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Senior Data Engineer

DataArt
City of London
3 days ago
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Overview

Client

Our client is a hedge fund sponsor that mainly manages pooled investment vehicles and typically invests in fixed income, private equity, rates, credit, and foreign exchange. The company operates offices in London, New York, and Hong Kong.

Position overview

We are seeking an experienced Senior Data Engineer with experience in asset management or financial services to join our team. The ideal candidate will have expertise handling diverse datasets via batch files, APIs, and streaming from both internal and external sources. This position is open in London as require present on client office from time to time.

Responsibilities
  • Onboard new datasets and develop data models using Snowflake and DBT
  • Build and maintain data transformation pipelines
  • Design and manage data orchestration and ETL workflows with Azure Data Factory
  • Optimize queries and apply data warehousing best practices for large and complex datasets
  • Collaborate with development teams using agile methodologies, DevOps, Git, and CI/CD pipelines
  • Support cloud-based services, especially Azure Functions, KeyVault, and LogicApps
  • Optionally develop APIs to serve data to internal or external stakeholders
Requirements
  • Production experience as a Data Engineer in asset management or financial services
  • Strong expertise in Snowflake, DBT, and data pipeline orchestration tools (Azure Data Factory)
  • Strong knowledge of SQL, Python, data modeling, and warehousing principles
  • Familiarity with DevOps practices including CI/CD and version control (Git)
  • Experience with Azure cloud services
Nice to have
  • Industry knowledge of Security Master, IBOR, and Portfolio Management


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