Our "Clone Brain" architecture represents a quantum leap in digital mind modeling, powered by sophisticated knowledge graphs that capture not just information, but the intricate web of associations, reasoning patterns, and conceptual frameworks that make each mind unique. While traditional RAG systems treat knowledge as a flat collection of documents, we're building rich, hierarchical representations that mirror how human experts actually think and reason about their domains.
Enter the Knowledge Graph Engineer. You'll architect and implement the neural-symbolic backbone of our Clone Brain system, developing graph structures that can capture both explicit knowledge and implicit reasoning patterns. If you're passionate about knowledge representation, graph neural networks, and pushing the boundaries of how machines can model human thought—this role is crafted for you.
What You Will Work On
- Graph Architecture & Design
- Design and implement scalable knowledge graph architectures that can represent both declarative knowledge and procedural reasoning patterns
- Develop novel graph embedding techniques that capture the nuanced relationships between concepts, experiences, and decision-making frameworks
- Create efficient indexing and retrieval mechanisms for real-time graph querying
- RAG System Innovation
- Build next-generation retrieval systems that combine traditional RAG with graph-based reasoning
- Implement hybrid architectures that seamlessly integrate symbolic graph operations with neural retrieval
- Develop evaluation frameworks to measure and optimize retrieval quality across different types of queries
- Knowledge Integration & Maintenance
- Design systems for automated knowledge graph construction and maintenance from various data sources
- Implement validation and consistency checking mechanisms to ensure graph quality
- Create tools for experts to review and refine their knowledge representations
- Infrastructure & Scaling
- Build infrastructure for distributed graph operations across thousands of clone instances
- Optimize graph operations for low-latency retrieval in production environments
- Develop monitoring and debugging tools for graph-based reasoning systems
Preferred Abilities
- Graph Expertise: Deep experience with graph databases, knowledge graphs, and graph neural networks
- RAG Systems: Strong background in retrieval-augmented generation, including both traditional and graph-based approaches
- Neural-Symbolic Systems: Experience combining symbolic reasoning with neural networks
- Distributed Systems: Ability to design and implement distributed graph processing systems
- Python & Graph Tools: Proficiency with Python and graph processing frameworks (Neo4j, DGL, PyG, etc.)
- Research Translation: Proven ability to translate academic research into production-ready systems
- First Principles Thinking: Capacity to reason about and solve novel technical challenges without established playbooks
Why You Might Like This Role
- Opportunity to work on fundamental AI challenges at the intersection of knowledge representation and cognitive modeling
- High ownership over core technical architecture that powers thousands of digital minds
- Chance to define new standards for how machines represent and reason with knowledge
- Collaboration with a team pushing the boundaries of digital consciousness