Universal resource-efficient topological measurement-based quantum computation via color-code-based cluster states
Seok-Hyung Lee, Hyunseok Jeong

TL;DR
This paper introduces a resource-efficient topological measurement-based quantum computation scheme using color-code-based cluster states, enabling fault-tolerant logical Clifford gates without state distillation and reducing qubit overhead.
Contribution
It proposes a novel MBQC scheme with color-code cluster states that achieves fault-tolerant Clifford gates without distillation and reduces qubit requirements compared to surface code-based states.
Findings
All logical Clifford gates implemented fault-tolerantly without state distillation.
Physical qubit count per logical qubit is reduced by approximately 1.8 times.
Error threshold for logical-Z errors is 2.7-2.8%, comparable to existing schemes.
Abstract
Topological measurement-based quantum computation (MBQC) enables one to carry out universal fault-tolerant quantum computation via single-qubit Pauli measurements with a family of large entangled states called cluster states as resources. Raussendorf's three-dimensional cluster states (RTCSs) based on the surface codes are mainly considered for topological MBQC. In such schemes, however, the fault-tolerant implementation of the logical Hadamard, phase (), and () gates which are essential for building up arbitrary logical gates has not been achieved to date without using state distillation, while the controlled-NOT (CNOT) gate does not require it, to best of our knowledge. State distillation generally consumes many ancillary logical qubits, thus it is a severe obstacle against practical quantum computing. To solve this problem, we suggest an MBQC scheme via a family…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Neural Networks and Reservoir Computing
