Quantum Gate Pattern Recognition and Circuit Optimization for Scientific
Applications
- URL: http://arxiv.org/abs/2102.10008v2
- Date: Thu, 5 Aug 2021 09:53:08 GMT
- Title: Quantum Gate Pattern Recognition and Circuit Optimization for Scientific
Applications
- Authors: Wonho Jang, Koji Terashi, Masahiko Saito, Christian W. Bauer, Benjamin
Nachman, Yutaro Iiyama, Tomoe Kishimoto, Ryunosuke Okubo, Ryu Sawada, Junichi
Tanaka
- Abstract summary: We introduce two ideas for circuit optimization and combine them in a multi-tiered quantum circuit optimization protocol called AQCEL.
AQCEL is deployed on an iterative and efficient quantum algorithm designed to model final state radiation in high energy physics.
Our technique is generic and can be useful for a wide variety of quantum algorithms.
- Score: 1.6329956884407544
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: There is no unique way to encode a quantum algorithm into a quantum circuit.
With limited qubit counts, connectivities, and coherence times, circuit
optimization is essential to make the best use of near-term quantum devices. We
introduce two separate ideas for circuit optimization and combine them in a
multi-tiered quantum circuit optimization protocol called AQCEL. The first
ingredient is a technique to recognize repeated patterns of quantum gates,
opening up the possibility of future hardware co-optimization. The second
ingredient is an approach to reduce circuit complexity by identifying zero- or
low-amplitude computational basis states and redundant gates. As a
demonstration, AQCEL is deployed on an iterative and efficient quantum
algorithm designed to model final state radiation in high energy physics. For
this algorithm, our optimization scheme brings a significant reduction in the
gate count without losing any accuracy compared to the original circuit.
Additionally, we have investigated whether this can be demonstrated on a
quantum computer using polynomial resources. Our technique is generic and can
be useful for a wide variety of quantum algorithms.
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