Circuit Partitioning and Transmission Cost Optimization in Distributed Quantum Circuits
Xinyu Chen, Zilu Chen, Pengcheng Zhu, Xueyun Cheng, Zhijin Guan

TL;DR
This paper introduces a novel circuit partitioning method for distributed quantum circuits that reduces transmission costs and runtime, leveraging QUBO models and lookahead strategies, with demonstrated improvements on benchmark circuits.
Contribution
It proposes a QUBO-based partitioning approach combined with lookahead optimization to minimize transmission costs in distributed quantum computing, addressing communication complexity issues.
Findings
Significantly lower transmission costs compared to existing methods
Shorter runtime for circuit partitioning process
Effective on various benchmark circuits
Abstract
Given the limitations on the number of qubits in current noisy intermediate-scale quantum (NISQ) devices, the implementation of large-scale quantum algorithms on such devices is challenging, prompting research into distributed quantum computing. This paper focuses on the issue of excessive communication complexity in distributed quantum computing based on the quantum circuit model. To reduce the number of quantum state transmissions, i.e., the transmission cost, in distributed quantum circuits, a circuit partitioning method based on the Quadratic Unconstrained Binary Optimization (QUBO) model is proposed, coupled with the lookahead method for transmission cost optimization. Initially, the problem of distributed quantum circuit partitioning is transformed into a graph minimum cut problem. The QUBO model, which can be accelerated by quantum annealing algorithms, is introduced to minimize…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Cloud Computing and Resource Management · Quantum Information and Cryptography
