我们仍在积极开发此网站。如果您遇到任何问题,请报告给我们! - 报告问题

MACHINE LEARNING IN PHYSICS

PHYSICS 361
课程描述

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.

先修课程

MATH 234 and (PHYSICS 104 , PHYSICS 202 , PHYSICS 208 , or PHYSICS 248 ), or graduate/professional standing

满足要求

This course does not satisfy any prerequisites.

学分

未报告

开课时间

未报告

平均绩点
3.67

0.84% 相比历史数据

完成率
100%

1.79% 相比历史数据

A率
76.32%

6.1% 相比历史数据

班级规模
38

33.33% 相比历史数据

Cumulative Grade Distribution

教师 (2026 Summr)

按评分排序,数据来自 Rate My Professors

相似课程