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IF or CORE A*/A conference paper. Robust machine control assumes modeling of robot-environment interactions. An example may include an outdoor autonomous ground robot that needs to be aware of its
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software architecture. Drive research and development of algorithms for natural language understanding, structured command generation, and domain-specific model adaptation or fine-tuning. Integrate NLP and
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Financial Aid Grants Management Human Resources Employment Type: Full-time Regular Organization Type: Higher Education Institution Required Education: Bachelor’s Position Overview: The Controller serves as
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liable to induce a mechanical degradation or electrode delamination [4,5]. All these phenomena decrease the cell performances leading to a reduction of the SOC lifetime. Therefore, the robustness
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with students, staff, faculty members, and other professionals from industry. The candidate will deliver research artifacts that can be used in providing a robust cybersecurity landscape. Collaborate
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animals and humans, contacts with the environment are not avoided and sometimes even actively sought. We will deploy this inspiration from biology to design truly robust machines with distributed control
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7 Jan 2026 Job Information Organisation/Company KU LEUVEN Research Field Engineering » Control engineering Engineering » Industrial engineering Engineering » Mechanical engineering Engineering
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evidence into clear, defensible advice that supports long-term sustainable productivity. What you’ll do: Deliver high-quality stock assessments that provide robust, transparent, and defensible scientific
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propagation models that incorporate the effects of fire effluents, validated through controlled experimentation. You will develop tomographic inversion methods and anomaly-detection algorithms capable
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powerful way to understand and control chaos. By gently coupling a simulation with measurements from the real flow, the simulation can synchronise with reality, effectively reconstructing the entire flow