Senior Engineer, Data Engineering

Michael James Associates
London
3 months ago
Applications closed

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Senior Data engineer Insurance Underwriter / MGA - Insurance experience essential
Full time - 1-3 Days a week in the office (City of London)

I am looking for a Senior Data engineer to join an incredibly interesting Insurance Underwriter / MGA. Within this role you will be working closely with the Data analytics team focusing on ETL processes, creating roadmaps for their central data warehouse and working with stakeholders to gather requirements.

Technical Skills
Languages: Python, SQL
Databases: Microsoft SQL Server (Azure SQL Database, SQLite)
ETL Tools: SSIS, Azure Data Factory
Cloud Platforms: SaaS and PaaS environments
Reporting: Power BI
Productivity Tools: Advanced Excel skills
Comprehensive knowledge of data warehouse lifecycles and architecture
Experience working within Agile or Kanban frameworks
Familiar with Azure DevOps, Git, and associated development tools
Desirable:
Azure administration experience
PowerShell scripting

Knowledge
Deep understanding of ETL best practices, common data engineering challenges, and proven remediation approaches.
Experience working in an Agile delivery environment.
Competence in designing and developing data engineering workflows and solutions.
Ability to script and implement dimensional data models (e.g., star schemas) with awareness of common modelling pitfalls.
Knowledge of OLTP versus OLAP/DWH design considerations.
Desirable:
Insurance Experience
Familiarity with Microsoft Azure security and administrative concepts.

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