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10331 Commits

Author SHA1 Message Date
meili-bors[bot]
d4f10800f2
Merge #3834
3834: Define searchable fields at runtime r=Kerollmops a=ManyTheFish

## Summary
This feature allows the end-user to search in one or multiple attributes using the search parameter `attributesToSearchOn`:

```json
{
  "q": "Captain Marvel",
  "attributesToSearchOn": ["title"]
}
```

This feature act like a filter, forcing Meilisearch to only return the documents containing the requested words in the attributes-to-search-on. Note that, with the matching strategy `last`, Meilisearch will only ensure that the first word is in the attributes-to-search-on, but, the retrieved documents will be ordered taking into account the word contained in the attributes-to-search-on. 

## Trying the prototype

A dedicated docker image has been released for this feature:

#### last prototype version:

```bash
docker pull getmeili/meilisearch:prototype-define-searchable-fields-at-search-time-1
```

#### others prototype versions:

```bash
docker pull getmeili/meilisearch:prototype-define-searchable-fields-at-search-time-0
```

## Technical Detail

The attributes-to-search-on list is given to the search context, then, the search context uses the `fid_word_docids`database using only the allowed field ids instead of the global `word_docids` database. This is the same for the prefix databases.
The database cache is updated with the merged values, meaning that the union of the field-id-database values is only made if the requested key is missing from the cache.

### Relevancy limits

Almost all ranking rules behave as expected when ordering the documents.
Only `proximity` could miss-order documents if all the searched words are in the restricted attribute but a better proximity is found in an ignored attribute in a document that should be ranked lower. I put below a failing test showing it:
```rust
#[actix_rt::test]
async fn proximity_ranking_rule_order() {
    let server = Server::new().await;
    let index = index_with_documents(
        &server,
        &json!([
        {
            "title": "Captain super mega cool. A Marvel story",
            // Perfect distance between words in an ignored attribute
            "desc": "Captain Marvel",
            "id": "1",
        },
        {
            "title": "Captain America from Marvel",
            "desc": "a Shazam ersatz",
            "id": "2",
        }]),
    )
    .await;

    // Document 2 should appear before document 1.
    index
        .search(json!({"q": "Captain Marvel", "attributesToSearchOn": ["title"], "attributesToRetrieve": ["id"]}), |response, code| {
            assert_eq!(code, 200, "{}", response);
            assert_eq!(
                response["hits"],
                json!([
                    {"id": "2"},
                    {"id": "1"},
                ])
            );
        })
        .await;
}
```

Fixing this would force us to create a `fid_word_pair_proximity_docids` and a `fid_word_prefix_pair_proximity_docids` databases which may multiply the keys of `word_pair_proximity_docids` and `word_prefix_pair_proximity_docids` by the number of attributes in the searchable_attributes list. If we think we should fix this test, I'll suggest doing it in another PR.

## Related

Fixes #3772

Co-authored-by: Tamo <tamo@meilisearch.com>
Co-authored-by: ManyTheFish <many@meilisearch.com>
2023-06-28 08:19:23 +00:00
meili-bors[bot]
dc293911ad
Merge #3745
3745: tests: add unit test for `PayloadTooLarge` error r=curquiza a=cymruu

# Pull Request
Add a unit test for the `Payload`, which verifies that a request with a payload that is too large is rejected with the appropriate message.
This was requested in this PR https://github.com/meilisearch/meilisearch/pull/3739

## Related issue
https://github.com/meilisearch/meilisearch/pull/3739

## What does this PR do?
- Adds requested test

## PR checklist
Please check if your PR fulfills the following requirements:
- [ ] Does this PR fix an existing issue, or have you listed the changes applied in the PR description (and why they are needed)?
- [ ] Have you read the contributing guidelines?
- [ ] Have you made sure that the title is accurate and descriptive of the changes?

Thank you so much for contributing to Meilisearch!


Co-authored-by: Filip Bachul <filipbachul@gmail.com>
2023-06-27 14:58:23 +00:00
meili-bors[bot]
9d68e6969e
Merge #3859
3859: Merge all analytics events pertaining to updating the experimental features r=Kerollmops a=dureuill

Follow-up to #3850 

Co-authored-by: Louis Dureuil <louis@meilisearch.com>
2023-06-27 13:26:01 +00:00
Louis Dureuil
b4b686d253
Merge all analytics events pertaining to updating the experimental features 2023-06-27 15:16:23 +02:00
meili-bors[bot]
98ec476198
Merge #3855
3855: Change and add links to the Cloud r=Kerollmops a=dureuill

- add cloud link in banner
- add utm to existing links following https://github.com/meilisearch/integration-guides/issues/277#issuecomment-1592054536

Co-authored-by: Louis Dureuil <louis@meilisearch.com>
2023-06-27 12:29:36 +00:00
Louis Dureuil
c47b8a8bfe
Fix typo
Co-authored-by: Guillaume Mourier <guillaume@meilisearch.com>
2023-06-27 14:27:54 +02:00
Louis Dureuil
054f81a021
Make message consistent with the one in integration repos 2023-06-27 14:20:55 +02:00
meili-bors[bot]
d8ea688481
Merge #3825
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>
2023-06-27 11:17:07 +00:00
Clément Renault
e69be93e42
Log warn about using both q and vector field parameters 2023-06-27 12:32:44 +02:00
Clément Renault
b2b413db12
Return all the _semanticScore values in the documents 2023-06-27 12:32:43 +02:00
Clément Renault
30741d17fa
Change the TODO message 2023-06-27 12:32:43 +02:00
Clément Renault
ebad1f396f
Remove the useless euclidean distance implementation 2023-06-27 12:32:43 +02:00
Clément Renault
29d8268c94
Fix the vector query part by using the correct universe 2023-06-27 12:32:43 +02:00
Clément Renault
63bfe1cee2
Ignore when there are too many vectors 2023-06-27 12:32:43 +02:00
Clément Renault
f3e4d70638
Send analytics about the query vector length 2023-06-27 12:32:43 +02:00
Kerollmops
eecf20f109
Introduce a new invalid_vector_store 2023-06-27 12:32:42 +02:00
Kerollmops
816d7ed174
Update the Vector Store product feature link 2023-06-27 12:32:42 +02:00
Louis Dureuil
864ad2a23c
Check that vector store feature is enabled 2023-06-27 12:32:42 +02:00
Kerollmops
66fb5c150c
Rename _semanticSimilarity into _semanticScore 2023-06-27 12:32:42 +02:00
Kerollmops
7c2f5f77b8
Make clippy and fmt happy 2023-06-27 12:32:42 +02:00
Kerollmops
66b8cfd8c8
Introduce a way to store the HNSW on multiple LMDB entries 2023-06-27 12:32:42 +02:00
Kerollmops
ff3664431f
Make rustfmt happy 2023-06-27 12:32:42 +02:00
Kerollmops
531748c536
Return a user error when the _vectors type is invalid 2023-06-27 12:32:41 +02:00
Kerollmops
7aa1275337
Display the _semanticSimilarity even if the _vectors field is not displayed 2023-06-27 12:32:41 +02:00
Kerollmops
737aec1705
Expose an _semanticSimilarity as a dot product in the documents 2023-06-27 12:32:41 +02:00
Kerollmops
3e3c743392
Make Rustfmt happy 2023-06-27 12:32:41 +02:00
Kerollmops
5c5a4e075d
Make clippy happy 2023-06-27 12:32:41 +02:00
Kerollmops
ab9f2269aa
Normalize the vectors during indexation and search 2023-06-27 12:32:41 +02:00
Kerollmops
321ec5f3fa
Accept multiple vectors by documents using the _vectors field 2023-06-27 12:32:40 +02:00
Kerollmops
1b2923f7c0
Return the vector in the output of the search routes 2023-06-27 12:32:40 +02:00
Kerollmops
717d4fddd4
Remove the unused distance 2023-06-27 12:32:40 +02:00
Kerollmops
a7e0f0de89
Introduce a new error message for invalid vector dimensions 2023-06-27 12:32:40 +02:00
Kerollmops
3b560ef7d0
Make clippy happy 2023-06-27 12:32:40 +02:00
Kerollmops
2cf747cb89
Fix the tests 2023-06-27 12:32:40 +02:00
Kerollmops
3c31e1cdd1
Support more pages but in an ugly way 2023-06-27 12:32:39 +02:00
Kerollmops
23eaaf1001
Change the name of the distance module 2023-06-27 12:32:39 +02:00
Kerollmops
c2a402f3ae
Implement an ugly deletion of values in the HNSW 2023-06-27 12:32:39 +02:00
Kerollmops
436a10bef4
Replace the euclidean with a dot product 2023-06-27 12:32:39 +02:00
Kerollmops
8debf6fe81
Use a basic euclidean distance function 2023-06-27 12:32:39 +02:00
Kerollmops
c79e82c62a
Move back to the hnsw crate
This reverts commit 7a4b6c065482f988b01298642f4c18775503f92f.
2023-06-27 12:32:39 +02:00
Kerollmops
aca305bb77
Log more to make sure we insert vectors in the hgg data-structure 2023-06-27 12:32:38 +02:00
Kerollmops
5816008139
Introduce an optimized version of the euclidean distance function 2023-06-27 12:32:38 +02:00
Kerollmops
268a9ef416
Move to the hgg crate 2023-06-27 12:32:38 +02:00
Clément Renault
642b0f3a1b
Expose a new vector field on the search route 2023-06-27 12:32:38 +02:00
Clément Renault
cad90e8cbc
Add a vector field to the search routes 2023-06-27 12:32:38 +02:00
Clément Renault
4571e512d2
Store the vectors in an HNSW in LMDB 2023-06-27 12:32:38 +02:00
Clément Renault
7ac2f1489d
Extract the vectors from the documents 2023-06-27 12:32:37 +02:00
Clément Renault
34349faeae
Create a new _vector extractor 2023-06-27 12:32:37 +02:00
meili-bors[bot]
ed0a5be4b6
Merge #3853
3853: docs: fixed some broken links r=gillian-meilisearch a=0xflotus

Some of the links in the README file were broken.


Co-authored-by: 0xflotus <0xflotus@gmail.com>
2023-06-27 10:30:13 +00:00
meili-bors[bot]
f105df6599
Merge #3850
3850: Experimental features r=Kerollmops a=dureuill

# Pull Request

## Related issue

- Fixes https://github.com/meilisearch/meilisearch/issues/3857
- Related to https://github.com/meilisearch/meilisearch/issues/3771
## What does this PR do?

### Example

<details>
<summary>Using the feature to enable `scoreDetails`</summary>

```json
❯ curl \
  -X POST 'http://localhost:7700/indexes/index-word-count-10-count/search' \
  -H 'Content-Type: application/json' \
  --data-binary '{ "q": "Batman", "limit": 1, "showRankingScoreDetails": true, "attributesToRetrieve": ["title"]}' | jsonxf

{
  "message": "Computing score details requires enabling the `score details` experimental feature. See https://github.com/meilisearch/product/discussions/674",
  "code": "feature_not_enabled",
  "type": "invalid_request",
  "link": "https://docs.meilisearch.com/errors#feature_not_enabled"
}
```

```json
❯ curl \
  -X PATCH 'http://localhost:7700/experimental-features/' \
  -H 'Content-Type: application/json'  \
--data-binary '{
    "scoreDetails": true
  }'
{"scoreDetails":true,"vectorSearch":false}
```

```json
❯ curl \
  -X POST 'http://localhost:7700/indexes/index-word-count-10-count/search' \
  -H 'Content-Type: application/json' \
  --data-binary '{ "q": "Batman", "limit": 1, "showRankingScoreDetails": true, "attributesToRetrieve": ["title"]}' | jsonxf
{
  "hits": [
    {
      "title": "Batman",
      "_rankingScoreDetails": {
        "words": {
          "order": 0,
          "matchingWords": 1,
          "maxMatchingWords": 1,
          "score": 1.0
        },
        "typo": {
          "order": 1,
          "typoCount": 0,
          "maxTypoCount": 1,
          "score": 1.0
        },
        "proximity": {
          "order": 2,
          "score": 1.0
        },
        "attribute": {
          "order": 3,
          "attribute_ranking_order_score": 1.0,
          "query_word_distance_score": 1.0,
          "score": 1.0
        },
        "exactness": {
          "order": 4,
          "matchType": "exactMatch",
          "score": 1.0
        }
      }
    }
  ],
  "query": "Batman",
  "processingTimeMs": 3,
  "limit": 1,
  "offset": 0,
  "estimatedTotalHits": 46
}
```


</details>

### User standpoint

- Add new route GET/POST/PATCH/DELETE `/experimental-features` to switch on or off some of the experimental features in a manner persistent between instance restarts
- Use these new routes to allow setting on/off the following experimental features:
  - vector store **TODO:** fill in issue 
  - score details (related to https://github.com/meilisearch/meilisearch/issues/3771)
- Make the way of checking feature availability and error message uniform for the Prometheus metrics experimental feature
- Save the enabled features in dump, restore from dumps
- **TODO:** tests:
  - Test new security permissions (do they allow access with ALL, do they prevent access when missing)
  - Test dump behavior, in particular ability to import existing v6 dumps
  - Test basic behavior when calling the rule 

### Implementation standpoint

- New DB "experimental-features"
- dumps are modified to save the state of that new DB as a `experimental-features.json` file, that is then loaded back when importing the dump. This doesn't change the dump version, as the file is optional and it missing will not cause the dump to fail

Co-authored-by: Louis Dureuil <louis@meilisearch.com>
2023-06-26 15:13:43 +00:00