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  • AWS
  • Dallas, Texas
  • 08:22 (UTC -05:00)
  • LinkedIn in/justinnewcom
  • Joined Jun 22, 2026

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j-newcom/README.md

Justin Newcom

Senior Technical Leader — AI, Supply Chain, Retail & CPG

I build production AI systems at the intersection of enterprise software and emerging technology. 20+ years of experience helping large companies operationalize GenAI, agentic architectures, and data platforms.

Focus Areas

  • Architecture — Multi-agent systems with human-in-the-loop decision boundaries
  • Retail & CPG — Supply chain optimization, product data enrichment, demand sensing
  • MCP (Model Context Protocol) — Giving AI agents structured access to enterprise data
  • Technical Leadership — Architecture reviews, decision frameworks, team operating rhythms

Public Work

Repo What it is
retail-cpg-ai-architecture-patterns Reference architectures + working AWS CDK implementation for AI in Retail/CPG
supply-chain-mcp-server MCP server giving AI agents access to inventory, demand, suppliers, and EDI data
genai-enterprise-workshop Hands-on 90-minute labs for enterprise teams evaluating GenAI

Background

Previously led technology teams across retail, CPG, and supply chain — from startup to enterprise scale. I focus on the gap between AI demos and production systems: the architecture decisions, guardrails, and operating patterns that make AI actually work in regulated, high-stakes environments.


Dallas, TX | LinkedIn

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  1. retail-cpg-ai-architecture-patterns retail-cpg-ai-architecture-patterns Public

    Reference architectures and working examples for AI adoption in Retail & Consumer Packaged Goods

    Python

  2. supply-chain-mcp-server supply-chain-mcp-server Public

    MCP server giving AI agents structured access to supply chain data — inventory, demand forecasts, suppliers, EDI parsing, and disruption alerts.

    Python

  3. genai-enterprise-workshop genai-enterprise-workshop Public

    Hands-on 90-minute labs for enterprise teams evaluating GenAI — product enrichment, supply chain agents, RAG, and prompt engineering. Facilitator guides included.

    Python