Chang She f485378ea4 Basic full text search capabilities (#62)
This is v1 of integrating full text search index into LanceDB.

# API
The query API is roughly the same as before, except if the input is text
instead of a vector we assume that its fts search.

## Example
If `table` is a LanceDB LanceTable, then:

Build index: `table.create_fts_index("text")`

Query: `df = table.search("puppy").limit(10).select(["text"]).to_df()`

# Implementation
Here we use the tantivy-py package to build the index. We then use the
row id's as the full-text-search index's doc id then we just do a Take
operation to fetch the rows.

# Limitations

1. don't support incremental row appends yet. New data won't show up in
search
2. local filesystem only 
3. requires building tantivy explicitly

---------

Co-authored-by: Chang She <chang@lancedb.com>
2023-05-24 22:25:31 -06:00
2023-05-05 16:00:14 -07:00
2023-03-17 18:15:19 -07:00
2023-05-16 09:53:04 -07:00

LanceDB Logo

Developer-friendly, serverless vector database for AI applications

DocumentationBlogDiscordTwitter


LanceDB is an open-source database for vector-search built with persistent storage, which greatly simplifies retrevial, filtering and management of embeddings.

The key features of LanceDB include:

  • Production-scale vector search with no servers to manage.

  • Store, query and filter vectors, metadata and multi-modal data (text, images, videos, point clouds, and more).

  • Native Python and Javascript/Typescript support.

  • Zero-copy, automatic versioning, manage versions of your data without needing extra infrastructure.

  • Ecosystem integrations with LangChain 🦜🔗, LlamaIndex 🦙, Apache-Arrow, Pandas, Polars, DuckDB and more on the way.

LanceDB's core is written in Rust 🦀 and is built using Lance, an open-source columnar format designed for performant ML workloads.

Quick Start

Javascript

npm install vectordb
const lancedb = require('vectordb');
const db = await lancedb.connect('data/sample-lancedb');

const table = await db.createTable('vectors', 
      [{ id: 1, vector: [0.1, 0.2], item: "foo", price: 10 },
       { id: 2, vector: [1.1, 1.2], item: "bar", price: 50 }])

const query = table.search([0.1, 0.3]);
query.limit = 20;
const results = await query.execute();

Python

pip install lancedb
import lancedb

uri = "/tmp/lancedb"
db = lancedb.connect(uri)
table = db.create_table("my_table",
                         data=[{"vector": [3.1, 4.1], "item": "foo", "price": 10.0},
                               {"vector": [5.9, 26.5], "item": "bar", "price": 20.0}])
result = table.search([100, 100]).limit(2).to_df()

Blogs, Tutorials & Videos

Description
Languages
Rust 42.7%
Python 42%
TypeScript 14.2%
Shell 0.6%
Java 0.3%