Data Analytics (5 cr)
Code: R504D65-3001
General information
- Enrollment
- 04.10.2021 - 25.12.2021
- Registration for the implementation has ended.
- Timing
- 28.02.2022 - 31.05.2022
- Implementation has ended.
- Number of ECTS credits allocated
- 5 cr
- Local portion
- 5 cr
- Mode of delivery
- Contact learning
- Unit
- Bachelor of Engineering, Information Technology
- Teaching languages
- English
- Teachers
- Jyri Kivinen
- Tuomas Valtanen
- Teacher in charge
- Tuomas Valtanen
- Groups
-
R54D21SBachelor of Engineering, Machine Learning and Data Engineering (full time studies), 2021
- Course
- R504D65
Evaluation scale
H-5
Objective
The student knows the features of selected data analysis libraries and knows how to apply them in data preparation and statistical analysis. The student knows how to prepare data for machine learning algorithms.
Content
- Data preparation
- Data visualization
- Data analysis
- Data management
- Data analytics libraries and modules
Location and time
Lapland University of Applied Sciences, Rantavitikka Campus, 10.1.2022 - 30.4.2022.
Materials
Lecture materials and exercises are available on OneDrive/Git or other cloud service. Links to the materials can be found in the Moodle workspace.
Recommended reading:
Deitel P & Deitel H. 2019. Intro to Python for Computer Science and Data Science: Learning to Program with AI, Big Data and the Cloud. 1st edition. Pearson Education
McKinney W. 2017. Python for Data Analysis: Data Wrangling with Pandas, NumPy, and IPython. 2nd edition. O'Reilly
Nelli F. 2018. Python Data Analytics: With Pandas, NumPy, and Matplotlib. 2nd Edition. Apress
Teaching methods
Lectures, examples, exercises and self-supervised work.
Exam schedules
No preset dates for re-examinations. Re-examinations can be agreed on with the teacher case by case.
Assessment criteria, satisfactory (1)
The student knows how to prepare and modify example data for machine learning algorithms.
Assessment criteria, good (3)
The student can select pertinent data preparation methods for given data and modify the data so that it can be used by machine learning algorithms.
Assessment criteria, excellent (5)
The student can select the most pertinent data preparation methods for given data and modify the data so that it can be used by machine learning algorithms.