Title :
Placement Strategies for Internet-Scale Data Stream Systems
Author :
Lakshmanan, Geetika T. ; Li, Ying ; Strom, Rob
Author_Institution :
IBM T.J. Watson Res. Center, Yorktown heights, NY
Abstract :
Optimally assigning streaming tasks to network machines is a key factor that influences a large data-stream-processing system´s performance. Although researchers have prototyped and investigated various algorithms for task placement in data stream management systems, taxonomies and surveys of such algorithms are currently unavailable. To tackle this knowledge gap, the authors identify a set of core placement design characteristics and use them to compare eight placement algorithms. They also present a heuristic decision tree that can help designers judge how suitable a given placement solution might be to specific problems.
Keywords :
Internet; decision trees; very large databases; Internet-scale data stream; core placement design characteristics; data stream management systems; data-stream-processing system performance; heuristic decision tree; placement strategies; Algorithm design and analysis; Decision trees; Flow graphs; Fluid flow measurement; Internet; Prototypes; Real time systems; Search engines; Taxonomy; Transaction databases; data stream management; data-management systems; stream processing; system performance; task-placement algorithms;
Journal_Title :
Internet Computing, IEEE
DOI :
10.1109/MIC.2008.129