Machine Learning Power Drives PhD - DTU Lyngby
DTU søger kandidater til PhD-stillinger inden for edge machine learning for højeffektive power converters og drives. Du skal have kendskab til computervidenskab og machine learning samt erfaring med programmering i Python, C++ eller MATLAB. Erfaring med elektroteknik er vigtig. Du skal kunne løse komplekse problemer i tværfaglige teams og kommunikere flydende på engelsk. En toårig mastergrad eller tilsvarende akademisk niveau er påkrævet. Stillingerne er treårige og fuldt finansierede. Ansøgningsfrist: 15. juni 2026.
ph.d., naturvidenskab og teknik stilling ved Danmarks Tekniske Universitet - Lyngby-Taarbæk, Region Hovedstaden
- Lyngby-Taarbæk, Region Hovedstaden
- Fuldtid
- Ordinaert
- 1 ledig stilling
- Ansøgningsfrist: 15. juni 2026
- Oprettet: 24. april 2026
Beskrivelse af jobtilbuddet for ph.d., naturvidenskab og teknik
Do you want to be involved in the green energy transition? Do you wish to contribute to the development of machine learning methods with real-world impacts on power electronic converters and drives? Are you looking for a career in R&D or academia? We have multiple opportunities for you!
We invite applications for multiple 3-year fully funded PhD positions that will contribute to the development of a new generation of embedded intelligence within grid-connected power converters and variable-frequency motor drives with edge computing and machine learning capabilities.
We offer a multidisciplinary, international, and friendly atmosphere, encouraging creativity, diversity, empathy, and teamwork. You will have a great opportunity to build strong networks with internationally known researchers at DTU and other universities as well as industrial partners.
You will be affiliated with the Power to X and Storage section in the Division of Power and Energy Systems, at the Department of Wind and Energy Systems. Collaboration is encouraged with neighboring sections working on distributed energy systems, hybrid power plants, smart grids, power system flexibility, and market design and operation. The section undertakes internationally leading research and teaching in the fields of flexibility, advanced power electronics, battery energy systems, and microgrids. We are currently 30 researchers from 15 different nationalities, and our different perspectives are foundational to our approach to solving real-world problems.
The PhD positions are part of the European Research Council (ERC) project ARTEFACT, which aims to make power converters and drives smarter, more reliable, and able to better support the power grid by embedding intelligence directly on the edge. The project will develop decentralized and privacy-preserving online learning methods to enable fleets of motor-interfacing converters (for applications such as pumps, compressors, or fans) to autonomously quantify and aggregate their flexibility, enabling their participation in grid-supporting services while accounting for their underlying uncertainty.
Depending on the specific position and your background, your work will involve developing machine learning methods for reliable training on streaming data, physics-informed models, Bayesian modeling, and stochastic optimization. These are complex topics and will involve many considerations and involvement with stakeholders, and it is important to state that you will not be alone. We truly believe that it is us and our joint contributions, with our different backgrounds, mindsets, competences, knowledge, and ideas that enables us to find the right solutions.
Responsibilities and qualifications
- Knowledge of computer science and machine learning.
- Familiarity with electrical and electronic engineering.
- Proficiency with programming languages such as Python, C++, or MATLAB.
- Strong problem-solving skills and the ability to collaborate in interdisciplinary teams.
- Excellent command of the English language and communication skills, with the ability to present results in scientific papers.
You must have a two-year master’s degree (120 ECTS points) or a similar degree with an academic level equivalent to a two-year master’s degree.
Approval and Enrolment
Assessment
We offer
Salary and appointment terms
The PhD project must start in 2026. The exact start date will be subject to a mutual agreement, considering your availability and preference, and will be earliest 1 July 2026. The position is full-time.
You can read more about career paths at DTU here.
Further information
You can read more about DTU Wind and Energy Systems at www.wind.dtu.dk.
If you are applying from abroad, you may find useful information on working in Denmark and at DTU at DTU – Moving to Denmark. Furthermore, you have the option of joining our monthly free seminar “PhD relocation to Denmark and startup “Zoom” seminar” for all questions regarding the practical matters of moving to Denmark and working as a PhD at DTU.
Application procedure
one PDF file
- A letter motivating the application (cover letter)
- Curriculum vitae
- Grade transcripts and BSc/MSc diploma (in English) including official description of grading scale
Incomplete applications will not be considered. You may apply prior to obtaining your master’s degree but cannot begin before having received it.
Applications received after the deadline will not be considered.
All interested candidates irrespective of age, gender, disability, race, religion or ethnic background are encouraged to apply. As DTU works with research in critical technology, which is subject to special rules for security and export control, open-source background checks may be conducted on qualified candidates for the position.
The Department of Wind and Energy Systems
DTU – For the benefit of society since 1829
Denne stilling er publiceret af Danmarks Tekniske Universitet via jobnet.dk


