Data Governance Analyst (PIM)

London
5 days ago
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Data Governance Analyst (PIM)

Contract: 12 months

Location Fully remote

Pay rate: £45.00 per hour

Are you passionate about data quality, structure, and making information truly work for the business? We're looking for a PIM Data Steward to play a key role in improving and maintaining the quality of our product data across the EMEA region.

In this role, you'll be the go-to expert for ensuring our data is accurate, complete, and ready to support successful product launches. You'll collaborate with cross-functional teams, influence data standards, and help turn complex information into actionable insights.

What you'll be doing:

Ensuring mandatory product data across our core systems is complete, accurate, and consistent
Acting as a central point of contact for data-related questions, issues, and requests
Collaborating with multiple stakeholders to resolve data gaps and inconsistencies
Supporting timely and successful product launches by aligning data readiness with launch timelines
Creating, tracking, and reporting on the status of product data and launches
Continuously improving data quality processes and governance

What we're looking for:

Experience working with data management principles and best practices
Strong understanding of the data lifecycle and how data flows across systems
Ability to work with multiple tools to manage, validate, and report on data
Solid Excel skills
Excellent communication skills - you're comfortable working with both technical and business teams
Experience with marketplaces or e-retailers is a plus
Knowledge of PIM or ERP systems is a plus
Fluent in written and spoken English

Why join us?

You'll be part of a collaborative, forward-thinking environment where your work directly impacts how products are launched, managed, and experienced by customers. If you enjoy problem-solving, working with diverse teams, and taking ownership of data quality, this role offers a great opportunity to grow and make a real difference.

Randstad Business Support is acting as an Employment Business in relation to this vacancy

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