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
 21 Hours

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