Data Analyst - Quality Control

Advocate Group
Greater London
4 days ago
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Job Description

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Key Responsibilities:

· Manage and input daily laboratory analysis data, ensuring all out-of-specification results are identified and escalated

· Work independently while collaborating effectively with the wider QC team

· Plan and organise workload across routine data entry and project-based tasks

· Support QC/QA teams with SAP-related queries and how they link to quality processes

· Release compliant product in SAP and block stock where non-conformances arise

· Troubleshoot SAP and IT issues in partnership with internal support teams

· Collaborate with Operations, Transportation, and Inventory teams to ensure timely, accurate product release

· Liaise with external partners including 3rd party warehouses and co-packers

· Support general QC departmental operations as required


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