SEV-Step: A Single-Stepping Framework for AMD-SEV
July 27, 2023 ยท Declared Dead ยท ๐ IACR Trans. Cryptogr. Hardw. Embed. Syst.
"No code URL or promise found in abstract"
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Authors
Luca Wilke, Jan Wichelmann, Anja Rabich, Thomas Eisenbarth
arXiv ID
2307.14757
Category
cs.CR: Cryptography & Security
Citations
33
Venue
IACR Trans. Cryptogr. Hardw. Embed. Syst.
Last Checked
3 months ago
Abstract
The ever increasing popularity and availability of Trusted Execution Environments (TEEs) had a stark influence on microarchitectural attack research in academia, as their strong attacker model both boosts existing attack vectors and introduces several new ones. While many works have focused on Intel SGX, other TEEs like AMD SEV have recently also started to receive more attention. A common technique when attacking SGX enclaves is single-stepping, where the system's APIC timer is used to interrupt the enclave after every instruction. Single-stepping increases the temporal resolution of subsequent microarchitectural attacks to a maximum. A key driver in the proliferation of this complex attack technique was the SGX-Step framework, which offered a stable reference implementation for single-stepping and a relatively easy setup. In this paper, we demonstrate that SEV VMs can also be reliably single-stepped. To lay the foundation for further microarchitectural attack research against SEV, we introduce the reusable SEV-Step framework. Besides reliable single-stepping, SEV-Step provides easy access to common attack primitives like page fault tracking and cache attacks against SEV. All features can be used interactively from user space. We demonstrate SEV-Step's capabilities by carrying out an end-to-end cache attack against SEV that leaks the volume key of a LUKS2-encrypted disk. Finally, we show for the first time that SEV is vulnerable to Nemesis-style attacks, which allow to extract information about the type and operands of single-stepped instructions from SEV-protected VMs.
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