• Find People
  • Campus Map
  • PiratePort
  • A-Z
    • About
    • Submit
    • Browse
    • Login
    View Item 
    •   ScholarShip Home
    • Dissertations and Theses
    • Master's Theses
    • View Item
    •   ScholarShip Home
    • Dissertations and Theses
    • Master's Theses
    • View Item
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Browse

    All of The ScholarShipCommunities & CollectionsDateAuthorsTitlesSubjectsTypeDate SubmittedThis CollectionDateAuthorsTitlesSubjectsTypeDate Submitted

    My Account

    Login

    Statistics

    View Google Analytics Statistics

    Software Engineering for Real-Time NoSQL Systems-centric Big Data Analytics

    Thumbnail
    View/ Open
    CLARK-MASTERSTHESIS-2020.pdf (1.934Mb)

    Show full item record
    Author
    Clark, William F
    Abstract
    Recent advances in Big Data Analytics (BDA) have stimulated widespread interest to integrate BDA capabilities into all aspects of a business. Before these advances, companies have spent time optimizing the software development process and best practices associated with application development. These processes include project management structures and how to deliver new features of an application to its customers efficiently. While these processes are significant for application development, they cannot be utilized effectively for the software development of Big Data Analytics. Instead, some practices and technologies enable automation and monitoring across the full lifecycle of productivity from design to deployment and operations of Analytics. This paper builds on those practices and technologies and introduces a highly scalable framework for Big Data Analytics development operations. This framework builds on top of the best-known processes associated with DevOps. These best practices are then shown using a NoSQL cloud-based platform that consumes and processes structured and unstructured real-time data. As a result, the framework produces scalable, timely, and accurate analytics in real-time, which can be easily adjusted or enhanced to meet the needs of a business and its customers.
    URI
    http://hdl.handle.net/10342/8810
    Subject
     Big Data Analytics; DevOps; DataOps; NoSQL; Containers 
    Date
    2020-12-02
    Citation:
    APA:
    Clark, William F. (December 2020). Software Engineering for Real-Time NoSQL Systems-centric Big Data Analytics (Master's Thesis, East Carolina University). Retrieved from the Scholarship. (http://hdl.handle.net/10342/8810.)

    Display/Hide MLA, Chicago and APA citation formats.

    MLA:
    Clark, William F. Software Engineering for Real-Time NoSQL Systems-centric Big Data Analytics. Master's Thesis. East Carolina University, December 2020. The Scholarship. http://hdl.handle.net/10342/8810. September 30, 2023.
    Chicago:
    Clark, William F, “Software Engineering for Real-Time NoSQL Systems-centric Big Data Analytics” (Master's Thesis., East Carolina University, December 2020).
    AMA:
    Clark, William F. Software Engineering for Real-Time NoSQL Systems-centric Big Data Analytics [Master's Thesis]. Greenville, NC: East Carolina University; December 2020.
    Collections
    • Computer Science
    • Master's Theses
    Publisher
    East Carolina University

    xmlui.ArtifactBrowser.ItemViewer.elsevier_entitlement

    East Carolina University has created ScholarShip, a digital archive for the scholarly output of the ECU community.

    • About
    • Contact Us
    • Send Feedback