惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

T
Tenable Blog
MyScale Blog
MyScale Blog
罗磊的独立博客
Hugging Face - Blog
Hugging Face - Blog
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
爱范儿
爱范儿
博客园 - 司徒正美
D
Darknet – Hacking Tools, Hacker News & Cyber Security
量子位
N
News | PayPal Newsroom
S
Secure Thoughts
酷 壳 – CoolShell
酷 壳 – CoolShell
L
LINUX DO - 热门话题
有赞技术团队
有赞技术团队
V
Visual Studio Blog
T
Tailwind CSS Blog
奇客Solidot–传递最新科技情报
奇客Solidot–传递最新科技情报
Project Zero
Project Zero
B
Blog RSS Feed
J
Java Code Geeks
Google Online Security Blog
Google Online Security Blog
Last Week in AI
Last Week in AI
Cyberwarzone
Cyberwarzone
Exploit-DB.com RSS Feed
Exploit-DB.com RSS Feed
小众软件
小众软件
博客园 - 【当耐特】
Latest news
Latest news
T
Threat Research - Cisco Blogs
aimingoo的专栏
aimingoo的专栏
博客园_首页
博客园 - 三生石上(FineUI控件)
Engineering at Meta
Engineering at Meta
D
Docker
Forbes - Security
Forbes - Security
Help Net Security
Help Net Security
Apple Machine Learning Research
Apple Machine Learning Research
P
Proofpoint News Feed
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
Simon Willison's Weblog
Simon Willison's Weblog
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
V2EX - 技术
V2EX - 技术
N
Netflix TechBlog - Medium
The Last Watchdog
The Last Watchdog
让小产品的独立变现更简单 - ezindie.com
让小产品的独立变现更简单 - ezindie.com
T
Threatpost
Cloudbric
Cloudbric
T
The Exploit Database - CXSecurity.com
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
博客园 - 叶小钗
Webroot Blog
Webroot Blog

Hacker News: Show HN

PurrrrrFocus: Pomodoro Timer App - App Store Workflow Engine — Multi-Step Orchestration for Bun RapidPhoto: Pro Photo Editor App - App Store GitHub - DheerG/swarms: Achieve extraordinary results with claude code across a variety of tasks SPICE simulation → oscilloscope → verification with Claude Code — Lucas Gerads Show HN: VCoding – A 5 MB native Windows IDE with no dynamic dependencies Show HN: LLMs don't hallucinate because they're bad at math, it's the format GitHub - Agent-FM/agentfm-core: AgentFM is a peer-to-peer network that turns everyday computers into a decentralized AI supercomputer. AgentFM lets you run massive AI workloads directly across a global mesh of idle CPUs and GPUs. Show HN: Tracking Top US Science Olympiad Alumni over Last 25 Years GitHub - Potarix/agent-hub: One place to talk to all your agents Show HN: Runtime security for AI agents(injection,tool abuse, data exfiltration) GitHub - dubeyKartikay/lazyspotify: Terminal Spotify client for macOS and Linux GitHub - the-banana-tool/king-louie: Easy to use GUI Personal AI Assistant. Win/Linux/Mac. Show HN I made my vacation rental bookable by AI agents–no Airbnb, 0% commission GitHub - basteez/jsf-autoreload: maven plugin to enable hot reload on jsf projects uvm32/hosts/host-gdbstub at main · ringtailsoftware/uvm32 GitHub - labsai/EDDI: Config-driven engine that turns JSON into production-grade AI agents. Multi-agent orchestration, 12+ LLM providers, MCP/A2A protocols, RAG, persistent memory, and enterprise compliance (EU AI Act, GDPR, HIPAA). Built on Quarkus. GitHub - glitchnsec/fortyone-oss: AI Executive Assistant Platform Quickstart | Alien GitHub - muxshed/shed: One stream in, or many. Every destination, simultaneously. No cloud middleman, no per-channel fees, no limits. GitHub - ocrbase-hq/ocrbase: 📄 PDF/IMG ->.MD/JSON Document OCR API for PaddleOCR and GLMOCR. Self-hostable. GitHub - impactjo/home-memory: MCP server that lets your AI assistant remember everything about your home. GitHub - Sets88/dbcls: DbCls is a powerful terminal database client that supports various databases GitHub - neptun2000/heor-agent-mcp GitHub - SeanFDZ/macmind: Single-layer transformer in HyperTalk for the classic Macintosh RollQuation: Math Puzzles - Apps on Google Play GitHub - dropbox/witchcraft Show HN: Agent-cache – Multi-tier LLM/tool/session caching for Valkey and Redis GitHub - opentalon/opentalon: OpenTalon is an open-source platform built from the ground up in Go as a robust alternative to OpenClaw LinkedIn™ 职位抓取工具 - Chrome 应用商店 GitHub - EdoardoBambini/Agent-Armor-Iaga: AI agents are getting tool access — shell, file system, databases, APIs, secrets. But **nobody is governing what they actually do with it**. Frameworks like LangChain, CrewAI, AutoGen, and Claude Code give agents the power to execute. Agent Armor gives you the power to control, audit, and approve every single action before it happens. HN Vibes — Week 15, Apr 7–13 2026 GitHub - chojs23/ec: Easy terminal-native 3-way git mergetool vim-like workflow GitHub - SethPyle376/hiraeth: Local AWS emulator focused on fast integration testing, with SQS support, SQLite-backed state, and a debug-friendly web UI. GitHub - JakOb-dotcom/cloud-sandbox-security-analysis: Technical analysis and Proof of Concept (PoC) regarding environment variable exfiltration in containerized cloud sandboxes via side-channel data leaks. Springboards - Flint Alpha Show HN: A simpler coding agent harness GitHub - audiodude/sudomake-friends GitHub - 256thFission/mini-mythos: OSS clone of Anthropic’s Mythos harness to locate C/C++ memory vulnerabilities Show HN: OpenParallax: OS-level privilege separation for AI agent execution Hacker News Sorted - Chrome 应用商店 Show HN: How to Install Docker on Ubuntu 24.04 LTS: Complete 2026 Guide GitHub - himanshudongre/smriti GitHub - sverrirsig/claude-control: macOS desktop dashboard for monitoring and managing multiple Claude Code sessions GitHub - ory/dockertest: Write better integration tests! Dockertest helps you boot up ephermal docker images for your Go tests with minimal work. Chiral - Chrome 应用商店 Show HN: Two Claudes collaborating through shared memory on a $100 mini-PC GitHub - pmichaillat/latex-cv: Minimalist LaTeX template for academic CVs GitHub - oguzbilgic/posse: A web UI for Anthropic Managed Agents. GitHub - sshiraz/depsly: Dependency risk analysis tool for npm packages ABI Add safari/agent-harness — Safari browser automation via safari-mcp by achiya-automation · Pull Request #212 · HKUDS/CLI-Anything GitHub - Halfblood-Prince/trustcheck: Verify PyPI package attestations and improve Python supply-chain security GitHub - oguzbilgic/kern-ai: Agents that do the work and show it. GitHub - bruits/satteri: High-performance Markdown and MDX processing for the JavaScript ecosystem GitHub - tylergibbs1/feedstock: High-performance web crawler and scraper for TypeScript, powered by Bun and Playwright GitHub - Grimm67123/grimmbot: The self-improving sandboxed and open-source AI agent. With persistent memory and scheduling. GitHub - whitevanillaskies/whitebloom: Local whiteboard that blooms. GitHub - hwdsl2/docker-whisper: Docker image for a self-hosted Whisper speech-to-text server with speaker diarization and OpenAI-compatible transcription and translation APIs. Powered by faster-whisper. Supports all Whisper models, NVIDIA GPU (CUDA) acceleration, JSON/SRT/VTT output, SSE streaming, offline mode, and multi-arch (amd64, arm64). GitHub - yisding/reviewwiggum GitHub - MarwanAlsoltany/serrors: Structured errors for Go: sentinel hierarchies, typed data, custom formatting, and slog integration. GitHub - soatok/age-php GitHub - Luthiraa/markitme GitHub - stagas/rtdiff: realtime git diff gui and AI-assisted commits GitHub - tombedor/excalicharts GitHub - wh1le/excalidraw-edit: Open and edit .excalidraw files from the terminal. Offline, auto-saves to disk. MalExt Sentry - Malicious Extension Scanner - Chrome 应用商店 GitHub - syi0808/asciianimesvg: Generate animated ASCII art SVGs from text. CLI, Rust library, WASM, and web editor. GitHub - zaina-ml/ml_forge: A visual-based graph node editor for training computer vision models. GitHub - anakin87/llm-rl-environments-lil-course: 🌱 A little course on Reinforcement Learning Environments for evaluating and training Language Models GitHub - takaakit/superpowers-uml: Superpowers-UML modifies Superpowers to ensure a software development workflow in which AI agents design through UML modeling. AdriByte Studio - Sviluppo Web e Soluzioni Digitali GitHub - chouligi/angel-copilot: Your personalized Angel Investment Advisor Show HN: MoodSense AI (ML and FastAPI and Gradio, Deployed on Hugging Face) Moodsense Ai - a Hugging Face Space by aman179102 GitHub - agenteractai/lodmem: Level Of Detail Context Management for Agents GitHub - ostefani/subnetlens: A fast, concurrent network scanner with a TUI and plain-text CLI, built in Go. It discovers live hosts on your network, scans their open ports, resolves hostnames, and fingerprints operating systems—delivered. Cyber Pulse: Agentic Intel - Apps on Google Play Whisper API: Self-Hostable Speech to Text Transcription The Agent-Web Protocol Stack: A Research Thesis GitHub - msmarkgu/RelayFreeLLM: A restful API designed to route user prompts to various AI model providers. Show HN: Provepy – A Python decorator that proves your code using Lean and LLMs Show HN: Pardonned.com – A searchable database of US Pardons GitHub - patrickdappollonio/dux: Dux is a terminal UI that lets you run multiple AI coding agents side by side, each in its own git worktree, with full companion terminals, macros, commit generation, and a command palette that knows more tricks than you do. kMC Crystal Simulator Show HN: HyperFlow – A self-improving agent framework built on LangGraph GitHub - stef41/vibescore: 🎵 Grade your vibe-coded project. One command, instant letter grade across security, quality, dependencies, and testing. GitHub - stef41/lmscan: 🔍 Detect AI-generated text and fingerprint which LLM wrote it. Open-source GPTZero alternative. Zero dependencies, works offline. imgur.com GitHub - visionscaper/collabmem: Enabling long-term collaboration with Agentic AI - building up episodic and world model memory over time with in-context awareness 在 Steam 上购买 FriedrichAI: Offline AI 立省 10% GitHub - atripati/ark: AI Runtime Kernel — a context operating system for AI agents. Eliminates tool bloat, loads only what’s needed, and gives LLMs their reasoning space back. GitHub - nowork-studio/toprank: Open-source Claude Code skills for SEO, SEM, Google Ads GitHub - tacomanator/sash: Lightweight macOS menu bar app for reliably cycling through windows of the current application. Appents | Social Media Management for Product-First Teams GitHub - pnhoang/youtube-spam-blocker: Automatically detects and hides spam messages in YouTube Live chat. Set rate limits, keyword filters, and block repeat offenders. GitHub - decisionnode/DecisionNode: CLI + Local MCP - A shared structured memory store across Claude Code, Cursor, Windsurf, Antigravity, and every MCP client. Semantically queryable. GitHub - AvaCodeSolutions/django-email-learning: An open source Django app for creating email-based learning platforms with IMAP integration and React frontend components. The $100K Gap in Kubernetes Security Tooling Function Calling Harness: From 6.75% to 100%
GitHub - mirkofr/FERNme: A lightweight memory engine for AI agents using fuzzy graphs, Hebbian updates, and optional LLM gating.
mirkofr · 2026-06-21 · via Hacker News: Show HN

Fuzzy-Edged Recall Network

A user-owned, near-zero-LLM memory layer for AI agents. It learns each person from their behavior — including how they talk and feel — stays token-flat forever, and lets people see, edit, and own what's remembered. The engine is substrate-agnostic: it remembers wherever an agent acts — websites today (shopping, support, booking, healthcare, tutoring, gov), desktop and mobile next.

License: Apache 2.0 Site Python 3.10+ Tests Storage Status

Cheap to write · flat to read · interpretable by design · owned by the user

fernme.dev


✨ The one-paragraph pitch

Most agent memory is written by an LLM on every turn (expensive, hallucination-prone), evaluated on question-answering (not actions), and assumes a single user. FERNme is built for the opposite world — agents that act for many people, in any domain (a sale, a booking, a resolved ticket, a completed lesson, a kept appointment — "outcome" is whatever the goal is). It starts where agents already act today — websites — and the same user-owned memory is designed to extend to desktop and mobile. Each user is a sparse, fuzzily-weighted node in a per-site graph; edges update by a Hebbian co-occurrence rule with zero LLM calls, retrieval is spreading activation, and the prompt-facing "card" stores only deviations from a population prior. The result: per-turn cost stays flat as a profile grows for years, the user can read and correct their own memory, and the same engine assembles — only with the user's consent — into a cross-site supernode they fully control.


🎯 Why FERNme (the strong points)

🪶 Zero-LLM writes Memory updates are arithmetic on a graph — 0 LLM calls per interaction vs. ~2 for extraction-based memory. No write-time cost, no write-time hallucination.
📉 Flat token cost forever The prompt card holds ~25 tokens whether it's a visitor's first day or fifth year. A full-history baseline is 77× larger by 120 interactions.
🧠 Strong in every regime Ties a frequency counter on static recall, beats it 0.72 → 0.13 on drift, and wins on context (0.62 → 0.51). Decay + spreading activation unify stability and adaptivity.
🪟 Glass-box & user-owned Every preference is visible and editable. People fix what's wrong, delete everything, or export it. Privacy becomes a feature, not a liability.
🏬 Built for outcomes Evaluated by conversion, not QA. A simulated storefront shows +16% conversion lift vs. non-personalized recommendations.
🧩 User-owned supernode Sign in across sites → your memories assemble like Lego into one profile you control, default-deny, sensitive data walled off. Not surveillance — the mirror image of it.
🎚 Cost/quality dial One engine, a memory_mode switch: free key-less pure by default, opt-in gated/offline LLM enrichment when you need Mem0-grade nuance — pay only for the compute you use.
🔐 Verifiable & unlearnable Every action is logged in a tamper-evident HMAC chain the user can replay to detect any alteration; forget_everywhere wipes the profile and unlearns the person from the population prior — provable right-to-be-forgotten.
🛡 Injection-proof by design Writes are arithmetic, not LLM extraction, so page/user text can't be "talked into" becoming a belief — tested that injected instructions never enter memory.
🧠 Private collective intelligence New users benefit from crowd patterns on turn one (cold-start from a population prior), with k-anonymity + differential privacy so no individual leaks. A network-effect moat single-user memories can't have.
🗣 Style & mood memory Learns how each person communicates (terse/verbose, formal/casual, energy) and tracks their mood with trend detection, so the agent can match tone and notice when someone's frustration is rising — in any domain.
🎯 Outcome-learning, any goal Memory is reinforced by results — not just recall. record_outcome(success) strengthens what worked and weakens what backfired, where "success" is any goal (purchase, booking, resolved ticket, completed lesson…).
🔍 Explainable Ask why(user, attr) — get the evidence (observations + good/bad outcomes + dates). No black box.
🔌 Deployable plumbing (research preview; harden per SECURITY.md) SQLite or Postgres (tested on real PG 16), REST + MCP servers, consent gating, injection-safe writes, proactive triggers — all tested.

📊 Benchmarks

Honest scope: the numbers below are on synthetic or LLM-authored data, not real users. They validate the mechanism and surface failures; a real-human pilot is the pending next step. The Mem0 (LLM) head-to-head needs an API key and is not yet run.

On LLM-authored people (closest to real, agentic ingestion)

A sample of 16 of 92 third-person profiles (ChatGPT-authored), read as prose only and remembered agentically, then scored against hidden answer keys:

metric result
preference coverage vs. hidden key 75%
communication style — formality 100%
mood sign / mood arc 94% / 100%
preference drift detected 94%
injection attempts ignored 100%
note → card compression 7.3×

(The "agent" here is an LLM reading prose, so these reflect agent + engine together — the engine is solid; the extraction quality is the agent's.)

Cost, recall, and Pareto (synthetic, multi-seed)

Reproduce: python -m fernme.eval.cost_variance · ... quality · ... drift · ... context · ... ablation · ... pilot

Cost — per-turn memory tokens vs. profile size (5 seeds):

metric FERNme baseline
card size 24.9 ± 0.5 tokens (flat) full history grows linearly
at 120 interactions 77× ± 1.3 larger
LLM calls per write 0 ~2 (extraction memory)

Recall quality — precision@5 vs. ground-truth preferences (5 seeds × 40 users):

regime 🌿 FERNme frequency recency
static recall 0.74 0.74 0.47
drift (taste shifts) 0.72 0.13 ❌ 0.59
context (precision@3) 0.62 0.51 (blind)

The headline: FERNme is the only method strong everywhere. Frequency can't forget (fails drift); recency is noisy (fails static). FERNme's decay + spreading activation get both.

Cold-start ablation — population prior gives +0.06 precision@5 at turns 1–3, washing out by turn 10 (a real but modest, cold-start-only benefit).

Cost / quality Pareto (python -m fernme.eval.pareto) — measured FERNme recall & tokens, modeled LLM nuance & price (assumptions in-file). Per 1,000 interactions:

strategy quality $/1k vs Mem0
FERNme-pure 0.52 $0.008 122× cheaper
FERNme+gated 0.66 $0.023 42× cheaper
FERNme+offline 0.73 $0.104 9× cheaper
full-history@120 0.82 $0.59 (grows)
Mem0-style 0.82 $0.95

FERNme+gated/offline sit on the efficient knee: ~80–90% of the LLM-ceiling quality at 1–2 orders of magnitude less cost. (Modeled assumptions; shape is the point.)

Cost/quality Pareto — FERNme+gated/offline on the efficient knee

Simulated outcome pilot — fake storefront, learn-from-behavior shoppers: +16% relative conversion lift over a popularity baseline; tied at visit 1 (cold start), pulling ahead as it learns, recovering through a mid-pilot taste drift.


🎚 Memory modes (one engine, a cost/quality dial)

FERNme ships one core with a deployment-level switch — FernService(memory_mode=...). The default is free, key-less, and tested; LLM modes are opt-in and pluggable.

mode LLM use cost status
pure (default) none cheapest, flat ✅ tested, key-less
gated one small call only on novel free-text ~tiny 🧪 experimental — needs a model
offline batched consolidate() enrichment, off the hot path ~tiny, amortized 🧪 experimental — needs a model
  • A pluggable tagger (tagging.py) does the LLM work; you pass llm_fn, optionally constrained to a controlled vocabulary (the real consistency lever across models).
  • The hot write path stays LLM-free in every mode; gated spends a call only when the deterministic mapping finds nothing, and svc.llm_calls counts every invocation for cost transparency.
  • See the cost/quality Pareto above for where each mode lands. Honest note: the gated/ offline quality is modeled until run against a real model — the wiring is tested here with a mock LLM, not validated for quality.

🧭 The 9 leapfrog dimensions (status)

FERNme's edge isn't the mechanism (that's now a crowded 2026 category) — it's competing on dimensions single-user, vendor-owned, recall-optimized systems structurally can't.

# Dimension Status
9 Communication-style & mood memory ✅ built + tested
2 Outcome-learning for any goal (reinforce on results) ✅ built + tested
8 Explainable provenance (why) ✅ built + tested
1 Private collective priors (network-effect cold-start; k-anonymity + bounded-mean DP) ✅ built + tested
4 Verifiable, cryptographic data ownership (tamper-evident HMAC chain, cascading unlearning) ✅ built + tested
7 Multi-timescale memory (fast context vs. slow identity) ✅ built + tested
6 Self-tuning forgetting (learn decay from outcomes; adapts to drift) ✅ built + tested
5 Injection-resistant by construction (deterministic writes can't be talked into beliefs) ✅ built + tested
3 Open user-owned memory protocol (portable across any agent, with consent) ◑ spec stage

These are deliberately the things HippoGraph et al. can't follow: they're single-user (no collective priors), vendor-owned (no user-owned protocol), and recall-optimized (no outcome loop). Built in honest, tested slices — research-dependent ones are marked.

🏗 Architecture

flowchart TD
    V[Visitor on a website] -->|prompt + action| API[FERNme Service]
    API --> CONSENT{consent?}
    CONSENT -->|no| STOP[blocked]
    CONSENT -->|yes| ENGINE
    subgraph ENGINE[Engine - no LLM in the write path]
      W[Hebbian write + decay] --> G[(Per-site preference graph<br/>fuzzy 0-9 edges)]
      G --> R[Spreading-activation retrieval]
      R --> CARD[Token-minimal card ~25 tok]
      PRIOR[Population prior<br/>differential encoding] --> R
    end
    CARD --> AGENT[Agent: recommend / act]
    G --> CAB[(Cabinet: raw event log)]
    API --> STORE[(SQLite or Postgres<br/>multi-tenant)]
    API --> GLASS[🪟 Glass-box editor]
    API -.user signs in.-> SUPER[User-owned Supernode<br/>cross-site, default-deny]
Loading

🧠 How FERNme works (visual walkthrough)

Why FERNme Why FERNme — adaptive local memory instead of expensive RAG/vector retrieval in the loop.

Seven core principles What makes it different — near-zero-LLM, deterministic-first, Hebbian, fuzzy, memory cards, action-aware, user-owned.

How memory grows How memory grows — new event → connect → strengthen → decay → update the card (Hebbian learning).

Fuzzy Hebbian graph The fuzzy Hebbian graph — sparse, weighted (0–9) edges; nodes for users, preferences, topics, goals.

The LLM gate The LLM gate — an exception, not the default. Most events are handled deterministically; the LLM is a rare fallback when uncertain.

Memory card The memory card — a bounded, interpretable, token-minimal summary of what matters.

Action-aware learning Action-aware learning — good outcomes strengthen connections, bad outcomes weaken them.

The road ahead The road ahead — today's local memory; tomorrow's recursive organization and user-owned supernode (roadmap, not yet built).

FERNme architecture Full architecture: ingestion bridge → namespaced vocabulary → fuzzy Hebbian graph → memory card → agent, with the LLM gate only when uncertain.

🚀 Quickstart

pip install -e ".[dev,api]"

python run_demo.py                      # cold-start → learning → glass-box edit
python supernode_demo.py                # one person, three sites, one owned profile
pytest -q                               # 88 tests (engine, store, supernode, safety, auth…)

# experiments
python -m fernme.eval.drift               # FERNme beats a frequency counter when tastes change
python -m fernme.eval.pilot               # +16% simulated conversion lift

# run it live
FERNME_API_KEY=secret uvicorn fernme.api.rest:app --port 8077   # REST API (docs at /docs)
open http://localhost:8077/ui                               # glass-box memory editor
open http://localhost:8077/graph                            # your memory as a graph — focus by site / PC / phone
python -m fernme.api.mcp_server                               # MCP server for agents/Claude

🗄 Storage: defaults to ~/.fernme/fernme.db (SQLite). For production use PostgresStore — same interface, tested against a real Postgres 16. Keep SQLite off cloud-synced folders.


🧱 What's inside

  • Engine — saturating Hebbian write (no LLM), ACT-R decay, spreading activation, token-minimal card.
  • Population prior — IDF cold-start; differential (deviation-only) storage is enforced by an explicit prune_to_prior pass (redundant edges read through to the prior).
  • StoresSQLiteStore (zero-setup) and PostgresStore (tested vs real PG 16), one interface.
  • Ingestion bridge — a per-site catalog (item_id->tags) plus a controlled, namespaced vocabulary (vocabulary.py) that canonicalizes every tag (catalog, free text, or LLM) to one form (pref:, topic:, goal:, context:) so the same concept never drifts across months. Deterministic by default; gated-LLM only for novel free text. This is the product-critical layer — and the foundation a future recursive/region organization would group on.
  • The Cabinet — append-only event log with recall() for specific facts.
  • Supernode (supernode.py + auth.py) — user-owned cross-site profile, built by sign-in (verified token → opaque person id), default-deny scoped views, sensitive categories walled off.
  • Proactive triggers — due-to-reorder + fading-favorite nudges.
  • Safety — event tags treated as untrusted data: injection-pattern dropping, size/value caps.
  • Interfaces — REST (/observe /card /recall /edit /export /delete /triggers …) + MCP tools + a glass-box web UI (editor at /ui, cross-surface memory graph at /graph — one memory, focusable by site / PC / phone).
  • Governance — consent-gated everywhere; export & right-to-be-forgotten built in.

🔬 How FERNme compares

FERNme is a different category from conversational memories — it's a per-user preference graph evaluated by actions, not a QA memory. Don't benchmark it on LoCoMo; that's the wrong axis.

🌿 FERNme Mem0 Zep/Graphiti Letta MemOS
Write no LLM LLM LLM → KG LLM-paged LLM
Retrieval spreading activation vector graph+time OS paging hybrid
Eval axis outcomes QA temporal QA long-horizon QA
User-owned + glass-box
Multi-tenant per-site passport

Leads on: write cost, interpretability, per-site user-ownership/consent. Honestly behind on: nuanced/causal preferences (LLM extraction wins), benchmark credibility, ecosystem & distribution.


⚖️ Honest status

Done & tested (88 tests): engine, SQLite + real-Postgres stores, supernode + sign-in, triggers, safety, REST/MCP, glass-box UI + memory-graph view, and the full results suite above.

🚧 Still open (genuinely needs the outside world):

  • A real-human per-site pilot — only live users close the loop a simulator can't.
  • The Mem0 (LLM) head-to-head — harness wired; run locally with OPENAI_API_KEY.
  • Embeddings for context→attribute matching; offline LLM catalog enrichment for messy inputs.
  • Desktop & mobile surfaces — the engine is substrate-agnostic; web ingestion ships today, desktop/mobile adapters are on the roadmap. The user-owned supernode is the bridge that assembles them, with consent, into one cross-surface profile.

Every claim above is backed by a test or a reproducible experiment. Where a result is simulated, it says so — a simulator proves the mechanism, not real-world behavior.


📁 Layout

fernme/
  core/      graph types · fuzzy 0–9 edges · event record
  write/     event→attr mapping (no LLM) · Hebbian update · decay
  retrieve/  base-level + spreading activation · token-minimal card
  prior/     population prior · differential encoding · IDF cold-start
  store/     sqlite_store · postgres_store (one interface)
  supernode.py · auth.py · triggers.py · safety.py · service.py
  api/       rest.py (FastAPI) · mcp_server.py · web/glassbox.html · web/graph.html
  eval/      simulator · cost · quality · drift · context · ablation · pilot
tests/       88 tests   ·   *_demo.py walkthroughs

📜 License & citation

Apache-2.0, © 2026 Acquilab Inc. — see LICENSE and NOTICE. Security notes in SECURITY.md; the name is a working codename (see NAMING.md). If you use FERNme in research, please cite it via CITATION.cff.