A classifier using NVML telemetry identifies ML training workloads at 98.2% accuracy and retains 43-87% accuracy against the strongest tested adversarial evasions across 9 GPUs and 5 iteration rounds.
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Catalogs 28 candidate verification mechanisms for restrictions on AI research and identifies key factors affecting their feasibility.
citing papers explorer
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Detecting Hidden ML Training With Zero-Overhead Telemetry
A classifier using NVML telemetry identifies ML training workloads at 98.2% accuracy and retains 43-87% accuracy against the strongest tested adversarial evasions across 9 GPUs and 5 iteration rounds.
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Verifying Restrictions on Frontier AI Research
Catalogs 28 candidate verification mechanisms for restrictions on AI research and identifies key factors affecting their feasibility.