Introduction
- Lecture: S0-Intro
- Version: current
- Notes to Read: Numpy Tutorial
- Video: M2 / M3
In this lecture, we cover:
Hierarchical:
K-means
This lecture covers 10 deep learning trends that go beyond classic machine learning:
5 . Few-shots / Meta learning / AGI?
Disclaimer: it is quite hard to make important topics of deep learning fit on a one-session schedule. We aim to make the content reasonably digestible in an introductory manner. We try to focus on a modularity view by introducing important variables to digest deep learning into chunks regarding data/ model architecture /tasks / training workflows and model characteristics. We think this teaching style provides students with context concerning those choices and helps them build a much deeper understanding.