Lead Data Engineer

83zero Ltd
London
1 month ago
Applications closed

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Lead Data Engineer (with Data Analytics Background)

Location: City Of London

Employment Type: Full-time

Salary: £90,000 - £100,000k

Sector: Fintech / Payments

Overview

We are looking for a highly skilled LeadData Engineer with a strong foundation in data analytics to join a growing team. The ideal candidate will have previously worked as a Data Analyst and since transitioned into a more engineering-focused role. You'll help us scale our data infrastructure, design and build robust data models, and contribute directly to our data platform's evolution.

This is a hands-on role where you'll be expected to hit the ground running, contribute to ongoing projects with minimal hand-holding, and help us maintain (and improve) the current team's velocity.

Key Responsibilities

  • Design, develop, and maintain data models to support analytical and operational use cases.
  • Write efficient, production-grade SQL to build data pipelines and transformations.
  • Develop and maintain data workflows and automation scripts in Python.
  • Collaborate with analysts, engineers, and stakeholders to deliver high-quality data solutions.

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