The aim of this thesis is the development of parallel algorithms for tensor arithmetic (as, e.g., dot products, tensor truncations or Hadamard products) in the Hierarchical Tucker format (HT-format), which is a low-rank format for tensors based on a hierarchy of the tensor directions according to a binary tree. We start with an introduction to tensors and different tensor formats and demonstrate why the HT-format is particularly suitable for our purpose. In sequential implementation the tensor arithmetic of this work has a complexity which grows linearly with the tensor order d. Choosing the underlying binary tree in the right way, and assuming that enough parallel processes are available, this complexity can be reduced to O(log(d)) by para...
[[abstract]]In this paper we use the tensor product notation as the framework of a programming metho...
Low-rank tensor completion addresses the task of filling in missing entries in multidimensional data...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
The aim of this thesis is the development of parallel algorithms for tensor arithmetic (as, e.g., do...
We consider the problem of developing parallel decomposition and approximation algorithms for high d...
This thesis studies data-parallelism in tensor assignments. Building on an existent domain specific ...
This thesis studies data-parallelism in tensor assignments. Building on an existent domain specific ...
We investigate an efficient parallelization of a class of algorithms for the well-known Tucker decom...
We derive and analyse a scheme for the approximation of order d tensors A ∈ R n×···×n in the hierarc...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
This thesis considers two problems in numerical linear algebra and high performance computing (HPC):...
This thesis considers two problems in numerical linear algebra and high performance computing (HPC):...
This thesis studies data-parallelism in tensor assignments. Building on an existent domain specific ...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
[[abstract]]In this paper we use the tensor product notation as the framework of a programming metho...
Low-rank tensor completion addresses the task of filling in missing entries in multidimensional data...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
The aim of this thesis is the development of parallel algorithms for tensor arithmetic (as, e.g., do...
We consider the problem of developing parallel decomposition and approximation algorithms for high d...
This thesis studies data-parallelism in tensor assignments. Building on an existent domain specific ...
This thesis studies data-parallelism in tensor assignments. Building on an existent domain specific ...
We investigate an efficient parallelization of a class of algorithms for the well-known Tucker decom...
We derive and analyse a scheme for the approximation of order d tensors A ∈ R n×···×n in the hierarc...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
This thesis considers two problems in numerical linear algebra and high performance computing (HPC):...
This thesis considers two problems in numerical linear algebra and high performance computing (HPC):...
This thesis studies data-parallelism in tensor assignments. Building on an existent domain specific ...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
[[abstract]]In this paper we use the tensor product notation as the framework of a programming metho...
Low-rank tensor completion addresses the task of filling in missing entries in multidimensional data...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...