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Blekinge Institute of Technology
Department of Software Engineering
Revision: 2
Reg.no: BTH-4.1.14-1190-2024
Machine Learning Engineering
Machine Learning Engineering
6 credits (6 högskolepoäng)
Course code: PA2595
Main field of study: Software Engineering, Computer Science
Disciplinary domain: Technology
Education level: Second-cycle
Specialization: A1N - Second cycle, has only first-cycle course/s as entry requirements
Language of instruction: English
Applies from: 2024-11-01
Approved: 2024-11-01
This course is established by Dean 2023-02-15. The course syllabus is approved by Head of Department of Software Engineering 2024-11-01 and applies from 2024-11-01.
Admission to the course requires at least 120 credits, of which at least 90 credits are in a technical area, and a minimum of 2 years professional experience within an area related to software-intensive product and/or service development (shown by, for example, a work certificate from an employer).
The theoretical and practical aspects of applied machine learning are themselves clearly challenging to master. However, even the mastery of these aspects does not prepare one to build interfaces between the model solution and the real world. Moreover, it does not inform development patterns that ensure maintainable and reliable solutions that work as expected and according to specification. The aim of this course is to introduce students to a general machine learning engineering framework, and to provide them with the necessary knowledge and skills to efficiently create maintainable machine learning systems of high quality.
The course is divided into two sequential building blocks: I) the ideation, planning, researching, testing, and evaluation of prototype machine learning systems, and II) the creation of maintainable machine learning systems using principles of modularity and standards, and the writing of production code and testing on production infrastructure.
The following learning outcomes are examined in the course:
On completion of the course, the student will be able to:
On completion of the course, the student will be able to:
On completion of the course, the student will be able to:
The teaching is organized around online lectures and student-led scientific seminars. The students are expected to participate in the seminars actively. The theoretical knowledge and practical skills attained are used as a basis to work on the course assessments. Throughout the course, communication, feedback, and discussions with teachers and fellow participants will take place through email and the course’s online learning platform.
Modes of examinations of the course
Code | Module | Credit | Grade |
2405 | Seminar | 1.5 credits | GU |
2415 | Presentation | 0.5 credits | GU |
2425 | Project | 4 credits | AF |
The course will be graded G Pass, UX Failed result, a little more work required, U Fail.
The examiner may carry out oral follow-up of written examinations.
The information before a course occasion states the assessment criteria and make explicit in which modes of examination that the learning outcomes are assessed.
An examiner can, after consulting the Disability Advisor at BTH, decide on a customized examination form for a student with a long-term disability to be provided with an examination equivalent to one given to a student who is not disabled.
The course evaluation should be carried out in line with BTH:s course evaluation template and process.
The course can form part of a degree but not together with another course the content of which completely or partly corresponds with the contents of this course.
Wilson, Ben (2022). Machine Learning Engineering in Action. Shelter Island, New York: Manning Publications. 554 pages.
This is not a legal document. If you would like a copy of the legal decision regarding this course plan, contact the registrar at Blekinge Institute of Technology.