This work develops neural-network--based preconditioners to accelerate solution of the Wilson-Dirac normal equation in lattice quantum field theories. The approach is implemented for the two-flavor lattice Schwinger model near the critical point. In this system, neural-network preconditioners are found to accelerate the convergence of the conjugate gradient solver compared with the solution of unpreconditioned systems or those preconditioned with conventional approaches based on even-odd or incomplete Cholesky decompositions, as measured by reductions in the number of iterations and/or complex operations required for convergence. It is also shown that a preconditioner trained on ensembles with small lattice volumes can be used to construct preconditioners for ensembles with many times larger lattice volumes, with minimal degradation of performance. This volume-transferring technique amortizes the training cost and presents a pathway towards scaling such preconditioners to lattice field theory calculations with larger lattice volumes and in four dimensions.
翻译:这项工作开发了以神经网络为基础的先决条件,以加速在拉蒂斯量子场理论中解决威尔逊-迪拉克正常方程式问题;在关键点附近实施了两维拉夫拉蒂斯·施温杰模式;在这个系统中,神经网络先决条件被认为可以加快同质梯度溶液的趋同,而同质梯度梯度溶液的溶解,或与基于偶差或不完全Cholesky分解的常规办法相比,这些办法的前提条件是以迭代数和(或)汇合所需的复杂操作量的减少来衡量的;还表明,可以使用经过小型拉蒂斯体体积组装培训的前提条件,用于制造多倍于大拉蒂体积的聚合物,并尽可能降低性能的退化;这种量转移技术将培训费用调高,并提供一个途径,使这些先决条件逐步扩大规模,以用较大的卷装体量和四个维度进行拉蒂场理论计算。