Full Stack Data Engineer

IO Associates
London
2 days ago
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The Role

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

This hands-on role combines software engineering expertise with strategic problem-solving, spanning data pipelines, operational workflows, and AI models.



Key Responsibilities

Design & Solve: Analyze complex client challenges and design innovative solutions using Palantir technologies.

Engineer Data: Build and maintain data 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 teams to implement AI and machine learning models for real-world challenges.

Technical Excellence: Apply software engineering skills to deliver scalable, reliable solutions.

Grow & Share: Mentor peers, upskill junior engineers, and establish technical best practices.

Partner with Clients: Build trusted relationships positioning you as the go-to advisor.



What We're Looking For
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