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MCUNet and TinyML - Lecture 10

Offered By: MIT HAN Lab via YouTube

Tags

TinyML Courses Machine Learning Courses Neural Networks Courses Embedded Systems Courses Microcontrollers Courses Edge Computing Courses Model Compression Courses

Course Description

Overview

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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 about the challenges and solutions in creating efficient neural networks for edge computing. Discover how MCUNet optimizes both the neural architecture and the inference engine for tiny deep learning. Gain insights into the latest advancements in TinyML, enabling AI applications on ultra-low-power devices. Taught by Prof. Song Han, this lecture provides a deep understanding of the techniques and technologies driving the future of embedded AI.

Syllabus

EfficientML.ai Lecture 10 - MCUNet and TinyML (MIT 6.5940, Fall 2024)


Taught by

MIT HAN Lab

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