Data Analytics (5 cr)
Code: RDI2HM102-3032
Basic information of implementation
- Enrollment
- 02.06.2025 - 15.08.2025
- Enrollment for the implementation has begun.
- Timing
- 18.08.2025 - 12.12.2025
- The implementation has not yet started.
- ECTS Credits
- 5 cr
- Campus
- Pasila Campus
- Teaching languages
- English
- Seats
- 31 - 60
- Degree programmes
- ATBUM Degree Programme in Aviation and Tourism Business
- LEBUM Degree Programme in Leading Business Transformation
- BUTEM Degree Programme in Business Technologies
- STROME Degree Programme in Strategising in Organisations
- AVBUM Degree Programme in Sustainable Aviation Business
- HOSBUM Degree Programme in Tourism and Hospitality Business
- Teachers
- Juha Nurmonen
- Groups
-
MAICTEInformation Services and Systems, Masters, Pasila
-
MALEAELeadership and Human Resource Management, Masters, Pasila
-
YAMKE1BUTMasters, Business Technologies and Management, semester 1
-
MASALELeading Sales and Customer Experience, Masters, Pasila
-
EVENINGEvening implementation
-
MADIGEDigital Business Opportunities, Masters, Pasila
-
MASTREStrategic Thinking and Leadership, Masters, Pasila
-
EXCHEXCH Exchange students
-
ONLINEOnline implementation
-
MACOMECommunication and Marketing Management, master, Pasila
- Course
- RDI2HM102
Evaluation scale
H-5
Schedule
The course has weekly lessons according to the timetable. A detailed weekly timetable will be made available on the Moodle learning environment if the Director of Studies decides to start this implementation. The timetable for the returnable learning assignments will follow the lecture timetable.
Implementation methods, demonstration and Work&Study
Depending on the implementation, learning takes place in contact lessons, as independent studies, teamwork and online-studies. Implementations can include literature, assignments, R&D co-operation and company projects. The course includes the assessment of one’s own learning.
Recognition of prior learning (RPL)
If students have acquired the required competence in previous work tasks, recreational activities or on another course, they can show their competence via a demonstration. The demonstration must be agreed with the course teacher. More information and instructions for recognising and validating prior learning (RPL) are available at https://www.haaga-helia.fi/en/recognition-learning Look at "Instructions to students (master)"
Intro
In modern organizations, information is a crucial tool for management. Data analytics is a means of refining information for business needs. The objective of this course is to understand the process and methods of data analytics and to be able to apply them through practical examples. This course does not require prior programming skills.
Materials
The learning material is mainly distributed through the Moodle learning environment. The course brings together the main techniques needed for the fundamentals of data analytics. It also provides tools for applied analytics research or thesis work. Such issues are constantly changing and the course will mainly make use of teachers’ and otherwise up-to-date material.
Teaching methods and instruction
The course has lessons every week. The lessons cover the basics of data analytics applications using Python coding.
The course implementation welcomes independent study of topics with the help of ready-made examples and videos, within the guidelines of the Haaga-Helia University of Applied Sciences.
No previous experience in coding is required.
Working life connections
The course implementations are designed for students who are about to enter work life or are already working there. The course content takes into account the content used in the field.
Exam dates and re-exam possibilities
The organisations of exam and retake will be agreed together with the course participants.
The exam will be held at the end of the course on a date to be agreed with the participants in the implementation. The date of the re-examination will also be mutually agreed with the participants of the implementation.
The exam and retakes are organised in Pasila and participants are expected to be present; particularly the identity of the examiner will be verified.
In the tests, the author has extensive access to materials and to modern programming environment. It is therefore not possible to conduct the test as an Exam examination
Internationality
Data analytics skills are international skills. Methodological expertise is international.
Completion alternatives
There are no shortcuts to learning, and doing the work is essential. Other ways of obtaining a grade in the Haaga-Helia University of Applied Sciences credit register should be requested from the teacher responsible for the course.
Learning assignments
The topics presented in the lectures are learned by doing related exercises. Assignments will be returned regularly during the course, every one or two weeks. Assignments will be given and returned via Moodle.
Assignments will cover the following topics: descriptive analytics, explanatory analytics, time series and time series forecasting, predictive analytics and basics of machine learning models.
Assessment methods
The determination of the implementation grade will be announced at the beginning of the implementation.