Embodied Science: Closing the Discovery Loop with Agentic Embodied AI

arXiv cs.AI / 3/23/2026

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Key Points

  • It argues for embodied science as a paradigm that integrates agentic reasoning with physical execution to accelerate scientific discovery.
  • It introduces the PLAD framework—Perception-Language-Action-Discovery—for embodied agents to perceive environments, reason over knowledge, execute interventions, and learn from outcomes.
  • It emphasizes grounding computational reasoning in robust physical feedback to bridge digital predictions and empirical validation.
  • It envisions autonomous discovery systems in life and chemical sciences that operate in a closed loop of experimentation.

Abstract

Artificial intelligence has demonstrated remarkable capability in predicting scientific properties, yet scientific discovery remains an inherently physical, long-horizon pursuit governed by experimental cycles. Most current computational approaches are misaligned with this reality, framing discovery as isolated, task-specific predictions rather than continuous interaction with the physical world. Here, we argue for embodied science, a paradigm that reframes scientific discovery as a closed loop tightly coupling agentic reasoning with physical execution. We propose a unified Perception-Language-Action-Discovery (PLAD) framework, wherein embodied agents perceive experimental environments, reason over scientific knowledge, execute physical interventions, and internalize outcomes to drive subsequent exploration. By grounding computational reasoning in robust physical feedback, this approach bridges the gap between digital prediction and empirical validation, offering a roadmap for autonomous discovery systems in the life and chemical sciences.