Lead Python Data Engineer - Leading Technology AI Brand

MLR Associates
London
21 hours ago
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  • Senior Engineer/Architect
  • Leading Technology AI Brand
  • SaaS - Platform based Technology Services
  • London/City
  • £70-100k salary + equity package

Our client a global technology leader is currently looking for a Senior/Lead Data Engineer to work with the dev team to guide the provision of Software Development for an exciting new AI product.

Key Responsibilities:-

  • Architect and build scalable data pipelines and infrastructure
  • Design and maintain data ingestion, transformation, and storage architectures for operational and AI workloads.
  • Develop and manage batch and Real Time data pipelines.
  • Build and optimize systems for vector search, retrieval, and ML data pipelines.
  • Ensure data reliability, security, and governance across the platform.
  • Collaborate with AI and Back End engineering teams to support training, inference, and product features.
  • Implement monitoring, observability, and data quality frameworks.

Core Experience:-

  • 7+ years of experience in data engineering or Back End engineering roles.
  • Strong experience designing and building data pipelines and distributed data systems.
  • Experience working with relational databases (PostgreSQL preferred...

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