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As part of the PICs@ICFO Strategic Initiative, ICFO coordinates PIXEurope, a flagship Pilot Line funded under the European Chips JU program. With €400 million in investments and a consortium of 20
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to) SIESTA (www.siesta-project.org) and its TranSIESTA functionality. SIESTA is a multi-purpose first-principles method and program, based on Density Functional Theory, which can be used to describe the atomic
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disciplinary curriculum and program design, and demonstrated service to the academic community and/or the public. English is the medium of instruction and administration at HKUST (GZ). HKUST(GZ) is committed
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activities: languages, mentoring programme, wellbeing programme. International environment Estimated Incorporation date: September 2025 How to apply: All applications must be made via the ICN2 website and
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, Computer Science, or a related field is required, along with image analysis skills (biological or medical image analysis preferred), including denoising, segmentation, and detection of specific patterns. The ideal
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. Data Analysis and Interpretation: Collect and analyze experimental data, interpret results, and draw meaningful conclusions. Utilize statistical toolsand computational modeling techniques to enhance data
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: tax advantages contracting some products (health insurance, childcare, training, among others.) Training activities: languages, mentoring programme, wellbeing programme. International environment
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an effective maintenance program. Liaise with equipment vendors for inspections, repairs, and the establishment of preventive maintenance service contracts when required. Supervise the use of laboratory
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compensation plan: tax advantages contracting some products (health insurance, childcare, training, among others.) Training activities: languages, mentoring programme, wellbeing programme. International
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of carbon materials, low-dimensional materials and others Multi-scale computation method development Data-driven experiments AI for materials science Multi-scale modeling for materials manufacturing mechanism