Details about PhD scholarship in Distributed Optimisation with Applications to Federated Learning at RMIT University 2023/25
PhD scholarship in Distributed Optimisation with Applications to Federated Learning at RMIT University 2023/25 is offered for PhD degree in the field of Computer sciences and Information Technology. You can apply to this scholarship here. The deadline for the sending your application is Deadline varies. This scholarship is provided by RMIT University, Melbourne City campus and the value of this scholarship is Partial Funding, AUD 33,826 per annum . This scholarship is open for: Open to all nationals.
- Degree: PhD
- Provided by: RMIT University, Melbourne City campus
- Deadline: Deadline varies
- Scholarship value: Partial Funding, AUD 33,826 per annum
Eligibility criteria:
To be eligible, applicants must:
- Have a bachelor's degree with honors that requires at least 4 years of full-time study in a relevant field.
- Have a thesis, additional research projects, or courses on research technique that make up at least 25% of a full-time (or equivalent part-time) academic year.
- Have completed at least final year with a distinction average.
- Have a master's degree with a research component that accounted for at least 25% of a full-time (or equivalent part-time) academic year, OR
- Have a master's degree without a research component with a high distinction average.
- Have evidence of appropriate academic qualifications and/or experience that satisfies the ADVC RT&D.
Application process:
To apply, submit the following documents to minh.dao@rmit.edu.au:
- Astatement to outline your interest
- A copy of your academic transcripts
- A CV that includes any publications and the contact details of 2 referees.
Benefits:
Selected applicants will get a scholarship of $33,826 per annum for three years and successful applicants will also be awarded a Tuition Fee Scholarship.
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