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LIBLICENSE <[log in to unmask]>
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Date:
Mon, 26 Feb 2024 23:09:59 -0500
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From: Ann Shumelda Okerson <[log in to unmask] <[log in to unmask]>>
Date: Mon, 26 Feb 2024 10:06:27 -0500

*CCC to Host Town Hall on Copyright, Artificial Intelligence, and the
Training of Large Language Models*

*February 22, 2024 – Danvers, Mass. –  *CCC <https://www.copyright.com/>, a
leader in advancing copyright, accelerating knowledge, and powering
innovation, will host the Town Hall event “The Heart of the Matter:
Copyright, AI Training and LLMs” via LinkedIn Live
<https://www.linkedin.com/events/theheartofthematter-copyright-a7157813380118933504/about/>
on Thursday, 29 February, 11:00 EST/16:00 GMT.

A panel of legal experts including Prof. Daniel Gervais
<https://www.linkedin.com/in/danielgervais/>, Vanderbilt University Law
School, and Prof. Dr. Noam Shemtov
<https://www.linkedin.com/in/noam-shemtov-a2a204227/>, Queen Mary
University of London, along with CCC’s Executive Vice President & CTO, Babis
Marmanis <https://www.linkedin.com/in/marmanis/> and Vice President,
General Counsel Catherine Zaller Rowland
<https://www.linkedin.com/in/catherine-zaller-rowland-5940918/> will
discuss how, and why, Large Language Model (LLM) training includes copying
works – and why it matters for creators, publishers, research-driven
companies, academic institutions, and researchers who are the end users of
systems at these organizations.
More here:

https://www.copyright.com/media-press-releases/ccc-to-host-town-hall-on-copyright-artificial-intelligence-and-the-training-of-large-language-models/


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