Location: | Cambridge |
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Salary: | £34,866 to £45,163 per annum |
Hours: | Full Time, Part Time |
Contract Type: | Fixed-Term/Contract |
Placed On: | 5th February 2025 |
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Closes: | 4th March 2025 |
Job Ref: | NR44970 |
Fixed-term: Funds available until 30 April 2026.
Artificial intelligence (AI) has the potential to become an engine for scientific discovery across disciplines. The Accelerate Programme for Scientific Discovery (https://science.ai.cam.ac.uk/) is a high-profile University initiative promoting the use of machine learning to tackle major scientific challenges.
Accelerate Science:
Generating well-designed software will increase the scope, productivity, reliability, replicability and openness of research. In pursuit of these goals, we are seeking experienced Machine Learning Engineers (MLE) to lead the development of our software culture.
Role holders will contribute to software development activities that facilitate the application of machine learning for scientific discovery. By advising on the development of research projects and providing support to researchers across the University, role-holders will contribute to an environment in which researchers from across domains are empowered to build high-quality research software. The role-holder will be responsible for embedding good practice in scientific programming in research supported by Accelerate and for contributing to Accelerate's teaching and learning activities. The role holder will provide software support to Accelerate's AI Clinic, which supports Cambridge University researchers to resolve engineering issues they might encounter when implementing machine learning methods (https://science.ai.cam.ac.uk/ai-clinic/). They will contribute to Accelerate's community engagement activities, promoting the importance of software engineering in research and supporting the uptake of best practice. The role-holder will also contribute to teaching activities within the team, including our training courses (https://science.ai.cam.ac.uk/resources), study groups and lecture courses such as Machine Learning and the Physical World and Advanced Data Science (https://mlatcl.github.io/resources/).
We're looking for experienced machine learning engineers who have:
To apply and to view further information about the role, click 'Apply' button above.
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The University actively supports equality, diversity and inclusion and encourages applications from all sections of society.
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