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Mindcore Memory

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A production-grade long-term memory MCP server that enables AI agents to persist and recall memories across sessions with importance weighting, confidence calib

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Описание

A production-grade long-term memory MCP server that enables AI agents to persist and recall memories across sessions with importance weighting, confidence calibration, and efficient context window management.

README

The only MCP memory server with circuit breaker, SLO tracking, and BM25+FAISS hybrid search. AI agents forget everything between sessions. MindCore Memory gives them persistent, searchable, production-grade memory — with 118/118 tests passing and full CI/CD.

If this project helps your AI remember, a star means the world to us.

CI PyPI version Python License: MIT Downloads MCP Registry GitHub stars

MindCore Memory demo


Quick Start

# 1. Install
pip install mindcore-memory

# 2. Launch (stdio mode — works with any MCP client)
mindcore-memory

# 3. Your AI agent remembers across sessions
MCP Client Config (Claude Desktop / Cursor / Cline)
{
  "mcpServers": {
    "mindcore-memory": {
      "command": "python",
      "args": ["-m", "mindcore_memory.server"],
      "env": { "MINDCORE_MEMORY_PATH": "~/.mindcore/memory" }
    }
  }
}
Optional: Semantic Search
pip install mindcore-memory[semantic]
# Enables FAISS embeddings for hybrid BM25+semantic search

Why MindCore — vs the Competition

Feature MindCore Memory Mem0 SynaBun Letta (MemGPT)
Search BM25 + FAISS Hybrid FAISS only sqlite-vec only FAISS only
Circuit Breaker ✅ 3-state
Retry (exp. backoff)
SLO Tracking ✅ P95/P99
Prometheus Metrics /metrics
Encryption at Rest ✅ Fernet
Deduplication ✅ Exact-match merge ⚠️ Partial
IVF Index (500+) ✅ Auto-switch
Local-First ✅ Zero deps ✅ (cloud optional) ❌ (needs Docker)
CI/CD Pipeline ✅ Auto → PyPI + MCP ⚠️ Manual
Tests 118/118 (100%) Unknown Unknown Unknown
License MIT Apache 2.0 Apache 2.0 Apache 2.0

MindCore is the only MCP memory server designed for production workloads from day one. Circuit breaker protects against embedding service failures. Retry with exponential backoff handles transient errors. SLO tracking alerts you before users notice. Metrics export for your monitoring stack. Every other server assumes nothing fails — MindCore doesn't.


Unique: 3D Boundary Balance Algorithm

MindCore is not just a memory store — it's a cognitive boundary engine. Every stored memory is automatically evaluated through a 4-dimensional scoring system based on the 正反公式 (Forward/Reverse Formula):

BND_score = 0.28·TRJ(Trajectory) + 0.28·EVO(Evolution) + 0.28·COG(Cognition) + 0.16·BALANCE
  • Forward cycle: TRJ → BND → EVO → COG → BND (each step draws a boundary, each boundary is growth)
  • Reverse chain: Chaos → Unknown → Risk → Harm → Death (2+ linked triggers → auto 50% score penalty)
  • 3D balance: Variance across TRJ/EVO/COG penalizes lopsided memories (pure data dumps without insight)
  • No LLM calls: Pure algorithmic evaluation using keyword patterns, regex, and statistical variance
from mindcore_memory import BNDManager
bnd = BNDManager()
result = bnd.evaluate("基于之前修复, 理解到根因, 改进后提升30%", importance=4)
# → TRJ:0.63  EVO:0.54  COG:0.61  BALANCE:0.98  BND:0.75  ACCEPTED

📖 Full algorithm documentation

No other MCP memory server does this. BND transforms memory storage from a passive data dump into an active cognitive filter — rejecting noise, flagging risk chains, and ensuring only structured, growth-oriented knowledge enters the version chain.


Production Features

Resilience Layer

  • Circuit Breaker: CLOSED → OPEN → HALF_OPEN state machine. Protects FAISS/embedding operations from cascading failure.
  • Retry: Exponential backoff with jitter. Transient errors retry automatically, permanent errors fail fast.
  • Input Validation: Server-level sanitization against injection attacks.

Observability Layer

  • SLO Tracking: P95/P99 latency targets for all 6 operations. Violations logged and exported.
  • Prometheus /metrics: Zero-dependency Prometheus-compatible collector. Drop-in for any monitoring stack.

Data Layer

  • Encryption: Optional Fernet encryption at rest (mindcore-memory[encrypt]).
  • Deduplication: Exact-match merge — identical memory updates importance/confidence instead of storing duplicates.
  • Smart Eviction: Low-importance memory pruning with atomic disk sync. No zombie memories.

Core Tools

Memory (6 tools)

Tool Description Key Parameters
memory_store Persist a memory (auto-BND evaluated) content, importance (1-4), tags, confidence
memory_recall Search memories (BM25+FAISS hybrid) query, tags, limit, session_id
memory_context Build LLM context window query, max_tokens, session_id
memory_update_confidence Adjust memory confidence memory_id, confidence
memory_delete Remove a memory memory_id
memory_stats System statistics (no args)

Boundary & Deduction (3 tools) 🆕

Tool Description Key Parameters
bnd_check 4D boundary evaluation (TRJ/EVO/COG/BALANCE + Anti-Chain) content, importance, confidence, tags
bnd_stats BND manager stats: acceptance rate, scores, anti-chain triggers (no args)
deduce Cognitive deduction: pattern extraction from high-quality memories query, tags

Search formula: score = BM25(40%) + FAISS(50%) + importance(5%) + recency(5%)

When FAISS embeddings are unavailable, automatically falls back to BM25-only keyword search.


Architecture

┌───────────────────┐     MCP JSON-RPC      ┌────────────────────────────┐
│  AI Client         │ ◄──────────────────► │  MindCore Memory           │
│  (Claude/Cursor)   │     stdio / HTTP     │  MCP Server                │
└───────────────────┘                       └──────────┬─────────────────┘
                                                       │
                                            ┌──────────▼─────────────────┐
                                            │  Memory Engine             │
                                            │  ┌──────────────────────┐  │
                                            │  │ Hybrid Search        │  │
                                            │  │  BM25 (keyword) 40%  │  │
                                            │  │  FAISS (semantic)50%│  │
                                            │  │  importance        5%│  │
                                            │  │  recency           5%│  │
                                            │  └──────────────────────┘  │
                                            │  ┌──────────────────────┐  │
                                            │  │ Resilience           │  │
                                            │  │  Circuit Breaker     │  │
                                            │  │  Retry + Backoff     │  │
                                            │  │  SLO Tracking        │  │
                                            │  └──────────────────────┘  │
                                            └──────────┬─────────────────┘
                                                       │
                                            ┌──────────▼─────────────────┐
                                            │  Storage                   │
                                            │  JSONL (append)            │
                                            │  + FAISS index (IVF > 500) │
                                            │  + Fernet encrypt (opt)    │
                                            └────────────────────────────┘
  • Embedded: No PostgreSQL, Redis, or external services needed. One binary, local JSONL + FAISS.
  • IVF Index: FAISS inverted file index activates at 500+ memories for O(√N) search.
  • MCP Native: Full MCP protocol over stdio and HTTP transports.

Available On

Platform Status Link
PyPI Published v0.1.11 mindcore-memory
MCP Registry Registered View
Glama Listed View
MCP Market Listed View
MCP.so Listed View
LobeHub Listed View
mcpservers.org Listed View

Full Comparison

See docs/comparison.md for a detailed 5-server comparison covering architecture, search quality, latency, and migration guides.


Contributing

See CONTRIBUTING.md for the full guide. Quick path:

git clone https://github.com/woshilaohei/mindcore-memory-mcp.git
cd mindcore-memory-mcp
pip install -e ".[dev]"
pytest -v              # 118 tests
ruff check .           # linter
mypy mindcore_memory/  # type checker

License

MIT License — Copyright (c) 2025 Lao Hei


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If MindCore helps your AI remember, give it a star!

from github.com/woshilaohei/mindcore-memory-mcp

Установить Mindcore Memory в Claude Desktop, Claude Code, Cursor

Рекомендуется · одна команда, все IDE
unyly install mindcore-memory-mcp

Ставит в Claude Desktop, Claude Code, Cursor и VS Code — сам разбирается с npx, uvx и сборкой из исходников.

Впервые? Поставь CLI: curl -fsSL https://unyly.org/install | sh

Или настроить вручную

Выполни в терминале:

claude mcp add mindcore-memory-mcp -- uvx mindcore-memory

FAQ

Mindcore Memory MCP бесплатный?

Да, Mindcore Memory MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Mindcore Memory?

Нет, Mindcore Memory работает без API-ключей и переменных окружения.

Mindcore Memory — hosted или self-hosted?

Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.

Как установить Mindcore Memory в Claude Desktop, Claude Code или Cursor?

Открой Mindcore Memory на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

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