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start [2023/08/11 12:37] – [August] anderson | start [2023/11/07 10:26] – external edit 127.0.0.1 | ||
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^ Week ^ Topic ^ Lecture Notes ^ Reading | ^ Week ^ Topic ^ Lecture Notes ^ Reading | ||
- | | Week 1:\\ Aug 22, 24 | Course overview. Jupyter notebooks. | + | | Week 1:\\ Aug 22, 24 | Course overview. Jupyter notebooks. |
- | | Week 2:\\ Aug 29, 30 | + | | Week 2:\\ Aug 29, 31 | Jupyter notebook animations. Optimization algorithms. Simple linear and nonlinear models. |
===== September ===== | ===== September ===== | ||
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^ Week ^ Topic ^ Lecture Notes ^ Reading | ^ Week ^ Topic ^ Lecture Notes ^ Reading | ||
- | | Week 3:\\ Sept 5, 7 | Python clases. Design of NeuralNetwork class. | + | | Week 3:\\ Sept 5, 7\\ Chuck' |
- | | Week 4:\\ Sept 12, 14 | Optimizers. | + | | Week 4:\\ Sept 12, 14 |
- | | Week 5:\\ Sept 19, 21 | Introduction to classification. | | | | + | | Week 5:\\ Sept 19, 21 | Using optimizers. | [[https:// |
- | | Week 6:\\ Sept 26, 28 | Classification. Convolutional neural networks. | | | | + | | Week 6:\\ Sept 26, 28 | Early stopping (new version of optimizers). A3. Introduction to classification. |
===== October ===== | ===== October ===== | ||
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^ Week ^ Topic ^ Lecture Notes ^ Reading | ^ Week ^ Topic ^ Lecture Notes ^ Reading | ||
- | | Week 7:\\ Oct 3, 5 | Introduction to Jax and Pytorch. | | | | + | | Week 7:\\ Oct 3, 5 | Classification with QDA, LDA, and linear logistic regression. | [[https:// |
- | | Week 8:\\ Oct 10, 12 | More convolutional neural networks. | | | | + | | Week 8:\\ Oct 10, 12 | Classification with Nonlinear Logistic Regression. Introduction to Reinforcement Learning. | [[https:// |
- | | Week 9:\\ Oct 17, 19 | Introduction to reinforcement leanring. Learning to play games. | | | | + | | Week 9:\\ Oct 17, 19 | Reinforcement learning with Q Function as Neural Network. Learning to play games. | [[https:// |
- | | Week 10:\\ Oct 24, 26 | Reinforcement | + | | Week 10:\\ Oct 24, 26 | Modular framework for reinforcement |
===== November ===== | ===== November ===== | ||
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^ Week ^ Topic ^ Lecture Notes ^ Reading | ^ Week ^ Topic ^ Lecture Notes ^ Reading | ||
- | | Week 11:\\ Oct 31 Nov 2 | Recurrent neural networks. | | | | + | | Week 11:\\ Oct 31 Nov 2 | Ray. Pytorch. |
- | | Week 12:\\ Nov 7, 9 | Unsupervised learning. Dimensionality reduction. Autoencorders. | | | | + | | Week 12:\\ Nov 7, 9 | Convolutional Neural Networks. Ensembles. | [[https:// |
| Week 13:\\ Nov 14, 16 | Clustering. | | Week 13:\\ Nov 14, 16 | Clustering. | ||
| Fall Break:\\ Nov 20-24 | No classes | | Fall Break:\\ Nov 20-24 | No classes |
start.txt · Last modified: 2024/05/20 17:22 by 127.0.0.1