This is the second module in a series of five foundational toolkits for applied mathematics. This series follows the textbook "Applied Mathematics Toolkit: Modeling, Data, and Algorithms for Scientists and Engineers", which will be available at the end of 2026. This module covers the third chapter of the book. In each lecture we will cover one concept and one example. Feel free to contact the authors Nan Chen or myself (Charlotte Moser) via email at chennan@math.wisc.edu or char.rosemoser@gmail.com with any questions. More information about our work can be found at https://people.math.wisc.edu/~nchen29/ or https://sites.google.com/view/charlotte-moser.
Curated by: Charlotte Moser (19 videos)
In this lecture I will show you how to combine neurons to create a neural network. This is the thirteenth lecture in the Machine Learning Toolkit module that follows the third chapter of the book "Applied Mathematics Toolkit: Modeling, Data, and Algorithms for Scientists and Engineers", which will be available at the end of 2026. Feel free to contact the authors Nan Chen or myself (Charlotte Moser) via email at chennan@math.wisc.edu or char.rosemoser@gmail.com with any questions. More information about our work can be found at https://people.math.wisc.edu/~nchen29/ or https://sites.google.com/view/charlotte-moser.
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