Course Outline

Foundations of TinyML in Healthcare

  • Characteristics of TinyML systems
  • Healthcare-specific constraints and requirements
  • Overview of wearable AI architectures

Biosignal Acquisition and Preprocessing

  • Working with physiological sensors
  • Noise reduction and filtering techniques
  • Feature extraction for medical time-series

Developing TinyML Models for Wearables

  • Selecting algorithms for physiological data
  • Training models for constrained environments
  • Evaluating performance on health datasets

Deploying Models on Wearable Devices

  • Using TensorFlow Lite Micro for on-device inference
  • Integrating AI models in medical wearables
  • Testing and validation on embedded hardware

Power and Memory Optimization

  • Techniques for reducing computational load
  • Optimizing data flow and memory usage
  • Balancing accuracy and efficiency

Safety, Reliability, and Compliance

  • Regulatory considerations for AI-enabled wearables
  • Ensuring robustness and clinical usability
  • Fail-safe mechanisms and error handling

Case Studies and Healthcare Applications

  • Wearable cardiac monitoring systems
  • Activity recognition in rehabilitation
  • Continuous glucose and biometric tracking

Future Directions in Medical TinyML

  • Multi-sensor fusion approaches
  • Personalized health analytics
  • Next-generation low-power AI chips

Summary and Next Steps

Requirements

  • An understanding of basic machine learning concepts
  • Experience with embedded or biomedical devices
  • Familiarity with Python or C-based development

Audience

  • Healthcare professionals
  • Biomedical engineers
  • AI developers
 21 Hours

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