Using Stable Diffusion with Python : Leverage Python to control and automate high-quality AI image generation using Stable Diffusion

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Détails bibliographiques
Auteur principal: Shudong Zhu, Andrew. (Auteur)
Autres auteurs: Fisher, Matthew. (Préface)
Support: E-Book
Langue: Anglais
Publié: Birmingham : Packt Publishing.
Autres localisations: Voir dans le Sudoc
Résumé: Master AI image generation by leveraging GenAI tools and techniques such as diffusers, LoRA, textual inversion, ControlNet, and prompt design Key FeaturesMaster the art of generating stunning AI artwork with the help of expert guidance and ready-to-run Python codeGet instant access to emerging extensions and open-source modelsLeverage the power of community-shared models and LoRA to produce high-quality images that captivate audiencesPurchase of the print or Kindle book includes a free PDF eBookBook DescriptionStable Diffusion is a game-changing AI tool for image generation, enabling you to create stunning artwork with code. However, mastering it requires an understanding of the underlying concepts and techniques. This book guides you through unlocking the full potential of Stable Diffusion with Python. Starting with an introduction to Stable Diffusion, you'll explore the theory behind diffusion models, set up your environment, and generate your first image using diffusers. You'll learn how to optimize performance, leverage custom models, and integrate community-shared resources like LoRAs, textual inversion, and ControlNet to enhance your creations. After covering techniques such as face restoration, image upscaling, and image restoration, you'll focus on unlocking prompt limitations, scheduled prompt parsing, and weighted prompts to create a fully customized and industry-level Stable Diffusion application. This book also delves into real-world applications in medical imaging, remote sensing, and photo enhancement. Finally, you'll gain insights into extracting generation data, ensuring data persistence, and leveraging AI models like BLIP for image description extraction. By the end of this book, you'll be able to use Python to generate and edit images and leverage solutions to build Stable Diffusion apps for your business and users.What you will learnExplore core concepts and applications of Stable Diffusion and set up your environment for successRefine performance, manage VRAM usage, and leverage community-driven resources like LoRAs and textual inversionHarness the power of ControlNet, IP-Adapter, and other methodologies to generate images with unprecedented control and qualityExplore developments in Stable Diffusion such as video generation using AnimateDiffWrite effective prompts and leverage LLMs to automate the processDiscover how to train a Stable Diffusion LoRA from scratchWho this book is forIf you're looking to gain control over AI image generation, particularly through the diffusion model, this book is for you. Moreover, data scientists, ML engineers, researchers, and Python application developers seeking to create AI image generation applications based on the Stable Diffusion framework can benefit from the insights provided in the book
Accès en ligne: Accès à l'E-book
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520 |a Master AI image generation by leveraging GenAI tools and techniques such as diffusers, LoRA, textual inversion, ControlNet, and prompt design Key FeaturesMaster the art of generating stunning AI artwork with the help of expert guidance and ready-to-run Python codeGet instant access to emerging extensions and open-source modelsLeverage the power of community-shared models and LoRA to produce high-quality images that captivate audiencesPurchase of the print or Kindle book includes a free PDF eBookBook DescriptionStable Diffusion is a game-changing AI tool for image generation, enabling you to create stunning artwork with code. However, mastering it requires an understanding of the underlying concepts and techniques. This book guides you through unlocking the full potential of Stable Diffusion with Python. Starting with an introduction to Stable Diffusion, you'll explore the theory behind diffusion models, set up your environment, and generate your first image using diffusers. You'll learn how to optimize performance, leverage custom models, and integrate community-shared resources like LoRAs, textual inversion, and ControlNet to enhance your creations. After covering techniques such as face restoration, image upscaling, and image restoration, you'll focus on unlocking prompt limitations, scheduled prompt parsing, and weighted prompts to create a fully customized and industry-level Stable Diffusion application. This book also delves into real-world applications in medical imaging, remote sensing, and photo enhancement. Finally, you'll gain insights into extracting generation data, ensuring data persistence, and leveraging AI models like BLIP for image description extraction. By the end of this book, you'll be able to use Python to generate and edit images and leverage solutions to build Stable Diffusion apps for your business and users.What you will learnExplore core concepts and applications of Stable Diffusion and set up your environment for successRefine performance, manage VRAM usage, and leverage community-driven resources like LoRAs and textual inversionHarness the power of ControlNet, IP-Adapter, and other methodologies to generate images with unprecedented control and qualityExplore developments in Stable Diffusion such as video generation using AnimateDiffWrite effective prompts and leverage LLMs to automate the processDiscover how to train a Stable Diffusion LoRA from scratchWho this book is forIf you're looking to gain control over AI image generation, particularly through the diffusion model, this book is for you. Moreover, data scientists, ML engineers, researchers, and Python application developers seeking to create AI image generation applications based on the Stable Diffusion framework can benefit from the insights provided in the book 
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