Pentagon AI chief confirms DOD's expanded use of Google, says reliance on one model 'never a good thing'

Pentagon AI chief confirms DOD's expanded use of Google, says reliance on one model 'never a good thing'

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The Pentagon's AI chief discussed the DOD's expanded use of Google Gemini after the blacklisting of Anthropic.

Key PointsThe Pentagon is expanding the list of AI labs it's working with after blacklisting Anthropic."Overreliance on one vendor is never a good thing," Cameron Stanley, the Pentagon's chief digital and artificial intelligence officer, told CNBCThe DOD has tapped Google's Gemini for classified work, according to a person familiar with the matter. In this articleGOOGLFollow your favorite stocksCREATE FREE ACCOUNTVcg | Visual China Group | Getty ImagesPentagon AI chief Cameron Stanley confirmed to CNBC that the Department of Defense is expanding its use of Google's Gemini artificial intelligence model, about two months after the DOD dropped Anthropic, designating it as a supply chain risk. The DOD is using Google's latest model for classified projects, according to a person with knowledge of the matter who asked not to be named because the specifics of the arrangement aren't public. The Information earlier reported that Google had signed a deal with the DOD for classified work, citing a person familiar with the matter.In addition to Gemini, the Pentagon is also working with OpenAI and other vendors to modernize wartime capabilities, Stanley told CNBC in a video interview."Overreliance on one vendor is never a good thing," he said. "We're seeing that, especially in software."The DOD's embrace of Google comes amid a heated legal dispute with Anthropic. Earlier this month, a federal appeals court in Washington, D.C., denied Anthropic's request to temporarily block the depar...

Originally published on April 29, 2026. Curated by AI News.

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