Contract Data Engineering Analyst

Sanderson Recruitment Careers
Gloucester
3 months ago
Applications closed

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Contract: Data Engineering Analyst

  • Day Rate: £500 per day via Umbrella
  • Location: Bristol / Gloucestershire Area - 2 days per week onsite (flexible working available)
  • Contract Type: Contract

Overview

We are seeking a skilled Data Engineering Analyst to join a leading financial services organisation on a contract basis. The successful candidate will play a key role in delivering data-driven insights and solutions, leveraging ETL tools and cloud data platforms to support business decision-making.

Key Responsibilities

  • Gather, interpret, and document business requirements from non-technical stakeholders.
  • Perform deep-dive data discovery and analysis using ETL tools and SQL.
  • Develop, optimise, and maintain ETL workflows to support data integration and transformation.
  • Collaborate with cross-functional teams to ensure scalable and efficient data solutions.
  • Troubleshoot and resolve data issues, ensuring data quality and accuracy.

Technical Skills

  • Matillion ETL - strong hands-on experience is essential.
  • SQL - advanced proficiency in data querying and analysis.
  • Strong stakeholder management and communication skills, with the ability to translate technical outputs into business-friendly insights.
  • Experience with Snowflake (or alternative cloud data ...

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