abstract: With the end of Dennard scaling and Moore's law, architects have moved towards heterogeneous designs consisting of specialized cores to achieve higher performance and energy efficiency for a target application domain. Applications of linear algebra are ubiquitous in the field of scientific computing, machine learning, statistics, etc. with matrix computations being fundamental to these linear algebra based solutions. Design of multiple dense (or sparse) matrix computation routines on the same platform is quite challenging. Added to the complexity is the fact that dense and sparse matrix computations have large differences in their storage and access patterns and are difficult to optimize on the same architecture. This thes...
Matrix computations lie at the heart of most scientific computational tasks. The solution of linear ...
Sparse matrix-vector multiplication (SMVM) is a fundamental operation in many scientific and enginee...
SpGEMM (General Sparse Matrix-Matrix Multiplication) has attracted much attention from researchers i...
The rise of cloud computing and deep machine learning in recent years have led to a tremendous growt...
This dissertation presents an architecture to accelerate sparse matrix linear algebra,which is among...
We are witnessing a dramatic change in computer architecture due to the multicore paradigm shift, as...
Recent years have witnessed a tremendous surge of interest in accelerating sparse linear algebra app...
AbstractThe sparse matrix-vector multiplication (SpMV) is a fundamental kernel used in computational...
This work is comprised of two different projects in numerical linear algebra. The first project is a...
The high performance computing (HPC) community is obsessed over the general matrix-matrix multiply (...
Sparse matrix vector multiplication (SpMV) is one of the most common operations in scientific and hi...
The sparse matrix-vector product is a widespread operation amongst the scientific computing communit...
Several manufacturers have already started to commercialize near-bank Processing-In-Memory (PIM) arc...
Modern processing speeds in conventional Von Neumann architectures are severely limited by memory ac...
Sparse computations are ubiquitous in computational codes, with the sparse matrix-vector (SpMV) mult...
Matrix computations lie at the heart of most scientific computational tasks. The solution of linear ...
Sparse matrix-vector multiplication (SMVM) is a fundamental operation in many scientific and enginee...
SpGEMM (General Sparse Matrix-Matrix Multiplication) has attracted much attention from researchers i...
The rise of cloud computing and deep machine learning in recent years have led to a tremendous growt...
This dissertation presents an architecture to accelerate sparse matrix linear algebra,which is among...
We are witnessing a dramatic change in computer architecture due to the multicore paradigm shift, as...
Recent years have witnessed a tremendous surge of interest in accelerating sparse linear algebra app...
AbstractThe sparse matrix-vector multiplication (SpMV) is a fundamental kernel used in computational...
This work is comprised of two different projects in numerical linear algebra. The first project is a...
The high performance computing (HPC) community is obsessed over the general matrix-matrix multiply (...
Sparse matrix vector multiplication (SpMV) is one of the most common operations in scientific and hi...
The sparse matrix-vector product is a widespread operation amongst the scientific computing communit...
Several manufacturers have already started to commercialize near-bank Processing-In-Memory (PIM) arc...
Modern processing speeds in conventional Von Neumann architectures are severely limited by memory ac...
Sparse computations are ubiquitous in computational codes, with the sparse matrix-vector (SpMV) mult...
Matrix computations lie at the heart of most scientific computational tasks. The solution of linear ...
Sparse matrix-vector multiplication (SMVM) is a fundamental operation in many scientific and enginee...
SpGEMM (General Sparse Matrix-Matrix Multiplication) has attracted much attention from researchers i...