MAAICBTODec 20, 2022

There's Plenty of Room Right Here: Biological Systems as Evolved, Overloaded, Multi-scale Machines

arXiv:2212.10675v151 citationsh-index: 12
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of predicting and controlling biological systems for biomedical and engineering applications, offering a conceptual shift rather than incremental technical advances.

The paper tackles the challenge of modeling biological systems by proposing an observer-dependent framework that views them as 'polycomputing' substrates capable of performing multiple functions simultaneously, arguing this perspective improves understanding and control across scales.

The applicability of computational models to the biological world is an active topic of debate. We argue that a useful path forward results from abandoning hard boundaries between categories and adopting an observer-dependent, pragmatic view. Such a view dissolves the contingent dichotomies driven by human cognitive biases (e.g., tendency to oversimplify) and prior technological limitations in favor of a more continuous, gradualist view necessitated by the study of evolution, developmental biology, and intelligent machines. Efforts to re-shape living systems for biomedical or bioengineering purposes require prediction and control of their function at multiple scales. This is challenging for many reasons, one of which is that living systems perform multiple functions in the same place at the same time. We refer to this as "polycomputing" - the ability of the same substrate to simultaneously compute different things. This ability is an important way in which living things are a kind of computer, but not the familiar, linear, deterministic kind; rather, living things are computers in the broad sense of computational materials as reported in the rapidly-growing physical computing literature. We argue that an observer-centered framework for the computations performed by evolved and designed systems will improve the understanding of meso-scale events, as it has already done at quantum and relativistic scales. Here, we review examples of biological and technological polycomputing, and develop the idea that overloading of different functions on the same hardware is an important design principle that helps understand and build both evolved and designed systems. Learning to hack existing polycomputing substrates, as well as evolve and design new ones, will have massive impacts on regenerative medicine, robotics, and computer engineering.

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