Data Analyst

Pure Resourcing Solutions Limited
Ongar
1 day ago
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We’re looking for an SQL Analyst to join a growing data and reporting team in Harlow. This is an onsite role suited to someone who enjoys working closely with the business, handling data hands‑on, and delivering reliable insights that support day‑to‑day decision‑making.

Key responsibilities:

Write, maintain and optimise SQL queries, views and stored procedures
Extract, analyse and validate data to support reporting and operational needs
Build and maintain reports and dashboards (Power BI/Tableau experience beneficial)
Investigate data issues and ensure accuracy and integrity across systems
Support data migrations, system updates and process improvements
Collaborate with operational, finance and commercial teams to understand data requirementsAbout you:

Strong SQL skills with experience working with relational databases
Confident handling large datasets and complex data structures
Strong analytical approach with excellent attention to detail
Experience with reporting/visualisation tools is an advantage
Clear communicator, able to translate technical outputs for non‑technical stakeholders
Enjoys working onsite and engaging directly with teams across the businessThis is a great opportunity for someone who wants to be embedded in the business, own their data area, and make a meaningful impact.

For further infoirmation please contact Hannah Flindall...

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