Commit Graph

7157 Commits

Author SHA1 Message Date
Tamo
2afb381f95
get rids of nelson 2022-10-27 11:33:37 +02:00
Tamo
a9844bd4f6
move the update file store to another crate with as little dependencies as possible 2022-10-27 11:33:37 +02:00
Tamo
a0588d6b94
finishes the global skelton of the auto-batcher 2022-10-27 11:33:37 +02:00
Tamo
b3c9b128d9
polish the global structure of the batch creation 2022-10-27 11:33:37 +02:00
Irevoire
448f44f631
move the autobatcher logic to another file 2022-10-27 11:33:36 +02:00
Tamo
f638774764
add the document format file 2022-10-27 11:33:36 +02:00
Tamo
516860f342
fix the create_new_batch method 2022-10-27 11:33:36 +02:00
Tamo
6b9689a1c0
fix the whole batchKind thingy 2022-10-27 11:33:36 +02:00
Tamo
af0f5d6c0c
implements most operations 2022-10-27 11:33:36 +02:00
Tamo
5a7fcf2688
fix a few typos 2022-10-27 11:33:35 +02:00
Tamo
30d2b24689
implements the index deletion, creation and swap 2022-10-27 11:33:35 +02:00
Tamo
72b2e68de4
makes the updates getters smoother to uses 2022-10-27 11:33:35 +02:00
Tamo
7879189c6b
make the project compile again 2022-10-27 11:33:35 +02:00
Tamo
46b8ebcab4
fix the file store 2022-10-27 11:33:35 +02:00
Tamo
fa742f60e8
make the file store entirely synchronous, including the file deletion 2022-10-27 11:33:35 +02:00
Tamo
a7aa92df5f
fix most of the index module 2022-10-27 11:33:34 +02:00
Irevoire
d8b8e04ad1
wip porting the index back in the scheduler 2022-10-27 11:33:34 +02:00
Irevoire
fe330e1be9
add a little bit of documentation 2022-10-27 11:33:34 +02:00
Tamo
2c4e5ce8be
implements the filter query 2022-10-27 11:33:34 +02:00
Tamo
705af94fd7
add the task to the index db in the register task 2022-10-27 11:33:34 +02:00
Tamo
ed745591e1
split the scheduler into multiples files 2022-10-27 11:33:34 +02:00
Tamo
22d24dba56
implement the get_batch method 2022-10-27 11:33:33 +02:00
Tamo
1a47949063
START THE REWRITE OF THE INDEX SCHEDULER: index & register has been implemented 2022-10-27 11:33:33 +02:00
bors[bot]
ab1800551f
Merge #2922
2922: Add new error when using /keys without masterkey set r=ManyTheFish a=vishalsodani

# Pull Request

## Related issue
Fixes #2918 


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




Co-authored-by: vishalsodani <vishalsodani@rediffmail.com>
2022-10-27 09:13:11 +00:00
vishalsodani
689bef7ad2 fmt the code 2022-10-27 14:09:38 +05:30
vishalsodani
89c40c83c3 refactor code to avoid cloning 2022-10-27 14:08:29 +05:30
vishalsodani
03ba830ab2 uncomment tests 2022-10-27 12:59:28 +05:30
vishalsodani
9cf3ff72a3 fix checking of master key as per review comment 2022-10-27 12:56:18 +05:30
Samyak S Sarnayak
d35afa0cf5
Change consecutive phrase search grouping logic
Co-authored-by: ManyTheFish <many@meilisearch.com>
2022-10-26 23:10:48 +05:30
Samyak S Sarnayak
752d031010
Update phrase search to use new execute method 2022-10-26 23:07:20 +05:30
bors[bot]
25ec51e783
Merge #2601
2601: Ease search result pagination r=Kerollmops a=ManyTheFish

# Summary
This PR is a prototype enhancing search results pagination (#2577)

# Todo

- [x] Update the API to return the number of pages and allow users to directly choose a page instead of computing an offset
- [x] Change computation of `total_pages` in order to have an exact count
  - [x] compute query tree exhaustively
  - [x] compute distinct exhaustively

# Small Documentation

## Default search query

**request**:
```sh
curl \
  -X POST 'http://localhost:7700/indexes/movies/search' \
  -H 'Content-Type: application/json' \
  --data-binary '{ "q": "botman" }'
```

**result**:
```json
{
  "hits":[...],
  "query":"botman",
  "processingTimeMs":5,
  "hitsPerPage":20,
  "page":1,
  "totalPages":4,
  "totalHits":66
}
```

## Search query with offset parameter

**request**:
```sh
curl \
  -X POST 'http://localhost:7700/indexes/movies/search' \
  -H 'Content-Type: application/json' \
  --data-binary '{ "q": "botman", "offset": 0 }'
```

**result**:
```json
{
  "hits":[...],
  "query":"botman",
  "processingTimeMs":3,
  "limit":20,
  "offset":0,
  "estimatedTotalHits":66
}
```

## Search query selecting page with page parameter

**request**:
```sh
curl \
  -X POST 'http://localhost:7700/indexes/movies/search' \
  -H 'Content-Type: application/json' \
  --data-binary '{ "q": "botman", "page": 2 }'
```

**result**:
```json
{
  "hits":[...],
  "query":"botman",
  "processingTimeMs":5,
  "hitsPerPage":20,
  "page":2,
  "totalPages":4,
  "totalHits":66
}
```

# Related

fixes #2577

## In charge of the feature

Core: `@ManyTheFish` 
Docs: `@guimachiavelli` 
Integration: `@bidoubiwa` 


Co-authored-by: ManyTheFish <many@meilisearch.com>
2022-10-26 16:10:58 +00:00
ManyTheFish
f4021273b8 Add is_finite_pagination method to SearchQuery 2022-10-26 18:08:29 +02:00
unvalley
c7322f704c Fix cargo clippy errors
Dont apply clippy for tests for now

Fix clippy warnings of filter-parser package

parent 8352febd646ec4bcf56a44161e5c4dce0e55111f
author unvalley <38400669+unvalley@users.noreply.github.com> 1666325847 +0900
committer unvalley <kirohi.code@gmail.com> 1666791316 +0900

Update .github/workflows/rust.yml

Co-authored-by: Clémentine Urquizar - curqui <clementine@meilisearch.com>

Allow clippy lint too_many_argments

Allow clippy lint needless_collect

Allow clippy lint too_many_arguments and type_complexity

Fix for clippy warnings comparison_chains

Fix for clippy warnings vec_init_then_push

Allow clippy lint should_implement_trait

Allow clippy lint drop_non_drop

Fix lifetime clipy warnings in filter-paprser

Execute cargo fmt

Fix clippy remaining warnings

Fix clippy remaining warnings again and allow lint on each place
2022-10-27 01:04:23 +09:00
unvalley
811f156031 Execute cargo clippy --fix 2022-10-27 01:00:00 +09:00
unvalley
d8fed1f7a9 Add clippy job
Add Run Clippy to bors.toml
2022-10-27 01:00:00 +09:00
bors[bot]
2e539249cb
Merge #619
619: Refactor the Facets databases to enable incremental indexing r=curquiza a=loiclec

# Pull Request

## What does this PR do?
Party fixes https://github.com/meilisearch/milli/issues/605 by making the indexing of the facet databases (i.e. `facet_id_f64_docids` and `facet_id_string_docids`) incremental. It also closes #327 and https://github.com/meilisearch/meilisearch/issues/2820 . Two more untracked bugs were also fixed:
1. The facet distribution algorithm did not respect the `maxFacetValues` parameter when there were only a few candidate document ids.
2. The structure of the levels > 0 of the facet databases were not updated following the deletion of documents

## How to review this PR

First, read this comment to get an overview of the changes.

Then, based on this comment, raise any concerns you might have about:
1. the new structure of the databases
2. the algorithms for sort, facet distribution, and range search
3. the new/removed heed codecs

Then, weigh in on the following concerns:
1. adding `fuzzcheck` as a fuzz-only dependency may add too much complexity for the benefits it provides
2. the `ByteSliceRef` and `StrRefCodec` are misnamed or should not exist
3. the new behaviour of facet distributions can be considered incorrect
4. incremental deletion is useless given that documents are always deleted in bulk

## What's left for me to do

1. Re-read everything once to make sure I haven't forgotten anything
2. Wait for the results of the benchmarks and see if (1) they provide enough information (2) there was any change in performance, especially for search queries. Then, maybe, spend some time optimising the code.
3. Test whether the `info`/`http-ui` crates survived the refactor

## Old structure of the `facet_id_f64_docids` and `facet_id_string_docids` databases

Previously, these two databases had different but conceptually similar structures. For each field id, the facet number database had the following format:
```
            ┌───────────────────────────────┬───────────────────────────────┬───────────────┐
┌───────┐   │            1.2 – 2            │           3.4 – 100           │   102 – 104   │
│Level 2│   │                               │                               │               │
└───────┘   │         a, b, d, f, z         │         c, d, e, f, g         │     u, y      │
            ├───────────────┬───────────────┼───────────────┬───────────────┼───────────────┤
┌───────┐   │   1.2 – 1.3   │    1.6 – 2    │   3.4 – 12    │  12.3 – 100   │   102 – 104   │
│Level 1│   │               │               │               │               │               │
└───────┘   │  a, b, d, z   │    a, b, f    │    c, d, g    │     e, f      │     u, y      │
            ├───────┬───────┼───────┬───────┼───────┬───────┼───────┬───────┼───────┬───────┤
┌───────┐   │  1.2  │  1.3  │  1.6  │   2   │  3.4  │   12  │  12.3 │  100  │  102  │  104  │
│Level 0│   │       │       │       │       │       │       │       │       │       │       │
└───────┘   │  a, b │  d, z │  b, f │  a, f │  c, d │   g   │   e   │  e, f │   y   │   u   │
            └───────┴───────┴───────┴───────┴───────┴───────┴───────┴───────┴───────┴───────┘
```
where the first line is the key of the database, consisting of :
- the field id
- the level height
- the left and right bound of the group 

and the second line is the value of the database, consisting of:
- a bitmap of all the docids that have a facet value within the bounds

The `facet_id_string_docids` had a similar structure:
```
            ┌───────────────────────────────┬───────────────────────────────┬───────────────┐
┌───────┐   │             0 – 3             │             4 – 7             │     8 – 9     │
│Level 2│   │                               │                               │               │
└───────┘   │         a, b, d, f, z         │         c, d, e, f, g         │     u, y      │
            ├───────────────┬───────────────┼───────────────┬───────────────┼───────────────┤
┌───────┐   │     0 – 1     │     2 – 3     │     4 – 5     │     6 – 7     │     8 – 9     │
│Level 1│   │  "ab" – "ac"  │ "ba" – "bac"  │ "gaf" – "gal" │"form" – "wow" │ "woz" – "zz"  │
└───────┘   │  a, b, d, z   │    a, b, f    │    c, d, g    │     e, f      │     u, y      │
            ├───────┬───────┼───────┬───────┼───────┬───────┼───────┬───────┼───────┬───────┤
┌───────┐   │  "ab" │  "ac" │  "ba" │ "bac" │ "gaf" │ "gal" │ "form"│ "wow" │ "woz" │  "zz" │
│Level 0│   │  "AB" │ " Ac" │ "ba " │ "Bac" │ " GAF"│ "gal" │ "Form"│ " wow"│ "woz" │  "ZZ" │
└───────┘   │  a, b │  d, z │  b, f │  a, f │  c, d │   g   │   e   │  e, f │   y   │   u   │
            └───────┴───────┴───────┴───────┴───────┴───────┴───────┴───────┴───────┴───────┘
```
where, **at level 0**, the key is:
* the normalised facet value (string)

and the value is:
* the original facet value (string)
* a bitmap of all the docids that have this normalised string facet value

**At level 1**, the key is:
* the left bound of the range as an index in level 0
* the right bound of the range as an index in level 0

and the value is:
* the left bound of the range as a normalised string
* the right bound of the range as a normalised string
* a bitmap of all the docids that have a string facet value within the bounds

**At level > 1**, the key is:
* the left bound of the range as an index in level 0
* the right bound of the range as an index in level 0

and the value is:
* a bitmap of all the docids that have a string facet value within the bounds

## New structure of the `facet_id_f64_docids` and `facet_id_string_docids` databases

Now both the `facet_id_f64_docids` and `facet_id_string_docids` databases have the exact same structure:
```                                                                                             
            ┌───────────────────────────────┬───────────────────────────────┬───────────────┐
┌───────┐   │           "ab" (2)            │           "gaf" (2)           │   "woz" (1)   │
│Level 2│   │                               │                               │               │
└───────┘   │        [a, b, d, f, z]        │        [c, d, e, f, g]        │    [u, y]     │
            ├───────────────┬───────────────┼───────────────┬───────────────┼───────────────┤
┌───────┐   │   "ab" (2)    │   "ba" (2)    │   "gaf" (2)   │  "form" (2)   │   "woz" (2)   │
│Level 1│   │               │               │               │               │               │
└───────┘   │ [a, b, d, z]  │   [a, b, f]   │   [c, d, g]   │    [e, f]     │    [u, y]     │
            ├───────┬───────┼───────┬───────┼───────┬───────┼───────┬───────┼───────┬───────┤
┌───────┐   │  "ab" │  "ac" │  "ba" │ "bac" │ "gaf" │ "gal" │ "form"│ "wow" │ "woz" │  "zz" │
│Level 0│   │       │       │       │       │       │       │       │       │       │       │
└───────┘   │ [a, b]│ [d, z]│ [b, f]│ [a, f]│ [c, d]│  [g]  │  [e]  │ [e, f]│  [y]  │  [u]  │
            └───────┴───────┴───────┴───────┴───────┴───────┴───────┴───────┴───────┴───────┘
```
where for all levels, the key is a `FacetGroupKey<T>` containing:
* the field id (`u16`)
* the level height (`u8`)
* the left bound of the range (`T`)

and the value is a `FacetGroupValue` containing:
* the number of elements from the level below that are part of the range (`u8`, =0 for level 0)
* a bitmap of all the docids that have a facet value within the bounds (`RoaringBitmap`)

The right bound of the range is now implicit, it is equal to `Excluded(next_left_bound)`.

In the code, the key is always encoded using `FacetGroupKeyCodec<C>` where `C` is the codec used to encode the facet value (either `OrderedF64Codec` or `StrRefCodec`) and the value is encoded with `FacetGroupValueCodec`.

Since both databases share the same structure, we can implement almost all operations only once by treating the facet value as a byte slice (i.e. `FacetGroupKey<&[u8]>` encoded as `FacetGroupKeyCodec<ByteSliceRef>`). This is, in my opinion, a big simplification.

The reason for changing the structure of the databases is to make it possible to incrementally add a facet value to an existing database. Since the `facet_id_string_docids` used to store indices to `level 0` in all levels > 0, adding an element to level 0 would potentially invalidate all the indices.

Note that the original string value of a facet is no longer stored in this database.

## Incrementally adding a facet value

Here I describe how we can add a facet value to the new database incrementally. If we want to add the document with id `z` and facet value `gap`., then we want to add/modify the elements highlighted below in pink:
<img width="946" alt="Screenshot 2022-09-12 at 10 14 54" src="https://user-images.githubusercontent.com/6040237/189605532-fe4b0f52-e13d-4b3c-92d9-10c705953e3d.png">

which results in:
<img width="662" alt="Screenshot 2022-09-12 at 10 23 29" src="https://user-images.githubusercontent.com/6040237/189607015-c3a37588-b825-43c2-878a-f8f85c000b94.png">

* one element was added in level 0
* one key/value was modified in level 1
* one value was modified in level 2

Adding this element was easy since we could simply add it to level 0 and then increase the `group_size` part of the value for the level above. However, in order to keep the structure balanced, we can't always do this. If the group size reaches a threshold (`max_group_size`), then we split the node into two. For example, let's imagine that `max_group_size` is `4` and we add the docid `y` with facet value `gas`. First, we add it in level 0:
<img width="904" alt="Screenshot 2022-09-12 at 10 30 40" src="https://user-images.githubusercontent.com/6040237/189608391-531f9df1-3424-4f1f-8344-73eb194570e5.png">
Then, we realise that the group size of its parent is going to reach the maximum group size (=4) and thus we split the parent into two nodes:
<img width="919" alt="Screenshot 2022-09-12 at 10 33 16" src="https://user-images.githubusercontent.com/6040237/189608884-66f87635-1fc6-41d2-a459-87c995491ac4.png">
and since we inserted an element in level 1, we also update level 2 accordingly, by increasing the group size of the parent:
<img width="915" alt="Screenshot 2022-09-12 at 10 34 42" src="https://user-images.githubusercontent.com/6040237/189609233-d4a893ff-254a-48a7-a5ad-c0dc337f23ca.png">

We also have two other parameters:
* `group_size` is the default group size when building the database from scratch
* `min_level_size` is the minimum number of elements that a level should contain

When the highest level size is greater than `group_size * min_level_size`, then we create an additional level above it.

There is one more edge case for the insertion algorithm. While we normally don't modify the existing left bounds of a key, we have to do it if the facet value being inserted is smaller than the first left bound. For example, inserting `"aa"` with the docid `w` would change the database to:
<img width="756" alt="Screenshot 2022-09-12 at 10 41 56" src="https://user-images.githubusercontent.com/6040237/189610637-a043ef71-7159-4bf1-b4fd-9903134fc095.png">

The root of the code for incremental indexing is the `FacetUpdateIncremental` builder.

## Incrementally removing a facet value
TODO: the algorithm was implemented and works, but its current API is: `fn delete(self, facet_value, single_docid)`. It removes the given document id from all keys containing the given facet value. I don't think it is the right way to implement it anymore. Perhaps a bitmap of docids should be given instead. This is fairly easy to do. But since we batch document deletions together (because of soft deletion), it's not clear to me anymore that incremental deletion should be implemented at all.  

## Bulk insertion
While it's faster to incrementally add a single facet value to the database, it is sometimes **slower** to repeatedly add facet values one-by-one instead of doing it in bulk. For example, during initial indexing, we'd like to build the database from a list of facet values and associated document ids in one go. The `FacetUpdateBulk` builder provides a way to do so. It works by:
1. clearing all levels > 0 from the DB
2. adding all new elements in level 0
3. rebuilding the higher levels from scratch 

The algorithm for bulk insertion is the same as the previous one.

## Choosing between incremental and bulk insertion
On my computer, I measured that is about 50x slower to add N facet values incrementally than it is to re-build a database with N facet values in level 0. Therefore, we dynamically choose to use either incremental insertion or bulk insertion based on (1) the number of existing elements in level 0 of the database and (2) the number of facet values from the new documents.

This is imprecise but is mainly aimed at avoiding the worst-case scenario where the incremental insertion method is used repeatedly millions of times.

## Fuzz-testing

**Potentially controversial:**
I fuzz-tested incremental addition and deletion using fuzzcheck, which found many bugs. The fuzz-test consists of inserting/deleting facet values and docids in succession, each operation is processed with different parameters for `group_size`, `max_group_size`, and `min_level_size`. After all the operations are processed, the content of level 0 is compared to the content of an equivalent structure with a simple and easily-checked implementation. Furthermore, we check that the database has a correct structure (all groups from levels > 0 correctly combine the content of their children). I also visualised the code coverage found by the fuzz-test. It covered 100% of the relevant code except for `unreachable/panic` statements and errors returned by `heed`.

The fuzz-test and the fuzzcheck dependency are only compiled when `cargo fuzzcheck` is used. For now, the dependency is from a local path on my computer, but it can be changed to a crate version if we decide to keep it. 

## Algorithms operating on the facet databases

There are four important algorithms making use of the facet databases:
1. Sort, ascending
2. Sort, descending
3. Facet distribution
4. Range search

Previously, the implementation of all four algorithms was based on a number of iterators specific to each database kind (number or string): `FacetNumberRange`, `FacetNumberRevRange`, `FacetNumberIter` (with a reversed and reducing/non-reducing option), `FacetStringGroupRange`, `FacetStringGroupRevRange`, `FacetStringLevel0Range`, `FacetStringLevel0RevRange`, and `FacetStringIter` (reversed + reducing/non-reducing). 

Now, all four algorithms have a unique implementation shared by both the string and number databases. There are four functions:
1. `ascending_facet_sort` in `search/facet/facet_sort_ascending.rs`
2. `descending_facet_sort` in `search/facet/facet_sort_descending.rs`
3. `iterate_over_facet_distribution` in `search/facet/facet_distribution_iter.rs`
4. `find_docids_of_facet_within_bounds` in `search/facet/facet_range_search.rs`

I have tried to test them with some snapshot tests but more testing could still be done. I don't *think* that the performance of these algorithms regressed, but that will need to be confirmed by benchmarks.

## Change of behaviour for facet distributions

Previously, the original string value of a facet was stored in the level 0 of `facet_id_string_docids `. This is no longer the case. The original string value was used in the implementation of the facet distribution algorithm. Now, to recover it, we pick a random document id which contains the normalised string value and look up the original one in `field_id_docid_facet_strings`. As a consequence, it may be that the string value returned in the field distribution does not appear in any of the candidates. For example,
```json
{ "id": 0, "colour": "RED" }
{ "id": 1, "colour": "red" }
```
Facet distribution for the `colour` field among the candidates `[1]`:
```
{ "RED": 1 }
```
Here, "RED" was given as the original facet value even though it does not appear in the document id `1`.

## Heed codecs

A number of heed codecs related to the facet databases were removed:
* `FacetLevelValueF64Codec`
* `FacetLevelValueU32Codec`
* `FacetStringLevelZeroCodec`
* `StringValueCodec`
* `FacetStringZeroBoundsValueCodec`
* `FacetValueStringCodec`
* `FieldDocIdFacetStringCodec`
* `FieldDocIdFacetF64Codec`

They were replaced by:
* `FacetGroupKeyCodec<C>` (replaces all key codecs for the facet databases)
* `FacetGroupValueCodec` (replaces all value codecs for the facet databases)
* `FieldDocIdFacetCodec<C>` (replaces `FieldDocIdFacetStringCodec` and `FieldDocIdFacetF64Codec`)

Since the associated encoded item of `FacetGroupKeyCodec<C>` is `FacetKey<T>` and we often work with `FacetKey<&[u8]>` and `FacetKey<&str>`, then we need to have codecs that encode values of type `&str` and `&[u8]`. The existing `ByteSlice` and `Str` codecs do not work for that purpose (their `EItem` are `[u8]` and `str`), I have also created two new codecs:
* `ByteSliceRef` is a codec with a `EItem = DItem = &[u8]`
* `StrRefCodec` is a codec with a `EItem = DItem = &str`

I have also factored out the code used to encode an ordered f64 into its own `OrderedF64Codec`.


Co-authored-by: Loïc Lecrenier <loic@meilisearch.com>
2022-10-26 15:04:53 +00:00
Samyak S Sarnayak
488d31ecdf
Run cargo fmt 2022-10-26 19:09:45 +05:30
Samyak S Sarnayak
af33d22f25
Consecutive is false when at least 1 stop word is surrounded by words 2022-10-26 19:09:45 +05:30
Samyak S Sarnayak
f1da623af3
Add test for phrase search with stop words and all criteria at once
Moved the actual test into a separate function used by both the existing
test and the new test.
2022-10-26 19:09:44 +05:30
Samyak S Sarnayak
77f1ff019b
Simplify stop word checking in create_primitive_query 2022-10-26 19:09:44 +05:30
Samyak S Sarnayak
2aa11afb87
Fix panic when phrase contains only one stop word and nothing else 2022-10-26 19:09:42 +05:30
Samyak S Sarnayak
bb9ce3c5c5
Run cargo fmt 2022-10-26 19:09:03 +05:30
Samyak S Sarnayak
d187b32a28
Fix snapshots to use new phrase type 2022-10-26 19:09:03 +05:30
Samyak S Sarnayak
c8c666c6a6
Use resolve_phrase in exactness and typo criteria 2022-10-26 19:09:01 +05:30
Samyak S Sarnayak
3e190503e6
Search for closest non-stop words in proximity criteria 2022-10-26 19:08:34 +05:30
Samyak S Sarnayak
709ab3c14c
Increment position even when it's a stop word in exactness criteria 2022-10-26 19:08:33 +05:30
Samyak S Sarnayak
ef13c6a5b6
Perform filter after enumerate to keep origin indices 2022-10-26 19:08:33 +05:30
Samyak S Sarnayak
6a10b679ca
Add test for phrase search with stop words
Originally written by ManyTheFish here:
https://gist.github.com/ManyTheFish/f840e37cb2d2e029ce05396b4d540762

Co-authored-by: ManyTheFish <many@meilisearch.com>
2022-10-26 19:08:32 +05:30
Samyak S Sarnayak
62816dddde
[WIP] Fix phrase search containing stop words
Fixes #661 and meilisearch/meilisearch#2905
2022-10-26 19:08:06 +05:30
Loïc Lecrenier
54c0cf93fe Merge remote-tracking branch 'origin/main' into facet-levels-refactor 2022-10-26 15:13:34 +02:00