Data Engineering Manager Azure AI Finance Croydon London

Joseph Harry Ltd
Croydon
3 days ago
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Data Engineering Manager (Architect Architecture Data Development Engineer Engineering Management Head of Agile Microsoft Azure ML AI Automation Finance Financial Services Fabric Synapse DataBricks Snowflake SQL) required by our financial client in Croydon, London.

You MUST have the following:

  • Good experience as a Data Engineering Manager/Lead Data Architect
  • Strong management experience- inheriting teams, raising standards and performance
  • Strategy to align with the needs of the business
  • Excellent design and architecture ability
  • MS SQL Server
  • Azure
  • AI - even if outside work
  • Agile
  • Experience in a financial environment

The following are DESIRABLE, not essential:

  • Microsoft Fabric, Synapse, Databricks or Snowflake

Role: Data Engineering Manager (Architect Architecture Data Development Engineer Engineering Management Head of Agile Microsoft Azure ML AI Automation Finance Financial Services Fabric Synapse DataBricks Snowflake SQL) required by our financial client in Croydon, London. You will inherit a team of 3, comprising two permanent staff and one contractor. The contractor is senior, the two permanent are more junior, making this a very hands-on role. It will be all-encompassing, involving data architecture, engineering for technical delivery and management to cover line-management of the team and alignment of the company's strategy w...

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