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WARC-DL: Scalable Web Archive Processing for Deep Learning
by
Potthast, Martin
, Deckers, Niklas
in
Archives & records
/ Deep learning
/ Machine learning
/ Neural networks
/ Training
/ Webs
2022
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WARC-DL: Scalable Web Archive Processing for Deep Learning
by
Potthast, Martin
, Deckers, Niklas
in
Archives & records
/ Deep learning
/ Machine learning
/ Neural networks
/ Training
/ Webs
2022
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WARC-DL: Scalable Web Archive Processing for Deep Learning
Paper
WARC-DL: Scalable Web Archive Processing for Deep Learning
2022
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Overview
Web archives have grown to petabytes. In addition to providing invaluable background knowledge on many social and cultural developments over the last 30 years, they also provide vast amounts of training data for machine learning. To benefit from recent developments in Deep Learning, the use of web archives requires a scalable solution for their processing that supports inference with and training of neural networks. To date, there is no publicly available library for processing web archives in this way, and some existing applications use workarounds. This paper presents WARC-DL, a deep learning-enabled pipeline for web archive processing that scales to petabytes.
Publisher
Cornell University Library, arXiv.org
Subject
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