Generative Quantum-inspired Kolmogorov-Arnold Eigensolver

📅 2026-05-06
📈 Citations: 0
Influential: 0
📄 PDF

career value

221K/year
📝 Abstract
High-performance computing (HPC) is increasingly important for scalable quantum chemistry workflows that couple classical generative models, quantum circuit simulation, and selected configuration interaction postprocessing. We present the generative quantum-inspired Kolmogorov-Arnold eigensolver (GQKAE), a parameter-efficient extension of the generative quantum eigensolver (GQE) for quantum chemistry. GQKAE replaces the parameter-heavy feed-forward network components in GPT-style generative eigensolvers with hybrid quantum-inspired Kolmogorov-Arnold network modules, forming a compact HQKANsformer backbone. The method preserves autoregressive operator selection and the quantum-selected configuration interaction evaluation pipeline, while using single-qubit DatA Re-Uploading ActivatioN modules to provide expressive nonlinear mappings. Numerical benchmarks on H4, N2, LiH, C2H6, H2O, and the H2O dimer show that GQKAE achieves chemical accuracy comparable to the GPT-based GQE architecture, while reducing trainable parameters and memory by approximately 66% and improving wall-time performance. For strongly correlated systems such as N2 and LiH, GQKAE also improves convergence behavior and final energy errors. These results indicate that quantum-inspired Kolmogorov-Arnold networks can reduce classical-side overhead while preserving circuit-generation quality, offering a scalable route for HPC-quantum co-design on near-term quantum platforms.
Problem

Research questions and friction points this paper is trying to address.

quantum chemistry
generative eigensolver
parameter efficiency
strong correlation
high-performance computing
Innovation

Methods, ideas, or system contributions that make the work stand out.

Kolmogorov-Arnold Networks
Quantum-inspired Machine Learning
Generative Eigensolver
Parameter Efficiency
Hybrid Quantum-Classical Computing
🔎 Similar Papers
No similar papers found.
Y
Yu-Cheng Lin
Department of Electrophysics, National Yang Ming Chiao Tung University, Hsinchu, Taiwan
Y
Yu-Chao Hsu
National Center for High-Performance Computing, National Institutes of Applied Research, Hsinchu, Taiwan; Cross College Elite Program, National Cheng Kung University, Tainan, Taiwan
I
I-Shan Tsai
Department of Mathematics, University of California, San Diego, San Diego, California, USA
C
Chun-Hua Lin
National Center for High-Performance Computing, National Institutes of Applied Research, Hsinchu, Taiwan; Department of Physics and Center for Theoretical Physics, National Taiwan University, Taipei, Taiwan
K
Kuo-Chung Peng
National Center for High-Performance Computing, National Institutes of Applied Research, Hsinchu, Taiwan; Department of Physics and Center for Theoretical Physics, National Taiwan University, Taipei, Taiwan
J
Jiun-Cheng Jiang
Department of Physics and Center for Theoretical Physics, National Taiwan University, Taipei, Taiwan; NVIDIA AI Technology Center, NVIDIA Corp., Taipei, Taiwan; Center for Quantum Science and Engineering, National Taiwan University, Taipei, Taiwan
Y
Yun-Yuan Wang
NVIDIA AI Technology Center, NVIDIA Corp., Taipei, Taiwan
T
Tzung-Chi Huang
NVIDIA AI Technology Center, NVIDIA Corp., Taipei, Taiwan
T
Tai-Yue Li
National Center for High-Performance Computing, National Institutes of Applied Research, Hsinchu, Taiwan
K
Kuan-Cheng Chen
Department of Electrical and Electronic Engineering, Imperial College London, London, UK; Centre for Quantum Engineering, Science and Technology, Imperial College London, London, UK
Samuel Yen-Chi Chen
Samuel Yen-Chi Chen
Wells Fargo
quantum computationquantum informationmachine learningquantum machine learning
N
Nan-Yow Chen
National Center for High-Performance Computing, National Institutes of Applied Research, Hsinchu, Taiwan