RGDBEK: Randomized Greedy Double Block Extended Kaczmarz Algorithm With Hybrid Parallel Implementation and Applications
Aneesh Panchal, Ratikanta BeheraABSTRACT
Kaczmarz is one of the most prominent iterative solvers for linear systems of equations. Despite substantial research progress in recent years, the state‐of‐the‐art Kaczmarz algorithms have not fully resolved the seesaw effect, a major impediment to convergence stability. Furthermore, while there have been advances in parallelizing the inherently sequential Kaczmarz method, no existing architecture effectively supports initialization‐independent parallelism that fully leverages both CPU and GPU resources. This paper proposes the Randomized Greedy Double Block Extended Kaczmarz (RGDBEK) algorithm, a novel Kaczmarz approach designed for efficient large‐scale linear system solutions. RGDBEK employs a randomized selection strategy for column and row blocks based on residual‐derived probability distributions, thereby mitigating the traditional seesaw effect and enhancing convergence robustness. The theoretical analysis establishes linear convergence of the method, and a convergence comparison is conducted with several existing methods. Extensive numerical experiments on synthetic random matrices and real‐world sparse matrices from the