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 - Newest: "AI"

AI can't read an investor deck AI as an attorney? Student uses ChatGPT, Gemini to sue UW over alleged racial discrimination Hacking MCP Servers in AI Systems – The Rug Pull: Tool Changes After Approval GitHub - MeepCastana/KubeezCut: Free Web based video editor GitHub - GenAI-Gurus/awesome-eu-ai-act: Curated tools, official sources, OSS, templates, and guides for EU AI Act compliance. Can AI judge journalism? A Thiel-backed startup says yes, even if it risks chilling whistleblowers Coming soon: 10 Things That Matter in AI Right Now DARPA built an AI to fact-check enemy weapons claims What explains heterogeneity in AI adoption? When AI Meets Muscle: Context-Aware Electrical Stimulation Promises a New Way to Guide Human Movements - Department of Computer Science AI Changed How We Build. It Did Not Change What Matters. Linux rules on using AI-generated code - Copilot is OK, but humans must take 'full responsibility for the… Meta spins up AI version of Mark Zuckerberg to engage with employees Code Mode: Let Your AI Write Programs, Not Just Call Tools | TanStack Blog GitHub - Delavalom/graft: Go framework for building AI agents. Type-safe tools, multi-provider (OpenAI, Anthropic, Gemini, Bedrock), zero vendor SDKs. India's TCS tops estimates, says new AI models did not dent services demand Gen Z's fading AI hype Strong feeling: we are in a folded AI reality GitHub - machinarii/total-recall-catalog: A reference catalog of latest knowledge retrieval, memory & RAG systems GitHub - mensfeld/code-on-incus: Give each AI agent its own isolated machine with root, Docker, and systemd. Active defense detects and stops threats automatically.. Quantization, LoRA, and the 8% Problem: Benchmarking Local LLMs for Production AI Iran war: We spoke to the man making Lego-style AI videos that experts say are powerful propaganda Powell, Bessent discussed Anthropic's Mythos AI cyber threat with major U.S. banks GitHub - immartian/bellamem: Persistent belief-graph memory for AI agents. Retrieves decisive context by importance — not recency, not RAG, not /compact. recursive-mode: The Repo-Native Operating System for AI Engineering After the attack on Sam Altman's home, will AI CEO's go on the offensive? The biggest advance in AI since the LLM Opus 4.6 vs GPT 5.4 One Prompt Unity World Generation Test “AI polls” are fake polls Client Challenge Can AI be a 'child of God'? Inside Anthropic's meeting with Christian leaders How to Switch AI Chatbots and Why You Might Want To GitHub - MattMessinger1/agentic_refund_guardrail: Safe refund policy layer for AI agents — Python + TypeScript. Same behavior, shared tests. Adam/papers/emergent_values_whitepaper.md at master · strangeadvancedmarketing/Adam Ask HN: How do you stop playing 20 questions with your AI coding tools How far can automation and AI support psychotherapy? - @theU GitHub - stagas/rtdiff: realtime git diff gui and AI-assisted commits A Mac Studio for Local AI — 6 Months Later A History of the Early Years of AI at the University of Edinburgh Why AI Coding Tools Still Feel Stuck on Localhost MSN AI Datacenters Are Becoming Strategic Targets twitter.com Penn Researchers Use AI to Surface Unreported GLP-1 Side Effects in Reddit Posts Show HN: MoodSense AI (ML and FastAPI and Gradio, Deployed on Hugging Face) Moodsense Ai - a Hugging Face Space by aman179102 AI models are terrible at betting on soccer—especially xAI Grok GitHub - xialeistudio/echoic GitHub - HimashaHerath/github-dev-wrapped: AI-powered weekly GitHub activity reports deployed to GitHub Pages GitHub - alejandrobalderas/claude-code-from-source: Architecture, patterns & internals of Anthropic's AI coding agent — reverse-engineered from source maps AI and Tech brief: Ireland ascendant GitHub - Titovilal/context0: Context0 - Never Surrender Training for a Marathon with an AI Coach: What Worked and What Didn't Cyber Pulse: Agentic Intel - Apps on Google Play I Built an AI PR Reviewer That Catches Bugs by Not Looking for Bugs Gen Z workers are so fearful AI will take their job they’re intentionally sabotaging their company’s AI rollout | Fortune How AI Is Reimagining the Game of Golf–For Both Players and Courses GitHub - nattergabriel/reseed: A CLI tool for managing and distributing agent skills across projects Is SVG the final frontier? My AI workflow evolved from prompts to a near-autonomous workflow MLSharp Help - 3DGS Viewer & Generator I put my cognitive field based AI's runtime on GitHub Is Numble the first AI-proof game? A3: Kubernetes for autonomous AI agent fleets | Emergent Principles Deepali Vyas ("The Elite Recruiter") GitHub - msmarkgu/RelayFreeLLM: A restful API designed to route user prompts to various AI model providers. Unionized ProPublica staff are on strike over AI, layoffs, and wages Unleashing the Advantage of Quantum AI We're heading for an AI-fueled 'dementia crisis,' brain scientist warns The AI-Assisted Breach of Mexico's Government Infrastructure [pdf] GitHub - stef41/lmscan: 🔍 Detect AI-generated text and fingerprint which LLM wrote it. Open-source GPTZero alternative. Zero dependencies, works offline. MSN GitHub - visionscaper/collabmem: Enabling long-term collaboration with Agentic AI - building up episodic and world model memory over time with in-context awareness We gave an AI a 3 year retail lease in SF and asked it to make a profit | Andon Labs AI Code is Hollowing Out Open Source, and Maintainers are Looking the Other Way What leaked "SteamGPT" files could mean for the PC gaming platform's use of AI AI is the boss at this retail store. What could go wrong? GitHub - Wuzu11517/agentic-proxy: Local proxy meant to help reduce With Drones, Geophysics and ArtificiaI Intelligence, Researchers Prepare to Do Battle Against Land Mines A Single Operator, Two AI Platforms, Nine Government Agencies: The Full Technical Report 在 Steam 上购买 FriedrichAI: Offline AI 立省 10% GitHub - inevolin/resume-cli: Hit Claude usage limits? Resume any AI coding session elsewhere. Switch tools at zero friction. 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. How to Build a Secure AI PR Reviewer with Claude, GitHub Actions, and JavaScript This Startup Wants You to Pay Up to Talk With AI Versions of Human Experts Intel Arc Pro B70 Brings 32GB VRAM to Local AI for $949 WordPress 7.0: The Good, the AI, and the Still Missing AI on the couch: Anthropic gives Claude 20 hours of psychiatry IatroBench: Pre-Registered Evidence of Iatrogenic Harm from AI Safety Measures AI Agents Know About Supabase. They Don't Always Use It Right. The history and future of AI at Google, with Sundar Pichai Inside an AI‑enabled device code phishing campaign How Meta Used AI to Map Tribal Knowledge in Large-Scale Data Pipelines AI for Systems: Using LLMs to Optimize Database Query Execution Forecasting the Economic Effects of AI Introducing Tinker: Play with AI, bring your ideas to life AI sheds light on an ancient gaming mystery People really hate AI but not as much as Iran—or Democrats | Fortune What is an AI Product Engineer? Phoebe Gates wants her $185 million AI startup to succeed with 'no ties to my privilege or my last name': 'I have a chip on my shoulder' | Fortune
GitHub - Pupok462/open-geo: open-geo — GEO (Generative Engine Optimization) visibility tracker: measure how a brand surfaces in AI answers, with a FastAPI/React dashboard and dark-themed PDF reports.
pupok46 · 2026-06-23 · via Hacker News - Newest: "AI"

open-geo — GEO visibility tracker: the /open-geo Claude Code command over a dark panel, beside a visibility funnel from queries to AI Overview to sources to citations

English · Русский · 中文 · العربية

open-geo — GEO Visibility Tracker for Claude Code

open-geo measures how visible your brand is inside AI answers — across every major engine. Search is shifting from "ten blue links" to a generated answer: ChatGPT, Perplexity, Gemini, Claude, Google AI Overview, Yandex, DeepSeek. Each answer leans on a handful of sources — and being one of them is visibility in AI. open-geo runs your queries through an engine in a real, logged-in browser and records whether your domain makes it into the sources, into the citations, into the text — and how the brand is spoken about when it does.

CI Claude Code skill Python 3.11 License: MIT

Why open-geo

  • It reads the answer like a human, not an API. Capture runs through Claude-in-Chrome in a real, logged-in browser — it sees the rendered AI answer (the sources panel and the inline citation chips), normalizes domains, and emits one validated record per query. No brittle scraping of a surface no engine ever promised to keep stable.
  • A visibility funnel, not a vanity score. Six metrics that nest as a funnel — answer → sources → citations — plus a qualitative sentiment read and a top-domains leaderboard (your brand ranked against every other domain in the answers). No composite index, no made-up share-of-voice index. Every number is auditable to pipeline/INTERFACES.md.
  • Local-first, multi-brand time-series. Captures land in a local SQLite (WAL) database, so you build per-brand, per-engine history and run-over-run deltas. Deliverables are a themed PDF and a FastAPI + React dashboard with a four-language switcher. Your data never leaves your machine.

Who this is for

  • GEO / SEO consultants — walk into a pitch with a real, dated read of a brand's AI-answer visibility instead of "AI search matters, trust me."
  • In-house growth / SEO at a brand — track your own domain's presence in AI answers over time, split by query lens (general / branded / comparative), and catch week-over-week drift.
  • Founders & devs already in Claude Code — it's just a skill: point /open-geo at a CSV and a domain, get a dashboard. No SaaS, no upload, no account.

What you get

  • Capture of AI answers — a list of queries is run through an engine in a real, logged-in browser, and how the target domain shows up is recorded, one validated record per query.
  • Six metrics + qualitative sentiment — a visibility funnel (answer → sources → citations): coverage, a visibility rate and an average best position for sources and for citations, plus the source→citation conversion (relative_citation) and a short free-text note on how each answer treats the brand. The dashboard and PDF also show a per-lens qualitative sentiment summary synthesized from those per-query notes (see Metrics).
  • A top-domains (competitor) leaderboard — the average-position metric generalized from your brand to every domain in the answers, ranked by how often it appears (with its average source/citation position). The honest "who shares your answer space" — brand rivals and publishers alike, your brand highlighted — as a sortable dashboard panel and a PDF section. No extra capture: it's computed from the data you already collected, so it works on past runs too.
  • SQLite multi-brand time-series — every run is stored in data/aeo.db (SQLite, WAL), so you accumulate history per brand + engine and get run-over-run deltas.
  • A dashboard with a four-language switcher — English, Русский, 中文, العربية (RTL-aware) — FastAPI read-only API + a Vite/React frontend with light/dark themes and per-metric tooltips.
  • A PDF report — a self-contained themed A4 report (ReportLab + matplotlib), no headless Chrome and no system libraries required.

Quick start

open-geo is a Claude Code skill — you drive it from a chat with Claude, not from a pile of shell commands. The whole setup is: clone, ask Claude to install it, then use it as a command.

  1. Clone the repo (or just point Claude at the URL):

    git clone <repo> open-geo
  2. Ask Claude to set it up. In a Claude Code session in that folder, say something like:

    Set up open-geo (run scripts/setup.sh), then track example.com (brand "Example") on google using examples/questions.csv.

    Claude runs the install and the capture for you — and prints a dashboard link and a summary.

  3. Or run it directly as a command once installed:

    /open-geo examples/questions.csv google example.com --brand "Example" --n-worker 3 --output both

examples/questions.csv is a placeholder — a fictional brand's question set, there so the first run works out of the box. For a real read, swap in your own queries: the question set is the core input — it decides what gets measured, and the report is only as good as the questions you ask. Format and how to choose them: What input do I need?.

Track it on a schedule. Wrap the command in Claude Code's /loop to re-capture on an interval and watch the drift — e.g. a weekly read:

/loop 1w /open-geo examples/questions.csv google example.com --brand "Example" --output both

The one thing Claude can't do for you: connect the Claude-in-Chrome extension and log the browser in to the market you want to track. That logged-in session is what capture drives.

Commands

Everything runs through one operator command — the /open-geo skill. You don't touch Python: Claude orchestrates capture → metrics → deliverables and hands you a dashboard and/or a PDF.

/open-geo <questions.csv> <engine> <domain> --brand "<name>" --n-worker <N> \
          [--output dashboard|pdf|both] [--period today|all] [--lang en|ru|zh|ar]
argument meaning
<questions.csv> CSV with columns query,lens, where lens ∈ general | branded | comparative. Ready sample: examples/questions.csv.
<engine> which AI engine to track (e.g. google). The same slot takes any engine that has a capture playbook under engines/.
<domain> the target domain (any spelling: https://www.example.com, example.com — normalized automatically).
--brand "<name>" human brand name (used in report/dashboard titles and the summary).
--n-worker <N> number of capture workers run in parallel — the run's concurrency.
--output dashboard (default) | pdf | both.
--period all (default — full brand+engine history, enables deltas) | today (this run only).
--lang UI language of the deliverables — en (default) | ru | zh | ar.

What it does, end to end: creates a run → splits the queries across parallel capture workers (each drives the engine in your logged-in Chrome and returns one validated record per query) → ingests and scores them centrally → emits the dashboard and/or PDF → prints a short summary from the cross-lens all row. Re-run on a /loop to track drift over time.

How it works

The whole tracker is orchestrated by the /open-geo command:

  1. Capture playbook — a per-engine playbook (engines/<engine>.md) is driven by Claude-in-Chrome in a visible, logged-in Chrome. It reads the rendered AI answer as an LLM does, expands the sources panel and the inline citation chips, normalizes domains, and emits one QueryCapture object per query.
  2. QueryCapture — the validated capture contract (Pydantic v2; authoritative spec in pipeline/INTERFACES.md).
  3. ingest / score — the workers are capture-only: each builds and self-validates its records (read-only) and returns them to the orchestrator. The orchestrator (the skill) owns every DB write: it ingests each chunk as its worker returns — incrementally, so a crash mid-run never loses captured work — finalizes the run, then computes metrics per lens plus an all row.
  4. dashboard / PDF — the orchestrator emits the deliverable(s) last, from the stored metrics, plus a short summary (the dashboard server is started only after all captures are in).

The pipeline is engine-agnostic: engine is an open id end to end (contract, DB, CLI, dashboard, report), and supporting a new engine is mainly a new engines/<engine>.md playbook — see engines/README.md.

Metrics

The funnel, in plain words. The four counts narrow down at each step:

  • Queries — the questions you feed in (your CSV).
  • AI Overview — the queries where the engine actually generated an AI answer (it doesn't always — and an absence is valid data, not a failure).
  • In sources — of those, the queries where your domain was among the sources the answer drew on.
  • Cited — of those, the queries where your domain was actually linked/cited in the answer text.

Each step is a subset of the one before it, so the counts nest: n_cited ≤ n_in_sources ≤ n_overviews ≤ n_queries. (Citations are a subset of sources because the model can only cite what it retrieved.) The denominator for visibility is answer-present queries — you can only be visible where an answer actually rendered. Everything is computed per lens (general / branded / comparative) plus an aggregate all row.

The six metrics are just ratios and positions along that funnel:

  • overview_coverage — share of queries that produced an AI answer at all (n_overviews / n_queries).
  • visibility_in_sources — of answer queries, the share where your domain made it into the relied-on sources (n_in_sources / n_overviews).
  • visibility_in_citations — of answer queries, the share where your domain is cited in the answer (n_cited / n_overviews).
  • avg_source_position — average best (min) rank of your domain among sources, over the queries where it appears (lower is better; if it never appears).
  • avg_citation_position — average best (min) rank among citations, over the queries where it is cited (lower is better; if never cited).
  • relative_citation — the source→citation conversion: of the queries where you were retrieved into sources, the share where the model actually cited you (n_cited / n_in_sources; higher is better, bounded to [0, 1]).
  • sentiment — a short qualitative phrase per query describing how the answer treats the brand. It is free text, not a number. At finalize the orchestrator also rolls the per-query notes into a per-lens summary (one short line per lens plus an all synthesis), shown as a "Sentiment by lens" strip in the dashboard and as the lead of the PDF's sentiment section. It follows the language of the captured data, not --lang.

A top-domains leaderboard (INTERFACES §4.2) ranks every domain in the answers — your brand highlighted — by appearances and average source/citation position, for honest competitive context computed from the same captured data. There is still intentionally no composite index, no share-of-voice index, and no numeric sentiment — the leaderboard is plain frequencies and positions, not a blended score. Deltas between runs are computed at read-time against the previous completed run of the same brand + engine; they are not stored. Authority: pipeline/INTERFACES.md §4.

Sample output

Every run produces two deliverables — a themed PDF report and a local dashboard, both built from the same scored run.

The PDF's key-metrics page (from the seeded Example demo — engine google; download the full sample PDF):

open-geo PDF report — key metrics page for Example (example.com): six KPI cards with run-over-run deltas and a per-lens breakdown table

The dashboard — KPI cards with read-time deltas, the per-lens breakdown, a "Sentiment by lens" strip, a "Top domains in answer space" leaderboard, a retrospective chart and a per-query table, with a four-language switcher and light/dark themes:

open-geo dashboard — Example on google: six KPI cards with deltas, breakdown by lens, and a sentiment-by-lens section

At the end of a run, /open-geo prints a short headline summary built from the lens="all" row (here, the seeded Example demo — engine google, run of 2026-06-09):

Run for brand "Example" (engine google), queries: 24.
• AI Overview coverage: 83% (20 of 24 queries).
• Visibility in sources: 60% of overview queries.
• Visibility in citations: 45% of overview queries.
• Average source position: 2.5 (lower is better).
• Average citation position: 1.0 (lower is better).
• Source→citation conversion (relative citation): 75% (higher is better).

The six metrics for lens="all", with the underlying funnel counts (n_queries = 24n_overviews = 20n_in_sources = 12n_cited = 9):

Metric Value Plain meaning Direction
overview_coverage 0.83 (20/24) Share of queries where an AI answer rendered at all higher = better
visibility_in_sources 0.60 (12/20) Of answer queries, share where example.com made it into the relied-on sources higher = better
visibility_in_citations 0.45 (9/20) Of answer queries, share where the domain is cited in the answer prose higher = better
avg_source_position 2.50 Average best (min) rank among sources, over queries where it appears lower = better
avg_citation_position 1.00 Average best (min) rank among citations, over queries where it is cited lower = better
relative_citation 0.75 (9/12) Source→citation conversion (last funnel step, ∈ [0, 1]) higher = better

A value renders as (not 0) when its guard trips — e.g. for the comparative lens in this run the domain never reached sources, so the three source/citation metrics are all .

FAQ

What input do I need?

Your own list of questions — a CSV with two columns, query,lens, where lens ∈ general | branded | comparative (general = neutral query with no brand named; branded = brand explicitly named; comparative = brand vs alternatives). You author this file, and it is the single most important input: GEO visibility is measured relative to the questions you ask, so the whole report is only as good as the question set. Write the queries your real customers would type, balanced across the three lenses (a handful of each is enough to start). The bundled examples/questions.csv is a placeholder for a fictional brand — use it to see the format, then replace it with yours.

Do I need any paid API keys?

No external data API and no paid keys. You need Claude Code, the Claude-in-Chrome extension connected, and a browser already logged in to the engine / market you want to track.

Does my data leave my machine?

No. Every run is stored in a local SQLite (WAL) database at data/aeo.db, and the deliverables are a local PDF and a local dashboard you run yourself. There is no SaaS, no upload, and no account.

Why six metrics and no single score?

Because they form a funnel (answer → sources → citations), and collapsing it into one number invites hand-wavy weighting and invented baselines. Every number is auditable to one formula in pipeline/INTERFACES.md §4, plus a free-text sentiment note that is never reduced to a number. A top-domains leaderboard (§4.2) gives competitive context as plain frequencies + positions — still no composite index and no share-of-voice index.

What is --n-worker, and how long does a run take?

--n-worker N is the run's concurrency: the queries are split into N chunks and N capture sub-agents run in parallel, each in its own browser tab/context. A single-query capture is roughly 6–10 tool calls, so wall-clock time scales with how many queries each worker handles in sequence — raise --n-worker to shorten a large run (within reason, to stay under the engine's "unusual traffic" radar).

License

MIT.