2022
DOI: 10.3389/fnbot.2022.880724
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Mind the matter: Active matter, soft robotics, and the making of bio-inspired artificial intelligence

Abstract: Philosophical and theoretical debates on the multiple realisability of the cognitive have historically influenced discussions of the possible systems capable of instantiating complex functions like memory, learning, goal-directedness, and decision-making. These debates have had the corollary of undermining, if not altogether neglecting, the materiality and corporeality of cognition—treating material, living processes as “hardware” problems that can be abstracted out and, in principle, implemented in a variety … Show more

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Cited by 7 publications
(4 citation statements)
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“…The swiftly advancing interdisciplinary field of machine learning (ML), situated at the crossroads of computer science and data analysis, has emerged as a potent instrument for uncovering the complex relationships between structure and properties within soft and active materials, including liquid crystals. [6][7][8][9][10] ML algorithms enable researchers to analyze vast datasets, extract hidden patterns, and make accurate predictions, often surpassing the capabilities of traditional modeling and experimental approaches. By leveraging data-driven algorithms, researchers can explore the potential of soft and active materials in ways that were previously unattainable.…”
Section: Main Textmentioning
confidence: 99%
“…The swiftly advancing interdisciplinary field of machine learning (ML), situated at the crossroads of computer science and data analysis, has emerged as a potent instrument for uncovering the complex relationships between structure and properties within soft and active materials, including liquid crystals. [6][7][8][9][10] ML algorithms enable researchers to analyze vast datasets, extract hidden patterns, and make accurate predictions, often surpassing the capabilities of traditional modeling and experimental approaches. By leveraging data-driven algorithms, researchers can explore the potential of soft and active materials in ways that were previously unattainable.…”
Section: Main Textmentioning
confidence: 99%
“…Such basic natural agency does not primarily rely on causal indeterminacy or randomness. Instead, it rests in the peculiar self-referential and hierarchical causal regime that underlies the organization of living matter (see, for example, Rosen, 1958a , b , 1959 , 1972 , 1991 ; Piaget, 1967 ; Varela et al, 1974 ; Varela, 1979 ; Maturana and Varela, 1980 ; Juarrero, 1999 , 2023 ; Kauffman, 2000 ; Weber and Varela, 2002 ; Di Paolo, 2005 ; Thompson, 2007 ; Barandiaran et al, 2009 ; Louie, 2009 , 2013 , 2017a ; Deacon, 2011 ; Montévil and Mossio, 2015 ; Moreno and Mossio, 2015 ; Mossio and Bich, 2017 ; DiFrisco and Mossio, 2020 ; Hofmeyr, 2021 ; Harrison et al, 2022 ; Mitchell, 2023 ; Mossio, 2024a ).…”
Section: Biological Organization and Natural Agencymentioning
confidence: 99%
“…Such basic natural agency does not primarily rely on causal indeterminacy or randomness. Instead, it rests in the peculiar self-referential and hierarchical causal regime that underlies the organization of living matter (see, for example, Rosen, 1958aRosen, , 1958bRosen, , 1959Piaget, 1967;Rosen, 1972;Varela et al, 1974;Varela, 1979;Maturana & Varela, 1980;Rosen, 1991;Juarrero, 1999;Kauffman, 2000;Weber and Varela, 2002;Di Paolo, 2005;Thompson, 2007;Barandiaran et al, 2009;Louie, 2009;Deacon, 2011;Louie, 2013;Moreno & Mossio, 2015;Montévil & Mossio, 2015;Mossio & Bich, 2017;Louie, 2017a;DiFrisco & Mossio, 2020;Hofmeyr, 2021;Harrison et al, 2022;Juarrero, 2023;Mitchell, 2023;Mossio, 2024a).…”
Section: Biological Organization and Natural Agencymentioning
confidence: 99%