2024
DOI: 10.1109/tcad.2023.3335313
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Counterexample Guided Neural Network Quantization Refinement

João Batista P. Matos,
Eddie B. de Lima Filho,
Iury Bessa
et al.

Abstract: Deploying Neural networks (NNs) in low-resource domains is challenging because of their high computing, memory, and power requirements. For this reason, NNs are often quantized before deployment, but such an approach degrades their accuracy. Thus, we propose the counterexample guided neural network quantization refinement (CEG4N) framework, which combines search-based quantization and equivalence checking. The former minimizes computational requirements, while the latter guarantees that the behavior of an NN d… Show more

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