Rateless Codes for Near-Perfect Load Balancing in Distributed Matrix-Vector Multiplication

Author:

Mallick Ankur1,Chaudhari Malhar2,Sheth Utsav3,Palanikumar Ganesh4,Joshi Gauri1

Affiliation:

1. Carnegie Mellon University, Pittsburgh, PA, USA

2. Oracle Corporation, Redwood City, CA, USA

3. Automation Anywhere, San Jose, CA, USA

4. Apple Inc., Cupertino, CA, USA

Abstract

Large-scale machine learning and data mining applications require computer systems to perform massive matrix-vector and matrix-matrix multiplication operations that need to be parallelized across multiple nodes. The presence of straggling nodes -- computing nodes that unpredictably slowdown or fail -- is a major bottleneck in such distributed computations. Ideal load balancing strategies that dynamically allocate more tasks to faster nodes require knowledge or monitoring of node speeds as well as the ability to quickly move data. Recently proposed fixed-rate erasure coding strategies can handle unpredictable node slowdown, but they ignore partial work done by straggling nodes thus resulting in a lot of redundant computation. We propose a rateless fountain coding strategy that achieves the best of both worlds -- we prove that its latency is asymptotically equal to ideal load balancing, and it performs asymptotically zero redundant computations. Our idea is to create linear combinations of the m rows of the matrix and assign these encoded rows to different worker nodes. The original matrix-vector product can be decoded as soon as slightly more than m row-vector products are collectively finished by the nodes. We conduct experiments in three computing environments: local parallel computing, Amazon EC2, and Amazon Lambda, which show that rateless coding gives as much as 3x speed-up over uncoded schemes.

Funder

National Science Foundation

Publisher

Association for Computing Machinery (ACM)

Subject

General Medicine

Reference64 articles.

1. Amazon. 2006. Amazon Web Services EC2. https://aws.amazon.com/ec2/. Amazon. 2006. Amazon Web Services EC2. https://aws.amazon.com/ec2/.

2. Amazon. 2014. Amazon Web Services Lambda. https://aws.amazon.com/lambda/. Amazon. 2014. Amazon Web Services Lambda. https://aws.amazon.com/lambda/.

3. William F Ames. 2014. Numerical Methods for Partial Differential Equations. Academic Press. William F Ames. 2014. Numerical Methods for Partial Differential Equations. Academic Press.

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