Learning Shallow Quantum Circuits
Abstract
Despite fundamental interests in learning quantum circuits, the existence of a computationally efficient algorithm for learning shallow quantum circuits remains an open question. Because shallow quantum circuits can generate distributions that are classically hard to sample from, existing learning algorithms do not apply. In this work, we present a polynomial-time classical algorithm for learning the description of any unknown n-qubit shallow quantum circuit U (with arbitrary unknown architecture) within a small diamond distance using single-qubit measurement data on the output states of U. We also provide a polynomial-time classical algorithm for learning the description of any unknown n-qubit state | ψ ⟩ = U | 0n ⟩ prepared by a shallow quantum circuit U (on a 2D lattice) within a small trace distance using single-qubit measurements on copies of | ψ ⟩. Our approach uses a quantum circuit representation based on local inversions and a technique to combine these inversions. This circuit representation yields an optimization landscape that can be efficiently navigated and enables efficient learning of quantum circuits that are classically hard to simulate.
Copyright and License
© 2024 Copyright held by the owner/author(s). This work is licensed under a Creative Commons Attribution 4.0 License.
Acknowledgement
This work was done in part while the authors were visiting the Simons Institute for the Theory of Computing. Y.L. and Z.L. are supported by DOE Grant No. DE-SC0024124, NSF Grant No. 2311733, and DOE Quantum Systems Accelerator. I.K. was supported by funds from the UC Multicampus Research Programs and Initiatives of the University of California, Grant Number M23PL5936. A.A. acknowledges support through the NSF CAREER Award No. 2238836 and NSF award QCIS-FF: Quantum Computing & Information Science Faculty Fellow at Harvard University (NSF 2013303).
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Additional details
- Simons Foundation
- United States Department of Energy
- DE-SC0024124
- National Science Foundation
- CCF-2311733
- University of California System
- M23PL5936
- National Science Foundation
- CCF-2238836
- National Science Foundation
- CCF-2013303