P2P Business Data Analyst hybrid

Akkodis
London
4 days ago
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Job Opportunity: P2P - Business Data Analyst (Inside IR35)

Location: Central London (Hybrid - 3 days onsite per week)Contract: 6-months Start: ASAP

About the Role

We are seeking an experienced P2P - Business Data Analyst to play a key role in supporting Our client's journey toward a major 2027 Finance Transformation Go-Live.

You will act as a vital bridge between Business teams, Workstreams, and IT, ensuring clarity of requirements, robust testing, and a smooth implementation path.

Key Responsibilities

  • Collaborate with Business, Workstream, and IT stakeholders to gather, validate, and document accurate functional and technical requirements.
  • Conduct extensive data mapping from Contract Management System to Snowflake and then to SAP
  • Define, execute, and oversee strong testing processes (SIT, UAT) aligned with programme timelines.
  • Ensure traceability between requirements, design, test cases, and deployment outcomes.
  • Work closely with Engineering team to create technical specifications/data models ready for implementation
  • Conduct end-to-end data journey analysis and process mapping

Ideal Candidate Profile

You will have a strong background in ERP-driven P2P process analy...

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