Course: Diagnostics and Decision Processes

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Course title Diagnostics and Decision Processes
Course code KKY/DR
Organizational form of instruction Lecture + Seminar
Level of course Master
Year of study not specified
Semester Winter
Number of ECTS credits 6
Language of instruction Czech
Status of course Compulsory-optional, Optional
Form of instruction Face-to-face
Work placements This is not an internship
Recommended optional programme components None
Lecturer(s)
  • Zelinka Jan, Ing. PhD.
  • Müller Luděk, Prof. Ing. Ph.D.
  • Chýlek Adam, Ing.
Course content
Mathematical diagnostic methods: statistical decision problems, classification, feature selection, estimation, approximation. Artificial intelligence methods applicable to diagnostics - pattern recognition and their use in diagnostic and decision making processes. Engineering approach to the implementation of technical and medical diagnostic systems, feasibility studies, implementation of diagnostic systems in industry, life cycle of diagnostic systems with regard to their development and maintenance. Examples of technical and medical diagnostic systems.

Learning activities and teaching methods
Lecture
  • Graduate study programme term essay (40-50) - 40 hours per semester
  • Preparation for an examination (30-60) - 30 hours per semester
  • Contact hours - 65 hours per semester
  • Preparation for comprehensive test (10-40) - 21 hours per semester
prerequisite
Knowledge
znát alespoň jeden programovací nebo skriptovací jazyk či SW nástroj typu MATLAB
to have basic knowledge of mathematical statistics
Skills
navrhnout algoritmus
napsat program řešící matematickou úlohu
analyzovat problém
Competences
N/A
N/A
N/A
learning outcomes
Knowledge
to apply knowledge of statistical methods of technical diagnostics and its application in real situations.
mít základní přehled o metodách strojového učení
Skills
použít algoritmy statistické indukce k řešení praktické úlohy
umět ověřit správnost získaných výsledků
Competences
N/A
N/A
N/A
teaching methods
Knowledge
Lecture
Lecture supplemented with a discussion
Practicum
Skills
Practicum
Individual study
Competences
Lecture
Practicum
Discussion
One-to-One tutorial
assessment methods
Knowledge
Oral exam
Test
Seminar work
Skills
Oral exam
Written exam
Test
Competences
Oral exam
Test
Seminar work
Recommended literature
  • Duda. O. Pattern Classification, 2nd Edition. 2004. ISBN 978-0-471-70350-1.
  • Hátle, Jaroslav; Likeš, Jiří. Základy počtu pravděpodobnosti a matematické statistiky. Praha : SNTL, 1974.
  • Vapnik, Vladimir N. Statistical learning theory. New York : John Wiley & Sons, Inc., 1998. ISBN 0-471-03003-1.


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