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from harm. This is where you come in. We are seeking visionary researchers and engineers passionate about pioneering the development of new safety architectures for machine learning-based systems. Your
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fully funded PhD position in the area of Next Generation Enterprise Architecture Management to be filled in Q1 2024. Your responsibilities: Research & development projects in the area Next-Generation
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will work within a joint project between TUM Heilbronn and TUM Garching. The project focuses on the augmentation of the RISC-V instruction set architecture (ISA) to facilitate network data transfers
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the S4I2T project your main responsibilities will be the following: Evaluation of the potential ISRU architectures and subsequent derivation of a holistic in-space mobility, in-orbit servicing (IOS) and
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, operation, and analysis of complex information systems. Especially regarding their architecture, development, integration, and distribution (DevOps), as well as quantitative and qualitative analysis
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degree. The work of the group, which is led by Prof. Dr. Ingo Weber, focuses on methods for the development, operation, and analysis of complex information systems. Especially regarding their architecture
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should be applied in this project to specify a generic center system architecture. Based on this system architecture an exemplary good-specific variant of the center is derived with focus on intralogistics
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developing robust and efficient programs that can simulate, among others, different propulsion architectures or systems integration, ultimately contributing to creating more efficient and environmentally
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Controllers. The Chair of Integrated Systems at Technical University of Munich (TUM) is working on multi- and many-core processor architectures in application domains like IP network processing, visual
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benchmarking techniques. Development of model architectures and training concepts tailored to enhancing synthetic data generation. Rigorous evaluation and iterative optimization of the generated data models