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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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mechanical engineering, computer science, materials science or a comparable subject and fulfil the following requirements: • Motivation to explore scientific challenges • Previous experience with Comsol
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degree (e.g. master’s degree) in computer science, mathematics, telecommunications, electrical engineering, or a related field Creativity and interest in new technologies and scientific work A team player
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Announcement for fields of study such as: Automation technology, software engineering, computer engineering or comparable. Fraunhofer IPA is an institute for Manufacturing Engineering and Automation
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software and frameworks What you bring to the table Study of mathematics, computer science, physics, electrical engineering or similar with good to very good grades Strong programming skills in Python and
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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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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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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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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