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中文(ZH) 专访 Ψ₀ 团队:用对方法,30小时真机数据也能练模型|RSS 2026

Humanoid robot model Ψ₀ trains effectively on limited real-world data

Researchers at the University of Southern California's PSI Lab have developed a new foundation model for humanoid robots called Ψ₀, which focuses on optimizing the use of limited real-world robot data. Instead of relying on massive datasets, Ψ₀ employs a three-stage training process: first, it learns general capabilities from human video data, then it fine-tunes control for robots using a smaller amount of real-world robot data, and finally, it adapts to specific tasks with even more specialized data. This approach aims to overcome the data bottleneck in robotics by improving training methodologies, demonstrating significant success in real-world long-term tasks despite using substantially less robot operational data than current benchmarks. AI

IMPACT This research suggests that improved training techniques can significantly enhance robot capabilities even with limited real-world data, potentially accelerating development and deployment.

RANK_REASON The cluster describes a research paper detailing a new model and training methodology for robotics. [lever_c_demoted from research: ic=1 ai=1.0]

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Humanoid robot model Ψ₀ trains effectively on limited real-world data

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  1. 雷峰网 (Leiphone) TIER_1 中文(ZH) ·

    Interview with the Ψ₀ Team: Using the Right Methods, 30 Hours of Real Machine Data Can Also Train Models | RSS 2026

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