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Reference IV-SB-0029-2026
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Faculty IV - Electrical Engineering and Computer Science, Softwartechnik und theoretische Informatik - Maschinelles Lernen

Student assistant (80 hours per month)

Your responsibility

The Intelligent Biomedical Sensing (IBS) Lab at TU Berlin's BIFOLD / Machine Learning Department develops miniaturized wearable neurotechnology and body-worn sensors for unobtrusive monitoring of the embodied brain in the everyday world. It uses machine learning on multimodal sensor data, together with environmental context information toward intelligent monitoring and individualized comprehensive understanding of physical and mental states and risk factors. To learn more visit www.ibs-lab.com/mission-statement.
We are looking for a student research assistant in the domain of Signal Processing and Scalable Data Management for Deep Learning on Brain Imaging Data.
Tasks to be carried out under guided supervision:

  • 40 %: Dataset Acquisition and Processing: Support in identifying and acquiring recent publicly available datasets through an extensive literature review, handling downloads, ensuring compliance with standard data formats (e.g., BIDS, SNIRF) and support handling of large-scale data storage.
  • 30 %: Data Quality Assessment: Assist in generating structured data-quality assessment reports for both in-house curated datasets (e.g., from the IBS lab) and externally acquired datasets.
  • 30 %: Support of Deep Learning Model Development: Support of Deep learning model development for preferred tasks, focusing on data pre-processing pipeline design, data augmentation, and deep learning architecture design.

Your profile

Required:

  • Very good knowledge in computational neuroscience, computer science, information technology, electrical engineering, or a similar field.
  • Very good theoretical knowledge of deep learning model design and biomedical signal processing.
  • Very good programming and scripting skills in Python (including libraries such as NumPy, Scikit-Learn, PyTorch, and Xarray).
  • High proficiency in written and spoken English.
  • Enrollment at a German university.
    It’s a plus:
  • Hands-on experience with one or several of the following: Signal processing and quality assessment focusing on functional Near Infrared Spectroscopy (fNIRS), Electroencephalography (EEG), or any other biomedical signals.
  • End-to-end deep learning model development and assessment, hands-on experience in popular models such as CNNs, TCNs, Transformers and Large-scale foundation models and in dealing with version control tools.
  • Experience with database management systems design for deep learning model development. Handling large-scale, multi-dimensional biosignal time-series data.
  • Team player and good communicator as well as pronounced analytical and conceptual skills.
  • High level of initiative, self-motivation, and results orientation.
    Please send your complete application including cover letter, CV and track record in one PDF in English via email to petra.dudakova@tu-berlin.de. Please only apply if you are enrolled at a German university and can work in person in Berlin, as the place of work is TU Berlin.

How to apply

Party responsible for specialist area / point of contact for job posting: Dr.-Ing. Alexander v. Lühmann - petra.dudakova@tu-berlin.de
Period of employment: 01.05.2026 for 2 years
Apply to: petra.dudakova@tu-berlin.de

Please submit your written application including cover letter, your CV, certificate of enrollment, and where applicable, current transcript of records, with the reference number to the place of employment indicated above.
In the interest of promoting equality opportunities for men and women, applications from women with suitable qualifications are particularly encouraged.

Facts

Published 04.05.2026
Category Student assistant
Category TU Berlin Student assistant without teaching duties, Beschäftigungsangebote für Studierende
Area of responsibility Engineering, IT
Start date (earliest) Earliest possible
Duration limited to 2 years
Full/Part-time 80 hours per month
Salary 15.08 euros/hour

Apply

Application deadline 18.05.2026
Reference number IV-SB-0029-2026
By email petra.dudakova@tu-berlin.de