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News/Our response to the TanStack npm supply chain attack
openai
PublishedMay 13, 2026 at 12:00 AM

Our response to the TanStack npm supply chain attack

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OpenAI details its response to the TanStack “Mini Shai-Hulud” supply chain attack, outlines protections taken to secure systems and signing certificates, and explains why macOS users must update OpenAI apps by June 12, 2026. Learn what happened, what was affected, and how OpenAI is strengthening def

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