Learning the Topological Invariance of Knots
Harvard CMSA via YouTube
Master AI and Machine Learning: From Neural Networks to Applications
The Most Addictive Python and SQL Courses
Overview
Google, IBM & Meta Certificates — All 10,000+ Courses at 40% Off
One annual plan covers every course and certificate on Coursera. 40% off for a limited time.
Get Full Access
Explore a 56-minute mathematics lecture from the CMSA Mathematics and Machine Learning Closing Workshop where Northeastern University's James Halverson delves into applying machine learning techniques to solve fundamental knot theory problems. Discover how transformers and convolutional neural networks can be trained to differentiate between topologically distinct knots without prior knowledge of topological invariants. Learn about the fascinating results showing how equivalent knots cluster within neural network embedding spaces and how trained decoders effectively map from embedding space back to knot space. Gain insights into new approaches addressing the Jones unknot conjecture, as this presentation bridges the gap between classical mathematical topology and modern machine learning techniques.
Syllabus
James Halverson | Learning the Topological Invariance of Knots
Taught by
Harvard CMSA