ITF301416 Big Data - Processing and Analysis (Autumn 2017)
Facts about the course
- ECTS Credits:
- 10
- Responsible department:
- Faculty of Computer Science
- Course Leader:
- Edgar Bostrøm
- Teaching language:
- See Course structure and learning methods
- Duration:
- ½ year
The course is connected to the following study programs
Compulsory course in:
- Bachelor in Information Systems
Elective course in other study programmes.
Prerequisites
The course builds on knowledge corresponding to the courses "Databases" and "Introduction to Programming".
The student's learning outcomes after completing the course
Knowledge:
On completion of the course, the student has:
- in-depth knowledge about the relational model, relational database systems, and alternatives to relational databases
- knowledge about how large data volumes are managed efficiently in relational form
- knowledge about data warehouses/ business intelligence and 'big data'
- knowledge about how to find patterns in large data volumes, and how this can be used for example in business strategies, marketing, social sciences, natural sciences and other subjects
Skills:
On completion of the course, the student is capable of:
- handling large data volumes, structured in different ways and on different platforms (LAN, WAN, the cloud)
- setting up and operating a database system
- creating expressions in relational algebra and seeing the connection between this and optimisation
- creating simple stored procedures and triggers
- designing a data warehouse
- analysing large data volumes using different techniques
- working with different types of database systems
General Competence:
On completion of the course, the student:
- has good knowledge of how large data volumes can be structured, processed, analysed and presented, on different platforms
- has more knowledge about how to search for information in and become acquainted with new IT systems
Content
Relational databases and large data volumes:
Relational algebra and query optimisation, other forms of optimisation, distributed databases and replicating, triggers and stored procedures. Different forms of connections between client and server. Alternatives to relational databases.
Data warehouse / business intelligence:
Various ways of building a data warehouse, the transformation process, data mining.
"Big data":
Massive data volumes, acquisition, storage, processing, visualisation. Legal and ethical aspects of big data.
Forms of teaching and learning
The course will largely be based on a combination of lectures and project work. Lectures will not be given on some of the topics included in the projects. It is up to the students to familiarise themselves with these topics.
If students from international partners attend courses, the lectures will be conducted in English.
Workload
4 hours of lectures + exercises per week.
Coursework requirements - conditions for taking the exam
Deliver four projects (individually or in groups).
The coursework requirements must be approved before students may sit the exam.
Examination
Written examination
Individual written examination lasting 4 hours. No support materials permitted.
Letter grading scale A?F.
Course evaluation
This course is evaluated as follows:
- Mid-semester evaluation (optional)
- Final evaluation (compulsory)
The course instructor prepares a course report on the basis of student feedback and on his/her own experiences of the course. Course reports are discussed with the Committee for Study Quality at the Faculty of Computer Sciences.
Literature
Updated June 16th 2016
Thomas M Connolly and Carolyn E Begg. Database Systems: A Practical Approach to Design, Implementation and Management - 6th Edition.
«Booz Allen Field Guide to Data Science»,
https://www.boozallen.com/content/dam/boozallen/documents/2015/12/2015-FIeld-Guide-To-Data-Science.pdf
Distributed material and web-based resources - will be posted on the learning platform.