Responsibilities
- Build and manage a diverse and inclusive team of engineers working on search ranking, query understanding, and search UX.
- Recruit, coach, and develop engineers; ensure regular feedback and progress on goals.
- Collaborate with cross-functional peers to set team direction and improve search quality.
- Facilitate planning, prioritization, sequencing, and staffing of work.
- Maintain high-quality bar for reliability, latency, and relevance metrics.
- Drive project execution using data and experimentation to improve search quality.
- Shape engineering organization practices, recruiting, onboarding, planning, and prioritization.
Requirements
- Experience managing engineering teams on search, ranking, relevance, or related areas.
- Deep understanding of building high-quality search at scale (millions of pages, sub-3-second queries).
- Background in search quality, ranking algorithms, and experimentation methodologies.
- Passion for mission-critical infrastructure, including bug fixes and reliability.
- Excitement about AI-powered search: embedding models, hybrid lexical-semantic search, LLMs, connector search, multimodal search.
- Ability to create collaborative, empowering team environments.
- Empathetic and direct communication for feedback and alignment.
- High tolerance for ambiguity and change.
- Passion for line management and team culture.
Nice-to-Haves
- Experience with AI connectors, enterprise search, or multi-data source search.
- Experience building RAG-based features or LLM integration in search.
- Managed teams for experimentation and A/B testing frameworks.
- Managed teams at startups during rapid growth.
- Experience rolling out engineering and management practices (code review, performance reviews, levels and ladders).
Compensation
Estimated base salary range for San Francisco and New York: $280,000 - $330,000 per year, plus equity and benefits.