Front Office Data Analyst

Nicoll Curtin
London
2 days ago
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Job Description

Front Office Data Analyst – VP - 12 month FTC

Location: London (Hybrid)

Duration: 12 month FTC


An opportunity for a data focused leader to shape and deliver a large scale financial data transformation programme supporting strategic decision making across a banking business. The role centres on building robust data pipelines, owning the data warehouse architecture, and ensuring high quality data to power reporting, analytics and insights. Must have a strong understanding of Front Office Trading and Front Office Data.


Responsibilities:

  • Lead the design, build and optimisation of the enterprise data warehouse, including sourcing, validation, ingestion and data architecture.
  • Develop and manage automated ETL pipelines and workflows for financial datasets.
  • Integrate data warehouse outputs with Salesforce, PowerBI, pricing platforms and other analytical endpoints.
  • Ensure accuracy, consistency and scalability of historic and current datasets and align them to evolving data models.
  • Create detailed business requirements documentation that supports technology delivery teams.
  • Support the build of new data models that power internal management information and AI aligned analytics.
  • Collaborate with internal teams and external providers to improve d...

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