| name | shinka-setup |
| description | Create ShinkaEvolve task scaffolds from a target directory and task description, producing `evaluate.py` and `initial.<ext>` (multi-language). Use when asked to set up new ShinkaEvolve tasks, evaluation harnesses, or baseline programs for ShinkaEvolve. |
Shinka Task Setup Skill
Create a setup scaffold consisting of an evaluation script and initial solution for an optimization problem given a user's task description. Both ingredients will be used within ShinkaEvolve, a framework combining LLMs with evolutionary algorithms to drive code optimization.
When to Use
Invoke this skill when the user:
- Wants to optimize code with LLM-driven code evolution (Shinka/ShinkaEvolve)
- No
evaluate.py and initial.<ext> exist in the working directory
User Inputs
- Task description + success criteria
- Target language for
initial.<ext> (if omitted, default to Python)
- What parts of the script to optimize
- Evaluation metric(s) and score direction
- Number of eval runs / seeds
- Required assets or data files
- Dependencies or constraints (runtime, memory)
Workflow
- Check if all user inputs are provided and ask the user follow-up questions if not inferrable.
- Inspect working directory. Detect chosen language + extension. Avoid overwriting existing
evaluate.py or initial.<ext> without consent.
- Write
initial.<ext> with a clear evolve region (EVOLVE-BLOCK markers or language-equivalent comments) and stable I/O contract.
- Write
evaluate.py:
- Python
initial.py: call run_shinka_eval with experiment_fn_name, get_experiment_kwargs, aggregate_metrics_fn, num_runs, and optional validate_fn.
- Non-Python
initial.<ext>: run candidate program directly (usually via subprocess) and write metrics.json + correct.json.
- Ensure candidate output schema matches evaluator expectations (tuple/dict for Python module eval, or file/CLI contract for non-Python).
- Validate draft
evaluate.py before handoff:
- Run a smoke test:
python evaluate.py --program_path initial.<ext> --results_dir /tmp/shinka_eval_smoke
- Confirm evaluator runs without exceptions.
- Confirm a metrics
dict is produced (either from aggregate_fn or metrics.json) with at least:
combined_score (numeric),
public (dict),
private (dict),
extra_data (dict),
text_feedback (string, can be empty).
- Confirm
correct.json exists with correct (bool) and error (string) fields.
- Ask the user if they want to run the evolution themself or whether to use the
shinka-run skill:
- If the user wants to run evolution manually, add
run_evo.py plus a shinka.yaml config with matching language + init_program_path.
- Ask the user if they want to use the
shinka-run skill to perform optimization with the agent.
What is ShinkaEvolve?
A framework developed by SakanaAI that combines LLMs with evolutionary algorithms to propose program mutations, that are then evaluated and archived. The goal is to optimize for performance and discover novel scientific insights.
Repo and documentation: https://github.com/SakanaAI/ShinkaEvolve
Paper: https://arxiv.org/abs/2212.04180
Evolution Flow
- Select parent(s) from archive/population
- LLM proposes patch (diff, full rewrite, or crossover)
- Evaluate candidate →
combined_score
- If valid, insert into island archive (higher score = better)
- Periodically migrate top solutions between islands
- Repeat for N generations
Core Files To Generate
| File | Purpose |
|---|
initial.<ext> | Starting solution in the chosen language with an evolve region that LLMs mutate |
evaluate.py | Scores candidates and emits metrics/correctness outputs that guide selection |
run_evo.py | (Optional) Launches the evolution loop |
shinka.yaml | (Optional) Config: generations, islands, LLM models, patch types, etc. |
Quick Install (if Shinka is not set up yet)
Install once before creating/running tasks:
python -c "import shinka"
pip install shinka-evolve
uv pip install shinka-evolve
Language Support (initial.<ext>)
Shinka supports multiple candidate-program languages. Choose one, then keep extension/config/evaluator aligned.
evo_config.language | initial.<ext> |
|---|
python | initial.py |
julia | initial.jl |
fortran | initial.f90 |
cpp | initial.cpp |
cuda | initial.cu |
rust | initial.rs |
swift | initial.swift |
json / json5 | initial.json |
Rules:
evaluate.py stays the evaluator entrypoint.
- Python candidates: prefer
run_shinka_eval + experiment_fn_name.
- Non-Python candidates: evaluate via
subprocess and write metrics.json + correct.json.
- Always set both
evo_config.language and matching evo_config.init_program_path.
Template: initial.<ext> (Python example)
import random
def advanced_algo():
return 0.0, ""
def solve_problem(params):
return advanced_algo()
def run_experiment(random_seed: int | None = None, **kwargs):
"""Main entrypoint called by evaluator."""
if random_seed is not None:
random.seed(random_seed)
score, text = solve_problem(kwargs)
return float(score), text
For non-Python initial.<ext>, keep the same idea: small evolve region + deterministic program interface consumed by evaluate.py.
Template: evaluate.py (Python run_shinka_eval path)
import argparse
import numpy as np
from shinka.core import run_shinka_eval
def get_kwargs(run_idx: int) -> dict:
return {"random_seed": int(np.random.randint(0, 1_000_000_000))}
def aggregate_fn(results: list) -> dict:
scores = [r[0] for r in results]
texts = [r[1] for r in results if len(r) > 1]
combined_score = float(np.mean(scores))
text = texts[0] if texts else ""
return {
"combined_score": combined_score,
"public": {},
"private": {},
"extra_data": {},
"text_feedback": text,
}
def validate_fn(result):
return True, None
def main(program_path: str, results_dir: str):
metrics, correct, err = run_shinka_eval(
program_path=program_path,
results_dir=results_dir,
experiment_fn_name="run_experiment",
num_runs=3,
get_experiment_kwargs=get_kwargs,
aggregate_metrics_fn=aggregate_fn,
validate_fn=validate_fn,
)
if not correct:
raise RuntimeError(err or "Evaluation failed")
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument("--program_path", required=True)
parser.add_argument("--results_dir", required=True)
args = parser.parse_args()
main(program_path=args.program_path, results_dir=args.results_dir)
Template: evaluate.py (non-Python initial.<ext> path)
import argparse
import json
import os
from pathlib import Path
def main(program_path: str, results_dir: str):
os.makedirs(results_dir, exist_ok=True)
metrics = {
"combined_score": 0.0,
"public": {},
"private": {},
"extra_data": {},
"text_feedback": "",
}
correct = False
error = ""
(Path(results_dir) / "metrics.json").write_text(
json.dumps(metrics, indent=2), encoding="utf-8"
)
(Path(results_dir) / "correct.json").write_text(
json.dumps({"correct": correct, "error": error}, indent=2), encoding="utf-8"
)
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument("--program_path", required=True)
parser.add_argument("--results_dir", required=True)
args = parser.parse_args()
main(program_path=args.program_path, results_dir=args.results_dir)
(Optional) Template: run_evo.py (async)
See skills/shinka-setup/scripts/run_evo.py for an example to edit.
(Optional) Template: shinka.yaml
See skills/shinka-setup/scripts/shinka.yaml for an example to edit.
Notes
- Keep evolve markers tight; only code inside the region should evolve.
- Keep evaluator schema stable (
combined_score, public, private, extra_data, text_feedback).
- Python module path: ensure
experiment_fn_name matches function name in initial.py.
- Non-Python path: ensure evaluator/runtime contract matches
initial.<ext> CLI/I/O.
- Higher
combined_score values indicate better performance.