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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. 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GitHub - freu-ai/freu-cli: Cut AI agent token usage by up to 90%: record a browser session once with freu-cli and it compiles into a reusable skill command. Constellation-based DOM targeting survives class renames and page reshuffles, so skills keep working. Drops into Claude Code, Codex CLI, Cursor, OpenClaw, and Hermes skills directories.
0xintelligen · 2026-05-06 · via Hacker News: Show HN

🦦 Freu CLI (Browser Edition)

The first release of the Freu AI automation suite, focused on high-efficiency web orchestration.

💸 Cut your AI agent's token usage by up to 90% — offload repeated tasks to deterministic programs.

Important

👀 Next up: OS-level Computer Use Agent (CUA). We are actively extending the Freu AOT pipeline to vision-based desktop automation. Star this repo to stay updated on the upcoming Desktop Edition.

Instead of forcing your agent to act as a Just-In-Time (JIT) interpreter that parses the DOM on every single run, Freu CLI acts as an Ahead-of-Time (AOT) compiler. Record a browser session once, and Freu compiles it into a reusable, deterministic skill command. Your agent simply loads the skill into its context window and executes it, skipping the expensive visual reasoning entirely.

Freu CLI Demo


🔄 The Workflow

Freu is designed to bring stability to complex enterprise workflows by giving agents "muscle memory":

  1. Human Teaches (Record): Perform the target workflow in the browser normally—click, type, and navigate.
  2. Freu Compiles (Build): Freu filters DOM noise and compiles raw events into a semantic DSL (Domain-Specific Language) as a SKILL.md and JSON files.
  3. Agent Executes (Run): Drop the skill into your agent's directory (e.g., your local Hermes agent). The agent now invokes the command directly, bypassing costly LLM inference for navigation.
+-----------------------+     HTTP (127.0.0.1:8787)      +----------------+
|  Chrome extension     | <----------------------------> |  freu-cli      |
|  (user interaction &  |                                |  bridge        |
|   CDP command runner) |                                |  (Python HTTP) |
+-----------------------+                                +----------------+
                                                            |
                                        +-------------------+
                                        |                   |
                                        v                   v
                           learn (capture + LLM)         run <- skill
                           -> SKILL.md + <Cmd>.json      DSL steps
                           + log/ intermediates

✨ Why Freu?

  • Total Cost Reduction (90%+): We eliminate the recurring cost of UI navigation by splitting the token economics into two phases:
    1. Phase 1: Compilation Cost (One-time): You spend ~50k tokens once during the freu-cli learn phase. The LLM acts as a compiler to analyze the DOM and build the skill.
    2. Phase 2: Execution Cost (Recurring): 0 DOM tokens. Your agent runs the pre-compiled command directly. It never has to "see" or "reason about" the HTML again.
  • Self-Healing Selectors (Constellations): Freu captures a semantic constellation (element + ancestors + semantic anchors). Even if the page CSS classes change or layout shifts, the skill remains stable without needing to be re-compiled.
  • Smart Value Retrieval: When the objective involves data extraction ("find the price"), Freu's compiler automatically identifies the value-bearing element and binds it as a command output.

📄 Inside a Skill (The DSL)

Freu compiles workflows into clean, agent-readable JSON that serves as "structured muscle memory."

{
  "name": "StarRepository",
  "description": "Open a GitHub repository by URL and star it.",
  "steps": [
    {
      "action": "navigate_web",
      "target": "{{repository_url}}"
    },
    {
      "action": "click_element",
      "semantic_anchor": "Star button",
      "constellation": {
        // Pruned DOM context ensures the skill self-heals
      }
    }
  ]
}

📦 Install

pip install .

🧩 Chrome extension

freu-cli talks to the browser through the Freu AI Browser Automater Chrome extension. See here.

🤖 LLM provider

freu-cli learn picks its LLM from LLM_MODEL (default gpt-5.1) and routes the call through LiteLLM, so any of these providers work — just export the matching API key:

Provider Example LLM_MODEL Required env
OpenAI gpt-5.1 (default) OPENAI_API_KEY
Anthropic claude-sonnet-4-5 ANTHROPIC_API_KEY
Google gemini/gemini-2.5-pro GEMINI_API_KEY
xAI xai/grok-4 XAI_API_KEY
MiniMax minimax/MiniMax-M2 MINIMAX_API_KEY

Any other provider LiteLLM supports works too — consult the LiteLLM providers list for the model-prefix and env-var names. If the required key is missing, freu-cli learn errors out before capture starts so you never record a session to find out afterwards.


🚀 Quickstart

1. 🎓 Learn a skill

# OpenAI (default) — LLM_MODEL is optional
export OPENAI_API_KEY=sk-...

# Or, pick another provider:
# export LLM_MODEL=claude-sonnet-4-5
# export ANTHROPIC_API_KEY=...

freu-cli learn ./github-skill --objective "Star a GitHub repository by URL"

Interact with the browser — click, type, navigate. When you're done, hit Ctrl-C. freu-cli then narrates the learn pipeline as it runs:

Captured /path/to/log_1745553600/events.json
Learning automation. This may take a minute...
Loaded 4 raw event(s) from events.json.

Stage 1/4 — Normalize: distill raw DOM events into semantic actions.
  → 2 action(s):
     1. navigate_web 'repository page' — open the repository URL
     2. click_element 'Star' — click the Star button

Stage 2/4 — Resolve: prune captured DOM graphs into stable constellations.
  [1/1] click_element 'Star' → <button> 'Star'
  → resolved 1/1 target-bearing event(s) into constellations.

Stage 3/4 — Identify: detect retrieval objectives and locate value-bearing elements.
  → not a retrieval objective; no outputs declared.

Stage 4/4 — Synthesize: turn resolved actions into a reusable skill.
  → 'GitHub': 1 command(s), 2 step(s) total
    • StarRepository (2 step(s)) — Open a GitHub repository by URL and star it.

Validated. Writing skill files...

--objective is optional but strongly recommended; it shapes how the LLM splits the recording into named commands.

When learning finishes, the skill folder looks like this:

./github-skill/
├── SKILL.md
├── StarRepository.json             # one JSON per command; the LLM decides the split
└── log_1745553600/
    ├── events.json           # raw DOM events captured from the extension
    ├── normalized.json       # stage 1 output
    ├── resolved.json         # stage 2 output (pruned constellations)
    ├── identified.json       # stage 3 output (retrieval plan, if any)
    └── synthesized.json      # stage 4 output (skill with constellations bound into DSL)

Instead of compressing each click into a brittle CSS selector, freu-cli captures a constellation — the clicked element plus its ancestors, nearby neighbors, children, and a tag-specific semantic anchor (label for inputs, <select> around options, list around items, table around rows/cells). The resolve stage prunes auto-generated classes / ids / attrs, and at run time a page-context scorer picks the best live match for each constellation. Pages can reshuffle, rename classes, or rotate runtime hashes — skills keep working.

Capturing return values. When the objective is phrased as retrieving information ("find …", "get …", "look up …", "check the price of …"), freu-cli learn runs an extra identify stage that inspects the final DOM snapshot and locates the value-bearing element on the page. That target is compiled into a browser_get_element_text (or browser_get_element_attribute) step plus a declared command output. You don't need to do anything special during the recording — no keyboard shortcut, no copy. Just navigate to the page where the value is visible and stop the capture.

Running freu-cli learn again on the same folder ADDS commands to the existing skill — each synthesized command is either appended or replaced in place.

See docs/skill-format.md for the full schema and the list of supported DSL methods.

2. ▶️ Run the skill

Any of these forms work — pick whichever fits your invocation style:

# By skill folder + command name
freu-cli run ./github-skill StarRepository --repository-url https://github.com/freu-ai/freu-cli

# By SKILL.md path + command name
freu-cli run ./github-skill/SKILL.md StarRepository --repository-url https://github.com/freu-ai/freu-cli

# By direct <Command>.json path
freu-cli run ./github-skill/StarRepository.json --repository-url https://github.com/freu-ai/freu-cli

The runtime narrates each step in domain terms (the description the synthesizer attached to the step) with the underlying browser call in parentheses:

Step 1: Open the GitHub repository page. (Opening https://github.com/freu-ai/freu-cli)
Step 2: Click the Star button on the repository page. (Clicking <button> 'Star')

OK

When a step fails, the runtime prints an agent-friendly recovery block listing what worked and what was being attempted, instead of a stack trace:

FAILED.

Completed steps:
  1. Open the GitHub repository page.

Pending step:
  Click the Star button on the repository page.

Reason: element not found: button[data-action=star]

The same shape is available programmatically on the result dict (completed_steps, failed_step, error) for callers wrapping freu-cli run from code.

🧪 Running the tests

pip install -e .[dev]
pytest

🔌 Agent integrations

Once you've learned a skill, drop it into your agent's skills directory and it becomes available as a reusable command. Any agent that discovers SKILL.md files from a convention directory will pick freu skills up automatically.

Agent Skills directory Example
OpenClaw ~/.openclaw/skills cp -R ./github-skill ~/.openclaw/skills/
Claude Code ~/.claude/skills cp -R ./github-skill ~/.claude/skills/
Codex CLI ~/.codex/skills cp -R ./github-skill ~/.codex/skills/
Cursor ~/.cursor/skills cp -R ./github-skill ~/.cursor/skills/
Hermes ~/.hermes/skills cp -R ./github-skill ~/.hermes/skills/

📜 License

GNU Affero General Public License. See LICENSE.