Sr. Data Engineer I
DoubleVerifyIn this role you will own and build backend services and data pipelines that power product expansion — exploring external partner APIs, designing reliable ingestion and reconciliation layers, exposing internal endpoints for other DV teams, and keeping production systems observable and performant at scale.
Stack: Python, SQL, BigQuery, Cloud SQL, Cloud Datastore, Cloud Run (GCP), Prefect, Docker, CI/CD, Git. Java or Rust a plus.
Looking for: 3+ years in data engineering or backend engineering. Strong Python and SQL. Experience integrating with external APIs and operating production data systems at scale. Comfort with cloud-native environments and modern engineering practices. AdTech/auction-system familiarity is a plus, not required. We use an AI-augmented dev style — familiarity with Claude Code or Cursor is welcome but not mandatory.
Apply: https://boards.greenhouse.io/doubleverify/jobs/7513841002
Opens the company's application page
Listed via
Findwork
findwork.dev
Similar roles
AI Data Associate (Dutch) , Artificial General Intelligence Data Services
AI
AI Data Associate (Dutch) , Artificial General Intelligence Data Services
AI

Senior Data Researcher
Dolby

IT Specialist (Data Management)
Food Safety and Inspection Service
Design & Tech
Related reads from TCHNX

The Emergence of Small Language Models: Why Efficiency Is Overtaking Scale
As the AI industry confronts computational costs and environmental concerns, a new generation of compact models is proving that bigger isn't always better. Small language models are reshaping enterprise AI deployment.

Algorithmic Bias in Design Systems: Why Your AI-Generated UI Might Exclude Users
As AI tools increasingly generate interface components, they're embedding biases that systematically exclude users. Understanding how machine learning models inherit prejudice is essential for creating truly inclusive design systems.

The Synthetic Design Problem: Can AI-Generated Assets Ever Replace Human Creativity?
As AI design tools flood creative workflows, a fundamental question emerges: are we automating creativity or merely industrialising pastiche? The answer reshapes how we understand design innovation itself.