In a quantum processor, the device design and external controls together contribute to the quality of the target quantum operations. As we continuously seek better alternative qubit platforms, we explore the increasingly large device and control design space. Thus, optimization becomes more and more challenging. In this work, we demonstrate that the figure of merit reflecting a design goal can be made differentiable with respect to the device and control parameters. In addition, we can compute the gradient of the design objective efficiently in a similar manner to the back-propagation algorithm and then utilize the gradient to optimize the device and the control parameters jointly and efficiently. This extends the scope of the quantum optimal control to superconducting device design. We also demonstrate the viability of gradient-based joint optimization over the device and control parameters through a few examples.
翻译:在量子处理器中,装置设计和外部控制一起有助于目标量子操作的质量。当我们不断寻找更好的替代qubit平台时,我们探索日益庞大的装置和控制设计空间。因此,优化变得越来越具有挑战性。在这项工作中,我们证明,反映设计目标的优点数字可以与装置和控制参数不同。此外,我们可以以与后方测量算法相似的方式有效地计算设计目标的梯度,然后利用梯度来联合和有效地优化装置和控制参数。这把量子最佳控制的范围扩大到超导设备设计。我们还通过几个例子展示了基于梯度的联合优化对装置和控制参数的可行性。