Scrum Master - (ETL/Devops/Big data/Banking/Fintech)

GIOS Technology
Glasgow
4 days ago
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I am hiring for Scrum Master - (ETL/Devops/Big data/Banking/Fintech)

Location: Glasgow (Hybrid – 2–3 days onsite)

Job Description
  • Lead 1–2 Agile squads to deliver data ingestion, transformation, cloud-native data services, metadata/lineage, and platform engineering enhancements.
  • Drive sprint planning, backlog prioritisation, delivery predictability, and Scrum ceremonies with disciplined execution.
  • Track and report delivery metrics (burn-down, cycle time, throughput, flow efficiency) and implement continuous improvements.
  • Ensure compliance with data architecture, security standards, and regulatory requirements (GDPR, CDE, BCBS239).
  • Manage stakeholder communication, risk/issue logs, and ensure consistent Definition of Done (DoD) and non-functional requirements.
Key Skills

Scrum Master, Agile Delivery, Scrum, Kanban, Scaled Agile, Data Engineering, ETL, ELT, Data Pipelines, Data Governance, Metadata, Data Lineage, CI/CD, DevOps, Jira, Confluence, Azure DevOps, Stakeholder Management, Risk Management, GDPR, BCBS239, Cloud Native, Hadoop, Spark, Data APIs, Collibra, Atlas, SDLC, Agile Coaching


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