3.1 KiB
MeiliDB
A full-text search database using a key-value store internally.
It uses RocksDB as a built-in database, to store documents and internal data. The key-value store power allow us to handle updates and queries with small memory and CPU overheads.
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.
We will be proud if you submit pull requests. It will help to help to grow this project, you can start contributing by checking issues tagged "good-first-issue". It a good start!
At the moment this project is only a library. It means that it's not prividing yet any binaries. To get started, we provided some examples in the examples/
folder that are made to work with the data located in the misc/
folder.
In a near future MeiliDB, we will provide a binary to execute this project as database, so you will be able to update and query it using a protocol. This will be our final goal, see the milestones. At the end, MeiliDB will be a bunch of network protocols, and wrappers. We will publish the entire project on https://crates.io, following our usual update cycle.
Performances
these information are outdated (October 2018) It will be updated soon
We made some tests on remote machines and found that MeiliDB easily handles a dataset of near 280k products, on a $5/month server with a single vCPU and 1GB of RAM, running the same index, with a simple query:
- near 190 concurrent users with an average response time of 90ms
- 150 concurrent users with an average response time of 70ms
- 100 concurrent users with an average response time of 45ms
Servers were located in Amsterdam and tests were made between two different locations.
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
MeiliDB runs with an index like most search engines. So to test the library you can create one by indexing a simple csv file.
cargo run --release --example create-database -- test.mdb misc/kaggle.csv
Once the command is executed, the index should be in the test.mdb
folder.
You are now able to run the query-database
example, to play with MeiliDB.
cargo run --release --example query-database -- test.mdb