Data & AI Leadership

I build the systems that make AI think

Agentic architectures. Knowledge graphs. The infrastructure layer between raw data and real intelligence. Cognitive science foundation, engineering execution, leadership instinct.

nate.config.ts
role Data Scientist & AI Engineer
org CGI
focus Agentic RAG · Knowledge Graphs
education B.S. Cognitive Sciences, UCLA
stack TS · React · Neo4j · Cloudflare
location Knoxville, TN
status Open to opportunities

Most AI initiatives fail at the data layer. That's where I work.

I design the architecture that makes AI enablement real — not theoretical. Graph databases for knowledge representation. Agentic RAG pipelines for intelligent retrieval. MCP-based tooling that gives AI systems access to the data they actually need.

I studied how humans think. Now I build systems that do the same thing.

My background is atypical — a B.S. in Cognitive Sciences from UCLA, not a traditional CS path. I studied how humans encode, retrieve, and reason about information, and I build AI systems through that same lens.

I'm focused on the leadership side of this work: building teams that operationalize AI, defining technical strategy, and translating between data engineering, ML, and business outcomes. The hardest AI problems aren't model problems. They're people, process, and data architecture problems.

Education B.S. Cognitive Sciences, UCLA Specialization in human information processing & retrieval
Leadership UCLA IFC President Governed 30+ organizations · Multi-stakeholder operations at scale
Brotherhood Sigma Nu, Epsilon Pi Chapter University of California, Los Angeles
Current Data Scientist & AI Engineer, CGI Agentic systems · Graph AI · Enterprise enablement
Continuing Ed Pellissippi State → UT Knoxville Expanding into Anthropology & interdisciplinary research
Thesis Data Architecture > Model Selection How data is structured and retrieved determines whether AI works
Agentic Systems
AI agents that autonomously retrieve, reason, and act across data sources using tool orchestration and multi-step planning.
MCP Claude Code Tool Use LangChain
Knowledge Graphs
Graph-based knowledge architectures that encode relationships, enable traversal queries, and power contextual AI retrieval at scale.
Neo4j Cypher Graph RAG Ontology Design
RAG Architecture
Retrieval-augmented generation pipelines optimized for precision, context management, and domain-specific retrieval quality.
Embeddings Vector Search Reranking Chunking
Cloud Infrastructure
Serverless-first data platforms, edge computing, and globally distributed architectures built for performance and cost efficiency.
Cloudflare Workers D1 Databricks AWS
Full-Stack Engineering
Production applications from component-driven UI to type-safe API layer to database. End-to-end ownership of the stack.
TypeScript React Node.js Python
AI Strategy & Leadership
Translating AI capabilities into organizational value through stakeholder alignment, technical roadmapping, and team enablement.
Roadmapping Mentoring Stakeholders GTM
Current Project · Proprietary Active

Annabeth

Proprietary AI-powered intelligence platform for private investigators and red teams. Agentic AI core with tiered autonomy controls, automated multi-source reconnaissance, relationship graph analysis, social engineering campaign management, and legally defensible evidence chain-of-custody. Built for South Knox Private Investigators.

Agentic AI Knowledge Graph OSINT Red Team Evidence Management
View full project page
Operator Console
Claude Analyst
Claude Red Team
Neo4j
PostgreSQL
MinIO
Obsidian Vault
Knowledge Infrastructure

Graph RAG Engine

Neo4j-powered knowledge graph pipeline that processes unstructured text into queryable graph structures with LLM-driven Cypher generation and contextual retrieval. Built for creative worldbuilding at scale.

Neo4j Python LLM Cypher Graph RAG
View on GitHub
Unstructured Text
LLM Parser
Entity Extractor
Neo4j Graph DB
Cypher Gen
Traversal
Context
RAG Response
Agentic AI Tooling

MCP Agentic Server

Custom Model Context Protocol servers enabling AI agents to access Databricks and Neo4j data sources through unified tool interfaces. Cross-system data access without manual ETL coordination.

MCP TypeScript Databricks Neo4j Claude Code
View on GitHub
Claude / AI Agent
MCP Server
↓   ↓   ↓
Databricks
Neo4j
APIs
Unified Response
Full-Stack Application

Analytics Dashboard

Personal finance and real estate analytics platform with interactive data visualizations. React frontend, Cloudflare Workers/D1 backend, deployed on the edge for sub-50ms response times globally.

React Recharts Cloudflare Workers D1 TypeScript
View on GitHub
React + Recharts UI
REST API
CF Workers
D1 SQLite
KV Cache
Edge Deploy (Global)

Let's build
something real

Open to conversations about AI leadership, data architecture, agentic systems, and roles where I can make outsized impact.