Obligatory courses for 3rd grade Mathematics (course group defined by Faculty of Mathematics, Informatics, and Mechanics)
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2023Z - Winter semester 2023/24 2023L - Summer semester 2023/24 2024Z - Winter semester 2024/25 2024L - Summer semester 2024/25 (there could be semester, trimester or one-year classes) |
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2023Z | 2023L | 2024Z | 2024L | |||||||
1000-134FAN* | n/a | n/a |
Classes
Winter semester 2023/24
Groups
Brief description
Basic properties of analytic functions of one complex variable. A beautiful part of analysis with many applications all throughout mathematics. |
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1000-134FAN | n/a | n/a |
Classes
Winter semester 2023/24
Groups
Brief description
Basic properties of analytic functions of one complex variable. A beautiful part of analysis with many applications all throughout mathematics. |
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1000-714SAD | n/a | n/a |
Classes
Summer semester 2023/24
Groups
Brief description
Introduction to basic statistical notions and tools, such as parameter estimation and hypothesis testing. Introduction to data science, covering classification and clustering methods. The Mathematics students can alternatively take the course which has a different character. |
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1000-116bST | n/a | n/a |
Classes
Summer semester 2023/24
Groups
Brief description
The lecture is an introduction to classical statistics and focuses on a rigorous presentation of the theoretical statistics that forms the basis of statistical techniques. The course discusses statistical models for data and their parametrisations with particular focus on exponential families. Methods for parameter estimation are discussed, confidence intervals, hypothesis testing and their theoretical properties. Gaussian linear models are treated. The theory is applied to data analysis, fitting models and using them for prediction. Alternatively, you can choose 1000-714SAD of a more practical nature. |
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