-
Forschungsgemeinschaft, German Research Foundation. The selected candidate would conduct research at the interface of theory and application. The project seeks to develop mathematical models for allocation of critical
-
range of machine learning tasks, including classification, forecasting and clustering. Your responsibilities will be to help maintain and develop the toolkit, and to focus on helping develop aeon as a
-
the significant antibody capabilities and expertise at Boehringer to develop new and more effective antibody reagents for cancer patients. The current opportunity is for a research fellow to join the team to help
-
partners to broaden the scope of your research; Liaise with our industry partners to ensure commercial impact of your research; and Develop and participate in activities for engagement with the public
-
the Natural Environment Research Council to develop new technology for monitoring pollution in rivers and lakes. You will work as part of an interdisciplinary team (including engineers, environmental
-
Develop and participate in activities for engagement with the public, policymakers and key stakeholders. You will benefit from: Extensive opportunities for collaboration with our project partners. Access
-
of Excellence for Cyber Security Research and Cyber Security Education which draw together expertise from across the University, including Computing, Electronics, Law, Management, Mathematics, Sociology and
-
developing your career while maintaining a good work-life balance through family-friendly policies. The position will provide you with time and resources to explore and develop independent research. The post
-
term basis for 36 months due to funding restrictions. As part of your role, you will: Develop novel Bayesian machine learning approaches for psychoacoustic modelling. Publish your findings at top-tier
-
(s) extension on related projects. As part of your roles, you will design and develop ML algorithms that make deep learning models learn on the fly and solve multiple tasks efficiently on embedded