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Fundamentals of Data Science and Machine Learning (5 cr)

Code: IT00EW28-3003

General information


Enrollment
21.09.2024 - 18.10.2024
Registration for the implementation has ended.
Timing
21.10.2024 - 15.12.2024
Implementation has ended.
Number of ECTS credits allocated
5 cr
Local portion
5 cr
Mode of delivery
On-campus
Unit
(2019-2024) School of ICT
Campus
Karaportti 2
Teaching languages
English
Seats
0 - 45
Degree programmes
Master's Degree Programme in Information Technology
Teachers
Peter Hjort
Teacher in charge
Ville Jääskeläinen
Groups
T1624S6-N
Information Technology (MEng): Networking and Services
Course
IT00EW28

Implementation has 9 reservations. Total duration of reservations is 30 h 30 min.

Time Topic Location
Wed 23.10.2024 time 17:00 - 20:30
(3 h 30 min)
Datatieteen ja koneoppimisen perusteet IT00EW28-3003
KMD550 Oppimistila
Wed 30.10.2024 time 17:00 - 20:30
(3 h 30 min)
Datatieteen ja koneoppimisen perusteet IT00EW28-3003
KMD550 Oppimistila
Wed 06.11.2024 time 17:00 - 20:30
(3 h 30 min)
Datatieteen ja koneoppimisen perusteet IT00EW28-3003
KMD550 Oppimistila
Wed 13.11.2024 time 17:00 - 20:30
(3 h 30 min)
Zoom - Datatieteen ja koneoppimisen perusteet IT00EW28-3003
Wed 20.11.2024 time 17:00 - 20:30
(3 h 30 min)
Datatieteen ja koneoppimisen perusteet IT00EW28-3003
KMD550 Oppimistila
Wed 27.11.2024 time 17:00 - 20:30
(3 h 30 min)
Datatieteen ja koneoppimisen perusteet IT00EW28-3003
KMD550 Oppimistila
Wed 04.12.2024 time 17:00 - 20:30
(3 h 30 min)
Datatieteen ja koneoppimisen perusteet IT00EW28-3003
KMD550 Oppimistila
Wed 11.12.2024 time 17:00 - 20:30
(3 h 30 min)
Datatieteen ja koneoppimisen perusteet IT00EW28-3003
KMD550 Oppimistila
Mon 16.12.2024 time 17:30 - 20:00
(2 h 30 min)
resit exams Fundamentals of Data Science and Machine Learning IT00EW28-3003
KMD550 Oppimistila
Changes to reservations may be possible.

Objective

After completing the course the student has an understanding of the methods and Python packages for processing, visualising and analysing data for data science and machine learning applications. The student is able to use data coming from different sources in different formats, perform basic statistical analysis of data and visualise it. Basic tasks in creating models to make predictions based on data will also become familiar.

Content

• Python programming language and its use in processing data
• Tools for the analysis and visualisation of data, basic statistical methods
• Building models for making predictions

Evaluation scale

0-5

Assessment criteria, satisfactory (1)

The student understands the methods and tools for data science and machine learning and is able to apply them in most typical settings.

Assessment criteria, good (3)

In addition to satisfactory criteria, the student demonstrates ability to solve some more demanding problems in the field. The student has a fair understanding of the limitations of the methods and models.

Assessment criteria, excellent (5)

In addition to good criteria, the student is able to apply new knowledge to data science and machine learning tasks. They understand the limitations of the methods and are able to critically assess the outcomes.

Qualifications

No requirements

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