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Posting Summary Logo Posting Number STA00036PO26 Job Family Information Technology Job Function IT Business Systems Analysis USC Market Title IT Business Analyst Link to USC Market Title https
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of the following: static and/or dynamic program analysis, programming language techniques (such as semantics, type systems, runtime systems, etc), formal verification, or software engineering
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, and the effect of typological diversity on the security landscape in multilingual settings Formal semantic or symbolic methods for monitoring, evaluating, and improving LLM robustness, e.g. building
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. Knowledge of deep learning approaches and experience in using semantic segmentation or instance segmentation is desired. Knowledge of or interest in forestry is desired. Fluency in English (written and spoken
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of modern AI/LLM-based solutions, including: a. Prompt engineering and chat-style interactions. b. Use of embeddings and vector or semantic search to ground model responses. c. Designing and implementing
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at: https://industriesofideas.ai/ . Term-limited: This is a term-limited position for two years, with the possibility of renewal contingent upon satisfactory performance, conduct, continued availability
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https://iventajobdata.eu/bestmedia/img/2205151/1879244/cl/4c5f913136cf8fe5f76b1… Requirements Specific Requirements Your working environment: As a postdoctoral research assistant at the Department
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- Multimodal Perception and Localization for Robots in Extreme Visibility Conditions - Source Localization and Hazard Assessment Using Multisensor Fusion. - Semantic-Based Exploration Strategies for High-Risk
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ISR. Be an active participant in an agile environment that includes stand-ups, story grooming, and peer review. Build accessible, semantically correct, responsive front-ends that function consistently
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profile in research in any of the following areas: image classification and object detection, semantic segmentation, video analysis and action recognition, scene understanding, medical image analysis, self