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Field
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of lattice CAD models via generative/parametric design (e.g., Grasshopper); - Numerical FE simulation of meta-grains (Abaqus or Z-Set); - Extraction of key data (mechanical properties, critical load
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manufactured using 3D printing (SMART-S2H3D)" (project leader: Prof. Dr. Hab. Eng. Magdalena Rucka), in particular: * optimization of the geometry of conductive composite samples manufactured using 3D printing
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schemes for their discretization Knowledge of numerical optimization Knowledge of Python, Matlab and FOTRAN90 compiled code, use of high-performance parallel computing servers Ability to synthesize and
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-preserving methods is expected. Strong programming and numerical optimization skills and fluency in written and spoken English are essential. A proactive and collaborative attitude and excellent communication
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holes, estimates of the parameters in binary black hole and neutron star systems, parallelization of numerical GR codes. Gross salary per year: 47.286,72 €. Where to apply Website https://t.ly/rkSqs
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such as ICML, NeurIPS, or ICLR. A solid foundation in mathematical modeling, algorithmic analysis, and privacy-preserving methods is expected. Strong programming and numerical optimization skills and
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into that framework, and to take advantage of these tools to produce optimal designs. Applicants should have skills in modelling, familiarity with partial differential equations, and be familiar with python. They will
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that integrate simulation, machine learning, and data analysis. Numerical optimization methods (e.g. machine learning including deep neural networks, reinforcement learning, data mining, genetic algorithms
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programme of research and knowledge exchange to develop and optimize new testing regimes for flood resilience products, enable PFR needs to be aligned with exposure to flood risk and formulate an evidence
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such as PyTorch and TensorFlow. Experience with high-performance computing and/or scientific workflow. Strong background in inverse problems, numerical optimization and image processing. Job Family