Repository logo
Log In(current)
  1. Home
  2. Colleges & Schools
  3. Graduate School
  4. Doctoral Dissertations
  5. Towards Expressive and Versatile Visualization-as-a-Service (VaaS)
Details

Towards Expressive and Versatile Visualization-as-a-Service (VaaS)

Date Issued
December 1, 2023
Author(s)
Hobson, Tanner C  
Advisor(s)
Jian Huang
Additional Advisor(s)
Audris Mockus, Michela Taufer, Jitendra Kumar, Tom Peterka
Abstract

The rapid growth of data in scientific visualization has posed significant challenges to the scalability and availability of interactive visualization tools. These challenges can be largely attributed to the limitations of traditional monolithic applications in handling large datasets and accommodating multiple users or devices. To address these issues, the Visualization-as-a-Service (VaaS) architecture has emerged as a promising solution. VaaS leverages cloud-based visualization capabilities to provide on-demand and cost-effective interactive visualization. Existing VaaS has been simplistic by design with focuses on task-parallelism with single-user-per-device tasks for predetermined visualizations. This dissertation aims to extend the capabilities of VaaS by exploring data-parallel visualization services with multi-device support and hypothesis-driven explorations. By incorporating stateful information and enabling dynamic computation, VaaS' performance and flexibility for various real-world applications is improved. This dissertation explores the history of monolithic and VaaS architectures, the design and implementations of 3 new VaaS applications, and a final exploration of the future of VaaS. This research contributes to the advancement of interactive scientific visualization, addressing the challenges posed by large datasets and remote collaboration scenarios.

Subjects

visualization

microservice

as-a-service

application design

Disciplines
Graphics and Human Computer Interfaces
Systems Architecture
Degree
Doctor of Philosophy
Major
Computer Science
File(s)
Thumbnail Image
Name

Tanner_Hobson___Dissertation_Draft___2023_Jul_03.pdf

Size

23.92 MB

Format

Adobe PDF

Checksum (MD5)

c8a86033e78963899999e4e081856cfe

Built with DSpace-CRIS software - Extension maintained and optimized by 4Science

  • Privacy policy
  • End User Agreement
  • Send Feedback
  • Contact
  • Libraries at University of Tennessee, Knoxville
Repository logo COAR Notify