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Maintaining Distributed Data Structures in Dynamic Peer-to-Peer Networks

16 September 2024
John Augustine
Antonio Cruciani
Iqra Altaf Gillani
ArXiv (abs)PDFHTML
Abstract

We study robust and efficient distributed algorithms for building and maintaining distributed data structures in dynamic Peer-to-Peer (P2P) networks. P2P networks are characterized by a high level of dynamicity with abrupt heavy node \emph{churn} (nodes that join and leave the network continuously over time). We present a novel algorithm that builds and maintains with high probability a skip list for poly(n)poly(n)poly(n) rounds despite O(n/log⁡n)\mathcal{O}(n/\log n)O(n/logn) churn \emph{per round} (nnn is the stable network size). We assume that the churn is controlled by an oblivious adversary (that has complete knowledge and control of what nodes join and leave and at what time and has unlimited computational power, but is oblivious to the random choices made by the algorithm). Moreover, the maintenance overhead is proportional to the churn rate. Furthermore, the algorithm is scalable in that the messages are small (i.e., at most polylog(n)polylog(n)polylog(n) bits) and every node sends and receives at most polylog(n)polylog(n)polylog(n) messages per round. Our algorithm crucially relies on novel distributed and parallel algorithms to merge two nnn-elements skip lists and delete a large subset of items, both in O(log⁡n)\mathcal{O}(\log n)O(logn) rounds with high probability. These procedures may be of independent interest due to their elegance and potential applicability in other contexts in distributed data structures. To the best of our knowledge, our work provides the first-known fully-distributed data structure that provably works under highly dynamic settings (i.e., high churn rate). Furthermore, they are localized (i.e., do not require any global topological knowledge). Finally, we believe that our framework can be generalized to other distributed and dynamic data structures including graphs, potentially leading to stable distributed computation despite heavy churn.

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