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Senior Data Analyst

Levy Professionals
London
3 days ago
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Senior Data Analyst

We’re seeking an experienced Data Analyst with experience in data migration and transformation to join our client a global consultancy on a contract basis. Ideally you will have experience with data migration for ERP implementation.

You’ll have well developed visualization techniques, and act as a bridge between the business and IT teams, whose outputs will be pivotal to the success of the implementation.

What you’ll do

As a Senior Data Analyst, you will:

  • Lead data analysis, cleansing, and migration activities across global markets.
  • Create and validate load-ready data files for migration.
  • Act as the bridge between business stakeholders, IT teams, and Systems Integrators
  • Proactively identify and mitigate data risks to ensure a smooth transition.

What we’re looking for

We want someone who brings both technical expertise and business understanding, ideally with experience in complex, global organisations. You’ll need:

  • 5 + years’ experience as a Data Analyst with demonstrable experience of data migration projects in a complex, global organization
  • Experience with data migration for ERP implementation (ideally Dynamics 365 Finance)
  • Finance data domain knowledge (Quote to Cash, Source to Pay, Record to Report)
  • Knowledge of data analysis and extraction tools (e.g. SQL, Excel)
  • Proficiency in Power BI, Database Management
  • Proficiency in Visio & PowerPoint

The role is hybrid with travel to the London Office

If you have the desired skills and experience and would like to find out more please apply to this advert by following the link below and attaching a copy of your most recent CV. If successful we will be in touch to discuss the role in more detail.


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