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rather than one-shot scenario evaluation. The core research directions of the PhD project include: (i) multi-agent RL to jointly learn policies for multiple control parameters; (ii) uncertainty-aware
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communications Quantum communications Computing & Networking: QuMIMO, Quantum Error Correction, Multi-partite systems, Q Network Coding, HQCNN - Hybrid Quantum-Classical Neural Networks Security & Logic: QRL
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experimentally verified results is a necessary: Research Topics: Learning-Based Autonomous Systems for Field Robotics Reinforcement learning-based navigation Multi-agent coordination and communication-aware
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23 Jan 2026 Job Information Organisation/Company University of Twente (UT) Research Field Engineering » Civil engineering Engineering » Industrial engineering Researcher Profile First Stage
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the impact of such attacks when executed in multi-agentic systems, where the output of one LLM is used as input for another LLM. 5. Design new defense methods, e.g., inspired by cryptography, to prevent
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be considered an advantage if you have experience with safety-critical systems, multi-agent autonomy, or learning-based/data-driven/robust/adaptive control under uncertainty, supported by strong
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progressed capabilities towards exploiting zero-day vulnerabilities. Frontier models show promising performance when combined with a focused knowledge base and multi-agent architectures. However, in most cases
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outputs are misleading, hallucinated, or generated through opaque multi-step reasoning. As agentic AI systems increasingly operate across organisational processes with minimal human intervention
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techniques and AI, engineer robust and adaptive solution systems, and address challenges related to multi-agent coordination and decision-making under uncertainty. The ideal candidate will have a strong