TinyML for IoT Applications Training Course
TinyML brings machine learning capabilities to ultra-low-power IoT devices, allowing real-time intelligence to operate at the edge.
This instructor-led, live training (available online or onsite) is designed for intermediate-level IoT developers, embedded engineers, and AI practitioners who want to apply TinyML to predictive maintenance, anomaly detection, and smart sensor solutions.
Upon completing this training, participants will be able to:
- Grasp the core principles of TinyML and its role in IoT ecosystems.
- Configure a TinyML development environment tailored for IoT projects.
- Create and deploy machine learning models on low-power microcontrollers.
- Apply TinyML techniques for predictive maintenance and anomaly detection.
- Refine TinyML models to maximize power efficiency and minimize memory consumption.
Course Format
- Interactive lectures and discussions.
- Ample exercises and practical practice.
- Hands-on implementation within a live-lab environment.
Course Customization Options
- To request customized training for this course, please contact us to make arrangements.
Course Outline
Introduction to TinyML and IoT
- What is TinyML?
- Advantages of TinyML in IoT applications
- Comparing TinyML with traditional cloud-based AI
- Overview of TinyML tools: TensorFlow Lite, Edge Impulse
Setting Up the TinyML Environment
- Installing and configuring Arduino IDE
- Setting up Edge Impulse for TinyML model development
- Understanding microcontrollers for IoT (ESP32, Arduino, Raspberry Pi Pico)
- Connecting and testing hardware components
Developing Machine Learning Models for IoT
- Collecting and preprocessing IoT sensor data
- Building and training lightweight ML models
- Converting models to TensorFlow Lite format
- Optimizing models for memory and power constraints
Deploying AI Models on IoT Devices
- Flashing and running ML models on microcontrollers
- Validating model performance in real-world IoT scenarios
- Debugging and optimizing TinyML deployments
Implementing Predictive Maintenance with TinyML
- Using ML for equipment health monitoring
- Sensor-based anomaly detection techniques
- Deploying predictive maintenance models on IoT devices
Smart Sensors and Edge AI in IoT
- Enhancing IoT applications with TinyML-powered sensors
- Real-time event detection and classification
- Use cases: environmental monitoring, smart agriculture, industrial IoT
Security and Optimization in TinyML for IoT
- Data privacy and security in edge AI applications
- Techniques for reducing power consumption
- Future trends and advancements in TinyML for IoT
Summary and Next Steps
Requirements
- Experience in IoT or embedded systems development
- Familiarity with Python or C/C++ programming
- Foundational knowledge of machine learning concepts
- Understanding of microcontroller hardware and peripherals
Audience
- IoT developers
- Embedded engineers
- AI practitioners
Open Training Courses require 5+ participants.
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NobleProg offers professional training programs designed specifically for companies and organizations. These trainings are not intended for individuals.
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Testimonials (1)
The oral skills and human side of the trainer (Augustin).
Jeremy Chicon - TE Connectivity
Course - NB-IoT for Developers
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