MCP Server for AI long-term memory and context management
Project description
MindCore Memory MCP
AI Long-Term Memory Server — Production-grade persistent memory for AI agents.
"The best AI agent isn't the smartest — it's the one that remembers."
Value Proposition
MindCore Memory solves AI Agent's biggest pain point: limited context windows, lost information in long conversations, and broken cross-session memory continuity.
What Problem It Solves
| Pain Point | Status Quo | MindCore Memory |
|---|---|---|
| AI forgets everything | Conversation ends, all lost | Persistent long-term memory |
| No cross-session recall | Re-teach every session | Cross-session knowledge reuse |
| Memory chaos, no priority | All memories weighted equally | Importance grading + confidence |
| RAG brute-force injection | Context overload, quality drops | Precise context window |
Quick Start (3 lines)
# 1. Install
pip install mindcore-memory
# 2. Launch MCP Server
mindcore-memory
# 3. Call from your AI Agent
memory_id = memory_store("User says his name is Zhang San, free on Wednesday")
context = memory_recall("User's schedule")
Eval Framework Results
Storage Integrity: 100% (data persistence correct)
Recall Relevance: 100% (relevant memories recalled first)
Confidence Calibration: 100% (confidence correctly calibrated)
Importance Weighting: 100% (high-priority memories ranked higher)
Context Efficiency: 100% (context window not overloaded)
Overall Score: 100%
Core Tools
memory_store - Store memory
memory_store(
content="Python was created by Guido van Rossum from Netherlands",
importance=3, # 1-4 importance level
tags=["python", "history"],
confidence=0.95, # confidence score
source="agent" # agent/user/tool
)
memory_recall - Recall memory
memory_recall(
query="Who created Python",
tags=["python"], # optional tag filter
limit=10 # return count
)
memory_context - Build context window
# Build optimal context for current task (auto-dedup + priority sort)
context = memory_context(
query="Current project status",
max_tokens=2000 # auto-truncate
)
memory_stats - System status
# View memory statistics: total/distribution/confidence
stats = memory_stats()
Project Structure
mindcore-memory-mcp/
├── mindcore_memory/ # Python package (pip install entry)
│ ├── __init__.py
│ ├── memory_engine.py # Core memory engine
│ ├── server.py # MCP Server (stdio + HTTP dual transport)
│ ├── http_app.py # HTTP endpoint (production deploy)
│ └── eval_framework.py # Evaluation framework
├── tests/
│ └── test_memory.py # Unit tests
├── examples/
│ └── basic_usage.py # Usage examples
├── pyproject.toml
├── README.md
└── LICENSE
Integration
Claude Desktop
{
"mcpServers": {
"mindcore-memory": {
"command": "pip",
"args": ["install", "mindcore-memory"]
}
}
}
VS Code AI
Search MindCore Memory in the extension marketplace.
HTTP API (Production)
curl -X POST http://localhost:8080/mcp \
-H "Content-Type: application/json" \
-H "Authorization: Bearer YOUR_TOKEN" \
-d '{"jsonrpc":"2.0","method":"tools/call","params":{"name":"memory_store","arguments":{"content":"test"}},"id":1}'
Production Standards
| Standard | Implementation |
|---|---|
| JSON-RPC 2.0 | stdio + HTTP dual transport |
| Bearer Token Auth | Optional auth for HTTP endpoints |
| Input Validation | Pydantic schemas |
| CI/CD | GitHub Actions |
| Unit Tests | pytest + coverage |
| Eval Framework | 5 core metrics |
| Observability | structlog complete logging |
| Data Sovereignty | JSONL local files, no vendor lock-in |
Open Source
This project is open source (MIT License). The code is completely free. Storage uses local JSON files with no cloud service dependency and no data collection.
License
MIT License - see LICENSE file for details.
Star History
Give AI memory. Make humans trust AI more.
Collaborate With Me
I'm actively developing AI safety architecture projects including:
- Cerebellum Evolution Engine - AI safety & evolution framework
- MindCore - Cognitive memory architecture for AI systems
- Border Guard - Self-evolving security operating system
- Ternary Balance Boundary Algorithm - Novel equilibrium theory with 3 papers
- MindCore Memory MCP - This project: production-grade long-term memory server
Interested in collaborating? Reach out:
- Email: 1410770089@qq.com
- GitHub: @woshilaohei
Author: Lao Hei
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