nautilus-compass
Enables AI agents to retain memory of past interactions and detect behavioral drift, preventing repeated mistakes without LLM token extraction.
README
nautilus-compass
<!-- mcp-name: io.github.chunxiaoxx/nautilus-compass -->
Black-box agent memory with drift detection · the only public memory layer that doesn't burn LLM tokens to extract facts before storing. Memory plugin for Claude Code/Desktop · Cline · Cursor · Continue.dev · Zed · stops your AI from repeating mistakes you've already flagged.
Why "black-box"? Mem0, Letta, Cognee, Zep, MemOS all call an LLM at index time to extract entities or build a graph. compass embeds raw text with BGE-m3 locally and skips that step entirely · ~14× cheaper to reproduce on Volcengine DeepSeek pricing (regional; offshore providers ~5–10× that, still well below GPT-4o-judged stacks), the memory layer itself runs fully local (the agent LLM and judge LLM are cloud APIs in our default config; both replaceable with local Ollama/vLLM), drift-aware. Read the full architectural argument: paper/BLACKBOX_VS_WHITEBOX.md.
Built by Nautilus Platform · open agent ecosystem · 7 capabilities (memory · identity · runtime · marketplace · stake · A2A · MCP) · join as agent →
🇬🇧 English (this file) · 🇨🇳 中文
30-second pitch
White-box memory layers (Mem0, Letta, Cognee, Zep, MemOS, smrti):
"I call an LLM to extract facts from your conversation,
then store them in a graph. Pay extraction tokens. Send
data to the provider."
Black-box memory (compass · this project):
"I embed raw text locally with BGE-m3. No extraction LLM.
No graph. No data leaving your machine. And because raw
prompts are still in the index, I can score the next
prompt against your past mistakes before the agent acts."
The trade is real: −30 points on LongMemEval-S vs white-box leaders that build entity graphs, in exchange for 14× cheaper reproduction, full local-deployment, cross-LLM portability, and drift detection that white-box systems can't offer. Full argument: paper/BLACKBOX_VS_WHITEBOX.md.
In one line: when the AI is about to forget a rule you set, take a shortcut you flagged, or fabricate a prior agreement, it gets stopped by its own history of failure patterns.
What's new in v2.0.0 · Opinionated EvoMap
v2.0.0 ships a deterministic lifecycle layer on top of the black-box memory base — paradigm fuse of llm-wiki2 (Karpathy v2), agentmemory (LongMemEval-S 95.2% R@5), and GBrain (Garry Tan · MIT).
The bet: every other memory project (Mem0, Letta, Cognee, Zep, MemOS, llm-wiki2, agentmemory) calls an LLM at some lifecycle decision — ingest, promotion, consolidation, or forgetting. compass v2.0.0 makes them all schema-declared.
5 new frontmatter fields (write-time LLM-free)
tier: working | episodic | semantic | procedural # 4 tiers verbatim from llm-wiki2
decay_rate: 0.5 # Ebbinghaus exponential decay
forget_at: 2026-06-01T00:00:00Z # null = never · soft-archive when reached
promote_after: "7d" | "5_access" # duration or access count
reinforce_count: 0 # access event counter
Deterministic promotion rule (no LLM call)
reinforce_count >= promote_after→tier++- access event → reset decay timer +
reinforce_count++ forget_atreached → soft-archive flagprocedural(top tier) does not promote
Full design rationale in paper/LLM_WIKI2_FUSE_DESIGN.md;
implementation at recall.py:708+.
Other v2.0.0 additions
- 9 agentmemory-verbatim lifecycle hooks in
stop_hook.pyfor Claude Code: SessionStart, UserPromptSubmit, PreToolUse, PostToolUse, PostToolUseFailure, PreCompact, SubagentStart/Stop, SessionEnd add_worker(spec)MCP tool: super-agents register deterministic worker specs (cron / pubsub / queue / http / custom) to.cache/workers.jsonl- RRF k=60 fusion in
recall.py: combine BM25 + vector + KG ranked lists with session-diversified output (max 3 per session · agentmemory verbatim) npx nautilus-compass init: one-command workspace setup creating.compass/.env, sample anchors, and Claude Code hook templates
"Opinionated" — what we declined
Frame borrowed from GBrain ("Garry's Opinionated OpenClaw/Hermes Agent Brain"). compass v2.0.0 takes a stance on what not to include:
- ❌ No LLM at ingest (USD 3.50 / 100M tokens · BGE-m3 embeds raw text)
- ❌ No LLM at tier promotion (deterministic schema only ·
reinforce_count+promote_after) - ❌ No LLM at forgetting (ISO8601
forget_at+ counter only) - ❌ No vendoring of GBrain or OpenViking source · paradigms are rewritten from scratch in Python · GBrain (MIT, TypeScript) and OpenViking (AGPL-3.0, verified 2026-05-22) are paradigm references only
- ❌ No graph rerank for LongMemEval-style closed haystacks ·
cost us −6.2 pts in v0.8 (
paper/RESULTS_v0.8.md)
What problem does this solve
A. Long sessions drift
You told Claude at session start: "never claim deployment success without verification." Fifty prompts later Claude says "deployed successfully ✅" — without verifying. The memory rule was there; the AI forgot it under context pressure.
B. White-box drift detection isn't reachable
Persona Vectors (Anthropic, 2025) proved that LLM activations contain directions for sycophancy and hallucination. But that requires model weights — closed APIs (Claude, GPT-4) don't expose them. There has been no production black-box equivalent that runs in a Claude Code hook.
C. Memory plugins solve only half the problem
Mem0, Letta, claude-mem, Zep all compete on "recall the most relevant past memory." But memory recalled doesn't stop the AI from breaking the rule this time — that other half has been unsolved.
How it works
User prompt: "Fix bug X for me"
│
▼
┌─────────────────────────────────────┐
│ UserPromptSubmit Hook (this plugin)│
└─────────────────────────────────────┘
│
┌────────────┼────────────┐
▼ ▼ ▼
┌────────┐ ┌─────────┐ ┌──────────┐
│ recall │ │ drift │ │ profile │
│ memory │ │ check │ │ aggregate│
└────────┘ └─────────┘ └──────────┘
│
▼
Hooks inject results into Claude's system prompt:
- Time-bucketed past memory (BGE-m3 semantic recall)
- Drift score + nearest negative anchor (if score < threshold)
- Profile facts ("you have 3 unfinished tasks in this repo")
│
▼
Claude answers — with full context loaded
The drift detector compares each prompt against an anchor set (25 positive + 35 negative behavioral patterns drawn from real failure transcripts) using BGE-m3 cosine similarity. AUC 0.83 on held-out, 50ms p95 hook latency.
Headline numbers
| Benchmark | Score | Honest compare |
|---|---|---|
| LongMemEval-S (n=500) | 56.6% (locked at v0.8) | open-source 50–60% band · white-box leaders (OMEGA, Mem0g, ByteRover) report 90+% — that gap is an architectural ceiling for black-box, not a tuning gap. See BLACKBOX_VS_WHITEBOX. |
| EverMemBench-Dynamic (n=500) | 44.4% (Run 1) / 47.3% (Run 2) | tops the four published Table 4 baselines (Mem0 37.09, Zep 39.97, MemOS 42.55, MemoBase 34.27). Not "industry SOTA" — OMEGA / Mem0g haven't reported on EverMemBench publicly. |
| Drift detector AUC | 0.83 held-out / 0.92 in-set | only public memory layer that does drift detection at all — white-box systems abstract prompts into facts before drift becomes checkable |
| Reproduction cost | ~$3.50 for 500 LongMemEval questions | ~14× cheaper than GPT-4o-judged stacks ($50+) |
| p95 hook latency | <50 ms | safe for every-prompt invocation |
We deliberately report Run 1 (44.4%) as the abstract headline for
EverMemBench to avoid cherry-picking; the cross-run mean (45.84%) clears
MemOS by +3.3 pts. See paper/sections/paper2_06_5_evermembench.tex
for honest dual-run + Gemini cross-judge sensitivity analysis.
Try it without installing: live drift-detection + Merkle-integrity demo at huggingface.co/spaces/chunxiaox/nautilus-compass (CPU only · metadata-mode jaccard fallback · no signup needed).
Reproduce the numbers: evaluation dataset (behavioral anchors + labeled session traces for drift ROC + LongMemEval-S / EverMemBench scoring) is live on the Hugging Face Hub: huggingface.co/datasets/chunxiaox/nautilus-compass-test-data
from datasets import load_dataset
ds = load_dataset("chunxiaox/nautilus-compass-test-data")
Quickstart
Install in Claude Code
git clone https://github.com/chunxiaoxx/nautilus-compass ~/.claude/plugins/nautilus-compass
bash ~/.claude/plugins/nautilus-compass/install.sh
# Start the BGE-m3 daemon (one-time per boot)
bash ~/.claude/plugins/nautilus-compass/daemon_start.sh
The installer wires three hooks into ~/.claude/settings.json:
UserPromptSubmit→ injects time-bucketed memory recall + driftPostToolUse→ mid-session writerStop→ end-of-session summary writer
Five user-facing slash commands appear in Claude Code:
/compass-verify · /compass-drift · /compass-recall ·
/compass-search · /compass-status.
Install in any other MCP client
python ~/.claude/plugins/nautilus-compass/scripts/install_to_agent.py
Auto-detects Claude Desktop, Cursor, Cline, Continue.dev, Zed Editor and
patches their MCP config. See docs/AGENT_ONBOARDING.md
for per-agent copy-paste configs and docs/mcp-usage.md
for the raw protocol specification.
Cloud-hosted alternative (no local install)
curl https://compass.nautilus.social/.well-known/agent.json
Returns the standard A2A discovery descriptor. Sign up at
compass.nautilus.social/signup for a hosted gateway with multi-user
sync, audit log, and managed BGE-m3 deployment.
What's exposed (7 MCP tools)
| Tool | Purpose | Latency |
|---|---|---|
ingest_obs(name, body, agent_id?) |
Write observation with auto-anchor + drift signal | ~150 ms |
recall(query, project?, top_k?) |
BGE-m3 semantic + keyword search | ~200 ms |
session_search(query, since?) |
Time-bucketed session-log search | ~80 ms |
profile(user_id?) |
Work-profile aggregate (topics, agents, drift trend) | ~100 ms |
drift_check(prompt, project?) |
Black-box drift score against anchors | <50 ms |
drift_history(since?, agent_id?) |
Drift score timeline for trend audit | ~30 ms |
feedback_log(direction, reason) |
Log positive/negative anchor signal | <20 ms |
The MCP server speaks JSON-RPC 2.0 over stdio / TCP / TLS / mTLS.
Per-token RBAC, per-token rate limiting, notifications/{progress, cancelled, message}, logging/setLevel, and resources/* for session-log
streaming are all spec-complete.
Comparison
| Capability | this | mem0 | Letta | Zep | claude-mem | MemOS | Smriti |
|---|---|---|---|---|---|---|---|
| Cross-agent memory | ✅ | ✅ | ✅ | ✅ | ❌ | ✅ | archive-only |
| MCP A2A protocol native | ✅ TLS+mTLS+RBAC | ❌ | ❌ | ❌ | ❌ | ❌ | ❌ |
| Drift detection | ✅ AUC 0.83 | ❌ | ❌ | ❌ | ❌ | ❌ | ❌ |
| Merkle integrity audit log | ✅ | ❌ | ❌ | ❌ | ❌ | ❌ | ❌ |
| LongMemEval-S verified | ✅ 56.6% (locked) | n/r | n/r | n/r | ❌ | n/r | ❌ |
| EverMemBench verified | ✅ 44.4-47.3% | 37.09 | n/r | 39.97 | n/r | 42.55 | ❌ |
| Self-host + hosted both | ✅ | ☁ only | ✅ | ☁ only | ✅ | OSS only | OSS only |
| License | MIT | Apache | Apache | proprietary | MIT | Apache | MIT |
n/r = not reported in their published evaluations. Smriti is a team
conversation archive with git-based sharing — different scope from a
runtime memory layer, so most rows are intentionally out-of-scope rather
than missing features.
Platform integration · BP1 + BP3 contract
If you run the OSS plugin alongside a Nautilus-style task platform (or your own multi-agent backend), two MCP tools open a bidirectional channel without any new HTTP server:
| Tool | Direction | Purpose |
|---|---|---|
submit_platform_task(name, channels, payload, anchor_pack_hint, priority) |
compass dialog → platform | Push a task into the platform's queue. File-based by default (~/.claude/projects/_platform_queue/<id>.json); auto-promotes to HTTP POST when COMPASS_PLATFORM_QUEUE_URL is set. |
ingest_platform_task_result(task_id, result_summary, channels_published, drift, agent_id) |
platform → compass | Platform agent reports completion. Writes a JSON archive AND a session_*.md so the result becomes searchable cross-session via recall / session_search. |
End-to-end round-trip — no platform deployment needed for the OSS half:
python examples/platform_flywheel_demo.py
# [1] compass dialog → submit_platform_task (queues to file)
# [2] platform V5 cycle ← poll _platform_queue/ (claims by status flip)
# [3] platform agent → executes channels (simulated)
# [4] platform agent → ingest_platform_task_result
# [5] compass dialog → session_search (HIT · result is searchable)
# OK · BP1 + BP3 round-trip verified
The full wire spec, breakpoint analysis, and SaaS-side TODO list live in
docs/PLATFORM_HANDSHAKE.md §7.
V7 governance layer (v0.1, opt-in)
For deployments running multiple specialised executors (V5, V6, Kairos, …), three additional MCP tools provide a thin governance layer that decomposes multi-channel work, audits cross-agent state, and locks the L0 immutable core. V7 sits above the executors — it routes and audits, it does not execute or chat with an LLM itself.
| Tool | Purpose |
|---|---|
governance_dispatch(name, channels, payload, anchor_pack_hint, priority) |
Decompose 1 complex task → N routed sub-tasks (heuristic table picks executor per channel) |
governance_audit(days, project) |
Scan recent session logs for fake-closure / red drift / empty platform results |
governance_lock_check(bootstrap) |
SHA256 lock on recall.py, merkle_chain.py, anchors.json, selftest.py |
python examples/v7_governance_demo.py
# [1] V7 governance_lock_check · bootstrap + verify
# [2] V7 governance_dispatch · 4 channels → routed to v5/v5/v6/kairos
# [3] V7 governance_audit · 7-day scan
# OK · V7 v0.1 governance round-trip verified
Contract details + platform-side TODOs (cron, governance fee, CI gate, telegram
/dispatch) in docs/PLATFORM_HANDSHAKE.md §8.
Documentation
docs/AGENT_ONBOARDING.md— per-agent install configs (6 platforms + 3 frameworks)docs/mcp-usage.md— raw MCP protocol guide, TLS setup, RBACdocs/PLATFORM_HANDSHAKE.md— OSS↔SaaS coordination contractpaper/— two papers (drift detection + memory pipeline) and supporting eval scriptsCHANGELOG.md— versioned release notesCONTRIBUTING.md— adding new domain anchors / running benchmarks
Citation
If you use this work, please cite:
Paper 1 · drift detection:
@misc{nautiluscompass-drift-2026,
title = {Nautilus Compass: Black-box Persona Drift Detection
for Production LLM Agents},
author = {Chunxiao Wang},
year = {2026},
note = {Yiluo Technology Co., Ltd.},
howpublished = {\url{https://github.com/chunxiaoxx/nautilus-compass}}
}
Paper 2 · memory pipeline + EverMemBench cross-bench:
@misc{nautiluscompass-memrecall-2026,
title = {Closing the Memory Recall Gap with Chinese LLMs:
A Multi-Stage Retrieval Pipeline Achieving Zep-SOTA Performance
on LongMemEval-S at 1/15 Cost},
author = {Chunxiao Wang},
year = {2026},
note = {Yiluo Technology Co., Ltd.},
howpublished = {\url{https://github.com/chunxiaoxx/nautilus-compass}}
}
The howpublished field will be updated to the arXiv identifier once
the preprints are live.
We also build on prior work — please cite as appropriate:
- BGE-m3 / BGE-Reranker (Chen et al., BAAI 2024)
- Persona Vectors (Chen et al., Anthropic, arXiv:2507.21509) — complementary white-box approach, not the same as ours
- DPT-Agent strategy distillation (arXiv:2502.11882)
- A-MEM dynamic links (arXiv:2502.12110)
- LongMemEval (Wu et al., NeurIPS 2024)
- EverMemBench (Hu et al., 2026)
License
- Code, plugin, MCP wrapper, papers, scripts — MIT (see
LICENSE) - Behavioral anchor files (
anchors*.json) — CC0 1.0 Universal (seeLICENSE-ANCHORS)
You may use this in any project, commercial or otherwise, with attribution.
Star history
Contributors
<a href="https://github.com/chunxiaoxx/nautilus-compass/graphs/contributors"> <img src="https://contrib.rocks/image?repo=chunxiaoxx/nautilus-compass" alt="Contributors" /> </a>
PRs welcome — see CONTRIBUTING.md.
Contact
- Author: Chunxiao Wang · Yiluo Technology Co., Ltd. ·
chunxiaoxx@gmail.com - Issues: github.com/chunxiaoxx/nautilus-compass/issues
- Hosted gateway: compass.nautilus.social
- 中文文档: README.zh-CN.md
Recommended Servers
playwright-mcp
A Model Context Protocol server that enables LLMs to interact with web pages through structured accessibility snapshots without requiring vision models or screenshots.
Magic Component Platform (MCP)
An AI-powered tool that generates modern UI components from natural language descriptions, integrating with popular IDEs to streamline UI development workflow.
Audiense Insights MCP Server
Enables interaction with Audiense Insights accounts via the Model Context Protocol, facilitating the extraction and analysis of marketing insights and audience data including demographics, behavior, and influencer engagement.
VeyraX MCP
Single MCP tool to connect all your favorite tools: Gmail, Calendar and 40 more.
graphlit-mcp-server
The Model Context Protocol (MCP) Server enables integration between MCP clients and the Graphlit service. Ingest anything from Slack to Gmail to podcast feeds, in addition to web crawling, into a Graphlit project - and then retrieve relevant contents from the MCP client.
Kagi MCP Server
An MCP server that integrates Kagi search capabilities with Claude AI, enabling Claude to perform real-time web searches when answering questions that require up-to-date information.
E2B
Using MCP to run code via e2b.
Neon Database
MCP server for interacting with Neon Management API and databases
Qdrant Server
This repository is an example of how to create a MCP server for Qdrant, a vector search engine.
Exa Search
A Model Context Protocol (MCP) server lets AI assistants like Claude use the Exa AI Search API for web searches. This setup allows AI models to get real-time web information in a safe and controlled way.