Data Analyst - Data Quality & CRM Migration - £40k

Warrington
14 hours ago
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You're the person who spots what others miss in the data.

You see duplicate records before they become issues. You question inconsistencies instead of working around them. You understand that in a migration, data quality determines whether a programme succeeds or fails.

If you want your analysis to directly influence a major system replacement, this Data Analyst this role gives you that platform.

We're interested in your experience working with platforms such as Snowflake, Redshift, Vertica, BigQuery, Databricks or similar analytical database technologies, and experience working with large-scale analytical databases and modern data warehouse platforms.

As the sole Data Analyst you'll be joining a specialist data partner that works within regulated environments. They're helping customers reduce revenue leakage, improve billing accuracy and modernise data environments.

They have a very ambitious roadmap ahead and it's a very busy time after more investment to fuel their next phase of growth, supporting the development of innovative new products and expansion into new markets.

Funding is secured on a major billing platform replacement. The transformation team is currently small (c10 people) but expected to scale significantly over the next few years.

You'll be part of a focused migration pod from the early stages - before vendor selection, helping define what good data looks like in the new environment.

Your experience analysing complex datasets will expose data quality risks before migration begins.

Your analysis and reporting capability will be used to build visibility around data health and integrity. You'll be analysing legacy billing and CRM datasets, identifying inconsistencies, gaps and quality risks, building reporting dashboards around data health and supporting migration readiness assessments.

This is not a pure insight or visualisation role. This is operational, migration-focused data work with real commercial consequences.

If you want to be involved at the start of a multi-year transformation - where your analysis shapes decisions rather than reports on them after the fact - is this worth a conversation?

Please apply for this Data Analyst role which requires an immediate start. £45k + bonus + pension + benefits. 3 days a week in the office.

Find me at Neilesh Sood on Linked In or drop your CV over here.

Modis International Ltd acts as an employment agency for permanent recruitment and an employment business for the supply of temporary workers in the UK. Modis Europe Ltd provide a variety of international solutions that connect clients to the best talent in the world. For all positions based in Switzerland, Modis Europe Ltd works with its licensed Swiss partner Accurity GmbH to ensure that candidate applications are handled in accordance with Swiss law.

Both Modis International Ltd and Modis Europe Ltd are Equal Opportunities Employers.

By applying for this role your details will be submitted to Modis International Ltd and/ or Modis Europe Ltd. Our Candidate Privacy Information Statement which explains how we will use your information is available on the Modis website

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