Data Strategy Lead

Bromley Town
3 weeks ago
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Job Title: Data Strategy Lead

Work Location: Bromley, UK (Hybrid, 3 days in office)

Job Description:

  • We are seeking a Data Strategy Lead to define and drive the modernisation of enterprise data platforms within corporate banking. The role combines data platform strategy, architectural guidance, and AI/ML enablement to deliver scalable, secure, and cost-efficient solutions aligned with enterprise standards and regulatory requirements.

    Key Responsibilities:

  • Define and own the data platform strategy and roadmap.

  • Provide architectural guidance for cloud-native and Lakehouse platforms.

  • Lead migration from legacy data warehouses to modern platforms.

  • Drive performance, scalability, resilience, and FinOps optimisation.

  • Enable AI/ML platforms, including MLOps and model lifecycle.

  • Guide solutions from PoC to production using reusable patterns.

  • Define standards for batch, streaming, APIs, and data services.

  • Ensure compliance with data governance, lineage, quality, and GDPR.

  • Act as a trusted advisor to business, engineering, and risk stakeholders.

  • Collaborate with Product Owners, System Teams, and Agile Release Trains.

    Skills & Experience:

  • 10+ years’ experience in data engineering or data architecture.

  • Strong experience with cloud or hybrid data platforms.

  • Hands-on expertise with Databricks, Snowflake, Kafka, ETL/ELT (Informatica).

  • Strong Python and SQL skills.

  • Experience with Delta Lake, Iceberg, and relational/NoSQL databases.

  • Understanding of AI/ML platforms, MLOps, and enterprise integration.

  • Experience with data governance, lineage, and metadata tools.

  • Strong stakeholder communication skills.

  • Experience working in Agile / SAFe environments

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