2021
DOI: 10.48550/arxiv.2111.02625
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Qimera: Data-free Quantization with Synthetic Boundary Supporting Samples

Abstract: Model quantization is known as a promising method to compress deep neural networks, especially for inferences on lightweight mobile or edge devices. However, model quantization usually requires access to the original training data to maintain the accuracy of the full-precision models, which is often infeasible in real-world scenarios for security and privacy issues. A popular approach to perform quantization without access to the original data is to use synthetically generated samples, based on batch-normaliza… Show more

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