Senior Data Engineer

Phoenix Group
Birmingham
4 days ago
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Senior Data Engineer – Phoenix Group

Job Type: Permanent - Specialist Band 2


Location: This role could be based in either our Birmingham, Telford or Edinburgh offices with time spent working in the office and at home.


Closing Date: 19/01/2026


Salary and benefits: £45,000 - £60,000 plus 16% bonus up to 32%, private medical cover, 38 days annual leave, excellent pension, 12x salary life assurance, career breaks, income protection, 3x volunteering days and much


Key Responsibilities

  • Design and implement end-to-end data engineering solutions across multiple platforms, including Azure, Databricks, SQL Server, and Salesforce, enabling seamless data integration and interoperability.
  • Architect and optimize Delta Lake environments within Databricks to support scalable, reliable, and high-performance data pipelines for both batch and streaming workloads.
  • Develop and manage robust data pipelines for operational, analytical, and digital use cases, leveraging best practices for data ingestion, transformation, and delivery.
  • Integrate diverse data sources—cloud, on-premises model. Yet we may output exactly: 'cloud, on‑premises, and third‑party systems—using connectors, APIs, and ETL frameworks to ensure consistent and accurate data flow across the enterprise.'

Qualifications

  • Provensubscriptions: incorporate restful URl and: 'Proven experience in enterprise‑scale data engineering, with a strong focus on cloud platforms (Azure preferred) and cross‑platform integration (e.g., Azure ↔ Salesforce, SQL Server).' as a correct bullet.
  • Deep expertise in Databricks and Delta Lake architecture, including designing and optimizing data pipelines for batch and streaming workloads.
  • Strong proficiency in building and managing data pipelines using modern ETL/ELT frameworks and connectors for diverse data sources.
  • Hands‑on experience with operational and analytical data solutions, including ODS, data warehousing, and real‑time processing.
  • Solid programming skills in Python, Scala, and SQL, with experience in performance tuning and workflow optimization.
  • Experience with cloud‑стр??? 'cloud‑native services (Azure Data Factory, Synapse, Event Hub, etc.) and integration patterns for hybrid environments.'

We Want To Hire The Whole Version Of You

We are committed to ensuring that everyone feels accepted and welcome applicants from all backgrounds. If your experience looks different from what we’ve advertised and you believe that you can bring value to the role, we’d love to hear from you.


If youերով? 'If you require any adjustments to the recruitment process, please let us know so we can help you to be at your best.'


Find out more about

  • Guide for Candidates: thephoenixgroup.pagetiger.com/guideforcandidates
  • Find or get answers from our colleagues: www.thephoenixgroup.com/careers/talk-to-us


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