Course Description This course provides a broad introduction to machine learning and statistical pattern recognition. Topics include: supervised learning (generative/discriminative learning, parametric/non-parametric learning, neural networks, support vector machines); unsupervised learning (clustering, dimensionality reduction, kernel methods); learning theory (bias/variance tradeoffs, practical advice); reinforcement learning and adaptive control. The course will also discuss recent applications of machine learning, such as to robotic control, data mining, autonomous navigation, bioinformatics, speech recognition, and text and web data processing.
To help with project advice, each member of course staff's ML expertise is also listed below.
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![]() Aman Patel
Computational Biology, General ML
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![]() Shiny Weng
Statistical Learning, Trustworthiness, Computer Vision
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![]() Zipeng Fu
Robot Learning, Reinforcement Learning
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![]() Jacob Frausto
Computer Vision, Reinforcement Learning, LLM agents
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![]() Minsik Oh
NLP, LLM Post-training, Representation Learning
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![]() Thomas Chen
ML theory
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![]() Simran Nayak
Statistical Learning, General ML
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Amy Guan
Statistical Learning
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![]() Priya Khandelwal
Computer Vision, GNNs, ML Systems, LLMs
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![]() John So
Robot Learning, RL, CV
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![]() Sai Saketika Chekuri
General ML, Computer Vision, RL
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![]() Medhanie Irgau
Generative Models, Privacy, PEFT
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![]() Zhen Wu
Character Animation, Robotics
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![]() Zikui Wang
Computer Vision, LLMs
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![]() Jubayer Ibn Hamid
Reinforcement learning, Robot learning
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![]() Arya B.
NLPs, GNNs, Systems, Robotics, CV
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Note: This schedule is tentative and subject to change.
Date | Session | Topic | Details |
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Jan 6, 2025 | Lecture 1 | Introduction: What is Machine Learning, History of ML/AI | Problem Set 0 Released |
Jan 8, 2025 | Lecture 2 | Linear Regression, Training, Gradient Descent, Normal Equations | Problem Set 1 Released |
Jan 10, 2025 | TA Lecture 1 | Linear Algebra Review | |
Jan 13, 2025 | Lecture 3 | Regularization, Ridge Regression, Validation Sets | |
Jan 15, 2025 | Lecture 4 | Linear classifiers, Logistic Regression, Learning from Weighted Data | Problem Set 0 Due (11:59pm PT) |
Jan 17, 2025 | TA Lecture 2 | Probability Review | |
Jan 20, 2025 | Lecture 5 | MLK - HOLIDAY, NO LECTURE | |
Jan 22, 2025 | Lecture 6 | Neural Networks: Introduction, Basic Architecture (MLP) |
Problem Set 2 Released Problem Set 1 Due (11:59pm PT) |
Jan 24, 2025 | TA Lecture 3 | Python/Numpy | Final Project Proposal Due (11:59pm PT) |
Jan 27, 2025 | Lecture 7 | Neural Networks: Multi-Class Loss, Backpropagation | |
Jan 29, 2025 | Lecture 8 | Neural Networks: Optimization, Advanced Architecture | |
Jan 31, 2025 | TA Lecture 4 | Pytorch | |
Feb 3, 2025 | Lecture 9 | Neural Networks: Transformers and Language Models | |
Feb 5, 2025 | Lecture 10 | Neural Networks: Convolutional Networks (CNNs) and Pre-trained Models |
Problem Set 3 Released Problem Set 2 Due (11:59pm PT) |
Feb 7, 2025 | TA Lecture 5 | Midterm Review | |
Feb 10, 2025 | Lecture 11 | Decision Trees | |
Feb 12, 2025 | Lecture 12 | Boosting, Adaboost | |
Feb 13, 2025 | MIDTERM | MIDTERM Exam | Location TBA (6-9pm PT) No TA Lecture |
Feb 17, 2025 | Lecture 13 | President's Day - HOLIDAY, NO LECTURE | |
Feb 19, 2025 | Lecture 14 | Advance Machine Learing |
Problem Set 4 Released Problem Set 3 Due (11:59pm PT) |
Feb 21, 2025 | TA Lecture 6 | Optimization | Final Project Milestone Due (11:59pm PT) |
Feb 24, 2025 | Lecture 15 | PCA & Autoencoders | |
Feb 26, 2025 | Lecture 16 | Unsupervised learning, KMeans, & GMM | |
Feb 28, 2025 | TA Lecture 7 | Evaluation Metrics | |
Mar 3, 2025 | Lecture 17 | Reinforcement learning | |
Mar 5, 2025 | Lecture 18 | Reinforcement Learning | Problem Set 4 Due March 7 (11:59pm PT) |
Mar 10, 2025 | Lecture 19 | Fairness & Algorithmic Bias | |
Mar 12, 2025 | Lecture 20 | Ethics lecture | |
Mar 14, 2025 | Final Project Report | Final Project Report Due (11:59pm PT) |
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Mar 19, 2025 | Final Project Poster Session | 3:30 pm - 6:30 pm PT |