2022/2023 KAN-CINTO1011U Big Data Management
English Title | |
Big Data Management |
Course information |
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Language | English |
Course ECTS | 7.5 ECTS |
Type | Mandatory (also offered as elective) |
Level | Full Degree Master |
Duration | One Semester |
Start time of the course | Autumn |
Timetable | Course schedule will be posted at calendar.cbs.dk |
Study board |
Study Board for BSc/MSc in Business Administration and
Information Systems, MSc
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Course coordinator | |
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Teaching methods | |
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Last updated on 17-05-2022 |
Relevant links |
Learning objectives | ||||||||||||||||||||||||
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Course prerequisites | ||||||||||||||||||||||||
Students should have a basic understanding of quantitative data analysis and a willingness to work with computational methods. | ||||||||||||||||||||||||
Examination | ||||||||||||||||||||||||
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Course content, structure and pedagogical approach | ||||||||||||||||||||||||
This course is designed to equip students with practical knowledge of tools and techniques for the purpose of analyzing large data sets and building predictive models. Students will study how to assess the potential cost and benefit of these models, how organizations leverage them for innovation and value creation, and also gain an understanding of conceptual and ethical boundaries that accompany big data applications.
The course is planned to run in person and will be comprised of a weekly lecture and a weekly exercise session with Python and Jupyter Notebooks. Students with no prior programming experience will be encouraged to complete a basic online tutorial upon beginning the course (e.g., https://pandas.pydata.org/pandas-docs/version/0.15/10min.html).
The course also includes an independently chosen project on big data management to be completed in groups of 2-4 students. The project will take the form of a business case analysis. Students will select a dataset, to which they apply data science techniques, building relevant models and assessing them from business and data science perspectives.
The course will cover the following main topic areas:
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Description of the teaching methods | ||||||||||||||||||||||||
A combination of in-person lectures and in-person, hands-on exercise sessions. | ||||||||||||||||||||||||
Feedback during the teaching period | ||||||||||||||||||||||||
Students will receive feedback in three ways
throughout the course. (1) The lecture sessions will incorporate
anonymous polls whereby the students can test their understanding
of concepts covered previously and then ask questions publicly. (2)
During the exercise sessions the students will work in groups and
receive peer-to-peer feedback, and also have the opportunity to
receive specialised feedback from the professor as they work to
ensure understanding of the practical aspects of the course. (3)
Finally, students will be given the option of submitting a brief
project plan mid-way through the course for the professor to
provide written comments on.
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Student workload | ||||||||||||||||||||||||
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Expected literature | ||||||||||||||||||||||||
The expected literature for the course is the following:
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