Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

YouTube

TinyML Talks - On-Device Model Fine-Tuning for Industrial Anomaly Detection Applications

tinyML via YouTube

Overview

Explore on-device model fine-tuning for industrial anomaly detection applications in this 59-minute tinyML Talk. Delve into lifelong machine learning paradigms for improving anomaly detection performance in changing industrial environments. Learn how pre-trained neural networks can adapt to new data through on-device fine-tuning with a small memory footprint, allowing continuous model improvement during inference. Discover strategies for enhancing ML model flexibility while addressing challenges like catastrophic forgetting. Follow the process of transitioning an AWS cloud-based anomaly detection application to a microcontroller unit (MCU), reducing infrastructure costs and simplifying operational efforts. Gain insights into maintenance types, cloud architecture references, robust random cut techniques, and practical demonstrations showcasing the benefits of on-device learning for industrial applications.

Syllabus

Introduction
Strategic Partners
TinyML Summit 2022
Tiny Multiplayer Series
Meetup Groups
Reminders
Next talk
Main event
Welcome
Company introduction
Partners
Maintenance types
Possible approaches
Project overview
Infineon extensive maintenance evaluation kit
Cloud architecture reference cloud architectures
Robust random cut
Pros and cons
Questions
Neural Networks
Demo
Question
Demonstration
Catastrophic forgetting
Our approach
Next steps
QA
Green Grass
Constantine
Response requirements
Random cut forest
Power support
Signal input
Anomalies
Statistical methods
Deployment
Custom layers
Q A
Thank you
Outro

Taught by

tinyML

Reviews

Start your review of TinyML Talks - On-Device Model Fine-Tuning for Industrial Anomaly Detection Applications

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.