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(e.g., C++, Unity, Python) a background or interest in human-computer interaction, gender studies, and/or construction familiarity with qualitative and quantitative research methods. How to apply We
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hands-on experience with Python and ML libraries (PyTorch/TensorFlow) experience with signal/image processing or computer vision for video strong programming and data engineering skills Desirable
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, planning and design Need help understanding the process? Visit our scholarship guide Application How to apply Eligibile applicants will be contacted and invited to apply online. When will I know the outcome
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Student type: Domestic and international students Study stage type: Future study, Current study Study area: Science Need help understanding the process? Visit our scholarship guide Application How to apply
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, Current study Study area: Architecture, building, planning and design Need help understanding the process? Visit our scholarship guide Application How to apply You must submit an application and provide
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– e.g. Food Science, Industrial Design, Project Management • Relevant experience in the food industry, ideally knowledge of new product development, process improvement and product launch protocols
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the process? Visit our scholarship guide Application How to apply You must submit the University Student Financial Assessment Form. Status: Open for applications Applications open: 1 Jan 2026 Applications close
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and international students Study stage type: Future study, Current study Study area: Music, visual and performing arts Need help understanding the process? Visit our scholarship guide Application How
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evaluation process and confirmed by La Trobe University. *A WAM is an average mark that takes into account the credit point value of the subjects that you have completed. It is based on the actual mark of all
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number of successful candidates will be determined through a thorough evaluation process and confirmed by La Trobe University. *A WAM is an average mark that takes into account the credit point value