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Data Engineer - Databricks / AI

Jacobs
Manchester
1 week ago
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Data Engineer - Databricks / AI

Jacobs Manchester, England, United Kingdom


At Jacobs, we’re challenging today to reinvent tomorrow by solving the world’s most critical problems for thriving cities, resilient environments, mission‑critical outcomes, operational advancement, scientific discovery and cutting‑edge manufacturing, turning abstract ideas into realities that transform the world for good.


Your impact: Enjoy designing elegant data systems, shipping production‑grade code, and seeing your work make a measurable difference.


Our team builds data platforms and AI solutions that power critical infrastructure, transform operations, and move entire industries.


Responsibilities

  • Design & build robust data platforms and pipelines on Azure and Databricks (batch + streaming) using Python/SQL, Spark, Delta Lake, and Data Lakehouse patterns.
  • Develop AI‑enabling foundations feature stores, ML‑ready datasets, and automated model‑serving pathways (MLflow, model registries, CI/CD).
  • Own quality & reliability testing (dbx/pytest), observability (metrics, logging, lineage), and cost/performance optimisation.
  • Harden for enterprise security‑by‑design, access patterns with Unity Catalog, data governance, and reproducible environments.
  • Automate the boring stuff IaC (Terraform/Bicep), CI/CD (Azure DevOps/GitHub Actions), and templated project scaffolding.
  • Partner with clients to translate business problems into technical plans, run workshops, and present trade‑offs with clarity.
  • Ship value continuously, iterate, review, and release frequently; measure outcomes, not just outputs.

Qualifications

  • Utilising SQL and Python for building reliable data pipelines.
  • Hands‑on with Spark (preferably Databricks) and modern data modelling (e.g., Kimball/Inmon/Data Vault, lakehouse).
  • Experience running on a cloud data platform (ideally Azure). Sound software delivery practices (Git, CI/CD, testing, Agile ways of working).
  • Streaming/event‑driven designs (Event Hubs, Kafka, Structured Streaming).
  • MPP/Data Warehouses (Synapse, Snowflake, Redshift) and NoSQL (Cosmos DB).
  • ML enablement feature engineering at scale, MLflow, basic model lifecycle know‑how.
  • Infrastructure‑as‑code (Terraform/Bicep) and platform hardening.

Don’t meet every single bullet? We’d still love to hear from you. We hire for mindset and potential as much as current skills.


We value collaboration, safety, integrity, inclusion and belonging. We’re committed to a culture of caring and providing flexible working arrangements, well‑being benefits, and opportunities to contribute to global giving and volunteering programs.


Jacobs is a disability‑confident employer. We interview all disabled applicants who meet the minimum criteria for a vacancy. We welcome applications from candidates seeking flexible working and from those who may not meet all listed requirements.


Location: Manchester, England, United Kingdom.


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