Computational Performance Bounds Prediction in Quantum Computing with Unstable Noise
Jinyang Li, Samudra Dasgupta, Yuhong Song, Lei Yang, Travis Humble, Weiwen Jiang

TL;DR
This paper introduces QuBound, a data-driven method that accurately predicts quantum computing performance bounds under unstable noise, significantly improving efficiency and reliability over existing approaches.
Contribution
QuBound is a novel workflow that decomposes noise sources and uses LSTM encoding to predict quantum performance bounds, outperforming state-of-the-art predictors.
Findings
QuBound predictions fit within performance bounds.
Achieves over 10^6 speedup compared to simulation.
Provides narrower bounds than analytical methods.
Abstract
Quantum computing has significantly advanced in recent years, boasting devices with hundreds of quantum bits (qubits), hinting at its potential quantum advantage over classical computing. Yet, noise in quantum devices poses significant barriers to realizing this supremacy. Understanding noise's impact is crucial for reproducibility and application reuse; moreover, the next-generation quantum-centric supercomputing essentially requires efficient and accurate noise characterization to support system management (e.g., job scheduling), where ensuring correct functional performance (i.e., fidelity) of jobs on available quantum devices can even be higher-priority than traditional objectives. However, noise fluctuates over time, even on the same quantum device, which makes predicting the computational bounds for on-the-fly noise is vital. Noisy quantum simulation can offer insights but faces…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture
