🧱 Concept Overview: AI Agentic Marketplace for the Construction Industry

FLYNN'S / Moses EYES ONLY.

EmpireNet, Empire Ring, Empire Node - A Technocracy of AI that builds companies. Member-Originated and Owned LLC with Generational Legacy.


🧱 Concept Overview: AI Agentic Marketplace for the Construction Industry


1. Core Vision


Create a peer-to-peer AI-driven marketplace where construction professionals, tradesmen, contractors, suppliers, and AI agents interact autonomously.
Each agent can:


  • Business Group formation and vetting.
  • LLC formation and Member funding, a Company that builds companies.
  • REST API to QuickBooks and bank transactions to make things happen.
  • Social events to build trust and speed commerce the Human Factor.
  • Proposals for new projects.
  • Projects
  • Workflows
  • Tasks
  • Sub Tasks
  • Status updates, alerts and notifications.
  • Bid on jobs
  • Generate quotes
  • Match materials and logistics
  • Handle compliance (EPD, OSHA, insurance, permitting)
  • Automate workflows between clients, subcontractors, and material vendors
  • Jobs market and Temp Agency and we transform the "temp slaves" into members.

Essentially — you’re building the “Upwork + Alibaba + Twilio + ERP” hybrid for construction, but run by agentic AI micro-services (each representing a professional, company, or function).




⚙️ Architecture Blueprint


A. Layers


LayerPurpose
Presentation Layer (Web + API)ASP.NET Core MVC or Django REST front-end with Tailwind UI, AI chat integration, and dynamic dashboards
AI Layer (Agent Framework)Agent orchestration using LangChain or Semantic Kernel for autonomous negotiations and task execution
Business Rules EngineYour existing ConcreteCommand.com logic to handle pricing, bids, and job workflows
Data LayerPostgreSQL with EF Core or Django ORM (Code-First), storing projects, bids, materials, agents, EPD data
Messaging LayerRabbitMQ / MQTT for inter-agent and contractor communications
Notification LayerTwilio (SMS), SignalR, and email alerts
Security + Access ControlOAuth 2.0, JWT, and Empire Ring / NFC membership validation
Cloud + Edge NodesRaspberry Pi 5 + Jetson Orin Nano clusters for local inference and offline redundancy
CDN / ProtectionCloudflare for DDoS, DNS, and API security



🧠 Agent Types (Initial Classes)


AgentPurpose
EstimatorAgentUses AI to generate material and labor estimates from blueprints or job specs
ProcurementAgentFinds vendors, compares pricing, auto-negotiates delivery
ComplianceAgentChecks EPDs, OSHA logs, insurance docs
ProjectAgentOversees timelines, task completion, scheduling
LegalAgentGenerates NDAs, contracts, lien waivers
FinanceAgentHandles billing, escrow, and automated payouts via transactional equity system
VendorAgentRepresents a material supplier with inventory APIs
WorkerAgentRepresents individual tradesmen; matches skills with projects nearby
CustomerAgentRepresents clients requesting bids or updates

All agents communicate through a message bus (RabbitMQ or MQTT), with human users optionally in the loop via dashboards.



🧩 Core Workflows



    • Human or AI CustomerAgent posts project specs (PDF, DWG, image).
    • EstimatorAgent parses specs → produces cost breakdown.



💾 Data Domain Models (Prefixes)


PrefixExamplePurpose
DimDimAgent, DimCompany, DimMaterialDimensional entities
FactFactBid, FactJob, FactPaymentMeasurable transactional records
JoinJoinAgentProject, JoinMaterialVendorRelationship link tables


🧰 Integrations​

  • Twilio SMS + WhatsApp → Project notifications
  • Cloudflare Workers → Edge caching of AI model results
  • OpenAI / Local LLMs → Agent reasoning
  • PostgreSQL + pgVector → Semantic memory for each Agent
  • Docker + k3s → Deploy agents as micro-containers on your Empire Nodes

🧩 Example: Agent Negotiation Cycle​

  1. Customer posts specs.
  2. EstimatorAgent runs GPT-based cost analysis.
  3. ProcurementAgent pings vendor APIs for live material prices.
  4. VendorAgent replies with inventory and delivery window.
  5. ProjectAgent calculates best vendor mix.
  6. LegalAgent auto-generates purchase orders.
  7. FinanceAgent handles payment through escrow.
  8. ComplianceAgent archives all documents to EPD registry.

🔐 Private + Transactional Model​

You can mirror your Transaction-Equity system:
  • Every bid, material sale, or completed task mints a “Transaction Unit.”
  • Profit sharing is algorithmic, logged in blockchain-style ledger.
  • Agents manage accounting autonomously.

🏗️ Deployment Strategy​

  1. Phase 1:MVP Web Portal
    • Job posting, bid AI, material catalog
    • Built on Django or ASP.NET Core MVC
    • PostgreSQL + Redis cache
  2. Phase 2:Agent Infrastructure
    • RabbitMQ message bus
    • AI Agent orchestration (LangChain or Semantic Kernel)
    • Twilio and email hooks
  3. Phase 3:Marketplace Scaling
    • Integrate vendors (e.g., Home Depot, Fastenal APIs)
    • Allow tradesmen to create profiles and auto-bidding agents
    • Add escrow and reputation system
  4. Phase 4:Edge + Federation
    • Deploy on Empire Nodes
    • Each regional node syncs via MQTT to master registry
    • Local inference on Jetson Orin units

🧩 Files to Generate (when we begin coding)​

  1. /Models/DimAgent.cs or .py
  2. /Models/FactJob.cs
  3. /Models/FactBid.cs
  4. /Services/AgentService.cs – orchestrates AI agent workflows
  5. /Controllers/MarketplaceController.cs
  6. /Views/Marketplace/Index.cshtml – dashboard of active jobs and agents
  7. /Program.cs – register services and message bus
  8. /Agents/*.cs – each autonomous agent class

Would you like me to design this marketplace:
  • in ASP.NET Core MVC 8 (C#) using EF Core and SignalR,
    or
  • in Django + Python using Celery + RabbitMQ + LangChain?
Once you choose, I’ll generate the entire architecture with full code files and comments for the initial MVP build (login, agent registry, job posting, and bidding).
 
Last edited:
Back
Top