Data Engineer

Method Resourcing
London
8 months ago
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Method Resourcing are delighted to partner with a distinguished Asset Manager based in London looking to hire an Analytics/Data Engineer to join their talented team as they continue to grow, reporting directly into the Head of Data & Analytics.


This role is integral to owning and optimising the firms analytics platform, building scalable pipelines, improving data models, and ensuring governance, quality, and stakeholder alignment.


Liverpool St based, 2/3 days a week in the office.


Responsibilities:

  • Own and maintain the Fabric analytics platform, including monitoring performance and resolving issues.
  • Build and manage scalable data pipelines using Fabric and Azure Data Factory to ensure reliable data ingestion.
  • Develop and support a medallion architecture and apply best-practice semantic modelling (e.g., star schema) to create analytics-ready data structures.
  • Collaborate with analytics and business teams while implementing data governance, version control, and quality assurance processes to ensure data integrity and usability.


About you:

  • Experience building and deploying PySpark notebooks in data warehousing environments, along with strong SQL skills for data transformation and modelling.
  • Solid understanding of relational and dimensional data modelling techniques (e.g., star schema, slowly changing dimensions), with the ability to guide others.
  • Hands-on experience with Microsoft Fabric or Azure Databricks, including exposure to Delta Lake and lakehouse architectures.
  • Familiarity with CI/CD practices and Git-based version control.


Nice to haves:

  • Prior experience in Asset Management / Financial Services
  • DAX and Power BI
  • Awareness of data governance principles & tools (e.g., Purview, Unity Catalog, Fabric Data Governance).


Please apply via the link or contact me directly at .


Best,

Finn

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