Process Operator

Dundee
8 months ago
Applications closed

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Entrust Resource Solutions are looking for Process Operators to join their manufacturing client in Dundee.
Working to Standard Operating Procedures in a GMP environment, you will be responsible for the following:

  • Execution of dispensing, manufacturing and filling and packing operations in accordance with SOPs and Process Instructions.
  • Responsible for setting up of equipment and ensuring correct tools are at hand in preparation for production operations.
  • Ensure equipment and area is in a good state of repair and highlight any fault/deficiencies
  • Accurate and timely completion of all documentation in accordance with SOPs and data integrity policies.
    If you have experience working in a manufacturing setting and would like to hear more, please call Lynsey Hay on (phone number removed) or 5send in an upto date copy of your CV to (url removed)

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