Distributed computing systems are well-known to suffer from the problem of slow or failed nodes; these are referred to as stragglers. Straggler mitigation (for distributed matrix computations) has recently been investigated from the standpoint of erasure coding in several works. In this work we present a strategy for distributed matrix-vector multiplication based on convolutional coding. Our scheme can be decoded using a low-complexity peeling decoder. The recovery process enjoys excellent numerical stability as compared to Reed-Solomon coding based approaches (which exhibit significant problems owing their badly conditioned decoding matrices). Finally, our schemes are better matched to the practically important case of sparse matrix-vector...
In this paper, due to the important value in practical applications, we consider the coded distribut...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
Polynomial coding has been proposed as a solution to the straggler mitigation problem in distributed...
Distributed matrix computations (matrix-vector and matrix-matrix multiplications) are at the heart o...
Coded computation is an emerging research area that leverages concepts from erasure coding to mitiga...
Distributed matrix multiplication is widely used in several scientific domains. It is well recognize...
The current BigData era routinely requires the processing of large scale data on massive distributed...
Coded computation techniques provide robustness against straggling workers in distributed computing....
In distributed computing systems, it is well recognized that worker nodes that are slow (called stra...
Matrix multiplication is a fundamental building block in many machine learning models. As the input ...
The overall execution time of distributed matrix computations is often dominated by slow worker node...
Coded computation techniques provide robustness against straggling workers in distributed computing....
Coded computing is an effective technique to mitigate “stragglers” in large-scale and distributed ma...
Existing approaches to distributed matrix computations involve allocating coded combinations of subm...
We propose two coded schemes for the distributed computing problem of multiplying a matrix by a set ...
In this paper, due to the important value in practical applications, we consider the coded distribut...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
Polynomial coding has been proposed as a solution to the straggler mitigation problem in distributed...
Distributed matrix computations (matrix-vector and matrix-matrix multiplications) are at the heart o...
Coded computation is an emerging research area that leverages concepts from erasure coding to mitiga...
Distributed matrix multiplication is widely used in several scientific domains. It is well recognize...
The current BigData era routinely requires the processing of large scale data on massive distributed...
Coded computation techniques provide robustness against straggling workers in distributed computing....
In distributed computing systems, it is well recognized that worker nodes that are slow (called stra...
Matrix multiplication is a fundamental building block in many machine learning models. As the input ...
The overall execution time of distributed matrix computations is often dominated by slow worker node...
Coded computation techniques provide robustness against straggling workers in distributed computing....
Coded computing is an effective technique to mitigate “stragglers” in large-scale and distributed ma...
Existing approaches to distributed matrix computations involve allocating coded combinations of subm...
We propose two coded schemes for the distributed computing problem of multiplying a matrix by a set ...
In this paper, due to the important value in practical applications, we consider the coded distribut...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
Polynomial coding has been proposed as a solution to the straggler mitigation problem in distributed...