In the Internet of Things era, the Internet demands extremely high-speed communication and data transformation. To this end, the tactile Internet has been proposed as a medium that provides the sense of touch ability, facilitating data transferability with extra-low latency in various applications ranging from industry, robotics, and healthcare to road traffic, education, and culture. Here, programmable networks are role players in approaching the tactile Internet’s low latency (≈ 1ms) pillar: Several functionalities - including security - are offloaded onto the network core employing programmable in-network pipelines. From the security perspective, Artificial Intelligence (AI) is another role player that enables the line-rate inference on the core network without involving the control plane. However, integrating AI-based security solutions in programmable devices is challenging mainly because of their constrained anatomy. Furthermore, such solutions inherit well-known adversarial AI vulnerabilities, representing an additional threat to programmable networks. Considering the above, this article discusses AI-based security solutions in programmable networks, focusing on the explored modalities of integrating AI models in programmable constrained network devices. Moreover, we elaborate on the challenges and risks of relying on AI for such mechanisms. Lastly, the article brings a visionary glimpse for future trends in this regard, raising some essential questions on the indispensability of AI for security functionalities and providing some alternative solutions.

Is AI a Trick or T(h)reat for Securing Programmable Data Planes? / Bardhi, Enkeleda; Conti, Mauro; Lazzeretti, Riccardo. - In: IEEE NETWORK. - ISSN 0890-8044. - 38:6(2024), pp. 146-152. [10.1109/MNET.2024.3451330]

Is AI a Trick or T(h)reat for Securing Programmable Data Planes?

Enkeleda Bardhi
;
Mauro Conti;Riccardo Lazzeretti
2024

Abstract

In the Internet of Things era, the Internet demands extremely high-speed communication and data transformation. To this end, the tactile Internet has been proposed as a medium that provides the sense of touch ability, facilitating data transferability with extra-low latency in various applications ranging from industry, robotics, and healthcare to road traffic, education, and culture. Here, programmable networks are role players in approaching the tactile Internet’s low latency (≈ 1ms) pillar: Several functionalities - including security - are offloaded onto the network core employing programmable in-network pipelines. From the security perspective, Artificial Intelligence (AI) is another role player that enables the line-rate inference on the core network without involving the control plane. However, integrating AI-based security solutions in programmable devices is challenging mainly because of their constrained anatomy. Furthermore, such solutions inherit well-known adversarial AI vulnerabilities, representing an additional threat to programmable networks. Considering the above, this article discusses AI-based security solutions in programmable networks, focusing on the explored modalities of integrating AI models in programmable constrained network devices. Moreover, we elaborate on the challenges and risks of relying on AI for such mechanisms. Lastly, the article brings a visionary glimpse for future trends in this regard, raising some essential questions on the indispensability of AI for security functionalities and providing some alternative solutions.
2024
security; programmable data planes; tactile internet; artificial intelligence
01 Pubblicazione su rivista::01a Articolo in rivista
Is AI a Trick or T(h)reat for Securing Programmable Data Planes? / Bardhi, Enkeleda; Conti, Mauro; Lazzeretti, Riccardo. - In: IEEE NETWORK. - ISSN 0890-8044. - 38:6(2024), pp. 146-152. [10.1109/MNET.2024.3451330]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1717747
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