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head-on. We will reinvent generative cooperative vision and semantic compression methods so fleets of intelligent machines can perceive the world robustly, efficiently, and in a trustworthy manner—even
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integration of energy systems data and models and apply data science methods to make them usable for transparent energy systems analyses. The collected data will be processed and semantically enriched using
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differentiable algorithms for machine learning; Programming language implementation for high performance computing; Programming language semantics and foundations. Your focus will be on area 2, with your research
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. “Towards Cultivating Decentralised Data Privacy, Interoperability and Trust with Semantic PETs and Visualisations”. In: NXDG: NeXt-Generation Data Governance, SEMANTiCs 2024, 17-19 Sep 2024, Amsterdam
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providing a structured, semantic framework that enhances knowledge sharing and data reuse across different platforms and systems. Project Aim This PhD will develop an ontology-based methodology to improve
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” (funded by the German Research Foundation, DFG) PhD Researcher in Semantics and Pragmatics (m/f/d, E13 TV-L, 75%) (The salary corresponding to a 75%, TV-L 13 scale, position is approximately €3.400 per
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one-fits-all model was proven unsuccessful. Large Language Models (LLMs) and knowledge graph models are expected to harmonize the formats and semantics but there are many open questions about their
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Autonomous Transportation. As far as technical enablers are concerned, we leverage expertise on advanced technologies including semantic/task-oriented data processing, signal processing, network resource
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? What are the elements of meaning (image ciphers) that make up the semantic field of images? To what extent can images be precisely determined in their semantic content? Such questions need to be explored
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, or willingness to work with them Experience with multi-modal machine learning methods Familiarity with formal linguistics, particularly formal semantics and pragmatics We encourage applications from individuals