RISC-V Embedded AI for IDS Applications - Pôle Photonic & Microwave Systems
Conference Papers Year : 2023

RISC-V Embedded AI for IDS Applications

Abstract

IDSs (Intrusion Detection Systems) include more and more AI (Artificial Intelligence) engines to detect several attack types. However, in order to be efficient in both learning and inference phases, such systems must include hardware coprocessors to improve AI-related computations. In this PhD thesis, we would like to explore the capabilities of RISC-V based processors in this context. RISC-V is an open-source ISA (Instruction Set Architecture) than can be easily extended. The main goal of this thesis is to propose RISC-V extensions for an IDS embedded into collaborative and heterogeneous unmanned vehicles (submarine, marine, or aerial): it must detect abnormal behaviors and must be efficient in terms of power consumption, area and runtime overheads. Furthermore, coprocessors developed in this thesis should not introduce security breaches into the system. Finally, a proof-of-concept should be developed to demonstrate the efficiency of algorithms and hardware implementations compared to software solutions.
Fichier principal
Vignette du fichier
bare_conf.pdf (96.81 Ko) Télécharger le fichier
Origin Files produced by the author(s)

Dates and versions

hal-04498047 , version 1 (11-03-2024)
hal-04498047 , version 2 (25-03-2024)

Identifiers

  • HAL Id : hal-04498047 , version 2

Cite

Pierre Garreau, Pascal Cotret, Julien Francq, Jean-Christophe Cexus, Loïc Lagadec. RISC-V Embedded AI for IDS Applications. RESSI 2024 : Rendez-vous de la Recherche et de l'Enseignement de la Sécurité des Systèmes d'Information, May 2024, Eppe-Sauvage, France. ⟨hal-04498047v2⟩
236 View
183 Download

Share

More