[jobs] Neural Network models for language and interactive robots
The Department of Informatics, Institute of Knowledge Technology, invites applications for multiple positions as RESEARCH ASSOCIATES (Postdocs and PhD Students) in the context of the project CROSSMODAL LEARNING: Neural network models for language and interactive robots. Positions commence from January 2020 or as soon as possible thereafter and are in accordance with Section 28 subsection 3 of the Hamburg higher education act (Hamburgisches Hochschulgesetz, HmbHG) on SALARY LEVEL 13 TV-L. These are fixed-term contracts in accordance with Section 2 of the academic fixed-term labor contract act (Wissenschaftszeitvertragsgesetz, WissZeitVG). The term is fixed for up to 4 years until 31st of December 2023. The full-time positions call for 39 hours per week. Responsibilities: Duties include academic services in the project named above. Research associates may also pursue independent research and further academic qualifications. Specific Duties: Duties in the project include the design, development and evaluation of neurocognitive models of crossmodal language learning as well as neurorobotic models for crossmodal joint attention and social interaction. The overall project aims to deepen interdisciplinary research between computer science, neuroscience, and psychology in order to set up collaborative research with a focus on human-robot-collaboration, artificial intelligence, neuroscience and psychology while focusing on the topic of cross-modal learning. The long-term challenge is to understand the neural, cognitive and computational evidence of cross-modal learning and to use this understanding for (1) better analyzing human performance with cross-modal correspondence and (2) building effective cross-modal computational and robot systems. Requirements: A university degree in a relevant subject. For doctoral positions, academic degree of MSc in computer science, computer engineering or similar. For post-doctoral positions, a doctorate, or equivalently the experience of more than three years of doctoral studies plus publications in the area of Intelligent Systems are required. The degree must qualify the post holder to carry out the above-mentioned duties. Programming skills in some of Python, C, ROS, Tensorflow or PyTorch are required. Your demonstrated research interests should be in some of the areas of Intelligent Systems (e.g. Neural Networks, Robotics, Machine Learning, Speech, Vision, or Affective Processing). International publication experience is expected. Very good communication skills in English are expected. The University aims to increase the number of women in research and teaching and explicitly encourages qualified women to apply. Equally qualified female applicants will receive preference in accordance with the Hamburg act on gender equality (Hamburgisches Gleichstellungsgesetz, HmbGleiG). Qualified disabled candidates or applicants with equivalent status receive preference in the application process. As a University of Excellence, Universität Hamburg is one of the strongest research universities in Germany. As a flagship university in the greater Hamburg region, it nurtures innovative, cooperative contacts to partners within and outside academia. It also provides and promotes sustainable education, knowledge, and knowledge exchange locally, nationally, and internationally. For further information, please contact Prof. Dr. Stefan Wermter or consult our website at: https://www.informatik.uni-hamburg.de/wtm/ Applications should include a cover letter, a tabular curriculum vitae, pdf of best publications, and copies of degree certificate(s). Please send applications by 15.01.2020 or until the post gets filled to Ms Katja Koesters (katja.koesters@informatik.uni-hamburg.de) in a single pdf document. *********************************************** Professor Dr. Stefan Wermter Director of Knowledge Technology Department of Informatics University of Hamburg Vogt-Koelln-Str. 30 22527 Hamburg, Germany Email: wermter AT informatik.uni-hamburg.de https://www.informatik.uni-hamburg.de/WTM/ ***********************************************
participants (1)
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Wermter, Stefan