338 algorithm-development-"Prof"-"Washington-University-in-St"-"Prof"-"Prof" positions at Monash University
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Japan. The scholarship is provided by Asahi, and their presence in Japan will offer successful candidates unique opportunities to further their studies and professional development. Applications Not
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details Hannah Grace Collis Pinnacle Science Scholarship The financial support of the Pinnacle Scholarship allowed me to focus solely on my academic development. This resulted in me participating in many
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One See details Hannah Grace Collis Pinnacle Science Scholarship The financial support of the Pinnacle Scholarship allowed me to focus solely on my academic development. This resulted in me
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-disciplinary team of clinician scientists and computer scientists to develop diagnosis/predictive/treatment/robotics surgery models of diseases of interest using multimodal medical data, consisting of images
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: You must maintain a Weighted Average Mark (WAM) of 60 each semester. How to apply For current Monash students apply directly to Monash . Applicants must also prepare a short statement (up to 800 words
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information about behavioural patterns, but scoring this manually is time consuming. For this reason, machine learning solutions have been developed to automate behavioural prediction [5-12]. DeepLabCut [5] is
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and career development, culminating in a written thesis. The PhD stage will typically take three and a half years to complete. You will also enjoy opportunities for domestic and international conference
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(Honours) and Bachelor of Commerce double degree to inspire female students to develop their leadership skills. Total scholarship value Up to $20,000 Number offered One See details Maria Volodin IFM Industry
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source of type errors. This project will explore interactive visual tools (e.g. plugins for modern editors and integrated development environments) which clearly communicate this information
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-model fusion”. The successful candidate will develop near-real-time integration between emerging environmental and ecological AI-driven data sources (e.g., automated acoustic and machine vision species