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Course Outline

Introduction to Low-Power AI

  • Overview of AI in embedded systems.
  • Challenges of AI deployment on low-power devices.
  • Energy-efficient AI applications.

Model Optimization Techniques

  • Quantization and its impact on performance.
  • Pruning and weight sharing.
  • Knowledge distillation for model simplification.

Deploying AI Models on Low-Power Hardware

  • Using TensorFlow Lite and ONNX Runtime for edge AI.
  • Optimizing AI models with NVIDIA TensorRT.
  • Hardware acceleration with Coral TPU and Jetson Nano.

Reducing Power Consumption in AI Applications

  • Power profiling and efficiency metrics.
  • Low-power computing architectures.
  • Dynamic power scaling and adaptive inference techniques.

Case Studies and Real-World Applications

  • AI-powered battery-operated IoT devices.
  • Low-power AI for healthcare and wearables.
  • Smart city and environmental monitoring applications.

Best Practices and Future Trends

  • Optimizing edge AI for sustainability.
  • Advancements in energy-efficient AI hardware.
  • Future developments in low-power AI research.

Summary and Next Steps

Requirements

  • A foundational understanding of deep learning models.
  • Experience with embedded systems or AI deployment.
  • Basic knowledge of model optimization techniques.

Audience

  • AI engineers.
  • Embedded developers.
  • Hardware engineers.
 21 Hours

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