Director, Data Collective

SovrnBoulder, CO
$225,000 - $250,000Hybrid

About The Position

We're looking for a Director, Data Collective to lead the team that owns Sovrn's data platform end-to-end: the pipelines, lakehouse, data services, and cloud infrastructure that power our exchange, our products, and our customers' decisions. This is a hands-on engineering leadership role. You'll own team composition and hiring; lead architecture and design across the platform; and remain close enough to the code, the systems, and the tradeoffs to make real technical decisions, not just approve them. You'll be working with a strong senior team, a modern stack, and an organization that already uses LLMs and agentic tooling across the data stack. We're looking for a leader who can take what's working from "in use" to "intentional practice." Someone with strong opinions about what high-leverage AI-native data engineering looks like at exchange scale, and the credibility to bring the rest of the org along.

Requirements

  • 10+ years of software / data engineering experience, with a strong hands-on track record in data platforms, distributed systems, or backend infrastructure
  • 4+ years leading and growing engineering teams, including hiring, leveling, and performance management of senior and principal-level engineers
  • Deep, current technical proficiency. You still read code, write design docs, and lead architecture, not just review work
  • Hands-on experience in big data and distributed data processing in the AWS ecosystem (Python, Spark, Kafka/Redpanda, Databricks or similar lakehouse platforms)
  • Experience operating data systems at scale: real-time streaming, batch pipelines, data lakes, metadata management, lineage, and governance
  • Working knowledge of cloud platform engineering practices: IaC (Terraform), CI/CD, observability, IAM, and cost management
  • Track record of leading or substantially contributing to AI / agentic engineering efforts in production, not just experimentation, but shipped, operated, and iterated on
  • Hands-on experience operating production vector databases at scale, including the pipelines and infrastructure to refresh hundreds of millions of vectors on a daily cadence
  • Experience with data security and compliance (PII, CCPA, GDPR)
  • Ability to clearly communicate architectural concepts and team strategy at multiple levels, from engineers to executives to the board
  • Comfort driving technical and organizational decisions in ambiguous, fast-moving environments

Nice To Haves

  • Familiarity with adtech data infrastructure (SSP, DSP, exchange, or ad server environments) and the programmatic ecosystem (OpenRTB, bid request/response flows, auction mechanics, supply path optimization) is a strong plus

Responsibilities

  • Own the skill mix of the Data Collective team; lead hiring and performance management for engineers ranging from mid-level to Principal
  • Set the technical and cultural standards for the team: what "great" looks like in design, code review, on-call, and cross-team partnership
  • Mentor and grow engineers across levels through hands-on design collaboration, technical coaching, and clear career frameworks
  • Partner with the broader engineering leadership team on org-wide planning, budgeting, and roadmap tradeoffs; represent the team's work and constraints to executives
  • Drive architectural decisions across pipeline design, data modeling, lakehouse architecture, and data services layers
  • Heavily contribute to the design and architecture of Sovrn's data pipelines, lakehouse, and data services: high-throughput streaming, always-on batch, petabyte-scale storage and query
  • Lead design reviews and set technical standards across the team; raise the bar on engineering rigor, observability, and operational excellence
  • Stay close enough to the systems to make real tradeoffs on performance, cost, governance, and reliability, and to know when the team's estimates and risk assessments are right
  • Set the team's direction on AI-native data engineering: where LLMs, RAG, agentic workflows, and AI-assisted tooling create real leverage in a high-throughput adtech environment, and where they don't
  • Establish standards for how the team evaluates, trusts, and operates AI-powered systems in production: observability, fallback behavior, model governance, and cost control
  • Identify high-leverage AI applications in the data stack: intelligent pipeline optimization, anomaly detection, automated data quality, forecasting, and LLM-powered data services
  • Own the operational posture of the data platform: SLOs, on-call health, incident response, and continuous improvement
  • Own the infrastructure cost footprint of the Data Collective across AWS and Databricks; drive structural cost improvements through architecture, and disciplined commitment management
  • Drive Infrastructure as Code (IaC) adoption, policy-as-code, governance frameworks (RBAC/ABAC, IAM, SCIM), and CI/CD for infrastructure across the team
  • Make sure the team is investing in the right balance of new capability, platform health, and tech debt
  • Provide domain expertise across the organization to enable business growth through data services and data models
  • Partner with Product, Data Science, AI/ML, Platform, and Security teams to ship end-to-end and to make Sovrn's data assets easier and safer to use
  • Serve as a senior point of counsel to all consumers and stakeholders of Sovrn's data: internal teams, leadership, and external customers of our Data-as-a-Service products
  • Communicate clearly at multiple levels: from architecture documents and design reviews to executive updates on cost, capacity, and risk

Benefits

  • medical, dental, and vision coverage
  • short and long-term disability
  • life insurance
  • paid parental leave
  • 401(k) plan and match
  • 11 paid holidays
  • flexible vacation
  • commuter benefits
© 2026 Teal Labs, Inc
Privacy PolicyTerms of Service