Microarchitectural Leakage Templates and Their Application to Cache-Based Side Channels
November 25, 2022 Β· Declared Dead Β· π Conference on Computer and Communications Security
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Authors
Ahmad Ibrahim, Hamed Nemati, Till SchlΓΌter, Nils Ole Tippenhauer, Christian Rossow
arXiv ID
2211.13958
Category
cs.CR: Cryptography & Security
Citations
12
Venue
Conference on Computer and Communications Security
Last Checked
3 months ago
Abstract
The complexity of modern processor architectures has given rise to sophisticated interactions among their components. Such interactions may result in potential attack vectors in terms of side channels, possibly available to user-land exploits to leak secret data. Exploitation and countering of such side channels require a detailed understanding of the target component. However, such detailed information is commonly unpublished for many CPUs. In this paper, we introduce the concept of Leakage Templates to abstractly describe specific side channels and identify their occurrences in binary applications. We design and implement Plumber, a framework to derive the generic Leakage Templates from individual code sequences that are known to cause leakage (e.g., found by prior work). Plumber uses a combination of instruction fuzzing, instructions' operand mutation and statistical analysis to explore undocumented behavior of microarchitectural optimizations and derive sufficient conditions on vulnerable code inputs that, if hold can trigger a distinguishing behavior. Using Plumber we identified novel leakage primitives based on Leakage Templates (for ARM Cortex-A53 and -A72 cores), in particular related to previction (a new premature cache eviction), and prefetching behavior. We show the utility of Leakage Templates by re-identifying a prefetcher-based vulnerability in OpenSSL 1.1.0g first reported by Shin et al. [40].
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