license: mit
modalities:
- Text
formats:
- parquet
size: 10M - 100M
libraries:
- Datasets
- Dask
- Croissant
- Polars
π GitHub Code 2025: The Clean Code Manifesto
A meticulously curated dataset of 1.5M+ repositories representing both quality and innovation in 2025's code ecosystem
π The Philosophy
Quality Over Quantity, Purpose Over Volume
In an era of data abundance, we present a dataset built on radical curation. Every file, every repository, every byte has been carefully selected to represent the signal in the noise of open-source development.
π― What This Dataset Is
π Dual-Perspective Design
| Subset | ποΈ Above 2 Stars | π± Below 2 Stars (2025) |
|---|---|---|
| Scope | 1M top repositories | 1M random 2025 repos |
| Purpose | Proven quality & patterns | Emerging trends & innovation |
| Value | What works | What's next |
π§Ή The Clean Code Promise
# What you WON'T find here:
π« Binary files # No images, executables, models
π« Build artifacts # No node_modules, __pycache__
π« Configuration noise # No .git, IDE files, lock files
π« License duplication # No repetitive legal text
π« Minified code # No compressed/obfuscated content
π« Empty files # No whitespace-only content
π Dataset Structure
github-code-2025/
βββ π above-2-stars/
β βββ train_000.parquet
β βββ train_001.parquet
β βββ ...
βββ π± below-2-star/
βββ train_000.parquet
βββ train_001.parquet
βββ ...
π Schema
{
"repo_id": "owner/repo_name", # π Repository identifier
"file_path": "src/main.py", # ποΈ Relative file path
"content": "def clean_code():", # π Actual source code
"size": 1024 # π File size in bytes
}
π οΈ How to Use
π₯ Quick Start
from datasets import load_dataset
# Load the quality benchmark
quality_ds = load_dataset("nick007x/github-code-2025", "above-2-stars")
# Load emerging trends
emerging_ds = load_dataset("nick007x/github-code-2025", "below-2-star")
# Mix for balanced training
balanced_ds = interleave_datasets([quality_ds, emerging_ds])
π― Ideal Use Cases
- π§ AI Training: Clean, diverse code for language models
- π Code Analysis: Compare popular vs emerging patterns
- π Trend Research: 2025 development practices
- π Education: High-quality examples for learning
- π οΈ Tool Development: Benchmarking code quality tools
ποΈ Creation Methodology
π¨ Selection Strategy
| Phase | Action | Purpose |
|---|---|---|
| 1 | π― Dual population sampling | Balance quality & innovation |
| 2 | π§Ή Multi-layer filtering | Remove noise & binaries |
| 3 | π Size normalization | Focus on meaningful content |
| 4 | π Content validation | Ensure text quality |
| 5 | π·οΈ Metadata preservation | Maintain context |
π« What We Filtered Out
File Types Removed:
- 50+ binary extensions (images, models, executables)
- 30+ build/system directories
- 15+ configuration file types
- All files outside 1KB-5MB range
Quality Checks:
- β UTF-8 text validation
- β Non-empty content check
- β Binary detection
- β Repository structure preservation
πͺ Why This Dataset Matters
π« The Quality Revolution
We reject the "more data is better" dogma. Instead, we offer:
- π― Intentional Curation: Every file serves a purpose
- βοΈ Balanced Perspective: Popular + Emerging = Complete picture
- π§Ή Unprecedented Cleanliness: The cleanest code dataset available
- π Temporal Intelligence: 2025-focused for relevance
π€ Contributing & Feedback
This dataset is a living project. We welcome:
- π Bug reports and issues
- π‘ Feature requests for future versions
- π Validation of data quality
- π― Suggestions for improvement
π License
This dataset is provided under the MIT License - see the LICENSE file for details.
Important: Repository contents maintain their original licenses. Please respect individual project licenses when using this data.
π Acknowledgments
Built with gratitude for the entire open-source community. Every file in this dataset represents hours of dedication from developers worldwide.
β If this dataset helps your research or project, please consider starring the repository!
"In the pursuit of AI that understands code, we must first understand what code is worth learning."