Senior Data Engineer – Azure

Fynity
London
4 days ago
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Senior Data Engineer – Azure


** 5 days a week onsite - Central London **


£70,000 - £80,000 per annum



About the Role

One of the UK’s leading insurers are looking for a Senior Data Engineer with a primary focus on Azure to lead the design and implementation of scalable, enterprise-grade data solutions. This role will play a key part in building real-time and ETL/ELT data pipelines, maintaining and optimising our data warehouse, and delivering advanced analytics through Power BI.


You will also contribute to innovative AI-driven solutions, including the development of AI agents for post-sales call auditing, leveraging OpenAI’s APIs.


This is a stand-alone, hands-on role based onsite in Central London, working closely with cross-functional teams to drive data and AI initiatives that directly support business outcomes.



Key Responsibilities

  • Design and implement scalable, robust real-time data pipelines integrating diverse data sources (APIs, databases, flat files).
  • Build, maintain, and optimise a high-performance data warehouse to support reporting, analytics, and AI workloads.
  • Develop interactive Power BI dashboards and reports for business stakeholders.
  • Design and implement data integration and transformation using Azure Data Factory, Logic Apps, and Azure Functions.
  • Use Python and SQL for data wrangling, transformation, and large-scale data analysis.
  • Leverage OpenAI APIs to build AI/ML-driven solutions for natural language processing, data enrichment, automation, and post-sales call auditing.
  • Collaborate with product managers, analysts, and data scientists to align data strategy with business objectives.
  • Monitor and optimise pipeline performance, ensuring data quality, reliability, and consistency.
  • Implement best practices for data governance, security, and compliance.



Required Experience & Skills

  • Proven experience as a Data Engineer or Data Architect
  • Proven experience designing and maintaining ETL/ELT pipelines in complex data environments
  • Strong Python skills for scripting, automation, and data processing
  • Advanced SQL skills across relational and cloud-based data platforms
  • Hands-on experience with Azure services, including: Data Factory, Logic Apps, Azure Functions, Azure Synapse and/or Azure Data Lake
  • Strong experience with Power BI, including data modelling and dashboard development
  • Experience working with OpenAI APIs or similar AI/ML services
  • Solid understanding of data warehousing architectures and best practices
  • Excellent analytical, problem-solving, and communication skills



Nice to Have

  • Experience with DevOps and CI/CD pipelines.
  • Familiarity with cloud-native data platforms such as Databricks or Microsoft Fabric.
  • Understanding of data privacy regulations (e.g. GDPR) and secure data handling practices.



If you’re looking for a Data Engineering position that will allow you to take ownership with the opportunity for further long term growth then APPLY NOW!

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