Diffusion Models - Google Colab Experimentation with Code and Prebuilt Models - Part 2
Offered By: Prodramp via YouTube
Course Description
Overview
Explore Diffusion Models through hands-on experimentation in Google Colab with code implementations and prebuilt models in this 21-minute video tutorial. Dive into probabilistic Diffusion Models code implementation and learn to utilize prebuilt models. Follow along as the instructor guides you through setting up source data, implementing diffusion with constant and dynamic variance schedules, model training, and the reverse diffusion process. Discover how to leverage prebuilt models, generate denoising results, and validate your outcomes. Access valuable GitHub resources to further enhance your understanding of Diffusion Models and their applications in text-to-image AI research.
Syllabus
- What is covered ?
- Topic Introduction
- Code Implementation
- Setting Source Data
- Diffusion with constant variance schedule
- Diffusion with dynamic variance schedule
- Model Trainning
- Reverse Diffusion Process
- PreBuilt Models
- Using PreBuilt Models
- Generating Denoising Results
- Validating Denoising Results
- GitHub Resources
Taught by
Prodramp
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