„Embedded Systems“
Suchergebnisse
2.888 Treffer
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Design, Analysis, and Applications of Approximate Arithmetic Modules
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Integrated timing verification for distributed embedded real-time systems
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Portierung von eCos auf den TriCore TC1796 Mikrocontroller
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Entwurf und Implementierung eines zeitgesteuerten Schedulers für eCos
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Guiding Transient Peptide Assemblies with Structural Elements Embedded in Abiotic Phosphate Fuels
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Guiding Transient Peptide Assemblies with Structural Elements Embedded in Abiotic Phosphate Fuels
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Mixed-mode problem of multiple interacting embedded and edge cracks in a piezoelectric strip under in-plane electro-mechanical loadings
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Malware Detection in Embedded Devices Using Artificial Hardware Immunity
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Kundenschmerzorientiertes Kompetenzmodell für Verbesserungen der Systementwicklung unter Verwendung von DevOps-Methoden
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Guiding transient peptide assemblies with structural elements embedded in abiotic phosphate fuels
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Design Concepts for a Virtualizable Embedded MPSoC Architecture – Enabling Virtualization in Embedded Multi-Processor Systems
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Highly selective electrochemiluminescence enhanced detection of ascorbic acid in tablets and beverages utilizing Ru(bpy)3 2+-embedded zirconium-based metal-organic frameworks
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Research on interoperability within development processes of Embedded Systems on an example – A concept for tackling Frontloading in Model-based Engineering with AUTOSAR
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Learning motor skills: from algorithms to robot experiments
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John Fitzgerald, Peter Gorm Larsen, Marcel Verhoef (eds): Collaborative design for embedded systems – Springer, Berlin Heidelberg, 2014, xxii + 385 pp, 6 × 2 mm, ISBN: 978-3-642-54117-9 (Hardback, \$ 119.99), ISBN: 978-3-662-52444-2 (Softcover, \$ 129.00)
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Mobile Computing und Embedded Systems. Einsatz von 5G
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Evaluation of OpenStack as Middleware for Automotive Embedded Systems
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Mobile Computing und Embedded Systems. Einsatz von 5G
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Vulkan terrain renderer based on real-world height-maps for embedded systems
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Parasitic RC estimation and defect prediction for embedded memory using machine learning