18 phd-position-in-data-modeling Postdoctoral positions at Chalmers University of Technology
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models of metabolism to guide the engineering of microbial cell factories. Extracting actionable insight from these data and models requires reasoning across multiple layers of biological organization and
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to reanalysis and model data. Explore and contribute new research ideas. Present results at conferences and meetings. Write manuscripts and publish papers in scientific journals. Supervise master’s and/or PhD
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to reanalysis and model data. Explore and contribute new research ideas. Present results at conferences and meetings. Write manuscripts and publish papers in scientific journals. Supervise master’s and/or PhD
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position as described above. Other documents Copies of PhD thesis. Copies of 2-3 relevant publications. Attested copies of transcripts and certificates of completed education, grades, and other merits. Use
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direction of the advertised position as described above. Other documents Copies of PhD thesis. Copies of 2-3 relevant publications. Attested copies of transcripts and certificates of completed education
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, and gas phase X-ray Photoelectron Spectroscopy (XPS) for complementary information on the catalyst surface chemistry. The ultra-high-vacuum based model catalyst preparation allows us to highlight
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modeling of quantum computer systems. This can be either a holder of a PhD in computer science and/or engineering (computer architecture and HPC related topics) with knowledge in quantum computing or a PhD
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awarded no more than three years prior to the application deadline. To be successful in this position, you: have a strong, quantitative background, ideally hands on with modern generative models have proven
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24 Mar 2026 Job Information Organisation/Company Chalmers University of Technology Research Field Chemistry » Physical chemistry Chemistry » Other Engineering » Materials engineering Physics
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transferable and interpretable models for tabular data, efficient learning paradigms for medical imaging, and causally grounded and identifiable representation learning. You will have great freedom to influence