Tensors, i.e., multi-linear functions, are a fundamental building block of machine learning algorithms. In order to train on large data-sets, it is common practice to distribute the computation amongst workers. However, stragglers and other faults can severely impact the performance and overall training time. A novel strategy to mitigate these failures is the use of coded computation. We introduce a new metric for analysis called the typical recovery threshold, which focuses on the most likely event and provide a novel construction of distributed coded tensor operations which are optimal with this measure. We show that our general framework encompasses many other computational schemes and metrics as a special case. In particular, we prove t...
We propose Selective Multiple Power Iterations (SMPI), a new algorithm to address the important Tens...
Typical worst case analysis of algorithms has led to a rich theory, but suffers from many pitfalls. ...
An error-correcting code is said to be locally decodable if a randomized algorithm can recover any s...
We continue the study of list recovery properties of high-rate tensor codes, initiated by Hemenway, ...
We continue the study of list recovery properties of high-rate tensor codes, initiated by Hemenway, ...
Coded distributed computation has become common practice for performing gradient descent on large da...
We investigate the performance of error-correcting codes, where the code word comprises products of ...
Presented on November 9, 2018 at 3:00 p.m. in Skiles 005.Sivakanth Gopi is a postdocotoral researche...
Coded computation techniques provide robustness against straggling workers in distributed computing....
Robustness is a fundamental and timeless issue, and it remains vital to all aspects of computation s...
Given two codes R and C, their tensor product R⊗C consists of all matrices whose rows are codewords ...
Pseudo-randomness is an indispensable tool in theoretical computer science. In this dissertation, we...
A central paradox of coding theory has been noted for many years, and concerns the existence and con...
The problem considered is that of distributing machine learning operations of matrix multiplication ...
Given two codes R and C, their tensor product R⊗C consists of all matrices whose rows are codewords ...
We propose Selective Multiple Power Iterations (SMPI), a new algorithm to address the important Tens...
Typical worst case analysis of algorithms has led to a rich theory, but suffers from many pitfalls. ...
An error-correcting code is said to be locally decodable if a randomized algorithm can recover any s...
We continue the study of list recovery properties of high-rate tensor codes, initiated by Hemenway, ...
We continue the study of list recovery properties of high-rate tensor codes, initiated by Hemenway, ...
Coded distributed computation has become common practice for performing gradient descent on large da...
We investigate the performance of error-correcting codes, where the code word comprises products of ...
Presented on November 9, 2018 at 3:00 p.m. in Skiles 005.Sivakanth Gopi is a postdocotoral researche...
Coded computation techniques provide robustness against straggling workers in distributed computing....
Robustness is a fundamental and timeless issue, and it remains vital to all aspects of computation s...
Given two codes R and C, their tensor product R⊗C consists of all matrices whose rows are codewords ...
Pseudo-randomness is an indispensable tool in theoretical computer science. In this dissertation, we...
A central paradox of coding theory has been noted for many years, and concerns the existence and con...
The problem considered is that of distributing machine learning operations of matrix multiplication ...
Given two codes R and C, their tensor product R⊗C consists of all matrices whose rows are codewords ...
We propose Selective Multiple Power Iterations (SMPI), a new algorithm to address the important Tens...
Typical worst case analysis of algorithms has led to a rich theory, but suffers from many pitfalls. ...
An error-correcting code is said to be locally decodable if a randomized algorithm can recover any s...