DeepLucid3D UCPF Server
An MCP server for advanced cognitive analysis, creative problem-solving, and structured thinking using the UCPF framework.
DeepLucid3D UCPF Server
A Model Context Protocol (MCP) server implementing the Unified Cognitive Processing Framework (UCPF) for advanced cognitive analysis, creative problem-solving, and structured thinking.
What is it?
The DeepLucid3D UCPF Server is an implementation of the Unified Cognitive Processing Framework as an MCP server. It combines recursive self-awareness with dimensional knowledge categorization to provide a powerful approach to problem-solving and creative thinking.
This server extends AI capabilities by providing structured cognitive tools that help:
- Assess cognitive states
- Map knowledge dimensions
- Apply recursive self-questioning
- Generate creative perspectives
- Decompose and reintegrate complex problems
What it does
The UCPF Server enables advanced cognitive processing through several key features:
Core Capabilities
-
Cognitive State Assessment: Identifies current cognitive states (Dark Inertia, Passion, or Approaching Lucidity) to improve self-awareness during problem-solving.
-
Knowledge Dimension Mapping: Maps knowledge across three dimensions:
- Awareness (Known vs. Unknown)
- Content (Knowns vs. Unknowns)
- Accessibility (Knowable vs. Unknowable)
-
Recursive Self-Questioning: Challenges initial assumptions and identifies potential cognitive biases.
-
Creative Perspective Generation: Produces novel viewpoints and metaphorical thinking to inspire new solutions.
-
Problem Decomposition: Breaks complex problems into manageable components and reintegrates them with awareness of the whole system.
-
Optional State Management: Maintains context between sessions for ongoing analysis.
Setup and Installation
Prerequisites
- Node.js (v14 or higher)
- npm (v6 or higher)
- An environment compatible with the Model Context Protocol
Installation Steps
-
Clone the repository
git clone https://github.com/yourusername/DeepLucid3D-UCPF-Server.git cd DeepLucid3D-UCPF-Server -
Install dependencies
npm install -
Build the project
npm run build -
Configure MCP settings
Add the server to your MCP settings file. For Claude/Cline, this is typically located at:
- For Claude Desktop:
~/Library/Application Support/Claude/claude_desktop_config.json(macOS) - For VSCode Cline:
~/.config/Code/User/globalStorage/saoudrizwan.claude-dev/settings/cline_mcp_settings.json(Linux)
Add the following configuration:
{ "mcpServers": { "ucpf": { "command": "node", "args": ["path/to/DeepLucid3D-MCP/build/index.js"], "env": {}, "disabled": false, "autoApprove": [] } } } - For Claude Desktop:
-
Restart your MCP-compatible application (Claude, VSCode with Cline, etc.)
How to Use
The server exposes three main tools and several resources that can be accessed through MCP:
Tools
-
analyze_problem: Process a problem statement through the full UCPF framework
<use_mcp_tool> <server_name>ucpf</server_name> <tool_name>analyze_problem</tool_name> <arguments> { "problem": "Your problem statement here", "session_id": "optional-session-id", "enable_state": false, "detailed": false } </arguments> </use_mcp_tool> -
creative_exploration: Generate novel perspectives and connections for a topic
<use_mcp_tool> <server_name>ucpf</server_name> <tool_name>creative_exploration</tool_name> <arguments> { "topic": "Your topic here", "constraints": ["Optional constraint 1", "Optional constraint 2"], "perspective_count": 3, "include_metaphors": true } </arguments> </use_mcp_tool> -
manage_state: Control state management for UCPF processing
<use_mcp_tool> <server_name>ucpf</server_name> <tool_name>manage_state</tool_name> <arguments> { "action": "enable", // or "disable", "reset", "status" "session_id": "optional-specific-session-id" } </arguments> </use_mcp_tool>
Resources
Access framework documentation:
<access_mcp_resource>
<server_name>ucpf</server_name>
<uri>ucpf://framework/overview</uri>
</access_mcp_resource>
Available resources:
ucpf://framework/overview: Overview of the UCPF frameworkucpf://framework/cognitive-states: Guide to cognitive statesucpf://framework/knowledge-dimensions: Reference for knowledge dimensionsucpf://session/{sessionId}/analysis: Analysis results for a specific session
Example Use Case: Using UCPF to Solve a Riddle
Let's solve the classic riddle: "What walks on four legs in the morning, two legs in the afternoon, and three legs in the evening?"
Step 1: Enable state management for session persistence
<use_mcp_tool>
<server_name>ucpf</server_name>
<tool_name>manage_state</tool_name>
<arguments>
{
"action": "enable"
}
</arguments>
</use_mcp_tool>
Step 2: Analyze the riddle using the UCPF framework
<use_mcp_tool>
<server_name>ucpf</server_name>
<tool_name>analyze_problem</tool_name>
<arguments>
{
"problem": "What walks on four legs in the morning, two legs in the afternoon, and three legs in the evening?",
"session_id": "sphinx-riddle",
"enable_state": true
}
</arguments>
</use_mcp_tool>
The analysis will provide:
- Cognitive state assessment (likely identifying potential metaphorical thinking)
- Knowledge mapping of what we know and don't know
- Recursive questions to challenge initial assumptions (e.g., "Are we assuming literal legs?")
- Structured perspectives on different interpretations
Step 3: Explore creative perspectives to find the solution
<use_mcp_tool>
<server_name>ucpf</server_name>
<tool_name>creative_exploration</tool_name>
<arguments>
{
"topic": "Walking with different numbers of legs at different times of day",
"constraints": ["morning", "afternoon", "evening", "four", "two", "three"],
"include_metaphors": true,
"session_id": "sphinx-riddle"
}
</arguments>
</use_mcp_tool>
This exploration might reveal:
- The metaphorical interpretation of "legs" as support structures
- The metaphorical interpretation of times of day as stages of life
- Leading to the classic answer: a human, who crawls on four limbs as a baby, walks on two legs as an adult, and uses a cane (third "leg") in old age
Step 4: Review the session analysis
<access_mcp_resource>
<server_name>ucpf</server_name>
<uri>ucpf://session/sphinx-riddle/analysis</uri>
</access_mcp_resource>
This provides the complete analysis journey, showing how the framework led to the solution through structured cognitive processing.
Acknowledgments
This project stands on the shoulders of giants:
- The Model Context Protocol (MCP) team for creating the foundational protocol that enables AI systems to access external tools and resources
- The Anthropic Claude team for their work on advanced AI systems capable of utilizing MCP
- Contributors to the Unified Cognitive Processing Framework concepts that power the cognitive analysis methodology
- The open-source community whose libraries and tools make projects like this possible
License
MIT License
Project Structure
DeepLucid3D-UCPF-Server/
├── src/
│ ├── engine/
│ │ ├── ucpf-core.ts # Core UCPF processing logic
│ │ ├── creative-patterns.ts # Creative thinking utilities
│ │ └── state-manager.ts # Session state management
│ ├── tools/
│ │ ├── analyze-problem.ts # Problem analysis tool
│ │ └── creative-exploration.ts # Creative exploration tool
│ └── index.ts # Main server implementation
├── build/ # Compiled JavaScript files
├── package.json # Project dependencies and scripts
└── README.md # This documentation
© 2025 DeepLucid3D UCPF Server
İlgili Sunucular
OneNote
Interact with Microsoft OneNote using AI language models like Claude and other LLMs.
Remote macOS Use
An open-source MCP server that allows AI to fully control a remote macOS system.
Google Calendar MCP
Integrates with the Google Calendar API to manage events and schedules using OAuth2 authentication.
Deck Builder MCP
Create and manipulate PowerPoint presentations programmatically using JSON or Markdown.
NestJsMcp
NestJS MCP Server is a powerful Model Context Protocol server that provides 40+ specialized tools for NestJS development. It integrates seamlessly with AI assistants like Claude Desktop, Cursor, Claude Code CLI, and any MCP-compatible client.
Homelab MCP
MCP servers for managing homelab infrastructure through Claude Desktop. Monitor Docker/Podman containers, Ollama AI models, Pi-hole DNS, Unifi networks, and Ansible inventory.
photographi
A local computer vision engine that lets AI agents understand the technical metrics of photographs
Pleasanter MCP Server
An MCP server for interacting with the Pleasanter low-code/no-code business application platform.
Portfolio Tracker
Exposes portfolio tracking tools for AI clients.
Decent Sampler Drums
Generates Decent Sampler drum kit configurations.