Data Analyst

Altum Consulting
London
6 days ago
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Direct message the job poster from Altum Consulting


Specialist Accounting & Finance Recruiter | Amsterdam & London

Altum Consulting are recruiting for a driven Data Analyst to join a technology business based in central London for an initial 4-month contract (day rate)


This role is critical in supporting Master Data Management (MDM) initiatives within NetSuite to help clean, refine, and optimise supplier data. For the right person, there's strong potential for the role to evolve into additional projects across the business.


Role:


Master Data Management (NetSuite):



  • Conduct a full review and cleanup of vendor master data.
  • Verify and correct vendor details, ensuring data accuracy and consistency.
  • Complete missing essential information, such as email addresses and remittance details.
  • Support the separation and optimisation of data-related processes that currently sit with the AP team.
  • Clean and consolidate the supplier database to ensure completeness and reliability.
  • Analyse current supplier prices to identify inconsistencies, trends, and opportunities for cost optimisation.
  • Present insights and recommendations to internal stakeholders.

You’ll be/have:



  • Highly comfortable working with, interpreting, and manipulating large and complex datasets.
  • Expert‑level skills in Excel (advanced formulas, pivot tables, data cleaning, and analysis tools).
  • Strong attention to detail and a proactive approach to data accuracy and process improvement.
  • Able to start immediately and hit the ground running.
  • Experience with NetSuite is highly desirable.

For further information on this new role please contact Jen McMurray on the attached details. Candidates will be considered immediately for interview and start.


Seniority level

Entry level


Employment type

Full-time


Job function

Accounting/Auditing


Industries

Technology, Information and Internet


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