Lower-upper (LU) factorization is widely used in many scientific computations. It is one of the most critical modules in circuit simulators, such as the Simulation Program With Integrated Circuit Emphasis. To exploit the emerging graphics process unit (GPU) computing platforms, several GPU-based sparse LU solvers have been recently proposed. In this paper, efficient algorithms are presented to enhance the ability of GPU-based LU solvers to achieve higher parallelism as well as to exploit the dynamic parallelism feature in the state-of-the-art GPUs. Also, rigorous performance comparisons of the proposed algorithms with GLU as well as KLU, for both the single-precision and double-precision cases, are presented
Direct sparse solvers are traditionally known to be robust, yet difficult to parallelize. In the con...
Direct sparse solvers are traditionally known to be robust, yet difficult to parallelize. In the con...
Abstract. We present a new sparse linear solver for GPUs. It is designed to work with structured spa...
Sparse solver has become the bottleneck of SPICE simulators. There has been few work on GPU-based sp...
The sparse matrix solver is a critical component in circuit simulators. Some researches have develop...
Parallelizing the LU factorization of sparse Jacobian matrices reduces the execution time of the pow...
Abstract—SPICE is widely used for transistor-level circuit simulation. However, with the growing com...
AbstractLU factorization is the most computationally intensive step in solving systems of linear equ...
Extended version of EuroGPU symposium article, in the International Conference on Parallel Computing...
Extended version of EuroGPU symposium article, in the International Conference on Parallel Computing...
Solution for network equations is frequently encountered by power system researchers. With the incre...
International audienceWe present a new sparse linear solver for GPUs. It is designed to work with st...
International audienceWe present a new sparse linear solver for GPUs. It is designed to work with st...
International audienceWe present a new sparse linear solver for GPUs. It is designed to work with st...
International audienceWe present a new sparse linear solver for GPUs. It is designed to work with st...
Direct sparse solvers are traditionally known to be robust, yet difficult to parallelize. In the con...
Direct sparse solvers are traditionally known to be robust, yet difficult to parallelize. In the con...
Abstract. We present a new sparse linear solver for GPUs. It is designed to work with structured spa...
Sparse solver has become the bottleneck of SPICE simulators. There has been few work on GPU-based sp...
The sparse matrix solver is a critical component in circuit simulators. Some researches have develop...
Parallelizing the LU factorization of sparse Jacobian matrices reduces the execution time of the pow...
Abstract—SPICE is widely used for transistor-level circuit simulation. However, with the growing com...
AbstractLU factorization is the most computationally intensive step in solving systems of linear equ...
Extended version of EuroGPU symposium article, in the International Conference on Parallel Computing...
Extended version of EuroGPU symposium article, in the International Conference on Parallel Computing...
Solution for network equations is frequently encountered by power system researchers. With the incre...
International audienceWe present a new sparse linear solver for GPUs. It is designed to work with st...
International audienceWe present a new sparse linear solver for GPUs. It is designed to work with st...
International audienceWe present a new sparse linear solver for GPUs. It is designed to work with st...
International audienceWe present a new sparse linear solver for GPUs. It is designed to work with st...
Direct sparse solvers are traditionally known to be robust, yet difficult to parallelize. In the con...
Direct sparse solvers are traditionally known to be robust, yet difficult to parallelize. In the con...
Abstract. We present a new sparse linear solver for GPUs. It is designed to work with structured spa...