Search the World's Largest Database of Information Science & Technology Terms & Definitions
InfInfoScipedia LogoScipedia
A Free Service of IGI Global Publishing House
Below please find a list of definitions for the term that
you selected from multiple scholarly research resources.

What is Semantic Tuplespace

Handbook of Research on Architectural Trends in Service-Driven Computing
Refers to an extended version of the Linda model, where information is annotated with appropriate semantics and provided API is enhanced so as to accommodate and exploit the underlying semantics.
Published in Chapter:
Distributed and Adaptive Business Process Execution: A Scalable and Performant Solution Architecture
Michael Pantazoglou (National and Kapodistrian University of Athens, Greece), George Athanasopoulos (National and Kapodistrian University of Athens, Greece), Aphrodite Tsalgatidou (National and Kapodistrian University of Athens, Greece), and Pigi Kouki (National and Kapodistrian University of Athens, Greece)
DOI: 10.4018/978-1-4666-6178-3.ch003
Abstract
Centralized business process execution engines are not adequate to guarantee smooth process execution in the presence of multiple, concurrent, long-running process instances exchanging voluminous data. In the centralized architecture of most BPEL engine solutions, the execution of BPEL processes is performed in a closed runtime environment where process instances are isolated from each other, as well as from any other potential sources of information. This prevents processes from finding relative data at runtime to adapt their behavior in a dynamic manner. The goal of this chapter is to present a solution for the performance improvement of BPEL engines by using a distributed architecture that enables the scalable execution of service-oriented processes, while also supporting their data-driven adaptation. The authors propose a decentralized BPEL engine architecture using a hypercube peer-to-peer topology with data-driven adaptation capabilities that incorporates Artificial Intelligence (AI) planning and context-aware computing techniques to support the discovery of process execution paths at deployment time and improve the overall throughput of the execution infrastructure. The proposed solution is part of the runtime infrastructure that was developed for the environmental science industry to support the efficient execution and monitoring of service-oriented environmental science models.
Full Text Chapter Download: US $37.50 Add to Cart
eContent Pro Discount Banner
InfoSci OnDemandECP Editorial ServicesAGOSR