Data Engineer - Minerva VAT TxR Shared Platform Services

Telford
23 hours ago
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Job Title: Data Engineer - Minerva VAT TxR Shared Platform Services

Rate: £515 per day inside ir35

Start date: 1st MAY 2026

Duration: 6 months

Location: Telford/hybrid (2 days per week on site)

Candidates must be willing and eligible to go through SC security clearance

Project Overview:

This project aims to unify RSDD APIs TXR002 and ADE into a single service that will act as the central calculations data provider for all current and future consumers. Both services-TXR002 and ADE-are functionally equivalent but serve different consumers. By consolidating them, the project seeks to reduce service complexity, eliminate confusion, and streamline change management efforts across impacted domains, contributing to overall cost savings.

This role will form part of a new scrum team within Minerva Platfrom to develop and deliver the Ingestion and Risking within the SAS Platform including IDP.

Key Responsibilities:

Design, development, and deployment of data integration and transformation solutions using Pentaho, Denodo, Talend, and SAS.
Architect and implement scalable data pipelines and services that support business intelligence and analytics platforms.
Collaborate with cross-functional teams to gather requirements, define technical specifications, and deliver robust data solutions.
Champion Agile and Scrum methodologies, ensuring timely delivery of sprints and continuous improvement.
Drive DevOps practices for CI/CD, automated testing, and deployment of data services.
Mentor and guide junior engineers, fostering a culture of technical excellence and innovation.
Ensure data quality, governance, and security standards are upheld across all solutions.
Troubleshoot and resolve complex data issues and performance bottlenecks.Key Skills:

SAS 9.4 (DI), SAS Viya 3.x (SAS Studio, VA, VI).
Platform LSF, Jira, Platform Support.
Strong expertise in ETL tools: Pentaho, Talend.
Experience with data virtualization using Denodo.
Proficiency in SAS for data analytics and reporting.
Oracle (good to have).
Solid understanding of Agile and Scrum frameworks.
Hands-on experience with DevOps tools and practices (e.g., Jenkins, Git, Docker, Kubernetes).
Strong SQL and data modeling skills.
Excellent problem-solving, communication, and leadership abilities.If you are interested in this role, please feel free to submit your CV

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