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. Your career: challenging, varied and with the best personal development opportunities. Your environment: highly professional and inspiring. Your new employer: the Fraunhofer-Gesellschaft. Your address
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aspect of process planning is determining the production times for a given product. This is currently only possible through complex simulation, as there is a lack of comprehensive models. There is an
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of additive technologies, sustainable innovations are created along the entire process chain. We focus primarily on socially relevant sectors such as Life Sciences, Energy, Mobility and Defense. Our research
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compression of high-dimensional data. It is possible to write a Master's thesis. What you bring to the table Degree in computer science, mathematics, physics or a comparable field of study A good understanding
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and verifiably safe. We consider resilience and intelligence to be part of the same process. What you will do In AI application areas that may be subject to frequent change in the data and/or the task
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focus on developing key technologies that are vital for the future and enabling the commercial utilization of this work by business and industry, Fraunhofer plays a central role in the innovation process
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. However, the requirements for the cutting process vary depending on the electrode design and chemistry. Continuous compliance with high standards of process stability and product quality is therefore a
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presentations of results Support in the preparation of scientific publications Preparation and follow-up of workshops Possibility to implement individual IT solutions and process models What you bring
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, information technology, (medical) informatics, applied mathematics, physics or similar Interest in the design and implementation of software for robot systems Basics of computer science such as algorithms, data
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science, electrical engineering, information technology, physics, computer science, mathematics or mechanical engineering strong background in the fields of machine learning and reinforcement learning very