[SW Security] Exploring Effective Uses of the Tagged Memory for Reducing Bounds Checking Overheads (early access), The Journal of Supercomputing, July 2022

Exploring Effective Uses of the Tagged Memory for Reducing Bounds Checking Overheads 

Jiwon Seo, Inyoung Bang, Yungi Cho, Jangseop Shin, Dongil Hwang, Donghyun Kwon, Yeongpill Cho, Yunheung Paek

The Journal of Supercomputing

Published: 20 July 2022


기존 SW 기반의 Bounds Checking Overhead 를 개선하기 위해 Tagged Memory 를 효율적으로 사용하는 방안에 대한 연구


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