Data Analyst

London
1 day ago
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Data Analyst| Outside IR35 | £400 - £450 | 6 months | Hybrid London

We’re supporting a large company who are seeking a Data Analyst to turn business and regulatory requirements into actionable metadata within our data platform. This role defines how business logic operates through configuration rather than code, ensuring rules and behaviours are implemented accurately and consistently.

Key Responsibilities
Convert business needs and regulatory requirements into metadata‑driven configuration.
Define how rules, calculations, classifications, and validations function using configurable metadata.
Maintain and update control tables, mapping files, and rule parameters that drive platform behaviour.
Ensure clear traceability from business requirements through to the configured logic and outcomes.
Validate outputs to confirm that configured rules align with business expectations.
Work closely with Solution Designers and Data Engineers to ensure accurate implementation and smooth delivery.
If this is a role that suits your skillset, can work onsite 2 days per month and immediately available then please apply for the job advert directly or reach out to myself at (url removed).

Data Analyst| Outside IR35 | £400 - £450 | 6 months | Hybrid London

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