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integration technologies and transfers them into practical use. Fraunhofer ENAS accompanies customer projects from the idea to the design, technology development, or implementation using existing technologies
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The Fraunhofer Institute for Surface Engineering and Thin Films IST in Braunschweig offers motivated students the opportunity to work on a student thesis/research project on the topic »Modeling
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communication networks. The department is currently involved in several research projects that analyze and optimize the environmental impact of information and communication technology, in particular optical
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studying mechanical engineering, computer science, CES… or a comparable subject First experience with PyTorch and Deep Learning is favorable A high degree of initiative, independence, and problem solving
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processing, 3D scene reconstruction and analysis for digital and immersive media as well as medical technology and industrial applications. Become a part of our team and join us on our journey of research and
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learning models Analysis and preprocessing of different data types, mostly medical data Applied science in exciting projects Preparation of presentations Review of relevant literature and data Testing
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bring to the table You are a student of electrical engineering, communications engineering or a related subject Basic knowledge of digital signal processing (digital filters, control loops, estimation
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to the table Enrolled Bachelor/Master student (m/f) with good grades in one of the following programs: Electric engineering, physics, cognitive science, applied mathematics, neuroscience or a related field. You
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Learning experiments Experience applied science in exciting projects Prepare material for publications Review relevant literature and data What you bring to the table Study of mathematics, computer science
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Computer Science, Human-Computer Interaction, Media Informatics, Medical Engineering or a related field. Proficiency in web programming languages and frameworks. A solid understanding of Machine Learning principles