This dissertation presents novel algorithmic techniques and data structures to help build scalable tensor decompositions on a variety of high-performance computing (HPC) platforms, including multicore CPUs, graphics co-processors (GPUs), and Intel Xeon Phi processors. A tensor may be regarded as a multiway array, generalizing matrices to more than two dimensions. When used to represent multifactor data, tensor methods can help analysts discover latent structure; this capability has found numerous applications in data modeling and mining in such domains as healthcare analytics, social networks analytics, computer vision, signal processing, and neuroscience, to name a few. When attempting to implement tensor algorithms efficiently on HPC plat...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
International audience—We investigate an efficient parallelization of a class of algorithms for the ...
University of Minnesota Ph.D. dissertation. April 2019. Major: Computer Science. Advisor: George Ka...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Introduction In the last two decade, tensor computations developed from a small and little known su...
Introduction In the last two decade, tensor computations developed from a small and little known su...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Abstract—Multi-dimensional arrays, or tensors, are increas-ingly found in fields such as signal proc...
Tensor algorithms are a rapidly growing field of research with applications in many scientific domai...
Popular Machine Learning (ML) and High Performance Computing (HPC) workloads contribute to a signifi...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Most visual computing domains are witnessing a steady growth in sheer data set size, complexity, and...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
International audience—We investigate an efficient parallelization of a class of algorithms for the ...
University of Minnesota Ph.D. dissertation. April 2019. Major: Computer Science. Advisor: George Ka...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Introduction In the last two decade, tensor computations developed from a small and little known su...
Introduction In the last two decade, tensor computations developed from a small and little known su...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Abstract—Multi-dimensional arrays, or tensors, are increas-ingly found in fields such as signal proc...
Tensor algorithms are a rapidly growing field of research with applications in many scientific domai...
Popular Machine Learning (ML) and High Performance Computing (HPC) workloads contribute to a signifi...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Most visual computing domains are witnessing a steady growth in sheer data set size, complexity, and...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
International audience—We investigate an efficient parallelization of a class of algorithms for the ...