Senior Data Engineer

IO Associates
Nuneaton
2 days ago
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My client is scaling a modern data platform and is looking for a Senior Data Engineer with strong Databricks experience to join on a 12-month contract . You'll work on high-volume pipelines, event-driven architecture, and cloud-native engineering that actually stretches your skills.

The Role

You'll design, build, and optimise Databricks-centric pipelines processing billions of events daily. Expect hands-on work across Python, SQL, Delta Lake, streaming, IaC, CI/CD , and cloud (Azure/GCP). This is a contract where you influence architecture, not just maintain it.

You will be working on:

Building large-scale Databricks pipelines (batch + streaming)

Optimising Spark jobs for performance + cost

Implementing Terraform/CloudFormation for data platform components

Setting up CI/CD for data apps

Troubleshooting production issues and driving permanent fixes

Contributing to engineering standards across the platform

The ideal candidate will have:

Strong Databricks + Spark experience

Python + SQL at production level

Cloud experience (Azure or GCP)

Streaming + event-driven architecture knowledge

IaC (Terraform/CloudFormation)

Solid debugging + DataOps mindset

TPBN1_UKTJ

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