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Efficient 2D Tensor Network Simulation of Quantum Systems

机译:高效的2D张量网络仿真量子系统

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摘要

Simulation of quantum systems is challenging due to the exponential size of the state space. Tensor networks provide a systematically improvable approximation for quantum states. 2D tensor networks such as Projected Entangled Pair States (PEPS) are well-suited for key classes of physical systems and quantum circuits. However, direct contraction of PEPS networks has exponential cost, while approximate algorithms require computations with large tensors. We propose new scalable algorithms and software abstractions for PEPS-based methods, accelerating the bottleneck operation of contraction and refactorization of a tensor subnetwork. We employ randomized SVD with an implicit matrix to reduce cost and memory footprint asymptotically. Further, we develop a distributed-memory PEPS library and study accuracy and efficiency of alternative algorithms for PEPS contraction and evolution on the Stampede2 supercomputer. We also simulate a popular near-term quantum algorithm, the Variational Quantum Eigensolver (VQE), and benchmark Imaginary Time Evolution (ITE), which compute ground states of Hamiltonians.
机译:由于状态空间的指数尺寸,量子系统的仿真是挑战。张量网络为量子状态提供了系统地更新的近似。 2D张量网络,如预计纠缠的对状态(PEPS)非常适合物理系统和量子电路的关键类别。然而,PEPS网络的直接收缩具有指数成本,而近似算法需要具有大张量的计算。我们提出了新的可扩展算法和基于PEP的方法的软件抽象,加速了张量子网的收缩和重构的瓶颈运行。我们采用随机SVD具有隐式矩阵,以降低渐近的成本和内存占用。此外,我们开发了一种分布式记忆百科库文库,研究了PEPEST2超级计算机上的PEPS收缩和进化的替代算法的准确性和效率。我们还模拟了流行的近期量子算法,变分量子Eigensolver(VQE)和基准虚拟时间演进(ITE),其计算Hamiltonians的地面状态。

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