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Quantum Machine Learning, 6 credits
Kvantmaskininlärning, 6 hp
TSIT06
Main field of study
Computer Science and Engineering, Applied PhysicsCourse level
Second cycleCourse type
Programme courseEducation components
Preliminary scheduled hours: 0 hRecommended self-study hours: 160 h
Available for exchange students
YesECV = Elective / Compulsory / Voluntary
Course offered for | Semester | Period | Timetable module | Language | Campus | ECV | |
---|---|---|---|---|---|---|---|
6CYYY | Applied Physics and Electrical Engineering, Master of Science in Engineering | 9 (Autumn 2026) | 2 | 1 | Swedish/English | Linköping, Valla | E |
6CYYY | Applied Physics and Electrical Engineering, Master of Science in Engineering (Applied Physics - Theory, Modelling and Computation) | 9 (Autumn 2026) | 2 | 1 | Swedish/English | Linköping, Valla | E |
6CYYY | Applied Physics and Electrical Engineering, Master of Science in Engineering (Photonics and Quantum Technology) | 9 (Autumn 2026) | 2 | 1 | Swedish/English | Linköping, Valla | E |
The course syllabus is preliminary
Main field of study
Computer Science and Engineering, Applied PhysicsCourse level
Second cycleAdvancement level
A1FCourse offered for
- Master of Science in Applied Physics and Electrical Engineering
Intended learning outcomes
After completing the course the student should be able to:
- use relevant concepts and methods in quantum machine learning to formulate, structure and solve practical problems.
- infer the parameters in a number of common quantum machine learning models.
- evaluate and choose among models.
- implement quantum machine learning models and algorithms in a programming language.
Course content
- Introduction to machine learning, and introduction to quantum computers, a brief introduction to quantum mechanics
- Representation of classical data in quantum systems, coding and embedding, quantum data representation and quantum feature map
- Quantum algorithms for machine learning, quantum classifiers, quantum mechanical kernel methods, quantum clustering
- Quantum variational circuits, quantum neural networks, quantum convolutional neural networks (QCNNs), quantum federated learning (QFL), quantum reinforcement learning (QRL), kvantmekanisk multimodal inlärning
- Research directions in the area
- Applications of QML in language models, computer vision, health care, medicin design, transport, and intrusion detection
Examination
TEN1 | Written examination | 4 credits | U, 3, 4, 5 |
LAB1 | Labatory work | 2 credits | U, G |
Grades
Four-grade scale, LiU, U, 3, 4, 5Department
Institutionen för systemteknikCourse literature
Books
- Schuld & Petruccione, (2020) Machine Learning with Quantum Computers Springer
Code | Name | Scope | Grading scale |
---|---|---|---|
TEN1 | Written examination | 4 credits | U, 3, 4, 5 |
LAB1 | Labatory work | 2 credits | U, G |
Course literature is preliminary.
Books
Schuld & Petruccione, (2020) Machine Learning with Quantum Computers Springer
Note: The course matrix might contain more information in Swedish.
I = Introduce, U = Teach, A = Utilize
I | U | A | Modules | Comment | ||
---|---|---|---|---|---|---|
1. DISCIPLINARY KNOWLEDGE AND REASONING | ||||||
1.1 Knowledge of underlying mathematics and science (courses on G1X-level) |
|
|
X
|
Uses quantum mechanics, linear algebra, discrete mathematics |
||
1.2 Fundamental engineering knowledge (courses on G1X-level) |
|
|
|
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1.3 Further knowledge, methods and tools in any of : mathematics, natural sciences, engineering (courses at G2X level) |
|
|
X
|
Algorithms, error-correcting codes |
||
1.4 Advanced knowledge, methods and tools in any of: mathematics, natural sciences, engineering (courses at A1X level) |
X
|
X
|
|
TEN1
LAB1
|
In-depth study of machine learning algorithms and their evaluation, methods from advanced quantum mechanics and information processing |
|
1.5 Insight into current research and development work |
X
|
|
|
Current developments in the field, new research directions in the area |
||
2. PERSONAL AND PROFESSIONAL SKILLS AND ATTRIBUTES | ||||||
2.1 Analytical reasoning and problem solving |
|
X
|
|
TEN1
LAB1
|
Modeling of quantum mechanical systems |
|
2.2 Experimentation, investigation, and knowledge discovery |
|
X
|
X
|
LAB1
|
Experiment in a software environment that simulates or uses quantum systems |
|
2.3 System thinking |
|
|
|
|||
2.4 Attitudes, thought, and learning |
|
|
X
|
Own work in laborations etc. |
||
2.5 Ethics, equity, and other responsibilities |
|
|
|
|||
3. INTERPERSONAL SKILLS: TEAMWORK AND COMMUNICATION | ||||||
3.1 Teamwork |
|
|
X
|
Group laborations |
||
3.2 Communications |
|
|
|
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3.3 Communication in foreign languages |
|
|
X
|
Course literature, lectures, and lab instructions in English. |
||
4. CONCEIVING, DESIGNING, IMPLEMENTING AND OPERATING SYSTEMS IN THE ENTERPRISE, SOCIETAL AND ENVIRONMENTAL CONTEXT | ||||||
4.1 Societal conditions, including economically, socially and ecologically sustainable development |
X
|
|
|
Effects of new technology |
||
4.2 Enterprise and business context |
|
|
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4.3 Conceiving, system engineering and management |
X
|
|
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Limitations of quantum machine learning |
||
4.4 Designing |
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|
|
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4.5 Implementing |
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|
|
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4.6 Operating |
X
|
|
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Evaluation of claims in the area |
||
5. PLANNING, EXECUTION AND PRESENTATION OF RESEARCH DEVELOPMENT PROJECTS WITH RESPECT TO SCIENTIFIC AND SOCIETAL NEEDS AND REQUIREMENTS | ||||||
5.1 Societal conditions, including economically, socially and ecologically sustainable development within research or development projects |
X
|
|
|
Effects of new technology |
||
5.2 Economic conditions for research or development projects |
|
|
|
|||
5.3 Identification of needs, structuring and planning of research or development projects |
X
|
|
|
Limitations of quantum machine learning |
||
5.4 Execution of research or development projects |
|
|
|
|||
5.5 Presentation and evaluation of research or development projects |
X
|
|
|
Evaluation of claims in the area |
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