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Senior Data Engineer – Behavioural AI

55 Exec Search
Manchester
3 days ago
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Location: Remote (with occasional travel)


Do you want to build the data foundations for an AI company that is transforming digital security on a global scale?


What You’ll Do

  • Design & Build Pipelines: Create scalable ETL/ELT processes for behavioural and sensor data, with both batch and real-time applications.
  • Enable AI at Scale: Develop feature stores, training datasets, and reproducible ML pipelines to supercharge model development.
  • Own the Architecture: Define data lake/warehouse solutions on modern cloud platforms, with governance, lineage, and privacy built in from day one.
  • Drive Quality & Security: Build monitoring, validation, and alerting systems while ensuring compliance with GDPR and other data regulations.
  • Collaborate Across Teams: Partner with AI researchers, software engineers, and product leaders to deliver high-impact data solutions.

What We’re Looking For

  • Experience: 5+ years in data engineering or related roles, ideally having experience with behaviour biometrics, sensor data or real time series data
  • Tech Stack Mastery: Python, SQL, and modern data tools (Airflow, dbt, Kafka, etc.), plus hands‑on with AWS/GCP/Azure.
  • Data for AI: Strong background in ML data pipelines, real‑time streaming, and ideally mobile/sensor/time‑series data.
  • Mindset: A systems thinker with startup DNA, curious, pragmatic, and ready to solve problems at speed.
  • Leadership Potential: Ambition to grow into a Head of Data role as the company scales.

Why Join?

  • Impact: Your work will directly fuel AI models that are redefining authentication worldwide.
  • Ownership: Build the data ecosystem from the ground up; you won’t just maintain pipelines, you’ll set the standard.
  • Growth: Join at a moment of global expansion and help scale both the company and your own career.
  • Innovation: Work with cutting‑edge behavioural AI in a high‑growth, venture‑backed startup.

This is more than a role, it’s an opportunity to shape the data strategy of a company at the frontier of Behavioural AI and authentication.


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