Skip to main content

Data Analytics with PythonLaajuus (5 cr)

Code: DT10074

Credits

5 op

Teaching language

  • English

Responsible person

  • Radu Mariescu-Istodor
  • Jyri Kemppainen

Objective

You learn how to effectively analyse and visualize data with Python.

Content

- Python libraries for data science
- Necessary probability and statistics

Qualifications

- You master Python programming language, or
- You have completed Programming Essentials in Python
- You have a basic understanding of mathematics, statistics, and data science

Enrollment

01.08.2023 - 01.10.2023

Timing

05.10.2023 - 01.12.2023

Number of ECTS credits allocated

5 op

Virtual portion

5 op

Mode of delivery

Distance learning

Campus

Wärtsilä Campus Karjalankatu 3

Teaching languages
  • English
Seats

5 - 30

Degree programmes
  • Open University of Applied Sciences Studies
  • Degree Programme in Business Information Technology
Teachers
  • Radu Mariescu-Istodor
Teacher in charge

Radu Mariescu-Istodor

Scheduling groups
  • Avoimen opiskelijat (Size: 10. Open UAS: 10.)
  • Tutkinto-opiskelijat (Size: 0. Open UAS: 0.)
Groups
  • TOP23_24
    Other Complimentary Studies Group Semester 2023-2024
  • KAKS23
    Karelia, Open UAS, All, Fall, 2023
Small groups
  • Open UAS students
  • Degree students

Objective

You learn how to effectively analyse and visualize data with Python.

Content

- Python libraries for data science
- Necessary probability and statistics

Location and time

Online lectures and exercises:
05.10.2023 08.15 - 09.45
09.10.2023 10.45 - 12.15
11.10.2023 10.45 - 12.15
23.10.2023 13.15 - 14.45
25.10.2023 09.00 - 10.30
30.10.2023 14.15 - 15.45
01.11.2023 14.00 - 15.30
07.11.2023 10.15 - 11.45
09.11.2023 11.30 - 13.00
13.11.2023 10.15 - 11.45

Teaching methods

Course grading is based on continuous evaluation through weekly assignments
- Assignments are graded from 0 to 5, and the course grade is the average grade from these assignments.
The minimum grade for passing the course is 1

Student workload

- Lectures and exercises 20h
- Self-study 100h

Further information

- You master Python programming language, or
- You have completed Programming Essentials in Python
- You have a basic understanding of mathematics, statistics, and data science

Evaluation scale

H-5

Qualifications

- You master Python programming language, or
- You have completed Programming Essentials in Python
- You have a basic understanding of mathematics, statistics, and data science

Enrollment

01.10.2022 - 18.12.2022

Timing

04.01.2023 - 13.03.2023

Number of ECTS credits allocated

5 op

Virtual portion

5 op

Mode of delivery

Distance learning

Unit

Information and Communication Technologies (DATA)

Campus

Wärtsilä Campus Karjalankatu 3

Teaching languages
  • English
Seats

20 - 40

Degree programmes
  • Degree Programme in Business Information Technology
Teachers
  • Radu Mariescu-Istodor
  • Jyri Kemppainen
Teacher in charge

Jyri Kemppainen

Scheduling groups
  • Pienryhmä (schedulingGroup) 1 (Size: 20. Open UAS: 20.)
  • Pienryhmä (schedulingGroup) 2 (Size: 10. Open UAS: 0.)
Groups
  • KAKK23
    Karelia, Open UAS, All, Spring, 2023
  • KAKS22
    Karelia, Open UAS, All, Fall, 2022
  • TOP22_23
    Other Complimentary Studies Group Semester 2022-2023
  • KADS22SO
Small groups
  • Pienryhmä (schedulingGroup) 1
  • Pienryhmä (schedulingGroup) 2

Objective

You learn how to effectively analyse and visualize data with Python.

Content

- Python libraries for data science
- Necessary probability and statistics

Further information

- Lectures and exercises 35h
- Self-study 100h

Starting level:
- You master Python programming language, or
- You have completed Programming Essentials in Python
- You have a basic understanding of mathematics, statistics, and data science

Evaluation scale

H-5

Assessment methods and criteria

Course grading is based on continuous evaluation through weekly assignments
- Assignments are graded from 0 to 5, and the course grade is the average grade from these assignments.
The minimum grade for passing the course is 1

Qualifications

- You master Python programming language, or
- You have completed Programming Essentials in Python
- You have a basic understanding of mathematics, statistics, and data science