Deep Learning ICTS6361 2023
- Introduction To Neural Networks and Deep Learning
- Improving Deep Neural Networks, Hyperparameter Tuning, Regulaization and Optimization
- Structuring ML projects (end-to-end)
- Convolutional Neural Networks (CNN)
- Sequence Models (Recurrent Neural Networks RNNs) and Transformers
- Selected Papers Presentation 30
- Project 30
- Final Exam 40
- Ian Goodfellow, Yoshua Bengio, and Aaron Courville. Deep Learning
- Understanding Deep Learning - Simon J.D. Prince
- DNN cheatsheet
- Deep Learning AI course
- Deep Learning Course at Stanford
- Deep Learning Course at MIT
- ML for everyone
- Math is Fun
- Log likelyhood
- A Comprehensive Introduction to Different Types of Convolutions in Deep Learning | by Kunlun Bai | Towards Data Science
- Different Types of CNN Architectures Explained: Examples, May 2023
- Illustrated: 10 CNN Architectures, 2019
- Best deep CNN architectures and their principles: from AlexNet to EfficientNet, 2021
- Deep Learning Book
- Deep Neural Networks by Andrew NG (DeepLearning.ai)
- Stanford Deep Learning Course
- MIT Deep Learning Course
- My viedo lectures