Lagrange Coded Computing (LCC) is a recently proposed technique for resilient, secure, and private computation of arbitrary polynomials in distributed environments. By mapping such computations to composition of polynomials, LCC allows the master node to complete the computation by accessing a minimal number of workers and downloading all of their content, thus providing resiliency to the remaining stragglers. However, in the most common case in which the number of stragglers is less than in the worst case scenario, much of the computational power of the system remains unexploited. To amend this issue, in this paper we expand LCC by studying a fundamental trade-off between download and access, and present two contributions. In the first con...
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
Coded computation techniques provide robustness against straggling workers in distributed computing....
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
Lagrange Coded Computing (LCC) is a recently proposed technique for resilient, secure, and private c...
We consider the problem of secure and private multiparty computation (MPC), in which the goal is to ...
We consider a scenario involving computations over a massive dataset stored distributedly across mul...
Private computation is a generalization of private information retrieval, in which a user is able to...
The problem considered is that of distributing machine learning operations of matrix multiplication ...
We consider the problem of private distributed computation. Our main interest in this problem stems ...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
We consider the setting of a master server who possesses confidential data (genomic, medical data, e...
International audiencePlacement delivery arrays for distributed computing (Comp-PDAs) have recently ...
The goal of coded distributed computation is to efficiently distribute a computation task, such as m...
The optimal storage-computation tradeoff is characterized for a MapReduce-like distributed computing...
We examine new ways in which coding theory and cryptography continue to be composed together, and sh...
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
Coded computation techniques provide robustness against straggling workers in distributed computing....
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
Lagrange Coded Computing (LCC) is a recently proposed technique for resilient, secure, and private c...
We consider the problem of secure and private multiparty computation (MPC), in which the goal is to ...
We consider a scenario involving computations over a massive dataset stored distributedly across mul...
Private computation is a generalization of private information retrieval, in which a user is able to...
The problem considered is that of distributing machine learning operations of matrix multiplication ...
We consider the problem of private distributed computation. Our main interest in this problem stems ...
Large matrix multiplications commonly take place in large-scale machine-learning applications. Often...
We consider the setting of a master server who possesses confidential data (genomic, medical data, e...
International audiencePlacement delivery arrays for distributed computing (Comp-PDAs) have recently ...
The goal of coded distributed computation is to efficiently distribute a computation task, such as m...
The optimal storage-computation tradeoff is characterized for a MapReduce-like distributed computing...
We examine new ways in which coding theory and cryptography continue to be composed together, and sh...
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...
Coded computation techniques provide robustness against straggling workers in distributed computing....
We consider the problem of private distributed matrix multiplication under limited resources. Coded ...