AroMa : Evaluating Deep Learning Systems for Stealthy Integrity Attacks on Multi-tenant Accelerators

Author:

Chen Xiangru1ORCID,Merugu Maneesh1ORCID,Zhang Jiaqi1ORCID,Ray Sandip1ORCID

Affiliation:

1. University of Florida, Gainesville, Florida, USA

Abstract

Multi-tenant applications have been proliferating in recent years, supported by the emergence of computing-as-service paradigms. Unfortunately, multi-tenancy induces new security vulnerabilities due to spatial or temporal co-location of applications with possibly malicious intent. In this article, we consider a special class of stealthy integrity attacks on multi-tenant deep learning accelerators. One interesting conclusion is that it is possible to perform targeted integrity attacks on kernel weights of deep learning systems such that it remains functional but mis-labels specific categories of input data through standard RowHammer attacks by only changing 0.0009% of the total weights. We develop an automated framework, AroMa , to evaluate the impact of multi-tenancy on security of deep learning accelerators against integrity attacks on memory systems. We present extensive evaluations on AroMa to demonstrate its effectiveness.

Funder

Semiconductor Research Corporation

Publisher

Association for Computing Machinery (ACM)

Subject

Electrical and Electronic Engineering,Hardware and Architecture,Software

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