Delta

Scalable data dissemination under capacity constraints

Journal Article (2013)
Author(s)

Konstantinos Karanasos (IBM Almaden Research Center)

A. Katsifodimos (Université Paris-Saclay)

Ioana Manolescu (Université Paris-Saclay)

Affiliation
External organisation
DOI related publication
https://doi.org/10.14778/2732240.2732241
More Info
expand_more
Publication Year
2013
Language
English
Affiliation
External organisation
Issue number
4
Volume number
7
Pages (from-to)
217-228

Abstract

In content-based publish-subscribe (pub/sub) systems, users express their interests as queries over a stream of publications. Scaling up content-based pub/sub to very large numbers of subscriptions is challenging: users are interested in low latency, that is, getting subscription results fast, while the pub/sub system provider is mostly interested in scaling, i.e., being able to serve large numbers of subscribers, with low computational resources utilization. We present a novel approach for scalable content-based pub/sub in the presence of constraints on the available CPU and network resources, implemented within our pub/sub system Delta. We achieve scalability by off-loading some subscriptions from the pub/sub server, and leveraging view-based query rewriting to feed these subscriptions from the data accumulated in others1. Our main contribution is a novel algorithm for organizing views in a multi-level dissemination network, exploiting view-based rewriting and powerful linear programming capabilities to scale to many views, respect capacity constraints, and minimize latency. The efficiency and effectiveness of our algorithm are confirmed through extensive experiments and a large deployment in a WAN.

No files available

Metadata only record. There are no files for this record.