About
Academics Torrents was established to meet the demands of science in the age of big data. It utilizes a scalable BitTorrent platform that distributes the burden of hosting data, eliminating the risk of data loss due to the rise and fall of dataset hosting providers. Researchers are empowered to replicate data they are working with and share large datasets without incurring the high costs usually associated with commercial providers.
Academic Torrents is a product of the Institute for Reproducible Research (a U.S. 501(c)3 nonprofit).
Twitter: @academictorrent
Facebook: AcademicTorrents
Team
Joseph Paul Cohen | Henry Z Lo | Jonathan Nogueira |
Mission
Personal Statement
This service is designed to facilitate storage of all the data used in research, including datasets as well as publications. There are many advantages of using bittorrent technology to disseminate this work.
Distributed storage and content delivery provided by anyone. Files can be securely downloaded from other users of the system. They can share the file for a day or a year.
Mirroring the content can be done from a desktop computer anywhere. Everyone surrounding this computer will have local access to the data automatically and securely.
Bundles of files, not just papers, or any size can be disseminated in this way as long as at least one person can become a seed for that data.
Torrent technology allows a group of editors to “seed” their own peer-reviewed published articles with just a torrent client. Each editor can have part or all of the papers stored on their desktops and have a torrent tracker to coordinate the delivery of papers without a dedicated server.
One aim of this site is to create the infrastructure to allow open access journals to operate at low cost. By facilitating file transfers, the journal can focus on its core mission of providing world class research. After peer review the paper can be indexed on this site and disseminated throughout our system.
Large dataset delivery can be supported by researchers in the field that have the dataset on their machine. A popular large dataset doesn’t need to be housed centrally. Researchers can have part of the dataset they are working on and they can help host it together.
Libraries can host this data to host papers from their own campus without becoming the only source of the data. So even if a library’s system is broken other universities can participate in getting that data into the hands of researchers.
-Joseph Paul Cohen 2013 joseph /at/ josephpcohen.com
Cite
Please cite Academic Torrents:
Henry Z. Lo. and Cohen, Joseph Paul “Academic Torrents: Scalable Data Distribution.” Neural Information Processing Systems Challenges in Machine Learning (CiML) Workshop, 2016, http://arxiv.org/abs/1603.04395.
Cohen, Joseph Paul, and Henry Z. Lo. “Academic Torrents: A Community-Maintained Distributed Repository.” Annual Conference of the Extreme Science and Engineering Discovery Environment, 2014, http://doi.org/10.1145/2616498.2616528.
download bibtex file academictorrents.bib
@inproceedings{Cohen2014,
title = {Academic Torrents: A Community-Maintained Distributed Repository},
author = {Cohen, Joseph Paul and Lo, Henry Z.},
booktitle = {Annual Conference of the Extreme Science and Engineering Discovery Environment},
doi = {10.1145/2616498.2616528},
url = {http://doi.acm.org/10.1145/2616498.2616528},
year = {2014}
}
@inproceedings{Lo2016,
title = {Academic Torrents: Scalable Data Distribution},
author = {Lo, Henry Z. and Cohen, Joseph Paul},
booktitle = {Neural Information Processing Systems Challenges in Machine Learning (CiML) workshop},
arxivId = {1603.04395},
url = {http://arxiv.org/abs/1603.04395},
year = {2016}
}
Support
If you are having issues, please let us know
We have an issue tracker here: https://github.com/AcademicTorrents/academictorrents-docs/issues
We have a contact email here: contact@academictorrents.com
Legal
Please submit DMCA requests using this Google form
We have never received an order to turn over user information.
The following torrents have been removed due to DMCA requests:
https://academictorrents.com/details/5daa22057577521a378b71e0f0de6a934bd5c2ea
https://academictorrents.com/details/a528703c7354567183da4aafaea12ce77e47f6bb
https://academictorrents.com/details/3374eb064817a8edd12167b6e9e1300b13d9f08a
https://academictorrents.com/details/85672347c6f13f6d2909f756e86217ce1b88fa40
https://academictorrents.com/details/0d366035664fdf51cfbe9f733953ba325776e667
Thanks
Python at-python library
Martin Weiss
Smart Node Team 2014
Jonathan Nogueira
Adrian Garay
Grigorii Lazari
James Lee
Luc Nguyen
Mani Jalilian
dward Grigoryan
Java BitTorrent API Team 2015
Alpesh Kothari
Gregory McPherran
Contributors
akmalhisyam
Mantas Radzevičius
Stefan Parviainen
Hanz Gumapac
Dennis Yassine
Khan Janny (@Reboot_ex)