Data Analyst

City of London
23 hours ago
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Job Title: Data Analyst

Location: London, Hybrid

My client is looking for an experienced Data Analyst to support a cloud-based data platform, preparing and modelling trusted datasets to enable analytics, dashboards, and self-service reporting across Finance, Supply Chain, Quality, and Operations.

Key Responsibilities

Cleanse and harmonise data from multiple systems (ERP, CRM, MES, LIMS)
Support design and maintenance of Silver & Gold data layers with Data Engineers
Document business rules, data mappings, and de-duplication logic
Conduct data quality checks and validation for GDPR/GMP compliance
Develop analytical models and curated views for business use cases
Build and maintain Power BI dashboards from certified data sources
Collaborate with stakeholders to identify new analytics opportunitiesSkills & Experience

4+ years in Data Analysis, BI, or Data Preparation
Strong SQL and data transformation skills
Power BI (DAX & Power Query) experience
Familiarity with dbt or ELT tools (desirable)
Knowledge of data modelling (star schema, slowly changing dimensions)
Awareness of data governance and compliance (GDPR/GMP)
Manufacturing or regulated industry experience is an advantage
Ability to translate business requirements into reliable datasets

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