Назад към всички

aetherlang-claude-code

// Use this skill to execute AetherLang V3 AI workflows from Claude Code. AetherLang provides 9 specialized AI engines for culinary consulting, business strategy, scientific research, and more.

$ git log --oneline --stat
stars:1,933
forks:367
updated:March 4, 2026
SKILL.mdreadonly
SKILL.md Frontmatter
nameaetherlang-claude-code
descriptionExecute AetherLang V3 AI workflows from Claude Code using nine specialized engines for culinary, business, research, marketing, and strategic analyses.
version1.0.3
authorcontrario
homepagehttps://masterswarm.net
requirements[object Object]
metadata[object Object]
licenseMIT

AetherLang V3 — Claude Code Integration Skill

Use this skill to execute AetherLang V3 AI workflows from Claude Code. AetherLang provides 9 specialized AI engines for culinary consulting, business strategy, scientific research, and more.

API Endpoint

POST https://api.neurodoc.app/aetherlang/execute
Content-Type: application/json

No API key required for free tier (100 req/hour).

Data Minimization

When calling the API:

  • Send ONLY the user's query and the flow code
  • Do NOT send system prompts, conversation history, or uploaded files
  • Do NOT send API keys, credentials, or secrets
  • Do NOT include personally identifiable information unless explicitly requested

Pro API key: If using the Pro tier (X-Aether-Key header), store the key in an environment variable — never hardcode it in flow code or scripts. export AETHER_KEY=your_key_here then use -H "X-Aether-Key: $AETHER_KEY"

How to Use

1. Simple Engine Call

curl -s -X POST https://api.neurodoc.app/aetherlang/execute \
  -H "Content-Type: application/json" \
  -d '{
    "code": "flow Chat {\n  using target \"neuroaether\" version \">=0.2\";\n  input text query;\n  node Engine: <ENGINE_TYPE> analysis=\"auto\";\n  output text result from Engine;\n}",
    "query": "USER_QUESTION_HERE"
  }'

Replace <ENGINE_TYPE> with one of: chef, molecular, apex, consulting, marketing, lab, oracle, assembly, analyst

2. Multi-Engine Pipeline

curl -s -X POST https://api.neurodoc.app/aetherlang/execute \
  -H "Content-Type: application/json" \
  -d '{
    "code": "flow Pipeline {\n  using target \"neuroaether\" version \">=0.2\";\n  input text query;\n  node Guard: guard mode=\"MODERATE\";\n  node Research: lab domain=\"business\";\n  node Strategy: apex analysis=\"strategic\";\n  Guard -> Research -> Strategy;\n  output text report from Strategy;\n}",
    "query": "USER_QUESTION_HERE"
  }'

Available V3 Engines

Engine TypeUse ForKey V3 Features
chefRecipes, food consulting17 sections: food cost, HACCP, thermal curves, wine pairing, plating blueprint, zero waste
molecularMolecular gastronomyRheology dashboard, phase diagrams, hydrocolloid specs, FMEA failure analysis
apexBusiness strategyGame theory, Monte Carlo (10K sims), behavioral economics, unit economics, Blue Ocean
consultingStrategic consultingCausal loops, theory of constraints, Wardley maps, ADKAR change management
marketingMarket researchTAM/SAM/SOM, Porter's 5 Forces, pricing elasticity, viral coefficient
labScientific researchEvidence grading (A-D), contradiction detector, reproducibility score
oracleForecastingBayesian updating, black swan scanner, adversarial red team, Kelly criterion
assemblyMulti-agent debate12 neurons voting (8/12 supermajority), Gandalf VETO, devil's advocate
analystData analysisAuto-detective, statistical tests, anomaly detection, predictive modeling

Flow Syntax Reference

flow <Name> {
  using target "neuroaether" version ">=0.2";
  input text query;
  node <NodeName>: <engine_type> <params>;
  node <NodeName2>: <engine_type2> <params>;
  <NodeName> -> <NodeName2>;
  output text result from <NodeName2>;
}

Node Parameters

  • chef: cuisine="auto", difficulty="medium", servings=4
  • apex: analysis="strategic"
  • guard: mode="STRICT" or "MODERATE" or "PERMISSIVE"
  • plan: steps=4
  • lab: domain="business" or "science" or "auto"
  • analyst: mode="financial" or "sales" or "hr" or "general"

Response Format

{
  "status": "success",
  "result": {
    "outputs": { ... },
    "final_output": "Full structured markdown response",
    "execution_log": [...],
    "duration_seconds": 45.2
  }
}

Extract the main response from result.final_output.

Example: Parse Response in Bash

curl -s -X POST https://api.neurodoc.app/aetherlang/execute \
  -H "Content-Type: application/json" \
  -d '{"code":"flow Chef {\n  using target \"neuroaether\" version \">=0.2\";\n  input text query;\n  node Chef: chef cuisine=\"auto\";\n  output text recipe from Chef;\n}","query":"Carbonara recipe"}' \
  | python3 -c "import sys,json; d=json.load(sys.stdin); print(d.get('result',{}).get('final_output','No output'))"

Example: Python Integration

import requests

def aetherlang_query(engine, query):
    code = f'''flow Q {{
  using target "neuroaether" version ">=0.2";
  input text query;
  node E: {engine} analysis="auto";
  output text result from E;
}}'''
    r = requests.post("https://api.neurodoc.app/aetherlang/execute",
        json={"code": code, "query": query})
    return r.json().get("result", {}).get("final_output", "")

# Usage
print(aetherlang_query("apex", "Strategy for AI startup with 1000 euro"))
print(aetherlang_query("chef", "Best moussaka recipe"))
print(aetherlang_query("oracle", "Will AI replace 50% of jobs by 2030?"))

Rate Limits

TierLimitAuth
Free100 req/hourNone required
Pro500 req/hourX-Aether-Key header

Notes

  • Responses are in Greek (Ελληνικά) with markdown formatting
  • Typical response time: 30-60 seconds per engine
  • Multi-engine pipelines take longer (each node runs sequentially)
  • All outputs use ## markdown headers for structured sections