International audienceMultiple Tensor-Times-Matrix (Multi-TTM) is a key computation in algorithms for computing and operating with the Tucker tensor decomposition, which is frequently used in multidimensional data analysis. We establish communication lower bounds that determine how much data movement is required (under mild conditions) to perform the Multi-TTM computation in parallel. The crux of the proof relies on analytically solving a constrained, nonlinear optimization problem. We also present a parallel algorithm to perform this computation that organizes the processors into a logical grid with twice as many modes as the input tensor. We show that with correct choices of grid dimensions, the communication cost of the algorithm attains...
International audience—We investigate an efficient parallelization of a class of algorithms for the ...
There are several factorizations of multidimensional tensors into lower-dimensional components, kno...
This dissertation presents novel algorithmic techniques and data structures to help build scalable t...
International audienceMultiple Tensor-Times-Matrix (Multi-TTM) is a key computation in algorithms fo...
International audienceMultiple Tensor-Times-Matrix (Multi-TTM) is a key computation in algorithms fo...
International audienceMultiple Tensor-Times-Matrix (Multi-TTM) is a key computation in algorithms fo...
textMultiparty communication complexity is a measure of the amount of communication required to com...
textMultiparty communication complexity is a measure of the amount of communication required to com...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
We develop a new method for estimating the discrepancy of tensors associated with multiparty communi...
We develop a new method for estimating the discrepancy of tensors associated with multiparty communi...
We consider the problem of developing parallel decomposition and approximation algorithms for high d...
We study tensor networks as a model of arithmetic computation for evaluating multilinear maps. These...
International audience—We investigate an efficient parallelization of a class of algorithms for the ...
There are several factorizations of multidimensional tensors into lower-dimensional components, kno...
This dissertation presents novel algorithmic techniques and data structures to help build scalable t...
International audienceMultiple Tensor-Times-Matrix (Multi-TTM) is a key computation in algorithms fo...
International audienceMultiple Tensor-Times-Matrix (Multi-TTM) is a key computation in algorithms fo...
International audienceMultiple Tensor-Times-Matrix (Multi-TTM) is a key computation in algorithms fo...
textMultiparty communication complexity is a measure of the amount of communication required to com...
textMultiparty communication complexity is a measure of the amount of communication required to com...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
This thesis targets the design of parallelizable algorithms and communication-efficient parallel sch...
We develop a new method for estimating the discrepancy of tensors associated with multiparty communi...
We develop a new method for estimating the discrepancy of tensors associated with multiparty communi...
We consider the problem of developing parallel decomposition and approximation algorithms for high d...
We study tensor networks as a model of arithmetic computation for evaluating multilinear maps. These...
International audience—We investigate an efficient parallelization of a class of algorithms for the ...
There are several factorizations of multidimensional tensors into lower-dimensional components, kno...
This dissertation presents novel algorithmic techniques and data structures to help build scalable t...