Course Outline

Introduction to Edge AI in Healthcare

  • Overview of Edge AI and its significance in healthcare
  • Key benefits and challenges of implementing Edge AI in healthcare
  • Current trends and innovations in healthcare Edge AI
  • Real-world applications and case studies

Wearable Devices and Edge AI

  • Introduction to wearable health devices and their functionalities
  • Developing AI models for wearable health monitoring
  • Data collection and processing on wearable devices
  • Practical examples and case studies

Diagnostic Tools and Edge AI

  • Leveraging Edge AI for diagnostic imaging and analysis
  • Implementing AI models in diagnostic devices
  • Enhancing diagnostic accuracy and efficiency with Edge AI
  • Case studies of Edge AI in diagnostics

Patient Monitoring Systems

  • Designing real-time patient monitoring systems with Edge AI
  • Data management and processing in patient monitoring
  • Integrating Edge AI with healthcare IoT devices
  • Practical implementation and case studies

Developing AI Models for Healthcare Applications

  • Overview of relevant machine learning and deep learning models
  • Training and optimizing models for edge deployment
  • Tools and frameworks for healthcare Edge AI (TensorFlow Lite, OpenVINO, etc.)
  • Model validation and evaluation in healthcare settings

Deploying Edge AI Solutions in Healthcare

  • Steps for deploying AI models on healthcare edge devices
  • Real-time data processing and inference on edge devices
  • Monitoring and managing deployed healthcare AI models
  • Practical deployment examples and case studies

Ethical and Regulatory Considerations

  • Ensuring data privacy and security in healthcare Edge AI
  • Addressing bias and fairness in healthcare AI models
  • Compliance with healthcare regulations and standards (HIPAA, GDPR, etc.)
  • Best practices for responsible AI deployment in healthcare

Performance Evaluation and Optimization

  • Techniques for evaluating model performance on healthcare edge devices
  • Tools for real-time monitoring and debugging
  • Strategies for optimizing AI model performance in healthcare
  • Addressing latency, reliability, and scalability challenges

Innovative Use Cases and Applications

  • Advanced applications of Edge AI in healthcare
  • In-depth case studies in telemedicine, personalized medicine, and more
  • Success stories and lessons learned
  • Future trends and opportunities in healthcare Edge AI

Hands-On Projects and Exercises

  • Developing a comprehensive Edge AI application for healthcare
  • Real-world projects and scenarios
  • Collaborative group exercises
  • Project presentations and feedback

Summary and Next Steps

Requirements

  • An understanding of AI and machine learning concepts
  • Experience with programming languages (Python recommended)
  • Familiarity with healthcare technologies and systems

Audience

  • Healthcare professionals
  • Biomedical engineers
  • AI developers
 14 Hours

Delivery Options

Private Group Training

Our identity is rooted in delivering exactly what our clients need.

  • Pre-course call with your trainer
  • Customisation of the learning experience to achieve your goals -
    • Bespoke outlines
    • Practical hands-on exercises containing data / scenarios recognisable to the learners
  • Training scheduled on a date of your choice
  • Delivered online, onsite/classroom or hybrid by experts sharing real world experience

Private Group Prices RRP from €4560 online delivery, based on a group of 2 delegates, €1440 per additional delegate (excludes any certification / exam costs). We recommend a maximum group size of 12 for most learning events.

Contact us for an exact quote and to hear our latest promotions


Public Training

Please see our public courses

Provisional Upcoming Courses (Contact Us For More Information)

Related Categories