2022
DOI: 10.48550/arxiv.2211.04507
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Differentiable Quantum Programming with Unbounded Loops

Abstract: The emergence of variational quantum applications has led to the development of automatic differentiation techniques in quantum computing. Recently, Zhu et al. [2020] have formulated differentiable quantum programming with bounded loops, providing a framework for scalable gradient calculation by quantum means for training quantum variational applications. However, promising parameterized quantum applications, e.g., quantum walk and unitary implementation, cannot be trained in the existing framework due to the… Show more

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