Full Stack Data Engineer (Client Facing)

Decho Group
London
1 day ago
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About Decho Group


Decho Group is a fast-growing Tech and AI consultancy, founded to solve complex data challenges for governments and enterprises. We specialise in Palantir technologies, advanced analytics, and AI-driven solutions that transform how organisations make decisions.

In October 2025, Accenture acquired Decho Group, recognising our unique ability to combine deep engineering expertise with strategic advisory, tackling mission-critical problems in defence, healthcare, and commercial industries.


Joining Decho means joining a consultancy where AI meets engineering excellence. You’ll be part of a team that thrives on curiosity, collaboration, and bold thinking, working on projects that genuinely change lives and industries.


The Role

We’re seeking Full stack Data Engineers , across all levels from Junior to Senior Manager, who want to apply their technical skills in AI consultancy and Palantir engineering. You’ll design solutions that unify complex data landscapes, build workflows that drive smarter decisions, and partner with clients to deliver sustainable transformation.

This is a hands-on role where you’ll combine software engineering expertise with strategic problem-solving, working across data pipelines, operational workflows, and AI models.


Key Responsibilities

  • Design & Solve: Break down client problem sets and design innovative solutions using Palantir software.
  • Engineer Data: Build and maintain pipelines and ETL processes to power decision-making models.
  • Create Workflows: Develop operational workflows and decision-support tools that transform enterprise operations.
  • Apply AI: Collaborate with colleagues to implement AI and machine learning models against real-world challenges.
  • Technical Excellence: Apply your software engineering skills to build scalable, reliable solutions.
  • Grow & Share: Contribute to the Decho Lab by mentoring peers, upskilling junior engineers, and driving best practice.
  • Partner with Clients: Build deep, trusted relationships that position Decho–Accenture as their go-to advisor.


What We’re Looking For

  • Experienced Engineer with proven expertise in Python, SQL, and TypeScript.
  • Experience with Palantir technologies: Foundry, Gotham, or similar platforms (preferred)
  • Strong understanding of data engineering, ETL pipelines, and workflow design.
  • Passion for AI, machine learning, and emerging technologies.
  • Excellent problem-solving, collaboration, and communication skills.
  • Curiosity, adaptability, and a drive to make a real-world impact.


Why Join Us

  • Be part of a fast-growing AI consultancy now backed by Accenture’s global scale.
  • Work on mission-critical projects across government, defence, health, and commercial sectors.
  • Gain hands-on experience in AI, advanced analytics, and Palantir technologies.
  • Shape the future of data-driven decision-making while building your own career story.
  • Thrive in a culture that values innovation, collaboration, and bold ambition.



Unfortunately we can not provide sponsorship for this opportunity

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