A Secure Experimentation Sandbox for the design and execution of trusted
and secure analytics in the aviation domain
- URL: http://arxiv.org/abs/2111.09863v1
- Date: Thu, 18 Nov 2021 18:44:29 GMT
- Title: A Secure Experimentation Sandbox for the design and execution of trusted
and secure analytics in the aviation domain
- Authors: Dimitrios Miltiadou (1), Stamatis Pitsios (1), Dimitrios Spyropoulos
(1), Dimitrios Alexandrou (1), Fenareti Lampathaki (2), Domenico Messina (3),
Konstantinos Perakis (1) ((1) UBITECH, (2) Suite5, (3) ENGINEERING Ingegneria
Informatica S.p.A.)
- Abstract summary: ICARUS platform aims to become an 'one-stop shop' for aviation data and intelligence marketplace.
Secure Experimentation Sandbox has been designed and integrated in the ICARUS platform offering.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The aviation industry as well as the industries that benefit and are linked
to it are ripe for innovation in the form of Big Data analytics. The number of
available big data technologies is constantly growing, while at the same time
the existing ones are rapidly evolving and empowered with new features.
However, the Big Data era imposes the crucial challenge of how to effectively
handle information security while managing massive and rapidly evolving data
from heterogeneous data sources. While multiple technologies have emerged,
there is a need to find a balance between multiple security requirements,
privacy obligations, system performance and rapid dynamic analysis on large
datasets. The current paper aims to introduce the ICARUS Secure Experimentation
Sandbox of the ICARUS platform. The ICARUS platform aims to provide a big
data-enabled platform that aspires to become an 'one-stop shop' for aviation
data and intelligence marketplace that provides a trusted and secure
'sandboxed' analytics workspace, allowing the exploration, integration and deep
analysis of original and derivative data in a trusted and fair manner. Towards
this end, a Secure Experimentation Sandbox has been designed and integrated in
the ICARUS platform offering, that enables the provisioning of a sophisticated
environment that can completely guarantee the safety and confidentiality of
data, allowing to any interested party to utilise the platform to conduct
analytical experiments in closed-lab conditions.
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