Context-Dependent Neural Memory System for LLMs with GraphIndex beam search, STM/LTM consolidation, and semantic tagging
Project description
Greeum
기억의 해방 — 지긋지긋한 컨텍스트 제한에서 자유로워지세요. Greeum은 MCP 호환 도구와 CLI가 동일한 장기 기억 저장소를 사용하도록 설계된 오픈소스 모듈입니다.
왜 Greeum인가요?
- 한 번의 설치와 셋업으로 Codex, ClaudeCode, Cursor, ChatGPT MCP에 등록할 수 있습니다.
- search → 작업 → add 루틴을 따라 저장된 기록을 슬롯(A/B/C)과 브랜치로 정리합니다.
- Branch 분석 리포트와 usage 통계 도구로 최근 활동과 슬롯 상태를 조회할 수 있습니다.
- 기본은 해시 기반 폴백 검색이며, SentenceTransformer를 설치하면 의미 검색을 추가로 사용할 수 있습니다.
1. Installation & Setup
First run checklist
- Install the package (pipx or pip)
- Run
greeum setup --start-workerto create the data directory and launch the worker- Connect your MCP client (Codex, ClaudeCode, Cursor, …)
⚠️ Platform support: Greeum MCP는 Linux, macOS, WSL 환경에서 안정적으로 동작합니다. Windows PowerShell에서는 Codex STDIO 초기화가 반복적으로 실패할 수 있으므로 WSL을 사용하세요.
👉 Need the ultra-short version? See docs/QUICKSTART.md for “설치 → 셋업 → 연동” 한 페이지 요약.
# Recommended (isolated) install
pipx install --pip-args "--pre" greeum
# or standard pip
pip install --upgrade "greeum"
# initialise data directory, choose where memories live
greeum setup --start-worker
Optional: enable semantic embeddings
pip install sentence-transformers # once per machine
greeum mcp warmup # downloads the default model
- MCP/CLI run with hash fallback by default for fast startup.
- Add
--semantic(or unsetGREEUM_DISABLE_ST) when you want the SentenceTransformer-enabled search:greeum mcp serve --semantic -t stdio
Keep the worker running automatically
- macOS: create
~/Library/LaunchAgents/com.greeum.worker.plistthat runsgreeum worker serve --host 127.0.0.1 --port 8800 --semanticat login. - Linux (systemd user): add a unit under
~/.config/systemd/user/greeum-worker.servicepointing to the same command and enable it withsystemctl --user enable --now greeum-worker. - Windows: register
greeum worker serve --host 127.0.0.1 --port 8800in 작업 스케줄러 with the “로그온 시 실행” trigger.
2. MCP Integration
Codex (STDIO)
- Ensure
greeum setuphas been run at least once. ~/.codex/config.toml[mcp_servers.greeum] command = "greeum" args = ["mcp", "serve", "-t", "stdio"] env = { "GREEUM_QUIET" = "true", "PYTORCH_ENABLE_MPS_FALLBACK" = "1" }
- Optional semantic mode:
args = ["mcp", "serve", "-t", "stdio", "--semantic"]
First run may take longer while the model loads. Warm-up before enabling for smoother startup.
ClaudeCode / Cursor (native MCP)
greeum mcp serve
- Add the command above to the client’s MCP configuration.
- Semantic mode:
greeum mcp serve --semantic
HTTP / URL-based MCP (e.g. ChatGPT)
greeum mcp serve -t http --host 0.0.0.0 --port 8800
Then register http://127.0.0.1:8800/mcp as the endpoint.
3. LLM Prompting Guidelines
- Always close sessions with a summary: “Call
add_memorysummarising decisions before ending the shift.” - Retrieve before writing: run
search_memorywith the task keywords before starting work. - Use anchor slots (A/B/C) for hot contexts:
{ "name": "search_memory", "arguments": { "query": "login flow", "limit": 5, "slot": "A" } }
- Encourage agents to log important facts with
importance≥ 0.6 so team hand‑offs stay seamless.
4. CLI Essentials
# Add context
greeum memory add "Legal copy updated for release"
# Search (global fallback enabled by default)
greeum memory search "release notes" --count 5
# Anchor-based search (slot-aware)
greeum memory search "translations" --slot B --radius 2
# Rebuild branch indices (FAISS + keyword or keyword-only)
greeum memory reindex # uses FAISS if available
greeum memory reindex --disable-faiss
# Reuse the long-running worker (avoids cold-start on each CLI call)
greeum worker serve --host 127.0.0.1 --port 8800 # terminal 1
export GREEUM_MCP_HTTP="http://127.0.0.1:8800/mcp" # terminal 2
greeum memory add "Sprint hand-off" --use-worker
greeum memory search "hand-off" --use-worker
Other useful commands:
greeum anchors status/set A <block>/pin Agreeum workflow search "<topic>"for scripted MCP callsgreeum mcp warmupto cache the embedding model before enabling semantic mode
5. Documentation
6. License
MIT License — see LICENSE.
Greeum · Persistent memory for AI—built and maintained by the community.
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