Wydział Ekonomiczny - Economics (S1)
specjalność: Real Estate Trading and Valuation
Sylabus przedmiotu Fundamentals of data science in business:
Informacje podstawowe
Kierunek studiów | Economics | ||
---|---|---|---|
Forma studiów | studia stacjonarne | Poziom | pierwszego stopnia |
Tytuł zawodowy absolwenta | licencjat | ||
Obszary studiów | charakterystyki PRK | ||
Profil | ogólnoakademicki | ||
Moduł | — | ||
Przedmiot | Fundamentals of data science in business | ||
Specjalność | przedmiot wspólny | ||
Jednostka prowadząca | Katedra Ekonomii, Finansów i Rachunkowości | ||
Nauczyciel odpowiedzialny | Błażej Suproń <Blazej.Supron@zut.edu.pl> | ||
Inni nauczyciele | |||
ECTS (planowane) | 2,0 | ECTS (formy) | 2,0 |
Forma zaliczenia | zaliczenie | Język | angielski |
Blok obieralny | 2 | Grupa obieralna | 3 |
Formy dydaktyczne
Wymagania wstępne
KOD | Wymaganie wstępne |
---|---|
W-1 | The student has basic knowledge of statistics and econometrics. |
W-2 | The student has basic knowledge of information technology. |
W-3 | The student is able to supplement and improve acquired knowledge and skills. |
Cele przedmiotu
KOD | Cel modułu/przedmiotu |
---|---|
C-1 | Introducing students to the principles of data processing and analysis. |
C-2 | Developing practical skills in data mining and business data visualization. |
Treści programowe z podziałem na formy zajęć
KOD | Treść programowa | Godziny |
---|---|---|
ćwiczenia audytoryjne | ||
T-A-1 | Acquisition and processing of business data. Open-source repositories of economic and business data. The use of AI in data analysis. | 2 |
T-A-2 | Configuration of the programming environment. Using notebooks for business data analysis and visualization. | 4 |
T-A-3 | Loading Data from Various Sources, Transformation, Grouping, and Data Organization. Utilizing scripts. | 4 |
T-A-4 | Operations on Different Data Types and Variables. Merging Various Datasets. | 4 |
T-A-5 | Visualization of Economic and Business Data. Exploratory Data Analysis. | 4 |
T-A-6 | Utilizing Basic Statistical Functions for Economic and Business Problem Analysis. Forecasting Using Simple Models. | 2 |
T-A-7 | Foundations of Machine Learning. Applying Basic Classification and Regression Algorithms in Business Tasks. | 4 |
T-A-8 | Final Project Presentation | 1 |
25 |
Obciążenie pracą studenta - formy aktywności
KOD | Forma aktywności | Godziny |
---|---|---|
ćwiczenia audytoryjne | ||
A-A-1 | participation in classes | 25 |
A-A-2 | Project preparation | 10 |
A-A-3 | Preparation for classes | 15 |
50 |
Metody nauczania / narzędzia dydaktyczne
KOD | Metoda nauczania / narzędzie dydaktyczne |
---|---|
M-1 | Computer-based laboratory exercises and didactic discussion. |
M-2 | Students' independent work with educational materials. |
Sposoby oceny
KOD | Sposób oceny |
---|---|
S-1 | Ocena podsumowująca: Project for verifying course objectives and acquired skills. |
Zamierzone efekty uczenia się - wiedza
Zamierzone efekty uczenia się | Odniesienie do efektów kształcenia dla kierunku studiów | Odniesienie do efektów zdefiniowanych dla obszaru kształcenia | Cel przedmiotu | Treści programowe | Metody nauczania | Sposób oceny |
---|---|---|---|---|---|---|
Ec_1A_O07/4.2_W01 The student knows the basic concepts and processes related to data analysis and their application in a business context. | Ec_1A_W03 | — | C-1, C-2 | T-A-1, T-A-2, T-A-3, T-A-4, T-A-5, T-A-6, T-A-7, T-A-8 | M-1, M-2 | S-1 |
Ec_1A_O07/4.2_W02 The student understands methods of data acquisition, processing, analysis, and visualization, as well as the principles of popular machine learning algorithms. | Ec_1A_W01 | — | C-1, C-2 | T-A-1, T-A-2, T-A-3, T-A-4, T-A-5, T-A-6, T-A-7, T-A-8 | M-1, M-2 | S-1 |
Zamierzone efekty uczenia się - umiejętności
Zamierzone efekty uczenia się | Odniesienie do efektów kształcenia dla kierunku studiów | Odniesienie do efektów zdefiniowanych dla obszaru kształcenia | Cel przedmiotu | Treści programowe | Metody nauczania | Sposób oceny |
---|---|---|---|---|---|---|
Ec_1A_O07/4.2_U01 The student can effectively process, analyze, and visualize data, and present it in clear reports and presentations tailored to the needs of stakeholders. | Ec_1A_U03, Ec_1A_U04 | — | C-1, C-2 | T-A-2, T-A-3, T-A-4, T-A-5, T-A-6 | M-1 | S-1 |
Ec_1A_O07/4.2_U02 The student can apply basic machine learning algorithms to solve business problems and assess the effectiveness and quality of developed models. | Ec_1A_U04 | — | C-2, C-1 | T-A-1, T-A-6, T-A-7 | M-1, M-2 | S-1 |
Zamierzone efekty uczenia się - inne kompetencje społeczne i personalne
Zamierzone efekty uczenia się | Odniesienie do efektów kształcenia dla kierunku studiów | Odniesienie do efektów zdefiniowanych dla obszaru kształcenia | Cel przedmiotu | Treści programowe | Metody nauczania | Sposób oceny |
---|---|---|---|---|---|---|
Ec_1A_O07/4.2_K01 The student can work effectively in a team, taking initiative in analytical projects and supporting group collaboration. | Ec_1A_K02 | — | C-2 | T-A-2, T-A-4, T-A-6, T-A-8 | M-1, M-2 | S-1 |
Kryterium oceny - wiedza
Efekt uczenia się | Ocena | Kryterium oceny |
---|---|---|
Ec_1A_O07/4.2_W01 The student knows the basic concepts and processes related to data analysis and their application in a business context. | 2,0 | |
3,0 | The student knows and understands the basic concepts related to data analysis. They can list fundamental data analysis processes but do not always fully grasp their application in a business context. They demonstrate a basic knowledge of analytical tools and methods. | |
3,5 | The student knows the basic concepts of data analysis and can define them correctly. They understand the main stages of data analysis and can identify their application in business at a basic level. They demonstrate knowledge of fundamental analytical methods but may struggle with their practical application. | |
4,0 | The student has a good understanding of data analysis concepts and processes. They can identify their application in various business areas. They are familiar with popular analytical tools and methods and can correctly discuss their practical use. | |
4,5 | The student demonstrates a solid knowledge of data analysis concepts and processes. They can independently identify examples of data analysis applications in business and determine appropriate methods for different situations. They confidently use analytical terminology and can logically justify their reasoning. | |
5,0 | The student possesses a very strong understanding of data analysis concepts, methods, and processes, along with their business applications. They can critically analyze and compare various analytical methods, providing specific examples of their use. They have an excellent command of analytical tools and understand their limitations. They confidently present and explain data analysis-related topics. | |
Ec_1A_O07/4.2_W02 The student understands methods of data acquisition, processing, analysis, and visualization, as well as the principles of popular machine learning algorithms. | 2,0 | |
3,0 | The student has a general knowledge of methods for acquiring, processing, analyzing, and visualizing data but does not always describe them correctly. They are familiar with basic machine learning algorithms but struggle to explain their principles. Their knowledge of tools and techniques is limited to the most fundamental concepts. | |
3,5 | The student understands basic methods of data acquisition, processing, and analysis and is familiar with essential visualization techniques. They can generally explain the principles of several popular machine learning algorithms, though they may struggle with a more detailed explanation. They demonstrate a basic understanding of tools used in data analysis. | |
4,0 | The student has a good understanding of methods for acquiring, processing, analyzing, and visualizing data and can describe them correctly. They can explain the principles of the most commonly used machine learning algorithms and identify their potential applications. They possess practical knowledge of tools used in Data Science and understand their fundamental limitations. | |
4,5 | The student demonstrates solid knowledge of data analysis and visualization methods and can compare different approaches to data processing. They understand the mechanisms of key machine learning algorithms, can classify them, and identify their strengths and weaknesses. They confidently use Data Science terminology. | |
5,0 | The student has an excellent understanding of data acquisition, processing, analysis, and visualization methods and can explain their applications in various business contexts. They thoroughly understand the principles of popular machine learning algorithms, can compare their effectiveness, and identify the most suitable applications. They confidently work with analytical tools and take a critical approach to their selection and interpretation of results. |
Kryterium oceny - umiejętności
Efekt uczenia się | Ocena | Kryterium oceny |
---|---|---|
Ec_1A_O07/4.2_U01 The student can effectively process, analyze, and visualize data, and present it in clear reports and presentations tailored to the needs of stakeholders. | 2,0 | |
3,0 | The student can perform basic data operations, such as initial preprocessing and analysis. They create simple visualizations, but these may be inaccurate or unclear. Their reports and presentations contain basic information but are not very structured or fully tailored to the audience. The student knows and uses fundamental programming commands in the field of data science. | |
3,5 | The student efficiently conducts basic data analyses and can create correct, though not highly advanced, visualizations. Their reports and presentations contain key information but may need refinement in terms of aesthetics and adaptation to different stakeholder groups. The student knows and uses basic programming commands in data science and can work with more complex commands with the help of documentation. | |
4,0 | The student can comprehensively process and analyze data using appropriate methods and tools. They create clear and accurate visualizations that effectively illustrate analysis results. Their reports and presentations are well-structured, readable, and adapted to audience expectations. The student knows and applies complex programming structures in data science. | |
4,5 | The student processes and analyzes data fluently, applying different techniques depending on the context. They create attractive, readable, and methodologically sound visualizations. Their reports and presentations are well-organized, logical, and tailored to different stakeholder groups, considering their needs and knowledge level. The student knows and applies complex programming structures in data science, including loops and automation techniques. | |
5,0 | The student demonstrates advanced skills in data processing, analysis, and visualization. They create aesthetically pleasing, professional visualizations suited to specific problems. Their reports and presentations are clear, logical, and fully adapted to stakeholder needs, containing essential insights and recommendations. They effectively communicate analysis results, adjusting language and format to the audience. The student knows and applies advanced programming structures and commands in data science. | |
Ec_1A_O07/4.2_U02 The student can apply basic machine learning algorithms to solve business problems and assess the effectiveness and quality of developed models. | 2,0 | |
3,0 | The student can apply basic machine learning algorithms but struggles with selecting the appropriate one for specific business problems. They understand basic model evaluation metrics but do not always interpret them correctly. Their analysis is superficial, and conclusions may be imprecise. | |
3,5 | The student can correctly select a basic algorithm for a specific business problem and implement it. They use fundamental model evaluation metrics, though their interpretation may be incomplete. Their conclusions are correct but may require further justification. | |
4,0 | The student can apply various machine learning algorithms to solve business problems and accurately assess their effectiveness. They can use and interpret basic evaluation metrics, identifying the strengths and weaknesses of models. Their analysis is logical and coherent. | |
4,5 | The student demonstrates the ability to consciously select ML algorithms for specific business cases, compare different models, and choose the optimal solution. They can thoroughly evaluate model quality using various metrics and analyze potential prediction errors. Their interpretation of results is precise and well-justified. | |
5,0 | The student proficiently applies machine learning algorithms to solve business problems and critically assesses model effectiveness. They can tailor evaluation methods to the specific problem, correctly analyze results, and identify opportunities for model improvement. They demonstrate a deep understanding of algorithm functionality and limitations. |
Kryterium oceny - inne kompetencje społeczne i personalne
Efekt uczenia się | Ocena | Kryterium oceny |
---|---|---|
Ec_1A_O07/4.2_K01 The student can work effectively in a team, taking initiative in analytical projects and supporting group collaboration. | 2,0 | |
3,0 | The student participates in team activities but has limited engagement. They complete assigned tasks but rarely take initiative. They may struggle with communication and collaboration with other team members. | |
3,5 | The student demonstrates basic teamwork skills, actively participates in tasks, but their initiative is limited. They support other team members, though not always effectively. Their communication is adequate but may need improvement. | |
4,0 | The student collaborates effectively in a team, actively contributing to analytical projects and taking initiative in problem-solving. They support team members and communicate effectively with others. | |
4,5 | The student not only works efficiently in a team but also actively contributes to organizing teamwork. They can motivate others, propose improvements in project execution, and effectively resolve collaboration challenges. | |
5,0 | The student demonstrates a high level of initiative in teamwork, effectively coordinating group efforts and fostering collaboration. They take on a leadership role in analytical projects, ensuring efficient communication and constructive conflict resolution. Their teamwork skills contribute to achieving high-quality group outcomes. |
Literatura podstawowa
- Wickham, Hadley, Mine Çetinkaya-Rundel, and Garrett Grolemund, R for data science, O'Reilly Media, Inc., 2023, https://r4ds.hadley.nz
- Kuhn, Max, and Julia Silge, Tidy modeling with R, O'Reilly Media, Inc, 2022, https://www.tmwr.org
- VanderPlas, Jake, Python data science handbook: Essential tools for working with data, O'Reilly Media, Inc., 2016
Literatura dodatkowa
- RPubs blog, 2024, https://rpubs.com/