Generative Diffusion Modeling: A Practical Handbook
- URL: http://arxiv.org/abs/2412.17162v1
- Date: Sun, 22 Dec 2024 21:02:36 GMT
- Title: Generative Diffusion Modeling: A Practical Handbook
- Authors: Zihan Ding, Chi Jin,
- Abstract summary: diffusion probabilistic models, score-based generative models, consistency models, rectified flow, and related methods.
Content encompasses the fundamentals of diffusion models, the pre-training process, and various post-training methods.
Designed as a practical guide, it emphasizes clarity and usability over theoretical depth.
- Score: 25.81859481634996
- License:
- Abstract: This handbook offers a unified perspective on diffusion models, encompassing diffusion probabilistic models, score-based generative models, consistency models, rectified flow, and related methods. By standardizing notations and aligning them with code implementations, it aims to bridge the "paper-to-code" gap and facilitate robust implementations and fair comparisons. The content encompasses the fundamentals of diffusion models, the pre-training process, and various post-training methods. Post-training techniques include model distillation and reward-based fine-tuning. Designed as a practical guide, it emphasizes clarity and usability over theoretical depth, focusing on widely adopted approaches in generative modeling with diffusion models.
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