Hasty Briefsbeta

Reusing Computation in Text-to-Image Diffusion for Efficient Image Generation

12 days ago
  • #computational efficiency
  • #text-to-image
  • #diffusion models
  • Text-to-image diffusion models are computationally expensive.
  • Proposes a method to reduce redundancy across correlated prompts by clustering semantically similar prompts and sharing computation in early diffusion steps.
  • Leverages the coarse-to-fine nature of diffusion models where early steps capture shared structures among similar prompts.
  • Training-free approach that works with models conditioned on image embeddings.
  • Significantly reduces compute cost while improving image quality.
  • Integrates seamlessly with existing pipelines and scales with prompt sets.
  • Reduces environmental and financial burden of large-scale text-to-image generation.