660개 AI 에이전트가 27,000건의 실험 수행, 2015년 교과서 재발견

Hacker News May 2026
Source: Hacker NewsAI agentsmulti-agent systemsArchive: May 2026
660개의 AI 에이전트 떼가 인간의 개입 없이 27,000건의 실험을 수행했습니다. 그들의 가장 큰 '돌파구'는? 이미 2015년 교과서에 발표된 결론이었습니다. 이 결과는 자율적 과학 발견의 한계에 대한 냉철한 교훈을 제공합니다.
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