FreedUp
Neo4j is the graph intelligence platform that transforms data into knowledge to power the next generation of intelligent applications and AI systems. It includes enterprise-ready knowledge graphs for accurate, explainable, and governed AI; the most comprehensive, trusted, and easy-to-deploy graph capabilities across any environment and data source; and an unmatched ecosystem trusted by 84 of the Fortune 100 and supported by the world’s largest graph community. Intelligence that works. Results that matter.
Built to work everywhere and integrate with everything across every cloud for dynamic, personalized, and autonomous AI systems. We deliver quicker results, contextual knowledge, and solutions that impact customers and employees across the business.
At Neo4j, we have always strived to help the world make sense of data. As business, society and knowledge become increasingly connected, our technology promotes innovation by helping organizations to find and understand data relationships. We created, drive and lead the graph database category, and we’re disrupting how organizations leverage their data to innovate and stay competitive.
Help AI-focused startups in Neo4j’s Startup Program succeed with graph + LLM solutions so they adopt Neo4j deeply and grow into long-term, high-value customers. This is a highly technical, customer-facing role focused on helping AI startups onboard successfully, design effective solutions, and scale their Neo4j use over time. The role blends solution architecture, technical advisory, and ongoing customer engagement to support startups from early experimentation through production adoption.
Serve as the primary technical point of contact for a portfolio of AI startups in the program.
Guide teams in designing, building, and deploying Neo4j-based architectures.
Advise on best practices for Neo4j usage across Aura and self-managed environments, including scaling, performance, and production readiness.
Troubleshoot implementation challenges and help customers make sound technical tradeoffs.
Help startups design and implement LLM-enabled solutions using Neo4j, including RAG, knowledge graphs, and agent-based architectures.
Translate customer AI requirements into concrete Neo4j-centered architectures, patterns, and implementation guidance.
Work with common AI frameworks and tooling such as LangChain, LlamaIndex, PydanticAI or ADK, agent frameworks, vector search, and open-source and commercial LLMs.
Identify and promote repeatable graph + AI solution patterns across the startup portfolio.
Own the ongoing technical relationship with assigned startups.
Run regular check-ins, track progress, and proactively identify risks or blockers.
Help customers move from early experimentation to successful production adoption.
Partner closely with the Field AI team to align on architectures, patterns, and technical strategy.
Feed real-world startup requirements, usage patterns, and product gaps back to Product and Field teams.
Bridge product gaps where needed through third-party tools, integrations, and pragmatic solution design.
Contribute to internal enablement content, examples, office hours, and best practices for graph + AI patterns.
Share lessons learned from startup engagements with broader Field teams.
Help standardize playbooks, templates, and reference implementations for the Startup Program.
Strong hands-on experience with Neo4j or other graph database, including data modeling, Cypher, clustering/topology, and performance tuning.
Demonstrated ability to debug and optimize real-world implementations, including queries, data ingestion, and infrastructure decisions.
Background in solutions engineering, solution architecture, professional services, customer success, or a similar customer-facing technical role.
Ability to move fluidly between high-level architecture and detailed implementation guidance.
Experience working with multiple stakeholders to align on a practical technical approach.
Awareness of sales processes and expansion motions is a plus.
Experience or strong interest in AI/LLMs and agentic architectures.
Practical exposure to modern AI tooling, including agent frameworks, vector databases, and open-source LLMs.
Familiarity with some of the following: LangChain, LlamaIndex, RAG patterns, PydanticAI, ADK, or similar frameworks.
Strong curiosity and aptitude to stay current in the graph + AI landscape.
Excellent communication and presentation skills, with the ability to explain complex technical concepts to both technical and non-technical audiences.
Comfortable leading customer calls, asking probing questions, and constructively challenging design decisions.
Proven customer-facing experience in a technical role.
Strong technical foundation, ideally from pre-sales engineering, solutions engineering, or professional services.
Proficiency in programming languages such as Python or Java.
Familiarity with cloud platforms such as AWS, Azure, or GCP.
Experience with containerization and modern application architectures.
Ability to work independently and collaboratively in a fast-paced environment.
Bachelor’s degree in Computer Science, Information Technology, or a related field.
Proven experience as a Solutions Engineer, Sales Engineer, Solutions Architect, or in a similar technical customer-facing role.
Neo4j is one of the fastest-scaling technology companies in this industry. It recently surpassed $200M in annual recurring revenue (ARR). Backed by world-class investors like Eurazeo, GV, and Inovia Capital, Neo4j has raised over $600M in funding and is valued at over $2 billion. Additionally, 84% of the Fortune 100 use Neo4j. Joining Neo4j provides an opportunity to shape the future of data and analytics.
Neo4j fosters collaboration and is built on values such as relationships, user success, inclusion, and delivering on commitments. The company is committed to providing an inclusive, diverse, and equitable workplace where everyone can thrive.