Главная
Study mode:
on
1
Intro
2
Compute Spectrum: AI
3
Resource-constrained lot Devices
4
Requirements on The Edge
5
Broad approaches for TinyML
6
Edge Machine Learning (EdgeML) - Objectives
7
Microsoft's EdgeML Library
8
EdgeML Building Blocks
9
ProtoNN: Training Algorithm
10
Comparison to Uncompressed Methods
11
Prediction Accuracy vs Model Size
12
FastRNN
13
Prediction on Edge Devices
14
Time Series
15
Conclusions
Description:
Explore resource-efficient machine learning techniques for IoT devices with limited RAM in this 22-minute conference talk from the tinyML Summit 2020. Delve into the compute spectrum of AI, requirements for edge computing, and broad approaches for TinyML. Learn about Microsoft's EdgeML Library and its building blocks, including ProtoNN training algorithm and FastRNN. Discover how these methods compare to uncompressed techniques in terms of prediction accuracy and model size. Gain insights into implementing ML on edge devices for time series data and understand the potential applications and conclusions drawn from this research.

Resource Efficient Machine Learning in a Few KBs of RAM - tinyML Summit 2020

tinyML
Add to list