An Extensible Dashboard Architecture For Visualizing Base And Analyzed
Data
- URL: http://arxiv.org/abs/2106.05357v1
- Date: Wed, 9 Jun 2021 19:45:43 GMT
- Title: An Extensible Dashboard Architecture For Visualizing Base And Analyzed
Data
- Authors: Abhishek Santra, Kunal Samant, Endrit Memeti, Enamul Karim and Sharma
Chakravarthy
- Abstract summary: This paper focuses on an architecture for visualization of base as well as analyzed data.
This paper proposes a modular architecture of a dashboard for user-interaction, visualization management, and complex analysis of base data.
- Score: 2.169919643934826
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Any data analysis, especially the data sets that may be changing often or in
real-time, consists of at least three important synchronized components: i)
figuring out what to infer (objectives), ii) analysis or computation of
objectives, and iii) understanding of the results which may require drill-down
and/or visualization. There is a lot of attention paid to the first two of the
above components as part of research whereas the understanding as well as
deriving actionable decisions is quite tricky. Visualization is an important
step towards both understanding (even by non-experts) and inferring the actions
that need to be taken. As an example, for Covid-19, knowing regions (say, at
the county or state level) that have seen a spike or prone to a spike in cases
in the near future may warrant additional actions with respect to gatherings,
business opening hours, etc. This paper focuses on an extensible architecture
for visualization of base as well as analyzed data. This paper proposes a
modular architecture of a dashboard for user-interaction, visualization
management, and complex analysis of base data. The contributions of this paper
are: i) extensibility of the architecture providing flexibility to add
additional analysis, visualizations, and user interactions without changing the
workflow, ii) decoupling of the functional modules to ease and speedup
development by different groups, and iii) address efficiency issues for display
response time. This paper uses Multilayer Networks (or MLNs) for analysis. To
showcase the above, we present the implementation of a visualization dashboard,
termed CoWiz++ (for Covid Wizard), and elaborate on how web-based user
interaction and display components are interfaced seamlessly with the back end
modules.
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