Typical cybersecurity solutions emphasize on achieving defense functionalities. However, execution efficiency and scalability are equally important, especially for real-world deployment. Straightforward mappings of cybersecurity applications onto HPC platforms may significantly underutilize the HPC devices’ capacities. On the other hand, the sophisticated implementations are quite difficult: they require both in-depth understandings of cybersecurity domain-specific characteristics and HPC architecture and system model. In our work, we investigate three sub-areas in cybersecurity, including mobile software security, network security, and system security. They have the following performance issues, respectively: 1) The flow- and context-sensitive static analysis for the large and complex Android APKs are incredibly time-consuming. Existing CPU-only frameworks/tools have to set a timeout threshold to cease the program analysis to trade the precision for performance. 2) Network intrusion detection systems (NIDS) use automata processing as its searching core and requires line-speed processing. However, achieving high-speed automata processing is exceptionally difficult in both algorithm and implementation aspects. 3) It is unclear how the cache configurations impact time-driven cache side-channel attacks’ performance. This question remains open because it is difficult to conduct comparative measurement to study the impacts. In this dissertation, we demonstrate how application-specific characteristics can be leveraged to optimize implementations on various typesmore »
TimeCache: Using Time to Eliminate Cache Side Channels when Sharing Software
Timing side channels have been used to extract cryptographic keys and sensitive documents even from trusted enclaves. Specifically, cache side channels created by reuse of shared code or data in the memory hierarchy have been exploited by several known attacks, e.g., evict+reload for recovering an RSA key and Spectre variants for leaking speculatively loaded data.In this paper, we present TimeCache, a cache design that incorporates knowledge of prior cache line access to eliminate cache side channels due to reuse of shared software (code and data). Our goal is to retain the benefits of a shared cache of allowing each process access to the entire cache and of cache occupancy by a single copy of shared software. We achieve our goal by implementing per-process cache line visibility so that the processes do not benefit from cached data brought in by another process until they have incurred a corresponding miss penalty. Our design achieves low overhead by using a novel combination of timestamps and a hardware design to allow efficient parallel comparisons of the timestamps. The solution works at all the cache levels without the need to limit the number of security domains, and defends against an attacker process running on the more »
- Award ID(s):
- 1900803
- Publication Date:
- NSF-PAR ID:
- 10294806
- Journal Name:
- International Symposium on Computer Architecture
- Page Range or eLocation-ID:
- 375 to 387
- Sponsoring Org:
- National Science Foundation
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