Data Analyst

North Scout
Nottingham
3 days ago
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Data Analyst – Finance Data & Reporting Migration

Outside IR35 (£380-480 per day) | 6-month contract | Fully Remote (UK) | Immediate start

North Scout is seeking a Data Analyst to support a major finance reporting migration programme. This hands-on role focuses on analysing legacy reports, validating data, and enabling reporting teams to rebuild outputs in Power BI.


Responsibilities

  • Analyse and reverse-engineer legacy finance reports to uncover business rules
  • Profile and validate data for accuracy and completeness
  • Conduct source-to-target mapping and document data flows
  • Extract and interrogate data using SQL, Excel, and internal systems
  • Work with BAs, Engineers, Testing, and Power BI teams to deliver usable outputs
  • Support creation of data dictionaries, specs, and process improvements


Skills & Experience

Essential:

  • Strong SQL and advanced Excel skills
  • Experience in data migration, reporting transformation, or data platforms
  • Able to reverse-engineer reports and document logic clearly
  • Autonomous, delivery-focused, and confident liaising with stakeholders


Desirable:

  • Power BI experience
  • Finance reporting knowledge
  • Experience working alongside BAs or in hybrid BA/DA roles


You’ll need: curiosity, problem-solving mindset, and ability to manage your workload in a fast-paced environment.


This is a fully remote, outside IR35 contract for an experienced Data Analyst who enjoys turning legacy reporting into robust, actionable outputs.

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