Job Description

Vacancy-ID: 4836

Place of work: Oberpfaffenhofen

Starting date: 01.07.2026

Career level: Student employment

Type of employment: Part time

Duration of contract: 3-6 Monate

Remuneration: Remuneration is in accordance with the Collective Agreement for the Public Sector - Federal Government (TVöD-Bund)

The Galileo Competence Center is dedicated to the further development of the European satellite navigation system Galileo. Together with the scientific institutes and facilities of the DLR, the performance of Galileo and other existing systems is analysed, new ideas and promising technologies are developed, tested and validated and brought to operational maturity in close cooperation with industry.

The Space and Ground Segment Technologies department is dedicated to analysing existing systems in detail and deriving specifications for new technologies in the area of ground systems and satellite elements. The scenarios are driven by user requirements, technological developments and the needs defined by the EU, EUSPA or ESA.

As part of this work, you will deal with modern methods of machine and deep learning in the field of space applications. The focus is on analysing complex technical time series data and on developing, evaluating and integrating suitable methods for practical problems.

You will work on the implementation of applicable machine learning pipelines for existing simulation environments or hardware-related systems as well as on the scientific investigation of sophisticated ML methods and architectures. A particular focus is on unsupervised and semi-supervised learning methods, especially for the analysis, modelling and evaluation of time series data.

Your tasks

  • Evaluation and validation of selected machine and deep learning methods using available data sets and benchmarks
  • Design, implementation and further development of applicable ML pipelines for time series data
  • Integration and deployment of developed solutions in existing simulation environments and/or hardware-related systems
  • Scientific analysis and evaluation of advanced ML concepts, methods and architectures with regard to their applicability in the space domain
  • Independent familiarisation with new scientific issues and development of relevant literature and methods
  • Preparation, documentation and presentation of results
  • Collaboration on scientific publications

What You Bring With You

  • Enrolment in a scientific Masters degree programme, preferably in computer science, mathematics, statistics, data science, aerospace or a comparable scientific and technical degree programme
  • Good knowledge of at least one programming language, preferably Python
  • Experience in dealing with version control and modern development processes, ideally with Git and CI/CD
  • Good written and spoken English skills
  • Solid knowledge of statistics as well as machine learning and deep learning
  • Ideally initial experience with advanced topics such as federated learning, explainable AI, anomaly detection in time series or self-supervised learning
  • Ideally knowledge or practical experience in analysing time series data
  • Ideally initial experience in scientific work, for example through seminar papers, project work or theses as well as in writing scientific texts
  • Ideally submit code examples, a Git repository or other evidence of practical programming experience with your application

Remuneration will be paid up to pay group 3/5 TVÖD, depending on qualifications and tasks assigned.

We offer

DLR stands for diversity, appreciation and equality for all people. We promote independent work and the individual development of our employees both personally and professionally. To this end, we offer numerous training and development opportunities. Equal opportunities are of particular importance to us, which is why we want to increase the proportion of women in science and management in particular. Applicants with severe disabilities will be given preference if they are qualified.

We look forward to getting to know you!

If you have any questions about this position (Vacancy-ID 4836) please contact:

Nils-Holger Kaul

Tel.: 08153 28 3448


Job Details

Role Level: Internship Work Type: Full-Time
Country: United Arab Emirates City: Dubai
Company Website: https://www.dlr.de/en/careers Job Function: Engineering
Company Industry/
Sector:
Research Services

What We Offer


About the Company

Searching, interviewing and hiring are all part of the professional life. The TALENTMATE Portal idea is to fill and help professionals doing one of them by bringing together the requisites under One Roof. Whether you're hunting for your Next Job Opportunity or Looking for Potential Employers, we're here to lend you a Helping Hand.

Report

Disclaimer: talentmate.com is only a platform to bring jobseekers & employers together. Applicants are advised to research the bonafides of the prospective employer independently. We do NOT endorse any requests for money payments and strictly advice against sharing personal or bank related information. We also recommend you visit Security Advice for more information. If you suspect any fraud or malpractice, email us at abuse@talentmate.com.


Recent Jobs
View More Jobs
Talentmate Instagram Talentmate Facebook Talentmate YouTube Talentmate LinkedIn