| File Name: | Master Generative AI for Images With Stable Diffusion & Flux |
| Content Source: | https://www.udemy.com/course/master-generative-ai-for-images-with-stable-diffusion-flux |
| Genre / Category: | Ai Courses |
| File Size : | 1.6 GB |
| Publisher: | Neuralearn Dot AI |
| Updated and Published: | November 19, 2025 |
The world is flooded with AI-generated images. We’ve all seen the viral “astronaut riding a horse” or the surreal landscapes that look like paintings. But a critical question remains: How do we move from creating fun, random images to building practical, commercially-valuable AI solutions?
How do you take a photo of a real empty apartment and have an AI furnish it, not just randomly, but in a way that respects the room’s unique layout, lighting, and perspective? How do you generate a photorealistic model for a marketing campaign and then seamlessly place your company’s product in their hands, matching the lighting and style perfectly?
This is the difference between being a user of AI and being a builder of AI systems. This is the skill that separates enthusiasts from professional AI engineers, and it’s exactly what this course will teach you.
This is your journey from basic prompting to building production-level generative AI pipelines.
In this comprehensive, hands-on course, we will dive deep into the world of controlled image generation. You will learn to architect and implement complex workflows that combine multiple state-of-the-art models to achieve precise, predictable, and high-quality results. We will master a cutting-edge technology stack, including Stable Diffusion, ControlNet, the FLUX model, Depth Anything, Grounding DINO, and Segment Anything (SAM) to build two spectacular, portfolio-defining projects.
Project 1: The Complete AI Interior Designer
Forget generic design tools. You will build an application that can take any photo of an empty room and breathe life into it. We will architect a pipeline that truly understands the space.
- Step 1: Scene Understanding. First, we’ll use the Depth Anything model to generate a precise depth map, giving our AI an understanding of the room’s 3D geometry.
- Step 2: Intelligent Masking. Next, we’ll use a powerful combination of Grounding DINO and Segment Anything (SAM) to automatically detect and create masks for key areas like the door, and windows.
- Step 3: Controlled Generation. Finally, we will feed the original image, the depth map, and the segmentation masks into ControlNet with a Stable Diffusion Inpainting model. This allows us to tell the AI, “Generate a modern sofa here on the floor, respecting the room’s depth and leaving the windows untouched.” The result is a stunning, realistic, and context-aware interior design.
DOWNLOAD LINK: Master Generative AI for Images With Stable Diffusion & Flux
Master_Generative_AI_for_Images_With_Stable_Diffusion_Flux.part1.rar – 1000.0 MB
Master_Generative_AI_for_Images_With_Stable_Diffusion_Flux.part2.rar – 639.2 MB
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