Google and Pentagon reportedly agree deal for ‘any lawful’ use of AI | The Verge
Google has signed a classified deal that allows the US Department of Defense to use its AI models for “any lawful government purpose.”
ML algorithms, training, and inference
Google has signed a classified deal that allows the US Department of Defense to use its AI models for “any lawful government purpose.”
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