Commit Graph

478 Commits

Author SHA1 Message Date
f3r10
369c05732e Add test checking if from script_language_docids database were removed
deleted docids
2023-01-31 11:28:05 +01:00
f3r10
a27f329e3a Add tests for checking that detected script and language associated with document(s) were stored during indexing 2023-01-31 11:28:05 +01:00
f3r10
b216ddba63 Delete and clear data from the new database 2023-01-31 11:28:05 +01:00
f3r10
d97fb6117e Extract and index data 2023-01-31 11:28:05 +01:00
ManyTheFish
d1fc42b53a Use compatibility decomposition normalizer in facets 2023-01-18 15:02:13 +01:00
Clément Renault
1b78231e18
Make clippy happy 2023-01-17 18:25:54 +01:00
Loïc Lecrenier
02fd06ea0b Integrate deserr 2023-01-11 13:56:47 +01:00
bors[bot]
c3f4835e8e
Merge #733
733: Avoid a prefix-related worst-case scenario in the proximity criterion r=loiclec a=loiclec

# Pull Request

## Related issue
Somewhat fixes (until merged into meilisearch) https://github.com/meilisearch/meilisearch/issues/3118

## What does this PR do?
When a query ends with a word and a prefix, such as:
```
word pr
```
Then we first determine whether `pre` *could possibly* be in the proximity prefix database before querying it. There are then three possibilities:

1. `pr` is not in any prefix cache because it is not the prefix of many words. We don't query the proximity prefix database. Instead, we list all the word derivations of `pre` through the FST and query the regular proximity databases.

2. `pr` is in the prefix cache but cannot be found in the proximity prefix databases. **In this case, we partially disable the proximity ranking rule for the pair `word pre`.** This is done as follows:
   1. Only find the documents where `word` is in proximity to `pre` **exactly** (no derivations)
   2. Otherwise, assume that their proximity in all the documents in which they coexist is >= 8

3. `pr` is in the prefix cache and can be found in the proximity prefix databases. In this case we simply query the proximity prefix databases.

Note that if a prefix is longer than 2 bytes, then it cannot be in the proximity prefix databases. Also, proximities larger than 4 are not present in these databases either. Therefore, the impact on relevancy is:

1. For common prefixes of one or two letters: we no longer distinguish between proximities from 4 to 8
2. For common prefixes of more than two letters: we no longer distinguish between any proximities
3. For uncommon prefixes: nothing changes

Regarding (1), it means that these two documents would be considered equally relevant according to the proximity rule for the query `heard pr` (IF `pr` is the prefix of more than 200 words in the dataset):
```json
[
    { "text": "I heard there is a faster proximity criterion" },
    { "text": "I heard there is a faster but less relevant proximity criterion" }
]
```

Regarding (2), it means that two documents would be considered equally relevant according to the proximity rule for the query "faster pro":
```json
[
    { "text": "I heard there is a faster but less relevant proximity criterion" }
    { "text": "I heard there is a faster proximity criterion" },
]
```
But the following document would be considered more relevant than the two documents above:
```json
{ "text": "I heard there is a faster swimmer who is competing in the pro section of the competition " }
```

Note, however, that this change of behaviour only occurs when using the set-based version of the proximity criterion. In cases where there are fewer than 1000 candidate documents when the proximity criterion is called, this PR does not change anything. 

---

## Performance

I couldn't use the existing search benchmarks to measure the impact of the PR, but I did some manual tests with the `songs` benchmark dataset.   

```
1. 10x 'a': 
	- 640ms ⟹ 630ms                  = no significant difference
2. 10x 'b':
	- set-based: 4.47s ⟹ 7.42        = bad, ~2x regression
	- dynamic: 1s ⟹ 870 ms           = no significant difference
3. 'Someone I l':
	- set-based: 250ms ⟹ 12 ms       = very good, x20 speedup
	- dynamic: 21ms ⟹ 11 ms          = good, x2 speedup 
4. 'billie e':
	- set-based: 623ms ⟹ 2ms         = very good, x300 speedup 
	- dynamic: ~4ms ⟹ 4ms            = no difference
5. 'billie ei':
	- set-based: 57ms ⟹ 20ms         = good, ~2x speedup
	- dynamic: ~4ms ⟹ ~2ms.          = no significant difference
6. 'i am getting o' 
	- set-based: 300ms ⟹ 60ms        = very good, 5x speedup
	- dynamic: 30ms ⟹ 6ms            = very good, 5x speedup
7. 'prologue 1 a 1:
	- set-based: 3.36s ⟹ 120ms       = very good, 30x speedup
	- dynamic: 200ms ⟹ 30ms          = very good, 6x speedup
8. 'prologue 1 a 10':
	- set-based: 590ms ⟹ 18ms        = very good, 30x speedup 
	- dynamic: 82ms ⟹ 35ms           = good, ~2x speedup
```

Performance is often significantly better, but there is also one regression in the set-based implementation with the query `b b b b b b b b b b`.

Co-authored-by: Loïc Lecrenier <loic.lecrenier@me.com>
2023-01-04 09:00:50 +00:00
bors[bot]
6a10e85707
Merge #736
736: Update charabia r=curquiza a=ManyTheFish

Update Charabia to the last version.

> We are now Romanizing Chinese characters into Pinyin.
> Note that we keep the accent because they are in fact never typed directly by the end-user, moreover, changing an accent leads to a different Chinese character, and I don't have sufficient knowledge to forecast the impact of removing accents in this context.

Co-authored-by: ManyTheFish <many@meilisearch.com>
2023-01-03 15:44:41 +00:00
Loïc Lecrenier
777b387dc4 Avoid a prefix-related worst-case scenario in the proximity criterion 2022-12-22 12:08:00 +01:00
Louis Dureuil
4b166bea2b
Add primary_key_inference test 2022-12-21 15:13:38 +01:00
Louis Dureuil
5943100754
Fix existing tests 2022-12-21 15:13:38 +01:00
Louis Dureuil
b24def3281
Add logging when inference took place.
Displays log message in the form:
```
[2022-12-21T09:19:42Z INFO  milli::update::index_documents::enrich] Primary key was not specified in index. Inferred to 'id'
```
2022-12-21 15:13:38 +01:00
Louis Dureuil
402dcd6b2f
Simplify primary key inference 2022-12-21 15:13:38 +01:00
Louis Dureuil
13c95d25aa
Remove uses of UserError::MissingPrimaryKey not related to inference 2022-12-21 15:13:36 +01:00
Loïc Lecrenier
fc0e7382fe Fix hard-deletion of an external id that was soft-deleted 2022-12-20 15:33:31 +01:00
Tamo
69edbf9f6d
Update milli/src/update/delete_documents.rs 2022-12-19 18:23:50 +01:00
Louis Dureuil
916c23e7be
Tests: rename snapshots 2022-12-19 10:07:17 +01:00
Louis Dureuil
ad9937c755
Fix tests after adding DeletionStrategy 2022-12-19 10:07:17 +01:00
Louis Dureuil
171c942282
Soft-deletion computation no longer takes into account the mapsize
Implemented solution 2.3 from https://github.com/meilisearch/meilisearch/issues/3231#issuecomment-1348628824
2022-12-19 10:07:17 +01:00
Louis Dureuil
e2ae3b24aa
Hard or soft delete according to the deletion strategy 2022-12-19 10:00:13 +01:00
Louis Dureuil
fc7618d49b
Add DeletionStrategy 2022-12-19 09:49:58 +01:00
ManyTheFish
7f88c4ff2f Fix #1714 test 2022-12-15 18:22:28 +01:00
Loïc Lecrenier
be3b00350c Apply review suggestions: naming and documentation 2022-12-13 10:15:22 +01:00
Loïc Lecrenier
e3ee553dcc Remove soft deleted ids from ExternalDocumentIds during document import
If the document import replaces a document using hard deletion
2022-12-12 14:16:09 +01:00
Loïc Lecrenier
303d740245 Prepare fix within facet range search
By creating snapshots and updating the format of the existing
snapshots. The next commit will apply the fix, which will show
its effects cleanly on the old and new snapshot tests
2022-12-07 14:38:10 +01:00
Loïc Lecrenier
a993b68684 Cargo fmt >:-( 2022-12-06 15:22:10 +01:00
Loïc Lecrenier
80c7a00567 Fix compilation error in tests of settings update 2022-12-06 15:19:26 +01:00
Loïc Lecrenier
67d8cec209 Fix bug in handling of soft deleted documents when updating settings 2022-12-06 15:09:19 +01:00
Loïc Lecrenier
cda4ba2bb6 Add document import tests 2022-12-05 12:02:49 +01:00
Loïc Lecrenier
f2cf981641 Add more tests and allow disabling of soft-deletion outside of tests
Also allow disabling soft-deletion in the IndexDocumentsConfig
2022-12-05 10:51:01 +01:00
bors[bot]
d3731dda48
Merge #706
706: Limit the reindexing caused by updating settings when not needed r=curquiza a=GregoryConrad

## What does this PR do?
When updating index settings using `update::Settings`, sometimes a `reindex` of `update::Settings` is triggered when it doesn't need to be. This PR aims to prevent those unnecessary `reindex` calls.

For reference, here is a snippet from the current `execute` method in `update::Settings`:
```rust
// ...
if stop_words_updated
    || faceted_updated
    || synonyms_updated
    || searchable_updated
    || exact_attributes_updated
{
    self.reindex(&progress_callback, &should_abort, old_fields_ids_map)?;
}
```

- [x] `faceted_updated` - looks good as-is 
- [x] `stop_words_updated` - looks good as-is 
- [x] `synonyms_updated` - looks good as-is 
- [x] `searchable_updated` - fixed in this PR
- [x] `exact_attributes_updated` - fixed in this PR

## PR checklist
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?

Thank you so much for contributing to Meilisearch!


Co-authored-by: Gregory Conrad <gregorysconrad@gmail.com>
2022-12-01 13:58:02 +00:00
bors[bot]
5e754b3ee0
Merge #708
708: Reduce memory usage of the MatchingWords structure r=ManyTheFish a=loiclec

# Pull Request

## Related issue
Fixes (partially) https://github.com/meilisearch/meilisearch/issues/3115 

## What does this PR do?
1. Reduces the memory usage caused by the creation of a 10-word query tree by 20x. 
   This is done by deduplicating the `MatchingWord` values, which are heavy because of their inner DFA. The deduplication works by wrapping each `MatchingWord` in a reference-counted box and using a hash map to determine whether a  `MatchingWord` DFA already exists for a certain signature, or whether a new one needs to be built.
 
2. Avoid the worst-case scenario of creating a `MatchingWord` for extremely long words that cannot be indexed by milli.

Co-authored-by: Loïc Lecrenier <loic.lecrenier@me.com>
2022-11-30 17:47:34 +00:00
Loïc Lecrenier
9dd4b33a9a Fix bulk facet indexing bug 2022-11-30 14:27:36 +01:00
Loïc Lecrenier
8d0ace2d64 Avoid creating a MatchingWord for words that exceed the length limit 2022-11-28 10:20:13 +01:00
Gregory Conrad
e0d24104a3 refactor: Rewrite another method chain to be more readable 2022-11-26 13:33:19 -05:00
Gregory Conrad
2db738dbac refactor: rewrite method chain to be more readable 2022-11-26 13:26:39 -05:00
Gregory Conrad
ed29cceae9 perf: Prevent reindex in searchable set case when not needed 2022-11-23 22:33:06 -05:00
Gregory Conrad
bb9e33bf85 perf: Prevent reindex in searchable reset case when not needed 2022-11-23 22:01:46 -05:00
Gregory Conrad
d19c8672bb perf: limit reindex to when exact_attributes changes 2022-11-23 15:50:53 -05:00
bors[bot]
57c9f03e51
Merge #697
697: Fix bug in prefix DB indexing r=loiclec a=loiclec

Where the batch's information was not properly updated in cases where only the proximity changed between two consecutive word pair proximities.

Closes partially https://github.com/meilisearch/meilisearch/issues/3043



Co-authored-by: Loïc Lecrenier <loic.lecrenier@me.com>
2022-11-17 15:22:01 +00:00
Loïc Lecrenier
777eb3fa00 Add insta-snaps for test of bug 3043 2022-11-17 12:21:27 +01:00
Loïc Lecrenier
0caadedd3b Make clippy happy 2022-11-17 12:17:53 +01:00
Loïc Lecrenier
ac3baafbe8 Truncate facet values that are too long before indexing them 2022-11-17 11:29:42 +01:00
Loïc Lecrenier
990a861241 Add test for indexing a document with a long facet value 2022-11-17 11:29:42 +01:00
Loïc Lecrenier
d95d02cb8a Fix Facet Indexing bugs
1. Handle keys with variable length correctly

This fixes https://github.com/meilisearch/meilisearch/issues/3042 and
is easily reproducible with the updated fuzz tests, which now generate
keys with variable lengths.

2. Prevent adding facets to the database if their encoded value does
not satisfy `valid_lmdb_key`.

This fixes an indexing failure when a document had a filterable
attribute containing a value whose length is higher than ~500 bytes.
2022-11-17 11:29:42 +01:00
Loïc Lecrenier
f00108d2ec Fix name of bug in reproduction test 2022-11-17 11:29:18 +01:00
Loïc Lecrenier
f7c8730d09 Fix bug in prefix DB indexing
Where the batch's information was not properly updated in cases
where only the proximity changed between two consecutive word pair
proximities.

Closes https://github.com/meilisearch/meilisearch/issues/3043
2022-11-17 11:29:18 +01:00
Kerollmops
37b3c5c323
Fix transform to use all_documents and ignore soft_deleted documents 2022-11-08 14:23:16 +01:00
Kerollmops
1b1ad1923b
Add a test to check that we take care of soft deleted documents 2022-11-08 14:23:14 +01:00