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; working knowledge with research data management according to the FAIR principles and corresponding software systems (e.g., openBIS); hands-on experience with best practices for code management and
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such as Stata, R, and/or Matlab Collecting data using web scrapers and data providers like Macrobond Coding in R or Matlab on data analysis and macroeconomic forecasting Programming surveys with Qualtrics
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referees who can provide professional references (We will contact them as we review the applications). Portfolio – Overview with project summaries and links to code repositories, datasets, and other
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techniques or tooling, such as relevant Python or Julia libraries (PyTorch, JAX, and similar) and how to package simulation or ML codes for dissemination or deployment on distributed servers (e.g., Docker
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datasets, code, experience around tomographic measurements of battery materials and components, image processing, and multiphysics simulation. During their study, doctoral students are encouraged to pitch
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code, clear README, etc.). We will provide you with guidance for the implementation, but independent work, in general, is required and appreciated. The workload consists of up to 15 hours per week during
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timelines, risks, and align milestones across academia and industry. Supervision & mentoring: Co-supervise MSc and PhD students; run code/design reviews; foster a collaborative, high-standards research
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of financial support for year 4. completed form concerning ethical issues and research requiring authorization or notification; template document provided. signed NOMIS code of conduct; template
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(these could be publications, software code, projects, etc) Please note that we exclusively accept applications submitted through our online application portal. Applications via email or postal services will not
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beyond just publications. We reflect on our work and constantly improve it. We believe that the world can be improved by publishing the work openly. We do not just mean results, we share data, code, and