AI That Thinks Like Us – and Could Help Explain How We Think

Hacker News - AI
Jul 4, 2025 11:06
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Summary

Researchers at Helmholtz Munich have developed an AI model that mimics human-like thinking by integrating cognitive processes such as memory and reasoning. This approach not only advances AI’s ability to solve complex tasks more naturally but also offers new insights into understanding human cognition, potentially bridging the gap between artificial and human intelligence.

Article URL: https://www.helmholtz-munich.de/en/newsroom/news-all/artikel/ai-that-thinks-like-us-and-could-help-explain-how-we-think Comments URL: https://news.ycombinator.com/item?id=44463440 Points: 1 # Comments: 0

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