| Qualification Type: | PhD |
|---|---|
| Location: | Aarhus - Denmark |
| Funding for: | UK Students, EU Students, International Students |
| Funding amount: | Competitive |
| Hours: | Full Time |
| Placed On: | 22nd June 2026 |
|---|---|
| Closes: | 15th August 2026 |
Applicants are invited for a PhD fellowship/scholarship at Graduate School of Technical Sciences, Aarhus University, Denmark, within the Electrical and Computer Engineering programme. The position is available from 01 November 2026 or later.
Research area and project description
Applications are invited for a fully funded PhD position within the Department of Electrical and Computer Engineering at Aarhus University. The successful candidate will be integrated into the A3 Lab – Adaptive & Agentic AI, directed by Dr. Behzad Bozorgtabar, who serves as the primary supervisor. This doctoral research is co-supervised in close collaboration with Prof. Qi Zhang, offering a unique interdisciplinary research environment at the intersection of Foundation Models and Edge Intelligence.
Research Vision. Deploying models in edge environments requires navigating a fundamental conflict between model complexity and environmental volatility. Real-world edge environments remain highly dynamic: data streams are continuously subject to "domain shifts" caused by fluctuating conditions, hardware degradation, or changing physical surroundings.
Traditional AI models are often brittle under these distribution shifts, leading to unreliable outputs that can compromise safety in mission-critical applications—ranging from autonomous robotics to real-time industrial monitoring. To maintain performance without the latency penalties of cloud-based recalibration, edge AI systems must become "self-aware" and capable of autonomous evolution.
Core Research Objectives. The primary objective of this PhD is to develop a high-performance, low-latency framework for Test-Time Adaptation (TTA). This involves designing autonomous architectures capable of monitoring and maintaining the reliability of unimodal and multimodal foundation models in real-time. Key research pillars include:
The candidate will join a pioneering research group focusing on the next generation of adaptive AI, with the opportunity to publish at top-tier machine learning venues (e.g., NeurIPS, ICLR, CVPR) and validate research on state-of-the-art edge computing testbeds.
Project description
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Qualifications and specific competences
Applications to the PhD position must hold a master’s degree (120 ECTS) in Computer Science, Computer Engineering, Electrical Engineering, Machine Learning, or a related quantitative field.
Further qualifications:
How to apply
Please read the full job description and apply at the university homepage
Please click on the 'Apply' button above to submit your application.
Application deadline is 15 August 2026 at 23:59 CEST.
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