2022
DOI: 10.48550/arxiv.2208.06692
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BinBert: Binary Code Understanding with a Fine-tunable and Execution-aware Transformer

Abstract: A recent trend in binary code analysis promotes the use of neural solutions based on instruction embedding models. An instruction embedding model is a neural network that transforms sequences of assembly instructions into embedding vectors. If the embedding network is trained such that the translation from code to vectors partially preserves the semantic, the network effectively represents an assembly code model.In this paper we present BinBert, a novel assembly code model. BinBert is built on a transformer pr… Show more

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