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to their culture and pay our respects to their Elders past and present. View our vision towards reconciliation . Role highlights Provide support for scientific research through machining and fabrication Collaborate
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successful candidate, you will bring: Essential A tertiary degree in Electrical, Electronic, Communications, Radio Frequency (RF), or a related engineering field (such as Mechatronics, Aerospace, Computer, or
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, and equipment, including Environmental Monitoring (EM) programs and Computer Systems Validation (CSV) for manufacturing and quality‑related systems. Experience supporting regulatory compliance
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, and a demonstrated willingness to follow established procedures. Basic computer skills sufficient to read and respond to emails and to enter routine information into spreadsheets (e.g. basic data entry
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, engineering drawings, and ensure the stores, workshop, and machine shop are well-organized. Participate in tasks like telescope array reconfiguration and collaborate with staff to support safe and efficient
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Innovations Group seeks a forward‑thinking expert in statistical machine learning to translate complex biological datasets into actionable AI‑driven insights. You will enhance genomic selection and breeding
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projects. You will be responsible for managing and supporting the Science Data Processor High Performance Computing (HPC) infrastructure, including platforms, workload/resource managers, and parallel
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experience with computer modelling. Strong communication, presentation, and report writing skills, complemented by adept problem-solving abilities through teamwork, stakeholder engagement, and client
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experience in using statistical and mathematical tools to analyse and interpret soil data, spatial modelling, multivariate statistics and/or machine learning, and relevant coding languages (e.g. R, Python
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: Curating responsibilities including identifying, sorting, and mounting specimens. Using computer skills to transfer information from insect specimens into morphological data matrices. Supporting research