MudançAI
Project Concept
MudançAI is an interactive moving assistant and agentic orchestration system for planning stress-free residential moves. It turns the chaotic process of packing into a structured, measurable experience: agents convert unstructured user input into a structured Inventory, generate Packing Plans validated against logistics and fragility rules, and securely export this data to productivity tools.
The first visible surface is a chat-based Generative UI experience, but the product is not just a standard Q&A chatbot. The chat interface is the testbed for a larger cognitive loop: dynamically parse messy user data (text descriptions or room photos), categorize the risk level and volume of each item, test the best distribution configuration across boxes, and maintain this complex state over weeks of preparation.
MudançAI is designed around a secure orchestration model using LangGraph and CopilotKit. The agent does not take destructive actions or generate arbitrary frontend code at runtime. It produces declarative state updates based on pre-approved Tools, while the client renders the progress through a trusted BFF (Backend-for-Frontend) layer. The system aligns this model with Human-in-the-Loop (HITL) workflows, ensuring the agent requests user approval before finalizing boxes or exporting data via the Model Context Protocol (MCP).
The project does four things:
Generate Dynamic Inventories: Given a simple description or room image, the system identifies, catalogs, and classifies items (e.g., fragile, heavy, electronic) using the Gemini API.
Create Intelligent Packing Plans: A reasoning engine validates and distributes the cataloged items into optimized virtual “Boxes,” ensuring heavy items don’t crush fragile ones and preventing unnecessary mixing of belongings from different rooms.
Maintain Context (Durable Threads): Through an Intelligence layer powered by Postgres and Redis, the system saves the progress. A user can start organizing the living room on Monday, resume the kitchen on Friday, and never lose the history of what has already been packed.
Sync with the Real World (MCP): Validated tools export the final plan as actionable tables and checklists directly into the user’s workspace (such as Notion), making the plan ready to execute on moving day.
The north-star product is an AI-powered moving control tower. Homeowners should get a foolproof, stress-reducing packing guide and checklist. Moving Companies (in the future) should get accurate volume estimates and fragility reports before arriving on site. Developers should get a robust template for combining LangGraph, Next.js, and MCP servers into a real-world, task-oriented agent architecture.
Entry
Status: Submitted
Last saved: May 16 at 5:54 PM -03
Team Roster
You must be registered for the event to view the team message board.
Ednan Ferreira Team Lead RSVP Approved
Engenheiro de Software at Animus
Vinícius Gomes RSVP Denied
Data Business Partner at Johnson & Johnson