Skip to main content

Fast, embedded, and multi-modal DB based on SQLite for AI-powered applications.

Project description

beaver 🦫

A fast, single-file, multi-modal database for Python, built with the standard sqlite3 library.

beaver is the Backend for Embedded, All-in-one Vector, Entity, and Relationship storage. It's a simple, local, and embedded database designed to manage complex, modern data types without requiring a database server, built on top of SQLite.

Design Philosophy

beaver is built with a minimalistic philosophy for small, local use cases where a full-blown database server would be overkill.

  • Minimalistic & Zero-Dependency: Uses only Python's standard libraries (sqlite3) and numpy/scipy.
  • Synchronous & Thread-Safe: Designed for simplicity and safety in multi-threaded environments.
  • Built for Local Applications: Perfect for local AI tools, RAG prototypes, chatbots, and desktop utilities that need persistent, structured data without network overhead.
  • Fast by Default: It's built on SQLite, which is famously fast and reliable for local applications. The vector search is accelerated with an in-memory k-d tree.
  • Standard Relational Interface: While beaver provides high-level features, you can always use the same SQLite file for normal relational tasks with standard SQL.

Core Features

  • Synchronous Pub/Sub: A simple, thread-safe, Redis-like publish-subscribe system for real-time messaging.
  • Namespaced Key-Value Dictionaries: A Pythonic, dictionary-like interface for storing any JSON-serializable object within separate namespaces.
  • Pythonic List Management: A fluent, Redis-like interface for managing persistent, ordered lists.
  • Efficient Vector Storage & Search: Store vector embeddings and perform fast approximate nearest neighbor searches using an in-memory k-d tree.
  • Full-Text Search: Automatically index and search through document metadata using SQLite's powerful FTS5 engine.
  • Graph Traversal: Create relationships between documents and traverse the graph to find neighbors or perform multi-hop walks.
  • Single-File & Portable: All data is stored in a single SQLite file, making it incredibly easy to move, back up, or embed in your application.

Installation

pip install beaver-db

Quickstart & API Guide

Initialization

All you need to do is import and instantiate the BeaverDB class with a file path.

from beaver import BeaverDB, Document

db = BeaverDB("my_application.db")

Namespaced Dictionaries

Use db.dict() to get a dictionary-like object for a specific namespace. The value can be any JSON-encodable object.

# Get a handle to the 'app_config' namespace
config = db.dict("app_config")

# Set values using standard dictionary syntax
config["theme"] = "dark"
config["user_id"] = 123

# Get a value
theme = config.get("theme")
print(f"Theme: {theme}") # Output: Theme: dark

List Management

Get a list wrapper with db.list() and use Pythonic methods to manage it.

tasks = db.list("daily_tasks")
tasks.push("Write the project report")
tasks.prepend("Plan the day's agenda")
print(f"The first task is: {tasks[0]}")

Vector & Text Search

Store Document objects containing vector embeddings and metadata. When you index a document, its string fields are automatically made available for full-text search.

# Get a handle to a collection
docs = db.collection("articles")

# Create and index a multi-modal document
doc = Document(
    id="sql-001",
    embedding=[0.8, 0.1, 0.1],
    content="SQLite is a powerful embedded database ideal for local apps.",
    author="John Smith"
)
docs.index(doc)

# 1. Perform a vector search to find semantically similar documents
query_vector = [0.7, 0.2, 0.2]
vector_results = docs.search(vector=query_vector, top_k=3)
top_doc, distance = vector_results[0]
print(f"Vector Search Result: {top_doc.content} (distance: {distance:.2f})")

# 2. Perform a full-text search to find documents with specific words
text_results = docs.match(query="database", top_k=3)
top_doc, rank = text_results[0]
print(f"Full-Text Search Result: {top_doc.content} (rank: {rank:.2f})")

# 3. Combine both vector and text search for refined results
from beaver.collections import rerank
combined_results = rerank([d for d,_ in vector_results], [d for d,_ in text_results], weights=[2,1])

Graph Traversal

Create relationships between documents and traverse them.

from beaver import WalkDirection

# Create documents
alice = Document(id="alice", name="Alice")
bob = Document(id="bob", name="Bob")
charlie = Document(id="charlie", name="Charlie")

# Index them
social_net = db.collection("social")
social_net.index(alice)
social_net.index(bob)
social_net.index(charlie)

# Create edges
social_net.connect(alice, bob, label="FOLLOWS")
social_net.connect(bob, charlie, label="FOLLOWS")

# Find direct neighbors
following = social_net.neighbors(alice, label="FOLLOWS")
print(f"Alice follows: {[p.id for p in following]}")

# Perform a multi-hop walk to find friends of friends
foaf = social_net.walk(
    source=alice,
    labels=["FOLLOWS"],
    depth=2,
    direction=WalkDirection.OUTGOING,
)
print(f"Alice's extended network: {[p.id for p in foaf]}")

Synchronous Pub/Sub

Publish events from one part of your app and listen in another using threads.

import threading

def listener():
    for message in db.subscribe("system_events"):
        print(f"LISTENER: Received -> {message}")
        if message.get("event") == "shutdown":
            break

def publisher():
    db.publish("system_events", {"event": "user_login", "user": "alice"})
    db.publish("system_events", {"event": "shutdown"})

# Run them concurrently
listener_thread = threading.Thread(target=listener)
publisher_thread = threading.Thread(target=publisher)
listener_thread.start()
publisher_thread.start()
listener_thread.join()
publisher_thread.join()

License

This project is licensed under the MIT License.

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

beaver_db-0.6.0.tar.gz (13.6 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

beaver_db-0.6.0-py3-none-any.whl (13.2 kB view details)

Uploaded Python 3

File details

Details for the file beaver_db-0.6.0.tar.gz.

File metadata

  • Download URL: beaver_db-0.6.0.tar.gz
  • Upload date:
  • Size: 13.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.5.13

File hashes

Hashes for beaver_db-0.6.0.tar.gz
Algorithm Hash digest
SHA256 358d3fe7e2fc01698a8a8560bf879ff7e565f435a8e7fd298107c0eaabed2bae
MD5 4f34e79bf8f0e4d58a5f9118656c9e2f
BLAKE2b-256 8a83aefdb393a9c7288d9f50ff2dd452ac8acf337234462c1386b0cc88ee8112

See more details on using hashes here.

File details

Details for the file beaver_db-0.6.0-py3-none-any.whl.

File metadata

  • Download URL: beaver_db-0.6.0-py3-none-any.whl
  • Upload date:
  • Size: 13.2 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.5.13

File hashes

Hashes for beaver_db-0.6.0-py3-none-any.whl
Algorithm Hash digest
SHA256 6a9ebf4a417374e74164ff2cc80b1c7bcb41bb600df6b85cb7ef75efab84d7d1
MD5 134752c613b9ce05d6a81f01212ca8b8
BLAKE2b-256 4fe8008ac3ba691730f35d44841db73b6f9e559f0da932b326fce13a8b3b8b34

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page