Kubova

Created By
Kubova21 hours ago
Kubova packs cargo into shipping containers and onto pallets and returns a verifiable 3D loading plan — exact coordinates, fit, utilization, weight balance. Over MCP, an assistant can request a plan and act on the structured result. Free tier; public REST API too.
Overview

Kubova — AI-first container & pallet load planning

Give Kubova your cargo (dimensions, quantities, weights) and the containers you can ship in. It returns an auditable 3D loading plan: every piece has coordinates you can verify, the result never overflows the container walls to inflate a number, and you get utilization, weight balance and a shareable PDF.

The MCP server lets assistants like Claude and ChatGPT — and automation tools — call the packer directly and reason over structured output instead of screen-scraping a UI.

Tools

ToolWhat it does
pack_containersPack cargo into one or more containers; returns the 3D plan (placements, fit, utilization, weight balance).
estimate_capacityHow many sets/units of a product fit per container type.
generate_reportProduce a shareable PDF loading plan for a packed result.
verify_keyValidate an API key / check plan + quota.

Auth

OAuth 2.1 with Dynamic Client Registration + PKCE. Free tier available; paid plans unlock higher volume and the public REST API.

Who it's for

Furniture exporters, freight forwarders, and anyone planning FCL/LCL shipments who wants the math to be correct, not just pretty.

Server Config

{
  "mcpServers": {
    "kubova": {
      "type": "streamable-http",
      "url": "https://kubova.com/mcp"
    }
  }
}
Project Info
Created At
21 hours ago
Updated At
21 hours ago
Author Name
Kubova
Star
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License
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