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Google DeepMind explicitly identifies model weight exfiltration as a pathway to removing most safeguards, establishing the protection of model weights as foundational to the integrity of all other safety measures.
Readers are informed that Google DeepMind treats model weight security as especially important because unauthorized access to weights would enable bypassing most of its safeguards.
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"Security mitigations help prevent unauthorized actors from exfiltrating model weights. This is especially important because access to model weights allows removal of most safeguards.— Excerpt from Google DeepMind's Google DeepMind Frontier Safety Framework
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Google DeepMind explicitly identifies model weight exfiltration as a pathway to removing most safeguards, establishing the protection of model weights as foundational to the integrity of all other safety measures.
Readers are informed that Google DeepMind treats model weight security as especially important because unauthorized access to weights would enable bypassing most of its safeguards.
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