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LangChain integration for HyperspaceDB - Hyperbolic Vector Database with Edge-Cloud Federation

Project description

LangChain HyperspaceDB Integration

PyPI version License

Official LangChain integration for HyperspaceDB - a hyperbolic vector database with Edge-Cloud Federation.

Features

  • 🌐 Hyperbolic Geometry: Poincaré ball model for hierarchical embeddings
  • 🔄 Edge-Cloud Federation: Offline-first with automatic sync
  • 🌳 Merkle Tree Sync: Efficient data replication and verification
  • 🗜️ 1-bit Quantization: 64x memory reduction with minimal accuracy loss
  • 🔍 Built-in Deduplication: Content-based hashing prevents duplicates
  • High Performance: Written in Rust for maximum speed

Installation

pip install langchain-hyperspace

Quick Start

Basic Usage

from langchain_hyperspace import HyperspaceVectorStore
from langchain_openai import OpenAIEmbeddings
from langchain.text_splitter import CharacterTextSplitter
from langchain.document_loaders import TextLoader

# Initialize embeddings
embeddings = OpenAIEmbeddings()

# Create vector store
vectorstore = HyperspaceVectorStore(
    host="localhost",
    port=50051,
    collection_name="my_documents",
    embedding_function=embeddings,
    api_key="your_api_key"  # Optional
)

# Load and split documents
loader = TextLoader("path/to/document.txt")
documents = loader.load()
text_splitter = CharacterTextSplitter(chunk_size=1000, chunk_overlap=0)
docs = text_splitter.split_documents(documents)

# Add documents to vector store
vectorstore.add_documents(docs)

# Search for similar documents
query = "What is the main topic?"
results = vectorstore.similarity_search(query, k=4)

for doc in results:
    print(doc.page_content)

RAG (Retrieval-Augmented Generation) Example

from langchain_hyperspace import HyperspaceVectorStore
from langchain_openai import OpenAIEmbeddings, ChatOpenAI
from langchain.chains import RetrievalQA

# Setup
embeddings = OpenAIEmbeddings()
vectorstore = HyperspaceVectorStore(
    host="localhost",
    port=50051,
    collection_name="knowledge_base",
    embedding_function=embeddings
)

# Create RAG chain
llm = ChatOpenAI(model_name="gpt-4")
qa_chain = RetrievalQA.from_chain_type(
    llm=llm,
    chain_type="stuff",
    retriever=vectorstore.as_retriever(search_kwargs={"k": 3})
)

# Ask questions
response = qa_chain.run("What are the key features of HyperspaceDB?")
print(response)

Content Deduplication

HyperspaceDB automatically deduplicates content using SHA-256 hashing:

vectorstore = HyperspaceVectorStore(
    host="localhost",
    port=50051,
    collection_name="deduplicated_docs",
    embedding_function=embeddings,
    enable_deduplication=True  # Default
)

# Adding the same text twice will only store it once
vectorstore.add_texts([
    "This is a unique document",
    "This is a unique document",  # Duplicate - will be skipped
    "This is another document"
])

Sync Verification (Edge-Cloud Federation)

Check synchronization status using Merkle Tree digest:

# Get collection digest
digest = vectorstore.get_digest()

print(f"Logical Clock: {digest['logical_clock']}")
print(f"State Hash: {digest['state_hash']}")
print(f"Vector Count: {digest['count']}")
print(f"Bucket Hashes: {len(digest['buckets'])} buckets")

Configuration

Connection Options

vectorstore = HyperspaceVectorStore(
    host="localhost",          # Server host
    port=50051,                # gRPC port
    collection_name="default", # Collection name
    embedding_function=embeddings,
    api_key=None,              # Optional API key
    dimension=1536,            # Vector dimension (must match embeddings)
    metric="l2",               # Distance metric: 'l2', 'cosine', 'dot'
    enable_deduplication=True  # Enable content-based deduplication
)

Distance Metrics

  • l2: Euclidean distance (default)
  • cosine: Cosine similarity
  • dot: Dot product

Advanced Usage

Metadata Filtering

# Add documents with metadata
vectorstore.add_texts(
    texts=["Document 1", "Document 2"],
    metadatas=[
        {"source": "web", "category": "tech"},
        {"source": "pdf", "category": "science"}
    ]
)

# Search with metadata filter (coming soon)
results = vectorstore.similarity_search(
    "technology trends",
    k=5,
    filter={"category": "tech"}
)

Batch Operations

# Add large batches efficiently
texts = [f"Document {i}" for i in range(10000)]
metadatas = [{"index": i} for i in range(10000)]

vectorstore.add_texts(texts, metadatas=metadatas)

Running HyperspaceDB Server

Using Docker

docker run -p 50051:50051 -p 50050:50050 \
  -e HYPERSPACE_API_KEY=your_secret_key \
  hyperspacedb/hyperspace-server:latest

From Source

git clone https://github.com/yourusername/hyperspace-db
cd hyperspace-db
cargo build --release
HYPERSPACE_API_KEY=your_secret_key ./target/release/hyperspace-server

Development

Setup

git clone https://github.com/yourusername/hyperspace-db
cd hyperspace-db/integrations/langchain-python

# Install in development mode
pip install -e ".[dev]"

# Generate protobuf files
./generate_proto.sh

Running Tests

pytest tests/

Code Quality

# Format code
black src/ tests/

# Lint
ruff check src/ tests/

# Type check
mypy src/

Examples

See the examples/ directory for complete examples:

  • rag_chatbot.py: RAG chatbot with memory
  • document_qa.py: Document Q&A system
  • semantic_search.py: Semantic search engine
  • edge_sync.py: Edge-Cloud synchronization demo

Documentation

Performance

HyperspaceDB is optimized for:

  • Insert: 10K+ vectors/second
  • Search: <10ms p99 latency
  • Memory: 64x reduction with 1-bit quantization
  • Sync: Merkle Tree-based differential sync

Contributing

Contributions are welcome! Please see CONTRIBUTING.md for guidelines.

License

Apache License 2.0 - see LICENSE for details.

Support

Citation

If you use HyperspaceDB in your research, please cite:

@software{hyperspacedb2024,
  title = {HyperspaceDB: Hyperbolic Vector Database with Edge-Cloud Federation},
  author = {HyperspaceDB Team},
  year = {2024},
  url = {https://github.com/yourusername/hyperspace-db}
}

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