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IP-Adapter-FaceID Tutorial - Installation, Usage, and Advanced Features

Software Engineering Courses - SE Courses via YouTube

Overview

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Dive into a comprehensive 31-minute tutorial on installing and using the experimental IP Adapter Face ID model. Learn to integrate ID embedding from face recognition, replacing conventional CLIP image embedding. Master the one-click installation process and usage of a custom-coded Gradio application. Explore cross-platform compatibility on Linux, Windows, RunPod, and Kaggle. Discover advanced features including batch size adjustments and image generation techniques. Follow step-by-step instructions for converting models into diffusers format. Gain insights on using Stable Diffusion XL models, selecting input faces, and generating face-transferred images. Understand Web UI options, model meanings, and how to incorporate custom and local models. Learn to use CivitAI models, convert CKPT or Safetensors files, and manage generated images. Explore RunPod and Kaggle-specific instructions, including network storage usage, web app editing, and troubleshooting tips. Access resources including the tutorial source, GitHub repository, and Discord support channel.

Syllabus

Introduction to IP-Adapter-FaceID full tutorial
Requirements to use IP-Adapter-FaceID gradio Web APP
Where the Hugging Face models are downloaded by default on Windows
How to change folder path where the Hugging Face models are downloaded and cached
How to install IP-Adapter-FaceID Gradio Web APP and use on Windows
How to start the IP-Adapter-FaceID Web UI after the installation
How to use Stable Diffusion XL SDXL models with IP-Adapter-FaceID
How to select your input face and start generating 0-shot face transferred new amazing images
What does each option on the Web UI do explanations
What are those dropdown menu models and their meaning
How to use custom and local models with custom model path
How to add custom models and local models into your Web UI dropdown menu permanently
How to use a CivitAI model in IP-Adapter-FaceID web APP
How to convert CKPT or Safetensors model files into diffusers format
How to use diffusers exported model in custom model path input
How to download generated images and also where the generated images are saved
How to use an SDXL mode
How to permanently add your custom local models into your Web APP models dropdown list
How to install and use IP-Adapter-FaceID gradio Web APP on RunPod
How to start IP-Adapter-FaceID gradio Web APP on RunPod after the installation
What you need to be careful when using on RunPod or on Kaggle
How to use a network storage on RunPod to permanently keep storage between pods
How to edit web app on RunPod and add any model to UI permanently
How to kill started Web UI instance on RunPod
How to install fuser command on RunPod on Linux
How to use custom CivitAI model on RunPod with IP-Adapter-FaceID
If wget method from CivitAI fails how to make it work on RunPod or on Kaggle
How to delete files on RunPod properly
How to convert CKPT or Safetensors checkpoints into diffusers on RunPod
Showing example of SD 1.5 model conversion on RunPod
How to install and use IP-Adapter-FaceID gradio Web APP on a Free Kaggle notebook
How to download custom models into the temp directory of Kaggle to use on the Web APP
How to get your token and activate it to use Gradio app on Kaggle
After auth token set how to start Web UI on Kaggle
How to convert a custom CivitAI or any model into Diffusers on Kaggle to use
How to download all the generated images on a Kaggle notebook with 1 click
Where to find our Discord channel link

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Software Engineering Courses - SE Courses

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