QFT: Post-training quantization via fast joint finetuning of all degrees of freedom

December 05, 2022 ยท Declared Dead ยท ๐Ÿ› ECCV Workshops

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Authors Alex Finkelstein, Ella Fuchs, Idan Tal, Mark Grobman, Niv Vosco, Eldad Meller arXiv ID 2212.02634 Category stat.ML: Machine Learning (Stat) Cross-listed cs.CV, cs.LG Citations 9 Venue ECCV Workshops Last Checked 4 months ago
Abstract
The post-training quantization (PTQ) challenge of bringing quantized neural net accuracy close to original has drawn much attention driven by industry demand. Many of the methods emphasize optimization of a specific degree-of-freedom (DoF), such as quantization step size, preconditioning factors, bias fixing, often chained to others in multi-step solutions. Here we rethink quantized network parameterization in HW-aware fashion, towards a unified analysis of all quantization DoF, permitting for the first time their joint end-to-end finetuning. Our single-step simple and extendable method, dubbed quantization-aware finetuning (QFT), achieves 4-bit weight quantization results on-par with SoTA within PTQ constraints of speed and resource.
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