Data Engineering Lead

Traffic Label
London
6 days ago
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Data Engineering Lead— Customer Data Platform

Location: Remote / Hybrid (Europe)


Department: Data & Technology


Reports To: CTO


Company: Traffic Label


About Traffic Label

Traffic Label is a performance marketing and technology company with nearly two decades of experience driving engagement and conversion across the iGaming and digital entertainment sectors.


We’re now building a Customer Data Platform (CDP) on Snowflake and AWS — unifying player data across multiple brands to power automation, insights, and personalization.


The Role

We’re looking for a Data Engineering Lead to own the technical delivery and development of this platform. You’ll architect scalable pipelines, lead a small team, and ensure data reliability, accuracy, and performance.


Team size: 3–4 engineers / analysts


Key Responsibilities

  • Design and implement scalable data pipelines processing millions of events daily
  • Own Snowflake data warehouse architecture, optimization, and cost control
  • Lead the engineering team through delivery and performance improvements
  • Collaborate with marketing, analytics, and compliance teams to align data with business goals
  • Maintain 95% data accuracy and 99.9% pipeline uptime

Requirements

  • 5+ years in data engineering, 2+ in leadership roles
  • Expert in Snowflake, SQL, and Python
  • Proficient with AWS (S3, Lambda, IAM) and orchestration tools (Airflow, dbt, etc.)
  • Strong understanding of data governance, cost optimization, and performance tuning
  • Experience with iGaming data, Kafka / Kinesis, or MLflow is a plus

Why Join Us

  • Build a core data platform from the ground up
  • Competitive salary and performance bonuses
  • Flexible remote or hybrid work across Europe
  • Supportive, innovative, data-driven culture

Ready to lead a data platform that powers smarter decisions across global iGaming brands?


Apply now to join Traffic Label’s Data & Technology team.


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