
예제로 배우는 딥러닝 자연어 처리 입문 NLP with TensorFlow - RNN부터 BERT까지
AISchool
딥러닝 자연어처리 기초부터 최신모델인 Transformer와 BERT까지 딥러닝 자연어 처리(Natural Language Processing[NLP])의 원리와 활용방법을 다양한 예제와 실습 코드 구현을 통해 학습합니다.
Basic
딥러닝, NLP, Tensorflow
This course is a hands-on masterclass that completely conquers the evolution of Diffusion Models through papers and code implementation. You'll learn the core models of generative AI, including DDPM (Denoising Diffusion Probabilistic Model) and DDIM, by studying the paper principles and implementing them directly. We analyze step-by-step the background of each model's emergence, mathematical formulations, network architectures (U-Net, VAE, Transformer), training processes (Noise Schedule, Denoising Step), and the ideas that led to performance improvements. Students will directly code all models using PyTorch, gaining not just paper comprehension but 'practical skills to reproduce and apply' them in real-world scenarios. Additionally, by comparing the differences between models and their developmental flow, you'll clearly understand how they expand and evolve. This course integrates theory, code, and practice into one comprehensive journey, providing researchers, developers, and creators alike with a systematic way to master the evolution of generative models. Beyond simply 'reading' papers, start your experience of 'understanding and recreating' through direct implementation now.
Understand the structure and principles of major diffusion models such as DDPM and DDIM step by step.
We directly implement the core ideas presented in each paper through code.
Compare the differences between models and experience through experiments how Diffusion-based models started and evolved.
Reproduce paper-based models with actual PyTorch code and perform custom image generation experiments.
Who is this course right for?
Developers and researchers who want to deeply understand the architecture of the latest generative AI models such as Stable Diffusion, DiT, SANA, etc.
Learners who want to go beyond simply reading Diffusion papers and actually implement and internalize them through hands-on practice
Graduate students, engineers, and data scientists interested in AI art, image generation, and model research and development
Need to know before starting?
If you have knowledge of basic mathematics and the fundamental syntax of Python and PyTorch, that will be sufficient.
You need a basic development environment where you can practice in Jupyter Notebook or VS Code.
All
17 lectures ∙ (2hr 52min)
Course Materials:
8. ELBO
04:56
9. DDPM Loss
12:58
13. DDPM Training
16:10
14. DDPM Wrap-up
03:52
16. DDIM Theory
12:15
Limited time deal
$27,890.00
34%
$33.00
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