Business Data Analyst Inside IR35

Edinburgh
2 months ago
Applications closed

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Cathcart Technology working with a notable organisation based in Edinburgh as they go through a transformaion programme. They're introducing an industry standard project management tool to replace fragmented, manual processes, and are looking for a Data Analyst to play a critical role in improving data quality, streamlining workflows, and enabling better decision making.

The role in a nutshell

You'll analyse and map end to end processes and data flows, help design future state solutions, and work closely with technical teams to support system integration, testing, and change. The focus is on eliminating duplicate data entry, improving reporting accuracy, and embedding efficient, standardised ways of working.

What they're looking for

Strong experience in process and data analysis
Confidence mapping data flows and translating business needs into technical requirements
Experience supporting system design and integration
Excellent stakeholder engagement skills
Comfortable working in a small to medium, change focused environment
Experience with project management tools (e.g. Asta) is a bonus, but not essential.

Please apply or reach out to Craig for more information

Cathcart Technology is acting as an Employment Business in relation to this vacancy

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