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News/George Clooney, Tom Hanks, and Meryl Streep back new ‘Human Consent Standard’ for AI licensing
theverge
PublishedMay 12, 2026 at 4:00 PM
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George Clooney, Tom Hanks, and Meryl Streep back new ‘Human Consent Standard’ for AI licensing

George Clooney, Tom Hanks, and Meryl Streep back new ‘Human Consent Standard’ for AI licensing
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Hollywood actors and producers are standing behind a new AI licensing standard that will tell AI systems whether they'll need to pay to use a person's likeness, creative work, characters, and designs. With the Human Consent Standard, people can set terms for the use of their work or likeness, includ

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