A lightning-fast search API that fits effortlessly into your apps, websites, and workflow
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MeiliDB

Build Status dependency status License Rust 1.31+

A full-text search database using a key-value store internally.

Features

It uses sled as the internal key-value store. The key-value store allows us to handle updates and queries with small memory and CPU overheads. The whole ranking system is data oriented and provides great performances.

You can read the deep dive if you want more information on the engine, it describes the whole process of generating updates and handling queries or you can take a look at the typos and ranking rules if you want to know the default rules used to sort the documents.

We will be proud if you submit issues and pull requests. You can help to grow this project and start contributing by checking issues tagged "good-first-issue". It is a good start!

The project is only a library yet. It means that there is no binary provided yet. To get started, you can check the examples wich are made to work with the data located in the misc/ folder.

MeiliDB will be a binary in a near future so you will be able to use it as a database out-of-the-box. We should be able to query it using a to-be-defined protocol. This is our current goal, see the milestones. In the end, the binary will be a bunch of network protocols and wrappers around the library - which will also be published on crates.io. Both the binary and the library will follow the same update cycle.

Performances

With a database composed of 100 353 documents with 352 attributes each and 3 of them indexed. So more than 300 000 fields indexed for 35 million stored we can handle more than 2.8k req/sec with an average response time of 9 ms on an Intel i7-7700 (8) @ 4.2GHz.

Requests are made using wrk and scripted to simulate real users queries.

Running 10s test @ http://localhost:2230
  2 threads and 25 connections
  Thread Stats   Avg      Stdev     Max   +/- Stdev
    Latency     9.52ms    7.61ms  99.25ms   84.58%
    Req/Sec     1.41k   119.11     1.78k    64.50%
  28080 requests in 10.01s, 7.42MB read
Requests/sec:   2806.46
Transfer/sec:    759.17KB

Notes

The default Rust allocator has recently been changed to use the system allocator. We have seen much better performances when using jemalloc as the global allocator.

Usage and examples

You can test a little part of MeiliDB by using this command, it create an index named movies and initialize it with to great Tarantino movies.

cargo run --release

curl -XPOST 'http://127.0.0.1:8000/movies' \
    -d '
identifier = "id"

[attributes.id]
stored = true

[attributes.title]
stored = true
indexed = true
'

curl -H 'Content-Type: application/json' \
     -XPUT 'http://127.0.0.1:8000/movies' \
     -d '{ "id": 123, "title": "Inglorious Bastards" }'

curl -H 'Content-Type: application/json' \
     -XPUT 'http://127.0.0.1:8000/movies' \
     -d '{ "id": 456, "title": "Django Unchained" }'

Once the database is initialized you can query it by using the following command:

curl -XGET 'http://127.0.0.1:8000/movies/search?q=inglo'