Data Architect

Premier Technical Services Group Ltd (PTSG)
Manchester
3 days ago
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We aren’t just migrating legacy systems at PTSG; we are building the future. We’re looking for a Data Architect to lead the design and execution of a green field data ecosystem on Google Cloud Platform (GCP).


This is a rare "blank canvas" opportunity. You will have the autonomy to select the right tools, define the governance, and build a scalable, resilient architecture that will serve as the backbone for our next generation of products.


This is a full time, permanent role, working 8am to 5pm Monday to Friday. You will be based from either our Altrincham office (WA15 8FH) or Castleford head office (WF10 5HW) on a hybrid basis (working from home with an office day approximately once a week).


What You’ll Do

As the primary architect for this initiative, you will bridge the gap between high-level business strategy and deep technical execution.



  • Design from Zero: Lead the end-to-end architecture of a modern data platform, utilizing BigQuery, Dataflow, and Pub/Sub
  • Set the Standard: Establish best practices for data modelling (Star, Snowflake, Vault), CI/CD for data pipelines, and Infrastructure as Code (Terraform).
  • Security & Governance: Implement robust IAM policies, data encryption, and lineage tracking from day one
  • Collaborate: Partner with Product Managers to ensure the platform enables advanced ML/AI capabilities

Your Technical Toolkit

We value expertise over a long list of keywords, but here is what our ideal stack looks like:


Data Warehouse - BigQuery (BigLake, Omni)


Processing - Dataflow (Apache Beam), Dataproc (Spark)


Orchestration - Cloud Composer (Airflow) or Dagster


Governance - Dataplex, Data Catalog


Who You are

  • A Visionary: You don't just follow blueprints; you write them. You understand the trade-offs between different architectural patterns.
  • GCP Native: You have a clear understanding of the Google Cloud ecosystem
  • Code-Fluent: You are comfortable in Python, Java, or Go, and you treat your infrastructure like software
  • Communicator: You can explain the "why" behind a complex partitioning strategy to a stakeholder just as easily as you can debug a pipeline with an engineer.

No technical debt. No "we've always done it this way." Just pure engineering challenges and the chance to build a world‑class data foundation from the ground up.



  • Company pension scheme
  • Life Assurance (3 x salary)
  • Discounts on everyday shopping, fashion, tech, holidays, meals out, gyms and more
  • A supportive, friendly office culture, and plenty of chances to learn


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