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Edge AI for Healthcare: TinyML for Medical Wearables

Original price was: USD $99.00.Current price is: USD $59.00.

Biosignal processing for devices like ECG patches, glucose monitors, fitness bands

 

Introduction to the Course

Edge AI for Healthcare: TinyML for Medical Wearables is a hands-on program that teaches you how to build intelligence directly into wearable medical devices—where decisions must happen fast, privately, and with minimal power. Instead of sending every signal to the cloud, edge AI (and specifically TinyML) enables on-device inference for continuous health monitoring, alerts, and personalization—making it ideal for wearables like smartwatches, patches, biosensor bands, and home-health devices.

Course Objectives

  • Grasp the basics of edge AI and TinyML for healthcare wearables.
  • Learn how to handle wearable sensor data (ECG/PPG/IMU/temperature) for ML models.
  • Acquire practical expertise in feature engineering and designing models for resource-constrained devices.
  • Gain mastery in deployment techniques: quantization, latency, memory, and power optimization.
  • Delve into anomaly detection and event detection for healthcare wearables.
  • Develop the skill to prototype TinyML models for healthcare wearables with real-world constraints.

What Will You Learn (Modules)

Module 1: Model Compression Basics

  • Challenges of deploying deep learning models on resource-constrained edge devices

  • Trade-offs: Accuracy vs. Efficiency in healthcare applications

Module 2: On-Device Arrhythmia Classification – Case Study

  • Understanding ECG signal properties and common arrhythmia types

  • Importance of real-time edge inference in cardiology

Module 3: Privacy-Preserving Federated Updates

  • Decentralized model training across edge devices

  • Comparison with traditional cloud-based learning

Who Should Take This Course?

This course is ideal for:

  • Healthcare AI professionals and biomedical engineers building wearable intelligence
  • IoT and embedded engineers working on low-power devices
  • Data scientists transitioning into wearable sensor analytics and edge AI
  • Students in biomedical, electronics, computer science, or data science

Job Opportunities

After completing this course, learners can pursue roles such as:

  • Edge AI Engineer (Healthcare)
  • TinyML Engineer (Wearables)
  • Biomedical Data Scientist (Wearable Analytics)
  • Embedded ML Engineer

Why Learn With Nanoschool?

At NanoSchool, we focus on career-relevant learning that builds real capability—not just theory.

  • Expert-led training: Learn from instructors with real-world experience in applying skills to industry and research problems.
  • Practical & hands-on approach: Build skills through guided activities, templates, and task-based learning you can apply immediately.
  • Industry-aligned curriculum: Course content is designed around current tools, workflows, and expectations from employers.
  • Portfolio-ready outcomes: Create outputs you can showcase in interviews, academic profiles, proposals, or real work.
  • Learner support: Get structured guidance, clear learning paths, and support to stay consistent and finish strong.

Key outcomes of the course

Upon completion, learners will be able to:

  • Skills in developing edge AI for healthcare pipelines for wearable biosignals
  • Practical skills in TinyML for medical wearables including optimization and deployment thinking
  • Confidence in designing anomaly/event detection for real-time health monitoring
  • Knowledge of privacy, latency, and battery-aware model trade-offs

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What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

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