FABLE: Fast Approximate Quantum Circuits for Block-Encodings
- URL: http://arxiv.org/abs/2205.00081v2
- Date: Thu, 28 Jul 2022 15:14:22 GMT
- Title: FABLE: Fast Approximate Quantum Circuits for Block-Encodings
- Authors: Daan Camps and Roel Van Beeumen
- Abstract summary: We propose FABLE, a method to generate approximate quantum circuits for block-encodings of matrices in a fast manner.
FABLE circuits have a simple structure and are directly formulated in terms of one- and two-qubit gates.
We show that FABLE circuits can be compressed and sparsified.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Block-encodings of matrices have become an essential element of quantum
algorithms derived from the quantum singular value transformation. This
includes a variety of algorithms ranging from the quantum linear systems
problem to quantum walk, Hamiltonian simulation, and quantum machine learning.
Many of these algorithms achieve optimal complexity in terms of black box
matrix oracle queries, but so far the problem of computing quantum circuit
implementations for block-encodings of matrices has been under-appreciated. In
this paper we propose FABLE, a method to generate approximate quantum circuits
for block-encodings of matrices in a fast manner. FABLE circuits have a simple
structure and are directly formulated in terms of one- and two-qubit gates. For
small and structured matrices they are feasible in the NISQ era, and the
circuit parameters can be easily generated for problems up to fifteen qubits.
Furthermore, we show that FABLE circuits can be compressed and sparsified. We
provide a compression theorem that relates the compression threshold to the
error on the block-encoding. We benchmark our method for Heisenberg and Hubbard
Hamiltonians, and Laplacian operators to illustrate that they can be
implemented with a reduced gate complexity without approximation error.
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