Hackathon Portal
AI Tinkerers - Paris
Final round winners have been announced. View Results
Team

Invention parliament and AMCP protocol

Project Concept

🏛️ The Invention Parliament and the AMCP protocol

10 AI Agents Invent Patents in 1 Hour via Async Protocol


🔬 The Problem

Traditional R&D costs $180k and takes 6 months per innovation. Even AI multi-agent systems suffer from sequential bottlenecks—agents wait for each other, limiting scalability to ~10 agents max.


🚀 Our Two-Layer Solution

Layer 1: Invention Parliament - 10 specialized AI experts (materials scientists, engineers, patent attorneys) collaborate asynchronously to generate USPTO-ready patents in 60 minutes.

Layer 2: AMCP Protocol - Novel Asynchronous Model Context Protocol enabling true parallel agent collaboration without coordination overhead. Our core technical contribution.


🌐 AMCP: Protocol Innovation

Problem with existing protocols (like Anthropic’s MCP):

  • Sequential turn-taking: Agent A → Agent B → Agent C
  • O(n²) coordination complexity
  • Max ~10 agents before collapse

AMCP solution:

All agents broadcast to shared vector memory →  
Retrieve relevant context via semantic search →  
Form coalitions dynamically →  
Converge via emergent consensus  

Key innovations:

  • Broadcast publishing (zero routing overhead)
  • Semantic retrieval (read only relevant context)
  • Coalition formation (self-organizing groups)
  • Convergence detection (auto-detect consensus)

Result: Scales to 1,000+ agents with 10x throughput


🧬 How It Works (4 Phases)

Phase 1: Parallel Ideation (5min)
Input: “Reduce EV battery degradation by 50%”
10 agents broadcast 3 ideas each → 30 proposals in Qdrant

Phase 2: Semantic Clustering (5min)
Vector search groups similar concepts → 5-7 innovation clusters

Phase 3: Async Deliberation (30min)
Agents query relevant critiques, form coalitions, debate in parallel. Contrarian agent ensures rigor. No turn-taking.

Phase 4: Patent Generation (20min)
Patent attorney searches 120k prior art patents, identifies novel elements, generates USPTO application.


🛠️ Tech Stack

  • Mistral Agents API: 10 autonomous experts with memory
  • Qdrant: AMCP backbone (message broadcast + 120k patent DB)
  • n8n: Async workflow orchestration
  • Google Cloud: Parallel agent execution
  • Lovable: Real-time debate visualization
  • Custom AMCP SDK: Python library for protocol

📊 Business Impact

Traditional Invention Parliament
6 months 1 hour
$180,000 $200
1 view 10 experts
Sequential Zero wait
Max 10 people 1000+ agents

Target: R&D labs, startups, universities, patent firms
TAM: $50B corporate R&D + $5B patent market

Revenue Models:

  • $5k per patent session (SaaS)
  • $50k/year enterprise license
  • AMCP infrastructure hosting

🎯 Why “One-Person Unicorn”

  1. Two-layer value: Application (revenue) + Protocol (platform)
  2. Truly autonomous: Zero human input (problem → patent)
  3. Infinite scale: AMCP enables 10 → 10,000 agents
  4. Technical moat: Novel protocol = first-mover advantage
  5. Research contribution: Publishable AMCP specification

One founder out-innovates entire R&D departments.


🏆 Demo Deliverables

✅ Live prototype: Problem → Patent in 60min
✅ Real-time viz: 10 agents debating via AMCP
✅ Sample output: Full USPTO provisional patent
✅ AMCP spec document v0.1
✅ Performance metrics: Latency, convergence
✅ 2-min video demo


👥 Team

Wilfred Doré
Staff Engineer at Qualcomm | 5G/6G Research
Thesis: Turn-based AI is dead. Future is parallel, autonomous intelligence.
Role: AMCP protocol design, agent architecture

Gowshigan Selladurai
ML Engineer at Cleva | Distributed Systems
Thesis: AI systems scale horizontally, not sequentially.
Role: Infrastructure, Qdrant vector search, visualization


🔮 Roadmap

Today: 10 agents invent batteries
3 months: 100 agents, AMCP v1.0, 3 research labs adopt
1 year: 1,000 agents, 500 patents/month, $2M ARR
5 years: AMCP powers autonomous AI economy, $100M ARR


🚀 Why We Win

  1. Novel protocol (AMCP) = publishable research
  2. Clear ROI: 900x cost reduction
  3. Perfect theme: Autonomous multi-agent unicorn
  4. Proven scale: 10 → 1,000 agents
  5. Open source: AMCP benefits entire community

Not just a project—infrastructure for autonomous AI companies.


📚 Post-Hackathon

  • Publish AMCP specification (open standard)
  • Release Python SDK for community adoption
  • Paper submission: “AMCP: Scaling Multi-Agent Systems via Async Communication”
  • Position as async alternative to Anthropic’s MCP

One person. One protocol. Infinite agents. 🏛️⚡

Entry

Status: Submitted

Last saved: November 15 at 5:48 PM CET

Team Roster

Message board not available for this team yet.

Wilfred Doré Team Lead

Staff Engineeer at Qualcomm
Prepare submissions
Telecom Paris Engineer (2014). Spent 6.5 years at Samsung's Strategy and Innovation Center as R&D Software Engineer (4 years building IoT systems, 2.5 years on AI). Now at Qualcomm Wireless R&D as Staff Software Engineer in 5G/6G research, leading Developer Platforms (AI, Robotics, XR) for universities and startups in EMEA.
AI, Robotics, and eXtended Reality Deeptech Physics
For the Paris AI hackathon: this of asynchronous AI protocols

Gowshigan Selladurai

Ai engineer at Cleva
Prepare the API accounts to implement the tech stack
Diplômé d'une Licence en Informatique de l'Université Sorbonne Paris Nord, je complète actuellement ma formation par un Master en Informatique, spécialité Data Science et Systèmes Distribués, à l'UPEC. Profondément passionné par l'intelligence artificielle, l'analyse prédictive et le traitement avancé des données, j'aime relever des défis techniques complexes. Je suis constamment à la recherche d’opportunités pour appliquer mes compétences dans la conception de solutions concrètes, avec pour objectif de contribuer à des projets innovants et à fort impact.
AI , Data science
Secure Enterprise RAG MCP-Based Mistral Agents Insurance Extraction Pipeline Smart Parameterization Engine Dynamic Agent API Tooling