10 machine-learning-"https:"-"https:"-"https:"-"https:" positions at University of Stirling
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-points to improve building occupants comfort levels Using on a daily basis an automated computer based planned preventative maintenance system, e.g. PPM module within a Computer Aided Facilities Management
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Knowledge of working in a University environment Experience of working with students Computer literate Additional Information Part time (19 hours per week) Open ended Grade 3: £22,786 - £23,742 p.a. pro-rata
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the following tasks: Design, deliver, assess and evaluate clinical research methodology teaching and learning, supervision and assessment activities on the Research, Evaluation and Outcome module Clinical
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qualifications plus substantial relevant work experience OR Learning gained through work experience of a number of years. Will include short courses and other formal training Knowledge & Experience Substantial
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-points to improve building occupants comfort levels Using on a daily basis an automated computer based planned preventative maintenance system, e.g. PPM module within a Computer Aided Facilities Management
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, or other staffing needs etc. Demonstrated commitment to customer service and ability to build effective relationships Ability to work under pressure Self-motivated with a “can do” approach Computer literate
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1131. The University of Stirling recognises that a diverse workforce benefits and enriches the work, learning and research experiences of the entire campus and greater community. We are committed
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the work, learning and research experiences of the entire campus and greater community. We are committed to removing barriers and welcome applications from those who would contribute to further
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respond to specific needs, to gather and implement learnings from feedback, and monitor newly implemented measures Essential Criteria Degree-level qualification or equivalent experience Strong understanding
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on candidate circumstances under 2132. The University of Stirling recognises that a diverse workforce benefits and enriches the work, learning and research experiences of the entire campus and greater community