Advanced Studies in Data Science, At least 80 cr
- Description
- Content
Prerequisites and the structure of studies in the Data Science specialisation
Prerequisities
Bachelor's degree in a suitable field or equivalent studies, and a good knowledge of English. Suitable studies include:
Basic knowledge in Statistics (~10 ECTS). Following course units or equivalent:
DATA.STAT.110 Introduction to Statistics, 5 ECTS
MATH.APP.210 Introduction to Probability and Statistical Inference, 5 ECTS
Basic knowledge in Computer Science and programming skills (~10 ECTS). Following course units or equivalent:
COMP.CS.100 Programming 1: Introduction to Programming [Python language], 5 ECTS
COMP.CS.110 Programming 2: Structures [C++ language], 5 ECTS
Complementary studies
The student’s Bachelor studies also need to include the following studies, and if not, they need to be studied during the MSc programme studies and can be included in the Free Choice Studies category as complementaty studies.
DATA.STAT.120 Introduction to Statistical Methods, 5 ECTS. For students who enrolled during the 2020-2021 and who enroll for the 2021-22 academic year, the complementary course Introduction to Statistical Methods can be replaced by the course Computational Methods and Principles of Bayesian Inference, 5 ECTS, for which materials in English (lecture notes, exercises) are provided for independent studying and exams.
DATA.STAT.440 Statistical Inference 1, 5 ECTS
COMP.CS.300 Data Structures and Algorithms 1, 5 ECTS
Please note that C++ skills are required for Data Structures and Algorithms 1. The student should also be familiar or become familiar with basic mathematics including basic vector and matrix operations.
Note also that some of the course units listed above are mainly lectured in Finnish. Materials in English (lecture notes, exercises) are provided for independent studying and exams.
Structure of studies
Master of Science degree (120 ECTS) consists of the following studies
- 50 ECTS advanced studies of the student’s specialisation
- 30 ECTS master's thesis on a topic inside the specialisation
- 40 ECTS other studies including free choice studies, joint studies like orientation and language studies, and possible complementary studies.
The Data Science (M.Sc.) specialisation features several similar topic areas as the Statistical Data Analytics specialisation, but the Data Science (M.Sc.) specialisation places more emphasis on algorithmic and computational aspects of data science and artificial intelligence.
After completing the Data Science specialisation the student will have the skills and knowledge to
choose suitable data analysis methods for the analysis tasks at hand from a reasonably wide selection of computational and statistical methods, including methods that are necessary for integrating data from different data sources during data preprocessing and/or analysis
understand the algorithmic and computational aspects of the methods
apply these methods to analyse data and interpret results critically
use efficient computational and statistical methods to manage and analyse big data, including computational algorithms such as efficient parallel computing, optimization approaches, and deep neural networks and a variety of statistical modeling approaches such as classification, regression, and Bayesian analysis
visualise the data / analysis results
apply the analysis methods in new situations
understand how well the methods may perform in different situations.