Data Analyst

Roxburgh's Court
3 weeks ago
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I am seeking an experienced Data Analyst for a 3-month contract role (Inside IR35) based in central Edinburgh (hybrid working). You will play a key role in by improving data quality, streamlining workflows, and supporting the implementation of industry-standard project management tools. Working closely with the data and technical teams, you will help eliminate duplicate data entry and enable more accurate, insightful reporting to support better decision-making.

Key skills:

Proven experience in process analysis and end-to-end process mapping

Strong data analysis capability, with a clear understanding of data structures and data flows

Ability to translate business requirements into clear technical specifications

Experience supporting solution design and systems integration activities

Familiarity with Asta Project Management is desirable but not essential

Key tasks:

Map and document existing data flows end-to-end, including downstream systems and data warehouse integrations

Validate current build stage management processes and associated activities

Define and document future-state processes incorporating the new project management tool

Define data structures and data flows aligned with the agreed solution architecture

If you are keen then APPLY NOW.

Bright Purple is an equal opportunities employer: we are proud to work with clients who share our values of diversity and inclusion in our industry

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