Course: Technical Analysis

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Course title Technical Analysis
Course code KPV/TA
Organizational form of instruction Lecture + Tutorial
Level of course Bachelor
Year of study not specified
Semester Summer
Number of ECTS credits 5
Language of instruction Czech, English
Status of course unspecified
Form of instruction Face-to-face
Work placements This is not an internship
Recommended optional programme components None
Lecturer(s)
  • Nedbal Jiří, doc. Ing. Ph.D.
  • Murgaš Jiří, Ing. Ph.D.
Course content
The lectures will focus on possible ways to evaluate industrial processes. A data related to environmental aspects will be also processed and evaluated in the exercise course. Students will thus acquire practical knowledge of working with data in the environmental field as well. 1. Introduction, conditions of graduation, what are enterprise information systems. 2. Business Intelligence. The essence of Business Intelligence, components and tools for creating solutions. 3. Acquisition and collection of production data. Principles and recording of documentation and production data in an industrial enterprise. 4. Analysis and evaluation of production data. Evaluation and conclusions from documentation and production data in an industrial enterprise. 5. GDPR in production data. Data sharing and publishing in the industrial enterprise. 6. Presentation and visualisation of data. Tools for visualisation, reporting and communication of information. 7. Visualisation of production outputs. Working with presented data and examples from practice. 8. Industrial process analysis steps. Basic criteria and metrics in industrial process analysis. 9. Industrial process efficiency and production efficiency in relation to sustainability. Basic ways in which industrial process and production efficiency can be assessed (KPIs, production efficiency, quality, waste, etc.), efficiency and energy efficiency. 10. Lecture by a practitioner. 11. Trends in Industry 4.0 and data. 12. Examples and demonstrations of Industry 4.0 trends. 13. Discussion, consultation.

Learning activities and teaching methods
Lecture with practical applications, E-learning, One-to-One tutorial, Seminar classes, Individual study
  • unspecified - 26 hours per semester
  • Individual project (40) - 23 hours per semester
  • Preparation for an examination (30-60) - 26 hours per semester
  • Contact hours - 52 hours per semester
  • Presentation preparation (report) (1-10) - 3 hours per semester
prerequisite
Knowledge
The subject does not require any special prerequisite knowledge.
Skills
Ability to present independent work.
Ability to work in a team.
Ability to understand data.
Competences
N/A
N/A
N/A
N/A
N/A
N/A
learning outcomes
Knowledge
gain an understanding of the Power BI environment and features for data analysis and visualization
ability to import, transform and prepare different types of data for analysis in Power BI
use basic Power BI functions using the DAX language
understand basic statistical principles and their application in business data
Skills
effective work with data in Power BI during import, transformation and visualization
creating interactive visualisations in Power BI
Competences
N/A
N/A
N/A
teaching methods
Knowledge
E-learning
Lecture
Lecture supplemented with a discussion
Practicum
Multimedia supported teaching
Self-study of literature
Students' portfolio
Skills
Lecture
Lecture supplemented with a discussion
Practicum
Students' portfolio
Competences
Lecture
Lecture supplemented with a discussion
Practicum
Students' portfolio
assessment methods
Knowledge
Written exam
Test
Seminar work
Skills
Written exam
Test
Seminar work
Competences
Written exam
Test
Seminar work
Recommended literature
  • Deckler, Greg. Learn power BI: a comprehensive, step-by-step guide for beginners to learn real-world business intelligence. Nakladatelství Packt, 2022. ISBN 978-1801811958.
  • Chmelár, Michal. Reporting v Power BI, PowerPivot a jazyk Dax. Smart People, 2018. ISBN 9788097307806.
  • Mičudová, Kateřina; Gangur, Mikuláš; Svoboda, Milan; Říhová, Pavla. Základy statistiky a pravděpodobnosti. Západočeská univerzita v Plzni, 2016. ISBN 978-80-2610-660-9.
  • Pour, Jan; Maryčka, Miloš; Stanovská, Iva; Šedivá, Zuzana. Self Service Business Intelligence: Jak si vytvořit vlastní analytické, plánovací a reportingové aplikace. Grada Publishing, 2018. ISBN 978-80-271-0616-5.
  • Svoboda, Milan; Gangur, Mikuláš; Mičudová, Kateřina. Statistické zpracování dat. Západočeská univerzita v Plzni. 2019.


Study plans that include the course
Faculty Study plan (Version) Category of Branch/Specialization Recommended year of study Recommended semester