Data Engineering Team Lead (Agentic Search)

Nebius
IL

Who this role is best for

Aimed at senior data engineers who architect analytics-ready data models and lead teams in AI-driven search platforms.

Best fit for

  • Experienced data engineers comfortable designing medallion schema data warehouses.
    — “Have hands-on experience with Snowflake (or a comparable cloud data warehouse) and a strong grasp of data warehouse architecture preferably medallion schema.
  • Leaders who balance team management with hands-on system design.
    — “You will lead our data platform, hire and grow the team, and stay hands-on enough to design and review the systems your team ships.
  • Candidates with production experience debugging distributed data systems.
    — “Have operated data systems in production: debugged them under pressure, recovered from data incidents, and understand what it means to backfill a corrupted table.

Things to consider

  • Must accommodate multi-region data ingestion from diverse sources.
    — “The platform spans tens of terabytes and ingests from tens of proprietary and third-party sources - our own search engine and its components, CRM, billing, identity, and product analytics across multi-region production environments.
  • Requires fluency in both Python and SQL for production workloads.
    — “Are fluent in Python and SQL for production data work

How to stand out

  • Demonstrate concrete examples of data governance implementations.
    — “Data Governance: Can ensure the highest standards of data quality, integrity, and security across all environments.
  • Highlight experience with real-time ingestion pipelines and observability tooling.
    — “Define and implement observability for the data platform: data quality checks, freshness monitors, lineage, schema evolution, and cost controls
  • Showcase domain modeling for search or agent-based systems.
    — “Define the objects, entities, and relationships that model Tavily's search domain - agent inputs, URLs, chunks, agent sessions, crawls, and the connections between them
Pace · SteadyCollaboration · HighAutonomy · HighDecision Impact · TeamLevel · Lead

Derived from job-description analysis by Serendipath's career intelligence engine.

What success looks like

  • leading the data platform
  • hiring and growing the team
  • defining and implementing observability for the data platform
Typical background
data engineering experienceteam leadership

Skills & requirements

Required

Data Platform ArchitectureData IngestionData WarehouseBatch And Streaming PipelinesObservabilityData Governance

Preferred

Ai/ml InfrastructureGPU OrchestrationInference Optimization

Stack & domain

Data EngineeringData Platform ArchitectureData WarehouseBatch And Streaming PipelinesObservabilityData GovernanceLeadershipMentoringCollaborationCommunicationFinanceHealthcare

About the role

Original posting from Nebius

About Nebius:

Nebius is leading a new era in cloud infrastructure for the global AI economy. We are building a full-stack AI cloud platform that supports developers and enterprises from data and model training through to production deployment, without the cost and complexity of building large in-house AI/ML infrastructure.

Built by engineers, for engineers. From large-scale GPU orchestration to inference optimization, we own the hard problems across compute, storage, networking and applied AI.

Listed on Nasdaq (NBIS) and headquartered in Amsterdam, we have a global footprint with R&D hubs across Europe, the UK, North America and Israel. Our team of 1,500+ includes hundreds of engineers with deep expertise across hardware, software and AI R&D.

The Product:

In a rapidly evolving world, trust in AI depends on AI agents being grounded in fresh, verified real-world data. Search is the foundation that makes this possible.

We are building an agent-native search platform designed specifically for AI systems rather than human users. Our product provides programmatic, low-latency, and observable search APIs that AI agents use to retrieve, filter, and reason over real-world information at scale.

Behind every search request is a rich stream of signals - query patterns, retrieval decisions, crawling outcomes, ranking quality, usage and revenue events. Turning that stream into a trustworthy, queryable data platform is what makes the product improvable, the business measurable, and the models trainable.

The Role:

We are looking for a Data Engineering Team Lead to lead our data platform - both the data behind our search quality and ML pipelines, and the analytics that drive product and business decisions.

In this role, you will lead a team of data engineers and own the end-to-end data lifecycle: ingestion from production services, helping model and architect our data warehouse, and exposing clean, well-documented data to researchers, engineers, and analysts across the company.

The platform spans tens of terabytes and ingests from tens of proprietary and third-party sources - our own search engine and its components, CRM, billing, identity, and product analytics across multi-region production environments. Around 100 internal users rely on it daily.

You will lead our data platform, hire and grow the team, and stay hands-on enough to design and review the systems your team ships.

In this position, your responsibility will be to:

Lead and architect Tavily's data platform - from real-time ingestion through data warehouse medallion layers to consumer-facing datasets and dashboards

Lead, hire, mentor, and grow a team of data engineers; set engineering standards for code quality, testing, documentation, and on-call

Work closely with engineers across the company to make sure batch and streaming pipelines are done correctly

Define and implement observability for the data platform: data quality checks, freshness monitors, lineage, schema evolution, and cost controls

Partner with researchers, engineers , analysts, finance, and product managers to deliver trustworthy datasets for product & gtm analytics.

Define the objects, entities, and relationships that model Tavily's search domain - agent inputs, URLs, chunks, agent sessions, crawls, and the connections between them - and turn that mental model into a clean, queryable data model that the rest of the company can reason about.

Data Governance: Can ensure the highest standards of data quality, integrity, and security across all environments.

You may be a good fit if you:

5+ years of Data Engineering experience, with a focus on designing and implementing scalable, analytics-ready data models and cloud data warehouses (e.g., BigQuery, Snowflake).

Have hands-on experience with Snowflake (or a comparable cloud data warehouse) and a strong grasp of data warehouse architecture preferably medallion schema.

Deep knowledge of databases (schema design, query optimization) and familiarity with NoSQL use cases.

Expertise in modern data orchestration and transformation frameworks (e.g., Airflow, DBT).

Solid understanding of cloud data services (e.g., AWS, GCP) and streaming platforms (e.g., Kafka, Pub/Sub).

Have hands-on experience with the Spark / MapReduce paradigm and understand when distributed processing is the right tool

Are fluent in Python and SQL for production data work

Have operated data systems in production: debugged them under pressure, recovered from data incidents, and understand what it means to backfill a corrupted table.

Benefits & Perks:

Competitive compensation

Career growth and learning opportunities

Flexibility and work-life balance

Collaborative and innovative culture

Opportunity to work on impactful AI projects

International environment and talented teams

What's it like to work at Nebius:

Fast moving - Bold thinking - Constant growth - Meaningful impact - Trust and real ownership - Opportunity to shape the future of AI 

Equal Opportunity Statement:

Nebius is an equal opportunity employer. We are committed to fostering an inclusive and diverse workplace and to providing equal employment opportunities in all aspects of employment. We do not discriminate on the basis of race, color, religion, sex (including pregnancy), national origin, ancestry, age, disability, genetic information, marital status, veteran status, sexual orientation, gender identity or expression, or any other characteristic protected by applicable law.

Applicants must be authorized to work in the country in which they apply and will be required to provide proof of employment eligibility as a condition of hire. 

If you need accommodations during the application process, please let us know.

Source: Nebius careers

Similar roles