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Roy Gabriel

DevOps Architect · Applied AI Engineer

From embedded firmware to AI agent orchestration, I ship systems that keep working under pressure.

01.

What I Build

AI Agent Systems

Production LLM systems and multi-agent orchestration in Go. MCP servers that connect AI to real tools and data.

Infrastructure & Platform

Kubernetes, GitOps, and SRE at scale. The foundation production AI runs on.

Architecture & Strategy

Two decades of systems design across multiple domains, building at every layer of the stack.

Featured Work
Cruvero - AI Agent Ecosystem Platform featured image

Cruvero - AI Agent Ecosystem Platform

A production-grade, Temporal-native AI agent orchestration platform. 90,000+ lines of Go powering durable multi-agent workflows, neuro-inspired intelligence, enterprise governance, …

Go MCP Server Ecosystem featured image

Go MCP Server Ecosystem

Production-grade MCP servers in Go that expose iCloud, Todoist, and Notion as safe, typed tools for LLM agents.

03.

The Journey

Not a resume, chapters that shaped how I build production systems.

Chapter 1

Embedded Discipline

Embedded systems, microcontrollers, and PLCs: hard constraints and firmware that had to be correct the first time.

Embedded Systems

Chapter 2

Production Software

Security systems where mistakes have consequences: clear boundaries, defensive design, and real production discipline.

Security

Chapter 3

Technical Product Ownership

Bridged engineering and product, turning requirements into designs, and designs into outcomes.

Product Business Services

Chapter 4

Platform and Observability Architecture

Built platforms teams rely on: reliability, observability, and operability baked in from day one.

Architecture SRE Platforms

Chapter 5 - Now

DevOps + SRE + Applied AI

Production AI in Go: durable agent workflows, MCP server ecosystems, and the foundations that keep them running.

AI/LLM Go DevOps MCP
Roy Gabriel

DevOps Architect · Applied AI Engineer

I've spent 20 years building systems across embedded systems, micro-controllers, PLCS, security platforms, fintech, SRE, and platform architecture. Today I focus on production AI systems in Go: multi-agent orchestration, MCP server ecosystems, and the DevOps platforms that keep them running. I care about systems that work under pressure: observable, recoverable, and built to last.
05.

Most AI prototypes ship in Python. I ship production AI systems in Go.

Prototypes are cheap. Production is expensive: latency budgets, deploy footprint, operational load, and failure modes matter.

Go’s concurrency model, performance profile, and single-binary deploy story make it a strong fit for production AI systems that must run continuously and predictably.

My work lives where AI meets production reality: reliable platforms, durable workflows, and tooling that can take real traffic.

06.

Contact

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