Domain: Diffusion & Generative Models
Autoencoder
Advanced
Model that compresses input into latent space and reconstructs it.
Denoising Diffusion Probabilistic Model
Advanced
Diffusion model trained to remove noise step by step.
Diffusion Model
Advanced
Generative model that learns to reverse a gradual noise process.
Flow-Based Model
Advanced
Exact likelihood generative models using invertible transforms.
GAN
Advanced
Two-network setup where generator fools a discriminator.
Generative Model
Advanced
Models that learn to generate samples resembling training data.
Latent Diffusion
Advanced
Diffusion performed in latent space for efficiency.
Mode Collapse
Advanced
Generator produces limited variety of outputs.
Noise Schedule
Advanced
Controls amount of noise added at each diffusion step.
Score-Based Model
Advanced
Learns the score (∇ log p(x)) for generative sampling.
Variational Autoencoder
Advanced
Autoencoder using probabilistic latent variables and KL regularization.