test architecture
Recently Published Documents


TOTAL DOCUMENTS

210
(FIVE YEARS 33)

H-INDEX

21
(FIVE YEARS 1)

PLoS ONE ◽  
2021 ◽  
Vol 16 (12) ◽  
pp. e0261431
Author(s):  
Fakir Sharif Hossain ◽  
Taiyeb Hasan Sakib ◽  
Muhammad Ashar ◽  
Rian Ferdian

Advanced Encryption Standard (AES) is the most secured ciphertext algorithm that is unbreakable in a software platform’s reasonable time. AES has been proved to be the most robust symmetric encryption algorithm declared by the USA Government. Its hardware implementation offers much higher speed and physical security than that of its software implementation. The testability and hardware Trojans are two significant concerns that make the AES chip complex and vulnerable. The problem of testability in the complex AES chip is not addressed yet, and also, the hardware Trojan insertion into the chip may be a significant security threat by leaking information to the intruder. The proposed method is a dual-mode self-test architecture that can detect the hardware Trojans at the manufacturing test and perform an online parametric test to identify parametric chip defects. This work contributes to partitioning the AES circuit into small blocks and comparing adjacent blocks to ensure self-referencing. The detection accuracy is sharpened by a comparative power ratio threshold, determined by process variations and the accuracy of the built-in current sensors. This architecture can reduce the delay, power consumption, and area overhead compared to other works.


Author(s):  
Jaynarayan T. Tudu ◽  
Satyadev Ahlawat ◽  
Sonali Shukla ◽  
Virendra Singh

2021 ◽  
Author(s):  
Donghyun Han ◽  
Youngkwang Lee ◽  
Sooryeong Lee ◽  
Sungho Kang

Author(s):  
Raju Singh

This is an article or technical note which is intended to provides an insight journey of Machine Learning Systems (MLS) testing, its evolution, current paradigm and future work. Machine Learning Models, used in critical applications such as healthcare industry[1], Automobile [2], [3] and Air Traffic control, Share Trading etc., and failure of ML Model can lead to severe consequences in terms of loss of life or property. To remediate this, developers, scientists, and ML community around the world, must build a highly reliable test architecture for critical ML application. At the very foundation layer, any test model must satisfy the core testing attributes such as test properties and its components. This attribute comes from the software engineering [5], [6], but the same cannot be applied in as-is form to the ML testing and we will tell you “why”.


Sign in / Sign up

Export Citation Format

Share Document