Code Refactor For Reproducibility
/install code-refactor-for-reproducibility
Research Code Reproducibility Refactoring Tool
Workflow Overview
Follow this sequence when refactoring a research codebase:
- Analyze — identify reproducibility issues in existing code
- Refactor — apply documentation, parameterization, and error handling
- Specify environment — pin dependencies and create environment files
- Validate — run tests and verify behaviour is unchanged
Step 1: Analyze Code for Reproducibility Issues
Read each source file and check for the following problems. Document findings before making any changes.
Checklist: missing docstrings · hardcoded absolute paths · missing random seeds · bare except: clauses · unpinned imports · unexplained magic numbers
Example — detecting issues manually:
import ast, pathlib
def find_hardcoded_paths(source: str) -> list[str]:
"""Return string literals that look like absolute paths."""
tree = ast.parse(source)
return [
node.s for node in ast.walk(tree)
if isinstance(node, ast.Constant)
and isinstance(node.s, str)
and node.s.startswith("/")
]
source = pathlib.Path("analysis.py").read_text()
print(find_hardcoded_paths(source))
Step 2: Refactor for Best Practices
Apply improvements in place. Always back up originals first.
2a. Add docstrings
# Before
def load_data(path):
import pandas as pd
return pd.read_csv(path)
# After
def load_data(path: str) -> "pd.DataFrame":
"""Load a CSV dataset from disk.
Parameters
----------
path : str
Path to the CSV file (relative to project root).
Returns
-------
pd.DataFrame
Raw dataset with original column names preserved.
"""
import pandas as pd
return pd.read_csv(path)
2b. Parameterize hardcoded values
from pathlib import Path
import argparse
def parse_args():
parser = argparse.ArgumentParser()
parser.add_argument("--data", type=Path, default=Path("data/raw.csv"))
parser.add_argument("--output", type=Path, default=Path("results/"))
return parser.parse_args()
args = parse_args()
df = pd.read_csv(args.data)
args.output.mkdir(parents=True, exist_ok=True)
2c. Set random seeds
import random
import numpy as np
SEED = 42 # document this constant at module level
random.seed(SEED)
np.random.seed(SEED)
# scikit-learn
from sklearn.ensemble import RandomForestClassifier
clf = RandomForestClassifier(random_state=SEED)
# PyTorch
import torch
torch.manual_seed(SEED)
torch.backends.cudnn.deterministic = True
2d. Add error handling and logging
import logging
from pathlib import Path
logging.basicConfig(level=logging.INFO, format="%(asctime)s [%(levelname)s] %(message)s")
logger = logging.getLogger(__name__)
def load_data(path: Path) -> "pd.DataFrame":
"""Load dataset with validation."""
import pandas as pd
if not path.exists():
raise FileNotFoundError(f"Data file not found: {path}")
logger.info("Loading data from %s", path)
df = pd.read_csv(path)
if df.empty:
raise ValueError(f"Loaded dataframe is empty: {path}")
logger.info("Loaded %d rows, %d columns", *df.shape)
return df
Step 3: Generate Environment Specifications
See references/environment-setup.md for full Dockerfile and Conda environment templates.
requirements.txt (pip)
pip install pipreqs
pipreqs src/ --output requirements.txt --force
Verify resolution:
python -m venv .venv_test && source .venv_test/bin/activate
pip install -r requirements.txt
python -c "import pandas, numpy, sklearn"
deactivate && rm -rf .venv_test
environment.yml (Conda)
name: my-research-env
channels:
- conda-forge
- defaults
dependencies:
- python=3.9
- numpy=1.24.3
- pandas=2.0.1
- scikit-learn=1.2.2
- matplotlib=3.7.1
- pip:
- some-pip-only-package==0.5.0
conda env create -f environment.yml
conda activate my-research-env
Step 4: Create Documentation
README structure
Generate a README.md containing at minimum:
## Requirements
\x3C!-- List Python version and key packages with versions -->
## Installation
```bash
conda env create -f environment.yml
conda activate my-research-env
Data
\x3C!-- Describe input data format, source, and where to place files -->
Running the Analysis
python main.py --data data/raw.csv --output results/
Expected Outputs
\x3C!-- Describe files created and how to interpret them -->
Reproducing Results
- Random seed: 42 (set in
config.py) - Hardware: results validated on CPU; GPU results may differ slightly
---
## Step 5: Validate Reproducibility
After all changes, verify that behaviour is unchanged:
```bash
# 1. Run the full pipeline and capture output checksums
python main.py --data data/raw.csv --output results/
md5sum results/*.csv > checksums_refactored.md5
diff checksums_original.md5 checksums_refactored.md5
# 2. Run unit tests
pytest tests/ -v --tb=short
# 3. Confirm determinism across two clean runs
python main.py --output results_run1/
python main.py --output results_run2/
diff -r results_run1/ results_run2/
Reproducibility verification checklist:
- Output checksums match pre-refactor baseline
- All tests pass
- Pipeline runs twice and produces identical outputs
-
requirements.txt/environment.ymlinstalls cleanly in a fresh environment - No absolute paths remain in source files
- Random seeds are set and documented
- All public functions have docstrings
- README contains complete reproduction instructions
Best Practices Summary
| Practice |
|---|
| Relative paths only |
| Pin dependency versions |
| Set random seeds |
| Docstrings on all public functions |
| Validate outputs against a baseline |
| Automate environment setup |
References
references/guide.md— Comprehensive user guidereferences/environment-setup.md— Dockerfile and full environment templatesreferences/examples/— Working code examplesreferences/api-docs/— Complete API documentation
Skill ID: 455 | Version: 1.0 | License: MIT
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install code-refactor-for-reproducibility - After installation, invoke the skill by name or use
/code-refactor-for-reproducibility - Provide required inputs per the skill's parameter spec and get structured output
What is Code Refactor For Reproducibility?
Use when refactoring research code for publication, adding documentation to existing analysis scripts, creating reproducible computational workflows, or prep... It is an AI Agent Skill for Claude Code / OpenClaw, with 275 downloads so far.
How do I install Code Refactor For Reproducibility?
Run "/install code-refactor-for-reproducibility" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Code Refactor For Reproducibility free?
Yes, Code Refactor For Reproducibility is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Code Refactor For Reproducibility support?
Code Refactor For Reproducibility is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Code Refactor For Reproducibility?
It is built and maintained by ewankeynes (@ewankeynes); the current version is v0.1.0.