140 machine-learning-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"IFM"-"IFM" positions in Netherlands
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, attend at least two network meetings a year, participate regularly in various forms of science communication and learn new (or improve your existing) science communication skills, ask an Academy or Young
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value. Knowledge of computer systems and information/planning/coordination tools (such as esa-p, Microsoft Excel and Microsoft Project) is essential. Familiarity with modern dashboard and risk management
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, including abstract geospatial workflows; design AI- and machine-learning-based methods that automatically describe and model geodata sources using textual metadata (NLP) and the geodata itself; contribute
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orientation, ethnicity, religious beliefs, age, disability or other characteristics. Important Information and Disclaimer Applicants must be eligible to acquire the security clearance by their national security
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lessons learned and best practices, to enable learning, ensure consistency, and improve quality across teams and projects) Behavioural competencies Education A master's degree in a relevant domain is
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little better? You have a part to play. If you want to learn more about working at Radboud University, follow our Instagram account(link is external) and read stories from our colleagues. Is this
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methods, including lessons learned and knowledge management, and to the reflection on the evolution of the Division’s role and activities; contributing to the (independent) technical assessment capability
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motivating work environment and promoting good team spirit; supporting team members with ongoing professional development by encouraging learning and delegating responsibilities; identifying, assessing
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on behavioral lab experiments but may also include other empirical approaches depending on how the project develops. During the PhD, you will: Learn how to combine theory-driven empirical sociology with
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Qualification portfolio. You will be part of the WECARE research team, led by Dr Sonja Marzi (PI). Your supervisors will be Dr Sonja Marzi, Dr Tine Davids and Dr Edwin de Jong. Would you like to learn more about