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Data Engineering Manager

Velocity Tech
London
2 days ago
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Overview

Engineering Manager / Tech Lead - Data Platform

Location: London

We are seeking an experienced Engineering Manager or Tech Lead to lead our Data Platform team. This role is ideal for someone who not only thrives in solving complex technical challenges but also enjoys mentoring and managing people. You will help shape the architecture, drive innovation, and ensure our data systems scale reliably to support millions of users and products.

The Data Platform team plays a critical role in transforming raw data into actionable insights. We build end-to-end solutions across the entire data stack — from real-time event processing and self-service analytics to large-scale data ingestion and compliance frameworks. Our mission is to design robust, cost-efficient, and privacy-conscious systems that empower the business to make data-informed decisions and accelerate product success.


What You’ll Be Doing

  • Lead, mentor, and grow a team of backend engineers, fostering collaboration, professional development, and engineering excellence.
  • Guide the evolution of our architecture and infrastructure to handle increasing scale, features, and data volume.
  • Partner with stakeholders across product, research, and business teams to align the data platform with strategic goals.
  • Define and track key metrics and KPIs to measure performance, reliability, and impact of our data systems.
  • Take ownership of data compliance and privacy processes, ensuring adherence to global regulations.

Your Skills & Experience

  • 2+ years of experience managing or mentoring a technical team (Engineering Manager, Tech Lead, or similar), including project ownership and cross-functional collaboration.
  • 5+ years of hands-on backend engineering experience, designing and building scalable and highly available systems.
  • Proven track record in data-intensive architecture and operating large-scale systems.
  • Strong experience with cloud-based environments (AWS, GCP, or Azure).
  • Familiarity with global privacy and security standards (GDPR, CCPA, SOC) and data compliance best practices.
  • Ability to thrive in fast-paced, dynamic environments with evolving priorities.

Preferred Qualifications

  • Strong proficiency in SQL, data modeling, relational databases, ETL, and data warehousing.
  • Experience with functional programming and stream processing frameworks (e.g., Flink, Storm, Spark Streaming).
  • Hands-on experience managing high-throughput systems, processing tens of thousands of events per second from multiple sources.


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