310 data-"https:"-"https:"-"https:"-"https:"-"https:"-"https:" positions at University of Sheffield
Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
-
reliable and permanent record of participant flow through the study and all research aspects of the trial, ensuring compliance with ethical and safeguarding policies Manage project data including collection
-
registration, etc.) Maintain records of documentation relating to staff, including recording of sickness/annual leave Maintain information related to committee members and academic administration
-
or desirable Stage(s) assessed at A-Level, BTEC, or equivalent qualification in an IT-related field, or 1-2 years of practical experience in IT support Essential Application Demonstrated knowledge of computer
-
honours degree, or equivalent experience, previous administrative experience, ideally in higher education, and a strong interest in the collation, analysis and presentation of data. Main duties and
-
, graduates, staff and visitors in person, via email and chat functions and telephone, recording enquiries on various information systems as required. Take care of sensitive, confidential, and personal student
-
and control lofting through adjustment of weaving and compaction parameters. Create a process monitoring system to integrate data from the loom with the resulting woven structure. Develop a reduced
-
smooth set up of successful research applications and support for other research information systems such as the University Costing Tool. Main duties and responsibilities Undertake routine costings and
-
, graduates, staff and visitors in person, via email, online chat and telephone, recording enquiries on various information systems as required. Take care of sensitive, confidential, and personal student
-
numerical data, and knowledge, understanding and experience of good laboratory practice are essential. Main duties and responsibilities Assist with development of culture methodology of rotifers and feed
-
with data-driven learning, the digital twin will enable accurate real-time assessment of structural condition, improved prediction of degradation, and reliable estimates of remaining useful life