Layer-wise Quantization for Quantized Optimistic Dual Averaging
Nguyen, Anh Duc, Markov, Ilia, Wu, Frank Zhengqing, Ramezani-Kebrya, Ali, Antonakopoulos, Kimon, Alistarh, Dan, Cevher, Volkan
–arXiv.org Artificial Intelligence
Modern deep neural networks exhibit heterogeneity across numerous layers of various types such as residuals, multi-head attention, etc., due to varying structures (dimensions, activation functions, etc.), distinct representation characteristics, which impact predictions. We develop a general layer-wise quantization framework with tight variance and code-length bounds, adapting to the heterogeneities over the course of training. We then apply a new layer-wise quantization technique within distributed variational inequalities (VIs), proposing a novel Quantized Optimistic Dual Averaging (QODA) algorithm with adaptive learning rates, which achieves competitive convergence rates for monotone VIs. We empirically show that QODA achieves up to a $150\%$ speedup over the baselines in end-to-end training time for training Wasserstein GAN on $12+$ GPUs.
arXiv.org Artificial Intelligence
May-21-2025
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