V
主页
Probability and Info Theory in Machine Learning (Fall 2020)
发布人
ECE 561 by Matt Malloy at UW-Madison 课程主页:https://sites.google.com/site/mmalloy/teaching/csece-561
打开封面
下载高清视频
观看高清视频
视频下载器
Algorithms in Machine Learning (Fall 2020)
Bayesian Machine Learning and Information Processing (Fall 2020)
Machine Learning (Fall 2019)
Introduction to Category Theory (Fall 2020)
Applied Probability and Statistics (Fall 2020)
Machine Learning Theory (Spring 2021)
Data Systems for Machine Learning (Fall 2020)
Multivariate Statistics and Machine Learning (Fall 2020)
Linear System Theory (Fall 2020)
COS 302: Mathematics for Numerical Computing and Machine Learning (Fall 2020)
General Field Theory (Fall 2020)
Algorithmic Game Theory (Fall 2021)
Introduction to Machine Learning (Fall 2020)
Topology (Fall 2020)
Computational Learning Theory (Fall 2021)
Graph Theory (Fall 2020)
Software Design (Fall 2020)
Differential Forms (Fall 2020)
Measure Theory (Fall 2020)
Introduction to Information Theory (Fall 2019)
Abstract Algebra (Fall 2020)
Calculus on Manifolds (Fall 2020)
Probability and Measure (Winter 2022)
Introduction to Graph Theory (Fall 2020)
Optimization in Machine Learning (Spring 2021)
General Topology (Fall 2020)
Thermodynamics (Fall 2020)
Matrix Calculus For Machine Learning And Beyond (IAP 2023)
Classical Mechanics (Fall 2020)
Analysis 1 (Fall 2020)
Machine Learning (Fall 2016)
Structural Graph Theory (Fall 2021)
Adaptive Control and Reinforcement Learning (Fall 2020)
Discrete Mathematics and FP in Coq (Fall 2020)
Foundations of Software (Fall 2020)
Topics in Real Analysis (Fall 2020)
Statistical Reinforcement Learning (Fall 2021)
Statistical Learning Theory (Spring 2021)
Introduction to Lie Theory
Cloud Computing and Big Data (Fall 2020)