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CZECH TECHNICAL UNIVERSITY IN PRAGUE
STUDY PLANS
2023/2024

Data Processing

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Code Completion Credits Range Language
14ZDA Z 3 0P+2C Czech
Garant předmětu:
Martin Šrotýř
Lecturer:
Martin Šrotýř, Miroslav Vaniš
Tutor:
Martin Šrotýř, Miroslav Vaniš
Supervisor:
Department of Applied Informatics in Transportation
Synopsis:

Introduction to advanced non-relational database systems. Characteristics of different types of data. Data processing tools used. Practical part of the training - familiarization with the working environment, applied examples of data processing from practice, advanced methods of presenting outputs. Students' own work on open data. Consultation sessions for term papers. Seminar paper submission and presentation.

Requirements:

Ability to think logically, knowledge of the basics of algorithmization and the fundamentals of any programming language at a level equivalent to a third year of study at a technical university.

Syllabus of lectures:

The lessons are divided into 4 blocks:

Block 1: introduction to R - environment, concept, basics, simple examples, basic libraries, examples and their use (installation of R by students)

Block 2: applied R - applied examples from practice, map library, data retrieval from different sources and their modification (GIS, RDBMS, CSV, etc.)

Block 3: advanced R - interactive presentation module (shiny), other modules by agreement

Block 4: possibilities of Bayesian networks in data analysis

Syllabus of tutorials:

The lessons are divided into 4 blocks:

Block 1: introduction to R - environment, concept, basics, simple examples, basic libraries, examples and their use (installation of R by students)

Block 2: applied R - applied examples from practice, map library, data retrieval from different sources and their modification (GIS, RDBMS, CSV, etc.)

Block 3: advanced R - interactive presentation module (shiny), other modules by agreement

Block 4: possibilities of Bayesian networks in data analysis

Study Objective:

The aim of the course is primarily to familiarize students with the tools for data processing and analysis, to test the most common options used in data processing, including advanced options for presenting the results of analyses. Students will then independently perform data analysis on data from existing open systems.

Study materials:

Presentation of the course created by the guarantor.

Holubová Irena, Kosek Jiří, Minačík Karel and Novák David. BigData and NoSQL databases. Prague: Grada Publishing, 2015, 288s, ISBN 978-80-247-5466-6.

Benjamin S. Horton, Nicholas J. Kaplan, Daniel T. Baumer. Modern Data Science with R. Raylor & Francis, 2017, 556s, ISBN 9781498724487

Internet

Note:
Time-table for winter semester 2023/2024:
Time-table is not available yet
Time-table for summer semester 2023/2024:
06:00–08:0008:00–10:0010:00–12:0012:00–14:0014:00–16:0016:00–18:0018:00–20:0020:00–22:0022:00–24:00
Mon
Tue
Wed
roomKO:105
Vaniš M.
Šrotýř M.

13:15–14:45
(parallel nr.350)
Konviktská 20
Počítačová učebna
roomKO:105
Vaniš M.
Šrotýř M.

16:45–18:15
(parallel nr.351)
Konviktská 20
Počítačová učebna
Thu
Fri
The course is a part of the following study plans:
Data valid to 2024-05-01
Aktualizace výše uvedených informací naleznete na adrese https://bilakniha.cvut.cz/en/predmet7390606.html