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Introduction to Data Analytics and Artificial Intelligence (3 cr)

Code: TTC2050-3025

General information


Timing
09.01.2024 - 11.02.2024
Implementation has ended.
Number of ECTS credits allocated
3 cr
Local portion
0 cr
Virtual portion
3 cr
Mode of delivery
Distance learning
Unit
School of Technology
Teaching languages
English
Degree programmes
Bachelor's Degree Programme in Information and Communications Technology
Bachelor's Degree Programme in Information and Communications Technology
Teachers
Antti Häkkinen
Groups
ZJA24KTIDA1
Avoin amk, Data-analytiikka 1, Verkko
Course
TTC2050

Materials

Opintojakson verkkosivut (luentomateriaali, harjoitukset, nauhoitetut videot)

Evaluation scale

0-5

Further information

Opintojakson arviointi muodostuu palautetuista harjoituksista.

Virtual portion

3

Student workload

Verkkoluentomateriaaliin tutustuminen 35h (nauhoitetut luennot, joissa opettajan johdolla tehtäviä harjoitteita)
Etäopiskelu 46h (harjoitukset)
Yhteensä 81h

Assessment criteria, satisfactory (1)

Sufficient 1: You recognize some of the most important methods, possibilities and applications of data analytics or programming environments used in them.

Satisfactory 2: You recognize some of the most important methods, possibilities and applications of data analytics and programming environments used in them.

Assessment criteria, good (3)

Good 3: You recognize the most important methods, possibilities and applications of data analytics and artificial intelligence and the programming environments used in them.

Very good 4: You recognize the most important methods, possibilities and applications of data analytics and artificial intelligence and the programming environments used in them. Additionally, you understand some principles of artificial intelligence methods.

Assessment criteria, excellent (5)

Excellent 5: You recognize the most important methods, possibilities and applications of data analytics and artificial intelligence and the programming environments used in them. Additionally, you understand the most important principles of artificial intelligence methods.

Teaching language

en

Teaching methods

Etäopiskelu (harjoitukset, luentomateriaaliin tutustuminen, nauhoitetut videot käytännön esimerkeistä)

Location and time

Verkossa

Number of ECTS credits allocated

3

Qualifications

Ohjelmoinnin perusteet

Content

Definitions of data analytics and artificial intelligence
Practical applications of artificial intelligence
Examples and principles of machine learning and neural networks
Data analytics programming languages and environments: Python, R, Anaconda, Pandas

Objective

Purpose and objectives:
The course gives you an overview of the methods of data analytics and artificial intelligence, their possibilities and applications as well as the most commonly used programming environments and libraries.

EUR-ACE Competences:
Knowledge and Understanding
Engineering Practice

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