Deploying AI on Microcontrollers with TinyML Training Course
TinyML allows AI models to operate efficiently on microcontrollers and edge devices with minimal power consumption.
This instructor-led, live training (online or onsite) is designed for intermediate-level embedded systems engineers and AI developers who want to deploy machine learning models on microcontrollers using TensorFlow Lite and Edge Impulse.
By the end of this training, participants will be able to:
- Grasp the fundamentals of TinyML and its advantages for edge AI applications.
- Set up a development environment suitable for TinyML projects.
- Train, optimize, and deploy AI models on low-power microcontrollers.
- Utilize TensorFlow Lite and Edge Impulse to create practical TinyML applications.
- Enhance the power efficiency and memory management of AI models.
Format of the Course
- Interactive lectures and discussions.
- Extensive exercises and practice sessions.
- Hands-on implementation in a live-lab environment.
Course Customization Options
- For a customized training session for this course, please contact us to arrange.
Course Outline
Introduction to TinyML and Edge AI
- What is TinyML?
- Advantages and challenges of AI on microcontrollers
- Overview of TinyML tools: TensorFlow Lite and Edge Impulse
- Use cases of TinyML in IoT and real-world applications
Setting Up the TinyML Development Environment
- Installing and configuring Arduino IDE
- Introduction to TensorFlow Lite for microcontrollers
- Using Edge Impulse Studio for TinyML development
- Connecting and testing microcontrollers for AI applications
Building and Training Machine Learning Models
- Understanding the TinyML workflow
- Collecting and preprocessing sensor data
- Training machine learning models for embedded AI
- Optimizing models for low-power and real-time processing
Deploying AI Models on Microcontrollers
- Converting AI models to TensorFlow Lite format
- Flashing and running models on microcontrollers
- Validating and debugging TinyML implementations
Optimizing TinyML for Performance and Efficiency
- Techniques for model quantization and compression
- Power management strategies for edge AI
- Memory and computation constraints in embedded AI
Practical Applications of TinyML
- Gesture recognition using accelerometer data
- Audio classification and keyword spotting
- Anomaly detection for predictive maintenance
Security and Future Trends in TinyML
- Ensuring data privacy and security in TinyML applications
- Challenges of federated learning on microcontrollers
- Emerging research and advancements in TinyML
Summary and Next Steps
Requirements
- Experience with embedded systems programming
- Familiarity with Python or C/C++ programming
- Basic knowledge of machine learning concepts
- Understanding of microcontroller hardware and peripherals
Audience
- Embedded systems engineers
- AI developers
Open Training Courses require 5+ participants.
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