Skip to main content

Stupid Vector Store (SVS): a vector database for the rest of us

Project description

SVS Logo

Stupid Vector Store (SVS)

PyPI - Version PyPI - Python Version Test Status Downloads

  • 🤔 What is SVS?

    • Semantic search via deep-learning vector embeddings.
    • A stupid-simple library for storing and retrieving your documents.
  • 💩 Why is it stupid?

    • Because it just uses SQLite and NumPy. Nothing fancy.
    • That is our core design choice. We want something stupid simple, yet reasonably fast.
  • 🧠 Is it possibly... smart in any way though?

    • Maybe.
    • It will squeeze the most juice from your machine: 🍊
      • Optimized SQL
      • Cache-friendly memory access
      • Fast in the places that matter 🚀
      • All with a simple Python interface
    • Supports storing arbitrary metadata with each document. 🗃️
    • Supports storing and querying (optional) parent-child relationships between documents. 👪
      • Fully hierarchical - parents can have parents, children can have children, whatever you need...
    • Both sync and asyncio implementations:
      • use the synchronous impl (svs.KB) for scripts, notebooks, etc
      • use the asyncio impl (svs.AsyncKB) for web-services, etc
    • 100% Python type hints!

Overview

SVS is stupid yet can handle a million documents on commodity hardware, so it's probably perfect for you.

Should you use SVS? SVS is designed for the use-case where:

  1. you have less than a million documents, and
  2. you don't add/remove documents very often.

If that's you, then SVS will probably be the simples (and stupidest) way to manage your document vectors!

Table of Contents

Installation

pip install -U svs

Used By

SVS is used in production by:

AutoAuto

Quickstart

Here is the most simple use-case; it just queries a pre-built knowledge base! This particular example queries a knowledge base of "Dad Jokes" 🤩.

(taken from ./examples/quickstart.py)

import svs   # <-- pip install -U svs

import os
from dotenv import load_dotenv; load_dotenv()
assert os.environ.get('OPENAI_API_KEY'), "You must set your OPENAI_API_KEY environment variable!"

#
# The database remembers which embeddings provider (e.g. OpenAI) was used.
#
# The "Dad Jokes" database below uses OpenAI embeddings, so that's why you had
# to set your OPENAI_API_KEY above!
#
# NOTE: The first time you run this script it will download this database,
#       so expect that to take a few seconds...
#
DB_URL = 'https://github.com/Rhobota/svs/raw/main/examples/dad_jokes/dad_jokes.sqlite.gz'


def demo() -> None:
    kb = svs.KB(DB_URL)

    records = kb.retrieve('chicken', n = 10)

    for record in records:
        score = record['score']
        text = record['doc']['text']
        print(f" 😆 score={score:.4f}: {text}\n")

    kb.close()


if __name__ == '__main__':
    demo()

⚠️ Want to see how that Dad Jokes knowledge base was created? See: ./examples/dad_jokes/Build Dad Jokes KB.ipynb

Speed & Benchmarks

SQLite and NumPy are fast, thus SVS is fast 🏎️. Our goal is to minimize the amount of work done at the Python-layer.

Also, your bottleneck will certainly be the remote API calls to get document embeddings (e.g. calling out to OpenAI's API to get embeddings will be the slowest thing), so it's likely not critical to further optimize the Python-layer bits.

The following benchmarks were performed on 2018-era commodity hardware (Intel i3-8100):

Number of Documents Load into SQLite Get Embeddings for All Documents (remote API call) Cosine Similarity + Sort + Retrieve Top-100 Documents [^3]
10,548 jokes [^1] 0.07 seconds 80 seconds 0.5 seconds (first query) + 0.011 seconds (subsequent queries)
1,000,000 synthetic documents [^2] 8 seconds 2 hours [^4] 2 minutes (first query) + 0.24 seconds (subsequent queries)

[^1]: This benchmark is from the Dad Jokes KB from this notebook.

[^2]: This benchmark is over one million synthetic documents, where those documents have an average length of 1,200 characters. Specifically, this notebook.

[^3]: This time does not include the time it takes to obtain the query string's embedding from the external service (i.e. from OpenAI's API); rather, it captures the time it takes to (1) compute the cosine similarity of the query string with all the documents' vectors (where embedding dimensionality is 1,536), then (2) sort the results, and then (3) retrieve the top-100 documents from the database. Note: The first query is slow because it must load the vectors from disk into RAM, while subsequent queries are fast since those vectors stay cached in RAM.

[^4]: This is an estimate based on the observed typical response times from OpenAI's embeddings API. For this test, we generate synthetic embeddings with dimensionality 1,536 to simulate the correct datasize and computation requirements as if we used "real" embeddings.

Debug Logging

This library logs using Python's builtin logging module. It logs mostly to INFO, so here's a snippet of code you can put in your app to see those traces:

import logging

logging.basicConfig(
    level=logging.INFO,
    format='%(asctime)s - %(name)s - %(levelname)s - %(message)s',
)

# ... now use SVS as you normally would, but you'll see extra log traces!

License

svs is distributed under the terms of 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

svs-0.4.0.tar.gz (24.5 MB view details)

Uploaded Source

Built Distribution

svs-0.4.0-py3-none-any.whl (18.9 kB view details)

Uploaded Python 3

File details

Details for the file svs-0.4.0.tar.gz.

File metadata

  • Download URL: svs-0.4.0.tar.gz
  • Upload date:
  • Size: 24.5 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: python-httpx/0.27.0

File hashes

Hashes for svs-0.4.0.tar.gz
Algorithm Hash digest
SHA256 6d9a8fdc436004acb6d75daa17c7986eb165f4930939a148ab8cba8a2c150009
MD5 ca62070a9721813e9e7570c96bec889d
BLAKE2b-256 c9d4e8c4a48cb5f136ae16ad4a3fa71f87a5ad2ecf736a05eac74cdd2ac706d0

See more details on using hashes here.

File details

Details for the file svs-0.4.0-py3-none-any.whl.

File metadata

  • Download URL: svs-0.4.0-py3-none-any.whl
  • Upload date:
  • Size: 18.9 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: python-httpx/0.27.0

File hashes

Hashes for svs-0.4.0-py3-none-any.whl
Algorithm Hash digest
SHA256 552f1b15e3e9245d1e4eae7582a248e71c396655aa076172e4b51ae03c6e384e
MD5 f9f9d487efb0122dfaf8d355a118d32f
BLAKE2b-256 88b085e2e7a8fbb29c4a017c0bfc857c7d443af2f0874ed00d1844f9339d187c

See more details on using hashes here.

Supported by

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