Palantir Foundry Data Engineer X2

TXP
London
1 day ago
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Role: Palantir Foundry Data Engineer

Location: Remote working

Day rate: £400pd-£500pd

Contract: 3 month initial

We are currently recruiting for an experienced Data Engineer with strong, hands-on expertise in Palantir Foundry to design, build, and optimize scalable data pipelines, semantic models, and data products.

In this role, you will work closely with data scientists, analysts, product teams, and business stakeholders to deliver robust, production-grade data foundations that support analytics, automation, and operational decision-making. You will play a key part in shaping the data ecosystem, ensuring reliability, performance, and long-term sustainability.

Skills and experience required

Strong experience in data engineering
Proven, hands-on experience working with Palantir Foundry in a production environment.
Strong proficiency in Python, SQL, PySpark and Spark SQL
Experience delivering production pipelines in AWS, Azure, or GCP environments.
Solid understanding of data modeling, schema design, metadata management, and governance.
Familiarity with CI/CD, Git-based workflows, and software engineering best practices.

This will be a remote working opportunity, which may require occasional travel to client site, please consider this when applying for the role.

If you are interested in the role and would like to apply, please click on the link for immediate consideration...

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