Beyond Silicon: Materials, Mechanisms, and Methods for Physical Neural Computing
Stefan Fischer, Nihat Ay, Olaf Landsiedel, Esfandiar Mohammadi, Sebastian Otte, Bernd-Christian Renner, Nele Ru{\ss}winkel

TL;DR
This survey explores diverse physical substrates for neural computation beyond silicon, analyzing their mechanisms, architectures, and benchmarking to unify the fragmented field and identify application-specific regimes.
Contribution
It maps neural primitives to substrate mechanisms, introduces a benchmarking scheme, and analyzes the diverse physical neural computing platforms.
Findings
No single substrate dominates across all performance dimensions.
Physical neural systems operate in complementary regimes for different applications.
Benchmarking reveals diverse strengths and trade-offs among substrates.
Abstract
Physical implementations of neural computation now extend far beyond silicon hardware, encompassing substrates such as memristive devices, photonic circuits, mechanical metamaterials, microfluidic networks, chemical reaction systems, and living neural tissue. By exploiting intrinsic physical processes such as charge transport, wave interference, elastic deformation, mass transport, and biochemical regulation, these substrates can realize neural inference and adaptation directly in matter. As silicon GPU-centered AI faces growing energy and data-movement constraints, physical neural computation is becoming increasingly relevant as a complementary path beyond conventional digital accelerators. This trend is driven in particular by pervasive intelligence, i.e., the deployment of on-device and edge AI across large numbers of resource-constrained systems. In such settings, co-locating…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
