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research that takes advantage of the massive data streams offered by techniques such as high-throughput sequencing of genomes and biomes, continuous recording of video and audio in the wild, high-throughput
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software development “Reproducible research” and “FAIR data” are central concepts to us, and expertise in the development of reproducible code by using code sharing platforms, workflow languages and
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summary (abstract) and a web link to the full text. Links to code repositories (e.g. GitHub) are meritorious and may be included as part of the CV or application letter. Applications must be received
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, continuous recording of video and audio in the wild, high-throughput imaging of biological specimens, and large-scale remote monitoring of organisms or habitats. The applicant is expected to have a strong
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large-scale clinical, laboratory, registry, or other health-related data (experience with Nordic registry data is a plus). Familiarity with biomedical ontologies, controlled vocabularies, or coding
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or Apptainer. Experience with software deployment and infrastructure automation, e.g. Ansible, and CI pipelines. Experience with modern software engineering practices, such as code reviews, testing, automated
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to Inclusivity PULSE follows the European Charter for Researchers and the Code of Conduct for Recruitment of Researchers, ensuring an open, fair, and transparent selection process. We encourage applications from
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certificate from doctoral studies and other relevant degrees Contact details of two reference persons (email address and phone number with country code) The application should be written in English or Swedish
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Linux-based environments Documented experience in documentation of ongoing work and code Documented experience using container and cloud technologies, for example Docker, Helm, or Kubernetes. Documented
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. PyTorch, TensorFlow or similar). Experience with software/tool development for research, including good practices in reproducible code (e.g. Git, notebooks, pipelines). Demonstrated experience in analyzing