Data Analysis (4 cr)
Code: TTIW0300-3001
General information
- Enrollment
-
02.11.2020 - 30.11.2020
Registration for the implementation has ended.
- Timing
-
11.01.2021 - 30.04.2021
Implementation has ended.
- Number of ECTS credits allocated
- 4 cr
- Local portion
- 0 cr
- Virtual portion
- 4 cr
- Mode of delivery
- Online learning
- Unit
- School of Technology
- Campus
- Lutakko Campus
- Teaching languages
- Finnish
- Seats
- 0 - 32
- Degree programmes
- Bachelor's Degree Programme in Information and Communications Technology
- Teachers
- Pekka Varis
- Groups
-
TTV19S1Tieto- ja viestintätekniikka
-
TTV19S3Tieto- ja viestintätekniikka
-
TTV19S2Tieto- ja viestintätekniikka
-
TTV19S5Tieto- ja viestintätekniikka
- Course
- TTIW0300
Evaluation scale
0-5
Objective
The student understands the significance of data analytics in digitalized operating environment and refining Big data into exploitable form. The student knows the most common methods of data analytics and is able to apply them in practice to existing data.
Content
Data Analytics
- basics
- open data and Mydata
- the common methods
- application of the methods to practice
Location and time
Opintojakso toteutetaan 11.1.2021 - 30.4.2021.
Materials
Materiaali ja harjoitustehtävät Optimassa.
Teaching methods
Verkkoluennot ja -ohjaus, itsenäinen työskentely ja verkkotyöskentely.
Employer connections
Kurssin sisältö pyritään kytkemään työelämässä esiintyviin ongelmiin.
Completion alternatives
Hyväksilukemisen menettelytavat kuvataan tutkintosäännössä ja opinto-oppaassa. Opintojakson opettaja antaa lisätietoa mahdollisista opintojakson erityiskäytänteistä.
Student workload
Itsenäistä opiskelua 108 h.
Assessment criteria, satisfactory (1)
Sufficient: The student knows the most common techniques used in data analysis tasks. They are able to apply the most common techniques to data analysis and assess their implementation briefly.
Satisfactory 2: The student knows the most common techniques used in data analysis tasks. They are able to choose the techniques for data analysis and apply their technical competence in practice. Additionally, the student is able to assess their implementation superficially.
Assessment criteria, good (3)
Good 3: The student recognizes the benefits of data analytics in utilizing Big data and in the era of digitalization. The student knows the most commonly used techniques in various data analysis tasks. They are able to justify and choose the techniques for data analysis and apply their technical competence to practice. Additionally, the student is able to assess their implementation and justify its development.
Very good 4: The student recognizes the benefits of data analytics in utilizing Big data and in the era of digitalization. The student knows the most commonly used techniques in various data analysis tasks and is able to versatilely justify and choose the correct techniques for data analysis and apply their technical competence to practice. Additionally, the student is able to assess their implementation thoroughly and justify its development.
Assessment criteria, excellent (5)
Excellent 5: The student recognizes the benefits of data analytics in utilizing Big data and in the era of digitalization.The student knows the most commonly used techniques and is able to critically justify the use of the techniques in various data analysis tasks. The student is able to critically justify and select the correct techniques for data analysis regardless of the analyzed data. Additionally, the student is able to assess their technical competence in practice as well as assess their implementation critically and justify its development.
Qualifications
Applies to degree students: the students should have basic skills in Python programming
Further information
Opintojakso arvioidaan harjoitustehtävistä kerättävien pisteiden perusteella.