The course syllabus contains changes
See changesCourse syllabus adopted 2023-02-08 by Head of Programme (or corresponding).
Overview
- Swedish nameAvancerade teman i maskininlärning
- CodeDAT440
- Credits7.5 Credits
- OwnerMPDSC
- Education cycleSecond-cycle
- Main field of studyComputer Science and Engineering, Software Engineering
- DepartmentCOMPUTER SCIENCE AND ENGINEERING
- GradingTH - Pass with distinction (5), Pass with credit (4), Pass (3), Fail
Course round 1
The course round is cancelled. For further questions, please contact the director of studies- Teaching language English
- Application code 87124
- Maximum participants100
- Minimum participants10
- Block schedule
- Open for exchange studentsNo
- Only students with the course round in the programme overview.
Credit distribution
Module | Sp1 | Sp2 | Sp3 | Sp4 | Summer | Not Sp | Examination dates |
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0120 Written and oral assignments 3.5 c Grading: UG | 3.5 c | ||||||
0220 Examination 4 c Grading: TH | 4 c |
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In programmes
- MPALG - COMPUTER SCIENCE - ALGORITHMS, LANGUAGES AND LOGIC, MSC PROGR, Year 1 (compulsory elective)
- MPDSC - DATA SCIENCE AND AI, MSC PROGR, Year 1 (compulsory elective)
Examiner
- Morteza Haghir Chehreghani
- Professor, Data Science and AI, Computer Science and Engineering
Eligibility
General entry requirements for Master's level (second cycle)Applicants enrolled in a programme at Chalmers where the course is included in the study programme are exempted from fulfilling the requirements above.
Specific entry requirements
English 6 (or by other approved means with the equivalent proficiency level)Applicants enrolled in a programme at Chalmers where the course is included in the study programme are exempted from fulfilling the requirements above.
Course specific prerequisites
To be eligible for the course, a student must have passed a minimum of the following courses:- 7.5 credits of programming (Python experience desirable but not absolutely required)
- 7.5 credits of a data structures and/or algorithms
- 7.5 credits of basic probability and statistics
- 7.5 credits of calculus
- 7.5 credits of linear algebra
- 7.5 credits of basic machine learning (for example TDA233, MVE440, DAT340)
Aim
This course will focus on advanced topics in machine learning, in order to provide a deep understading of the modern machine learning areas. The students will learn sophisticated machine learning models which are commonly used in real-world applications, and also will learn how to analyze and understand in depth the advanced machine learning models.Learning outcomes (after completion of the course the student should be able to)
- to learn about modern and advanced machine learning methods and analyze them in different situations
- to read and understand state-of-the-art scientific articles in the field
- to propose and employ suitable models for the complex machine learning tasks
- to be prepared for research and development of advanced machine learning methods
Content
The course content is the following:
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Organisation
Lectures and assignments.Literature
See course homepage.Examination including compulsory elements
The course is examined by assignments and a written hall examination.
The course examiner may assess individual students in other ways than what is stated above if there are special reasons for doing so, for example if a student has a decision from Chalmers on educational support due to disability.
The course syllabus contains changes
- Changes to module:
- 2023-05-23: Digital exam Changed to digital exam by vana
[0220 Examination 4,0 credit] Changed to digital examination
- 2023-05-23: Digital exam Changed to digital exam by vana
- Changes to course rounds:
- 2023-05-23: Cancelled Changed to cancelled by UOL
[Course round 1] Cancelled
- 2023-05-23: Cancelled Changed to cancelled by UOL