Showing posts with label Riemann. Show all posts
Showing posts with label Riemann. Show all posts

Monday, June 3, 2024

Riemannian Geometry Cheat sheet

Target audience: Beginner
Estimated reading time: 3'
A visual overview of Riemannian geometry for everyone.

Riemannian geometry is core component of geometric learning that tackles the challenges of high-dimensional, densely packed but limited data, and complex distributions. Riemannian geometry provides a solution by helping data scientists understand the true shape and distribution of data.


Follow me on LinkedIn

Riemannian geometry provides data scientists with a mathematical framework facilitates the creation of models that are accurate and complex by leveraging geometric and topological insights.

References

Here is the list of published articles related to geometric learning:


--------------------------------------
Patrick Nicolas has over 25 years of experience in software and data engineering, architecture design and end-to-end deployment and support with extensive knowledge in machine learning. 
He has been director of data engineering at Aideo Technologies since 2017 and he is the author of "Scala for Machine Learning", Packt Publishing ISBN 978-1-78712-238-3 
and Geometric Learning in Python Newsletter on LinkedIn.