A secure multi-party batch matrix multiplication problem (SMBMM) is considered, where the goal is to allow a master to efficiently compute the pairwise products of two batches of massive matrices, by distributing the computation across S servers. Any X colluding servers gain no information about the input, and the master gains no additional information about the input beyond the product. A solution called Generalized Cross Subspace Alignment codes with Noise Alignment (GCSA- NA) is proposed in this work, based on cross-subspace alignment codes. The state of art solution to SMBMM is a coding scheme called polynomial sharing (PS) that was proposed by Nodehi and Maddah-Ali. GCSA-NA outperforms PS codes in several key aspects - more efficient a...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
Funding Information: C. Hollanti and J. Li were supported by the Academy of Finland, under Grants No...
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
The goal of coded distributed batch matrix multiplication is to efficiently multiply L instances o...
The goal of coded distributed computation is to efficiently distribute a computation task, such as m...
Modern distributed systems suffer from a phenomenon known as stragglers where computation nodes eith...
Originating from the construction of the asymptotic-capacity achieving scheme for X-secure T-private...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
We consider the problem of secure distributed matrix multiplication (SDMM). Coded computation has be...
We consider the problems of Private and Secure Matrix Multiplication (PSMM) and Fully Private Matrix...
The distributed matrix multiplication problem with an unknown number of stragglers is considered, wh...
Matrix multiplication is a fundamental building block in many machine learning models. As the input ...
With the prevalence of cloud computing, the resource constrained clients are trended to outsource th...
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 ...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
Funding Information: C. Hollanti and J. Li were supported by the Academy of Finland, under Grants No...
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
The goal of coded distributed batch matrix multiplication is to efficiently multiply L instances o...
The goal of coded distributed computation is to efficiently distribute a computation task, such as m...
Modern distributed systems suffer from a phenomenon known as stragglers where computation nodes eith...
Originating from the construction of the asymptotic-capacity achieving scheme for X-secure T-private...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
We consider the problem of secure distributed matrix multiplication (SDMM). Coded computation has be...
We consider the problems of Private and Secure Matrix Multiplication (PSMM) and Fully Private Matrix...
The distributed matrix multiplication problem with an unknown number of stragglers is considered, wh...
Matrix multiplication is a fundamental building block in many machine learning models. As the input ...
With the prevalence of cloud computing, the resource constrained clients are trended to outsource th...
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 ...
Coded distributed computing is an effective framework to improve the speed of distributed computing ...
Funding Information: C. Hollanti and J. Li were supported by the Academy of Finland, under Grants No...
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...