Title
Exploiting connector knowledge to efficiently disseminate highly voluminous data sets
Abstract
Ever-growing amounts of data that must be distributed from data providers to consumers across the world necessitate a greater understanding of the software architectural implications of choosing data movement technologies. Currently, this understanding is mired in the minds of software architects who have been there before, and who rely on past intuition and choices, failing to properly document their rationale and context. In this paper we describe a software architecture-based decision making framework called DISCO for selecting data movement technologies, or software connectors. DISCO effectively captures (traditionally undocumented) insight, observation and ultimately architectural knowledge about the connectors, demonstrating the effectiveness of using such information to accurately encode the connector selection decision making process
Year
DOI
Venue
2008
10.1145/1370062.1370072
SHARK
Keywords
Field
DocType
architectural knowledge,software architecture-based decision,data provider,greater understanding,software architectural implication,voluminous data set,connector knowledge,connector selection decision,ever-growing amount,software architect,software connector,data movement technology,decision making process,decision theory,data grid,software architecture
Data science,ENCODE,Systems engineering,Computer science,Data grid,Software,Dissemination,Decision theory,Software architecture,R-CAST,Decision-making
Conference
Citations 
PageRank 
References 
1
0.35
14
Authors
3
Name
Order
Citations
PageRank
Chris A. Mattmann120025.39
David Woollard2182.34
Nenad Medvidovic34926344.86