Multiple Data Engineers/Scientists/ML Engineers needed - LONDON

Areti Group | B Corp
London
1 month ago
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Overview

Areti Group is hiring multiple Data Engineers/Data Scientists/ML Engineers to join our London team. This is remote-first with travel to client sites; onboarding will be in London. Security cleared or clearable candidates only.

We are working with one of the UK's fastest-growing tech start-ups on high-impact, mission-critical projects across the public sector, defence, and government organisations, delivering real-world innovation powered by data and technology.

Responsibilities
  • Contribute to high-impact, mission-critical projects across the public sector, defence, and government organisations.
  • Work with technologies such as Palantir, Python, and IoT (Internet of Things) to build scalable data solutions.
  • Collaborate with clients and stakeholders; communicate project status and findings effectively.
  • Deliver real-world innovation powered by data and technology.
Qualifications & Requirements
  • Security Cleared or Clearable Candidates Only (DV or SC clearance is desirable)
  • Background in public sector, defence, or government projects is highly desirable
  • Strong communication skills; comfortable working directly with clients and stakeholders
  • Passion for technology, innovation, and building scalable data solutions
  • Experience with data engineering, data science, or ML engineering roles
What You’ll Get
  • Competitive salary paying between £50,000 and £100,000
  • Equity options
  • Exposure to mission-critical projects
  • A collaborative and forward-thinking team
  • Work with leading-edge technologies
Job Details
  • Seniority level: Mid-Senior level
  • Employment type: Full-time
  • Job function: Information Technology
  • Industries: IT Services and IT Consulting

Interviews are happening ASAP – don’t miss out!


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