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[Agris] Review Data Analytics
| Study level | Master | |
| ECTS credits | 3 | |
| Study forms | Hybrid or fully online | |
| Course aims | The key aim of the course is to familiarize the students with the most important groundbreaking information technologies used in manipulating, storing, and near-real-time analyzing data in IoT systems. | |
| Pre-requirements | Has some understanding of IoT (passed module "Introduction to IoT") | |
| Learning outcomes | After completing this course, the student: - identifies challenges in Data analytics - recognize main tools and frameworks for Data analytics - knows what are regression, clustering, and classification models - has overview of time series analysis in IoT - can apply data analytics on real-life IoT use case |
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| Topics | IoT Data Analysis Data products development Data preparation for data analysis Regression models Clustering models Classification models Introduction to time series analysis Hints for further readings on AI |
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| Type of assessment | Prerequisite of a positive grade is a positive evaluation of course topics and presentation of practical work results with required documentation | |
| Blended learning | https://multiasm.eu/mooc/course/view.php?id=8 | |
| References to literature | 1. IOT-OPEN.EU, Introduction to the IoT, 2019 2. Book 2 |
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| Lab equipment | ||
| Virtual lab | ||
| MOOC course | https://multiasm.eu/mooc/course/view.php?id=8 | |