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multi-modal sensing and AI data analysis. The PhD candidate will perform research with potential deployment of results in industrial products of Bosch, ViNotion and Sorama. The goal of the PhD candidate
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for multi-camera data analysis and synthetic video generation. Generation of free viewpoint synthetic video streams for multi-camera broadcast setups will enable a fundamental shift in the viewing paradigm
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PHD-TEACHING ASSISTANT OPENING AT TU/E Network Visualization for Large Event-sequence Analysis Irène Curie Fellowship No Department(s) Mathematics and Computer Science Reference number V32.7509 Job
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PhD candidate at TU/e? Please view the video. Information Do you recognize yourself in this profile and would you like to know more? You can contact the daily supervisor for this position dr. Mara Hauck
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Are you eager to work on making the world a better place? With these 3 PhD positions we aim to develop the new types of slags from fossil-free steelmaking into cementitious binders, replacing non
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We are seeking a highly motivated PhD student who is interested in pursuing research at the interface of control systems and optimization for smart grid technologies. Irène Curie Fellowship
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packages. One of the four main research tracks (RTs) of AISO is as follows: RT1: PhD on Synthetical data generation using multivariate models This research will focus on a scalable approach by using
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: Requirement specifications for both real-time state estimation and long-term power flow analysis Design algorithms which combine the aggregated data and anonymized individual data Validation of the developed
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complex problems of today and tomorrow. Curious to hear more about what it’s like as a PhD candidate at TU/e? Please view the video . Information Do you recognize yourself in this profile and would you like
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Irène Curie Fellowship No Department(s) Mathematics and Computer Science Reference number V32.7466 Job description As a PhD-TA candidate, you will work on new distributed algorithms for large