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simulation tools for correlated attosecond electron dynamics in molecules." The position will involve developing new methods related to tensor network states (e.g. TD-DMRG, MCTDH) to simulate correlated
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the specific characteristics of viscoelastic fluid models, which will provide a dataset for training the tensor-based neural network (TBNN). Subsequently, the TBNN model will be tested on deformation protocols
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package, including health and life insurance, generous paid leave and retirement programs. To learn more about USC benefits, access the "Working at USC" section on the Applicant Portal at https
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operators in solving partial differential equation systems with applications in mechanical engineering. Task 3 – Apply tensor-based neural networks (TBNN) to discover a constitutive equation for a real
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collaboration with local experimental groups to interpret and understand experimental findings. Proficiency in advanced many-body techniques—such as the density-matrix renormalization group, tensor-network states
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sequences that support specialized applications such as functional MRI and diffusion tensor imaging. An intuitive user-friendly interface simplifies operation and offers quieter operation and comfortable
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for the conclusion of the project. WORK PLAN AND OBJECTIVES 1) Integrate a fibre orientation tensor into the multidirectional fixed smeared crack model existing in the FEMIX software to simulate more accurately the
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following: Electronic structure/dynamics, tensor network states, multireference electronic structure, relativistic electronic structure. More information about the Larsson group can be found at https
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Carlo, tensor networks, or quantum embedding methods, etc. -ML-augmented numerical method development. -High-performance computing (HPC). Certifications/Licenses Required Knowledge, Skills, and Abilities
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challenging properties of uncertainty, irregularity and mixed-modality. It will examine a range of models and techniques that go beyond Markovian approaches, including state-space models, tensor networks, and