d8ea688481
3825: Accept semantic vectors and allow users to query nearest neighbors r=Kerollmops a=Kerollmops This Pull Request brings a new feature to the current API. The engine accepts a new `_vectors` field akin to the `_geo` one. This vector is stored in Meilisearch and can be retrieved via search. This work is the first step toward hybrid search, bringing the best of both worlds: keyword and semantic search ❤️🔥 ## ToDo - [x] Make it possible to get the `limit` nearest neighbors from a user-generated vector by using the `vector` field of search route. - [x] Delete the documents and vectors from the HNSW-related data structures. - [x] Do it the slow and ugly way (we need to be able to iterate over all the values). - [ ] Do it the efficient way (Wait for a new method or implement it myself). - [ ] ~~Move from the `hnsw` crate to the hgg one~~ The hgg crate is too slow. Meilisearch takes approximately 88s to answer a query. It is related to the time it takes to deserialize the `Hgg` data structure or search in it. I didn't take the time to measure precisely. We moved back to the hnsw crate which takes approximately 40ms to answer. - [ ] ~~Wait for a fix for https://github.com/rust-cv/hgg/issues/4.~~ - [x] Fix the current dot product function. - [x] Fill in the other `SearchResult` fields. - [x] Remove the `hnsw` dependency of the meilisearch crate. - [x] Fix the pages by taking the offset into account. - [x] Release a first prototype https://github.com/meilisearch/product/discussions/621#discussioncomment-6183647 - [x] Make the pagination and filtering faster and more correct. - [x] Return the original vector in the output search results (like `query`). - [x] Return an `_semanticSimilarity` field in the documents (it's a dot product) - [x] Return this score even if the `_vectors` field is not displayed - [x] Rename the field `_semanticScore`. - [ ] Return the `_geoDistance` value even if the `_geo` field is not displayed - [x] Store the HNSW on possibly multiple LMDB values. - [ ] Measure it and make it faster if needed - [ ] Export the `ReadableSlices` type into a small external crate - [x] Accept an `_vectors` field instead of the `_vector` one. - [x] Normalize all vectors. - [ ] Remove the `_vectors` field from the default searchable attributes (as we do with `_geo`?). - [ ] Correctly compute the candidates by remembering the documents having a valid `_vectors` field. - [ ] Return the right errors: - [ ] Return an error when the query vector is not the same length as the vectors in the HNSW. - [ ] We must return the user document id that triggered the vector dimension issue. - [x] If an indexation error occurs. - [ ] Fix the error codes when using the search route. - [ ] ~~Introduce some settings:~~ We currently ensure that the vector length is consistent over the whole set of documents and return an error for when a vector dimension doesn't follow the current number of dimensions. - [ ] The length of the vector the user will provide. - [ ] The distance function (we only support dot as of now). - [ ] Introduce other distance functions - [ ] Euclidean - [ ] Dot Product - [ ] Cosine - [ ] Make them SIMD optimized - [ ] Give credit to qdrant - [ ] Add tests. - [ ] Write a mini spec. - [ ] Release it in v1.3 as an experimental feature. Co-authored-by: Clément Renault <clement@meilisearch.com> Co-authored-by: Kerollmops <clement@meilisearch.com> |
||
---|---|---|
.github | ||
assets | ||
benchmarks | ||
dump | ||
file-store | ||
filter-parser | ||
flatten-serde-json | ||
fuzzers | ||
index-scheduler | ||
json-depth-checker | ||
meili-snap | ||
meilisearch | ||
meilisearch-auth | ||
meilisearch-types | ||
milli | ||
permissive-json-pointer | ||
.dockerignore | ||
.gitignore | ||
.rustfmt.toml | ||
bors.toml | ||
Cargo.lock | ||
Cargo.toml | ||
CODE_OF_CONDUCT.md | ||
config.toml | ||
CONTRIBUTING.md | ||
Cross.toml | ||
Dockerfile | ||
download-latest.sh | ||
LICENSE | ||
README.md | ||
SECURITY.md |
Website | Roadmap | Blog | Documentation | FAQ | Discord
⚡ A lightning-fast search engine that fits effortlessly into your apps, websites, and workflow 🔍
Meilisearch helps you shape a delightful search experience in a snap, offering features that work out-of-the-box to speed up your workflow.
🔥 Try it! 🔥
✨ Features
- Search-as-you-type: find search results in less than 50 milliseconds
- Typo tolerance: get relevant matches even when queries contain typos and misspellings
- Filtering and faceted search: enhance your user's search experience with custom filters and build a faceted search interface in a few lines of code
- Sorting: sort results based on price, date, or pretty much anything else your users need
- Synonym support: configure synonyms to include more relevant content in your search results
- Geosearch: filter and sort documents based on geographic data
- Extensive language support: search datasets in any language, with optimized support for Chinese, Japanese, Hebrew, and languages using the Latin alphabet
- Security management: control which users can access what data with API keys that allow fine-grained permissions handling
- Multi-Tenancy: personalize search results for any number of application tenants
- Highly Customizable: customize Meilisearch to your specific needs or use our out-of-the-box and hassle-free presets
- RESTful API: integrate Meilisearch in your technical stack with our plugins and SDKs
- Easy to install, deploy, and maintain
📖 Documentation
You can consult Meilisearch's documentation at https://www.meilisearch.com/docs.
🚀 Getting started
For basic instructions on how to set up Meilisearch, add documents to an index, and search for documents, take a look at our Quick Start guide.
You may also want to check out Meilisearch 101 for an introduction to some of Meilisearch's most popular features.
☁️ Meilisearch cloud
Let us manage your infrastructure so you can focus on integrating a great search experience. Try Meilisearch Cloud today.
🧰 SDKs & integration tools
Install one of our SDKs in your project for seamless integration between Meilisearch and your favorite language or framework!
Take a look at the complete Meilisearch integration list.
⚙️ Advanced usage
Experienced users will want to keep our API Reference close at hand.
We also offer a wide range of dedicated guides to all Meilisearch features, such as filtering, sorting, geosearch, API keys, and tenant tokens.
Finally, for more in-depth information, refer to our articles explaining fundamental Meilisearch concepts such as documents and indexes.
📊 Telemetry
Meilisearch collects anonymized data from users to help us improve our product. You can deactivate this whenever you want.
To request deletion of collected data, please write to us at privacy@meilisearch.com. Don't forget to include your Instance UID
in the message, as this helps us quickly find and delete your data.
If you want to know more about the kind of data we collect and what we use it for, check the telemetry section of our documentation.
📫 Get in touch!
Meilisearch is a search engine created by Meili, a software development company based in France and with team members all over the world. Want to know more about us? Check out our blog!
🗞 Subscribe to our newsletter if you don't want to miss any updates! We promise we won't clutter your mailbox: we only send one edition every two months.
💌 Want to make a suggestion or give feedback? Here are some of the channels where you can reach us:
- For feature requests, please visit our product repository
- Found a bug? Open an issue!
- Want to be part of our Discord community? Join us!
Thank you for your support!
👩💻 Contributing
Meilisearch is, and will always be, open-source! If you want to contribute to the project, please take a look at our contribution guidelines.
📦 Versioning
Meilisearch releases and their associated binaries are available in this GitHub page.
The binaries are versioned following SemVer conventions. To know more, read our versioning policy.
Differently from the binaries, crates in this repository are not currently available on crates.io and do not follow SemVer conventions.