Skip to content

mellington194/lacp-specification

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

2 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

LACP Defensive Publication Bundle
================================

Version: 3.0 (February 2026)

This bundle contains the technical details, schemas, and specifications for the
Lightweight Agentic Communication Protocol (LACP) and the associated Tribunal Consensus mechanism.

v3.0 merges the original defensive publication (v1.0, January 2026) with the Zenodo
technical disclosure (v2.0, February 2026) into a single canonical document containing:
- Full 3-layer architecture (Transport, Semantic, Consensus)
- Adaptive Agent Personality System (AAPS) using OCEAN model
- Personality-Weighted Consensus
- Cross-Swarm Learning (Gene Pool)
- Domain Application: Luxury Authentication Pipeline
- JSON-RPC/MCP Integration
- Error Handling, Implementation Recommendations, Prior Art References

Files:
1. LACP_Disclosure_Document.md - The primary technical disclosure text (canonical).
2. LACP_Disclosure_Document.pdf - PDF rendering for Zenodo upload.
3. schemas/context_object.json  - Formal JSON Schema for the LACP Context Header.
4. schemas/vote_object.json     - Formal JSON Schema for the Tribunal Vote Object.

Instructions for Zenodo:
1. Upload 'LACP_Disclosure_Document.pdf' as the primary file.
2. Upload 'LACP_Disclosure_Document.md' as supplementary material.
3. Upload the 'schemas' directory content as supplementary dataset/software.
4. Use the abstract from the disclosure document for the record description.
5. Add tags: "Multi-Agent Systems", "AI Safety", "Protocol", "Sycophancy Detection",
   "OCEAN Personality Model", "Cross-Swarm Learning", "AI Governance".

Original Date: January 29, 2026
Updated: February 10, 2026 (v3.0 merge)

About

Lightweight Agentic Communication Protocol (LACP) & Tribunal Consensus Specification. A Layer 7 application protocol and governance standard for secure, type-safe, and consensus-driven coordination between autonomous AI agents. Includes formal JSON schemas for Context and Vote objects used in the Tribunal sycophancy detection system.

Topics

Resources

Stars

Watchers

Forks

Packages

 
 
 

Contributors