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Using Stable Diffusion with Python. Mastering AI Image Generation, Covering Diffusers, LoRA, Textual Inversion, ControlNet and Prompt Design

(ebook) (audiobook) (audiobook) Książka w języku angielskim
Autor:
Andrew Zhu
  • Niedostępna
Using Stable Diffusion with Python. Mastering AI Image Generation, Covering Diffusers, LoRA, Textual Inversion, ControlNet and Prompt Design Andrew Zhu - okladka książki

Using Stable Diffusion with Python. Mastering AI Image Generation, Covering Diffusers, LoRA, Textual Inversion, ControlNet and Prompt Design Andrew Zhu - okladka książki

Using Stable Diffusion with Python. Mastering AI Image Generation, Covering Diffusers, LoRA, Textual Inversion, ControlNet and Prompt Design Andrew Zhu - audiobook MP3

Using Stable Diffusion with Python. Mastering AI Image Generation, Covering Diffusers, LoRA, Textual Inversion, ControlNet and Prompt Design Andrew Zhu - audiobook CD

Ocena:
Bądź pierwszym, który oceni tę książkę
When Stable Diffusion was released on Aug 22, 2022, this Diffusion-based image generation model quickly caught the attention of the whole world. Both its model and source code are completely open-source and hosted on GitHub. With millions of community participants and users, numerous new and mixed models have been released. Tools such as Stable Diffusion Webui and InvokeAI have been created.
While the Stable Diffusion WebUI tool can generate fantastic images driven by the diffusion model, its usability is limited for everyone. The open-sourced Diffusers package from Hugging Face allows users to have full control over Stable Diffusion using Python. However, it lacks many key features such as loading custom LoRA and Textual Inversion, utilizing community-shared models/checkpoints, scheduling and weighted prompts, unlimited prompt tokens, image high-resolution fixing and upscaling. The book will assist you in overcoming the limitations of Diffusers and implementing the advanced features to create a fully customized and industrial-level Stable Diffusion application.
By the end of this book, you will not only be able to use Python to generate and edit images, but also leverage the solutions provided in the book to build Stable Diffusion applications for your business and users.

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O autorze książki

Andrew Zhu is a technology support engineer at Microsoft (Microsoft Globe Tech Support Center) in Shanghai. Over the past few years, he has helped developers and his customers to develop WF, BizTalk, IIS, and ASP.NET applications.

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