Dynamic Querying of Streaming Data with the dQUOB System

Loading...
Thumbnail Image
Can’t use the file because of accessibility barriers? Contact us

Journal Title

Journal ISSN

Volume Title

Publisher

Abstract

Data streaming has established itself as a viable communication abstraction in data-intensive parallel and distributed computations, occurring in applications such as scientific visualization, performance monitoring, and large-scale data transfer. A known problem in large-scale event communication is tailoring the data received at the consumer. It is the general problem of extracting data of interest from a data source, a problem that the database community has successfully addressed with SQL queries, a time tested, user-friendly way for non-computer scientists to access data. Leveraging the efficiency of query processing provided by relational queries, the dQUOB system provides a conceptual relational data model and SQL query access over distributed data streams. Queries can extract data, combine streams, and create new streams. The language augments queries with an action to enable more complex data transformations, such as Fourier transforms. The dQUOB system has been applied to two large-scale distributed applications: a safety critical autonomous robotics simulation, and scientific software visualization for global atmospheric transport modeling. In this paper we present the dQUOB system and the results of performance evaluation undertaken assess its applicability in data-intensive wide-area computations where the benefit of portable data transformation must be evaluated against the cost of continuous query evaluation.

Table of Contents

Description

Keywords

Citation

Journal

DOI

Link(s) to data and video for this item

Relation

Rights

This work is protected by copyright unless stated otherwise.

Type