Data Mining & Artifical Intellince
Course: Geoinformatics
Structural unit: Educational and Scientific Institute "Institute of Geology"
            Title
        
        
            Data Mining & Artifical Intellince
        
    
            Code
        
        
            ВК 2.3
        
    
            Module type 
        
        
            Вибіркова дисципліна для ОП
        
    
            Educational cycle
        
        
            Second
        
    
            Year of study when the component is delivered
        
        
            2024/2025
        
    
            Semester/trimester when the component is delivered
        
        
            3 Semester
        
    
            Number of ECTS credits allocated
        
        
            4
        
    
            Learning outcomes
        
        
            Apply their knowledge to identify and solve problems and make informed decisions in the thematic processing of geological, geophysical and other geospatial data.
Be able to communicate with experts and experts of different levels of other fields of knowledge, including in the international context, in the global information environment.
Plan and carry out scientific experiments, write scientific papers in the field of geoinformatics.
Be able to carry out thematic processing and interpretation of geospatial data obtained by different methods of research of the geological environment, to develop
appropriate algorithms and software products, create geodatabases, create web publications of cartographic data.
Demonstrate the ability to adapt and act in a new situation related to work in the profession, the ability to generate new ideas in the field of geoinformatics.
Create specialized software products, use web technologies and remote sensing data.
        
    
            Form of study
        
        
            Full-time form
        
    
            Prerequisites and co-requisites
        
        
            In order to better master the educational material of the discipline, students must have knowledge and skills in the field of computer science, geophysics, Earth physics, computer technology, work with spreadsheets, databases, speak English.
        
    
            Course content
        
        
            The basics of data mining implementation in modern decision support systems, organization of data warehouses, implementation of operational analytical data processing (OLAP), identification of patterns in data by solving problems of clustering, classification, regression, time series forecasting, use knowledge-oriented (knowledge representation models and logical inference) and connectionist (artificial neural networks) approaches to artificial intelligence to data mining.
        
    
            Recommended or required reading and other learning resources/tools
        
        
            1. Deductor. Analyst Guide. Version 5.3. - BaseGroup™ Labs, 1995-2013.
2. Methods and models of data analysis: OLAP and Data Mining / A. A. Barseghyan, M. S. Kupriyanov, V. V. Stepanenko et al. - 2nd ed., revised. and additional - St. Petersburg. : BHV-Petersburg, 2004.
3. Analysis of data and processes: textbook / A. A. Barseghyan, M. S. Kupriyanov, I. I. Kholod, M. D. Tess, S. I. Elizarov. - St. Petersburg: BHV-Petersburg. 2009.
4. Bondarev V.N., Ade F.G. Artificial intelligence: Proc. allowance for universities. - Sevastolpol: SevNTU Publishing House, 2002.
5. Bratko I. Algorithms of artificial intelligence in the PROLOG language. - M.: Williams Publishing House, 2004.
6. V.P. Borovikov. STATISTICS. The art of data analysis on a computer: For professionals - St. Petersburg: Peter, 2003.
        
    
            Planned learning activities and teaching methods
        
        
            Lectures, practical classes, consultations, independent work
        
    
            Assessment methods and criteria
        
        
            The control is carried out according to the module-rating system and provides: performance of 7 practical works (where students have to demonstrate
the quality of the acquired knowledge and solve the tasks using the methods and tools outlined by the teacher), and conducting 2 written modular tests. The final assessment is conducted in the form of a written and oral exam
        
    
            Language of instruction
        
        
            ukrainian
        
    Lecturers
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