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optical communication networks and systems, as well as machine learning, computer vision and compressing digital videos. The Applied Machine Learning (AML) group is part of the Department for Artificial
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of Scientific Collections (DiSSCo)) Strategic and thematic conception of the data architecture and data flows (with a focus on research data), with consideration of national and international standards and
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extension, in the programme area "Next-Generation Horticultural Systems" (HORTSYS), in the research group "Open Field Horticultural Systems" within the EU-HORIZON project NitroScope - "Scoping European N
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of this initiative, 15 early-stage doctoral candidates (DCs) will be trained through a comprehensive, interdisciplinary program spanning material science, device physics, computer architecture
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physics, computer architecture, hardware prototyping, compiler design, simulation and emulation tools, as well as cybersecurity, reliability, and system verifiability. REACT offers a uniquely structured
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20.05.2025, Wissenschaftliches Personal The Professorship of Digital Fabrication , led by Prof. Dr. Kathrin Dörfler, is dedicated to pioneering digital fabrication techniques in architecture. Join
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The culturally diverse Research Group “Plant Architecture ” lead by Prof. Dr. Thorsten Schnurbusch is primarily interested in basic research questions concerning how cereal inflorescences, called
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optical communication networks and systems, as well as machine learning, computer vision and compressing digital videos. The Applied Machine Learning (AML) group is part of the Department for Artificial
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environment The professorship will be assigned to the TUM Department of Architecture at the TUM School of Engineering and Designand is affiliated with the Integrative Research Center (IRC) Munich Design
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that can be embedded within spiking neural architectures Training and evaluation of these enhanced networks on sequence learning tasks and comparing their performance against state-of-the-art sequence