MACHINE LEARNING IN PHYSICS
A detailed introduction to the use of machine learning techniques in physics. Topics will include basics of probability theory and statistics, basics of function fitting and parameter inference, basics of optimization, and machine learning techniques. A selection of physics topics that are particularly amenable to analysis using machine learning will be discussed. These might include processing collider data, classifying astronomical images, solving the Ising model, parameter estimation from physics data sets, learning physical probability distributions, finding string theory compactifications, and finding symbolic physical laws.
未报告
未报告
Cumulative Grade Distribution
按评分排序,数据来自 Rate My Professors
相似课程
按评分排序,数据来自 Rate My Professors
未找到教师。
课程先修和相关课程的可视化展示。
注意:我们并未显示所有可能的先修关系,仅显示与该课程直接相关的部分。
加载图表中...
该课程暂无课程安排信息。