sje30 / dl2023

Deep Learning 2023

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

This will be a 16 hour lecture course on the theory and applications of deep learning. All lectures should be recorded automatically and available shortly afterwards through the class moodle. The videos are also directly available via Panopto.

Consent for recordings

Live lectures will be recorded, and we assume that if you have your camera or microphone on, then you consent to being recorded. If you wish to revoke your consent, please contact us and we will need to edit you out of the recording.

Lectures

Lecture 01, 02

[2023-10-26 Thu 09:00-11:00]

Introduction

Neuro 101

Lecture 03, 04

[2023-10-30 Mon 09:00-11:00]

Perceptron

Back propagation

extra handout

Lecture 05, 06

[2023-11-02 Thu 09:00-11:00]

Back propagation continued; derivation.

Lecture 07, 08

[2022-11-07 Mon 09:00-11:00]

Dimensionality reduction

Tips and tricks

Lecture 09, 10

[2023-11-09 Thu 09:00-11:00]

Autograd

Images

Lecture 11, 12

[2022-11-14 Mon 09:00-11:00]

Images ctd.

Hopfield

Sequences (part 1)

Lecture 13, 14

Sequences (part 2)

Transformers

[2023-11-16 Thu 09:00-11:00]

https://arxiv.org/abs/2304.10557

Lecture 15, 16

RL [2023-11-20 Mon 09:00-11:00]

Practical on ‘Computational neuroscience modelling’

This optional session will be 1-3pm on Friday 10th November in MR15.

Reading

Most of the lectures will mention key papers to read. A good introductory text is AI Engines: mathematics of deep learning by Dr James V Stone.

Assignment

One assignment to be set at the end of the course; due in start of Lent Term 2024.

Assignment one

See https://github.com/sje30/dl2023/wiki for questions and comments on the assignment. If you have a question ahead of the feedback session on 7th December (10am, zoom), please email me.

About

Deep Learning 2023


Languages

Language:R 100.0%