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News/What Parameter Golf taught us about AI-assisted research
openai
PublishedMay 12, 2026 at 12:00 AM

What Parameter Golf taught us about AI-assisted research

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Parameter Golf brought together 1,000+ participants and 2,000+ submissions to explore AI-assisted machine learning research, coding agents, quantization, and novel model design under strict constraints.

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