Deploy Neural Network onto an Embedded Device
Offered By: code::dive conference via YouTube
Course Description
Overview
Explore techniques for deploying neural networks on embedded devices in this 43-minute conference talk from code::dive 2022. Learn about pruning and quantization methods to optimize neural network performance on resource-constrained hardware. Gain insights from speaker Waqas Ahmad, an application engineer at The MathWorks with expertise in C/C++/CUDA code generation, fixed-point implementation, and software deployment on embedded systems. Discover practical approaches for implementing machine learning models in embedded applications, drawing from Ahmad's background in electrical engineering and signal processing, as well as his experience in the transportation industry.
Syllabus
Deploy Neural Network on to an embedded device - Waqas Ahmad - code::dive 2022
Taught by
code::dive conference
Related Courses
Survey of Music TechnologyGeorgia Institute of Technology via Coursera Fundamentals of Electrical Engineering Laboratory
Rice University via Coursera Critical Listening for Studio Production
Queen's University Belfast via FutureLearn Fundamentos de Comunicaciones Ópticas
Universitat Politècnica de València via UPV [X] Sense101x: Sense, Control, Act: Measure the Universe, Transform the World
University of Queensland via edX