aktivní účast | |
Osvědčení o absolvování programu | |
nejsou uvedeny | |
Data Analysis Methodology: From Basics to Machine Learning Methods Application | |
full-time | |
Czech | |
"The course provides participants with a comprehensive insight into a wide range of data analysis methods. It begins with basic data analysis methodology, which includes describing one-dimensional and two-dimensional data, signal sampling, and basic statistical signal processing methods. Participants will be introduced to nonlinear regression analysis, principal component analysis, and gradually progress to more sophisticated methods such as support vector machine (SVM). These methods are crucial for understanding complex patterns and relationships in data and enable more precise modeling and prediction. Throughout the course, participants will also learn to use decision trees, which are useful for both classification and prediction, and gradient methods, which are important for model optimization. These techniques enhance participants' ability to analyze and interpret data and enable them to work more efficiently with larger and more complex datasets. The course also emphasizes the importance of validation and evaluation of classification accuracy, which are key steps in working with data and models. Participants will learn to properly evaluate the results of their models. Overall, the course provides participants with a broad overview of basic and advanced data analysis methods and enables them to apply these techniques to real-world data in various domains, from academic research to industrial applications. Thus, the course equips participants with the necessary skills and knowledge for successful and efficient work in the field of data analysis." |
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Data Analysis Methodology: From Basics to Machine Learning Methods Application | |
Introduction to Programming and Python Language 1 Getting acquainted with the Python language, introduction to possible IDEs, basic work with variables, loops, conditions Introduction to Programming and Python Language 2 Functions, libraries, modules, installation and importing libraries and modules Working with data in tabular form, simple data visualization Pandas library - DataFrame, statistical summaries, data indexing in DataFrame, filtering, aggregation, data removal, correlation matrix, loading various data types (read_csv, read_sql) Seaborn library - Relational plots, bar plots, histogram, heatmap Statistical data evaluation Normality tests of data and use of the SciPy library Testing hypotheses of data independence - Fisher's exact test, Boschloo's test, chi-square test Linear regression, introduction to nonlinear regression, validation of regression models, regularization Working with SciPy and NumPy libraries Data transformation - normalization, standardization, encoding, PCA, LDA Introduction to the Scikit-learn library Classification models #1: Logistic regression; Evaluation of classification model quality Issues in evaluating and comparing classification models, creating models based on logistic regression Classification models #2: Support Vector Machine, Decision Trees, Random Forests; differences between binary classification and multi-class classification Advanced classification models and the multi-class classification problem |
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50 | |
none | |
podání přihlášky a zaplacení účastnického poplatku |
aktivní účast | |
Osvědčení o absolvování programu | |
nejsou uvedeny | |
Vrba Jan Ing. Ph.D. | |
Department of Mathematics, Informatics and Cybernetics | |
Department of Mathematics, Informatics and Cybernetics | |
Data Analysis Methodology: From Basics to Machine Learning Methods Application | |
Steinbach Jakub Ing. Vrba Jan Ing. Ph.D. |
2024/2025 | |
summer semester | |
17.03.25 | |
1 | |
32 hours | |
8 lekcí po 4 hodinách = 32 hodin |
14900 Kč / course |
On-line | |
Steinbach Jakub Ing. | |
Jakub.Steinbach@vscht.cz | |
220443773 | |
01.05.2024 - 30.03.2025 | |