Abstract. We present a generic framework for runtime code polymorphism, applicable to a broad range of computing platforms including embedded systems with low computing resources (e.g. microcontrollers with few kilo-bytes of memory). Code polymorphism is defined as the ability to change the observable behaviour of a software component without changing its functional properties. In this paper we present the implementation of code polymorphism with runtime code generation, which offers many code transformation possibilities: we describe the use of random register allocation, random instruction selection, instruction shuffling and insertion of noise instructions. We evaluate the effectiveness of our framework against correlation power analysis: as compared to an unprotected implementation of AES where the secret key could be recovered in less than 50 traces in average, in our protected implementation, we increased the number of traces necessary to achieve the same attack by more than 20000×. With regards to the state of the art, our implementation shows a moderate impact in terms of performance overhead.
International audiencePhysical attacks especially fault attacks represent one the major threats against embedded systems. In the state of the art, software countermeasures against fault attacks are either applied at the source code level where it will very likely be removed at compilation time, or at assembly level where several transformations need to be performed on the assembly code and lead to significant overheads both in terms of code size and execution time. This paper presents the use of compiler techniques to efficiently automate the application of software countermeasures against instruction-skip fault attacks. We propose a modified LLVM compiler that considers our security objectives throughout the compilation process. Experimental results illustrate the effectiveness of this approach on AES implementations running on an ARM-based microcontroller in terms of security overhead compared to existing solutions
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