Remote position
Director of Applied Science and Engineering - Knowledge Graphs & AI
at Engineering
Real Remote Score
39/100
Weak
- Comp
- 0/25
- Location
- 4/25
- Source
- 15/15
- Clarity
- 8/15
- Freshness
- 12/20
About this role
• Technical Vision & Strategy: Define and own the multi-year technical roadmap for Outreach's Knowledge Graph platform, including entity resolution, temporal reasoning, graph-based learning, and contextual inference. Translate business objectives into a coherent applied science strategy that balances research ambition with production delivery.
• Team Leadership: Build, hire, and lead a team of applied scientists and research engineers. Establish team culture, research rigor, career development frameworks, and a high bar for both scientific quality and production impact. Mentor senior ICs into technical leaders.
• Knowledge Graph Architecture: Drive the design of per-tenant knowledge graph schemas, ontologies, and data models tailored to the sales execution domain. Own decisions on graph databases, query languages, storage engines, and tenant isolation strategies at scale.
• Information Extraction at Scale: Oversee pipelines that extract structured knowledge from unstructured conversational and document data (sales calls, emails, CRM notes), including coreference resolution, relation extraction, event detection, and entity linking.
• Reasoning & Inference Systems: Lead the development of reasoning and inference layers over the knowledge graph to power next-best-action suggestions, deal risk scoring, coaching recommendations, competitive intelligence, and agentic AI decision-making.
• Representation Learning & Graph ML: Direct research into graph-based models (GNNs, relational embeddings, link prediction, temporal graph networks) over heterogeneous, multi-relational graph structures to support downstream reasoning, retrieval, and recommendation tasks.
• Cross-functional Leadership: Partner with leaders in Engineering, Product, Design, and Data to align science investments with product priorities. Represent the applied science function in executive reviews, roadmap planning, and technical design reviews.
• Research-to-Production Pipeline: Establish processes and infrastructure for moving from research exploration to production deployment: experiment tracking, model evaluation frameworks, A/B testing, and continuous model improvement loops.
• Industry & Academic Engagement: Keep the team at the frontier of knowledge graph research. Foster connections with the academic community through conference participation, publications, and strategic academic partnerships.
• Experience building multi-tenant knowledge graph systems with per-customer isolation and scale requirements.
• Background in sales, revenue, or B2B SaaS domains: understanding of deal cycles, pipeline management, and CRM data models.
• Experience integrating knowledge graphs with LLM-based systems (RAG architectures, tool-augmented generation, agentic frameworks).
• Strong communication skills with the ability to translate research concepts into product impact for cross-functional audiences.
• Publications in top-tier venues (KDD, NeurIPS, ACL, EMNLP, ICLR, WWW, SIGIR, etc.) in knowledge graphs, NLP, or graph learning.
• Experience with graph databases at scale (Neo4j, Amazon Neptune, or similar) including performance tuning, query optimization, and multi-region deployment.
• Familiarity with the Model Context Protocol (MCP) or similar agent-tool integration patterns.
• Track record of building applied science teams from scratch (0→1 team formation).
• Foundational Leadership: You will define how Outreach thinks about knowledge representation and contextual reasoning, decisions that shape the platform for years. This is not an optimization role; it is a charter-defining one.
• Greenfield Architecture: Build the knowledge graph platform from the ground up with the latitude to make foundational technical decisions on schema design, graph infrastructure, and reasoning systems.
• Scale & Impact: Outreach processes millions of sales interactions across 4,000+ enterprise customers. Your team's work will directly power agentic AI workflows that change how revenue teams operate globally.
• Executive Visibility: Direct exposure to top leadership in the company. Present research direction and results at the executive level.
• World-Class Team: Join a culture that values scientific rigor, engineering excellence, and intellectual honesty. Collaborate with senior engineers, product leaders, and data scientists who care deeply about getting it right.
• Growth into executive level: For the right leader, this role is a path to executive level as the function scales. You will shape not just the technology but the organizational structure of applied science at Outreach.
Posted via Lever:outreach. Applications are handled by Engineering — RemNavi earns no commission.
Apply on Engineering →