On the Applications of Topology
Offered By: Stony Brook Mathematics via YouTube
Course Description
Overview
Explore the applications of topology in data analysis through this mathematics department colloquium talk by Sara Kalisnik from ETH. Delve into the adaptation of topological techniques for studying large and complex datasets, focusing on two prominent methods: persistent homology and mapper. Discover how these topological approaches are applied in various fields such as computer vision, biology, and medicine. Learn about the integration of topological methods with traditional machine learning techniques, gaining insights into the interdisciplinary nature of modern data analysis. Enhance your understanding of how mathematical concepts from topology are transforming the landscape of data science and contributing to advancements across multiple scientific domains.
Syllabus
On the Applications of Topology - Sara Kalisnik
Taught by
Stony Brook Mathematics
Related Courses
Social Network AnalysisUniversity of Michigan via Coursera Intro to Algorithms
Udacity Data Analysis
Johns Hopkins University via Coursera Computing for Data Analysis
Johns Hopkins University via Coursera Health in Numbers: Quantitative Methods in Clinical & Public Health Research
Harvard University via edX