Data Engineer

OSCAR ASSOCIATES (UK) LIMITED
Birmingham
1 week ago
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Overview

Technology - Databricks, Data Factory, SQL, Python

Location - Birmingham

Working Pattern - Hybrid, 2 days a week in the office

Role - Data Engineer

Salary - Up to £70,000

The role involves designing and delivering a high-performance, scalable data platform that underpins the Intelligence Platform, powering insights for thousands of dealerships worldwide. You will own the end-to-end data lifecycle—from ingesting and transforming complex data sets to optimising performance and architecting secure, cloud-native storage solutions. This role is ideal for someone who thrives on building robust data pipelines at scale and leveraging modern cloud technologies and emerging AI capabilities to drive real-world impact.

Responsibilities
  • Design, build, and own a unified, cloud-native data platform that ingests and processes global data across the Automotive Intelligence Platform.
  • Architect scalable, reusable data solutions with a focus on componentisation, standardisation, and long-term maintainability.
  • Deliver high-performance, reliable data pipelines, optimising throughput and latency for fast access to large and complex datasets.
  • Integrate third-party data sources using bespoke pipelines and Azure Data Factory, ensuring data quality, consistency, and resilience.
  • Design and enforce secure, flexible data access models supporting internal teams and external consumers.
  • Collaborate with data visualisation and product teams to align back-end data processing with front-end analytics and reporting needs.
  • Embed quality and automation by establishing unit and integration testing standards and supporting CI/CD pipelines across the data estate.
  • Identify and resolve bottlenecks across the data stack, leading investigations into performance, reliability, and scalability issues.
  • Provide platform support, diagnosing and resolving data-related incidents and tickets to maintain service excellence.
  • Enable multi-language data presentation and support globalization requirements across the platform.
  • Explore and implement AI-driven capabilities to improve data accuracy, productivity, and insight generation.
Requirements
  • Azure Databricks
  • SQL / Python
  • ELT / ETL
  • Data Factory
Benefits
  • Bonus scheme / Share scheme
  • 25 days holiday plus all UK bank holidays
  • 4x life assurance
  • Enhanced family-friendly leave
  • Employee Assistance Programme (EAP)
  • Ongoing training & professional development
  • Free onsite gym
  • Cycle to Work scheme
  • Eyecare vouchers
  • Regular social events
  • Employee recognition and awards
Apply

If you have experience in Data Engineering and are looking to progress with an organisation that has a strong approach to work in a thriving and ambitious environment, this role may be for you.

Note: This role does not offer sponsorship.

Referrals

If you know someone who might be interested, you could earn £500 in retail vouchers if you refer a successful candidate. Email: to recommend someone for this role.

Interviews for this role will be held imminently. To be considered, please send your CV to us now to avoid disappointment.

Role: Data Engineer

Salary: Up to £70,000

Technology: Data Bricks, Data Factory, SQL, Python

Location: Birmingham

Working Pattern: Hybrid - 2 days a week in the office

Oscar Associates (UK) Limited is acting as an Employment Agency in relation to this vacancy. To understand more about what we do with your data please review our privacy policy in the privacy section of the Oscar website. LNKD1_UKTJ


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