5 research outputs found

    Technical Research Priorities for Big Data

    Get PDF
    To drive innovation and competitiveness, organisations need to foster the development and broad adoption of data technologies, value-adding use cases and sustainable business models. Enabling an effective data ecosystem requires overcoming several technical challenges associated with the cost and complexity of management, processing, analysis and utilisation of data. This chapter details a community-driven initiative to identify and characterise the key technical research priorities for research and development in data technologies. The chapter examines the systemic and structured methodology used to gather inputs from over 200 stakeholder organisations. The result of the process identified five key technical research priorities in the areas of data management, data processing, data analytics, data visualisation and user interactions, and data protection, together with 28 sub-level challenges. The process also highlighted the important role of data standardisation, data engineering and DevOps for Big Data

    The ADiWa Project - on the Way to Just-in-Time Process Dynamics based on Events from the Internet of Things

    No full text
    In this paper, we introduce a concept, which focuses on innovative commercial sy stem implementations reflecting process-embedded events from the Internet of Things. The developed concepts are derived from experiences applying recent resea rch advances to industry scenarios. The rationale behind the overall concept is twofold: while transparency is increased by event-based methodologies in the co ntext of the Internet of Things, the agility of business processes is fostered by enhanced business process models, orchestration support, execution control, and user assistance

    Technical research priorities for big data

    Get PDF
    To drive innovation and competitiveness, organisations need to foster the development and broad adoption of data technologies, value-adding use cases and sustainable business models. Enabling an effective data ecosystem requires overcoming several technical challenges associated with the cost and complexity of management, processing, analysis and utilisation of data. This chapter details a community-driven initiative to identify and characterise the key technical research priorities for research and development in data technologies. The chapter examines the systemic and structured methodology used to gather inputs from over 200 stakeholder organisations. The result of the process identified five key technical research priorities in the areas of data management, data processing, data analytics, data visualisation and user interactions, and data protection, together with 28 sub-level challenges. The process also highlighted the important role of data standardisation, data engineering and DevOps for Big Data
    corecore