code

Aetherlang Claude Code

Verified

by contrario

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. ``` POST https://api.neurodoc.app/aetherlang/execute Content-Type: application/json ``` No API key required for free tier (100 req/hour). 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, credenti

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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 Type | Use For | Key V3 Features |

|-------------|---------|-----------------|

| chef | Recipes, food consulting | 17 sections: food cost, HACCP, thermal curves, wine pairing, plating blueprint, zero waste |

| molecular | Molecular gastronomy | Rheology dashboard, phase diagrams, hydrocolloid specs, FMEA failure analysis |

| apex | Business strategy | Game theory, Monte Carlo (10K sims), behavioral economics, unit economics, Blue Ocean |

| consulting | Strategic consulting | Causal loops, theory of constraints, Wardley maps, ADKAR change management |

| marketing | Market research | TAM/SAM/SOM, Porter's 5 Forces, pricing elasticity, viral coefficient |

| lab | Scientific research | Evidence grading (A-D), contradiction detector, reproducibility score |

| oracle | Forecasting | Bayesian updating, black swan scanner, adversarial red team, Kelly criterion |

| assembly | Multi-agent debate | 12 neurons voting (8/12 supermajority), Gandalf VETO, devil's advocate |

| analyst | Data analysis | Auto-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

| Tier | Limit | Auth |

|------|-------|------|

| Free | 100 req/hour | None required |

| Pro | 500 req/hour | X-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