Publication | Open Access
Unsupervised Machine Learning on a Hybrid Quantum Computer
220
Citations
0
References
2017
Year
Quantum ScienceEngineeringQuantum ComputingMachine LearningData ScienceGradient-free Bayesian OptimizationQuantum Machine LearningQuantum Optimization AlgorithmQuantum AlgorithmBroad AdoptionHybrid Quantum ComputerQuantum DevicesComputer ScienceSuch HybridizationQuantum EntanglementQuantum Algorithms
Machine learning techniques have led to broad adoption of a statistical model of computing. The statistical distributions natively available on quantum processors are a superset of those available classically. Harnessing this attribute has the potential to accelerate or otherwise improve machine learning relative to purely classical performance. A key challenge toward that goal is learning to hybridize classical computing resources and traditional learning techniques with the emerging capabilities of general purpose quantum processors. Here, we demonstrate such hybridization by training a 19-qubit gate model processor to solve a clustering problem, a foundational challenge in unsupervised learning. We use the quantum approximate optimization algorithm in conjunction with a gradient-free Bayesian optimization to train the quantum machine. This quantum/classical hybrid algorithm shows robustness to realistic noise, and we find evidence that classical optimization can be used to train around both coherent and incoherent imperfections.