4 research outputs found

    On the construction of decentralised service-oriented orchestration systems

    Get PDF
    Modern science relies on workflow technology to capture, process, and analyse data obtained from scientific instruments. Scientific workflows are precise descriptions of experiments in which multiple computational tasks are coordinated based on the dataflows between them. Orchestrating scientific workflows presents a significant research challenge: they are typically executed in a manner such that all data pass through a centralised computer server known as the engine, which causes unnecessary network traffic that leads to a performance bottleneck. These workflows are commonly composed of services that perform computation over geographically distributed resources, and involve the management of dataflows between them. Centralised orchestration is clearly not a scalable approach for coordinating services dispersed across distant geographical locations. This thesis presents a scalable decentralised service-oriented orchestration system that relies on a high-level data coordination language for the specification and execution of workflows. This system’s architecture consists of distributed engines, each of which is responsible for executing part of the overall workflow. It exploits parallelism in the workflow by decomposing it into smaller sub-workflows, and determines the most appropriate engines to execute them using computation placement analysis. This permits the workflow logic to be distributed closer to the services providing the data for execution, which reduces the overall data transfer in the workflow and improves its execution time. This thesis provides an evaluation of the presented system which concludes that decentralised orchestration provides scalability benefits over centralised orchestration, and improves the overall performance of executing a service-oriented workflow

    H2O Metacomputing - Jini Lookup and Discovery

    No full text
    Abstract. Because of its inter-organisational, collaborative use of computational resources, grid computing presents a severe interoperability challenge to grid application developers. Different middleware technologies need to be bridged in order to fully utilise the power the grid provides. This paper describes a bridge between two such middlewares: The H2O Metacomputing Framework and Jini technology. The paper details how H2O resources may be registered, discovered and used as Jini 1 services. Both technologies are introduced, design decisions discussed and a fully functional implementation presented.

    Grid-enabled adaptive surrugate modeling for computer aided engineering

    Get PDF
    corecore