Commit Graph

240 Commits

Author SHA1 Message Date
Loïc Lecrenier
85824ee203 Try to make facet indexing incremental 2022-10-26 13:47:04 +02:00
Loïc Lecrenier
e8a156d682 Reorganise facets database indexing code 2022-10-26 13:46:46 +02:00
Loïc Lecrenier
bd2c0e1ab6 Remove unused code 2022-10-26 13:46:14 +02:00
Loïc Lecrenier
39a4a0a362 Reintroduce filter range search and facet extractors 2022-10-26 13:46:14 +02:00
Loïc Lecrenier
7913d6365c Update Facets indexing to be compatible with new database structure 2022-10-26 13:46:14 +02:00
Loïc Lecrenier
c3f49f766d Prepare refactor of facets database
Prepare refactor of facets database
2022-10-26 13:46:14 +02:00
Loïc Lecrenier
d76d0cb1bf Merge branch 'main' into word-pair-proximity-docids-refactor 2022-10-24 15:23:00 +02:00
Loïc Lecrenier
a983129613 Apply suggestions from code review 2022-10-20 09:49:37 +02:00
Loïc Lecrenier
a7de4f5b85 Don't add swapped word pairs to the word_pair_proximity_docids db 2022-10-18 10:37:34 +02:00
Loïc Lecrenier
264a04922d Add prefix_word_pair_proximity database
Similar to the word_prefix_pair_proximity one but instead the keys are:
(proximity, prefix, word2)
2022-10-18 10:37:34 +02:00
Loïc Lecrenier
bdeb47305e Change encoding of word_pair_proximity DB to (proximity, word1, word2)
Same for word_prefix_pair_proximity
2022-10-18 10:37:34 +02:00
Ewan Higgs
beb987d3d1 Fixing piles of clippy errors.
Most of these are calling clone when the struct supports Copy.

Many are using & and &mut on `self` when the function they are called
from already has an immutable or mutable borrow so this isn't needed.

I tried to stay away from actual changes or places where I'd have to
name fresh variables.
2022-10-13 22:02:54 +02:00
msvaljek
762e320c35
Add proximity calculation for the same word 2022-10-07 12:59:12 +02:00
vishalsodani
00c02d00f3 Add missing logging timer to extractors 2022-09-30 22:17:06 +05:30
bors[bot]
15d478cf4d
Merge #635
635: Use an unstable algorithm for `grenad::Sorter` when possible r=Kerollmops a=loiclec

# Pull Request
## What does this PR do?

Use an unstable algorithm to sort the internal vector used by `grenad::Sorter` whenever possible to speed up indexing.

In practice, every time the merge function creates a `RoaringBitmap`, we use an unstable sort. For every other merge function, such as `keep_first`, `keep_last`, etc., a stable sort is used.


Co-authored-by: Loïc Lecrenier <loic@meilisearch.com>
2022-09-14 12:00:52 +00:00
Loïc Lecrenier
3794962330 Use an unstable algorithm for grenad::Sorter when possible 2022-09-13 14:49:53 +02:00
Kerollmops
d4d7c9d577
We avoid skipping errors in the indexing pipeline 2022-09-13 14:03:00 +02:00
Kerollmops
fe3973a51c
Make sure that long words are correctly skipped 2022-09-07 15:03:32 +02:00
Kerollmops
c83c3cd796
Add a test to make sure that long words are correctly skipped 2022-09-07 14:12:36 +02:00
ManyTheFish
5391e3842c replace optional_words by term_matching_strategy 2022-08-22 17:47:19 +02:00
ManyTheFish
9640976c79 Rename TermMatchingPolicies 2022-08-18 17:36:08 +02:00
Irevoire
e96b852107
bump heed 2022-08-17 17:05:50 +02:00
bors[bot]
087da5621a
Merge #587
587: Word prefix pair proximity docids indexation refactor r=Kerollmops a=loiclec

# Pull Request

## What does this PR do?
Refactor the code of `WordPrefixPairProximityDocIds` to make it much faster, fix a bug, and add a unit test.

## Why is it faster?
Because we avoid using a sorter to insert the (`word1`, `prefix`, `proximity`) keys and their associated bitmaps, and thus we don't have to sort a potentially very big set of data. I have also added a couple of other optimisations: 

1. reusing allocations
2. using a prefix trie instead of an array of prefixes to get all the prefixes of a word
3. inserting directly into the database instead of putting the data in an intermediary grenad when possible. Also avoid checking for pre-existing values in the database when we know for certain that they do not exist. 

## What bug was fixed?
When reindexing, the `new_prefix_fst_words` prefixes may look like:
```
["ant",  "axo", "bor"]
```
which we group by first letter:
```
[["ant", "axo"], ["bor"]]
```

Later in the code, if we have the word2 "axolotl", we try to find which subarray of prefixes contains its prefixes. This check is done with `word2.starts_with(subarray_prefixes[0])`, but `"axolotl".starts_with("ant")` is false, and thus we wrongly think that there are no prefixes in `new_prefix_fst_words` that are prefixes of `axolotl`.

## StrStrU8Codec
I had to change the encoding of `StrStrU8Codec` to make the second string null-terminated as well. I don't think this should be a problem, but I may have missed some nuances about the impacts of this change.

## Requests when reviewing this PR
I have explained what the code does in the module documentation of `word_pair_proximity_prefix_docids`. It would be nice if someone could read it and give their opinion on whether it is a clear explanation or not. 

I also have a couple questions regarding the code itself:
- Should we clean up and factor out the `PrefixTrieNode` code to try and make broader use of it outside this module? For now, the prefixes undergo a few transformations: from FST, to array, to prefix trie. It seems like it could be simplified.
- I wrote a function called `write_into_lmdb_database_without_merging`. (1) Are we okay with such a function existing? (2) Should it be in `grenad_helpers` instead?

## Benchmark Results

We reduce the time it takes to index about 8% in most cases, but it varies between -3% and -20%. 

```
group                                                                     indexing_main_ce90fc62                  indexing_word-prefix-pair-proximity-docids-refactor_cbad2023
-----                                                                     ----------------------                  ------------------------------------------------------------
indexing/-geo-delete-facetedNumber-facetedGeo-searchable-                 1.00  1893.0±233.03µs        ? ?/sec    1.01  1921.2±260.79µs        ? ?/sec
indexing/-movies-delete-facetedString-facetedNumber-searchable-           1.05      9.4±3.51ms        ? ?/sec     1.00      9.0±2.14ms        ? ?/sec
indexing/-movies-delete-facetedString-facetedNumber-searchable-nested-    1.22    18.3±11.42ms        ? ?/sec     1.00     15.0±5.79ms        ? ?/sec
indexing/-songs-delete-facetedString-facetedNumber-searchable-            1.00     41.4±4.20ms        ? ?/sec     1.28    53.0±13.97ms        ? ?/sec
indexing/-wiki-delete-searchable-                                         1.00   285.6±18.12ms        ? ?/sec     1.03   293.1±16.09ms        ? ?/sec
indexing/Indexing geo_point                                               1.03      60.8±0.45s        ? ?/sec     1.00      58.8±0.68s        ? ?/sec
indexing/Indexing movies in three batches                                 1.14      16.5±0.30s        ? ?/sec     1.00      14.5±0.24s        ? ?/sec
indexing/Indexing movies with default settings                            1.11      13.7±0.07s        ? ?/sec     1.00      12.3±0.28s        ? ?/sec
indexing/Indexing nested movies with default settings                     1.10      10.6±0.11s        ? ?/sec     1.00       9.6±0.15s        ? ?/sec
indexing/Indexing nested movies without any facets                        1.11       9.4±0.15s        ? ?/sec     1.00       8.5±0.10s        ? ?/sec
indexing/Indexing songs in three batches with default settings            1.18      66.2±0.39s        ? ?/sec     1.00      56.0±0.67s        ? ?/sec
indexing/Indexing songs with default settings                             1.07      58.7±1.26s        ? ?/sec     1.00      54.7±1.71s        ? ?/sec
indexing/Indexing songs without any facets                                1.08      53.1±0.88s        ? ?/sec     1.00      49.3±1.43s        ? ?/sec
indexing/Indexing songs without faceted numbers                           1.08      57.7±1.33s        ? ?/sec     1.00      53.3±0.98s        ? ?/sec
indexing/Indexing wiki                                                    1.06   1051.1±21.46s        ? ?/sec     1.00    989.6±24.55s        ? ?/sec
indexing/Indexing wiki in three batches                                   1.20    1184.8±8.93s        ? ?/sec     1.00     989.7±7.06s        ? ?/sec
indexing/Reindexing geo_point                                             1.04      67.5±0.75s        ? ?/sec     1.00      64.9±0.32s        ? ?/sec
indexing/Reindexing movies with default settings                          1.12      13.9±0.17s        ? ?/sec     1.00      12.4±0.13s        ? ?/sec
indexing/Reindexing songs with default settings                           1.05      60.6±0.84s        ? ?/sec     1.00      57.5±0.99s        ? ?/sec
indexing/Reindexing wiki                                                  1.07   1725.0±17.92s        ? ?/sec     1.00    1611.4±9.90s        ? ?/sec
```

Co-authored-by: Loïc Lecrenier <loic@meilisearch.com>
2022-08-17 14:06:12 +00:00
ManyTheFish
e9e2349ce6 Fix typo in comment 2022-08-17 15:09:48 +02:00
ManyTheFish
2668f841d1 Fix update indexing 2022-08-17 15:03:37 +02:00
ManyTheFish
7384650d85 Update test to showcase the bug 2022-08-17 15:03:08 +02:00
Loïc Lecrenier
306593144d Refactor word prefix pair proximity indexation 2022-08-17 11:59:00 +02:00
Loïc Lecrenier
58cb1c1bda Simplify unit tests in facet/filter.rs 2022-08-04 12:03:44 +02:00
Loïc Lecrenier
acff17fb88 Simplify indexing tests 2022-08-04 12:03:13 +02:00
bors[bot]
21284cf235
Merge #556
556: Add EXISTS filter r=loiclec a=loiclec

## What does this PR do?

Fixes issue [#2484](https://github.com/meilisearch/meilisearch/issues/2484) in the meilisearch repo.

It creates a `field EXISTS` filter which selects all documents containing the `field` key. 
For example, with the following documents:
```json
[{
	"id": 0,
	"colour": []
},
{
	"id": 1,
	"colour": ["blue", "green"]
},
{
	"id": 2,
	"colour": 145238
},
{
	"id": 3,
	"colour": null
},
{
	"id": 4,
	"colour": {
		"green": []
	}
},
{
	"id": 5,
	"colour": {}
},
{
	"id": 6
}]
```
Then the filter `colour EXISTS` selects the ids `[0, 1, 2, 3, 4, 5]`. The filter `colour NOT EXISTS` selects `[6]`.

## Details
There is a new database named `facet-id-exists-docids`. Its keys are field ids and its values are bitmaps of all the document ids where the corresponding field exists.

To create this database, the indexing part of milli had to be adapted. The implementation there is basically copy/pasted from the code handling the `facet-id-f64-docids` database, with appropriate modifications in place.

There was an issue involving the flattening of documents during (re)indexing. Previously, the following JSON:
```json
{
    "id": 0,
    "colour": [],
    "size": {}
}
```
would be flattened to:
```json
{
    "id": 0
}
```
prior to being given to the extraction pipeline.

This transformation would lose the information that is needed to populate the `facet-id-exists-docids` database. Therefore, I have also changed the implementation of the `flatten-serde-json` crate. Now, as it traverses the Json, it keeps track of which key was encountered. Then, at the end, if a previously encountered key is not present in the flattened object, it adds that key to the object with an empty array as value. For example:
```json
{
    "id": 0,
    "colour": {
        "green": [],
        "blue": 1
    },
    "size": {}
} 
```
becomes
```json
{
    "id": 0,
    "colour": [],
    "colour.green": [],
    "colour.blue": 1,
    "size": []
} 
```


Co-authored-by: Kerollmops <clement@meilisearch.com>
2022-08-04 09:46:06 +00:00
bors[bot]
50f6524ff2
Merge #579
579: Stop reindexing already indexed documents r=ManyTheFish a=irevoire

```
 % ./compare.sh indexing_stop-reindexing-unchanged-documents_cb5a1669.json indexing_main_eeba1960.json
group                                                                     indexing_main_eeba1960                 indexing_stop-reindexing-unchanged-documents_cb5a1669
-----                                                                     ----------------------                 -----------------------------------------------------
indexing/-geo-delete-facetedNumber-facetedGeo-searchable-                 1.03      2.0±0.22ms        ? ?/sec    1.00  1955.4±336.24µs        ? ?/sec
indexing/-movies-delete-facetedString-facetedNumber-searchable-           1.08     11.0±2.93ms        ? ?/sec    1.00     10.2±4.04ms        ? ?/sec
indexing/-movies-delete-facetedString-facetedNumber-searchable-nested-    1.00     15.1±3.89ms        ? ?/sec    1.14     17.1±5.18ms        ? ?/sec
indexing/-songs-delete-facetedString-facetedNumber-searchable-            1.26    59.2±12.01ms        ? ?/sec    1.00     47.1±8.52ms        ? ?/sec
indexing/-wiki-delete-searchable-                                         1.08   316.6±31.53ms        ? ?/sec    1.00   293.6±17.00ms        ? ?/sec
indexing/Indexing geo_point                                               1.01      60.9±0.31s        ? ?/sec    1.00      60.6±0.36s        ? ?/sec
indexing/Indexing movies in three batches                                 1.04      20.0±0.30s        ? ?/sec    1.00      19.2±0.25s        ? ?/sec
indexing/Indexing movies with default settings                            1.02      19.1±0.18s        ? ?/sec    1.00      18.7±0.24s        ? ?/sec
indexing/Indexing nested movies with default settings                     1.02      26.2±0.29s        ? ?/sec    1.00      25.9±0.22s        ? ?/sec
indexing/Indexing nested movies without any facets                        1.02      25.3±0.32s        ? ?/sec    1.00      24.7±0.26s        ? ?/sec
indexing/Indexing songs in three batches with default settings            1.00      66.7±0.41s        ? ?/sec    1.01      67.1±0.86s        ? ?/sec
indexing/Indexing songs with default settings                             1.00      58.3±0.90s        ? ?/sec    1.01      58.8±1.32s        ? ?/sec
indexing/Indexing songs without any facets                                1.00      54.5±1.43s        ? ?/sec    1.01      55.2±1.29s        ? ?/sec
indexing/Indexing songs without faceted numbers                           1.00      57.9±1.20s        ? ?/sec    1.01      58.4±0.93s        ? ?/sec
indexing/Indexing wiki                                                    1.00   1052.0±10.95s        ? ?/sec    1.02   1069.4±20.38s        ? ?/sec
indexing/Indexing wiki in three batches                                   1.00    1193.1±8.83s        ? ?/sec    1.00    1189.5±9.40s        ? ?/sec
indexing/Reindexing geo_point                                             3.22      67.5±0.73s        ? ?/sec    1.00      21.0±0.16s        ? ?/sec
indexing/Reindexing movies with default settings                          3.75      19.4±0.28s        ? ?/sec    1.00       5.2±0.05s        ? ?/sec
indexing/Reindexing songs with default settings                           8.90      61.4±0.91s        ? ?/sec    1.00       6.9±0.07s        ? ?/sec
indexing/Reindexing wiki                                                  1.00   1748.2±35.68s        ? ?/sec    1.00   1750.5±18.53s        ? ?/sec
```

tldr: We do not lose any performance on the normal indexing benchmark, but we get between 3 and 8 times faster on the reindexing benchmarks 👍 

Co-authored-by: Tamo <tamo@meilisearch.com>
2022-08-04 08:10:37 +00:00
ManyTheFish
d6f9a60a32 fix: Remove whitespace trimming during document id validation
fix #592
2022-08-03 11:38:40 +02:00
Tamo
7fc35c5586
remove the useless prints 2022-08-02 10:31:22 +02:00
Tamo
f156d7dd3b
Stop reindexing already indexed documents 2022-08-02 10:31:20 +02:00
Loïc Lecrenier
07003704a8 Merge branch 'filter/field-exist' 2022-07-21 14:51:41 +02:00
Loïc Lecrenier
1506683705 Avoid using too much memory when indexing facet-exists-docids 2022-07-19 14:42:35 +02:00
Loïc Lecrenier
aed8c69bcb Refactor indexation of the "facet-id-exists-docids" database
The idea is to directly create a sorted and merged list of bitmaps
in the form of a BTreeMap<FieldId, RoaringBitmap> instead of creating
a grenad::Reader where the keys are field_id and the values are docids.

Then we send that BTreeMap to the thing that handles TypedChunks, which
inserts its content into the database.
2022-07-19 10:07:33 +02:00
Loïc Lecrenier
1eb1e73bb3 Add integration tests for the EXISTS filter 2022-07-19 10:07:33 +02:00
Loïc Lecrenier
80b962b4f4 Run cargo fmt 2022-07-19 10:07:33 +02:00
Loïc Lecrenier
c17d616250 Refactor index_documents_check_exists_database tests 2022-07-19 10:07:33 +02:00
Loïc Lecrenier
30bd4db0fc Simplify indexing task for facet_exists_docids database 2022-07-19 10:07:33 +02:00
Loïc Lecrenier
392472f4bb Apply suggestions from code review
Co-authored-by: Tamo <tamo@meilisearch.com>
2022-07-19 10:07:33 +02:00
Loïc Lecrenier
453d593ce8 Add a database containing the docids where each field exists 2022-07-19 10:07:33 +02:00
Loïc Lecrenier
fc9f3f31e7 Change DocumentsBatchReader to access cursor and index at same time
Otherwise it is not possible to iterate over all documents while
using the fields index at the same time.
2022-07-18 16:08:14 +02:00
Loïc Lecrenier
ab1571cdec Simplify Transform::read_documents, enabled by enriched documents reader 2022-07-18 12:45:47 +02:00
Kerollmops
448114cc1c
Fix the benchmarks with the new indexation API 2022-07-12 15:22:09 +02:00
Kerollmops
25e768f31c
Fix another issue with the nested primary key selector 2022-07-12 15:14:07 +02:00
Kerollmops
192793ee38
Add some tests to check for the nested documents ids 2022-07-12 15:14:07 +02:00
Kerollmops
dc61105554
Fix the nested document id fetching function 2022-07-12 15:14:06 +02:00
Kerollmops
2eec290424
Check the validity of the latitute and longitude numbers 2022-07-12 15:14:06 +02:00