Book description
NoneTable of contents
- Preface
- 1. Introduction
- 2. Getting Started
- 3. Getting Up to Speed on Machine Learning
- 4. The âHello Worldâ of TinyML: Building and Training a Model
- 5. The âHello Worldâ of TinyML: Building an Application
- 6. The âHello Worldâ of TinyML: Deploying to Microcontrollers
- 7. Wake-Word Detection: Building an Application
- 8. Wake-Word Detection: Training a Model
- 9. Person Detection: Building an Application
- 10. Person Detection: Training a Model
- 11. Magic Wand: Building an Application
- 12. Magic Wand: Training a Model
-
13. TensorFlow Lite for Microcontrollers
- What Is TensorFlow Lite for Microcontrollers?
- Build Systems
- Supporting a New Hardware Platform
- Supporting a New IDE or Build System
- Integrating Code Changes Between Projects and Repositories
- Contributing Back to Open Source
- Supporting New Hardware Accelerators
- Understanding the File Format
- Porting TensorFlow Lite Mobile Ops to Micro
- Wrapping Up
- 14. Designing Your Own TinyML Applications
- 15. Optimizing Latency
- 16. Optimizing Energy Usage
- 17. Optimizing Model and Binary Size
- 18. Debugging
- 19. Porting Models from TensorFlow to TensorFlow Lite
- 20. Privacy, Security, and Deployment
- 21. Learning More
- A. Using and Generating an Arduino Library Zip
- B. Capturing Audio on Arduino
- Index
Product information
- Title: TinyML
- Author(s):
- Release date:
- Publisher(s):
- ISBN: None
You might also like
book
Reinforcement Learning
Reinforcement learning (RL) will deliver one of the biggest breakthroughs in AI over the next decade, …
book
Using Asyncio in Python
If you’re among the Python developers put off by asyncio’s complexity, it’s time to take another …
book
Analytical Skills for AI and Data Science
While several market-leading companies have successfully transformed their business models by following data- and AI-driven paths, …
book
Programming the Internet of Things
Learn how to program the Internet of Things with this hands-on guide. By breaking down IoT …