Dataopsy: Scalable and Fluid Visual Exploration using Aggregate Query Sculpting
Md Naimul Hoque, Niklas Elmqvist
DOI: 10.1109/TVCG.2023.3326594
Room: 109
2023-10-24T22:12:00ZGMT-0600Change your timezone on the schedule page
2023-10-24T22:12:00Z

Fast forward
Full Video
Keywords
Multidimensional data visualization, multivariate graphs, visual queries, visual exploration.
Abstract
We present aggregate query sculpting (AQS), a faceted visual query technique for large-scale multidimensional data. As a "born scalable" query technique, AQS starts visualization with a single visual mark representing an aggregation of the entire dataset. The user can then progressively explore the dataset through a sequence of operations abbreviated as P6: pivot (facet an aggregate based on an attribute), partition (lay out a facet in space), peek (see inside a subset using an aggregate visual representation), pile (merge two or more subsets), project (extracting a subset into a new substrate), and prune (discard an aggregate not currently of interest). We validate AQS with Dataopsy, a prototype implementation of AQS that has been designed for fluid interaction on desktop and touch-based mobile devices. We demonstrate AQS and Dataopsy using two case studies and three application examples.