course-premium

Course not currently available

IoT Winter School

Course

In Zagreb ()

Price on request

Description

  • Type

    Course

  • Class hours

    60h

  • Duration

    2 Weeks

The topic of this course is building a system for remote monitoring and recording of basic patient’s health indicators. Monitored data includes body temperature, heart rate and location, but can be extended with additional sensors such as blood oxygen, detection of other patients nearby using BLE, etc. Students will learn the basics of embedded technologies – using and programming microcontrollers, interfacing and controlling peripheral devices such as digital and analog inputs, sensors and actuators. Relevant communication protocols and standards used in IoT solutions will be covered. You will also learn about the concept of edge devices for data aggregation and local processing and the concept of cloud services for data acquisition, visualization and machine learning. You will then implement a fully functional system using those elements.

The project was co-financed by the European Union from the European Social Fund. Please find more information on EU funds at Ministry of regional development and EU funds website.

Important information

Documents

  • Student lifestyle

Government funding available

About this course

The aim of the course is to introduce students to the technologies, concepts, and architectures relevant for the design and implementation of modern IoT systems and to motivate them to actively participate in building a specific patient monitoring IoT system.

Students

The requirement for participation in the program is knowledge of the basics of programming in any programming language.

6 ECTS points and the official International Summer School certificate issued by Algebra University College, an accredited higher education institution in the Republic of Croatia

The course is designed to be both applicable, creative and suitable for students from all backgrounds so don’t get discouraged if you are just starting to find your footing in the world of digitalization. The project was co-financed by the European Union from the European Social Fund.

Should you be needing any additional information, our International Office is at your disposal.

Questions & Answers

Add your question

Our advisors and other users will be able to reply to you

Fill in your details to get a reply

We will only publish your name and question

Emagister S.L. (data controller) will process your data to carry out promotional activities (via email and/or phone), publish reviews, or manage incidents. You can learn about your rights and manage your preferences in the privacy policy.

Reviews

This centre's achievements

2021

All courses are up to date

The average rating is higher than 3.7

More than 50 reviews in the last 12 months

This centre has featured on Emagister for 5 years

Subjects

  • School
  • Programming
  • Architecture
  • Learning
  • Electronics
  • Cloud
  • IoT
  • Machine
  • Microcontrollers
  • RaspberryPi
  • MQTT

Teachers and trainers (2)

Tomislav Ražov

Tomislav Ražov

Associate lecturer

Zvonimir Anić

Zvonimir Anić

Associate lecturer

Course programme

TOPICS: Introduction to IoT Designing an IoT architecture Introduction to basics of electronics and microcontrollers Programming ESP32 using Arduino development environment Using MQTT protocol on ESP32 microcontroller Programming Raspberry Pi in Python Using MQTT protocol on Raspberry Pi Building REST API in Cloud for saving telemetry data in database Building web interface for visualizing telemetry data in Cloud Application of machine learning in temperature and heartrate trend forecasting and alarming The knowledge you will acquire LEARNING OUTCOMES Evaluate the applicability of a given IoT architecture Create a measuring device capable of sending its telemetry data via standard network protocols Create an edge gateway capable of collecting telemetry data from multiple measuring devices and sending them to Cloud Create a Cloud service capable of collecting and visualizing telemetry data Apply machine learning in the cloud for trend forecasting

Additional information

 Instruction Language: English. The project was co-financed by the  European Union from the European Social Fund

IoT Winter School

Price on request