Hardware-Software Contracts for Secure Speculation
June 06, 2020 Β· Declared Dead Β· π IEEE Symposium on Security and Privacy
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Authors
Marco Guarnieri, Boris KΓΆpf, Jan Reineke, Pepe Vila
arXiv ID
2006.03841
Category
cs.CR: Cryptography & Security
Citations
106
Venue
IEEE Symposium on Security and Privacy
Last Checked
3 months ago
Abstract
Since the discovery of Spectre, a large number of hardware mechanisms for secure speculation has been proposed. Intuitively, more defensive mechanisms are less efficient but can securely execute a larger class of programs, while more permissive mechanisms may offer more performance but require more defensive programming. Unfortunately, there are no hardware-software contracts that would turn this intuition into a basis for principled co-design. In this paper, we put forward a framework for specifying such contracts, and we demonstrate its expressiveness and flexibility. On the hardware side, we use the framework to provide the first formalization and comparison of the security guarantees provided by a representative class of mechanisms for secure speculation. On the software side, we use the framework to characterize program properties that guarantee secure co-design in two scenarios traditionally investigated in isolation: (1) ensuring that a benign program does not leak information while computing on confidential data, and (2) ensuring that a potentially malicious program cannot read outside of its designated sandbox. Finally, we show how the properties corresponding to both scenarios can be checked based on existing tools for software verification, and we use them to validate our findings on executable code.
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