Overview
Explore the world of MCUNet and TinyML in this comprehensive lecture from MIT's 6.5940 course. Delve into the intricacies of deploying machine learning models on microcontrollers and resource-constrained devices. Learn from Prof. Song Han as he discusses cutting-edge techniques for optimizing neural networks for embedded systems. Discover the challenges and solutions in bringing AI to edge devices, including memory constraints, power efficiency, and real-time processing. Gain insights into the latest advancements in TinyML, enabling AI applications on small, low-power devices. Understand the architecture and design principles of MCUNet, a framework for efficient deep learning on microcontrollers. Explore practical examples and use cases of TinyML in various industries, from IoT to wearable technology. Enhance your knowledge of efficient machine learning techniques and their applications in resource-limited environments.
Syllabus
EfficientML.ai Lecture 10 - MCUNet and TinyML (MIT 6.5940, Fall 2024, Zoom Recording)
Taught by
MIT HAN Lab