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Data Engineer

Easetalent
City of London
1 week ago
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Overview

Join to apply for the Data Engineer role at Easetalent. Easetalent is a premier recruiting and consulting firm dedicated to connecting top-tier talent with exceptional career opportunities. Our mission is to drive growth and success for both our candidates and partner companies by bridging the talent-opportunity gap.

About the Role

We're looking for a sharp, curious, and proactive Data Engineer who thrives in fast-paced environments and takes pride in building scalable, production-grade data systems. You'll design modern ELT pipelines, integrate semantic layers with LLM tooling, and transform raw, fragmented healthcare data into customer-facing analytics. This is a rare opportunity to shape our data architecture from the ground up, working directly with founders and product leaders.

What You'll Do
  • Build reliable, scalable systems that power complex integrations (e.g., PMS, payments) and internal tools.
  • Take ownership of projects end-to-end from concept to deployed production system.
  • Collaborate closely with product and commercial teams to align engineering with business outcomes.
  • Write clean, maintainable code and continuously improve engineering processes.
  • Develop and debug SQL-based data pipelines using dbt, and work extensively with BigQuery and other data warehouses.
  • Integrate and experiment with LLM-powered data extraction and semantic tooling.
What We're Looking For
  • 2-5 years of experience building production-grade data systems.
  • Strong SQL skills and proficiency with dbt and modern ELT pipelines.
  • Experience with Dagster, Airbyte, BigQuery, Cube, Metabase, PostgreSQL, or similar tools.
  • Solid understanding of data modeling, orchestration, and data warehouse design.
  • A builder mindset, self-directed, execution-focused, and comfortable making decisions with impact.
  • Bonus: Experience in fintech or healthcare, especially dentistry.
Tech Stack
  • Data: Dagster, Airbyte, dbt, BigQuery, Cube, Metabase, PostgreSQL, Supabase
  • AI/LLMs: Google Vertex, Azure AI Foundry, OCR
  • App Layer: TypeScript, Next.js, Tailwind CSS, Node.js, Drizzle, Vercel

Seniorilty level: Not Applicable

Employment type: Full-time


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