Add your description here
Project description
refinire-rag
The refined RAG framework that makes enterprise-grade document processing effortless.
🌟 Why refinire-rag?
Traditional RAG frameworks are powerful but complex. refinire-rag refines the development experience with radical simplicity and enterprise-grade productivity.
→ Why refinire-rag? The Complete Story | → なぜrefinire-rag?完全版
⚡ 10x Simpler Development
# LangChain: 50+ lines of complex setup
# refinire-rag: 5 lines to production-ready RAG
manager = CorpusManager.create_simple_rag(doc_store, vector_store)
results = manager.process_corpus(["documents/"])
answer = query_engine.answer("How does this work?")
🏢 Enterprise-Ready Features Built-In
- Incremental Processing: Handle 10,000+ documents efficiently
- Japanese Optimization: Built-in linguistic processing
- Access Control: Department-level data isolation
- Production Monitoring: Comprehensive observability
- Unified Architecture: One pattern for everything
Overview
refinire-rag provides RAG (Retrieval-Augmented Generation) functionality as a sub-package of the Refinire library. The library follows a unified DocumentProcessor architecture with dependency injection for maximum flexibility and enterprise-grade capabilities.
Architecture
Application Classes (Refinire Steps)
- CorpusManager: Document loading, normalization, chunking, embedding generation, and storage
- QueryEngine: Document retrieval, re-ranking, and answer generation (inherits from Refinire Step)
- QualityLab: Evaluation data creation, automatic RAG evaluation, conflict detection, and report generation
DocumentProcessor Unified Architecture
All document processing components inherit from a single base class with consistent interface:
Document Processing Pipeline
- UniversalLoader: Multi-format document loading with parallel processing
- Normalizer: Dictionary-based term normalization and linguistic optimization
- Chunker: Intelligent document chunking for optimal embedding
- DictionaryMaker: Term and abbreviation extraction with LLM integration
- GraphBuilder: Knowledge graph construction and relationship extraction
- VectorStore: Integrated embedding generation, vector storage, and retrieval (DocumentProcessor + Indexer + Retriever)
Quality & Evaluation
- TestSuite: Comprehensive evaluation pipeline execution
- Evaluator: Multi-metric aggregation and analysis
- ContradictionDetector: Automated conflict detection with NLI
- InsightReporter: Intelligent threshold-based reporting
Query Processing Components
- Retriever: Semantic and hybrid document search
- Reranker: Context-aware result re-ranking
- Reader: LLM-powered answer generation
Architecture Highlights
DocumentProcessor Unified Architecture
All document processing components inherit from a single base class with consistent process(document) -> List[Document] interface:
# Every processor follows the same pattern (統合アーキテクチャ)
normalizer = Normalizer(config)
chunker = Chunker(config)
vector_store = InMemoryVectorStore() # VectorStore直接使用
vector_store.set_embedder(embedder) # 埋め込み設定
# Chain them together - VectorStoreを直接パイプラインで使用
pipeline = DocumentPipeline([normalizer, chunker, vector_store])
results = pipeline.process_document(document)
Incremental Processing
Efficient handling of large document collections with automatic change detection:
# Only process new/changed files
incremental_loader = IncrementalLoader(document_store, cache_file=".cache.json")
results = incremental_loader.process_incremental(["documents/"])
# Skips unchanged files, processes only what's needed
Enterprise-Ready Features
- Multi-format document loading with parallel processing (detailed guide)
- Japanese text optimization with linguistic normalization
- Department-level data isolation patterns
- Comprehensive monitoring and error handling
- Production deployment ready configurations
🚀 Quick Start
Installation
pip install refinire-rag
30-Second RAG System
from refinire_rag import create_simple_rag
# One-liner enterprise RAG
rag = create_simple_rag("your_documents/")
answer = rag.query("How does this work?")
print(answer)
Production-Ready Setup
from refinire_rag.application import CorpusManager, QueryEngine
from refinire_rag.storage import SQLiteDocumentStore, InMemoryVectorStore
# Configure storage
doc_store = SQLiteDocumentStore("corpus.db")
vector_store = InMemoryVectorStore()
# Build corpus with incremental processing
manager = CorpusManager.create_simple_rag(doc_store, vector_store)
results = manager.process_corpus(["documents/"])
# Query with confidence
query_engine = QueryEngine(retriever, reranker, reader)
result = query_engine.answer("What is our company policy on remote work?")
Enterprise Features
# Incremental updates (90%+ time savings on large corpora)
incremental_loader = IncrementalLoader(document_store, cache_file=".cache.json")
results = incremental_loader.process_incremental(["documents/"])
# Department-level data isolation (Tutorial 5 pattern)
hr_rag = CorpusManager.create_simple_rag(hr_doc_store, hr_vector_store)
sales_rag = CorpusManager.create_simple_rag(sales_doc_store, sales_vector_store)
# Production monitoring
stats = corpus_manager.get_corpus_stats()
🏆 Framework Comparison
| Feature | LangChain/LlamaIndex | refinire-rag | Advantage |
|---|---|---|---|
| Development Speed | Complex setup | 5-line setup | 90% faster |
| Enterprise Features | Custom development | Built-in | Ready out-of-box |
| Japanese Processing | Additional work | Optimized | Native support |
| Incremental Updates | Manual implementation | Automatic | 90% time savings |
| Code Consistency | Component-specific APIs | Unified interface | Easier maintenance |
| Team Productivity | Steep learning curve | Single pattern | Faster onboarding |
📚 Documentation
🎯 Tutorials
Learn how to build RAG systems step by step - from simple prototypes to enterprise deployment.
📖 API Reference
Detailed API documentation for each module.
🏗️ Architecture & Design
System design philosophy and implementation details.
- Architecture Overview
- Design Philosophy
- Loader Implementation - Detailed document loading guide
- Requirements
- Function Specifications
Key Features
Flexible Document Model
- Minimal required metadata (4 fields)
- Completely flexible additional metadata
- Database-friendly design for search and lineage tracking
Parallel Processing
- Concurrent document loading with ThreadPoolExecutor/ProcessPoolExecutor
- Async support for high-throughput scenarios
- Progress tracking and error recovery
Extension-Based Architecture
- Universal loader delegates to specialized loaders by file extension
- Easy registration of custom loaders
- Subpackage support for advanced processing (Docling, Unstructured, etc.)
Metadata Enrichment
- Path-based metadata generation with pattern matching
- Automatic file type detection and classification
- Custom metadata generators for domain-specific requirements
Error Handling
- Comprehensive exception hierarchy
- Configurable error handling (fail-fast or skip-errors)
- Detailed error reporting and logging
Development
Running Tests
# Run all tests
python -m pytest tests/
# Run specific test categories
python -m pytest tests/unit/ # Unit tests
python -m pytest tests/integration/ # Integration tests
# Run examples
python examples/simple_rag_test.py
Project Structure
refinire-rag/
├── src/refinire_rag/ # Main package
│ ├── models/ # Data models
│ ├── loaders/ # Document loading system
│ ├── processing/ # Document processing pipeline
│ ├── storage/ # Storage systems
│ ├── application/ # Use case classes
│ └── retrieval/ # Search and answer generation
├── docs/ # Architecture documentation
├── examples/ # Usage examples
└── tests/ # Test suite
├── unit/ # Unit tests
└── integration/ # Integration tests
Contributing
This project follows the architecture defined in the documentation. When implementing new features:
- Follow the DocumentProcessor interface patterns
- Maintain dependency injection for testability
- Add comprehensive error handling and logging
- Include usage examples and tests
- Update documentation for new features
📝 Documentation Languages
- 🇬🇧 English: Default file names (e.g.,
tutorial_01_basic_rag.md) - 🇯🇵 Japanese: File names with
_jasuffix (e.g.,tutorial_01_basic_rag_ja.md)
🔗 Related Links
- Refinire Library - Parent workflow framework
- GitHub Repository
- Issue Tracker
- Discussions
License
[License information to be added]
refinire-rag: Where enterprise RAG development becomes effortless.
Project details
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file refinire_rag-0.1.1.tar.gz.
File metadata
- Download URL: refinire_rag-0.1.1.tar.gz
- Upload date:
- Size: 268.9 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.1.0 CPython/3.11.12
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
93a7c31f0ff70b6dd9549ebdcc310629d991a271b4e719942616feb08acb5218
|
|
| MD5 |
61c30c7f8a5788ab4b172d7107e0e040
|
|
| BLAKE2b-256 |
e07f7a0656b8421fa030f8993b91cc1cfd4557139de5f6ec031e81d125e25524
|
File details
Details for the file refinire_rag-0.1.1-py3-none-any.whl.
File metadata
- Download URL: refinire_rag-0.1.1-py3-none-any.whl
- Upload date:
- Size: 262.4 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.1.0 CPython/3.11.12
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
4e09ee9d9d86b61bef3783c1d8b0e2189983c231b82633bfc1f7cca940140d4f
|
|
| MD5 |
a73b74dbfeee8551b44f2a2c6e9049d0
|
|
| BLAKE2b-256 |
db86389d4072dac5a5c39908f23dd53a5cbc51958dcafd874ef90d5ce626ac5a
|