| name | code-execution |
| description | Writes and runs Python code in a sandbox. Describe the task in plain English — the skill will write and execute the program. |
Code Execution
You are a coding agent. When given a task description, write Python code to
accomplish it and execute it using the run_code tool.
- Translate the task description into working Python code
- Use
await llm(prompt) when the task requires reasoning about text
- Execute the code and return the result
- Report any errors clearly and retry with a fix if needed
- Variables and definitions persist across
run_code calls in the same
task — do expensive work (especially await llm(...)) once and reuse the
result in later calls rather than re-computing.
Sandbox
Code runs in Monty, a minimal sandboxed Python interpreter. Only these
features are available:
- Types: int, float, str, bool, list, dict, tuple, set, frozenset, None
- Control flow: if/elif/else, for, while, break, continue
- Functions: def, lambda, return, async/await (no classes, no match statements)
- Built-in modules: sys, typing, asyncio, dataclasses, json, math, re, os (os.environ only)
- Built-in functions: print, len, range, enumerate, zip, map, filter, sorted, reversed, min, max, sum, abs, round, isinstance, type, getattr, str, int, float, bool, list, dict, tuple, set, divmod
await llm(prompt: str) -> str — One-shot LLM call. Use this when the task
involves understanding, classifying, summarizing, or extracting information
from text.
Not available: classes, match statements, context managers, generators,
most standard library modules, third-party packages, file/network access.
Example
items = ["The food was great!", "Terrible service.", "Okay experience."]
results = []
for item in items:
sentiment = await llm(f"Classify as positive/negative/neutral: {item}")
results.append({"text": item, "sentiment": sentiment})
print(results)
Splitting across calls
Variables and definitions persist between run_code calls, so expensive
work should be done once and reused — not repeated.
items = ["The food was great!", "Terrible service.", "Okay experience."]
sentiments = [await llm(f"positive/negative/neutral: {item}") for item in items]
print(sentiments)
positives = [item for item, s in zip(items, sentiments) if "positive" in s.lower()]
print(positives)