Security Data Engineer

Trust In SODA
London
1 month ago
Applications closed

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Security Data Engineer

Location:Hybrid (2 days in London office expected per week)
Contract Length:6 months from start date
Rate:£430/day Inside IR35

About the Role:
The Control Tower is on an exciting journey to provide data-led security insights, and we are looking for an experiencedSecurity Data Engineerto join the team. As a key member of this initiative, you will design, develop, and implement data solutions using the Azure cloud platform, contributing to the creation of scalable data pipelines and insights that empower leadership and colleagues across the organization.

Key Responsibilities:

  • Design and Implement Data Architectures:Create scalable data pipelines usingAzure Data FactoryandDatabricksto ingest, transform, and load data from multiple sources.
  • Data Processing & Transformation:Develop and maintain integration processes, ensuring seamless data flow leveragingDatabricksandSynapse Analytics.
  • Data Storage Management:Select and manage storage solutions likeAzure SQL Database,Azure Data Lake, andAzure Blob Storage.
  • Data Warehousing:Support the building of scalableAzure Synapse Analyticssolutions for large datasets.
  • Real-time Data Processing:Optimize streaming pipelines withAzure Stream Analytics.
  • Data Governance & Security:Implement data governance practices and ensure data quality withinAzure.
  • DevOps & Automation:Automate data pipelines and manage deployments usingAzure DevOpsfor CI/CD.
  • Performance Optimization:Fine-tune data pipelines, queries, and storage solutions for optimal performance.
  • Collaboration:Work closely with cross-functional teams (data scientists, software engineers, business analysts) and senior stakeholders to deliver end-to-end data solutions.
  • Troubleshooting & Continuous Improvement:Diagnose data-related issues and stay updated on emerging technologies in data engineering and banking.


Required Skills & Experience:

  • Proficiency inAzure Data Factory,Databricks, andSynapse.
  • Hands-on experience withPython,SQL, andSparkfor data processing.
  • Strong ability to work with unstructured datasets and design high-quality code.
  • Experience in automating tasks and deploying production-level code.
  • Familiarity withvisualization toolsand building insightful dashboards.
  • Excellent communication and collaboration skills in a team environment.
  • Azure certificationor related technologies (e.g., Microsoft Certified: Azure Data Engineer Associate).
  • Understanding ofsecurity tools,risk frameworks, andchange management principles.
  • Experience inAgile developmentmethodologies anddata managementprinciples.


Desirable Skills:

  • Knowledge of retail banking channels and products, especially related to data-driven insights.
  • Familiarity with industry standards, roadmaps, and best practices fordata engineeringandcloud computing.

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