VP, Data Platform and Knowledge

WolfePittsburgh, PA
Onsite

About The Position

Wolfe is building the data and knowledge foundation that every AI-powered product, team, and decision in the company will run on and we’re looking for a VP-level leader to own it. As VP of Data Platform & Knowledge, you will set the strategic direction for how Wolfe ingests, governs, structures, and surfaces information at scale. This is an executive-level, high-trust role at the intersection of data engineering, knowledge architecture, and AI infrastructure – one that sits at the center of Wolfe’s long-term competitive advantage. You will work directly with the C-suite and cross-functional leadership to make our data trustworthy, our AI teams self-sufficient, and our platform ready to grow as fast as the business demands. You’ll bring a founder’s sense of urgency and ownership, operating with the authority to make decisions, the accountability to deliver outcomes, and the influence to align the entire organization around a shared data standard. This is not a hands-on engineering role. You will set direction, attract and lead talent, and hold the organization accountable to results. This is a 5-day onsite role in Pittsburgh, PA.

Requirements

  • 10+ years of progressive experience in data platform, data engineering, or knowledge infrastructure with at least 5 years in a senior leadership role owning a team, a budget, and a multi-year roadmap.
  • Executive-level track record of building or scaling a data platform at a high-growth technology company, ideally in an AI-native or AI-first environment where semantic data structure and reliability are core product requirements.
  • Deep fluency in modern data stack components including vector databases, embedding pipelines, and LLM-adjacent infrastructure with the authority and experience to make high-stakes architectural decisions and hold engineering teams accountable to them.
  • Proven ability to operate at the executive level: aligning C-suite stakeholders, communicating complex platform tradeoffs in business terms, and driving company-wide adoption of data standards through influence rather than mandate.
  • Founder-level ownership mindset you define the outcome, build the team to deliver it, remove the blockers, and measure everything.

Nice To Haves

  • Data trust is quantified, not assumed: A data quality scoring system is live across all core data sources, with at least 90% of priority datasets rated and documented and a defined SLA for how quickly a data quality issue is identified, escalated, and resolved (target: under 24 hours from detection to remediation).
  • New source onboarding is systematized and proven: A repeatable ingestion onboarding process is documented and has been successfully used to bring at least one net-new data source from scoping to production in 30 days or fewer, with zero regression to existing pipelines.
  • AI teams are unblocked and self-sufficient: At least two active AI product teams can independently identify which data sources to rely on for their use case measured by a reduction in ad hoc data questions escalated to the platform team by at least 50% compared to baseline at time of hire.

Responsibilities

  • Own the enterprise-wide data and knowledge platform strategy including ingestion pipelines, governance frameworks, vector databases, and semantic search infrastructure ensuring every layer is production-grade, scalable, and AI-ready.
  • Define, enforce, and evangelize data quality and governance standards that operate by default, not by committee, eliminating friction for AI and engineering teams building on the platform.
  • Serve as a key executive stakeholder across AI product, engineering, and business leadership translating platform capability into business outcomes and ensuring organizational alignment on data standards and prioritization.
  • Build, grow, and retain a high-performing team of data and knowledge engineers, setting a culture of velocity, ownership, and measurable accountability at every layer of the stack.
  • Drive the architecture and expansion of Wolfe’s knowledge foundations including systematic onboarding of new data sources so that growth in data complexity creates clarity, not chaos.

Benefits

  • Restricted Stock Units (RSUs)
  • Incentive Bonus
  • Profit Share
  • Medical, Prescription, Vision, and Dental insurance for employees and dependents (Wolfe pays 80% of premium)
  • Short-Term Disability Insurance (Wolfe pays 100% of premium)
  • Voluntary Long-Term Disability Insurance, Life Insurance, Critical Illness Insurance, Accident Insurance, and Hospital Indemnity coverage
  • PTO (vacation and sick time)
  • Corporate Holidays and Floating Holidays
  • 401(k)
  • Employee recognition program
  • Charitable Donation to a charity of your choice yearly
  • Employee Referral Bonus
  • Tuition Reimbursement
  • Internal Training and Information sessions
  • Family Picnic, Holiday Party, and other outings
  • Internal Culture Club
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