Large matrix multiplications commonly take place in large-scale machine-learning applications. Often, the sheer size of these matrices prevent carrying out the multiplication at a single server. Therefore, these operations are typically offloaded to a distributed computing platform with a master server and a large amount of workers in the cloud, operating in parallel. For such distributed platforms, it has been recently shown that coding over the input data matrices can reduce the computational delay by introducing a tolerance against straggling workers, i.e., workers for which execution time significantly lags with respect to the average. In addition to exact recovery, we impose a security constraint on both matrices to be multiplied. Spec...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
We consider the problem of secure distributed matrix computation (SDMC), where a user queries a func...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
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...
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 ...
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...
We consider the problem of secure distributed matrix computation (SDMC), where a user queries a func...
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...
The distributed matrix multiplication problem with an unknown number of stragglers is considered, wh...
In this paper, due to the important value in practical applications, we consider the coded distribut...
International audienceMapReduce is one of the most popular distributed programming paradigms that al...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
We consider the problem of secure distributed matrix computation (SDMC), where a user queries a func...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
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...
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 ...
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...
We consider the problem of secure distributed matrix computation (SDMC), where a user queries a func...
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...
The distributed matrix multiplication problem with an unknown number of stragglers is considered, wh...
In this paper, due to the important value in practical applications, we consider the coded distribut...
International audienceMapReduce is one of the most popular distributed programming paradigms that al...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
We consider the problem of secure distributed matrix computation (SDMC), where a user queries a func...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...