Data Engineering Lead

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🌍 Remote📍 TELECOMMUTE📍 United StatesFull time

About this role

Role: Data Engineering Lead

Location: Remote (USA)

About MediaRadar

MediaRadar equips marketing, sales and analytics leaders with the intelligence they need to stay ahead. Our platform delivers always-on, AI-enabled Creative, Competitive, Commercial and Market Intelligence—spanning ad strategy, media spend, creative assets and brand messaging across 30+ media channels and five million brands.

With deep insights into more than 35 million ad and campaign assets and $280 billion in media spend, MediaRadar provides a single, interoperable source of truth that plugs seamlessly into enterprise analytics and AI systems. The result: faster, cleaner and more actionable intelligence that drives competitive advantage.

Role Summary

The Data Engineering Lead is a high-velocity, hands-on "player-coach" responsible for technical stewardship, designing scalable systems, and integrating complex Machine Learning models into robust ETL pipelines. You will lead a lean team through a cultural shift toward cross-trained agility while spending 70-80% of your time in the code. Success is defined by achieving total record processing, maintaining strict cloud cost-efficiency, and shrinking data delivery windows.

  • Coding & Technical Stewardship (70-80% Hands-on): Architect and implement complex, end-to-end data pipelines using Azure Databricks and PySpark. Design, build, and maintain a scalable data architecture using the Medallion Architecture (Bronze/Silver/Gold layers).
  • Performance & Cost Optimization: Optimize Apache Spark jobs, tune Databricks units, and define cluster policies to minimize compute costs. Proactively audit and refactor pipelines every 3-6 months to maintain effectiveness and reduce cloud costs. Implement caching strategies (e.g., broadcast joins) and manage performance impact.
  • System Integrity & SLAs: Develop a proactive monitoring and alerts framework to ensure 99.9% reliability and mitigate system issues before they impact end-users. Build an end-to-end Data Validation Framework (e.g., Great Expectations) to enforce data accuracy and consistency. Minimize job failure rates and ensure data is available in the Gold layer within the required 24-hour turnaround time.
  • Database Architecture: Architect and design high-performance schemas in PostgreSQL, managing indexing, partitioning, and optimizing complex analytical queries.
  • Team Leadership & Agility: Lead a lean team toward cross-trained agility, moving away from "siloed specialists". Manage sprint cycles, conduct code reviews, and guide the team on best engineering practices (including CI/CD).
  • Strategy & Scalability: Anticipate future data needs and design High-Velocity Architecture that is highly scalable and manageable to handle sudden volume increases (e.g., double the data from new sources like paid social/CTV). A critical function is translating business-level requirements into clear, technical user stories for developers.
  • ML Integration: Collaborate with ML teams to integrate automated model orchestration into robust ETL pipelines.
  • Collaborate with the offshore team lead to facilitate seamless knowledge transfer and operational continuity across time zones. Establish clear communication protocols, standardized documentation, and robust feedback loops to ensure alignment on project goals. Act as the primary bridge between teams to mitigate bottlenecks and maintain high-quality delivery standards.

Required Technical Stack (Mandatory)

  • Core: Python, PostgreSQL + pgvector.
  • Big Data: Azure Databricks, PySpark, Delta Lake
  • DevOps: Docker, Git, Azure DevOps, CI/CD

Qualifications

  • 10+ years of experience in Data or Software Engineering with deep codebase involvement.
  • 3+ years as a Technical Lead managing agile teams.
  • Proven ability to lead lean, high-impact teams while maintaining high individual output.
  • Experience with cross-training advocacy and scaling data processing through automation.

Desired Qualifications

  • Workflow Orchestration: Experience with Apache Airflow.
  • Containerization: Familiarity with Azure Kubernetes Service (AKS).

Frequently Asked Questions

Is the salary disclosed for the Data Engineering Lead position at tFYbokYRWzVWAWiC9utfq7?
The salary for this Data Engineering Lead role at tFYbokYRWzVWAWiC9utfq7 is not publicly listed. Click "Apply Now" to learn more about the compensation package on their official careers page.
Is the Data Engineering Lead job at tFYbokYRWzVWAWiC9utfq7 remote?
Yes, this Data Engineering Lead position at tFYbokYRWzVWAWiC9utfq7 is remote, with team members based in TELECOMMUTE, United States. You can work from home or anywhere in the supported regions.
Is the Data Engineering Lead role at tFYbokYRWzVWAWiC9utfq7 full-time or part-time?
This is listed as a Full time position. It is posted as a Data Engineering Lead role in the Technology department at tFYbokYRWzVWAWiC9utfq7.
Which team or department does the Data Engineering Lead at tFYbokYRWzVWAWiC9utfq7 belong to?
This Data Engineering Lead position is part of the Technology department at tFYbokYRWzVWAWiC9utfq7. See the full job description for more information about the team structure and responsibilities.
How do I apply for the Data Engineering Lead position at tFYbokYRWzVWAWiC9utfq7?
Click the "Apply Now" button on this page. You will be redirected to tFYbokYRWzVWAWiC9utfq7's official application portal hosted on workable where you can submit your application directly.
When was the Data Engineering Lead job at tFYbokYRWzVWAWiC9utfq7 posted?
This Data Engineering Lead position at tFYbokYRWzVWAWiC9utfq7 was posted on Apr 7, 2026. Apply as soon as possible — early applications are often reviewed first.
Data Engineering Lead
tFYbokYRWzVWAWiC9utfq7
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