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Trapped Ion Quantum Computing
Quantum Machine Learning
Quantum Chemistry
Quantum encoder for fixed Hamming-weight subspaces
arXiv
Authors: Renato M. S. Farias, Thiago O. Maciel, Giancarlo Camilo, Ruge Lin, Sergi Ramos-Calderer, Leandro Aolita
Year
2024
Paper ID
67082
Status
Preprint
Abstract Read
~2 min
Abstract Words
256
Citations
N/A
Abstract
We present an exact n-qubit computational-basis amplitude encoder of real- or complex-valued data vectors of d=binom{n}{k} components into a subspace of fixed Hamming weight k. This represents a polynomial space compression of degree k. The circuit is optimal in that it expresses an arbitrary data vector using only d-1 (controlled) Reconfigurable Beam Splitter (RBS) gates and is constructed by an efficient classical algorithm that sequentially generates all bitstrings of weight k and identifies the gates that superpose the corresponding states with the correct amplitudes. An explicit compilation into CNOTs and single-qubit gates is presented, with the total CNOT-gate count of mathcal{O}(k d) provided in analytical form. In addition, we show how to load data in the binary basis by sequentially stacking encoders of different Hamming weights using mathcal{O}\(d log(d\)) CNOT gates. Moreover, using generalized RBS gates that mix states of different Hamming weights, we extend the construction to efficiently encode arbitrary sparse vectors. Experimentally, we perform a proof-of-principle demonstration of our scheme on a commercial trapped-ion quantum computer. We successfully upload a q-Gaussian probability distribution in the non-log-concave regime with n = 6 and k = 2. We also showcase how the effect of hardware noise can be alleviated by quantum error mitigation. Numerically, we show how our encoder can improve the performance of variational quantum algorithms for problems that include particle-preserving symmetries. Our results constitute a versatile framework for quantum data compression with various potential applications in fields such as quantum chemistry, quantum machine learning, and constrained combinatorial optimizations.
Why This Paper Matters
- This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
- It adds a 2024 reference point for readers tracking recent quantum research.
- We present an exact n-qubit computational-basis amplitude encoder of real- or complex-valued data vectors of d=binomnk components into a subspace of fixed Hamming weight k.
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