Polynomial coding has been proposed as a solution to the straggler mitigation problem in distributed matrix multiplication. Previous works employ univariate polynomials to encode matrix partitions. Such schemes greatly improve the speed of distributed computing systems by making the task completion time to depend only on the fastest workers. However, they completely ignore the work done by the slowest workers resulting in inefficient use of computing resources. In order to exploit the partial computations of the slower workers, we further decompose the overall matrix multiplication task into even smaller subtasks, and we propose bivariate polynomial codes. We show that these codes are a more natural choice to accommodate the additional deco...
In distributed computing systems slow-working nodes, known as stragglers, can greatly extend the fin...
Coded computation is an emerging research area that leverages concepts from erasure coding to mitiga...
Matrix multiplication is a fundamental building block in many machine learning models. As the input ...
Polynomial coding has been proposed as a solution to the straggler mitigation problem in distributed...
Coded computing is an effective technique to mitigate “stragglers” in large-scale and distributed ma...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
We consider the problem of secure distributed matrix multiplication (SDMM). Coded computation has be...
We consider the problem of secure distributed matrix multiplication (SDMM). Coded computation has be...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
In this paper, due to the important value in practical applications, we consider the coded distribut...
We consider the distributed computing problem of multiplying a set of vectors with a matrix. For thi...
The problem considered is that of distributing machine learning operations of matrix multiplication ...
In distributed computing systems slow-working nodes, known as stragglers, can greatly extend the fin...
Coded computation is an emerging research area that leverages concepts from erasure coding to mitiga...
Matrix multiplication is a fundamental building block in many machine learning models. As the input ...
Polynomial coding has been proposed as a solution to the straggler mitigation problem in distributed...
Coded computing is an effective technique to mitigate “stragglers” in large-scale and distributed ma...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
We consider the problem of secure distributed matrix multiplication (SDMM). Coded computation has be...
We consider the problem of secure distributed matrix multiplication (SDMM). Coded computation has be...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
In this paper, due to the important value in practical applications, we consider the coded distribut...
We consider the distributed computing problem of multiplying a set of vectors with a matrix. For thi...
The problem considered is that of distributing machine learning operations of matrix multiplication ...
In distributed computing systems slow-working nodes, known as stragglers, can greatly extend the fin...
Coded computation is an emerging research area that leverages concepts from erasure coding to mitiga...
Matrix multiplication is a fundamental building block in many machine learning models. As the input ...