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python-repl

The python-repl skill automates interactive Python environments with bundled utility functions for data analysis, debugging, and performance profiling. Use it when developing Python code in gptme workflows that require quick data inspection, object introspection, performance timing, or common scientific computing imports like pandas and numpy.

Install in Claude Code
Copy
git clone --depth 1 https://github.com/gptme/gptme /tmp/python-repl && cp -r /tmp/python-repl/gptme/lessons/skills/python-repl ~/.claude/skills/python-repl
Then start a new Claude Code session; the skill loads automatically.

SKILL.md

# Python REPL Skill

Enhances Python REPL workflows with bundled utility functions for data analysis, debugging, and performance profiling.

## Overview

This skill bundles Python REPL helpers, common imports, and execution patterns for efficient Python development in gptme.

## Bundled Scripts

### Helper Functions (python_helpers.py)

This skill includes bundled utility functions for common Python tasks:
- Data inspection (inspect_df, describe_object)
- Quick plotting (quick_plot)
- Performance profiling (time_function)
- Common imports setup (setup_common_imports)

## Usage Patterns

### Data Analysis
When working with data, automatically import common libraries and set up display options:

```python
import numpy as np
import pandas as pd
pd.set_option('display.max_rows', 100)
```

### Debugging
Use bundled helpers for debugging:

```python
from python_helpers import inspect_df, describe_object
inspect_df(df)  # Quick dataframe overview
describe_object(obj)  # Object introspection
```

## Dependencies

Required packages are listed in `requirements.txt`:
- ipython: Interactive Python shell
- numpy: Numerical computing
- pandas: Data manipulation

## Best Practices

1. **Use helpers**: Leverage bundled helper functions instead of reimplementing
2. **Import once**: Common imports are handled by pre-execute hook
3. **Profile performance**: Use time_function for performance-sensitive code

## Examples

### Quick Data Analysis
```python
# Helpers auto-import pandas, numpy
df = pd.read_csv('data.csv')
inspect_df(df)  # Show overview
```

### Performance Profiling
```python
from python_helpers import time_function

@time_function
def slow_operation():
    # Your code here
    pass
```

## Related

- Tool: ipython