Recent Algorithmic Advances in Population Protocols

Author:

Alistarh Dan1,Gelashvili Rati2

Affiliation:

1. Institute of Science and Technology Austria, Klosterneuburg, Austria

2. University of Toronto, Toronto, Canada

Abstract

Population protocols are a popular model of distributed computing, introduced by Angluin, Aspnes, Diamadi, Fischer, and Peralta [6] a little over a decade ago. In the meantime, the model has proved a useful abstraction for modeling various settings, from wireless sensor networks [35, 26], to gene regulatory networks [17], and chemical reaction networks [21]. In a nutshell, a population protocol consists of n agents with limited local state that interact randomly in pairs, according to an underlying communication graph, and cooperate to collectively compute global predicates. From a theoretical prospective, population protocols, with the restricted communication and computational power, are probably one of the simplest distributed model one can imagine. Perhaps surprisingly though, solutions to many classical distributed tasks are still possible. Moreover, these solutions often rely on interesting algorithmic ideas for design and interesting probabilistic techniques for analysis, while known lower bound results revolve around complex combinatorial arguments.

Publisher

Association for Computing Machinery (ACM)

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1. Fast and succinct population protocols for Presburger arithmetic;Journal of Computer and System Sciences;2024-03

2. Fast Convergence of k-Opinion Undecided State Dynamics in the Population Protocol Model;Proceedings of the 2023 ACM Symposium on Principles of Distributed Computing;2023-06-16

3. Lower bounds on the state complexity of population protocols;Distributed Computing;2023-06-15

4. Rate-independent Computation in Continuous Chemical Reaction Networks;Journal of the ACM;2023-05-23

5. On parallel time in population protocols;Information Processing Letters;2023-01

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