Главная
Study mode:
on
1
Intro
2
Software stack
3
cmsis
4
Bundled software components
5
Building a pack
6
What does it supply
7
Test matrix
8
Configuration matrix
9
Scaling
10
Real world data
11
Virtual streaming interface
12
Virtual hardware
13
Event record
14
Performance analysis
15
Source code
16
Demo
17
Resources
18
Questions
19
Strategic Partners
Description:
Explore a 55-minute tinyML Talk that delves into accelerating machine learning development using cloud-based Arm Cortex-M models. Learn about Arm Virtual Hardware and its capabilities in providing accurate models of Cortex-M based processors for application developers. Discover how this technology integrates into desktop IDE-based development and cloud-hosted CI/CD and MLOps workflows. Understand the Virtual Streaming Interface (VSI) and its role in feeding real-world or synthetic data into ML applications for comprehensive testing and validation. Gain insights into how the TensorFlow OSS project utilizes Arm Virtual Hardware to enhance Arm Cortex-M based target optimizations. The talk covers various aspects including software stack, CMSIS, bundled software components, package building, test and configuration matrices, scaling, virtual streaming interface, event recording, performance analysis, and includes a demo and resources. Presented by Matthias Hertel, Product Specialist at Arm, this talk offers valuable knowledge for developers working with ML on embedded systems. Read more

Accelerate ML Development With Cloud-Based Arm Cortex-M Models

tinyML
Add to list