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T-GATE: Temporally Gating Attention to Accelerate Diffusion Model for Free! 🥳

GitHub arxiv GitHub release

TGATE-V1: Cross-Attention Makes Inference Cumbersome in Text-to-Image Diffusion Models
Wentian Zhang*  Haozhe Liu1*  Jinheng Xie2*  Francesco Faccio1,3  Mike Zheng Shou2  Jürgen Schmidhuber1,3 

1 AI Initiative, King Abdullah University of Science And Technology  

2 Show Lab, National University of Singapore   3 The Swiss AI Lab, IDSIA

TGATE-V2: Faster Diffusion Through Temporal Attention Decomposition
Haozhe Liu1,4*  Wentian Zhang*  Jinheng Xie2*  Francesco Faccio1,3  Mengmeng Xu4  Tao Xiang4  Mike Zheng Shou2  Juan-Manuel Pérez-Rúa4  Jürgen Schmidhuber1,3 

1 AI Initiative, King Abdullah University of Science And Technology  

2 Show Lab, National University of Singapore   3 The Swiss AI Lab, IDSIA   4 Meta

Quick Introduction

We explore the role of attention mechanism during inference in text-conditional diffusion models. Empirical observations suggest that cross-attention outputs converge to a fixed point after several inference steps. The convergence time naturally divides the entire inference process into two phases: an initial phase for planning text-oriented visual semantics, which are then translated into images in a subsequent fidelity-improving phase. Cross-attention is essential in the initial phase but almost irrelevant thereafter. However, self-attention initially plays a minor role but becomes crucial in the second phase. These findings yield a simple and training-free method known as temporally gating the attention (TGATE), which efficiently generates images by caching and reusing attention outputs at scheduled time steps. Experimental results show when widely applied to various existing text-conditional diffusion models, TGATE accelerates these models by 10%–50%.

The images generated by the diffusion model with or without TGATE. Our method can accelerate the diffusion model without generation performance drops. It is training-free and can be widely complementary to the existing studies.

🚀 Major Features

  • Training-Free.
  • Easily Integrate into Existing Frameworks.
  • Only a few lines of code are required.
  • Friendly support CNN-based U-Net, Transformer, and Consistency Model
  • 10%-50% speed up for different diffusion models.

📄 Updates

  • 2024/07/19: TGATE now supports the PixArt-Sigma and StableVideoDiffusion models.

  • 2024/07/19: We release TGATE-V2, available with code and technical report

  • 2024/05/22: We have successfully extended TGATE to self-attention modules for greater acceleration!

  • 2024/04/17: TGATE v0.1.1 is officially added to diffusers.

  • 2024/04/14: We release TGATE v0.1.1 to support the playground-v2.5-1024 model.

  • 2024/04/10: We release our package to PyPI. Check here for the usage.

  • 2024/04/04: Technical Report is available on arxiv.

  • 2024/04/04: TGATE for DeepCache (SD-XL) is released.

  • 2024/03/30: TGATE for SD-1.5/2.1/XL is released.

  • 2024/03/29: TGATE for LCM (SD-XL), PixArt-Alpha is released.

  • 2024/03/28: TGATE is open source.

📖 Key Observation

Impact of cross-attention on the inference steps in a pre-trained diffusion model (SD-2.1). The images generated by the diffusion model at different denoising steps. The first row feeds the text embedding to the cross-attention modules for all steps. The second row only uses the text embedding from the first step to the 10th step, and the third row inputs the text embedding from the 11th to the 25th step.

We summarize our observations as follows:

  • Cross-attention converges early during inference, which can be characterized by a semantics-planning and a fidelity-improving phases. The impact of cross-attention is not uniform in these two phases.

  • Cross-attention in the semantics-planning phase is significant for generating semantics aligned with the text conditions

  • The fidelity-improving phase mainly improves the image quality without requiring cross-attention. FID scores can be slightly improved via null-text embedding in this phase.

🖊️ Method

  • Step 1: TGATE caches the attention outcomes from the semantics-planning phase.
if gate_step == cur_step:
    hidden_uncond, hidden_pred_text = hidden_states.chunk(2)
    cache = (hidden_uncond + hidden_pred_text ) / 2
  • Step 2: TGATE reuses the self attention throughout the semantics-planning phase.
if self_attn and (gate_step>cur_step):
    hidden_states = cache
  • Step 3: TGATE reuses the cross attention throughout the fidelity-improving phase.
if cross_attn and (gate_step<cur_step):
    hidden_states = cache

📄 Results

Model MACs Latency Zero-shot 10K-FID on MS-COCO
SD-XL 149.438T 53.187s 24.164
SD-XL w/ TGATE 95.988T 31.643s 22.917
Pixart-Alpha 107.031T 61.502s 37.983
Pixart-Alpha w/ TGATE 73.971T 36.650s 36.390
Pixart-Sigma 107.766T 60.467s 34.278
Pixart-Sigma w/ TGATE 74.420T 36.449s 32.927
DeepCache (SD-XL) 57.888T 19.931s 25.678
DeepCache w/ TGATE 43.868T 14.666s 24.511
LCM (SD-XL) 11.955T 3.805s 26.357
LCM w/ TGATE 11.171T 3.533s 26.902
LCM (Pixart-Alpha) 8.563T 4.733s 35.989
LCM w/ TGATE 7.623T 4.543s 35.843

The FID is computed on captions by PytorchFID.

The latency is tested on a 1080ti commercial card and diffusers v0.28.2.

The MACs are calculated by calflops.

🛠️ Requirements

  • pytorch>=2.0.0
  • diffusers>=0.29.0
  • DeepCache==0.1.1
  • transformers
  • accelerate

🌟 Usage

Examples

To use TGATE for accelerating the denoising process, you can simply use main.py. For example,

  • SD-XL w/ TGATE: generate an image with the caption: "Astronaut in a jungle, cold color palette, muted colors, detailed, 8k"
python main.py \
--prompt 'Astronaut in a jungle, cold color palette, muted colors, detailed, 8k' \
--model 'sdxl' \
--gate_step 10 \
--sa_interval 5 \
--ca_interval 1 \
--warm_up 2 \
--saved_path './generated_tmp/sd_xl/' \
--inference_step 25 \
  • Pixart-Alpha w/ TGATE: generate an image with the caption: "An alpaca made of colorful building blocks, cyberpunk."
python main.py \
--prompt 'An alpaca made of colorful building blocks, cyberpunk.' \
--model 'pixart_alpha' \
--gate_step 15 \
--sa_interval 3 \
--ca_interval 1 \
--warm_up 2 \
--saved_path './generated_tmp/pixart_alpha/' \
--inference_step 25 \
  • Pixart-Sigma w/ TGATE: generate an image with the caption: "an astronaut sitting in a diner, eating fries, cinematic, analog film."
python main.py \
--prompt 'an astronaut sitting in a diner, eating fries, cinematic, analog film.' \
--model 'pixart_sigma' \
--gate_step 15 \
--sa_interval 3 \
--ca_interval 1 \
--warm_up 2 \
--saved_path './generated_tmp/pixart_sigma/' \
--inference_step 25 \
  • LCM-SDXL w/ TGATE: generate an image with the caption: "Self-portrait oil painting, a beautiful cyborg with golden hair, 8k"
python main.py \
--prompt 'Self-portrait oil painting, a beautiful cyborg with golden hair, 8k' \
--model 'lcm_sdxl' \
--gate_step 1 \
--sa_interval 1 \
--ca_interval 1 \
--warm_up 0 \
--saved_path './generated_tmp/lcm_sdxl/' \
--inference_step 4 \
  • SDXL-DeepCache w/ TGATE: generate an image with the caption: "A haunted Victorian mansion under a full moon."
python main.py \
--prompt 'A haunted Victorian mansion under a full moon.' \
--model 'sdxl' \
--gate_step 10 \
--sa_interval 1 \
--ca_interval 1 \
--warm_up 0 \
--saved_path './generated_tmp/sd_xl_deepcache/' \
--inference_step 25 \
--deepcache \
  1. For LCMs, gate_step is set as 1 or 2, and inference step is set as 4.

  2. To use DeepCache, deepcache is set as True.

Third-party Usage

Acknowledgment

Citation

If you find our work inspiring or use our codebase in your research, please consider giving a star ⭐ and a citation.

@article{tgate,
  title={Cross-Attention Makes Inference Cumbersome in Text-to-Image Diffusion Models},
  author={Zhang, Wentian and Liu, Haozhe and Xie, Jinheng and Faccio, Francesco and Shou, Mike Zheng and Schmidhuber, J{\"u}rgen},
  journal={arXiv preprint arXiv:2404.02747v1},
  year={2024}
}

@article{liu2024faster,
  title={Faster Diffusion via Temporal Attention Decomposition},
  author={Liu, Haozhe and Zhang, Wentian and Xie, Jinheng and Faccio, Francesco and Xu, Mengmeng and Xiang, Tao and Shou, Mike Zheng and Perez-Rua, Juan-Manuel and Schmidhuber, J{\"u}rgen},
  journal={arXiv preprint arXiv:2404.02747v2},
  year={2024}
}