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), immunofluorescence and microscopy Prior experience in RNA biology, NGS and/or Metabolism is an asset Understanding of common bioinformatics approaches and experience with one of the main programming languages for data
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Job Code: C04414 Salary Range: Min: $36,764 | Mid: $48,148 Minimum Qualifications Bachelor’s degree in molecular biology, cell biology, genetics, developmental biology or related field. Job Summary
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Overview National Institute for Materials Science (NIMS, Tsukuba, Japan) invites international applications from researchers who can conduct research in materials science. NIMS employs outstanding
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, including participation in coursework, journal clubs, and training events Your Profile Master’s degree (or equivalent) in neuroscience, biology, or a related discipline Proficiency in English (spoken and
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/or spatial multiomics, advanced imaging, iPS cells, machine learning, and computational biology. The ideal candidate will have a passion for addressing fundamental questions in biology and an eagerness
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systems within computer science and engineering while collaborating with Luxembourg's Ministry for Digitalisation. The project examines the interplay between the European Digital Identity Wallet (EUDIW
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systems within computer science and engineering while collaborating with Luxembourg's Ministry for Digitalisation. The project examines the interplay between the European Digital Identity Wallet (EUDIW
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systems within computer science and engineering while collaborating with Luxembourg's Ministry for Digitalisation. The project examines the interplay between the European Digital Identity Wallet (EUDIW
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profound knowledge in computational and theoretical physics/chemistry. Capability of team work is essential. Skills in high-performance computing, materials chemistry, theoretical chemistry, molecular
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programme at the Faculty of Science . The ideal candidate has a background in or experience with one or more of the following topics: SIMD performance engineering. Machine Learning. Communication-efficient