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Towards Accurate Post-training Quantization for Diffusion Models

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In this paper, we propose an accurate data-free post-training quantization framework of diffusion models (ADP-DM) for efficient image generation. Conventional data-free quantization methods learn shared quantization functions for tensor discretization regardless of the generation timesteps, while the activation distribution differs significantly across various timesteps. The calibration images are acquired in random timesteps which fail to provide sufficient information for generalizable quantization function learning. Both issues cause sizable quantization errors with obvious image generation performance degradation. On the contrary, we design group-wise quantization functions for activation discretization in different timesteps and sample the optimal timestep for informative calibration image generation, so that our quantized diffusion model can reduce the discretization errors with negligible computational overhead. Specifically, we partition the timesteps according to the importance weights of quantization functions in different groups, which are optimized by differentiable search algorithms. We also select the optimal timestep for calibration image generation by structural risk minimizing principle in order to enhance the generalization ability in the deployment of quantized diffusion model. Extensive experimental results show that our method outperforms the state-of-the-art post-training quantization of diffusion model by a sizable margin with similar computational cost.

Changyuan Wang, Ziwei Wang, Xiuwei Xu, Yansong Tang, Jie Zhou, Jiwen Lu• 2023

Related benchmarks

TaskDatasetResultRank
Class-conditional Image GenerationImageNet 256x256 (val)
FID11.52
293
Unconditional Image GenerationCIFAR-10
FID4.24
171
Class-conditional Image GenerationImageNet 256x256 (test)
FID11.14
167
Unconditional Image GenerationLSUN Bedrooms unconditional
FID6.46
96
Unconditional Image GenerationCelebA unconditional 64 x 64
FID16.86
95
Image GenerationLSUN Bedroom 256x256 (test)
FID10.56
73
Unconditional Image GenerationLSUN church
Inception Score (IS)2.84
18
Class-conditional image synthesisImageNet
FID11.58
13
Unconditional GenerationLSUN Church 256x256 (test)
FID10.76
11
Unconditional GenerationCIFAR-10 32x32 (test)
FID26.68
10
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