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Thermodynamic computing via autonomous quantum thermal machines

Patryk Lipka-Bartosik, Martí Perarnau-Llobet, Nicolas Brunner

2024Science Advances27 citationsDOIOpen Access PDF

Abstract

We develop a physics-based model for classical computation based on autonomous quantum thermal machines. These machines consist of few interacting quantum bits (qubits) connected to several environments at different temperatures. Heat flows through the machine are here exploited for computing. The process starts by setting the temperatures of the environments according to the logical input. The machine evolves, eventually reaching a nonequilibrium steady state, from which the output of the computation can be determined via the temperature of an auxilliary finite-size reservoir. Such a machine, which we term a "thermodynamic neuron," can implement any linearly separable function, and we discuss explicitly the cases of NOT, 3-MAJORITY, and NOR gates. In turn, we show that a network of thermodynamic neurons can perform any desired function. We discuss the close connection between our model and artificial neurons (perceptrons) and argue that our model provides an alternative physics-based analog implementation of neural networks, and more generally a platform for thermodynamic computing.

Topics & Concepts

Quantum computerComputer scienceQubitComputationPerceptronNon-equilibrium thermodynamicsArtificial neural networkNatural computingReservoir computingQuantumFunction (biology)Connection (principal bundle)Thermodynamic processProcess (computing)Theoretical computer scienceTopology (electrical circuits)Artificial intelligencePhysicsMathematicsAlgorithmRecurrent neural networkQuantum mechanicsMaterial propertiesEvolutionary biologyOperating systemBiologyCombinatoricsGeometryAdvanced Thermodynamics and Statistical MechanicsQuantum Computing Algorithms and ArchitectureQuantum many-body systems