Artificial Intelligence, Machine Learning, Human - Machine InteractionLaajuus (5 cr)
Code: AMO22AI01
Credits
5 op
Objective
The Student
- has an basic understanding of AI and the history of AI.
- has knowledge of where AI is used and its development today.
- has an basic understanding of different machine learning algorithms and their future possibilities
- can recognize different inputs used in AI and machine learning
- recognises the possibilities to get information and data from different systems and how Human - Machine Interaction is adapted in autonomous vessels
Content
- Administrative matters
- Computational thinking and algoritms - What is computing? Algorithms and complexity
- Introduction to AI and Autonomy - What is AI? How do you define Autonomy?
- Agents and Search - How to solve problems with “Good old-fashioned AI”
- Introduction to Machine Learning - Overview of ML, Risks and Problems with ML
- Supervised learning - Basic supervised learning through regression
- Machine vision - Deep neural networks, Image segmentation, Image detection, Image recognition
- Reinforcement learning - Reinforcement learning as search, Autonomy and reinforcement learning
- Industrial Internet - What is IoT? What is a Digital Twin?
- Sensors and Sensor fusion - Situational awareness, LIDAR, IR, GNSS and IMU’s
- Autonomy and Safety - Software safety, Liability, Accountability
Qualifications
No prerequisites.
Assessment criteria, satisfactory (1)
Sufficient 1
Theory and methodology are poorly understood and implemented in Autonomous Maritime Operation related tasks/ assignments.
Research, communication and documentation are hardly acceptable.
Active participation.
Satisfactory 2
Appear to grasp theory and have made a start in showing its applicability in Autonomous Maritime Operation related tasks/ assignments. Research, communication and documentation are acceptable.
Active participation.
Assessment criteria, good (3)
Good 3
Understanding of theory and applicability of methods in Autonomous Maritime Operation related tasks/ assignments, but work could be stronger.
Research, service design, communication and documentation are good.
Active participation.
Very Good 4
General understanding of theory and methods, very good implementation in Autonomous Maritime Operation related tasks/ assignments.
Reliable research, innovative service design and communication and documentation on good level.
Very active participation.
Assessment criteria, excellent (5)
Excellent 5
Mastery of theory and methods, proficiency of implementation of them in Autonomous Maritime Operation related tasks/ assignments.
Outstanding research, innovative service design and excellent communication and documentation.
Very active participation.
Materials
The study material will be provided by the lecturer.
The student finds necessary materials and references for assignments and group works.
Enrollment
31.08.2024 - 05.02.2025
Timing
06.02.2025 - 31.07.2025
Number of ECTS credits allocated
5 op
Mode of delivery
Contact teaching
Unit
Faculty of Technology and Seafaring
Teaching languages
- English
Teachers
- Johan Westö
Groups
-
AMO24H-ÅAutonomous Maritime Operations, 2024
Objective
The Student
- has an basic understanding of AI and the history of AI.
- has knowledge of where AI is used and its development today.
- has an basic understanding of different machine learning algorithms and their future possibilities
- can recognize different inputs used in AI and machine learning
- recognises the possibilities to get information and data from different systems and how Human - Machine Interaction is adapted in autonomous vessels
Content
- Administrative matters
- Computational thinking and algoritms - What is computing? Algorithms and complexity
- Introduction to AI and Autonomy - What is AI? How do you define Autonomy?
- Agents and Search - How to solve problems with “Good old-fashioned AI”
- Introduction to Machine Learning - Overview of ML, Risks and Problems with ML
- Supervised learning - Basic supervised learning through regression
- Machine vision - Deep neural networks, Image segmentation, Image detection, Image recognition
- Reinforcement learning - Reinforcement learning as search, Autonomy and reinforcement learning
- Industrial Internet - What is IoT? What is a Digital Twin?
- Sensors and Sensor fusion - Situational awareness, LIDAR, IR, GNSS and IMU’s
- Autonomy and Safety - Software safety, Liability, Accountability
Evaluation scale
H-5
Assessment criteria, satisfactory (1)
Sufficient 1
Theory and methodology are poorly understood and implemented in Autonomous Maritime Operation related tasks/ assignments.
Research, communication and documentation are hardly acceptable.
Active participation.
Satisfactory 2
Appear to grasp theory and have made a start in showing its applicability in Autonomous Maritime Operation related tasks/ assignments. Research, communication and documentation are acceptable.
Active participation.
Assessment criteria, good (3)
Good 3
Understanding of theory and applicability of methods in Autonomous Maritime Operation related tasks/ assignments, but work could be stronger.
Research, service design, communication and documentation are good.
Active participation.
Very Good 4
General understanding of theory and methods, very good implementation in Autonomous Maritime Operation related tasks/ assignments.
Reliable research, innovative service design and communication and documentation on good level.
Very active participation.
Assessment criteria, excellent (5)
Excellent 5
Mastery of theory and methods, proficiency of implementation of them in Autonomous Maritime Operation related tasks/ assignments.
Outstanding research, innovative service design and excellent communication and documentation.
Very active participation.
Qualifications
No prerequisites.
Enrollment
02.12.2023 - 31.12.2023
Timing
01.01.2024 - 31.07.2024
Number of ECTS credits allocated
5 op
Mode of delivery
Contact teaching
Unit
Faculty of Technology and Seafaring
Teaching languages
- English
Degree programmes
- Degree Programme in Autonomous Maritime Operations
Teachers
- Johan Westö
Groups
-
AMO23HP-ÅAutonomous Maritime Operations, Part-time studies, 2023
Objective
The Student
- has an basic understanding of AI and the history of AI.
- has knowledge of where AI is used and its development today.
- has an basic understanding of different machine learning algorithms and their future possibilities
- can recognize different inputs used in AI and machine learning
- recognises the possibilities to get information and data from different systems and how Human - Machine Interaction is adapted in autonomous vessels
Content
- Administrative matters
- Computational thinking and algoritms - What is computing? Algorithms and complexity
- Introduction to AI and Autonomy - What is AI? How do you define Autonomy?
- Agents and Search - How to solve problems with “Good old-fashioned AI”
- Introduction to Machine Learning - Overview of ML, Risks and Problems with ML
- Supervised learning - Basic supervised learning through regression
- Machine vision - Deep neural networks, Image segmentation, Image detection, Image recognition
- Reinforcement learning - Reinforcement learning as search, Autonomy and reinforcement learning
- Industrial Internet - What is IoT? What is a Digital Twin?
- Sensors and Sensor fusion - Situational awareness, LIDAR, IR, GNSS and IMU’s
- Autonomy and Safety - Software safety, Liability, Accountability
Evaluation scale
H-5
Assessment criteria, satisfactory (1)
Sufficient 1
Theory and methodology are poorly understood and implemented in Autonomous Maritime Operation related tasks/ assignments.
Research, communication and documentation are hardly acceptable.
Active participation.
Satisfactory 2
Appear to grasp theory and have made a start in showing its applicability in Autonomous Maritime Operation related tasks/ assignments. Research, communication and documentation are acceptable.
Active participation.
Assessment criteria, good (3)
Good 3
Understanding of theory and applicability of methods in Autonomous Maritime Operation related tasks/ assignments, but work could be stronger.
Research, service design, communication and documentation are good.
Active participation.
Very Good 4
General understanding of theory and methods, very good implementation in Autonomous Maritime Operation related tasks/ assignments.
Reliable research, innovative service design and communication and documentation on good level.
Very active participation.
Assessment criteria, excellent (5)
Excellent 5
Mastery of theory and methods, proficiency of implementation of them in Autonomous Maritime Operation related tasks/ assignments.
Outstanding research, innovative service design and excellent communication and documentation.
Very active participation.
Qualifications
No prerequisites.
Enrollment
02.12.2022 - 08.02.2023
Timing
09.02.2023 - 03.04.2023
Number of ECTS credits allocated
5 op
Mode of delivery
Contact teaching
Campus
Åbo, Hertig Johans parkgata 21
Teaching languages
- English
Degree programmes
- Degree Programme in Autonomous Maritime Operations
Teachers
- Johan Westö
Groups
-
AMO22HP-ÅAutonomous Maritime Operations, Part-time studies, 2022
Objective
The Student
- has an basic understanding of AI and the history of AI.
- has knowledge of where AI is used and its development today.
- has an basic understanding of different machine learning algorithms and their future possibilities
- can recognize different inputs used in AI and machine learning
- recognises the possibilities to get information and data from different systems and how Human - Machine Interaction is adapted in autonomous vessels
Content
- Administrative matters
- Computational thinking and algoritms - What is computing? Algorithms and complexity
- Introduction to AI and Autonomy - What is AI? How do you define Autonomy?
- Agents and Search - How to solve problems with “Good old-fashioned AI”
- Introduction to Machine Learning - Overview of ML, Risks and Problems with ML
- Supervised learning - Basic supervised learning through regression
- Machine vision - Deep neural networks, Image segmentation, Image detection, Image recognition
- Reinforcement learning - Reinforcement learning as search, Autonomy and reinforcement learning
- Industrial Internet - What is IoT? What is a Digital Twin?
- Sensors and Sensor fusion - Situational awareness, LIDAR, IR, GNSS and IMU’s
- Autonomy and Safety - Software safety, Liability, Accountability
Materials
Lecture materials
The intelligent systems institute @ Novia collects useful resources and study material related to AI and machine learning in our public GitHub repository:
https://github.com/NoviaIntSysGroup/resources-and-learning-material/blob/main/Study_Material.md
Teaching methods
Teaching methods:
- Lectures,
- Assignmets (coding, presentations, and reports),
Exam schedules
No exam, grade is based on course assignments.
Further information
The intelligent systems institute @ Novia provides instructions for installing relevant software and for setting up your own computer to work with machine learning projects in our public GitHub repository.
https://github.com/NoviaIntSysGroup/resources-and-learning-material
Evaluation scale
H-5
Assessment criteria, satisfactory (1)
Sufficient 1
Theory and methodology are poorly understood and implemented in Autonomous Maritime Operation related tasks/ assignments.
Research, communication and documentation are hardly acceptable.
Active participation.
Satisfactory 2
Appear to grasp theory and have made a start in showing its applicability in Autonomous Maritime Operation related tasks/ assignments. Research, communication and documentation are acceptable.
Active participation.
Assessment criteria, good (3)
Good 3
Understanding of theory and applicability of methods in Autonomous Maritime Operation related tasks/ assignments, but work could be stronger.
Research, service design, communication and documentation are good.
Active participation.
Very Good 4
General understanding of theory and methods, very good implementation in Autonomous Maritime Operation related tasks/ assignments.
Reliable research, innovative service design and communication and documentation on good level.
Very active participation.
Assessment criteria, excellent (5)
Excellent 5
Mastery of theory and methods, proficiency of implementation of them in Autonomous Maritime Operation related tasks/ assignments.
Outstanding research, innovative service design and excellent communication and documentation.
Very active participation.
Assessment methods and criteria
Pls see 'Study Unit Information'.
Qualifications
No prerequisites.