炵-Approximate Coded Matrix Multiplication Is Nearly Twice as Efficient as Exact Multiplication
We study coded distributed matrix multiplication from an approximate recovery viewpoint. We consider a system of $P$ computation nodes where each node stores $1/m$ of each multiplicand via linear encoding. Our main result shows that the matrix product can be recovered with $\epsilon $ relative error from any $m$ of the $P$ nodes for any $\epsilon > 0$ . We obtain this result through a careful specialization of MatDot codes a class of matrix multiplication codes previously developed in the context of exact recovery ( $\epsilon =0$ ).