The design of intelligent materials often draws parallels with the complex adaptive behaviors of biological organisms, where robust functionality stems from sophisticated hierarchical organization and emergent long-distance coordination among a myriad local components. Current synthetic materials, despite integrating advanced sensors and actuators, predominantly demonstrate only simple, preprogrammed stimulus–response functionalities, falling short of robustly autonomous intelligent behavior. This perspective proposes a fundamentally different approach focusing on architectures where material-based intelligence is not pre- designed, but arises spontaneously from self-organization harnessing far-from-equilibrium dynamics. Such an approach includes minimal physical models, intrinsically embedding information-theoretic control within the material’s own physics and its seam- less coupling with the environment. It explores interdisciplinary concepts from material physics, chemistry, biology, and com- putation, identifying concrete pathways toward developing materials that not only react, but actively perceive, adapt, learn, self- correct, and potentially self-construct, moving beyond biomimicry to cultivate fully synthetic, self-evolving systems without exter- nal control. This framework outlines the fundamental requirements for, and constraints upon, architectures where complex, goal- directed functionalities emerge synergistically from integrated local processes, distinguishing material-based intelligence from traditional hardware-software divisions. This demands that concepts of high-level goals and robust, replicable memory mech- anisms are encoded and enacted through the material’s inherent dynamics, inherently blurring the distinction between system output and process

Material‐Based Intelligence: Autonomous Adaptation and Embodied Computation in Physical Substrates

Giacometti, Achille;
2026

Abstract

The design of intelligent materials often draws parallels with the complex adaptive behaviors of biological organisms, where robust functionality stems from sophisticated hierarchical organization and emergent long-distance coordination among a myriad local components. Current synthetic materials, despite integrating advanced sensors and actuators, predominantly demonstrate only simple, preprogrammed stimulus–response functionalities, falling short of robustly autonomous intelligent behavior. This perspective proposes a fundamentally different approach focusing on architectures where material-based intelligence is not pre- designed, but arises spontaneously from self-organization harnessing far-from-equilibrium dynamics. Such an approach includes minimal physical models, intrinsically embedding information-theoretic control within the material’s own physics and its seam- less coupling with the environment. It explores interdisciplinary concepts from material physics, chemistry, biology, and com- putation, identifying concrete pathways toward developing materials that not only react, but actively perceive, adapt, learn, self- correct, and potentially self-construct, moving beyond biomimicry to cultivate fully synthetic, self-evolving systems without exter- nal control. This framework outlines the fundamental requirements for, and constraints upon, architectures where complex, goal- directed functionalities emerge synergistically from integrated local processes, distinguishing material-based intelligence from traditional hardware-software divisions. This demands that concepts of high-level goals and robust, replicable memory mech- anisms are encoded and enacted through the material’s inherent dynamics, inherently blurring the distinction between system output and process
2026
e202501450
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10278/5114988
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