Extracting Success from IBM's 20-Qubit Machines Using Error-Aware Compilation
March 26, 2019 Β· Declared Dead Β· π ACM Journal on Emerging Technologies in Computing Systems
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Authors
Shin Nishio, Yulu Pan, Takahiko Satoh, Hideharu Amano, Rodney Van Meter
arXiv ID
1903.10963
Category
quant-ph: Quantum Computing
Cross-listed
cs.CL
Citations
124
Venue
ACM Journal on Emerging Technologies in Computing Systems
Last Checked
3 months ago
Abstract
NISQ (Noisy, Intermediate-Scale Quantum) computing requires error mitigation to achieve meaningful computation. Our compilation tool development focuses on the fact that the error rates of individual qubits are not equal, with a goal of maximizing the success probability of real-world subroutines such as an adder circuit. We begin by establishing a metric for choosing among possible paths and circuit alternatives for executing gates between variables placed far apart within the processor, and test our approach on two IBM 20-qubit systems named Tokyo and Poughkeepsie. We find that a single-number metric describing the fidelity of individual gates is a useful but imperfect guide. Our compiler uses this subsystem and maps complete circuits onto the machine using a beam search-based heuristic that will scale as processor and program sizes grow. To evaluate the whole compilation process, we compiled and executed adder circuits, then calculated the KL-divergence (a measure of the distance between two probability distributions). For a circuit within the capabilities of the hardware, our compilation increases estimated success probability and reduces KL-divergence relative to an error-oblivious placement.
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