Data Engineer

Norton Blake
City of London
1 week ago
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Role Overview


We are seeking an AI Agent Data Engineer to join the Technology, Data & Innovation division,


This role sits at the core of building next-generation AI processes and control agents deployed across multiple Agent Factories.


You will work closely with AI Acceleration Leads and cross-functional teams to drive projects from concept to production.


The position focuses on designing scalable, agent-ready data systems and enabling seamless integration between AI agents and enterprise environments.


Key Responsibilities


  • Ensure organizational data is agent-ready by aligning data access, availability, and technical architecture.
  • Design, build, and maintain robust data pipelines supporting real-time and batch processing for AI agents.
  • Contribute to the technical implementation of agent systems using frameworks such as Google AI Development Kit (ADK) or comparable technologies.
  • Develop and maintain client libraries for secure collaboration between data systems, agents, and internal platforms.
  • Implement data-centric agent patterns and integrate agents with existing enterprise systems.
  • Conduct continuous testing and validation of data integrations and pipelines throughout the development lifecycle.
  • Incorporate feedback loops to ensure data quality, system reliability, and operational scalability.


Professional Experience


  • 5–7 years of experience as a Software Engineer or Data Engineer.
  • Minimum 2 years of hands-on experience in AI/ML or data-intensive application development.
  • Demonstrated experience designing, building, and testing MCP-based or similar integration solutions.
  • Proven track record delivering production-grade data pipelines and backend systems for complex applications.


Technical Skills


  • Strong proficiency with Google AI Development Kit (ADK) or comparable agent frameworks.
  • Advanced software and data engineering expertise, including:
  • Data modeling
  • API development
  • Model Context Protocol (MCP) concepts
  • Deep understanding of the agent development lifecycle and agent design patterns.
  • Experience implementing testing strategies and iterative development practices.


Languages


  • Professional proficiency in English (required).
  • German language skills are a plus.

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