Datalet-Ecosystem Provider (DEEP): Scalable Architecture for Reusable, Portable and User-Friendly Visualizations of Open Data

This paper presents the DatalEt-Ecosystem Provider (DEEP), an extensible, and scalable Edge-centric architecture to visualize Open Data, retrieved in real time from institutional open data portals. The aim is to engage citizens and stakeholders through reusable, portable and interactive visualizations, named datalets. The DEEP architecture exploits the increasing computing power and capacity of end-users devices, moving the computation to process and visualize data, from the central server, directly to the client-side ensuring data trustiness, privacy, scalability and dynamic data loading. DEEP and its datalets have been fully exploited, in the ROUTE-TO-PA, HORIZON 2020 funded project, by five public administrations across Europe as pilot projects. The project engages and involves citizens in creating, sharing and commenting existing visualizations of Open Data. DEEP is open source, its source code is fully available on GitHub, thus every single component can be reused by other projects.

[1]  Vittorio Scarano,et al.  Support Citizens in Visualising Open Data , 2016, 2016 20th International Conference Information Visualisation (IV).

[2]  Jennifer E. Rowley,et al.  The wisdom hierarchy: representations of the DIKW hierarchy , 2007, J. Inf. Sci..

[3]  Vittorio Scarano,et al.  A Scalable Cluster-based Infrastructure for Edge-computing Services , 2006, World Wide Web.

[4]  Vittorio Scarano,et al.  Tackling Web dynamics by programmable proxies , 2006, Comput. Networks.

[5]  Teruo Higashino,et al.  Edge-centric Computing: Vision and Challenges , 2015, CCRV.

[6]  Gennaro Cordasco,et al.  An Architecture for Social Sharing and Collaboration around Open Data Visualisations , 2016, CSCW Companion.

[7]  Kathryn Szoka A guide to choosing the right chart type , 1982, IEEE Transactions on Professional Communication.

[8]  Elaheh Momeni,et al.  Content, Context, and Critique: Commenting on a Data Visualization Blog , 2015, CSCW.

[9]  Andrew Fish,et al.  Visual Exploration System in an Industrial Context , 2016, IEEE Transactions on Industrial Informatics.

[10]  R. Ackoff From Data to Wisdom , 2014 .

[11]  Sören Auer,et al.  LinkDaViz - Automatic Binding of Linked Data to Visualizations , 2015, SEMWEB.

[12]  Tim Berners-Lee,et al.  Linked Data - The Story So Far , 2009, Int. J. Semantic Web Inf. Syst..