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opportunities for scientific leadership and industry engagement. Eligibility criteria Applicants hold a PhD in Computer Science, Software Engineering, Cybersecurity or a related field, have a strong background in
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. Possibility to shape the position based on the profile. Eligibility criteria PhD degree in electrical engineering, a solid background in time-domain, frequency-domain, grounding and propagation characteristics
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). For both PhD and Postdoctoral candidates: You hold a Master of Engineering Science or Engineering Technology in the fields of Mechanical engineering, Mechatronics or Robotic Engineering, or other
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treatment planning software provider Collaborations with our international partners. The PhD project fully funded for 3 full years in the context of an European funded consortium. PhD duration is typically 4
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-based methods in computer science The selected candidate has a strong scientific curiosity Good programming skills are required Proficiency in English is required. We offer a fully-funded PhD position
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camera-based defect detection and identification systems for quality control in continuous production lines. This PhD position is part of the Flanders Make IRVA (Accelerator for Industrial Research and
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related to staff position within a Research Infrastructure? No Offer Description The KU Leuven Life Cycle Engineering research group is expanding its activities at the intersection of re- and
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Research Framework Programme? Not funded by a EU programme Reference Number BAP-2026-18 Is the Job related to staff position within a Research Infrastructure? No Offer Description This PhD position forms
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processes namely turning, milling, and drilling. This PhD position is part of the Flanders Make Strategic Basic Research project AutoCAM, which intends to largely automate the generation of work plans, for
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of an ML-system to reliably evaluate its own uncertainty. Project This PhD position is part of the Flanders Make Strategic Basic Research project SAIfety, which aims to improve the robustness of ML models in