Data Engineer with Palantir Foundry — Digital Products/Applications / Automation & Analytics

Templeton & Partners - Innovative & Inclusive Hiring Solutions
London
4 days ago
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Data Engineer with Palantir Foundry — Digital Products/Applications / Automation & Analytics

Location: London, UK (Hybrid 2-3 days)

Are you passionate about building scalable data platforms and driving digital transformation through analytics?

A leading provider of digital and automation solutions in the technology and consulting industry is seeking a Data Engineer to join its growing team in London.

In this role, you’ll design, build, and maintain robust data pipelines across hybrid cloud environments (AWS & Azure), supporting projects for a global enterprise with diverse business interests — spanning energy, infrastructure, automotive, and more.

What You’ll Do

  • Design, develop, and maintain reliable data pipelines and architectures.
  • Integrate and transform raw data from multiple sources into usable, high-quality formats.
  • Ensure the stability, scalability, and governance of existing data applications.
  • Collaborate with data scientists, analysts, and consultants on dynamic analytics projects.
  • Lead or support technical aspects of Proof of Concept (PoC) initiatives.
  • Mentor junior engineers and contribute to DataOps best practices.
  • Enhance platform performance with CI/CD, version control, and data orchestration tools.

What You’ll Bring

Essential skills and experience:

  • Minimum 4 years’ experience in a data engineering or similar technical role.
  • Strong proficiency with Python and SQL.
  • Palantir Foundry experience ideally up to and at/around 2+ years
  • Hands-on experience with Airflow or equivalent orchestration frameworks.
  • Solid understanding of data warehouses, data lakes, and integration tools.
  • Proficiency with AWS and Azure cloud ecosystems.
  • Experience building and debugging back-end servers, APIs, and data applications.
  • Knowledge of data modelling, mining, and unstructured data processing.
  • Familiarity with Git and CI/CD principles for code deployment and version control.
  • STEM degree (BSc or MSc) and excellent written and spoken English.

Desirable extras:

  • Familiarity with dbt, Power BI, or Streamlit.
  • Experience with vector databases, web scraping, or Agile methodologies.
  • Basic understanding of AI and ML integrations within data platforms.
  • Exposure to project management responsibilities or multilingual environments.

Why Apply

This is an excellent opportunity to work on cutting-edge data transformation projects across multiple sectors while advancing your technical expertise in a collaborative, forward-thinking environment.


Please apply with your latest CV showing all relevant experience, and email your CV with salary expectations, availability to interview and start working

Dr Marina Economidou, Executive Solutions Consultant

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