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SODA 2014

Dynamic Task Allocation in Asynchronous Shared Memory

Conference Paper Accepted Paper Algorithms and Complexity ยท Theoretical Computer Science

Abstract

Task allocation is a classic distributed problem in which a set of p potentially faulty processes must cooperate to perform a set of tasks. This paper considers a new dynamic version of the problem, in which tasks are injected adversarially during an asynchronous execution. We give the first asynchronous shared-memory algorithm for dynamic task allocation, and we prove that our solution is optimal within logarithmic factors. The main algorithmic idea is a randomized concurrent data structure called a dynamic to-do tree, which allows processes to pick new tasks to perform at random from the set of available tasks, and to insert tasks at random empty locations in the data structure. Our analysis shows that these properties avoid duplicating work unnecessarily. On the other hand, since the adversary controls the input as well the scheduling, it can induce executions where lots of processes contend for a few available tasks, which is inefficient. However, we prove that every algorithm has the same problem: given an arbitrary input, if OPT is the worst-case complexity of the optimal algorithm on that input, then the expected work complexity of our algorithm on the same input is O ( OPT log 3 m ), where m is an upper bound on the number of tasks that are present in the system at any given time.

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Context

Venue
ACM-SIAM Symposium on Discrete Algorithms
Archive span
1990-2025
Indexed papers
4674
Paper id
806856135361529828