Data Analyst - Quality Control

Advocate Group
Greater London
3 days ago
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Job Description

Want to re-energise your career with Monster Energy, the powerhouse behind your favourite energy drinks and events?


Are you bold, relentless, and ready to take your professional journey to the top?

This is your chance to elevate your career with one of the most iconic, highest-performing energy drink and lifestyle brands in the industry!


💚 Here’s what you need to know.


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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