Published January 25, 2023 | Version v1

Odyssey: A Journey in the Land of Distributed Data Series Similarity Search

  • 1. EPFL
  • 2. FORTH , ICS & University of Crete, CSD
  • 3. FORTH, ICS & Hellenic Mediterranean University & University of Crete, CSD
  • 4. Université Paris Cité & IU
  • 5. Institute of Computing Technology Chinese Academy of Sciences

Description

This paper presents Odyssey, a novel distributed data-series processing framework that efficiently addresses the critical challenges of exhibiting good speedup and ensuring high scalability in data series processing by taking advantage of the full computational capacity of modern distributed systems comprised of multi-core servers. Odyssey addresses a number of challenges in designing efficient and highly-scalable distributed data series index, including efficient scheduling, and load-balancing without paying the prohibitive cost of moving data around. It also supports a flexible partial replication scheme, which enables Odyssey to navigate through a fundamental trade-off between data scalability and good performance during query answering. Through a wide range of configurations and using several real and synthetic datasets, our experimental analysis demonstrates that Odyssey achieves its challenging goals.

This paper appeared in PVLDB Volume 16, Issue 5, 2023.

 

Files

Odyssey.pdf

Files (5.3 MB)

Name Size Download all
md5:d9c55d54e9e371a8935ab06de7f2d2c9
5.3 MB Preview Download

Additional details

Related works

Is identical to
arXiv:2301.11049 (arXiv)

Funding

European Commission
PLATON - Platform-aware LArge-scale Time-Series prOcessiNg 101031688