YoVDO

On-Device Training and Transfer Learning - Lecture 15

Offered By: MIT HAN Lab via YouTube

Tags

Transfer Learning Courses Neural Networks Courses Microcontrollers Courses Model Compression Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore on-device training and transfer learning techniques in this lecture from MIT's course on TinyML and Efficient Deep Learning Computing. Dive into the memory bottleneck challenges of on-device training and discover efficient algorithms like TinyTL for on-device transfer learning. Examine system support for efficient on-device training and gain insights into implementing deep learning applications on resource-constrained devices. Learn from instructor Song Han as he covers topics such as model compression, pruning, quantization, neural architecture search, and distillation. Acquire hands-on experience in deploying neural networks on mobile devices, IoT devices, and microcontrollers through practical examples and an open-ended design project focused on mobile AI.

Syllabus

Lecture 15 - On-Device Training and Transfer Learning (Part I) | MIT 6.S965


Taught by

MIT HAN Lab

Related Courses

TensorFlow Lite for Edge Devices - Tutorial
freeCodeCamp
Few-Shot Learning in Production
HuggingFace via YouTube
TinyML Talks Germany - Neural Network Framework Using Emerging Technologies for Screening Diabetic
tinyML via YouTube
TinyML for All: Full-stack Optimization for Diverse Edge AI Platforms
tinyML via YouTube
TinyML Talks - Software-Hardware Co-design for Tiny AI Systems
tinyML via YouTube