iconLogo
Published:2026/1/8 13:03:56

量子シミュレ高速化!ギャルでも分かる💖

超要約: ナノデバイス(ちっちゃい電子部品)の計算を爆速にする方法だよ!✨

✨ ギャル的キラキラポイント ✨

  • ● ナノデバイスの設計が、爆速でできるようになるんだって!⏱️
  • ● 複雑な形(複数端子デバイス)のシミュレーションも、余裕でできちゃう😎
  • ● 計算コストが下がるから、色んな会社が使えるようになるね!💰

詳細解説

続きは「らくらく論文」アプリで

Parallel Quadratic Selected Inversion in Quantum Transport Simulation

Vincent Maillou / Matthias Bollhofer / Olaf Schenk / Alexandros Nikolaos Ziogas / Mathieu Luisier

Driven by Moore's Law, the dimensions of transistors have been pushed down to the nanometer scale. Advanced quantum transport (QT) solvers are required to accurately simulate such nano-devices. The non-equilibrium Green's function (NEGF) formalism lends itself optimally to these tasks, but it is computationally very intensive, involving the selected inversion (SI) of matrices and the selected solution of quadratic matrix (SQ) equations. Existing algorithms to tackle these numerical problems are ideally suited to GPU acceleration, e.g., the so-called recursive Green's function (RGF) technique, but they are typically sequential, require block-tridiagonal (BT) matrices as inputs, and their implementation has been so far restricted to shared memory parallelism, thus limiting the achievable device sizes. To address these shortcomings, we introduce distributed methods that build on RGF and enable parallel selected inversion and selected solution of the quadratic matrix equation. We further extend them to handle BT matrices with arrowhead, which allows for the investigation of multi-terminal transistor structures. We evaluate the performance of our approach on a real dataset from the QT simulation of a nano-ribbon transistor and compare it with the sparse direct package PARDISO. When scaling to 16 GPUs, our fused SI and SQ solver is 5.2x faster than the SI module of PARDISO applied to a device 16x shorter. These results highlight the potential of our method to accelerate NEGF-based nano-device simulations.

cs / cs.DC / cs.PF