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Nanoparticle-based computing architecture for nanoparticle neural networks

Sungi Kim, Namjun Kim, Jinyoung Seo, Jeong‐Eun Park, Eun Ho Song, So Young Choi, Ji Eun Kim, Seungsang Cha, Ha H. Park, Jwa‐Min Nam

2020Science Advances35 citationsDOIOpen Access PDF

Abstract

The lack of a scalable nanoparticle-based computing architecture severely limits the potential and use of nanoparticles for manipulating and processing information with molecular computing schemes. Inspired by the von Neumann architecture (VNA), in which multiple programs can be operated without restructuring the computer, we realized the nanoparticle-based VNA (NVNA) on a lipid chip for multiple executions of arbitrary molecular logic operations in the single chip without refabrication. In this system, nanoparticles on a lipid chip function as the hardware that features memory, processors, and output units, and DNA strands are used as the software to provide molecular instructions for the facile programming of logic circuits. NVNA enables a group of nanoparticles to form a feed-forward neural network, a perceptron, which implements functionally complete Boolean logic operations, and provides a programmable, resettable, scalable computing architecture and circuit board to form nanoparticle neural networks and make logical decisions.

Topics & Concepts

Computer scienceVon Neumann architectureScalabilityNanoparticleArtificial neural networkDNA computingComputer architectureEmbedded systemNanotechnologyArtificial intelligenceAlgorithmMaterials scienceComputationDatabaseOperating systemAdvanced biosensing and bioanalysis techniquesQuantum-Dot Cellular AutomataAdvanced Memory and Neural Computing
Nanoparticle-based computing architecture for nanoparticle neural networks | Litcius