The purpose of this thesis is to provide analysis and insight into the implementation of sparse matrix sparse vector multiplication on a reconfigurable parallel computing platform. Common implementations of sparse matrix sparse vector multiplication are completed by unary processors or parallel platforms today. Unary processor implementations are limited by their sequential solution of the problem while parallel implementations suffer from communication delays and load balancing issues when preprocessing techniques are not used or unavailable. By exploiting the deficiencies in sparse matrix sparse vector multiplication on a typical unary processor as a strength of parallelism on a Field Programmable Gate Array (FPGA), the potential performa...
This dissertation presents an architecture to accelerate sparse matrix linear algebra,which is among...
SPICE, from the University of California, at Berkeley, is the de facto world standard for circuit si...
Sparse Matrix-Vector Multiplication (SpMxV) is a widely used mathematical operation in many high-per...
In comparison to dense matrices multiplication, sparse matrices multiplication real performance for ...
If dense matrix multiplication algorithms are used with sparse matrices, they can result in a large ...
To extract data from highly sophisticated sensor networks, algorithms derived from graph theory are ...
Sparse computations are ubiquitous in computational codes, with the sparse matrix-vector (SpMV) mult...
Sparse matrix-vector multiplication (SMVM) is a fundamental operation in many scientific and enginee...
The design and implementation of a sparse matrix-matrix multiplication architecture on field-program...
Computations involving matrices form the kernel of a large spectrum of computationally demanding app...
UnrestrictedThe large capacity of field programmable gate arrays (FPGAs) has prompted researchers to...
The multiplication of a sparse matrix by a dense vector (SpMV) is a centerpiece of scientific comput...
As part of our effort to parallelise SPICE simulations over multiple FPGAs, we present a parallel FP...
Several manufacturers have already started to commercialize near-bank Processing-In-Memory (PIM) arc...
The trend of computing faster and more efficiently has been a driver for the computing industry sinc...
This dissertation presents an architecture to accelerate sparse matrix linear algebra,which is among...
SPICE, from the University of California, at Berkeley, is the de facto world standard for circuit si...
Sparse Matrix-Vector Multiplication (SpMxV) is a widely used mathematical operation in many high-per...
In comparison to dense matrices multiplication, sparse matrices multiplication real performance for ...
If dense matrix multiplication algorithms are used with sparse matrices, they can result in a large ...
To extract data from highly sophisticated sensor networks, algorithms derived from graph theory are ...
Sparse computations are ubiquitous in computational codes, with the sparse matrix-vector (SpMV) mult...
Sparse matrix-vector multiplication (SMVM) is a fundamental operation in many scientific and enginee...
The design and implementation of a sparse matrix-matrix multiplication architecture on field-program...
Computations involving matrices form the kernel of a large spectrum of computationally demanding app...
UnrestrictedThe large capacity of field programmable gate arrays (FPGAs) has prompted researchers to...
The multiplication of a sparse matrix by a dense vector (SpMV) is a centerpiece of scientific comput...
As part of our effort to parallelise SPICE simulations over multiple FPGAs, we present a parallel FP...
Several manufacturers have already started to commercialize near-bank Processing-In-Memory (PIM) arc...
The trend of computing faster and more efficiently has been a driver for the computing industry sinc...
This dissertation presents an architecture to accelerate sparse matrix linear algebra,which is among...
SPICE, from the University of California, at Berkeley, is the de facto world standard for circuit si...
Sparse Matrix-Vector Multiplication (SpMxV) is a widely used mathematical operation in many high-per...