SC Cleared Databricks Data Engineer – Azure Cloud

Montash
Sheffield
2 days ago
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Job Title: SC Cleared Databricks Data Engineer – Azure Cloud

Contract Type: 12 month contract

Day Rate: Up to £400 a day inside IR35

Location: Remote or hybrid (as agreed)

Start Date: January 5th 2026

Clearance required: Must be holding active SC Clearance


We are seeking an experienced Databricks Data Engineer to design, build, and optimise large-scale data workflows within the Databricks Data Intelligence Platform.


The role focuses on delivering high-performing batch and streaming pipelines using PySpark, Delta Lake, and Azure services, with additional emphasis on governance, lineage tracking, and workflow orchestration. Client information remains confidential.


Key Responsibilities

  • Build and orchestrate Databricks data pipelines using Notebooks, Jobs, and Workflows
  • Optimise Spark and Delta Lake workloads through cluster tuning, adaptive execution, scaling, and caching
  • Conduct performance benchmarking and cost optimisation across workloads
  • Implement data quality, lineage, and governance practices aligned with Unity Catalog
  • Develop PySpark-based ETL and transformation logic using modular, reusable coding standards
  • Create and manage Delta Lake tables with ACID compliance, schema evolution, and time travel
  • Integrate Databricks assets with Azure Data Lake Storage, Key Vault, and Azure Functions
  • Collaborate with cloud architects, data analysts, and engineering teams on end-to-end workflow design
  • Support automated deployment of Databricks artefacts via CI/CD pipelines
  • Maintain clear technical documentation covering architecture, performance, and governance configuration


Required Skills and Experience

  • Strong experience with the Databricks Data Intelligence Platform
  • Hands-on experience with Databricks Jobs and Workflows
  • Deep PySpark expertise, including schema management and optimisation
  • Strong understanding of Delta Lake architecture and incremental design principles
  • Proven Spark performance engineering and cluster tuning capabilities
  • Unity Catalog experience (data lineage, access policies, metadata governance)
  • Azure experience across ADLS Gen2, Key Vault, and serverless components
  • Familiarity with CI/CD deployment for Databricks
  • Solid troubleshooting skills in distributed environments


Preferred Qualifications

  • Experience working across multiple Databricks workspaces and governed catalogs
  • Knowledge of Synapse, Power BI, or related Azure analytics services
  • Understanding of cost optimisation for data compute workloads
  • Strong communication and cross-functional collaboration skills

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