2021/2022 KAN-CDSCV1005U Business Data Processing and Business Intelligence
English Title | |
Business Data Processing and Business Intelligence |
Course information |
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Language | English |
Course ECTS | 7.5 ECTS |
Type | Elective |
Level | Full Degree Master |
Duration | One Semester |
Start time of the course | Autumn |
Timetable | Course schedule will be posted at calendar.cbs.dk |
Max. participants | 120 |
Study board |
Master of Science (MSc) in Business Administration and Data
Science
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Course coordinator | |
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Main academic disciplines | |
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Teaching methods | |
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Last updated on 08-02-2021 |
Relevant links |
Learning objectives | ||||||||||||||||||||||||
The course has following learning objectives
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Course prerequisites | ||||||||||||||||||||||||
The are no pre-requisites | ||||||||||||||||||||||||
Examination | ||||||||||||||||||||||||
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Course content, structure and pedagogical approach | ||||||||||||||||||||||||
Data driven decision making is core of business processes in the current age. It has become ever more important for business students to get acquainted with end to end process for business data analytics.
The aim of this course to provide knowledge about all processes of business data analytics that includes data collection, data storage, data processing and reporting. Student get hands on experience with data analysis process and learn the complete life cycle of analysis with examples and real data sets. Following topics are covered:
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Description of the teaching methods | ||||||||||||||||||||||||
The course consists of 30 hours of online
pre-recorded lectures. These are held as a mixture of theoretical
teaching, hands on demo and practical exercises. Students will be
provided code snippets and step by step guides to supplement their
technical learning. To provide support for exercise, Live Q&A
sessions will be arranged.
The students will be working with real-life data sources. The students will be either provided with access to the tools or they will be asked to register for trial version of same tools that are selected for data analysis learning in this course. Teaching Materials: Lecture slides Readings Handouts The students will work on a mini project to demonstrate their learning in the final exam. |
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Feedback during the teaching period | ||||||||||||||||||||||||
There will be three ways to provide feedback. a)
Three online quizzes with multiple choice questions and implicit
feedback with survey results. b) On demand Individual feedback
about topics covered and relation with exam project c) In person
feedback during exercises.
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Student workload | ||||||||||||||||||||||||
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Expected literature | ||||||||||||||||||||||||
The literature can be changed before the semester starts. Students are advised to check the syllabus on Canvas before buying any material.
The literature consists of practical hands on guides for each technology covered. There are readings associated with each topic.
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