Deep Learning with MATLAB: A Visual Approach
Deep learning is quickly becoming embedded in everyday applications. It’s becoming essential for students and educators to adopt this technology to solve complex real-world problems. MATLAB and Simulink provide a flexible and powerful platform to develop and automate data analysis, deep learning, AI, and simulation workflows in a wide range of domains and industries. In this workshop we will introduce deep learning with MATLAB. We will utilize a previously trained network and modify it, using the MATLAB Deep Network Designer. The Deep Network Designer allows you to interactively build and visualize neural networks. Individuals can generate the code for the neural network and fine-tune parameters. Users can use popular pre-trained networks or construct their own. We will also look at the MATLAB Classification Learner to run several models on a single data set. These visual approaches create a more efficient workflow.
Bio
Jon Loftin is a Customer Success Engineer at MathWorks. Jon’s background is in mathematics. More specifically, implementing mathematics in a computer. He holds degrees in mathematics: a BS from Southern Arkansas University, a MS from the University of Arkansas, and a Ph.D. from Texas Tech University. He has had years of teaching experience, from teaching at the Naval Nuclear Power School to teaching as an Assistant Professor. Jon’s research focus is building efficient integration techniques in finite element methods.
Deep Learning with MATLAB - A Visual Approach (workshop)
Wednesday, Nov. 13
3:00-4:30pm Workshop
4:30-5:00pm Meet and greet
WXLR A206
Hosted by SIAM Student Chapter at ASU and Professional Development Seminar
REGISTRATION REQUESTED:
https://forms.gle/91czQWvvJcYkvs9z5
Jon Loftin
Customer Success Engineer
MathWorks