We propose two coded schemes for the distributed computing problem of multiplying a matrix by a set of vectors. The first scheme is based on partitioning the matrix into submatrices and applying maximum distance separable (MDS) codes to each submatrix. For this scheme, we prove that up to a given number of partitions the communication load and the computational delay (not including the encoding and decoding delay) are identical to those of the scheme recently proposed by Li et al., based on a single, long MDS code. However, due to the use of shorter MDS codes, our scheme yields a significantly lower overall computational delay when the delay incurred by encoding and decoding is also considered. We further propose a second coded scheme based...
Distributed matrix computations (matrix-vector and matrix-matrix multiplications) are at the heart o...
The overall execution time of distributed matrix computations is often dominated by slow worker node...
Data and analytics capabilities have made a leap forward in recent years. The volume of available da...
We consider the distributed computing problem of multiplying a set of vectors with a matrix. For thi...
Coded computation techniques provide robustness against straggling workers in distributed computing....
Coded computation is an emerging research area that leverages concepts from erasure coding to mitiga...
We propose a coded distributed computing scheme based on Raptor codes to address the straggler probl...
The current BigData era routinely requires the processing of large scale data on massive distributed...
Matrix multiplication is a fundamental building block in many machine learning models. As the input ...
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...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
Distributed matrix multiplication is widely used in several scientific domains. It is well recognize...
Distributed computing systems are well-known to suffer from the problem of slow or failed nodes; the...
A ubiquitous problem in computer science research is the optimization of computation on large data s...
Distributed matrix computations (matrix-vector and matrix-matrix multiplications) are at the heart o...
The overall execution time of distributed matrix computations is often dominated by slow worker node...
Data and analytics capabilities have made a leap forward in recent years. The volume of available da...
We consider the distributed computing problem of multiplying a set of vectors with a matrix. For thi...
Coded computation techniques provide robustness against straggling workers in distributed computing....
Coded computation is an emerging research area that leverages concepts from erasure coding to mitiga...
We propose a coded distributed computing scheme based on Raptor codes to address the straggler probl...
The current BigData era routinely requires the processing of large scale data on massive distributed...
Matrix multiplication is a fundamental building block in many machine learning models. As the input ...
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...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
Distributed matrix multiplication is widely used in several scientific domains. It is well recognize...
Distributed computing systems are well-known to suffer from the problem of slow or failed nodes; the...
A ubiquitous problem in computer science research is the optimization of computation on large data s...
Distributed matrix computations (matrix-vector and matrix-matrix multiplications) are at the heart o...
The overall execution time of distributed matrix computations is often dominated by slow worker node...
Data and analytics capabilities have made a leap forward in recent years. The volume of available da...