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Computational quantum transport: a scattering approach perspective

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abstract

This review is devoted to the different techniques that have been developed to compute the phase-coherent transport properties of quantum nanoelectronic systems connected to electrodes. Beside a review of the different algorithms proposed in the literature, we provide a comprehensive and pedagogical derivation of the two formalisms on which these techniques are based: the scattering approach and the (nonequilibrium) Green's function approach. We show that the scattering problem can be formulated as a system of linear equations and that different existing algorithms for solving this scattering problem amount to different sequences of Gaussian elimination. We explicitly prove the equivalence of the two formalisms. We discuss the stability and numerical complexity of the existing methods. The review ends with a selection of a few applications where numerical calculations were instrumental in shaping our understanding of the physics.

years

2026 1

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CONDITIONAL 1

representative citing papers

FermiLink: A Unified Agent Framework for Multidomain Autonomous Scientific Simulations

physics.chem-ph · 2026-04-03 · conditional · novelty 8.0

FermiLink is a unified AI agent framework that automates multidomain scientific simulations via separated package knowledge bases and a four-layer progressive disclosure mechanism, reproducing 56% of target figures in benchmarks and generating research-grade results on unpublished problems.

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  • FermiLink: A Unified Agent Framework for Multidomain Autonomous Scientific Simulations physics.chem-ph · 2026-04-03 · conditional · none · ref 4 · internal anchor

    FermiLink is a unified AI agent framework that automates multidomain scientific simulations via separated package knowledge bases and a four-layer progressive disclosure mechanism, reproducing 56% of target figures in benchmarks and generating research-grade results on unpublished problems.