Symbolic execution is a popular software testing technique that can help developers identify complex bugs in real-world applications. Unfortunately, symbolic execution may struggle at analyzing programs containing memory-intensive operations, such as memcpy and memset, whenever these operations are carried out over memory blocks whose size or address is symbolic, i.e., input-dependent.
In this paper, we devise MInt, a memory model for symbolic execution that can support reasoning over such operations. The key new idea behind our proposal is to make the memory model aware of these memory-intensive operations, deferring any symbolic reasoning on their effects to the time where the program actually manipulates the symbolic data affected by these operations. We show that a preliminary implementation of MInt based on the symbolic framework angr can effectively analyze applications taken from the DARPA Cyber Grand Challenge.
Dettaglio pubblicazione
2022, ISEC 2022: 15th Innovations in Software Engineering Conference, Pages -
Handling Memory-Intensive Operations in Symbolic Execution (04b Atto di convegno in volume)
Borzacchiello Luca, Coppa Emilio, Demetrescu Camil
ISBN: 9781450396189
Gruppo di ricerca: Algorithms and Data Science, Gruppo di ricerca: Cybersecurity
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