论文标题

量子计算机上具有最小波功能制剂的密度功能和Kohn-Sham电位

Density functionals and Kohn-Sham potentials with minimal wavefunction preparations on a quantum computer

论文作者

Baker, Thomas E., Poulin, David

论文摘要

量子计算机的潜在应用之一是解决量子化学系统。众所周知,在经典上获得某种准确解决方案的最快方法之一是使用密度功能理论的近似值。我们演示了一种从足够强大的量子计算机中获取的机器学习模型的一般方法。仅使用量子计算机上解决方案当前可行性的现有假设。几种已知的算法,包括量子相估计,量子振幅估计和量子梯度方法来训练机器学习的模型。这种算法组合的优点之一是,量子波函数在每个步骤中都不需要完全重新准备,从而降低了相当大的前因子。使用量子计算机上基态算法溶液的假设,我们证明,找到Kohn-Sham电位不一定比基态密度更加困难。构造后,经典的用户可以使用所学的机器来求解系统的基础状态,前提是机器学到的近似值足以满足输入系统的准确性。还证明了经典用户如何从基态模型访问常用的时间和温度依赖性近似值。对算法的较小修改可以学习其他类型的功能理论,包括精确的时间和温度依赖性。在这个问题的一般情况下,其他几种算法(包括量子机学习)也是不切实际的。

One of the potential applications of a quantum computer is solving quantum chemical systems. It is known that one of the fastest ways to obtain somewhat accurate solutions classically is to use approximations of density functional theory. We demonstrate a general method for obtaining the exact functional as a machine learned model from a sufficiently powerful quantum computer. Only existing assumptions for the current feasibility of solutions on the quantum computer are used. Several known algorithms including quantum phase estimation, quantum amplitude estimation, and quantum gradient methods are used to train a machine learned model. One advantage of this combination of algorithms is that the quantum wavefunction does not need to be completely re-prepared at each step, lowering a sizable pre-factor. Using the assumptions for solutions of the ground-state algorithms on a quantum computer, we demonstrate that finding the Kohn-Sham potential is not necessarily more difficult than the ground state density. Once constructed, a classical user can use the resulting machine learned functional to solve for the ground state of a system self-consistently, provided the machine learned approximation is accurate enough for the input system. It is also demonstrated how the classical user can access commonly used time- and temperature-dependent approximations from the ground state model. Minor modifications to the algorithm can learn other types of functional theories including exact time- and temperature-dependence. Several other algorithms--including quantum machine learning--are demonstrated to be impractical in the general case for this problem.

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