Building cloud-native AI applications that solve real problems.
7 +
Years Technical Project Delivery
$5M+
Delivered to Stanford · Google
13-State
LLM Workflow Engine
OCR → RAG
Vector Search · Document Intelligence

About

// profile

Building cloud-powered AI tools for messy real-world workflows.

I’m an AI Solutions Engineer and cloud-native full-stack developer focused on turning complex problems into practical, scalable software. My work sits at the intersection of AI, cloud infrastructure, full-stack engineering, and product thinking, where reliable systems, clean architecture, and usable experiences come together.

Recently, I built a patent-pending, SBIR-supported predictive maintenance platform for GeogizModo that combines full-stack dashboards, AWS cloud services, geospatial intelligence, and AI-driven risk scoring. The platform supports fleet health, maintenance planning, terrain-exposure analysis, and mission-risk visibility across 382+ vehicles and 12 operational bases.

Before moving deeper into AI and cloud development, I spent over seven years delivering technical projects in regulated, healthcare, construction, enterprise, and public-sector environments. I’ve supported high-accountability project delivery for organizations and client environments connected to Apple, Google, Stanford, and public-sector teams, with experience managing complex projects valued up to $7M.

That background shaped how I approach software today: with a strong focus on reliability, security, documentation, stakeholder needs, and real-world operational impact.

Outside of my core work, I’m continually exploring and building with AI-powered automation, RAG systems, serverless architectures, and document intelligence tools. I’m especially drawn to products that make complex information easier to understand, act on, and scale.

Experience

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This is a story about building — first with steel, then with code, now with intelligence.

GeogizModo · AI / Cloud Full-Stack Developer
Patent-pending predictive maintenance platform · SBIR-supported
2025 — Now

Built an SBIR-supported, patent-pending fleet management and predictive maintenance platform for GeogizModo that helps teams monitor vehicle health, plan maintenance, and assess mission risk across 382+ vehicles and 12 operational bases by turning terrain, weather, and route data into AI/geospatial risk scores and component wear predictions, with secure access controls, encryption, rate limiting, and audit logging built into the workflow.

382+ vehicles tracked · 12 operational bases

ReactECS FargateNode.js + ExpressPyTorch + CUDADynamoDB / ElastiCacheAWS WAF / ShieldSQLite
AWS Cloud Institute
Cloud Application Development & Solutions Architecture
2025 — 2026

Completed project-based AWS Cloud Institute training in serverless architecture, secure APIs, infrastructure as code, monitoring, databases, AI/ML service patterns, and Well-Architected design while building multiple end-to-end AI/cloud systems across scheduling automation, document intelligence/RAG, local AI agents, and voice-enabled workflow tools.

AWS Certified Cloud Practitioner · Sept 2025 · SAA & DVA in progress

SAMVPCIAMStep FunctionsCloudWatchBedrockSageMakerWell-Architected
Pence Contractors · Senior Project Engineer
Senior Project Engineer/Project Manager — Portland, OR
2023 — 2024

Managed regulated public-sector school construction projects from preconstruction through delivery, coordinating budgets, schedules, documentation, design alignment, approvals, and compliance workflows across clients, architects, compliance officers, vendors, and field teams.

Public-Sector DeliveryRegulated EnvironmentsStakeholder CoordinationRisk Management
TCG Core Group · Senior Project Engineer / PM
Healthcare · Residential · Commercial — Milpitas, CA
2019 — 2022

Managed healthcare, residential, and commercial project delivery for clients including Stanford and Google. Owned schedules, budgets, contracts, vendor selection, permit acquisition, and executive reporting across client, leadership, supplier, and field teams.

$100K → $5M project values

Budget PlanningVendor CoordinationHealthcareContractsCross-Functional Delivery
Holland Partner Group · Project Coordinator
Project Coordinator — Oakland, CA
2017 — 2019

From independent projects into coordinated multi-stakeholder delivery — inspections, submittals, materials procurement.

Field-to-Office AlignmentSubmittalsProcurement TrackingInspection Readiness
U.S. Army Medical Materiel Agency · Project Manager
Project Manager, Imaging Devices — Fort Detrick, MD
2015 — 2016

The first chapter — public-sector regulated technical delivery, vendor evaluation, federal acquisition workflows, mission-critical documentation, and the discipline of high-stakes coordination from day one. PM Level I & II credentials earned through DAU.

Public-sectorRequirements ReviewFederal Acquisition Workflows
download résumé.pdf

Selected Work

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Recent experiments and shipped products.

FracAdapt

Predictive Terrain Intelligence . 2025

An optimized fleet platform for terrain analysis and predictive maintenance.

Fleet Management · Terrain Intelligence · Predictive Maintenance · Route Analysis · ML

FracAdapt is a full-stack fleet intelligence platform for mission planning, vehicle readiness, and terrain-aware maintenance. It gives operators a dashboard to monitor military vehicles across bases, track engine, suspension, brake, and transmission health, review maintenance history, and identify which assets are ready, at risk, or nearing service thresholds before deployment.

For route planning, the app connects interactive mapping with real-world data. It uses OpenRouteService for routing, OpenTopography SRTM elevation for terrain profiles, Open-Meteo for weather, and physics-based calculations for slope, roughness, traction, traversability, fuel use, cargo impact, route risk, and predicted component stress across changing conditions.

Its ML service adds a Python and PyTorch RCAN super-resolution pipeline that improves 30m DEM inputs toward 10m analysis while preserving elevation, slope, and curvature. Together, the React frontend, Node/Express backend, SQLite database, security layer, and deployment tooling turn geospatial and mechanical data into clear readiness signals and maintenance priorities.

Nexaros

Conversational booking agent · 2026

Automate appointment bookings through AI-powered SMS conversations — zero staff involvement on the happy path.

Node.js / Express · PostgreSQL · Redis / BullMQ · Socket.IO · Next.js · Tool-calling LLM agent

Managing appointment bookings manually is slow, error-prone, and pulls staff away from higher-value work. AI Scheduler automates the booking conversation through SMS: staff set availability and trigger outreach, then a tool-calling AI agent handles confirmation, rescheduling requests, waitlisting, and escalation, only looping in a human when the situation genuinely requires it.

When a slot opens, the system re-engages the waitlist and slots in the next best-fit client using LLM-ranked matching. Clients can also self-book through a branded booking portal with OTP authentication, while staff monitor live conversations through timeline and calendar views and can take over instantly.

Skillora

Private AI Job Search OS · 2026

A local-first AI platform for job discovery, resume tailoring, and candidate coaching.

React · Flask · Playwright · Ollama · AI Job Matching/LLM Scoring · Resume Automation

I Skillora as a local-first AI platform for organizing the job search from discovery to application. The system pulls listings from seven sources, including LinkedIn, Indeed, Glassdoor, Google Jobs, ZipRecruiter, Himalayas, and Arbeitnow, using Playwright automation and local LLM relevance scoring against a candidate profile.

At its core, a YAML-driven resume engine turns one master resume into tailored versions for each role through per-job overrides. I also implemented persistent LLM memory so the platform can remember candidate facts across sessions and provide more useful coaching without repeated prompts.

The React job board supports save, dismiss, apply, source toggles, salary, experience, date filters, and CSV export. A Flask and Ollama coaching chatbot gives section-by-section resume feedback. The result is a private AI job search workflow with no SaaS dependency or third-party data sharing.

Codexa

Private CLI Coding Agent · 2025 - 2026

A self-hosted AI coding assistant with local inference, approval gates, and safe multi-file editing.

vLLM · Agentic Workflows · LLM Tool Calling · Agentic/CLI IDE · Human-in-the-loop Approval

I built Codexa as a local, GPU-accelerated coding assistant designed for developers who want Claude Code-style workflows without API costs or external data sharing. The system runs Qwen3-Coder-30B through vLLM on DGX Spark hardware, reaching about 48 tokens per second on NVIDIA Blackwell GPU architecture.

The agent supports five working modes: default, explore, plan, review, and edit. I designed a three-tier permission system that controls when the agent can read, suggest, or modify files, with approval levels for automatic actions, one-time confirmations, and always-confirm workflows.

For safer code changes, I implemented an auto-planning gate that detects multi-file edit requests, creates a structured plan, asks for approval, and backs up files before changes are applied. The system also includes session audit logs, tool-call tracking, GPU memory capping, and multi-model support.

Lendly

AI-Powered Loan Matching · 2025 - 2026

Securely process lender PDFs, generate searchable knowledge, and deliver intelligent loan recommendations.

RAG · FastAPI · PDF Ingestion · Vector Embeddings · Semantic Chunking/Searching

I built Lendly as a full-stack loan document matching platform for helping loan officers process lender program PDFs, extract key details, and turn complex lending documents into searchable knowledge. The system supports secure authentication, role-based access, PDF upload, metadata entry, file validation, status tracking, and document reprocessing so officers and admins can manage program documents with more confidence.

Uploaded files are converted into text chunks, enriched with embeddings, and organized through a searchable document dashboard with filters, pagination, bulk actions, and metadata controls. I also built a document detail workflow for content review, chunk editing, and processing control.

The backend uses Express, Prisma, PostgreSQL, and a local Llama AI server for retrieval augmented generation. The frontend is built with Next.js, providing responsive dashboards, profile controls, and secure API workflows for modern loan operations.

Contact

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The next chapter begins with a conversation .