanish language.
Dataset Structure
Data Instances
An example form the Gaussian
config:
{'timestamp': '2018-10-20T06:20:53Z', 'text': 'Ortho HyaluroTop 200 aporta el col谩geno y 谩cido hialur贸nico que, con la edad, se producen en menor cantidad. La vitamina C promueve la producci贸n de col谩geno para mantener la piel sana y protege a las c茅lulas contra los radicales libres causados ??por la contaminaci贸n ambiental y los rayos UV.', 'url': 'https://www.farmaciagaleno.com/orthonat-hyalurotop-200-30-capsulas'}
Data Fields
The data have several fields:
url
: url of the source as a stringtext
: text content as a stringtimestamp
: timestamp as a string
Data Splits
The resulting mC4 subsets for Spanish are reported in this table:
config | train |
---|---|
stepwise | 50M |
random | 50M |
gaussian | 50M |
The split validation
is exactly the same as the original mc4
dataset.
Dataset Creation
Curation Rationale
This dataset was built from the original mc4
by applying perplexity-sampling via mc4-sampling
for Spanish.
Additional Information
Dataset Curators
Original data by Common Crawl.
Licensing Information
AllenAI are releasing this dataset under the terms of ODC-BY. By using this, you are also bound by the Common Crawl terms of use in respect of the content contained in the dataset.
Citation Information
To cite this dataset (arXiv):
@article{BERTIN,
author = {Javier De la Rosa y Eduardo G. Ponferrada y Manu Romero y Paulo Villegas y Pablo Gonz谩lez de Prado Salas y Mar铆a Grandury},
title = {{BERTIN}: Efficient Pre-Training of a Spanish Language Model using Perplexity Sampling},
journal = {Procesamiento del Lenguaje Natural},
volume = {68},
number = {0},
year = {2022},
keywords = {},
abstract = {The pre-training of large language models usually requires massive amounts of resources, both in terms of computation and data. Frequently used web sources such as Common Crawl might contain enough noise to make this pretraining sub-optimal. In this work, we experiment with different sampling methods from the Spanish version of mC4, and present a novel data-centric technique which we name perplexity sampling that enables the pre-training of language models in roughly half the amount of steps and using one fifth of the data. The resulting models are comparable to the current state-of-the-art, and even achieve better results for certain tasks. Our work is proof of the versatility of Transformers, and paves the way for small teams to train their models on a limited budget.},
issn = {1989-7553},
url = {http://journal.sepln.org/sepln/ojs/ojs/index.php/pln/article/view/6403},
pages = {13--23}
}
If you use this dataset, we would love to hear about it! Reach out on twitter, GitHub, Discord, or shoot us an email.
To cite the original mc4
dataset:
@article{2019t5,
author = {Colin Raffel and Noam Shazeer and Adam Roberts and Katherine Lee and Sharan Narang and Michael Matena and Yanqi Zhou and Wei Li and Peter J. Liu},
title = {Exploring the Limits of Transfer Learning with a Unified Text-to-Text Transformer},
journal = {arXiv e-prints},
year = {2019},
archivePrefix = {arXiv},
eprint = {1910.10683},
}
Contributions
Dataset contributed by @versae for BERTIN Project.
Thanks to @dirkgr and @lhoestq for adding the original mC4 dataset.