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Efficient compression of classical functions using tensor networks

ORAL

Abstract

A classical function discretized on 2n points can be embedded in the coefficients of an n-qubit state. If this state has low entanglement, it can be efficiently represented as a tensor network, and in particular as a matrix product state (MPS) when the classical function is low-dimensional. This approach has been demonstrated to give a substantial speedup in solving differential equations appearing in fluid dynamics and plasma physics, among other areas. In this talk, I will show exact low-bond-dimension MPS representations of important classes of functions including Fourier series and polynomials. I will then argue more generally what types of functions can be represented efficiently, and hence in which physical contexts an MPS-based function compression could be useful.

Presenters

  • Aaron Szasz

    Lawrence Berkeley National Laboratory

Authors

  • Aaron Szasz

    Lawrence Berkeley National Laboratory