Overview
Syllabus
Intro
RG and Deep Learning
Motivation
Multi-Scale Entanglement Renormalization Ansatz
MERA as a quantum circuit
Neural Network Renormalization Group
Probability transformation in picture
Toy problem: Harmonic oscillator
Neural Bijectors
Bijectors form a group
Training: Probability Density Distillation
Interlude: The WaveNet Story
Variational Loss
What is the network learning?
How to interpret the latent variables ?
How is this useful?
Wander in the latent space
Latent space Hybrid MC
MI and holographic RG
Timeline on Generative Models
DL as a fluid control problem
Taught by
APS Physics