Data Engineer

HelloKindred
Telford
2 weeks ago
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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: August 2, 2026
Work set up: Hybrid


Our client in the Information Technology and Services industry is looking for a Data Engineer to join the Bronze Team supporting Live Services and project-based development. This role focuses on resolving incidents and problems within live environments while also contributing to ongoing project work requiring strong expertise in Talend, SAS, Oracle SQL, and Unix.


What you will do:



  • Resolve live service incidents and problems across data platforms and integrations.
  • Support development activities across projects requiring Talend, SAS, SQL, and Unix expertise.
  • Develop and maintain data integration and transformation processes using Talend.
  • Work with SAS Studio, SAS Essentials, and SAS DI to manage and process data workflows.
  • Write and optimise queries using Oracle SQL and Oracle PL SQL.
  • Operate within Unix environments to support data processing and troubleshooting.
  • Collaborate with team members to ensure stability, reliability, and performance of live data services.
  • Contribute to continuous improvement of data processes and operational practices.

Qualifications

  • Active SC clearance (HMRC or other government entity) is required.
  • Strong hands-on experience with Talend.
  • Strong experience with SAS Studio, SAS Essentials, and SAS DI.
  • Strong experience with Oracle SQL and Oracle PL SQL.
  • Experience with SAS Viya 4, Informatica, GitLab, or Vault is 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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