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Resource Augmentation

This chapter introduces resource augmentation, in which the performance of an algorithm is compared to the best-possible solution that is handicapped by less resources. We consider three case studies: online paging, with cache size as the resource; selfish routing, with capacity as the resource; and scheduling, with processor speed as the resource. Resource augmentation bounds also imply "loosely competitive" bounds, which show that an algorithm's performance is near-optimal for most resource levels.

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AuthorshipTopic signalWResource Augmentationpreprint / 2020ATim RoughgardenResearcherTData Structures and Alg...3564 works
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Resource Augmentation

preprint / 2020

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