NDAK15018U Cancelled Large-Scale Data Analysis (LSDA)
MSc Programme in Computer Science
Almost every scientific and industrial field is nowadays faced with massive amounts of data and analysing these data has become a key driver of research and innovation. Taking advantage of this data-rich situation often requires specialised approaches, tools, and skills. What society needs is qualified experts capable of designing, developing, and applying data analysis techniques in the context of big data scenarios. That is, “Data Analysts” are needed and the goal of this course is to educate such experts.
In comparison to other courses dealing with machine learning or data analysis, the focus of this course is on the peculiarities of processing large amounts of data - that is, on Big Data.
The course might also be relevant for students from, among others, the studies of Computer Science, Cognition and IT, Bioinformatics, Physics, Statistics, and other areas of quantitative studies.
The course covers a selection of the following (tentative topic) list:
- Fundamentals of large-scale data analysis
- Large-scale machine learning
- Deep learning
Parallel and distributed data analysis
At course completion, the successful student will have:
Knowledge of
- the general principles of large-scale data analysis;
- the theoretical concepts underlying large-scale data analysis;
- common pitfalls in large-scale data analysis.
Skills in
- applying efficient algorithms for analysing large datasets;
- using programming paradigms for large-scale data analysis;
- using software tools for large-scale data analysis;
- identifying and handling common pitfalls in data analysis.
Competences in
- recognising and describing possible applications of large-scale data analysis ("Big Data");
- comparing, appraising and selecting methods for specific data analysis tasks;
- solving large real-world data mining problems.
See Absalon when the course is set up.
Knowledge of basic calculus and statistics is required. Participants should also have knowledge of basic algorithms and data structures, basic programming, and other basic computer science concepts or should be willing to spend some extra study time to get familiar with the required skills.
Academic qualifications equivalent to a BSc degree is recommended.
- Category
- Hours
- Lectures
- 28
- Preparation
- 18
- Theory exercises
- 70
- Practical exercises
- 70
- Exam
- 20
- Total
- 206
As
an exchange, guest and credit student - click here!
Continuing Education - click here!
PhD’s can register for MSc-course by following the same procedure as credit-students, see link above.
- Credit
- 7,5 ECTS
- Type of assessment
- Continuous assessment4-6 take-home assignments of different sizes (both individual and group assignments).
The final grade will be based on the overall score achieved. - Aid
- All aids allowed
- Marking scale
- 7-point grading scale
- Censorship form
- No external censorship
Several internal examiners.
- Re-exam
The re-exam consists of two parts:
1. Submitting individual solutions (potentially revised) to at least 4 of the course assignments no later than 2 weeks before the oral re-exam (weighted 35% of the final grade).
2. A 30 minutes individual oral examination (including grading) without preparation in full course syllabus (weighted 65% of the final grade).
Criteria for exam assesment
See Learning Outcome.
Course information
- Language
- English
- Course code
- NDAK15018U
- Credit
- 7,5 ECTS
- Level
- Full Degree Master
- Duration
- 1 block
- Placement
- Block 4
- Schedule
- A
- Course capacity
- No limit
- Course is also available as continuing and professional education
- Study board
- Study Board of Mathematics and Computer Science
Contracting department
- Department of Computer Science
Contracting faculty
- Faculty of Science
Course Coordinators
- Fabian Cristian Gieseke (fabian.gieseke@di.ku.dk)