Introduction to TinyML Training Course
TinyML refers to the implementation of machine learning techniques on microcontrollers and embedded devices with limited resources.
This instructor-led, live training (available online or onsite) is designed for beginner-level engineers and data scientists who want to grasp the fundamentals of TinyML, explore its practical applications, and deploy AI models on microcontrollers.
Upon completing this training, participants will be able to:
- Grasp the core concepts of TinyML and its importance.
- Deploy lightweight AI models on microcontrollers and edge devices.
- Optimize and fine-tune machine learning models to minimize power consumption.
- Implement TinyML solutions for real-world use cases, including gesture recognition, anomaly detection, and audio processing.
Course Format
- Interactive lectures and discussions.
- Extensive exercises and practice sessions.
- Hands-on implementation within a live-lab environment.
Customization Options
- For a customized training session, please contact us to make arrangements.
Course Outline
Introduction to TinyML
- What is TinyML?
- The importance of machine learning on microcontrollers
- Comparison between traditional AI and TinyML
- Overview of hardware and software requirements
Setting Up the TinyML Environment
- Installing Arduino IDE and configuring the development environment
- Introduction to TensorFlow Lite and Edge Impulse
- Flashing and configuring microcontrollers for TinyML applications
Building and Deploying TinyML Models
- Understanding the TinyML workflow
- Training a simple machine learning model for microcontrollers
- Converting AI models to TensorFlow Lite format
- Deploying models onto hardware devices
Optimizing TinyML for Edge Devices
- Reducing memory and computational footprint
- Techniques for quantization and model compression
- Benchmarking TinyML model performance
TinyML Applications and Use Cases
- Gesture recognition using accelerometer data
- Audio classification and keyword spotting
- Anomaly detection for predictive maintenance
TinyML Challenges and Future Trends
- Hardware limitations and optimization strategies
- Security and privacy concerns in TinyML
- Future advancements and research in TinyML
Summary and Next Steps
Requirements
- Basic programming skills (Python or C/C++)
- Familiarity with machine learning concepts (recommended but not mandatory)
- Understanding of embedded systems (optional but beneficial)
Target Audience
- Engineers
- Data scientists
- AI enthusiasts
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