A New Design Framework for Heterogeneous Uncoded Storage Elastic Computing
Mingyue Ji, Xiang Zhang, Kai Wan

TL;DR
This paper proposes a new optimization framework for uncoded storage elastic computing systems with heterogeneous virtual machine speeds, aiming to minimize computation time and improve efficiency in cloud environments.
Contribution
It introduces a novel framework and algorithms for uncoded storage elastic computing that account for heterogeneity in VM speeds, extending beyond prior coded storage approaches.
Findings
Algorithms effectively reduce computation time on Amazon EC2.
Optimal storage placement improves system performance.
Framework accommodates heterogeneity and straggler tolerance.
Abstract
Elasticity is one important feature in modern cloud computing systems and can result in computation failure or significantly increase computing time. Such elasticity means that virtual machines over the cloud can be preempted under a short notice (e.g., hours or minutes) if a high-priority job appears; on the other hand, new virtual machines may become available over time to compensate the computing resources. Coded Storage Elastic Computing (CSEC) introduced by Yang et al. in 2018 is an effective and efficient approach to overcome the elasticity and it costs relatively less storage and computation load. However, one of the limitations of the CSEC is that it may only be applied to certain types of computations (e.g., linear) and may be challenging to be applied to more involved computations because the coded data storage and approximation are often needed. Hence, it may be preferred to…
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Taxonomy
TopicsAdvanced Data Storage Technologies · Caching and Content Delivery · Optimization and Search Problems
