Awais Rauf
1 week ago
PhD Position in Machine Learning at Queen's University Belfast Queen's University Belfast in United Kingdom
Degree Level
PhD
Field of study
Computer Science
Funding
Available
Country
United Kingdom
University
Queen's University Belfast

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About this position
Queen's University Belfast is seeking highly motivated PhD students to join research in the field of machine learning and deep learning. The position is supervised by Assistant Professor Awais Rauf, who specializes in cutting-edge research in these areas. Candidates should possess a strong background in machine learning and/or deep learning, demonstrate excellent programming skills, and have a passion for advancing research in this domain.
Applicants are required to have a good GPA and must provide a valid TOEFL or IELTS score as part of the admission process. The opportunity is ideal for students interested in working at the forefront of artificial intelligence and computational research. Interested candidates should prepare their CV and details of relevant experience and contact the supervisor directly via email.
For more information, refer to the supervisor's LinkedIn profile or the official Queen's University Belfast website. This position offers the chance to work in a vibrant academic environment and contribute to impactful research in machine learning.
Funding details
Available
What's required
Applicants must have a strong background in machine learning and/or deep learning, excellent programming skills, a good GPA, and a valid TOEFL or IELTS score for admission. Candidates should be highly motivated and interested in cutting-edge research.
How to apply
Email your CV and details of relevant experience to Awais Rauf. Ensure you meet the GPA and English language requirements. Await further instructions from the supervisor.
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