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research methods. About Monash University At Monash , work feels different. There’s a sense of belonging, from contributing to something groundbreaking – a place where great things happen. We value
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Generative AI NLP skills System security Software testing To be eligible you must have: A first-class honours (H1) Bachelor’s degree or equivalent in the relevant research area (completed or near
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technologies, including equipment and software, and a demonstrated ability to quickly adapt to and master new systems. Experience working in or managing a PC2 Lab, with a solid understanding of PC2 compliance
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problem-solving and analytical abilities, with a focus on delivering innovative solutions Proficiency in project management software and tools Why Join Us? Contribute to ground-breaking research that has
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. This program of work will engage three PhD students, each from a different background (technical, psychology, design/HCI), to contribute their expertise towards enhancing the helpline service and improving
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research that addresses real-world challenges and you will demonstrate research leadership, including supervision of PhD students, and contribute actively to the Department’s educational, research, and
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trajectory. About You You must be available to start mid-to-late 2025 Level A applicants are expected to have: A PhD (or be near completion) in engineering, applied mathematics, or computer science. Experience
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an appropriate industry Certification such as CCIE, CCDE among others Strong skills in enterprise/data centre grade network hardware/software, protocols, network security, and Cloud with substantial experience in
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will conduct independent and collaborative research, publish in high-impact journals, and present findings at major international conferences and workshops. You will also mentor and support PhD and
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Anomaly detection methods address the need for automatic detection of unusual events with applications in cybersecurity. This project aims to address the efficacy of existing models when applied