Data Engineer – Minerva VAT TxR Application – ETL/API

HelloKindred
Telford
2 weeks ago
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  • Contract
  • Department: Staffing
  • Anticipated Hours per Week: 37.5
  • Work Setup: Hybrid
Company Description

Who is HelloKindred?

HelloKindred are specialists in staffing marketing, creative and technology roles, offering a range of talent solutions that can be delivered on-site, remotely or hybrid.

Our vision is to make work accessible and people’s lives better.We do this by disrupting traditional employment barriers –connecting ambitious talent to flexible opportunities with trusted brands.

Job Description

Anticipated Contract End Date/Length: October 05, 2026
Work set up: Hybrid (SC clearance required)

Our client in the Information Technology and Services industry is looking for a Data Engineer to support the Minerva VAT TxR Application – ETL/API initiative. The 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 are functionally equivalent but serve different consumers, and their consolidation will reduce service complexity, eliminate confusion and streamline change management efforts across impacted domains, contributing to overall cost savings.

What will do:

  • Design, develop and deploy data integration and transformation solutions using Pentaho, Denodo, Talend and SAS.
  • Architect and implement scalable ETL pipelines and API-driven data services supporting business intelligence and analytics platforms.
  • Contribute to the consolidation of TXR002 and ADE into a unified central calculations data provider.
  • Develop and deliver Ingestion and Risking capabilities within the SAS Platform including IDP.
  • Collaborate with cross-functional teams to gather requirements, define technical specifications and deliver robust data solutions.
  • Champion Agile and Scrum methodologies to ensure timely sprint delivery and continuous improvement.
  • Drive DevOps practices including continuous integration, automated testing and deployment of data services using tools such as Jenkins, Git, Docker and Kubernetes.
  • Ensure data quality, governance and security standards are upheld across all solutions.
  • Troubleshoot and resolve complex data issues and performance bottlenecks.
  • Mentor and guide junior engineers to foster technical excellence and innovation.
Qualifications
  • Strong expertise in ETL tools including Pentaho and Talend.
  • Experience with data virtualization using Denodo.
  • Proficiency in SAS 9.4 DI and SAS Viya 3.x including SAS Studio, Visual Analytics and Visual Investigator.
  • Experience working with Platform LSF, Jira and platform support tools.
  • Hands-on experience with Git and DevOps tools and practices.
  • Strong SQL and data modelling skills.
  • Experience with Oracle is advantageous.
  • Solid understanding of Agile and Scrum frameworks.
  • Excellent problem-solving, communication and leadership abilities.
  • Proven track record delivering complex data projects within high-performing teams.
  • Certifications in Agile, Scrum, DevOps or relevant data technologies are advantageous.
Additional Information

All your information will be kept confidential according to EEO guidelines.

Candidates must be legally authorized to live and work in the country where the position is based, without requiring employer sponsorship.

HelloKindred is committed to fair, transparent, and inclusive hiring practices. We assess candidates based on skills, experience, and role-related requirements.

We appreciate your interest in this opportunity. While we review every application carefully, only candidates selected for an interview will be contacted.

HelloKindred is an equal opportunity employer. We welcome applicants of all backgrounds and do not discriminate on the basis of race, colour, religion, sex, gender identity or expression, sexual orientation, age, national origin, disability, veteran status, or any other protected characteristic under applicable law.


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