Course Outline

Introduction to TinyML

  • What is TinyML?
  • The significance 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 setting up 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 knowledge (Python or C/C++)
  • Familiarity with machine learning concepts (recommended but not required)
  • Understanding of embedded systems (optional but helpful)

Audience

  • Engineers
  • Data scientists
  • AI enthusiasts
 14 Hours

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