Embodied Neurocomputation: A Framework for Interfacing Biological Neural Cultures with Scaled Task-Driven Validation
Johnson Zhou, Daniel Tanneberg, Forough Habibollahi, Alon Loeffler, Kiaran Lawson, Valentina Baccetti, Kwaku Dad Abu-Bonsrah, Candice Desouza, Finn Doensen, Bradley Watmuff, Daria Kornienko, Azin Azadi, Justin Leigh Bourke, Bernhard Sendhoff, Brett J. Kagan

TL;DR
This paper introduces Embodied Neurocomputation, a framework for optimizing biological neural networks interfaced with silicon systems, demonstrated through large-scale parameter tuning for a navigation task outperforming silicon-based agents.
Contribution
It presents the first large-scale parameter optimization of BNN encoding configurations for a navigation task, establishing a foundation for scalable neurocomputing frameworks.
Findings
Optimized approximately 1,300 parameter configurations for BNN agents.
Identified 12 configurations with consistent learning across episodes.
Achieved higher task performance than silicon-based DQN agents.
Abstract
Biological neural networks (BNNs) have been established as a powerful and adaptive substrate that offer the potential for incredibly energy and data efficient information processing with distinct learning mechanisms. Yet a core challenge to utilizing BNN for neurocomputation is determining the optimal encoding and decoding mechanisms between the traditional silicon computing interface and the living biology. Here, we propose an Embodied Neurocomputation framework as a systems-level approach to this multi-variable optimization encoding/decoding problem. We operationalize this approach through the first large-scale parameter optimization of encoding configurations for a BNN agent performing closed-loop navigation along an odor-style gradient in a simulated grid-world. Despite the relative simplicity of the task, the biological interactions gave rise to a massive multi-combinatorial search…
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