Data Engineer - Modern Data & AI Platforms

Templeton & Partners - Innovative & Inclusive Hiring Solutions
City of London
4 days ago
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Job Description

Data Engineer – Modern Data & AI Platforms

London (Hybrid 2 days) | Contract/Permanent | 🌍 Global Consulting Environment

Build the data foundations behind AI, automation, and real-world impact.

We’re hiring a Data Engineer to join a fast-growing digital and data practice working with a major global enterprise client operating across energy, manufacturing, chemicals, infrastructure, automotive, and commodities.

This is a hands-on engineering role where you’ll design and run the data systems that power analytics, automation, and AI-driven solutions — working alongside consultants, analysts, and data scientists in a true delivery-focused environment.

No prior experience with our specific data platform is required. If you’re a strong engineer who enjoys learning new tools and solving real business problems with data, we’ll get you there.

🌟 What you’ll be doing

  • Designing and building robust, automated data pipelines on a modern cloud data platform
  • Transforming and integrating data from multiple sources — databases, APIs, files, and unstructured formats
  • Owning and improving existing data solutions: monitoring, debugging, enhancing, and scaling them
  • Developing back-end logic, APIs, a...

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