13 research outputs found

    Designing ML-resilient locking at register-transfer level

    Get PDF
    Various logic-locking schemes have been proposed to protect hardware from intellectual property piracy and malicious design modifications. Since traditional locking techniques are applied on the gate-level netlist after logic synthesis, they have no semantic knowledge of the design function. Data-driven, machine-learning (ML) attacks can uncover the design flaws within gate-level locking. Recent proposals on register-transfer level (RTL) locking have access to semantic hardware information. We investigate the resilience of ASSURE, a state-of-the-art RTL locking method, against ML attacks. We used the lessons learned to derive two ML-resilient RTL locking schemes built to reinforce ASSURE locking. We developed ML-driven security metrics to evaluate the schemes against an RTL adaptation of the state-of-the-art, ML-based SnapShot attack

    Vertical IP Protection of the Next-Generation Devices: Quo Vadis?

    Get PDF
    With the advent of 5G and IoT applications, there is a greater thrust in terms of hardware security due to imminent risks caused by high amount of intercommunication between various subsystems. Security gaps in integrated circuits, thus represent high risks for both-the manufacturers and the users of electronic systems. Particularly in the domain of Intellectual Property (IP) protection, there is an urgent need to devise security measures at all levels of abstraction so that we can be one step ahead of any kind of adversarial attacks. This work presents IP protection measures from multiple perspectives-from system-level down to device-level security measures, from discussing various attack methods such as reverse engineering and hardware Trojan insertions to proposing new-age protection measures such as multi-valued logic locking and secure information flow tracking. This special session will give a holistic overview at the current state-of-the-art measures and how well we are prepared for the next generation circuits and systems

    QFlow: Quantitative Information Flow for Security-Aware Hardware Design in Verilog

    No full text

    ANDROMEDA: An FPGA Based RISC-V MPSoC Exploration Framework

    No full text
    With the growing demands of consumer electronic products, the computational requirements are increasing exponentially. Due to the applications\u27 computational needs, the computer architects are trying to pack as many cores as possible on a single die for accelerated execution of the application program codes. In a multiprocessor system-on-chip (MPSoC), striking a balance among the number of cores, memory subsystems, and network-on-chip parameters is essential to attain the desired performance. In this paper, we present ANDROMEDA, a RISC-V based framework that allows us to explore the different configurations of an MPSoC and observe the performance penalties and gains. We emulate the various configurations of MPSoC on the Synopsys HAPS-80D Dual FPGA platform. Using STREAM, matrix multiply, and N-body simulations as benchmarks, we demonstrate our framework\u27s efficacy in quickly identifying the right parameters for efficient execution of these benchmarks
    corecore