gitflic / README.md
Ujjwal-Tyagi's picture
Update README.md
e7d4e84 verified
metadata
annotations_creators:
  - machine-generated
language_creators:
  - found
language:
  - code
  - ru
  - en
license: other
multilinguality:
  - multilingual
pretty_name: GitFlic Code Dataset
size_categories:
  - 1M<n<10M
source_datasets:
  - original
task_categories:
  - text-generation
tags:
  - code
  - russian
configs:
  - config_name: default
    data_files:
      - split: train
        path: data/*.parquet
    default: true
dataset_info:
  features:
    - name: file_text
      dtype: string
    - name: language
      dtype: string
    - name: file_name
      dtype: string

GitFlic Code Dataset

A comprehensive code dataset compiled from GitFlic, Russia's first native service for storing and working with source code. This dataset is specifically designed to support training code models with strong Russian language understanding and authentic Russian coding practices.


Overview

The GitFlic Code Dataset represents a significant code corpus from Russia's leading Git-based code hosting platform, capturing diverse projects across 690 programming languages. It serves as a valuable resource for developing multilingual code understanding models reflecting Russian development practices and standards.

Key Statistics

Metric Value
Total Files 5,975,978
Total Repositories 12,527
Compressed Size 6.44 GB (Parquet with Zstd)
Programming Languages 690
File Format 6 Parquet files

Dataset Characteristics

Scope and Coverage

This dataset captures code from over 12,500 repositories hosted on GitFlic, including:

  • Russian code community: Extensive coverage of code written by Russian developers and enterprises, featuring Russian comments, documentation, and variable naming conventions
  • Diverse language ecosystem: Support for 690 distinct programming languages
  • Developer and enterprise projects: A comprehensive mix of individual developer projects and enterprise-grade codebases
  • Quality-assured: Deduplicated and filtered to remove binary files and non-code content

Programming Languages

The dataset encompasses 690 languages. The 30 most represented languages by file count are:

Rank Language File Count
1 C 739,012
2 Java 634,899
3 C++ 587,528
4 JavaScript 422,832
5 PHP 365,105
6 XML 291,920
7 Markdown 211,574
8 Shell 207,178
9 Python 206,443
10 Unity3D Asset 150,654
11 SVG 150,136
12 TypeScript 141,886
13 Text 139,406
14 JSON 126,214
15 HTML 122,341
16 Go 109,740
17 YAML 89,416
18 Roff 82,609
19 C# 77,520
20 Makefile 63,594
21 LLVM 55,680
22 Scala 53,395
23 Unix Assembly 49,909
24 Rust 35,553
25 reStructuredText 35,023
26 Objective-C 34,151
27 Ruby 33,366
28 CMake 33,030
29 CSS 31,664
30 TSX 31,397

Dataset Structure

Data Fields

Each record contains three fields providing content and metadata:

Field Type Description
file_text string Complete file content in UTF-8 encoding
language string Programming language identified using github-linguist
file_name string Unique file identifier within the dataset

Sample Record

{
    "file_text": "package com.example.demo;\n\nimport org.springframework.boot.SpringApplication;\n...",
    "language": "Java",
    "file_name": "Application.java"
}

File Format

  • Format: Apache Parquet with Zstd compression
  • Structure: 6 consolidated files (gitflic-00000.parquet to gitflic-00005.parquet)
  • Encoding: UTF-8
  • Split: All examples are included in a single training split (no validation or test splits)

Data Creation Process

Language Detection Methodology

Programming languages are identified using github-linguist, GitHub's robust library for language detection. This ensures consistent and reliable classification across all files in the dataset.

Source Data

All data originates from public repositories hosted on GitFlic, Russia's native code hosting platform.

Quality Filtering

The dataset has undergone systematic filtering to ensure quality and usability:

Deduplication

  • Files have been deduplicated to ensure each code file appears only once in the dataset

Binary File Removal

  • Binary files have been systematically excluded from the dataset
  • Only text-based source code files are retained

Content Quality

  • Files filtered to ensure data quality and remove non-code content
  • UTF-8 encoding validation applied to all text files

Usage Considerations

Data Privacy and Security

The dataset may contain sensitive information that requires careful handling:

  • Email Addresses: Present in code comments, documentation, or configuration files
  • Credentials: Accidentally committed API keys or authentication tokens
  • Personal Information: Names, phone numbers, and other identifiable data in comments or documentation

Users should implement appropriate filtering and anonymization when preparing data for model training.

Licensing and Attribution

This dataset aggregates source code from repositories with diverse licenses. Any use of code or data derived from this dataset must comply with the original repository licenses, including attribution requirements where applicable.

Users are responsible for:

  • Reviewing applicable license terms for code they utilize
  • Providing proper attribution when required
  • Ensuring compliance with license restrictions
  • Respecting the rights of original authors and using the data responsibly

Technical Details

Source: Public repositories hosted on GitFlic

Annotations: Machine-generated (language detection)

Multilingual Support: Includes multilingual code and documentation with emphasis on Russian content

Task Categories: Text generation, code modeling, language understanding

Tags: Code, Russian language, multilingual, open-source development