Industry Consortia and Self-Regulation
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"summary": "A thorough, well-structured comparative analysis of major AI industry self-regulatory bodies that applies historical analogues rigorously and reaches the defensible conclusion that voluntary consortia are largely ineffective without third-party verification, regulatory backstop, or enforcement mechanisms. MLCommons is identified as the most credible body due to measurable, reproducible benchmarks.",
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