AGI Cognitive MCP Server
Provides programmatic access to causal discovery, topological data analysis, Gaussian process belief updating, thermodynamic auditing, and HCHL inference for agents and researchers.
README
AGI Cognitive Model Context Protocol (MCP) Server
An enterprise-ready Model Context Protocol (MCP) server providing programmatic access to causal discovery, persistent homology ($B_1$ topological calculations), epistemic Gaussian Process updates, Landauer thermodynamic limits, and local HCHL (Hypergeneralized Causal-Homological Latent) inference.
Researchers and agents can mount this server directly to run complex quantitative and topological simulations locally or in the cloud.
๐ ๏ธ Features
- Causal Discovery: Programmatic PC and FCI causal structure recovery algorithms.
- Topological Data Analysis (TDA): 1-skeleton persistent homology cycle detection and filtration.
- Epistemic GP Belief Updating: Gaussian Process regression tracking for model beliefs and uncertainty prediction.
- Thermodynamic Auditing: Automated Landauer heat dissipation limit and computational complexity risk indicators.
- Quantized LoRA Tuning: Meta-learning matrices simulation with INT8 scaling factors.
- Wasserstein DRO & MDL: Robust optimization simulations under uncertainty radius $\epsilon$ and Kolmogorov AST code model complexity.
- HCHL Core Inference: Direct stdio pipeline calling the hypergeneralized local transformer.
- ISO/IEC & NIST Auditing: Real-time regulatory standard scoring compliance outputs.
๐ Setup & Installation
1. Requirements
Ensure you have Python 3.12+ (or 3.14+) installed. Clone the repository and install requirements:
pip install -r requirements.txt
2. Sibling Dependency Note
This server acts as a gateway interface. It automatically detects and binds to parent/sibling submodules inside the main compute-intelligence-orchestrator project structure (e.g. agi-cognitive-agent-core, automated-artificial-general-intelligence, post-exotic-research-compendium).
If running standalone, ensure these sibling directories are available in your path or set PYTHONPATH:
export PYTHONPATH="/path/to/compute-intelligence-orchestrator/agi-cognitive-agent-core:/path/to/compute-intelligence-orchestrator/automated-artificial-general-intelligence"
๐ Connection Setup
Add the following configuration blocks to connect this server to your preferred LLM host client.
Claude Desktop Integration
Modify your claude_desktop_config.json (typically located in %APPDATA%/Claude/claude_desktop_config.json on Windows or ~/Library/Application Support/Claude/claude_desktop_config.json on macOS):
{
"mcpServers": {
"agi-cognitive-mcp-server": {
"command": "python",
"args": [
"c:/Users/svillalobosgonzalez1/Documents/GitHub/compute-intelligence-orchestrator/agi-cognitive-mcp-server/mcp_server.py"
],
"env": {
"APCA_API_KEY_ID": "your_alpaca_key_id",
"APCA_API_SECRET_KEY": "your_alpaca_secret_key"
}
}
}
}
Cursor Integration
- Go to Cursor Settings -> Features -> MCP.
- Click + Add New MCP Server.
- Fill in details:
- Name:
agi-cognitive-mcp-server - Type:
stdio - Command:
python c:/Users/svillalobosgonzalez1/Documents/GitHub/compute-intelligence-orchestrator/agi-cognitive-mcp-server/mcp_server.py
- Name:
๐งช Verification
You can verify that the server is working and resolving correctly by running the test suite:
pytest test_cognitive_mcp.py
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