TinyML: Running AI on Ultra-Low-Power Edge Devices Training Course
TinyML is transforming the AI landscape by enabling machine learning on microcontrollers and resource-limited edge devices.
This instructor-led, live training (available online or onsite) targets intermediate-level embedded engineers, IoT developers, and AI researchers keen on implementing TinyML techniques for energy-efficient hardware applications.
Upon completion of this training, participants will be able to:
- Grasp the core concepts of TinyML and edge AI.
- Deploy lightweight AI models onto microcontrollers.
- Optimise AI inference for minimal power usage.
- Integrate TinyML into practical IoT applications.
Course Format
- Interactive lectures and discussions.
- Extensive exercises and practical sessions.
- Hands-on implementation within a live lab environment.
Course Customisation Options
- To request a customised training session for this course, please contact us to arrange details.
Course Outline
Introduction to TinyML
- What is TinyML?
- Why run AI on microcontrollers?
- Challenges and benefits of TinyML
Setting Up the TinyML Development Environment
- Overview of TinyML toolchains
- Installing TensorFlow Lite for Microcontrollers
- Working with Arduino IDE and Edge Impulse
Building and Deploying TinyML Models
- Training AI models for TinyML
- Converting and compressing AI models for microcontrollers
- Deploying models on low-power hardware
Optimising TinyML for Energy Efficiency
- Quantisation techniques for model compression
- Latency and power consumption considerations
- Balancing performance and energy efficiency
Real-Time Inference on Microcontrollers
- Processing sensor data with TinyML
- Running AI models on Arduino, STM32, and Raspberry Pi Pico
- Optimising inference for real-time applications
Integrating TinyML with IoT and Edge Applications
- Connecting TinyML with IoT devices
- Wireless communication and data transmission
- Deploying AI-powered IoT solutions
Real-World Applications and Future Trends
- Use cases in healthcare, agriculture, and industrial monitoring
- The future of ultra-low-power AI
- Next steps in TinyML research and deployment
Summary and Next Steps
Requirements
- An understanding of embedded systems and microcontrollers
- Experience with the fundamentals of AI or machine learning
- Basic knowledge of C, C++, or Python programming
Audience
- Embedded engineers
- IoT developers
- AI researchers
Open Training Courses require 5+ participants.
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That we can cover advance topic and work with real-life example
Ruben Khachaturyan - iris-GmbH infrared & intelligent sensors
Course - Advanced Edge AI Techniques
Provisional Upcoming Courses (Require 5+ participants)
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