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Data Collection and ProcessingLaajuus (5 cr)

Code: 5Y00FD86

Credits

5 op

Objectives

The student knows what is meant by data collected for data analysis and artificial intelligence. The student knows the techniques used to collect data and is able to solve the challenges related to data collection and processing. The student is able to collect and process data in his / her field for analysis and utilization of artificial intelligence.

Content

Data collection and storage technologies. Methods for combining and processing data. Data collection and preparation for follow-up. Examining various scenarios for collecting and processing data in the student's field of expertise.

Assessment criteria, satisfactory (1-2)

The student knows some data collection and storage techniques suitable for his / her field. The student is able to use some data combining and processing method in the preparation of data in his / her field. The student is able to design a data collection and processing scenario for his / her field.

Assessment criteria, good (3-4)

The student knows the most commonly used data collection and storage techniques. The student can use the most common data combining and processing methods in the preparation of data in his / her field. The student is able to design various data collection and processing scenarios in his / her field.

Assessment criteria, excellent (5)

The student is familiar with various data collection and storage techniques. The student is able to use various methods of data combining and processing in the preparation of data in his / her field. The student will be able to design various data collection and processing scenarios in his / her field.

Enrolment period

22.11.2023 - 29.01.2024

Timing

01.01.2024 - 09.06.2024

Credits

5 op

Mode of delivery

Contact teaching

Unit

MD in Data Expertise and Artificial Intelligence

Campus

TAMK Main Campus

Teaching languages
  • Finnish
Degree programmes
  • Master's Degree Programme in Data Expertise and Artificial Intelligence
Teachers
  • Pekka Pöyry
Person in charge

Pekka Pöyry

Groups
  • 24YDT
  • 24YDS
  • 24YDL

Objectives (course unit)

The student knows what is meant by data collected for data analysis and artificial intelligence. The student knows the techniques used to collect data and is able to solve the challenges related to data collection and processing. The student is able to collect and process data in his / her field for analysis and utilization of artificial intelligence.

Content (course unit)

Data collection and storage technologies. Methods for combining and processing data. Data collection and preparation for follow-up. Examining various scenarios for collecting and processing data in the student's field of expertise.

Assessment criteria, satisfactory (1-2) (course unit)

The student knows some data collection and storage techniques suitable for his / her field. The student is able to use some data combining and processing method in the preparation of data in his / her field. The student is able to design a data collection and processing scenario for his / her field.

Assessment criteria, good (3-4) (course unit)

The student knows the most commonly used data collection and storage techniques. The student can use the most common data combining and processing methods in the preparation of data in his / her field. The student is able to design various data collection and processing scenarios in his / her field.

Assessment criteria, excellent (5) (course unit)

The student is familiar with various data collection and storage techniques. The student is able to use various methods of data combining and processing in the preparation of data in his / her field. The student will be able to design various data collection and processing scenarios in his / her field.

Assessment scale

0-5

Enrolment period

15.11.2021 - 23.01.2022

Timing

01.01.2022 - 08.05.2022

Credits

5 op

Mode of delivery

Contact teaching

Unit

MD in Data Expertise and Artificial Intelligence

Campus

TAMK Main Campus

Teaching languages
  • Finnish
Degree programmes
  • Master's Degree Programme in Data Expertise and Artificial Intelligence
Teachers
  • Esa Kujansuu
  • Pekka Pöyry
Person in charge

Esa Kujansuu

Groups
  • 22YDT

Objectives (course unit)

The student knows what is meant by data collected for data analysis and artificial intelligence. The student knows the techniques used to collect data and is able to solve the challenges related to data collection and processing. The student is able to collect and process data in his / her field for analysis and utilization of artificial intelligence.

Content (course unit)

Data collection and storage technologies. Methods for combining and processing data. Data collection and preparation for follow-up. Examining various scenarios for collecting and processing data in the student's field of expertise.

Assessment criteria, satisfactory (1-2) (course unit)

The student knows some data collection and storage techniques suitable for his / her field. The student is able to use some data combining and processing method in the preparation of data in his / her field. The student is able to design a data collection and processing scenario for his / her field.

Assessment criteria, good (3-4) (course unit)

The student knows the most commonly used data collection and storage techniques. The student can use the most common data combining and processing methods in the preparation of data in his / her field. The student is able to design various data collection and processing scenarios in his / her field.

Assessment criteria, excellent (5) (course unit)

The student is familiar with various data collection and storage techniques. The student is able to use various methods of data combining and processing in the preparation of data in his / her field. The student will be able to design various data collection and processing scenarios in his / her field.

Assessment scale

0-5