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literacy skills, including experience with a wide range of software applications. Level of sensitivity when dealing with confidential matters. An understanding of, or the ability to acquire knowledge
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of machine learning and AI methodologies, with experience in practical implementation. Ability to analyse and interpret complex data to inform strategic decisions, including demonstrated experience in
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progression, communication, completions. Collaborating with various teams to ensure seamless program delivery. Contributing to continuous improvement of processes and procedures. Strong computer skills, use
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) Based at our St Lucia Campus About This Opportunity We are looking for a dynamic and detail-oriented Work Integrated Learning (WIL) Compliance Officer to join the Placement Ready Team in our renowned
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Campus About This Opportunity We are looking for a dynamic and detail-oriented Work Integrated Learning (WIL) Compliance Officer to join the Placement Ready Team in our renowned Faculty of Health, Medicine
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of machine learning techniques for neuroimaging data (e.g., classification, clustering, or regression models). Experience with automating neuroimaging workflows (e.g., using nipype/ BIDS-apps, or similar tools
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/facility Build new and/or improve existing research-focused engineering technologies, systems, prototypes, machines and/or processes Perform other duties as reasonably directed by the Research Facilities
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responsibilities will include: Provide high level support for various learning experiences, clinical placements, and assessments, ensuring they are appropriately scheduled and coordinated. Provide effective and
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with single-cell omics (Level A). This research aims to develop new statistical and machine learning methods to integrate and analyse data from genome-wide association studies (GWAS) and single-cell
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(collecting data, analysing data) desirable. Background working with clinical groups, patients or vulnerable populations. Application of machine learning techniques for neuroimaging data (e.g., classification