93 computational-physics-"https:"-"https:"-"https:"-"https:"-"UCL" positions at Manchester Metropolitan University
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flexible working arrangements, including hybrid and tailored schedules, which can be discussed with your line manager. If you require reasonable adjustments during the recruitment process or in your role
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your line manager. If you require reasonable adjustments during the recruitment process or in your role, please let us know so we can provide appropriate support. Our commitment to inclusivity includes
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continues to be reflected in consistently high satisfaction ratings from both employers and apprentices. Over the past decade, our programme has grown significantly. We now work with over 700 employers—from
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continues to be reflected in consistently high satisfaction ratings from both employers and apprentices. Over the past decade, our programme has grown significantly. We now work with over 700 employers—from
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The Faculty of Science and Engineering at Manchester Metropolitan University is dedicated to advancing sports science, engineering, computing, life and natural sciences through world-class research, education
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reasonable adjustments during the recruitment process or in your role, please let us know so we can provide appropriate support. Our commitment to inclusivity includes mentoring programmes, accessibility
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the recruitment process or in your role, please let us know so we can provide appropriate support. Our commitment to inclusivity includes mentoring programmes, accessibility resources, and professional development
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to this project, please get in touch with the proposed Principal Supervisor. To apply you will need to complete the online application form for a full time PhD in Physical Sciences (via the ‘Apply’ button above
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during the recruitment process or in your role, please let us know so we can provide appropriate support. Our commitment to inclusivity includes mentoring programmes, accessibility resources, and
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on understanding what is essential for multimodal learning when computation, memory, or energy are limited. Rather than scaling up models, the research aims to identify principled, lightweight methods