Technical Specialist (Quantitative Mass Spectrometry)

The University of Manchester
Manchester
1 week ago
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About the Role

We are seeking an enthusiastic and proactive technical specialist to join our dynamic technical operations team, which strives to provide a sector leading technical support for FSE and the wider University. With a commitment to customer service excellence and a passion for science and engineering, the technical specialist will provide an agile technical support service to staff and students to support teaching, research and professional services. FSE’s research and teaching quality is recognised globally; this is an exciting opportunity to join us in Manchester and contribute to the provision of a sector leading technical service.


Responsibilities

  • Applying hands on expertise in areas of analytical chemistry specifically mass spectrometry (QQQ, Q-TOF, MALDI/DESI, ion mobility) and chromatographic separations (UHPLC, GC).
  • Provide high quality and reliable advice, guidance and training to a range of staff, students, visitors and external customers and collaborators on your specific area of expertise in support of teaching, research and service provision.
  • Development of targeted quantification assays for a wide range of challenging analytes with an emphasis on meeting high throughput requirements.

Benefits

  • Fantastic market leading Pension scheme
  • Excellent employee health and wellbeing services including an Employee Assistance Programme
  • Exceptional starting annual leave entitlement, plus bank holidays
  • Additional paid closure over the Christmas period
  • Local and national discounts at a range of major retailers, and more.

Equal Opportunity Employer

As an equal opportunity employer, we welcome applicants from all sections of the community regardless of age, sex, gender (or gender identity), ethnicity, disability, sexual orientation and transgender status. All appointments are made on merit.


Flexible Working

Our university is positive about flexible working – you can find out more here. Hybrid working arrangements may be considered.


No Individual Feedback

Please be aware that due to the number of applications we are unfortunately not able to provide individual feedback on your application.


Recruitment Agency Policy

Please note that we are unable to respond to enquiries, accept CVs or applications from Recruitment Agencies. Any recruitment enquiries from recruitment agencies should be directed to . Any CV’s submitted by a recruitment agency will be considered a gift.


Contact Details

Name: Dr. Katherine Hollywood


Email:


General Enquiries

Email:


Technical Support

https://jobseekersupport.jobtrain.co.uk/support/home


Application Closing

This vacancy will close for applications at midnight on the closing date.


Further Particulars

Please see the link below for the Further Particulars document which contains the person specification criteria.


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