Capstone: Autonomous Runway Detection for IoT
Finally! You will learn how to motivate engineering decisions and how to choose implementations to make a system actually running!
This capstone project course ties together the knowledge from three previous courses in IoT through embedded systems: Development of Real-Time Systems, Web Connectivity & Security and Embedded Hardware and Operating Systems.
You will develop a larger system using the learning outcomes from these courses, and the students will evaluate the developed system in a real-world programming environment.
This course is a true engineering task in which the learners must not only implement the algorithm code, but also handle the interfaces between many different actors and hardware platforms.
You will also learn to evaluate the efficiency and the correctness of their system, as well as real-world parameters such as energy consumption and cost.
Get ready! This one will change how you view proposals and projects!
Ideate. Innovate. Iterate with 28Digital,
Watch on Coursera ↗
(saves to browser)
Sign in to unlock AI tutor explanation · ⚡30
More on: Agent Foundations
View skill →Related AI Lessons
⚡
⚡
⚡
⚡
I built a permission-first CLAUDE.md + agent stack for Claude Code (free, MIT)
Dev.to · Sabahattin Kalkan
A Practical Guide to Guardrails in Agentic AI: How to Build AI Agents That Are Powerful and Safe
Medium · Data Science
Are Humanoid Robots Really “Selling”?
Medium · AI
Understanding Real-Time Customer Intent: The New Frontier for Retail AI Chatbots
Medium · AI
🎓
Tutor Explanation
DeepCamp AI