MeiliSearch/README.md
2019-11-28 16:28:25 +01:00

8.3 KiB

MeiliSearch

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Ultra relevant and instant full-text search API 🔍

MeiliSearch is a powerful, fast, open-source, easy to use, and deploy search engine. The search and indexation are fully customizable and handles features like typo-tolerance, filters, and synonyms.

What MeiliSearch has to offer

  • Search as-you-type experience (answers < 50ms)
  • Full-text search
  • Typo tolerant (understands typos and spelling mistakes)
  • Supports Kanji
  • Supports Synonym
  • Easy to install, deploy, and maintain
  • Whole documents returned
  • Highly customizable
  • RESTfull API

For more details about those features, go to our documentation.

crates.io demo gif

Meili helps the Rust community find crates on crates.meilisearch.com

In-depth features

Quick Start

You can deploy your instant, relevant, and typo-tolerant MeiliSearch search engine by yourself too. Something similar to the demo above can be achieved by following these little three steps first. You still need to create your front-end to make it pretty, though.

Deploy the Server

If you have not yet installed Rust and its package manager cargo, go to the installation page.
You can deploy the server on your machine; it listens to HTTP requests on the 8080 port by default.

cargo run --release

For more logs during the execution, run:

RUST_LOG=info cargo run --release

Create an Index and Upload Some Documents

MeiliSearch can serve multiple indexes, with different kinds of documents, therefore, it is required to create the index before sending documents to it.

curl -i -X POST 'http://127.0.0.1:8080/indexes' --data '{ "name": "Movies", "uid": "movies" }'

Now that the server knows about our brand new index, we can send it data. We provided you a small dataset that is available in the datasets/ directory.

curl -i -X POST 'http://127.0.0.1:8080/indexes/movies/documents' \
  --header 'content-type: application/json' \
  --data @datasets/movies/movies.json

Search for Documents

The search engine is now aware of our documents and can serve those via our HTTP server again. The jq command-line tool can significantly help you read the server responses.

curl 'http://127.0.0.1:8080/indexes/movies/search?q=botman'
{
  "hits": [
    {
      "id": "29751",
      "title": "Batman Unmasked: The Psychology of the Dark Knight",
      "poster": "https://image.tmdb.org/t/p/w1280/jjHu128XLARc2k4cJrblAvZe0HE.jpg",
      "overview": "Delve into the world of Batman and the vigilante justice tha",
      "release_date": "2008-07-15"
    },
    {
      "id": "471474",
      "title": "Batman: Gotham by Gaslight",
      "poster": "https://image.tmdb.org/t/p/w1280/7souLi5zqQCnpZVghaXv0Wowi0y.jpg",
      "overview": "ve Victorian Age Gotham City, Batman begins his war on crime",
      "release_date": "2018-01-12"
    }
  ],
  "offset": 0,
  "limit": 2,
  "processingTimeMs": 1,
  "query": "botman"
}

Performances

With a dataset 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

We also indexed a dataset containing something like 12 millions cities names in 24 minutes on a machine with 8 cores, 64 GB of RAM, and a 300 GB NMVe SSD.
The resulting database was 16 GB and search results were between 30 ms and 4 seconds for short prefix queries.

Notes

With Rust 1.32 the allocator has been changed to use the system allocator. We have seen much better performances when using jemalloc as the global allocator.

How it works

MeiliSearch uses LMDB 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 excellent 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. Also, you can take a look at the typos and ranking rules if you want to know the default rules used to sort the documents.

Contributing

We will be glad 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!

Analytic Events

We send events to our Amplitude instance to be aware of the number of people who use MeiliSearch.
We only send the platform on which the server runs once by day. No other information is sent.
If you do not want us to send events, you can disable these analytics by using the MEILI_NO_ANALYTICS env variable.