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News/An AI announcer mispronounced and skipped names during a graduation
theverge
PublishedMay 19, 2026 at 3:51 PM
—neutral

An AI announcer mispronounced and skipped names during a graduation

An AI announcer mispronounced and skipped names during a graduation
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The use of AI-powered tools to announce students as they walk on stage during graduation and commencement ceremonies has grown in popularity over the past few years, but it's not always succeeding at the one job it's there for. Many schools have switched to these systems as a way to ensure names are

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