Senior Data Scientist

Oxygen Digital
City of London
15 hours ago
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We’re partnering with a global SaaS enterprise that has recently acquired a logistics‑optimisation platform. They’re assembling a specialist project team to build an agentic data connector that integrates the newly acquired product with their existing cloud ecosystem. The mission: create a standalone application capable of auto‑discovering APIs, interpreting schemas, and generating accurate data mappings without manual intervention.


What you’ll work on:


  • Build and validate ML models for automated schema understanding, entity recognition, and mapping generation.
  • Analyse APIs and data structures from both platforms to identify integration patterns.
  • Design experiments and prototypes to improve mapping accuracy and agent decision‑making.
  • Collaborate with engineering and product teams to shape agent behaviour and data interpretation logic.
  • Contribute to anagent‑first development approach, orchestrating AI tools to solve integration challenges rapidly.


Skills & experience:


  • Strong background in DS/ML (NLP, optimisation, or schema‑matching experience is a plus).
  • Solid understanding of APIs, data models, and transformation workflows.
  • Experience with agentic AI tools (e.g., Claude, agent frameworks).
  • Comfortable in a fast‑paced R&D‑driven environment.
  • Bonus: exposure to logistics datasets or consultancy experience.


Tech environment:


  • GCP
  • Python (Django beneficial)
  • GraphQL
  • React (handled mainly by engineering)


Contract: 6 months (Inside IR35)

Rate: £550-£650 p/d

Start: ASAP

Location: Remote (UK or Europe)


This is a unique opportunity to shape a genuinely agentic, AI‑driven integration engine within a major global tech organisation.

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