1 research outputs found
S4oC: A Self-optimizing, Self-adapting Secure System-on-Chip Design Framework to Tackle Unknown Threats -- A Network Theoretic, Learning Approach
We propose a framework for the design and optimization of a secure
self-optimizing, self-adapting system-on-chip (S4oC) architecture. The goal is
to minimize the impact of attacks such as hardware Trojan and side-channel, by
making real-time adjustments. S4oC learns to reconfigure itself, subject to
various security measures and attacks, some of which possibly unknown at design
time. Furthermore, the data types and patterns of the target applications,
environmental conditions, and sources of variations are incorporated. S4oC is a
manycore system, modeled as a four-layer graph, representing the model of
computation (MoCp), model of connection (MoCn), model of memory (MoM) and model
of storage (MoS), with a large number of elements including heterogeneous
reconfigurable processing elements in MoCp, and memory elements in the MoM
layer. Security driven community detection, and neural networks are utilized
for application task clustering, and distributed reinforcement learning (RL)
for task mapping.Comment: This is an invited paper to ISCAS 202