Overview
Learn about machine learning fundamentals and exam preparation in this university lecture covering final exam policies, schedules, and key concepts including learning problems, algorithms, accuracy metrics, and error analysis. Explore comprehensive coverage of machine learning principles while reviewing homework assignments and gaining insights into ghost review techniques for better understanding of learning algorithms and their applications.
Syllabus
Review
Final Exam Schedule
Final Exam Policy
Coverage
Machine Learning
Learning
Ghost Review
Homework
Learning Problems
Learning Algorithms
Accuracy
Error Analysis
Taught by
UofU Data Science